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#===================================================================================================================
#
# X Trasformer Python Module
#
# Partial x-transformers code With useful modifications as a stand-alone Python module
#
# Version 6.0
#
# Original source code courtesy of lucidrains
# https://github.com/lucidrains/x-transformers
#
# Original source code retrieved on 04/30/2025
# Original version 2.3.1 / Commit 458bc12
#
# Project Los Angeles
# Tegridy Code 2026
#
#===================================================================================================================
#
# Critical dependencies
#
# !pip install torch
# !pip install einops
# !pip install einx
#
#===================================================================================================================

from __future__ import annotations

import os
os.environ['USE_FLASH_ATTENTION'] = '1'

import torch
from torch.nn.attention import SDPBackend, sdpa_kernel
torch.backends.cuda.enable_flash_sdp(True)

#==================================================================================================================================
# attend.py
#==================================================================================================================================

from functools import partial
from typing import Tuple, Callable

import torch
from torch.nn import Module
from torch import nn, einsum, Tensor
import torch.nn.functional as F
from torch.utils.data import Dataset, DataLoader

from collections import namedtuple
from functools import wraps
from packaging import version
from dataclasses import dataclass

from einops import rearrange, repeat, pack, unpack

#========================================================================================================================

# constants

@dataclass
class Intermediates:
    qk_similarities:    Tensor | None = None
    pre_softmax_attn:   Tensor | None = None
    post_softmax_attn:  Tensor | None = None
    values:             Tensor | None = None
    cached_kv:          Tuple[Tensor, Tensor] | None = None
    layer_type:         str | None = None

    def to_tuple(self):
        return (self.qk_similarities, self.pre_softmax_attn, self.post_softmax_attn)

# helpers

def exists(val):
    return val is not None

def default(val, d):
    return val if exists(val) else d

def at_most_one_of(*bools):
    return sum([*map(int, bools)]) <= 1

def compact(arr):
    return [*filter(exists, arr)]

@torch.jit.script
def softclamp(t: Tensor, value: float):
    return (t / value).tanh() * value

def pack_one(t, pattern):
    return pack([t], pattern)

def unpack_one(t, ps, pattern):
    return unpack(t, ps, pattern)[0]

def once(fn):
    called = False
    @wraps(fn)
    def inner(x):
        nonlocal called
        if called:
            return
        called = True
        return fn(x)
    return inner

print_once = once(print)

# selective attention
# https://arxiv.org/abs/2410.02703 - section 3.3
# it is a technique to allow each token to prevent itself from being attended to by future tokens
# if sim_head_gate not supplied, will use the first head of the attention logits (sim in this framework)

def selective_attn(

    sim,

    sim_head_gate = None,

    no_mask_sos = True

):
    i, j, device = *sim.shape[-2:], sim.device
    sim_head_gate = default(sim_head_gate, sim[:, 0])

    gate = F.relu(sim_head_gate) # only positive

    if no_mask_sos:
        gate = gate.clone()
        gate[..., -i] = 0.

    eye = torch.eye(i, device = device)

    if j > i:
        eye = F.pad(eye, (j - i, 0), value = 1.)

    gate = (1. - eye) * gate
    gate = F.pad(gate, (0, 0, 1, -1), value = 0.) # only allow for masking the future
    gate = gate.cumsum(dim = -2)

    return sim - rearrange(gate, 'b i j -> b 1 i j')

# alternative distance functions

def qk_l2_dist_squared(q, k):
    if k.ndim == 3:
        k = repeat(k, 'b j d -> b h j d', h = q.shape[1])

    q, packed_shape = pack_one(q, '* i d')
    k, _ = pack_one(k, '* j d')

    l2_dist_squared = torch.cdist(q, k) ** 2
    return unpack_one(l2_dist_squared, packed_shape, '* i j')

# one-hot straight through softmax

def one_hot_straight_through(logits, temperature = 1.):
    one_hot_indices = logits.argmax(dim = -1, keepdim = True)
    one_hot = torch.zeros_like(logits).scatter(-1, one_hot_indices, 1.)

    soft_attn = (logits / temperature).softmax(dim = -1)
    return one_hot + soft_attn - soft_attn.detach()

# sparse topk attention - only keep topk attn logits for softmax
# optional straight through with masked out logits by setting `attn_sparse_topk_straight_through = True`

def sparse_topk_attn(

    logits,

    sparse_topk,

    temperature = 1.,

    straight_through = False

):
    orig_logits = logits

    mask_value = -torch.finfo(logits.dtype).max
    top_values, _ = logits.topk(sparse_topk, dim = -1)
    sparse_topk_mask = (logits >= top_values[..., -1:]) & (logits > mask_value)
    logits = logits.masked_fill(~sparse_topk_mask, mask_value)
    topk_attn = logits.softmax(dim = -1)

    if not straight_through:
        return topk_attn

    soft_attn = (orig_logits / temperature).softmax(dim = -1)
    return topk_attn.detach() + soft_attn - soft_attn.detach()

# functions for creating causal mask
# need a special one for onnx cpu (no support for .triu)

def create_causal_mask(i, j, device):
    return torch.ones((i, j), device = device, dtype = torch.bool).triu(j - i + 1)

def onnx_create_causal_mask(i, j, device):
    r = torch.arange(i, device = device)
    causal_mask = rearrange(r, 'i -> i 1') < rearrange(r, 'j -> 1 j')
    causal_mask = F.pad(causal_mask, (j - i, 0), value = False)
    return causal_mask

# main class

class Attend(Module):
    def __init__(

        self,

        *,

        dropout = 0.,

        causal = False,

        heads = None,

        pre_talking_heads = False,

        post_talking_heads = False,

        pre_scale_post_talking_heads = False,

        sparse_topk = None,

        sparse_topk_straight_through = False,

        scale = None,

        qk_norm = False,

        l2_distance = False,

        sigmoid = False,

        custom_attn_fn: Callable | None = None,

        flash = False,

        softclamp_logits = False,

        logit_softclamp_value = 50.,

        add_zero_kv = False,

        selective = False,

        hard = False,

        cope = None,

        onnxable = False,

        sdp_kwargs: dict = dict(

            enable_flash = True,

            enable_math = True,

            enable_mem_efficient = True

        )

    ):
        super().__init__()
        self.scale = scale

        # causal related

        self.causal = causal
        self.create_causal_mask = onnx_create_causal_mask if onnxable else create_causal_mask

        # attention type

        is_sparse_topk_attn = exists(sparse_topk)

        assert not (flash and sigmoid), 'sigmoid attention not available for flash'
        assert not (flash and hard), 'hard attention not available for flash'
        assert not (flash and is_sparse_topk_attn), 'topk attention not available for flash'

        assert at_most_one_of(sigmoid, hard, l2_distance, is_sparse_topk_attn)

        if exists(custom_attn_fn):
            self.attn_fn = custom_attn_fn
        elif sigmoid:
            self.attn_fn = F.sigmoid
        elif hard:
            self.attn_fn = one_hot_straight_through
        elif is_sparse_topk_attn:
            self.attn_fn = partial(sparse_topk_attn, sparse_topk = sparse_topk, straight_through = sparse_topk_straight_through)
        else:
            softmax_fn = partial(F.softmax, dim = -1)
            self.attn_fn = partial(softmax_fn, dtype = torch.float32) if not qk_norm else softmax_fn

        # dropouts

        self.dropout = dropout
        self.attn_dropout = nn.Dropout(dropout)

        # talking heads

        assert not (flash and (pre_talking_heads or post_talking_heads or pre_scale_post_talking_heads)), 'talking heads not compatible with flash attention'

        self.pre_softmax_talking_heads = nn.Conv2d(heads, heads, 1, bias = False) if pre_talking_heads else None
        self.post_softmax_talking_heads = nn.Conv2d(heads, heads, 1, bias = False) if post_talking_heads else None
        self.pre_scale_post_talking_heads = nn.Conv2d(heads, heads, 1, bias = False) if pre_scale_post_talking_heads else None

        if exists(self.pre_softmax_talking_heads):
            nn.init.dirac_(self.pre_softmax_talking_heads.weight)

        if exists(self.post_softmax_talking_heads):
            nn.init.dirac_(self.post_softmax_talking_heads.weight)

        if exists(self.pre_scale_post_talking_heads):
            # an improvisation where heads are combined pre-softmax attention, then used to scale post-softmax attention
            nn.init.dirac_(self.pre_scale_post_talking_heads.weight)

        # selective attention

        assert not (flash and selective), 'selective attention cannot work on flash attention'
        assert not (selective and not causal), 'selective attention is designed for autoregressive'
        self.selective = selective

        # l2 distance attention

        self.l2_distance = l2_distance

        # add a key / value token composed of zeros
        # in case this helps controlling outliers, proposed by https://www.evanmiller.org/attention-is-off-by-one.html

        self.add_zero_kv = add_zero_kv

        # soft clamp attention logit value

        if softclamp_logits:
            assert not flash, 'flash attention not compatible with logit softclamp value yet'
            assert logit_softclamp_value > 0.

        self.softclamp_logits = softclamp_logits
        self.logit_softclamp_value = logit_softclamp_value

        # contextual positional encoding

        self.cope = cope

        # flash attention

        self.flash = flash

        torch_version = version.parse(torch.__version__)
        assert not (flash and torch_version < version.parse('2.0.0')), 'in order to use flash attention, you must be using pytorch 2.0 or above'

        # torch 2.3 uses new backend and context manager

        if torch_version >= version.parse('2.3'):
            from torch.nn.attention import SDPBackend

            str_to_backend = dict(
                enable_flash = SDPBackend.FLASH_ATTENTION,
                enable_mem_efficient = SDPBackend.EFFICIENT_ATTENTION,
                enable_math = SDPBackend.MATH,
                enable_cudnn = SDPBackend.CUDNN_ATTENTION
            )

            sdpa_backends = [str_to_backend[enable_str] for enable_str, enable in sdp_kwargs.items() if enable]

            self.sdp_context_manager = partial(torch.nn.attention.sdpa_kernel, sdpa_backends)
        else:
            self.sdp_context_manager = partial(torch.backends.cuda.sdp_kernel, **sdp_kwargs)

    def flash_attn(

        self,

        q, k, v,

        mask = None,

        attn_bias = None

    ):
        batch, heads, q_len, _, k_len, is_cuda, device = *q.shape, k.shape[-2], q.is_cuda, q.device

        # Recommended for multi-query single-key-value attention by Tri Dao
        # kv shape torch.Size([1, 512, 64]) -> torch.Size([1, 8, 512, 64])

        if k.ndim == 3:
            k = repeat(k, 'b ... -> b h ...', h = q.shape[1])

        if v.ndim == 3:
            v = repeat(v, 'b ... -> b h ...', h = q.shape[1])

        # handle maybe l2 distance

        if self.l2_distance:
            k_norm_sq = k.norm(dim = -1, keepdim = True) ** 2
            k = F.pad(k, (0, 1), value = -1.)
            k = torch.cat((k, k_norm_sq), dim = -1)

            q_norm_sq = q.norm(dim = -1, keepdim = True) ** 2
            q = torch.cat((2 * q, q_norm_sq), dim = -1)
            q = F.pad(q, (0, 1), value = -1.)

        # handle scale - by default they scale by dim_head ** -0.5, but need to take care if using cosine sim attention

        if exists(self.scale):
            default_scale = q.shape[-1] ** -0.5
            q = q * (self.scale / default_scale)

        # Check if mask exists and expand to compatible shape
        # The mask is B L, so it would have to be expanded to B H N L

        causal = self.causal

        # in the case of kv caching with one token (q_len == 1), just turn off causal masking
        # in speculative decoding, this may go up to 5-6, so right aligned causal mask will be needed there

        if q_len == 1 and causal:
            causal = False

        # expand key padding mask

        if exists(mask):
            assert mask.ndim == 4
            mask = mask.expand(batch, heads, q_len, k_len)

        # handle kv cache - this should be bypassable in updated flash attention 2

        if k_len > q_len and causal:
            causal_mask = self.create_causal_mask(q_len, k_len, device = device)
            if not exists(mask):
                mask = ~causal_mask
            else:
                mask = mask & ~causal_mask
            causal = False

        # manually handle causal mask, if another mask was given

        if exists(mask) and causal:
            causal_mask = self.create_causal_mask(q_len, k_len, device = device)
            mask = mask & ~causal_mask
            causal = False

        # protect against an entire row being masked out

        row_is_entirely_masked = None

        if exists(mask):
            row_is_entirely_masked = ~mask.any(dim = -1)

        # handle alibi positional bias
        # convert from bool to float

        if exists(attn_bias):
            attn_bias = attn_bias.expand(batch, heads, -1, -1)

            # if mask given, the mask would already contain the causal mask from above logic
            # otherwise, if no mask given but still causal, mask out alibi positional bias to a large negative number

            mask_value = -torch.finfo(q.dtype).max

            if exists(mask):
                attn_bias = attn_bias.masked_fill(~mask, mask_value // 2)
            elif causal:
                causal_mask = self.create_causal_mask(q_len, k_len, device = device)
                attn_bias = attn_bias.masked_fill(causal_mask, mask_value // 2)
                causal = False

            # scaled_dot_product_attention handles attn_mask either as bool or additive bias
            # make it an additive bias here

            mask = attn_bias

        # pytorch 2.0 flash attn: q, k, v, mask, dropout, causal, softmax_scale

        with self.sdp_context_manager():
            out = F.scaled_dot_product_attention(
                q, k, v,
                attn_mask = mask,
                dropout_p = self.dropout if self.training else 0., 
                is_causal = causal
            )

        # for a row that is entirely masked out, should zero out the output of that row token

        if exists(row_is_entirely_masked) and row_is_entirely_masked.any():
            out = out.masked_fill(row_is_entirely_masked[..., None], 0.)

        return out, Intermediates()

    def forward(

        self,

        q, k, v,

        mask = None,

        attn_bias = None,

        prev_attn = None

    ):
        """

        einstein notation

        b - batch

        h - heads

        n, i, j - sequence length (base sequence length, source, target)

        d - feature dimension

        """

        n, heads, kv_heads, device = q.shape[-2], q.shape[1], k.shape[1], q.device

        scale = default(self.scale, q.shape[-1] ** -0.5)

        causal = self.causal

        # handle key padding mask

        if exists(mask) and mask.ndim == 2:
            mask = rearrange(mask, 'b j -> b 1 1 j')

        # handle kv cached decoding

        if n == 1 and causal:
            causal = False

        # handle grouped multi-query attention

        if kv_heads == 1:
            k, v = tuple(rearrange(t, 'b 1 n d -> b n d') for t in (k, v))
        elif kv_heads < heads:
            k, v = tuple(repeat(t, 'b kvh n d -> b (r kvh) n d', r = heads // kv_heads) for t in (k, v))

        # handle zero kv, as means for allowing network to attend to nothing

        if self.add_zero_kv:
            k, v = tuple(F.pad(t, (0, 0, 1, 0), value = 0.) for t in (k, v))

            if exists(mask):
                mask = F.pad(mask, (1, 0), value = True)

            if exists(attn_bias):
                attn_bias = F.pad(attn_bias, (1, 0), value = 0.)

        if self.flash:
            assert not exists(prev_attn), 'residual attention not compatible with flash attention'
            return self.flash_attn(q, k, v, mask = mask, attn_bias = attn_bias)

        kv_einsum_eq = 'b j d' if k.ndim == 3 else 'b h j d'

        if not self.l2_distance:
            sim = einsum(f'b h i d, {kv_einsum_eq} -> b h i j', q, k)
        else:
            sim = -qk_l2_dist_squared(q, k)

        sim = sim * scale

        if exists(prev_attn):
            sim = sim + prev_attn

        qk_similarities = sim.clone()

        if exists(self.pre_scale_post_talking_heads):
            pre_to_post_scale = self.pre_scale_post_talking_heads(sim)

        if exists(self.pre_softmax_talking_heads):
            sim = sim + self.pre_softmax_talking_heads(sim)

        if exists(attn_bias):
            sim = sim + attn_bias

        if self.softclamp_logits:
            sim = softclamp(sim, self.logit_softclamp_value)

        i, j, dtype = *sim.shape[-2:], sim.dtype

        mask_value = -torch.finfo(sim.dtype).max

        if exists(mask):
            sim = sim.masked_fill(~mask, mask_value)

        if causal:
            causal_mask = self.create_causal_mask(i, j, device = device)
            sim = sim.masked_fill(causal_mask, mask_value)

        row_is_entirely_masked = None

        if exists(mask):
            row_is_entirely_masked = ~mask.any(dim = -1)

        if exists(self.cope):
            sim = sim + self.cope(q, sim)

        if self.selective:
            sim = selective_attn(sim)

        pre_softmax_attn = sim

        attn = self.attn_fn(sim)

        attn = attn.type(dtype)

        post_softmax_attn = attn

        attn = self.attn_dropout(attn)

        if exists(self.post_softmax_talking_heads):
            attn = self.post_softmax_talking_heads(attn)

        if exists(self.pre_scale_post_talking_heads):
            attn = attn * pre_to_post_scale

        out = einsum(f'b h i j, {kv_einsum_eq} -> b h i d', attn, v)

        intermediates = Intermediates(
            qk_similarities = qk_similarities,
            pre_softmax_attn = pre_softmax_attn,
            post_softmax_attn = post_softmax_attn
        )

        if exists(row_is_entirely_masked) and row_is_entirely_masked.any():
            out = out.masked_fill(row_is_entirely_masked[..., None], 0.)

        return out, intermediates

#=================================================================================================================================
# x_transformers.py
#=================================================================================================================================

from typing import Callable

import math
from copy import deepcopy
from random import random, randrange
from packaging import version

import torch
from torch.amp import autocast
import torch.nn.functional as F
from torch import nn, einsum, tensor, Tensor, cat, stack, arange, is_tensor
from torch.utils._pytree import tree_flatten, tree_unflatten
from torch.nn import Module, ModuleList, ModuleDict

from functools import partial, wraps
from collections import namedtuple
from contextlib import nullcontext
from dataclasses import dataclass

import einx
from einops.layers.torch import Rearrange
from einops import rearrange, repeat, reduce, pack, unpack

# einstein notation

# b - batch
# n - sequence
# d - feature dimension
# h - attention heads
# i, j - sequence (source, target)

# constants

DEFAULT_DIM_HEAD = 64

@dataclass
class LayerIntermediates:
    hiddens:            list[Tensor] | None = None   # all hiddens, before the final norm (in pre-norm architecture)
    last_hidden:        Tensor | None = None         # very last hidden after all attention layers, after the final norm
    attn_intermediates: list[Intermediates] | None = None
    layer_hiddens:      list[Tensor] | None = None
    attn_z_loss:        Tensor | None = None
    mems:               Tensor | None = None
    memory_tokens:      Tensor | None = None
    logit_entropies:    Tensor | None = None

LinearNoBias = partial(nn.Linear, bias = False)

# helpers

def exists(val):
    return val is not None

def default(val, d):
    if exists(val):
        return val
    return d() if callable(d) else d

def identity(t, *args, **kwargs):
    return t

def first(it, default = None):
    return it[0] if len(it) > 0 else default

def is_empty(x):
    return len(x) == 0

def cast_tuple(val, depth = 1):
    return val if isinstance(val, tuple) else (val,) * depth

def divisible_by(num, den):
    return (num % den) == 0

def maybe(fn = None):
    if not exists(fn):
        fn = identity

    @wraps(fn)
    def inner(x, *args, **kwargs):
        if not exists(x):
            return x
        return fn(x, *args, **kwargs)
    return inner

def at_most_one_of(*bools):
    return sum(map(int, bools)) <= 1

class always():
    def __init__(self, val):
        self.val = val
    def __call__(self, *args, **kwargs):
        return self.val

class not_equals():
    def __init__(self, val):
        self.val = val
    def __call__(self, x, *args, **kwargs):
        return x != self.val

class equals():
    def __init__(self, val):
        self.val = val
    def __call__(self, x, *args, **kwargs):
        return x == self.val

def Sequential(*modules):
    return nn.Sequential(*filter(exists, modules))

# tensor helpers

def log(t, eps = 1e-20):
    return t.clamp(min = eps).log()

def max_neg_value(tensor):
    return -torch.finfo(tensor.dtype).max

def l2norm(t, groups = 1):
    t = rearrange(t, '... (g d) -> ... g d', g = groups)
    t = F.normalize(t, p = 2, dim = -1)
    return rearrange(t, '... g d -> ... (g d)')

def softclamp(t, value):
    return (t / value).tanh() * value

def masked_mean(t, mask = None, dim = 1):
    if not exists(mask):
        return t.mean(dim = dim)

    dims_append = (1,) * (t.ndim - mask.ndim)
    mask = mask.reshape(*mask.shape, *dims_append)

    num = (t * mask).sum(dim = dim)
    den = mask.sum(dim = dim).clamp(min = 1.)
    return num / den

def pad_at_dim(t, pad: tuple[int, int], dim = -1, value = 0.):
    if pad == (0, 0):
        return t

    dims_from_right = (- dim - 1) if dim < 0 else (t.ndim - dim - 1)
    zeros = ((0, 0) * dims_from_right)
    return F.pad(t, (*zeros, *pad), value = value)

def or_reduce(masks):
    head, *body = masks
    for rest in body:
        head = head | rest
    return head

# entropy

def calc_entropy(

    t: Tensor,

    is_prob = False

):
    prob = t.softmax(dim = -1) if not is_prob else t
    return -(prob * log(prob)).sum(dim = -1)

# auxiliary loss helpers

def calc_z_loss(

    pre_softmax_attns: list[Tensor],

    mask = None,

    weight = 1.

):
    # the same loss applied to the mixture of experts router logits in https://arxiv.org/abs/2202.08906
    # in the paper, in a tiny footnote, they mention using it on attention logits with stabilizing effects
    # also used in PaLM as one of the measures

    lse = 0.

    for attn in pre_softmax_attns:
        lse = lse + attn.logsumexp(dim = -1)

    loss = torch.square(lse)
    loss = reduce(loss, 'b h n -> b n', 'sum')

    if not exists(mask):
        return loss.mean() * weight

    loss = loss[mask].sum() / mask.sum().clamp(min = 1e-5)
    return loss * weight

# init helpers

def init_zero_(layer):
    nn.init.constant_(layer.weight, 0.)
    if exists(layer.bias):
        nn.init.constant_(layer.bias, 0.)

# keyword argument helpers

def pick_and_pop(keys, d):
    values = tuple(d.pop(key) for key in  keys)
    return dict(zip(keys, values))

def group_dict_by_key(cond, d):
    return_val = [dict(),dict()]
    for key in d.keys():
        match = bool(cond(key))
        ind = int(not match)
        return_val[ind][key] = d[key]
    return tuple(return_val)

def string_begins_with(prefix, str):
    return str.startswith(prefix)

def group_by_key_prefix(prefix, d):
    return group_dict_by_key(partial(string_begins_with, prefix), d)

def groupby_prefix_and_trim(prefix, d):
    kwargs_with_prefix, kwargs = group_dict_by_key(partial(string_begins_with, prefix), d)
    prefix_len = len(prefix)
    kwargs_without_prefix = {key[prefix_len:]: value for key, value in kwargs_with_prefix.items()}
    return kwargs_without_prefix, kwargs

# structured dropout, more effective than traditional attention dropouts

def dropout_seq(seq, mask, dropout):
    b, n, *_, device = *seq.shape, seq.device
    logits = torch.randn(b, n, device = device)

    if exists(mask):
        mask_value = max_neg_value(logits)
        logits = logits.masked_fill(~mask, mask_value)

    keep_prob = 1. - dropout
    num_keep = max(1,  int(keep_prob * n))
    keep_indices = logits.topk(num_keep, dim = 1).indices

    batch_indices = arange(b, device = device)
    batch_indices = rearrange(batch_indices, 'b -> b 1')

    seq = seq[batch_indices, keep_indices]

    if exists(mask):
        seq_counts = mask.sum(dim = -1)
        seq_keep_counts = torch.ceil(seq_counts * keep_prob).int()
        keep_mask = arange(num_keep, device = device) < rearrange(seq_keep_counts, 'b -> b 1')

        mask = mask[batch_indices, keep_indices] & keep_mask

    return seq, mask

# activations

class ReluSquared(Module):
    def forward(self, x):
        return F.relu(x) ** 2

# embedding

class TokenEmbedding(Module):
    def __init__(self, dim, num_tokens, l2norm_embed = False):
        super().__init__()
        self.l2norm_embed = l2norm_embed
        self.emb = nn.Embedding(num_tokens, dim)

    def forward(self, x):
        token_emb = self.emb(x.long())
        return l2norm(token_emb) if self.l2norm_embed else token_emb

    def init_(self):
        if self.l2norm_embed:
            nn.init.normal_(self.emb.weight, std=1e-5)
            return
        nn.init.kaiming_normal_(self.emb.weight)

# positional embeddings

class AbsolutePositionalEmbedding(Module):
    def __init__(self, dim, max_seq_len, l2norm_embed = False):
        super().__init__()
        self.scale = dim ** -0.5 if not l2norm_embed else 1.
        self.max_seq_len = max_seq_len
        self.l2norm_embed = l2norm_embed
        self.emb = nn.Embedding(max_seq_len, dim)

    def forward(self, x, pos = None, seq_start_pos = None):
        seq_len, device = x.shape[1], x.device
        assert seq_len <= self.max_seq_len, f'you are passing in a sequence length of {seq_len} but your absolute positional embedding has a max sequence length of {self.max_seq_len}'

        if not exists(pos):
            pos = arange(seq_len, device = device)

        if exists(seq_start_pos):
            pos = (pos - seq_start_pos[..., None]).clamp(min = 0)

        pos_emb = self.emb(pos)
        pos_emb = pos_emb * self.scale
        return l2norm(pos_emb) if self.l2norm_embed else pos_emb

class ScaledSinusoidalEmbedding(Module):
    def __init__(self, dim, theta = 10000):
        super().__init__()
        assert divisible_by(dim, 2)
        self.scale = nn.Parameter(torch.ones(1) * dim ** -0.5)

        half_dim = dim // 2
        freq_seq = arange(half_dim).float() / half_dim
        inv_freq = theta ** -freq_seq
        self.register_buffer('inv_freq', inv_freq, persistent = False)

    def forward(self, x, pos = None, seq_start_pos = None):
        seq_len, device = x.shape[1], x.device

        if not exists(pos):
            pos = arange(seq_len, device = device)

        if exists(seq_start_pos):
            pos = pos - seq_start_pos[..., None]

        emb = einsum('i, j -> i j', pos, self.inv_freq)
        emb = cat((emb.sin(), emb.cos()), dim = -1)
        return emb * self.scale

class RelativePositionBias(Module):
    def __init__(self, scale, causal = False, num_buckets = 32, max_distance = 128, heads = 8):
        super().__init__()
        self.scale = scale
        self.causal = causal
        self.num_buckets = num_buckets
        self.max_distance = max_distance
        self.relative_attention_bias = nn.Embedding(num_buckets, heads)

    @staticmethod
    def _relative_position_bucket(relative_position, causal = True, num_buckets = 32, max_distance = 128):
        ret = 0
        n = -relative_position
        if not causal:
            num_buckets //= 2
            ret += (n < 0).long() * num_buckets
            n = torch.abs(n)
        else:
            n = torch.max(n, torch.zeros_like(n))

        max_exact = num_buckets // 2
        is_small = n < max_exact

        val_if_large = max_exact + (
            torch.log(n.float() / max_exact) / math.log(max_distance / max_exact) * (num_buckets - max_exact)
        ).long()
        val_if_large = torch.min(val_if_large, torch.full_like(val_if_large, num_buckets - 1))

        ret += torch.where(is_small, n, val_if_large)
        return ret

    @property
    def device(self):
        return next(self.parameters()).device

    def forward(self, i, j):
        device = self.device
        q_pos = arange(j - i, j, dtype = torch.long, device = device)
        k_pos = arange(j, dtype = torch.long, device = device)
        rel_pos = einx.subtract('j, i -> i j', k_pos, q_pos)
        rp_bucket = self._relative_position_bucket(rel_pos, causal = self.causal, num_buckets = self.num_buckets, max_distance = self.max_distance)
        values = self.relative_attention_bias(rp_bucket)
        bias = rearrange(values, 'i j h -> h i j')
        return bias * self.scale

class CoPE(Module):
    """

    Appendix B of https://arxiv.org/abs/2405.18719

    """
    def __init__ (
        self,
        dim,
        heads,
        max_pos,
        soft_onehot = False,
        talking_heads = False,
        soft_onehot_temp = 5e-2
    ):
        super () . __init__ ()
        self.max_pos = max_pos
        self.pos_emb = nn.Parameter(torch.zeros(max_pos, dim))

        self.talking_heads = nn.Conv2d(heads, heads, 1, bias = False) if talking_heads else None
        self.soft_onehot = soft_onehot
        self.soft_onehot_temp = soft_onehot_temp

        if not soft_onehot:
            return

        self.register_buffer('positions', arange(max_pos))

    def forward(self, query, attn_logits):

        if exists(self.talking_heads):
            i, j = attn_logits.shape[-2:]
            causal_mask = attn_logits.new_ones(i, j).triu_(j - i + 1).bool()

            attn_logits = self.talking_heads(attn_logits)

            attn_logits = attn_logits.masked_fill(causal_mask, -torch.finfo(attn_logits.dtype).max)

        # compute positions

        gates = attn_logits.sigmoid()

        pos = gates.flip(-1).cumsum(dim = -1).flip(-1)
        pos = pos.clamp(max = self.max_pos - 1)

        logits_int = einsum('b h n d, p d -> b h n p', query, self.pos_emb)

        if self.soft_onehot:
            diff_pos = einx.subtract('i, j -> i j', pos, self.positions).abs()
            soft_onehot_pos = F.softmax(-diff_pos / self.soft_onehot_temp, dim = -1)
            cope_pos_emb = einsum('b h i j p, b h i p -> b h i j', soft_onehot_pos, logits_int)
        else:
            # interpolate from integer positions
            pos_ceil = pos.ceil().long()
            pos_floor = pos.floor().long()
            logits_ceil = logits_int.gather(-1, pos_ceil)
            logits_floor = logits_int.gather(-1, pos_floor)

            w = pos - pos_floor
            cope_pos_emb = logits_ceil * w + logits_floor * (1 - w)

        return cope_pos_emb

class DynamicPositionBias(Module):
    def __init__(self, dim, *, heads, depth, log_distance = False, norm = False):
        super().__init__()
        assert depth >= 1, 'depth for dynamic position bias MLP must be greater or equal to 1'
        self.log_distance = log_distance

        self.mlp = ModuleList([])

        self.mlp.append(Sequential(
            nn.Linear(1, dim),
            LayerNorm(dim) if norm else None,
            nn.SiLU()
        ))

        for _ in range(depth - 1):
            self.mlp.append(Sequential(
                nn.Linear(dim, dim),
                nn.LayerNorm(dim) if norm else None,
                nn.SiLU()
            ))

        self.mlp.append(nn.Linear(dim, heads))

    @property
    def device(self):
        return next(self.parameters()).device

    def forward(self, i, j):
        n, device = j, self.device

        # get the (n x n) matrix of distances
        seq_arange = arange(j - i, j, device = device)
        context_arange = arange(j, device = device)
        indices = einx.subtract('i, j -> i j', seq_arange, context_arange)
        indices += (j - 1)

        # input to continuous positions MLP
        pos = arange(-j + 1, j, device = device).float()
        pos = rearrange(pos, '... -> ... 1')

        if self.log_distance:
            pos = torch.sign(pos) * torch.log(pos.abs() + 1)  # log of distance is sign(rel_pos) * log(abs(rel_pos) + 1)

        for layer in self.mlp:
            pos = layer(pos)

        # get position biases        
        bias = pos[indices]
        bias = rearrange(bias, 'i j h -> h i j')
        return bias

class AlibiPositionalBias(Module):
    def __init__(

        self,

        heads,

        total_heads = None,

        slopes: list[int] | None = None,

        **kwargs

    ):
        super().__init__()
        self.heads = heads
        self.total_heads = default(total_heads, heads)

        slopes = Tensor(default(slopes, self._get_slopes(heads)))
        slopes = rearrange(slopes, 'h -> h 1 1')

        self.register_buffer('slopes', slopes, persistent = False)
        self.register_buffer('bias', None, persistent = False)
    
    @property
    def device(self):
        return next(self.buffers()).device

    @staticmethod
    def _get_slopes(heads):
        def get_slopes_power_of_2(n):
            start = (2**(-2**-(math.log2(n)-3)))
            ratio = start
            return [start*ratio**i for i in range(n)]

        if math.log2(heads).is_integer():
            return get_slopes_power_of_2(heads)

        closest_power_of_2 = 2 ** math.floor(math.log2(heads))
        return get_slopes_power_of_2(closest_power_of_2) + get_slopes_power_of_2(2 * closest_power_of_2)[0::2][:heads-closest_power_of_2]

    def forward_custom_pos(

        self,

        pos_i: Tensor,

        pos_j: Tensor | None = None

    ):
        h, device = self.total_heads, self.device

        pos_j = default(pos_j, pos_i)
        bias = -einx.subtract('... j, ... i -> ... i j', pos_j, pos_i).abs()

        if bias.ndim == 3:
            bias = rearrange(bias, 'b i j -> b 1 i j')

        bias = bias * self.slopes
        num_heads_unalibied = h - bias.shape[-3]
        bias = pad_at_dim(bias, (0, num_heads_unalibied), dim = -3)

        return bias

    def forward(self, i, j):
        h, device = self.total_heads, self.device

        if exists(self.bias) and self.bias.shape[-1] >= j and self.bias.shape[-2] >= i:
            return self.bias[..., -i:, -j:]

        seq_arange = arange(j - i, j, device = device)
        context_arange = arange(j, device = device)
        bias = -einx.subtract('j, i -> 1 i j', context_arange, seq_arange).abs()

        bias = bias * self.slopes
        num_heads_unalibied = h - bias.shape[-3]
        bias = pad_at_dim(bias, (0, num_heads_unalibied), dim = -3)

        self.register_buffer('bias', bias, persistent = False)
        return self.bias

class DataDependentAlibi(Module):
    """ https://openreview.net/forum?id=q2Lnyegkr8 """

    def __init__(

        self,

        dim,

        heads,

        causal = True,

        bias_init = 5.,

        post_log_scale = 1.,

    ):
        super().__init__()

        self.causal = causal

        linear = nn.Linear(dim, heads * (1 if causal else 2))

        self.to_forget_gates = nn.Sequential(
            linear,
            Rearrange('b n h -> b h n'),
            nn.LogSigmoid()
        )

        nn.init.constant_(linear.bias, bias_init)
        self.post_log_scale = post_log_scale

    def forward(self, x):
        bidirectional = not self.causal

        forget_gates = self.to_forget_gates(x) * self.post_log_scale

        forget_gates = forget_gates.cumsum(dim = -1)

        if bidirectional:
            forget_gates, forget_gates_reversed = forget_gates.chunk(2, dim = 1)

        forget_gates = einx.subtract('b h i, b h j -> b h i j', forget_gates, forget_gates)

        if bidirectional:
            forget_gates_reversed = einx.subtract('b h j, b h i -> b h i j', forget_gates_reversed, forget_gates_reversed)
            forget_gates = forget_gates.tril() + forget_gates_reversed.triu()

        return forget_gates

class PerRowDataDependentAlibi(Module):
    """ same as data dependent alibi from forgetting transformer, but the forgetting gates are also derived by a queries and keys with a small head dimension """

    def __init__(

        self,

        dim,

        heads,

        causal = True,

        dim_head = 8,

        post_log_scale = 1.

    ):
        super().__init__()
        assert causal, 'bidirectional not supported yet'

        self.scale = dim_head ** -0.5

        linear = nn.Linear(dim, heads * dim_head * 2, bias = False)

        self.to_forget_gates = nn.Sequential(
            linear,
            Rearrange('b n (qk h d) -> qk b h n d', qk = 2, d = dim_head)
        )

        self.post_log_scale = post_log_scale

    def forward(self, x):
        q, k = self.to_forget_gates(x)
        forget_gates = einsum('... i d, ... j d -> ... i j', q, k) * self.scale

        forget_gates = F.logsigmoid(forget_gates) * self.post_log_scale

        # mask out upper triangle + diagonal

        n = x.shape[-2]
        causal_mask = torch.ones((n, n), dtype = torch.bool, device = x.device).triu()

        forget_gates = forget_gates.masked_fill(causal_mask, 0.)

        # reverse cumsum

        forget_gates = forget_gates.flip(dims = (-1,))
        forget_gates = forget_gates.cumsum(dim = -1)
        forget_gates = forget_gates.flip(dims = (-1,))

        return forget_gates

class RotaryEmbedding(Module):
    def __init__(

        self,

        dim,

        use_xpos = False,

        scale_base = 512,

        interpolation_factor = 1.,

        base = 10000,

        base_rescale_factor = 1.

    ):
        super().__init__()
        # proposed by reddit user bloc97, to rescale rotary embeddings to longer sequence length without fine-tuning
        # has some connection to NTK literature
        # https://www.reddit.com/r/LocalLLaMA/comments/14lz7j5/ntkaware_scaled_rope_allows_llama_models_to_have/
        base *= base_rescale_factor ** (dim / (dim - 2))

        inv_freq = 1. / (base ** (arange(0, dim, 2).float() / dim))
        self.register_buffer('inv_freq', inv_freq)

        assert interpolation_factor >= 1.
        self.interpolation_factor = interpolation_factor

        if not use_xpos:
            self.register_buffer('scale', None)
            return

        scale = (arange(0, dim, 2) + 0.4 * dim) / (1.4 * dim)

        self.scale_base = scale_base
        self.register_buffer('scale', scale)

    def forward_from_seq_len(self, seq_len):
        device = self.inv_freq.device

        t = arange(seq_len, device = device)
        return self.forward(t)

    @autocast('cuda', enabled = False)
    def forward(self, t):
        max_pos = t.max() + 1

        if t.ndim == 1:
            t = rearrange(t, 'n -> 1 n')

        freqs = torch.einsum('b i , j -> b i j', t.type_as(self.inv_freq), self.inv_freq) / self.interpolation_factor
        freqs = stack((freqs, freqs), dim = -1)
        freqs = rearrange(freqs, '... d r -> ... (d r)')

        if not exists(self.scale):
            return freqs, 1.

        power = (t - (max_pos // 2)) / self.scale_base
        scale = self.scale ** rearrange(power, '... n -> ... n 1')
        scale = stack((scale, scale), dim = -1)
        scale = rearrange(scale, '... d r -> ... (d r)')

        return freqs, scale

def rotate_half(x):
    x = rearrange(x, '... (d r) -> ... d r', r = 2)
    x1, x2 = x.unbind(dim = -1)
    x = stack((-x2, x1), dim = -1)
    return rearrange(x, '... d r -> ... (d r)')

@autocast('cuda', enabled = False)
def apply_rotary_pos_emb(t, freqs, scale = 1):
    rot_dim, seq_len, orig_dtype = freqs.shape[-1], t.shape[-2], t.dtype

    freqs = freqs[:, -seq_len:, :]
    scale = scale[:, -seq_len:, :] if isinstance(scale, torch.Tensor) else scale

    if t.ndim == 4 and freqs.ndim == 3:
        freqs = rearrange(freqs, 'b n d -> b 1 n d')

    # partial rotary embeddings, Wang et al. GPT-J
    t, t_unrotated = t[..., :rot_dim], t[..., rot_dim:]
    t = (t * freqs.cos() * scale) + (rotate_half(t) * freqs.sin() * scale)
    out = cat((t, t_unrotated), dim = -1)

    return out.type(orig_dtype)

# norms

class Scale(Module):
    def __init__(self, value, fn):
        super().__init__()
        self.value = value
        self.fn = fn

    def forward(self, x, **kwargs):
        out = self.fn(x, **kwargs)
        scale_fn = lambda t: t * self.value

        if not isinstance(out, tuple):
            return scale_fn(out)

        return (scale_fn(out[0]), *out[1:])

class LayerNorm(Module):
    def __init__(

        self,

        dim,

        unit_offset = False

    ):
        """

        bias-less layernorm has been shown to be more stable. most newer models have moved towards rmsnorm, also bias-less

        """
        super().__init__()
        self.unit_offset = unit_offset

        self.ln = nn.LayerNorm(dim, elementwise_affine = False)
        self.gamma = nn.Parameter(torch.ones(dim))
        nn.init.constant_(self.gamma, 1. - float(unit_offset))

    def forward(self, x):
        normed = self.ln(x)
        gamma = self.gamma + float(self.unit_offset)
        return normed * gamma

class AdaptiveLayerNorm(Module):
    def __init__(

        self,

        dim,

        dim_condition = None

    ):
        super().__init__()
        dim_condition = default(dim_condition, dim)

        self.ln = nn.LayerNorm(dim, elementwise_affine = False)
        self.to_gamma = LinearNoBias(dim_condition, dim)
        nn.init.zeros_(self.to_gamma.weight)

    def forward(self, x, *, condition):
        if condition.ndim == 2:
            condition = rearrange(condition, 'b d -> b 1 d')

        normed = self.ln(x)
        gamma = self.to_gamma(condition)
        return normed * (gamma + 1.)

class ScaleNorm(Module):
    def __init__(

        self,

        dim,

        unit_offset = False

    ):
        super().__init__()
        self.unit_offset = unit_offset
        self.scale = dim ** 0.5

        self.g = nn.Parameter(torch.zeros(1))
        nn.init.constant_(self.g, 1. - float(unit_offset))

    def forward(self, x):
        gamma = self.g + float(self.unit_offset)
        return F.normalize(x, dim = -1) * self.scale * gamma

class RMSNorm(Module):
    def __init__(

        self,

        dim,

        unit_offset = False

    ):
        super().__init__()
        self.unit_offset = unit_offset
        self.scale = dim ** 0.5

        self.g = nn.Parameter(torch.zeros(dim))
        nn.init.constant_(self.g, 1. - float(unit_offset))

    def forward(self, x):
        gamma = self.g + float(self.unit_offset)
        return F.normalize(x, dim = -1) * self.scale * gamma

class AdaptiveRMSNorm(Module):
    def __init__(

        self,

        dim,

        dim_condition = None

    ):
        super().__init__()
        self.scale = dim ** 0.5
        dim_condition = default(dim_condition, dim)

        self.to_gamma = LinearNoBias(dim_condition, dim)
        nn.init.zeros_(self.to_gamma.weight)

    def forward(self, x, *, condition):
        if condition.ndim == 2:
            condition = rearrange(condition, 'b d -> b 1 d')

        normed = F.normalize(x, dim = -1)
        gamma = self.to_gamma(condition)
        return normed * self.scale * (gamma + 1.)

class SimpleRMSNorm(Module):
    def __init__(

        self,

        dim,

        **kwargs

    ):
        super().__init__()
        self.scale = dim ** 0.5

    def forward(self, x):
        return F.normalize(x, dim = -1) * self.scale

class MultiheadRMSNorm(Module):
    def __init__(self, dim, heads):
        super().__init__()
        self.rmsnorm = SimpleRMSNorm(dim)
        self.gamma = nn.Parameter(torch.zeros(heads, 1, dim))

    def forward(self, x):
        return self.rmsnorm(x) * (self.gamma + 1.)

class DynamicTanh(Module):
    """ https://arxiv.org/abs/2503.10622 """
    def __init__(

        self,

        dim,

        init_alpha = 1.,

        gamma = 1.,

        beta = 0.,

        unit_offset = False

    ):
        super().__init__()
        self.pre_tanh_scale = nn.Parameter(tensor(init_alpha))

        self.gamma = nn.Parameter(torch.ones(dim))
        self.beta = nn.Parameter(torch.zeros(dim))

        self.pre_tanh_scale_offset = init_alpha if unit_offset else 0.
        self.gamma_offset = float(unit_offset)

        nn.init.constant_(self.pre_tanh_scale, 0 if unit_offset else init_alpha)
        nn.init.constant_(self.gamma, 1. - float(unit_offset))

    def forward(self, x):
        pre_tanh_scale = self.pre_tanh_scale + self.pre_tanh_scale_offset
        gamma = self.gamma + self.gamma_offset
        return (x * pre_tanh_scale).tanh() * gamma + self.beta

# residual and residual gates

class Residual(Module):
    def __init__(self, dim, scale_residual = False, scale_residual_constant = 1., **kwargs):
        super().__init__()
        self.residual_scale = nn.Parameter(torch.ones(dim)) if scale_residual else None
        self.scale_residual_constant = scale_residual_constant

    def prepare(self, residual):
        return residual, residual, dict()

    def forward(self, x, residual, **kwargs):
        if exists(self.residual_scale):
            residual = residual * self.residual_scale

        if self.scale_residual_constant != 1:
            residual = residual * self.scale_residual_constant

        return x + residual

class GRUGating(Module):
    def __init__(self, dim, scale_residual = False, **kwargs):
        super().__init__()
        self.gru = nn.GRUCell(dim, dim)
        self.residual_scale = nn.Parameter(torch.ones(dim)) if scale_residual else None

    def prepare(self, residual):
        return residual, residual, dict()

    def forward(self, x, residual, **kwargs):
        if exists(self.residual_scale):
            residual = residual * self.residual_scale

        gated_output = self.gru(
            rearrange(x, 'b n d -> (b n) d'),
            rearrange(residual, 'b n d -> (b n) d')
        )

        return gated_output.reshape_as(x)

# hyper connections

class HyperConnection(Module):
    def __init__(

        self,

        dim,

        *,

        layer_index,

        num_residual_streams,

        num_input_views = 1,

        tanh = True,

        **kwargs

    ):
        """

        https://arxiv.org/abs/2409.19606

        Appendix J - Algorithm 2, Dynamic only

        """
        super().__init__()

        self.act = nn.Tanh() if tanh else nn.Identity()

        self.norm = nn.LayerNorm(dim, bias = False)

        self.num_residual_streams = num_residual_streams
        self.layer_index = layer_index

        self.static_beta = nn.Parameter(torch.ones(num_residual_streams))

        init_alpha0 = torch.zeros((num_residual_streams, num_input_views))
        init_alpha0[layer_index % num_residual_streams, :] = 1.

        self.static_alpha = nn.Parameter(cat([init_alpha0, torch.eye(num_residual_streams)], dim = 1))

        self.dynamic_alpha_fn = nn.Parameter(torch.zeros(dim, num_residual_streams + num_input_views))
        self.dynamic_alpha_scale = nn.Parameter(torch.ones(()) * 1e-2)

        self.num_input_views = num_input_views

        self.dynamic_beta_fn = nn.Parameter(torch.zeros(dim))
        self.dynamic_beta_scale = nn.Parameter(torch.ones(()) * 1e-2)

    def prepare(self, residuals):

        residuals = rearrange(residuals, '(b s) n d -> b n s d', s = self.num_residual_streams)

        normed = self.norm(residuals)

        wc_weight = self.act(normed @ self.dynamic_alpha_fn)
        dynamic_alpha = wc_weight * self.dynamic_alpha_scale
        alpha = dynamic_alpha + self.static_alpha

        dc_weight = self.act(normed @ self.dynamic_beta_fn)
        dynamic_beta = dc_weight * self.dynamic_beta_scale
        beta = dynamic_beta + self.static_beta

        # width connection

        mix_h = einsum('... s t, ... s d -> ... t d', alpha, residuals)

        views = self.num_input_views

        if views == 1:
            branch_input, residuals = mix_h[..., 0, :], mix_h[..., 1:, :]
        else:
            branch_input, residuals = mix_h[..., :views, :], mix_h[..., views:, :]
            branch_input = rearrange(branch_input, '... v d -> v ... d')

        return branch_input, residuals, dict(beta = beta)

    def forward(self, x, residuals, *, beta):
        residuals = einsum('b n d, b n s -> b n s d', x, beta) + residuals
        return rearrange(residuals, 'b n s d -> (b s) n d')

# LIMe - layer integrated memory (dynamic version)

class DynamicLIMe(Module):
    def __init__(

        self,

        dim,

        num_layers,

        num_views = 1,

        norm = True,

        use_softmax = True

    ):
        super().__init__()
        self.num_layers = num_layers
        self.multiple_views = num_views > 1

        self.to_weights = Sequential(
            RMSNorm(dim) if norm else None,
            nn.Linear(dim, num_views * num_layers),
            Rearrange('... (views layers) -> views ... layers', views = num_views),
            nn.Softmax(dim = -1) if use_softmax else nn.ReLU()
        )

    def forward(

        self,

        x,

        hiddens

    ):

        if not is_tensor(hiddens):
            hiddens = stack(hiddens)

        assert hiddens.shape[0] == self.num_layers, f'expected hiddens to have {self.num_layers} layers but received {tuple(hiddens.shape)} instead (first dimension must be layers)'

        weights = self.to_weights(x)

        out = einsum('l b n d, v b n l -> v b n d', hiddens, weights)

        if self.multiple_views:
            return out

        return rearrange(out, '1 ... -> ...')

# token shifting

def shift(t, amount, mask = None):
    if amount == 0:
        return t

    amount = min(amount, t.shape[1])

    if exists(mask):
        t = t.masked_fill(~mask[..., None], 0.)

    return pad_at_dim(t, (amount, -amount), dim = - 2, value = 0.)

class ShiftTokens(Module):
    def __init__(self, shifts, fn):
        super().__init__()
        self.fn = fn
        self.shifts = tuple(shifts)

    def forward(self, x, **kwargs):
        mask = kwargs.get('mask', None)
        shifts = self.shifts
        segments = len(shifts)
        feats_per_shift = x.shape[-1] // segments
        splitted = x.split(feats_per_shift, dim = -1)
        segments_to_shift, rest = splitted[:segments], splitted[segments:]
        segments_to_shift = [shift(*args, mask = mask) for args in zip(segments_to_shift, shifts)]
        x = cat((*segments_to_shift, *rest), dim = -1)
        return self.fn(x, **kwargs)

class FoldAxially(Module):
    def __init__(

        self,

        axial_dim,

        fn: Module

    ):
        super().__init__()
        self.fn = fn
        self.axial_dim = axial_dim # will fold the sequence as rearrange("b (n axial_dim) ... -> (b axial_dim) n ...")

    def forward(

        self,

        x,

        **kwargs

    ):
        if self.axial_dim == 1:
            return self.fn(x, **kwargs)

        seq_len, axial_dim = x.shape[1], self.axial_dim

        next_multiple = math.ceil(seq_len / axial_dim) * axial_dim
        x = pad_at_dim(x, (0, next_multiple - seq_len), dim = 1)

        x = rearrange(x, 'b (n axial_dim) ... -> (b axial_dim) n ...', axial_dim = axial_dim)

        out = self.fn(x, **kwargs)

        (out, *rest_out), tree_spec = tree_flatten(out)

        out = rearrange(out, '(b axial_dim) n ... -> b (n axial_dim) ...', axial_dim = axial_dim)

        out = out[:, :seq_len]
        out = tree_unflatten((out, *rest_out), tree_spec)

        return out

# post branch operator

class LayerScale(Module):
    def __init__(

        self,

        fn: Module,

        dim,

        init_value = 0.,

        unit_offset = False

    ):
        super().__init__()
        self.unit_offset = unit_offset

        self.fn = fn
        self.gamma = nn.Parameter(torch.zeros(dim))
        nn.init.constant_(self.gamma, init_value - float(unit_offset))

    def forward(self, x, **kwargs):
        out = self.fn(x, **kwargs)

        gamma = self.gamma + float(self.unit_offset)

        if isinstance(out, Tensor):
            return out * gamma

        out, *rest = out
        return out * gamma, *rest

class AdaptiveLayerScale(Module):
    def __init__(

        self,

        fn: Module,

        dim,

        dim_condition = None,

        init_bias_value = -2.

    ):
        super().__init__()
        self.fn = fn

        dim_condition = default(dim_condition, dim)
        self.to_gamma = nn.Linear(dim_condition, dim)

        nn.init.zeros_(self.to_gamma.weight)
        nn.init.constant_(self.to_gamma.bias, init_bias_value)

    def forward(self, x, *, condition, **kwargs):
        if condition.ndim == 2:
            condition = rearrange(condition, 'b d -> b 1 d')

        out = self.fn(x, **kwargs)
        gamma = self.to_gamma(condition).sigmoid()

        if isinstance(out, Tensor):
            return out * gamma

        out, *rest = out
        return out * gamma, *rest

# skip connection combining

class ConcatCombine(Module):
    def __init__(self, dim, prev_layer_ind):
        super().__init__()
        self.prev_layer_ind = prev_layer_ind
        self.combine = LinearNoBias(dim * 2, dim)

    def forward(self, x, prev_layers: list[Tensor]):
        skip = prev_layers[self.prev_layer_ind]
        concatted_skip = cat((skip, x), dim = -1)
        return self.combine(concatted_skip)

# feedforward

class GLU(Module):
    def __init__(

        self,

        dim_in,

        dim_out,

        activation: Callable,

        mult_bias = False

    ):
        super().__init__()
        self.act = activation
        self.proj = nn.Linear(dim_in, dim_out * 2)
        self.mult_bias = nn.Parameter(torch.ones(dim_out)) if mult_bias else 1.

    def forward(self, x):
        x, gate = self.proj(x).chunk(2, dim = -1)
        return x * self.act(gate) * self.mult_bias

class FeedForward(Module):
    def __init__(

        self,

        dim,

        dim_out = None,

        mult = 4,

        glu = False,

        glu_mult_bias = False,

        swish = False,

        relu_squared = False,

        custom_activation = None,

        post_act_ln = False,

        dropout = 0.,

        sublayer_dropout = 0.,

        no_bias = False,

        zero_init_output = False

    ):
        super().__init__()
        inner_dim = int(dim * mult)
        dim_out = default(dim_out, dim)

        if exists(custom_activation):
            activation = deepcopy(custom_activation)
        elif relu_squared:
            activation = ReluSquared()
        elif swish:
            activation = nn.SiLU()
        else:
            activation = nn.GELU()

        if glu:
            project_in = GLU(dim, inner_dim, activation, mult_bias = glu_mult_bias)
        else:
            project_in = nn.Sequential(
                nn.Linear(dim, inner_dim, bias = not no_bias),
                activation
            )

        self.ff = Sequential(
            project_in,
            LayerNorm(inner_dim) if post_act_ln else None,
            nn.Dropout(dropout),
            nn.Linear(inner_dim, dim_out, bias = not no_bias),
            nn.Dropout(sublayer_dropout) if sublayer_dropout > 0. else None
        )

        # init last linear layer to 0
        if zero_init_output:
            init_zero_(self.ff[-1])

    def forward(self, x):
        return self.ff(x)

# attention. it is all we need

class Attention(Module):
    def __init__(

        self,

        dim,

        dim_head = DEFAULT_DIM_HEAD,

        dim_context = None,

        heads = 8,

        causal = False,

        flash = False,

        pre_talking_heads = False,

        post_talking_heads = False,

        pre_scale_post_talking_heads = False,

        head_scale = False,

        sparse_topk = None,

        sparse_topk_straight_through = False,

        num_mem_kv = 0,

        dropout = 0.,

        sublayer_dropout = 0.,

        on_attn = False,

        gate_value_heads = False,

        swiglu_values = False,

        gate_values = False,

        zero_init_output = False,

        hard = False,

        max_attend_past = None,

        qk_norm = False,

        qk_norm_groups = 1,

        qk_norm_scale = 10,

        qk_norm_dim_scale = False,

        l2_distance = False,

        sigmoid = False,

        selective = False,

        custom_attn_fn: Callable | None = None,

        hybrid_module: Module | None = None,

        hybrid_mask_kwarg: str | None = None,

        hybrid_fold_axial_dim: int | None = None,

        hybrid_learned_mix = False,

        one_kv_head = False,

        kv_heads = None,

        value_dim_head = None,

        dim_out = None,

        add_zero_kv = False,         # same as add_zero_attn in pytorch

        rotate_num_heads = None,

        data_dependent_alibi = False,

        data_dependent_alibi_per_row = False,

        data_dependent_alibi_per_row_dim_head = 8,

        data_dependent_alibi_kwargs: dict = dict(),

        use_cope = False,

        cope_max_pos = 16,

        cope_soft_onehot_pos = False,

        cope_talking_heads = False,

        softclamp_logits = False,

        logit_softclamp_value = 50.,

        learned_value_residual_mix = False,

        laser = False,                # https://arxiv.org/abs/2411.03493v1

        laser_softclamp_value = 15.,

        qkv_receive_diff_residuals = False,

        use_latent_q = False,

        dim_latent_q = None,

        use_latent_kv = False,

        dim_latent_kv = None,

        latent_rope_subheads = None,

        onnxable = False,

        attend_sdp_kwargs: dict = dict(

            enable_flash = True,

            enable_math = True,

            enable_mem_efficient = True

        )

    ):
        super().__init__()
        dim_kv = default(dim_context, dim)

        self.scale = dim_head ** -0.5

        self.heads = heads
        self.causal = causal
        self.max_attend_past = max_attend_past

        assert not (exists(kv_heads) and one_kv_head), 'either attn_one_kv_head is set to True (in which case kv_heads is set to 1), or attn_kv_heads is set, but not both'

        value_dim_head = default(value_dim_head, dim_head)
        kv_heads = default(kv_heads, heads)

        kv_heads = 1 if one_kv_head else kv_heads
        assert divisible_by(heads, kv_heads)

        self.kv_heads = kv_heads

        q_dim = dim_head * heads
        k_dim = dim_head * kv_heads
        v_dim = value_dim_head * kv_heads
        out_dim = value_dim_head * heads

        # determine input dimensions to qkv based on whether intermediate latent q and kv are being used
        # for eventually supporting multi-latent attention (MLA)

        self.to_latent_q = None
        self.to_latent_kv = None
        self.to_rotateable_k = None # for their "decoupled rope", subheads of keys that comes directly from base sequence (does not go through latents)

        dim_q_input = dim
        dim_kv_input = dim_kv

        if use_latent_q:
            assert exists(dim_latent_q)
            self.to_latent_q = LinearNoBias(dim, dim_latent_q)
            dim_q_input = dim_latent_q

        if use_latent_kv:
            assert exists(dim_latent_kv)
            self.to_latent_kv = LinearNoBias(dim, dim_latent_kv)
            dim_kv_input = dim_latent_kv

        if exists(latent_rope_subheads):
            assert not exists(rotate_num_heads), '`rotate_num_heads` cannot be set when multi-latent attention is being used'
            rotate_num_heads = latent_rope_subheads

            k_dim = dim_head * (kv_heads - latent_rope_subheads)

            self.to_rotateable_k = LinearNoBias(dim, dim_head * latent_rope_subheads)
            self.split_rotateable_k_heads = Rearrange('b n (h d) -> b h n d', h = latent_rope_subheads)

        self.use_latent_q = use_latent_q
        self.use_latent_kv = use_latent_kv

        # query key projection

        self.to_q = LinearNoBias(dim_q_input, q_dim)
        self.to_k = LinearNoBias(dim_kv_input, k_dim)
        self.to_v = LinearNoBias(dim_kv_input, v_dim)

        # split and merge of attention heads

        self.split_q_heads = Rearrange('b n (h d) -> b h n d', h = heads)
        self.split_k_heads = Rearrange('b n (h d) -> b h n d', d = dim_head)
        self.split_v_heads = Rearrange('b n (h d) -> b h n d', d = value_dim_head)

        self.merge_heads = Rearrange('b h n d -> b n (h d)')

        # whether qkv receives different residual stream combinations from hyper connections or lime

        self.qkv_receive_diff_residuals = qkv_receive_diff_residuals

        # enhancing gradients to attention through exponentiated values

        self.laser = laser
        self.laser_softclamp_value = laser_softclamp_value

        # add GLU gating for aggregated values, from alphafold2

        self.to_v_gate = None
        if gate_values:
            self.to_v_gate = nn.Linear(dim, out_dim)
            self.to_v_gate_activation = F.silu if swiglu_values else F.sigmoid
            nn.init.constant_(self.to_v_gate.weight, 0)
            nn.init.constant_(self.to_v_gate.bias, 10)

        # add per head gating of the output values, from 'Attend to nothing' paper

        self.to_v_head_gate = None
        if gate_value_heads:
            self.to_v_head_gate = nn.Linear(dim, heads)
            nn.init.constant_(self.to_v_head_gate.weight, 0)
            nn.init.constant_(self.to_v_head_gate.bias, 10)

        # cosine sim attention

        self.qk_norm = qk_norm
        self.qk_norm_groups = qk_norm_groups
        self.qk_norm_scale = qk_norm_scale

        # whether to use the rmsnorm (equivalent to cosine sim attention when scale is equal to 1) - https://arxiv.org/abs/2302.05442

        self.qk_norm_dim_scale = qk_norm_dim_scale

        self.qk_norm_q_scale = self.qk_norm_k_scale = 1
        if qk_norm and qk_norm_dim_scale:
            self.qk_norm_q_scale = nn.Parameter(torch.ones(heads, 1, dim_head))
            self.qk_norm_k_scale = nn.Parameter(torch.ones(kv_heads, 1, dim_head))

        assert (not qk_norm) or divisible_by(dim_head, qk_norm_groups), 'dimension per attention head must be divisible by the qk norm groups'
        assert not (qk_norm and (dim_head // qk_norm_groups) <= 2), 'the group dimension may be too small (2 was too small in my tests, but 4 still works, surprisingly)'

        # contextual positional encoding
        # https://arxiv.org/html/2405.18719v2

        cope = None

        if use_cope:
            assert causal, 'CoPE was designed for causal attention'
            assert not flash, 'CoPE is not flash attention compatible'

            cope = CoPE(
                dim = dim_head,
                heads = heads,
                max_pos = cope_max_pos,
                talking_heads = cope_talking_heads,
                soft_onehot = cope_soft_onehot_pos
            )

        # data dependent alibi
        # https://openreview.net/forum?id=q2Lnyegkr8

        self.data_dependent_alibi = None

        if data_dependent_alibi:

            dda_klass = DataDependentAlibi if not data_dependent_alibi_per_row else PerRowDataDependentAlibi
            dda_kwargs = dict(dim = dim, heads = heads, causal = causal)

            if data_dependent_alibi_per_row:
                dda_kwargs.update(dim_head = data_dependent_alibi_per_row_dim_head)

            self.data_dependent_alibi = dda_klass(**dda_kwargs, **data_dependent_alibi_kwargs)

        # attend class - includes core attention algorithm + talking heads

        self.attend = Attend(
            heads = heads,
            causal = causal,
            pre_talking_heads = pre_talking_heads,
            post_talking_heads = post_talking_heads,
            pre_scale_post_talking_heads = pre_scale_post_talking_heads,
            dropout = dropout,
            sparse_topk = sparse_topk,
            sparse_topk_straight_through = sparse_topk_straight_through,
            hard = hard,
            qk_norm = qk_norm,
            scale = qk_norm_scale if qk_norm else self.scale,
            l2_distance = l2_distance,
            sigmoid = sigmoid,
            selective = selective,
            custom_attn_fn = custom_attn_fn,
            add_zero_kv = add_zero_kv,
            flash = flash,
            softclamp_logits = softclamp_logits,
            logit_softclamp_value = logit_softclamp_value,
            cope = cope,
            onnxable = onnxable,
            sdp_kwargs = attend_sdp_kwargs
        )

        # head scaling

        self.head_scale = head_scale
        if head_scale:
            self.head_scale_params = nn.Parameter(torch.ones(1, heads, 1, 1))

        # explicit topk sparse attention

        self.sparse_topk = sparse_topk

        # add memory key / values

        self.num_mem_kv = num_mem_kv
        if num_mem_kv > 0:
            self.mem_k = nn.Parameter(torch.randn(kv_heads, num_mem_kv, dim_head))
            self.mem_v = nn.Parameter(torch.randn(kv_heads, num_mem_kv, dim_head))

        # maybe learned value residual mixer per token

        self.to_value_residual_mix = nn.Sequential(
            nn.Linear(dim, heads),
            nn.Sigmoid(),
            Rearrange('b n h -> b h n 1')
         ) if learned_value_residual_mix else always(0.5)

        # attention on attention

        self.attn_on_attn = on_attn

        # hybrid module, in same vein as hymba https://www.arxiv.org/abs/2411.13676

        hybrid_mix = None
        hybrid_norms = None
        hybrid_module = maybe(deepcopy)(hybrid_module)

        if exists(hybrid_module) and exists(hybrid_fold_axial_dim):
            hybrid_module = FoldAxially(axial_dim = hybrid_fold_axial_dim, fn = hybrid_module)
            hybrid_mix = LinearNoBias(dim, heads) if hybrid_learned_mix else None

            hybrid_norms = ModuleList([
                MultiheadRMSNorm(dim_head, heads = heads),
                MultiheadRMSNorm(dim_head, heads = heads)
            ])

        self.hybrid_module = hybrid_module
        self.hybrid_norms = hybrid_norms
        self.hybrid_mix = hybrid_mix
        self.hybrid_mask_kwarg = hybrid_mask_kwarg # for bidirectional, can forward `mask` into the hybrid module and let it handle variable lengths

        # output dimension by default same as input, but can be overridden

        dim_out = default(dim_out, dim)
        self.to_out = nn.Sequential(LinearNoBias(out_dim, dim_out * 2), nn.GLU()) if on_attn else LinearNoBias(out_dim, dim_out)

        # sublayer dropout

        self.sublayer_dropout = nn.Dropout(sublayer_dropout) if sublayer_dropout > 0. else None

        # the number of attention heads to rotate, for decoupled rope in multi-latent attention

        rotate_num_heads = default(rotate_num_heads, heads)

        assert 0 < rotate_num_heads <= heads
        is_partial_rotate_heads = rotate_num_heads < heads
        assert not (is_partial_rotate_heads and kv_heads < heads), 'grouped query attention not compatible with partial rotate heads (decoupled rope for multi-latent attention), yet'

        self.rotate_num_heads = rotate_num_heads

        # whether parent can kv cache

        self.can_cache_kv = not selective

        # init output projection 0

        if zero_init_output:
            init_zero_(self.to_out)

    def forward(

        self,

        x,

        context = None,

        mask = None,

        context_mask = None,

        attn_mask = None,

        rel_pos = None,

        attn_bias = None,

        rotary_pos_emb = None,

        context_rotary_pos_emb = None,

        pos = None, # for custom alibi positions

        prev_attn = None,

        mem = None,

        mem_mask = None,

        return_intermediates = False,

        cache: Intermediates | None = None,

        value_residual = None

    ):
        b, n, h, kv_h, head_scale, num_mem_kv, device, has_context, qkv_receive_diff_residuals, is_multi_latent_attn = x.shape[0], x.shape[1], self.heads, self.kv_heads, self.head_scale, self.num_mem_kv, x.device, exists(context), self.qkv_receive_diff_residuals, self.use_latent_kv

        # an interesting possibility with hyper connections
        # having queries, keys, values be routed from different layers

        assert not (qkv_receive_diff_residuals and has_context), 'qkv receiving different sequences can only be used for self attention'

        if qkv_receive_diff_residuals:
            assert x.ndim == 4 and x.shape[0] == 3

            q_input, k_input, v_input = x
        else:
            kv_input = default(context, x)
            q_input, k_input, v_input = x, kv_input, kv_input

        if exists(mem):
            k_input, mem_packed_shape = pack([mem, k_input], 'b * d')
            v_input, _ = pack([mem, v_input], 'b * d')

        # multi-latent attention logic
        # https://arxiv.org/abs/2405.04434 - Deepseek-AI team

        k_sub_heads = None # the rotateable subheads of keys derived from base sequence

        if self.use_latent_q:
            q_input = self.to_latent_q(q_input)

        if is_multi_latent_attn:
            assert not qkv_receive_diff_residuals
            needs_k_sub_heads = exists(self.to_rotateable_k)

            latent_kv_input = self.to_latent_kv(k_input)

            if needs_k_sub_heads:
                rotateable_k = self.to_rotateable_k(k_input)
                k_sub_heads = self.split_rotateable_k_heads(rotateable_k)

            if exists(cache):
                cached_latent_kv, maybe_cached_k_sub_heads = cache.cached_kv
                latent_kv_input = cat((cached_latent_kv, latent_kv_input), dim = -2)

                if exists(maybe_cached_k_sub_heads):
                    k_sub_heads = cat((maybe_cached_k_sub_heads, k_sub_heads), dim = -2)

            if return_intermediates:
                cached_kv = (latent_kv_input, k_sub_heads)

            k_input = v_input = latent_kv_input

        # query, key, value projection

        q = self.to_q(q_input)
        k = self.to_k(k_input)
        v = self.to_v(v_input)

        q = self.split_q_heads(q)
        k = self.split_k_heads(k)
        v = self.split_v_heads(v)

        # take care of decoupled rope from multi-latent attention

        if exists(k_sub_heads):
            k = cat((k, k_sub_heads), dim = 1)

        # if previous values passed in for residual, either invoke resformer

        orig_values = v

        # https://arxiv.org/abs/2410.17897v1

        if exists(value_residual):
            value_residual_mix = self.to_value_residual_mix(q_input)
            v = value_residual.lerp(v, value_residual_mix)

        # qk normalization

        if self.qk_norm:
            qk_l2norm = partial(l2norm, groups = self.qk_norm_groups)
            q, k = map(qk_l2norm, (q, k))
            scale = self.qk_norm_scale

            q = q * self.qk_norm_q_scale
            k = k * self.qk_norm_k_scale

        # take care of caching

        if not is_multi_latent_attn:
            if exists(cache):
                ck, cv = cache.cached_kv

                if exists(mem):
                    mk, k = unpack(k, mem_packed_shape, 'b h * d')
                    mv, v = unpack(v, mem_packed_shape, 'b h * d')

                k = cat((ck, k), dim = -2)
                v = cat((cv, v), dim = -2)

                if exists(mem):
                    k = cat((mk, k), dim = -2)
                    v = cat((mv, v), dim = -2)

            if return_intermediates:
                mem_len = mem.shape[-2] if exists(mem) else 0
                cached_kv = (k[..., mem_len:, :], v[..., mem_len:, :])

        if exists(rotary_pos_emb):
            rotate_num_heads = self.rotate_num_heads
            partial_rotate_heads = rotate_num_heads < h

            freqs, xpos_scale = rotary_pos_emb
            q_xpos_scale, k_xpos_scale = (xpos_scale, xpos_scale ** -1.) if exists(xpos_scale) else (1., 1.)

            if partial_rotate_heads:
                q_rest, q = q[:, :-rotate_num_heads], q[:, -rotate_num_heads:]
                k_rest, k = k[:, :-rotate_num_heads], k[:, -rotate_num_heads:]

            q = apply_rotary_pos_emb(q, freqs, q_xpos_scale)

            if has_context:
                # override with `context_rotary_pos_emb` if provided

                freqs, xpos_scale = context_rotary_pos_emb
                _, k_xpos_scale = (xpos_scale, xpos_scale ** -1.) if exists(xpos_scale) else (1., 1.)

            k = apply_rotary_pos_emb(k, freqs, k_xpos_scale)

            if partial_rotate_heads:
                q = cat((q_rest, q), dim = 1)
                k = cat((k_rest, k), dim = 1)

        input_mask = context_mask

        if not exists(input_mask) and not has_context:
            input_mask = mask

            if (exists(input_mask) or exists(mem_mask)) and exists(mem):
                seq_len, mem_len = n, mem.shape[-2]

                if not exists(mem_mask):
                    input_mask = pad_at_dim(input_mask, (mem_len, 0), dim = -1, value = True)
                elif not exists(input_mask):
                    input_mask = pad_at_dim(mem_mask, (0, seq_len), dim = -1, value = True)
                else:
                    input_mask = cat((mem_mask, input_mask), dim = -1)

        # i, j determined for relative positional bias, excluding memory key / values

        i, j = tuple(t.shape[-2] for t in (q, k))

        # maybe append memory key / values

        if num_mem_kv > 0:
            mem_k, mem_v = tuple(repeat(t, 'h n d -> b h n d', b = b) for t in (self.mem_k, self.mem_v))

            if self.qk_norm:
                mem_k = l2norm(mem_k)
                mem_k = mem_k * self.qk_norm_k_scale

            k = cat((mem_k, k), dim = -2)
            v = cat((mem_v, v), dim = -2)

            if exists(input_mask):
                input_mask = pad_at_dim(input_mask, (self.num_mem_kv, 0), dim = -1, value = True)

        # determine masking

        mask_value = max_neg_value(q)
        masks = []
        final_attn_mask = None

        if exists(input_mask):
            input_mask = rearrange(input_mask, 'b j -> b 1 1 j')
            masks.append(~input_mask)

        if exists(attn_mask):
            assert 2 <= attn_mask.ndim <= 4, 'attention mask must have greater than 2 dimensions but less than or equal to 4'
            if attn_mask.ndim == 2:
                attn_mask = rearrange(attn_mask, 'i j -> 1 1 i j')
            elif attn_mask.ndim == 3:
                attn_mask = rearrange(attn_mask, 'h i j -> 1 h i j')
            masks.append(~attn_mask)

        if exists(self.max_attend_past):
            range_q = arange(j - i, j, device = device)
            range_k = arange(j, device = device)
            dist = einx.subtract('i, j -> 1 1 i j', range_q, range_k)
            max_attend_past_mask = dist > self.max_attend_past
            max_attend_past_mask = pad_at_dim(max_attend_past_mask, (num_mem_kv, 0), value = False, dim = -1) # handle memory key / values
            masks.append(max_attend_past_mask)

        if len(masks) > 0:
            final_attn_mask = ~or_reduce(masks)

        # prepare relative positional bias, if needed

        if exists(rel_pos):
            assert not exists(attn_bias)

            if exists(pos):
                assert isinstance(rel_pos, AlibiPositionalBias), 'only alibi allowed for custom positions at the moment'
                # allow for custom positions to be passed in
                attn_bias = rel_pos.forward_custom_pos(pos)
            else:
                attn_bias = rel_pos(i, j)

            attn_bias = pad_at_dim(attn_bias, (num_mem_kv, 0)) # handle memory key / values

        # prepare data dependent alibi from forgetting transformers paper, if needed

        if exists(self.data_dependent_alibi):
            attn_bias = self.data_dependent_alibi(x)

            attn_bias = pad_at_dim(attn_bias, (num_mem_kv, 0))

        if self.laser:
            v = softclamp(v, self.laser_softclamp_value)
            v = v.exp()

        # attention is all we need

        out, intermediates = self.attend(
            q, k, v,
            mask = final_attn_mask,
            attn_bias = attn_bias,
            prev_attn = prev_attn
        )

        # laser

        if self.laser:
            out = log(out)

        # store the values for resformer

        intermediates.values = orig_values

        # normformer scaling of heads

        if head_scale:
            out = out * self.head_scale_params

        # per head gating, from https://arxiv.org/abs/2306.12929

        if exists(self.to_v_head_gate):
            head_gate = self.to_v_head_gate(x)
            out = einx.multiply('b n h, b h n d ->b h n d', head_gate.sigmoid(), out)

        # if exists hybrid module, must do a normalization

         # hybrid module

        if exists(self.hybrid_module):

            # hybrid input

            hybrid_forward_kwargs = dict()

            if not self.causal and exists(self.hybrid_mask_kwarg):
                hybrid_forward_kwargs = {self.hybrid_mask_kwarg: mask}

            # hybrid forward

            hybrid_outputs = self.hybrid_module(x, **hybrid_forward_kwargs)

            # handle hybrid out

            (hybrid_out, *rest_hybrid_outs), _ = tree_flatten(hybrid_outputs)

            # handle variable hybrid output and multi rmsnorm before summing to main attention output (also normed)

            if hybrid_out.ndim == 3:
                hybrid_out = rearrange(hybrid_out, 'b n (h d) -> b h n d', h = h)

            out_norm, hybrid_out_norm = self.hybrid_norms

            out = out_norm(out)
            hybrid_out = hybrid_out_norm(hybrid_out)

            if exists(self.hybrid_mix):
                mix = self.hybrid_mix(x)
                mix = rearrange(mix, 'b n h -> b h n 1')
                out = out.lerp(hybrid_out, mix.sigmoid())
            else:
                out = 0.5 * (out + hybrid_out)

        # merge heads

        out = self.merge_heads(out)

        # alphafold2 styled gating of the values

        if exists(self.to_v_gate):
            gates = self.to_v_gate(x)
            out = out * self.to_v_gate_activation(gates)

        # combine the heads

        out = self.to_out(out)

        # maybe sublayer dropout

        out = maybe(self.sublayer_dropout)(out)

        if exists(mask):
            out = einx.where('b n, b n d, -> b n d', mask, out, 0.)

        if not return_intermediates:
            return out

        intermediates.cached_kv = cached_kv

        return out, intermediates

class AttentionLayers(Module):
    def __init__(

        self,

        dim,

        depth = None,

        heads = 8,

        causal = False,

        cross_attend = False,

        only_cross = False,

        use_scalenorm = False,

        use_rmsnorm = False,

        use_dynamic_tanh = False,

        dynamic_tanh_init_alpha = 1.,

        use_simple_rmsnorm = False,

        use_adaptive_layernorm = False,

        use_adaptive_rmsnorm = False,

        use_adaptive_layerscale = False, # paired with use_adaptive_layernorm for ada-ln-zero from DiT paper

        norm_add_unit_offset = True,

        dim_condition = None,

        adaptive_condition_mlp = False,

        adaptive_condition_mlp_expansion = 4,

        alibi_pos_bias = False,

        alibi_num_heads = None,

        rel_pos_bias = False,

        rel_pos_num_buckets = 32,

        rel_pos_max_distance = 128,

        dynamic_pos_bias = False,

        dynamic_pos_bias_log_distance = False,

        dynamic_pos_bias_mlp_depth = 2,

        dynamic_pos_bias_norm = False,

        rotary_pos_emb = False,

        rotary_emb_dim = None,

        rotary_xpos = False,

        rotary_interpolation_factor = 1.,

        rotary_xpos_scale_base = 512,

        rotary_base_rescale_factor = 1.,

        rotate_num_heads = None,

        weight_tie_layers = False,

        custom_layers: tuple[str, ...] | None = None,

        layers_execute_order: tuple[int, ...] | None = None,

        sandwich_coef = None,

        par_ratio = None,

        residual_attn = False,

        cross_residual_attn = False,

        macaron = False,

        pre_norm = True,

        pre_norm_has_final_norm = True,

        gate_residual = False,

        scale_residual = False,

        scale_residual_constant = 1.,

        shift_tokens = 0,

        sandwich_norm = False,

        softclamp_output = False,

        softclamp_output_value = 30.,

        zero_init_branch_output = False,

        layer_dropout = 0.,

        cross_attn_tokens_dropout = 0.,

        disable_abs_pos_emb = None,

        use_layerscale = False,

        layerscale_init_value = 0.,

        unet_skips = False,

        integrate_layers = False,

        layer_integrate_use_softmax = True,

        num_residual_streams = 1,

        qkv_receive_diff_residuals = False,

        reinject_input = False,              # seen first in DEQ paper https://arxiv.org/abs/1909.01377, but later used in a number of papers trying to achieve depthwise generalization https://arxiv.org/abs/2410.03020v1

        learned_reinject_input_gate = False,

        add_value_residual = False,          # resformer from Zhou et al - https://arxiv.org/abs/2410.17897v1 - further corroboration by https://arxiv.org/abs/2412.15113 (faster emergence of ICL) - looks like this setting may becoming a necessity for every transformer soon

        learned_value_residual_mix = True,   # seeing big improvements when the value residual mix value is learned per token - credit goes to @faresobeid for taking the first step with learned scalar mix, then @Blinkdl for taking it a step further with data dependent. here we will use per token learned

        rel_pos_kwargs: dict = dict(),

        residual_fn_kwargs: dict = dict(),

        **kwargs

    ):
        super().__init__()
        rotary_pos_emb = rotary_pos_emb or rotary_xpos

        ff_kwargs, kwargs = groupby_prefix_and_trim('ff_', kwargs)
        attn_kwargs, kwargs = groupby_prefix_and_trim('attn_', kwargs)
        cross_attn_kwargs, kwargs = groupby_prefix_and_trim('cross_attn_', kwargs)

        dim_head = attn_kwargs.get('dim_head', DEFAULT_DIM_HEAD)
        data_dependent_alibi = attn_kwargs.get('data_dependent_alibi', False)

        assert len(kwargs) == 0, f'unrecognized kwargs passed in {kwargs.keys()}'

        self.dim = dim
        self.causal = causal
        self.layers = ModuleList([])

        # routing related
        # 1. greater than one residual stream, proposed in Hyper-Connections paper https://arxiv.org/abs/2409.19606
        # 2. integrating more than one past layer, from LIMe paper https://arxiv.org/abs/2502.09245

        qkv_receive_diff_residuals |= integrate_layers # qkv always receives different views if integrating layers

        # hyper connections

        assert num_residual_streams > 0
        has_hyper_connections = num_residual_streams > 1

        self.num_residual_streams = num_residual_streams
        self.stream_emb = nn.Parameter(torch.zeros(num_residual_streams, dim)) if num_residual_streams > 1 else None

        assert not (has_hyper_connections and gate_residual)

        hyper_conn_produce_diff_views = qkv_receive_diff_residuals and not integrate_layers

        # LIMe

        hiddens_counter = 0
        self.layer_integrators = ModuleList([])

        assert not (qkv_receive_diff_residuals and not (hyper_conn_produce_diff_views or integrate_layers))

        # positions related

        self.disable_abs_pos_emb = default(disable_abs_pos_emb, (rel_pos_bias or rotary_pos_emb))

        rotary_emb_dim = default(rotary_emb_dim, dim_head // 2)

        assert rotary_emb_dim <= dim_head, f'rotary emb dim {rotary_emb_dim} must be less than or equal to attention head dimension {dim_head}'

        if rotary_emb_dim < 32:
            print('when training language model, rotary embedding dimension should be at least 32')

        assert not (rotary_xpos and not causal), 'rotary xpos is not compatible with bidirectional attention'
        self.rotary_pos_emb = RotaryEmbedding(rotary_emb_dim, use_xpos = rotary_xpos, scale_base = rotary_xpos_scale_base, interpolation_factor = rotary_interpolation_factor, base_rescale_factor = rotary_base_rescale_factor) if rotary_pos_emb else None

        assert at_most_one_of(alibi_pos_bias, rel_pos_bias, data_dependent_alibi), 'you can only choose one of Alibi positional bias, data dependent Alibi (forgetting transformers), dynamic tanh, or T5 relative positional bias'
        assert rel_pos_num_buckets <= rel_pos_max_distance, 'number of relative position buckets must be less than the relative position max distance'

        # relative positional bias

        flash_attn = attn_kwargs.get('flash', False)
        assert at_most_one_of(rel_pos_bias, dynamic_pos_bias, alibi_pos_bias), 'you can only choose up to one of t5, alibi, or dynamic positional bias'

        self.rel_pos = None

        if rel_pos_bias:
            assert not flash_attn, 'flash attention not compatible with t5 relative positional bias'
            self.rel_pos = RelativePositionBias(scale = dim_head ** 0.5, causal = causal, heads = heads, num_buckets = rel_pos_num_buckets, max_distance = rel_pos_max_distance, **rel_pos_kwargs)
        elif dynamic_pos_bias:
            assert not flash_attn, 'flash attention not compatible with dynamic positional bias'
            self.rel_pos = DynamicPositionBias(dim = dim // 4, heads = heads, log_distance = dynamic_pos_bias_log_distance, depth = dynamic_pos_bias_mlp_depth, norm = dynamic_pos_bias_norm, **rel_pos_kwargs)
        elif alibi_pos_bias:
            alibi_num_heads = default(alibi_num_heads, heads)
            assert alibi_num_heads <= heads, 'number of ALiBi heads must be less than the total number of heads'
            self.rel_pos = AlibiPositionalBias(heads = alibi_num_heads, total_heads = heads, **rel_pos_kwargs)

        assert not (not pre_norm and sandwich_norm), 'sandwich norm cannot be used when not using prenorm'

        self.pre_norm = pre_norm
        self.sandwich_norm = sandwich_norm

        self.residual_attn = residual_attn
        self.cross_residual_attn = cross_residual_attn
        assert not (flash_attn and (residual_attn or cross_residual_attn)), 'flash attention is not compatible with residual attention'

        self.cross_attend = cross_attend

        # determine norm

        assert at_most_one_of(use_scalenorm, use_rmsnorm, use_dynamic_tanh, use_simple_rmsnorm, use_adaptive_layernorm, use_adaptive_rmsnorm), 'you can only use either scalenorm, rmsnorm, adaptive layernorm, adaptive rmsnorm, or simple rmsnorm'

        norm_need_condition = False
        dim_condition = default(dim_condition, dim)
        dim_condition_mult = 1

        if adaptive_condition_mlp:
            dim_condition_mult = adaptive_condition_mlp_expansion

        if use_scalenorm:
            norm_class = ScaleNorm
        elif use_rmsnorm:
            norm_class = RMSNorm
        elif use_simple_rmsnorm:
            norm_class = SimpleRMSNorm
        elif use_dynamic_tanh:
            assert pre_norm, 'dynamic tanh norm only tested for pre-norm'
            norm_class = partial(DynamicTanh, init_alpha = dynamic_tanh_init_alpha)
        elif use_adaptive_layernorm:
            norm_need_condition = True
            norm_class = partial(AdaptiveLayerNorm, dim_condition = dim_condition * dim_condition_mult)
        elif use_adaptive_rmsnorm:
            norm_need_condition = True
            norm_class = partial(AdaptiveRMSNorm, dim_condition = dim_condition * dim_condition_mult)
        else:
            norm_class = LayerNorm

        norm_fn = partial(norm_class, dim)

        if not norm_need_condition and norm_add_unit_offset:
            # researcher Ohad Rubin shares in a blog post by adding an offset to gammas, they can be subjected to weight decay safely
            norm_fn = partial(norm_fn, unit_offset = True)

        self.norm_need_condition = norm_need_condition
        self.dim_condition = dim_condition

        # determine default block layer type order

        if cross_attend and not only_cross:
            default_block = ('a', 'c', 'f')
        elif cross_attend and only_cross:
            default_block = ('c', 'f')
        else:
            default_block = ('a', 'f')

        if macaron:
            default_block = ('f',) + default_block

        # determine post branch wrapper

        assert at_most_one_of(use_layerscale, use_adaptive_layerscale)

        post_branch_fn = None
        post_branch_fn_needs_condition = False

        if use_layerscale:
            post_branch_fn = partial(LayerScale, dim = dim, init_value = layerscale_init_value)
        elif use_adaptive_layerscale:
            post_branch_fn = partial(AdaptiveLayerScale, dim = dim, dim_condition = dim_condition * dim_condition_mult)
            post_branch_fn_needs_condition = True

        self.post_branch_fn_needs_condition = post_branch_fn_needs_condition

        if exists(post_branch_fn) and not post_branch_fn_needs_condition and norm_add_unit_offset:
            post_branch_fn = partial(post_branch_fn, unit_offset = True)

        # setup mlp for conditioning

        self.need_condition = norm_need_condition or post_branch_fn_needs_condition

        self.adaptive_mlp = nn.Identity()

        if self.need_condition and adaptive_condition_mlp:
            self.adaptive_mlp = nn.Sequential(
                LinearNoBias(dim_condition, dim_condition * dim_condition_mult),
                nn.SiLU()
            )

        # zero init

        if zero_init_branch_output:
            attn_kwargs = {**attn_kwargs, 'zero_init_output':  True}
            ff_kwargs = {**ff_kwargs, 'zero_init_output':  True}

        # setup weight tying, which is a special case of `layer_execute_order`

        assert not (exists(layers_execute_order) and exists(custom_layers) and exists(depth)), 'depth should not be passed in if using custom layers and custom layer execution order'

        assert not (weight_tie_layers and any([*map(exists, (custom_layers, par_ratio, sandwich_coef))]))

        if weight_tie_layers:
            assert exists(depth), 'depth must be passed in with `weight_tie_layers` = True'
            assert not exists(layers_execute_order)
            layers_execute_order = tuple(range(len(default_block))) * depth
            depth = 1

        # calculate layer block order

        len_default_block = 1

        if exists(custom_layers):
            layer_types = custom_layers
        elif exists(par_ratio):
            par_depth = depth * len(default_block)
            assert 1 < par_ratio <= par_depth, 'par ratio out of range'
            default_block = tuple(filter(not_equals('f'), default_block))
            par_attn  = par_depth // par_ratio
            depth_cut = par_depth * 2 // 3  # 2 / 3 attention layer cutoff suggested by PAR paper
            par_width = (depth_cut + depth_cut // par_attn) // par_attn
            assert len(default_block) <= par_width, 'default block is too large for par_ratio'
            par_block = default_block + ('f',) * (par_width - len(default_block))
            par_head = par_block * par_attn
            layer_types = par_head + ('f',) * (par_depth - len(par_head))
        elif exists(sandwich_coef):
            assert sandwich_coef > 0 and sandwich_coef <= depth, 'sandwich coefficient should be less than the depth'
            layer_types = ('a',) * sandwich_coef + default_block * (depth - sandwich_coef) + ('f',) * sandwich_coef
        else:
            assert exists(depth), '`depth` must be passed in for `Decoder` or `Encoder`'
            layer_types = default_block * depth
            len_default_block = len(default_block)

        self.layer_types = layer_types
        self.layers_execute_order = default(layers_execute_order, tuple(range(len(layer_types))))

        assert all([i < len(self.layer_types) for i in self.layers_execute_order])

        self.num_attn_layers = len(list(filter(equals('a'), layer_types)))

        # set the depth

        depth = default(depth, len(self.layers_execute_order))
        self.depth = depth

        # stochastic depth

        self.layer_dropouts = cast_tuple(layer_dropout, len(layer_types))

        # structured dropout for cross attending

        self.cross_attn_tokens_dropout = cross_attn_tokens_dropout

        # calculate token shifting

        shift_tokens = cast_tuple(shift_tokens, len(layer_types))

        # optional soft clamping just before the final norm
        # used in gemma 2

        self.softclamp_output = softclamp_output
        self.softclamp_output_value = softclamp_output_value

        # whether it has post norm

        self.final_norm = norm_fn() if pre_norm else nn.Identity()

        # whether unet or not

        self.unet_skips = unet_skips
        num_skips = self.depth // len_default_block

        assert not (unet_skips and num_skips == 0), 'must have depth of at least 2 for unet skip connections'

        skip_indices = [i * len_default_block for i in range(num_skips)]

        self.skip_combines = ModuleList([])

        # whether there is reinjection of input at every layer

        self.reinject_input = reinject_input
        self.reinject_input_proj = nn.Linear(dim, dim, bias = False) if reinject_input else None
        self.learned_reinject_input_gate = nn.Linear(dim, 1, bias = False) if learned_reinject_input_gate else None

        # add the value from the first self attention block to all latter projected self attention values as a residual

        self.add_value_residual = add_value_residual

        is_first_self_attn = True
        is_first_cross_attn = True
        learned_value_residual_mix &= add_value_residual

        # iterate and construct layers

        for ind, (layer_type, layer_shift_tokens) in enumerate(zip(self.layer_types, shift_tokens)):

            # `ind` is the index of each module - attention, feedforward, cross attention
            # but `block_ind` refers to the typical enumeration of a transformer block (attn + ff + [optional] cross attn)

            block_begin = divisible_by(ind, len_default_block)
            block_ind = ind // len_default_block

            is_last_layer = ind == (len(self.layer_types) - 1)

            # attention, cross attention, feedforward

            layer_qkv_receives_diff_view = layer_type == 'a' and qkv_receive_diff_residuals and not (is_first_self_attn and integrate_layers)

            if layer_type == 'a':
                self_attn_learned_value_residual = learned_value_residual_mix and not is_first_self_attn

                layer = Attention(dim, heads = heads, causal = causal, qkv_receive_diff_residuals = layer_qkv_receives_diff_view, learned_value_residual_mix = self_attn_learned_value_residual, rotate_num_heads = rotate_num_heads, **attn_kwargs)
                is_first_self_attn = False

            elif layer_type == 'c':
                layer = Attention(dim, heads = heads, **{**attn_kwargs, **cross_attn_kwargs})
                is_first_cross_attn = False

            elif layer_type == 'f':
                layer = FeedForward(dim, **ff_kwargs)
                layer = layer if not macaron else Scale(0.5, layer)

            else:
                raise Exception(f'invalid layer type {layer_type}')

            if layer_shift_tokens > 0:
                shift_range_upper = layer_shift_tokens + 1
                shift_range_lower = -layer_shift_tokens if not causal else 0
                layer = ShiftTokens(range(shift_range_lower, shift_range_upper), layer)

            if exists(post_branch_fn):
                layer = post_branch_fn(layer)

            layer_integrate = None

            if integrate_layers:
                num_layer_hiddens = ind + 1
                layer_integrate_num_view = 3 if layer_qkv_receives_diff_view else 1

                layer_integrate = DynamicLIMe(dim, num_layer_hiddens, num_views = layer_integrate_num_view, use_softmax = layer_integrate_use_softmax)

            if has_hyper_connections:
                residual_fn = partial(HyperConnection, num_residual_streams = num_residual_streams)

                if layer_type == 'a' and hyper_conn_produce_diff_views:
                    residual_fn = partial(residual_fn, num_input_views = 3)

            elif gate_residual:
                residual_fn = GRUGating
            else:
                residual_fn = Residual

            residual = residual_fn(dim, layer_index = ind, scale_residual = scale_residual, scale_residual_constant = scale_residual_constant, **residual_fn_kwargs)

            # handle unet skip connection

            skip_combine = None
            is_latter_half = block_begin and block_ind >= (self.depth / 2)

            if self.unet_skips and is_latter_half:
                skip_combine = ConcatCombine(dim, skip_indices.pop())

            # all normalizations of the layer

            pre_branch_norm = norm_fn() if pre_norm else None
            post_branch_norm = norm_fn() if sandwich_norm else None
            post_main_norm = norm_fn() if not pre_norm else None

            norms = ModuleList([
                pre_branch_norm,
                post_branch_norm,
                post_main_norm
            ])

            self.skip_combines.append(skip_combine)

            self.layer_integrators.append(layer_integrate)

            self.layers.append(ModuleList([
                norms,
                layer,
                residual
            ]))

        # determine whether can cache kv

        self.can_cache_kv = all([module.can_cache_kv for module in self.modules() if isinstance(module, Attention)])

    def forward(

        self,

        x,

        context = None,

        mask = None,

        context_mask = None,

        attn_mask = None,

        self_attn_kv_mask = None,

        mems = None,

        mem_masks = None,

        seq_start_pos: Tensor | None = None,

        cache: LayerIntermediates | None = None,

        cache_age = 1,

        return_hiddens = False,

        rotary_pos_emb = None,

        pos = None,

        context_pos = None,

        attn_bias = None,

        condition = None,

        in_attn_cond = None, # https://arxiv.org/abs/2105.04090

        layers_execute_order: tuple[int, ...] | None = None

    ):
        assert not (self.cross_attend ^ exists(context)), 'context must be passed in if cross_attend is set to True'
        assert not (exists(condition) ^ self.need_condition), 'condition needs to be passed in if using adaptive layernorm or vice versa'

        # handle condition

        if exists(condition):
            assert condition.shape[-1] == self.dim_condition, f'expected condition dimension of {self.dim_condition} but received {condition.shape[-1]}'

            assert condition.ndim in {2, 3}

            if condition.ndim == 2:
                condition = rearrange(condition, 'b d -> b 1 d')

            condition = self.adaptive_mlp(condition)

        # setup maybe layernorm kwarg

        norm_kwargs = dict()

        if self.norm_need_condition:
            norm_kwargs.update(condition = condition)

        # maybe post branch fn conditioning (DiT paper's ada-ln-zero)

        block_forward_kwargs = dict()

        if self.post_branch_fn_needs_condition:
            block_forward_kwargs.update(condition = condition)

        # initialize accums

        hiddens = []
        layer_hiddens = []
        intermediates = []

        prev_attn = None
        prev_cross_attn = None

        mems = mems.copy() if exists(mems) else [None] * self.num_attn_layers
        mem_masks = mem_masks.copy() if exists(mem_masks) else [None] * self.num_attn_layers

        # handle left padded sequences

        if exists(seq_start_pos):
            seq_arange = arange(x.shape[-2], device = x.device, dtype = torch.long)
            left_pad_mask = seq_arange >= seq_start_pos[..., None]

            if exists(self_attn_kv_mask):
                self_attn_kv_mask = self_attn_kv_mask & left_pad_mask
            else:
                self_attn_kv_mask = left_pad_mask

        # rotary positions

        cross_attn_rotary_pos_emb = dict()

        if exists(self.rotary_pos_emb):
            if not exists(rotary_pos_emb):
                maybe_mem = first(mems, None) # todo - handle edge case where different layers get different memory lengths. don't think this will ever come up but who knows
                mem_len = maybe_mem.shape[1] if exists(maybe_mem) else 0

                if not exists(pos):
                    pos = arange(x.shape[1] + mem_len, device = x.device) - mem_len

                rotary_pos_emb = self.rotary_pos_emb(pos)

            # allow for rotary positions for context if provided

            if exists(context_pos):
                assert self.cross_attend
                context_rotary_pos_emb = self.rotary_pos_emb(context_pos)

                cross_attn_rotary_pos_emb.update(
                    rotary_pos_emb = rotary_pos_emb,
                    context_rotary_pos_emb = context_rotary_pos_emb
                )

        # assume cached key / values

        attn_cache = []

        if exists(cache):
            assert self.causal and not any([*map(exists, (mask, attn_mask))])

            if exists(context):
                context = context[:, :0]

            if cache_age > 0:
                x = x[:, -cache_age:] # for spec decoding, may be greater than 1

            attn_cache = cache.attn_intermediates

        iter_attn_cache = iter(attn_cache)

        # setup multistreams if needed

        streams = self.num_residual_streams
        is_multistream = streams > 1

        if is_multistream:
            x = einx.add('b n d, s d -> (b s) n d', x, self.stream_emb)

        # get layers to be executed

        layer_variables = (
            self.layer_types,
            self.skip_combines,
            self.layers,
            self.layer_dropouts,
            self.layer_integrators
        )

        # able to override the layers execution order on forward, for trying to depth extrapolate

        layers_execute_order = default(layers_execute_order, self.layers_execute_order)
        layer_variables = tuple(tuple(layer_variable[i] for i in layers_execute_order) for layer_variable in layer_variables)

        # derived input for reinjection if needed

        inp_inject = None

        if self.reinject_input:
            assert not exists(in_attn_cond)
            inp_inject = self.reinject_input_proj(x)

        elif exists(in_attn_cond):
            # handle in-attention conditioning, which serves the same purpose of having the network learn the residual
            inp_inject = in_attn_cond if in_attn_cond.ndim == 3 else rearrange(in_attn_cond, 'b d -> b 1 d')

        if exists(inp_inject) and exists(self.learned_reinject_input_gate):
            inp_inject_gate = self.learned_reinject_input_gate(x).sigmoid()
            inp_inject = inp_inject * inp_inject_gate

        # store all hiddens for skips

        skip_hiddens = []

        # for value residuals

        first_self_attn_inter = None
        first_cross_attn_inter = None

        # go through the attention and feedforward layers

        for ind, (layer_type, skip_combine, (norm, block, residual_fn), layer_dropout, layer_integrator) in enumerate(zip(*layer_variables)):
            is_last = ind == (len(self.layers) - 1)

            # handle skip connections

            skip_hiddens.append(x)

            if exists(skip_combine):
                x = skip_combine(x, skip_hiddens)

            # layer dropout

            if self.training and layer_dropout > 0. and random() < layer_dropout:
                continue

            if layer_type == 'a':
                if return_hiddens:
                    hiddens.append(x)

                layer_mem = mems.pop(0) if mems else None
                layer_mem_mask = mem_masks.pop(0) if mem_masks else None

            if layer_type == 'c':
                if self.training and self.cross_attn_tokens_dropout > 0.:
                    context, context_mask = dropout_seq(context, context_mask, self.cross_attn_tokens_dropout)

            x, inner_residual, residual_kwargs = residual_fn.prepare(x)

            layer_hiddens.append(x)

            if exists(layer_integrator):
                x = layer_integrator(x, layer_hiddens)

            pre_norm, post_branch_norm, post_main_norm = norm

            if self.need_condition:
                pre_norm = maybe(partial)(pre_norm, **norm_kwargs)
                post_branch_norm = maybe(partial)(post_branch_norm, **norm_kwargs)
                post_main_norm = maybe(partial)(post_main_norm, **norm_kwargs)

            if exists(inp_inject):
                x = x + inp_inject

            if exists(pre_norm):
                x = pre_norm(x)

                if layer_type == 'a' and exists(layer_mem):
                    layer_mem = pre_norm(layer_mem)

            block = partial(block, **block_forward_kwargs)

            # handle maybe value residuals

            maybe_self_attn_value_residual = None
            maybe_cross_attn_value_residual = None

            if self.add_value_residual:
                if exists(first_self_attn_inter):
                    maybe_self_attn_value_residual = first_self_attn_inter.values

                if exists(first_cross_attn_inter):
                    maybe_cross_attn_value_residual = first_cross_attn_inter.values

            # forward depending on layer type

            if layer_type == 'a':
                out, inter = block(x, mask = mask, context_mask = self_attn_kv_mask, attn_mask = attn_mask, rel_pos = self.rel_pos, pos = pos, rotary_pos_emb = rotary_pos_emb, prev_attn = prev_attn, cache = next(iter_attn_cache, None), mem = layer_mem, mem_mask = layer_mem_mask, attn_bias = attn_bias, value_residual = maybe_self_attn_value_residual, return_intermediates = True)
            elif layer_type == 'c':
                out, inter = block(x, context = context, mask = mask, context_mask = context_mask, prev_attn = prev_cross_attn, cache = next(iter_attn_cache, None), value_residual = maybe_cross_attn_value_residual, **cross_attn_rotary_pos_emb, return_intermediates = True)
            elif layer_type == 'f':
                out = block(x)

            # store first self or cross attention intermediate for value residual

            if not exists(first_self_attn_inter) and layer_type == 'a':
                first_self_attn_inter = inter

            if not exists(first_cross_attn_inter) and layer_type == 'c':
                first_cross_attn_inter = inter

            if exists(post_branch_norm):
                out = post_branch_norm(out)

            x = residual_fn(out, inner_residual, **residual_kwargs)

            if layer_type in ('a', 'c') and return_hiddens:
                inter.layer_type = layer_type
                intermediates.append(inter)

            if layer_type == 'a' and self.residual_attn:
                prev_attn = inter.pre_softmax_attn
            elif layer_type == 'c' and self.cross_residual_attn:
                prev_cross_attn = inter.pre_softmax_attn

            if exists(post_main_norm):
                x = post_main_norm(x)

        if return_hiddens:
            layer_hiddens.append(x)

        if self.softclamp_output:
            x = softclamp(x, self.softclamp_output_value)

        final_norm = self.final_norm

        if self.need_condition:
            final_norm = maybe(partial)(final_norm, **norm_kwargs)

        # take care of multistreams if needed, use sum for now

        if is_multistream:
            x = reduce(x, '(b s) n d -> b n d', 'sum', s = streams)

        x = final_norm(x)

        if not return_hiddens:
            return x

        intermediates = LayerIntermediates(
            hiddens = hiddens,
            last_hidden = x,
            attn_intermediates = intermediates,
            layer_hiddens = layer_hiddens,
        )

        return x, intermediates

class Encoder(AttentionLayers):
    def __init__(self, **kwargs):
        assert 'causal' not in kwargs, 'cannot set causality on encoder'
        super().__init__(causal = False, **kwargs)

class Decoder(AttentionLayers):
    def __init__(self, **kwargs):
        assert 'causal' not in kwargs, 'cannot set causality on decoder'
        super().__init__(causal = True, **kwargs)

class PrefixDecoder(AttentionLayers):
    def __init__(self, **kwargs):
        assert 'causal' not in kwargs, 'cannot set causality on decoder'
        super().__init__(causal = False, **kwargs)

    def forward(

        self,

        x,

        *args,

        attn_mask = None,

        prefix_attn_len = None,

        **kwargs

    ):
        b, n, device = x.shape[0], x.shape[1], x.device
        causal_mask = torch.ones((n, n), device = device, dtype = torch.bool).triu(1)

        forwarded_mask = ~causal_mask

        if exists(prefix_attn_len):
            if isinstance(prefix_attn_len, int):
                prefix_attn_len = torch.full((b,), prefix_attn_len, device = device)

            prefix_mask = arange(n, device = device) < rearrange(prefix_attn_len, 'b -> b 1 1 1')
            forwarded_mask = forwarded_mask | prefix_mask

        if exists(attn_mask):
            forwarded_mask = forwarded_mask & attn_mask

        return super().forward(x, *args, attn_mask = forwarded_mask, **kwargs)

class CrossAttender(AttentionLayers):
    def __init__(self, **kwargs):
        super().__init__(cross_attend = True, only_cross = True, **kwargs)

class ViTransformerWrapper(Module):
    def __init__(

        self,

        *,

        image_size,

        patch_size,

        attn_layers: Encoder,

        channels = 3,

        num_classes = None,

        post_emb_norm = False,

        num_register_tokens = 0,

        emb_dropout = 0.

    ):
        super().__init__()
        assert divisible_by(image_size, patch_size), 'image dimensions must be divisible by the patch size'
        dim = attn_layers.dim
        num_patches = (image_size // patch_size) ** 2
        patch_dim = channels * patch_size ** 2

        self.patch_size = patch_size

        self.pos_embedding = nn.Parameter(torch.randn(1, num_patches, dim))

        has_register_tokens = num_register_tokens > 0
        self.has_register_tokens = has_register_tokens

        if has_register_tokens:
            self.register_tokens = nn.Parameter(torch.randn(num_register_tokens, dim))

        self.patch_to_embedding = nn.Sequential(
            LayerNorm(patch_dim),
            nn.Linear(patch_dim, dim),
            LayerNorm(dim)
        )

        self.post_emb_norm = LayerNorm(dim) if post_emb_norm else nn.Identity()
        self.dropout = nn.Dropout(emb_dropout)

        self.attn_layers = attn_layers

        self.mlp_head = nn.Linear(dim, num_classes) if exists(num_classes) else nn.Identity()

    def forward(

        self,

        img,

        return_embeddings = False,

        return_logits_and_embeddings = False

    ):
        b, p = img.shape[0], self.patch_size

        x = rearrange(img, 'b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = p, p2 = p)
        x = self.patch_to_embedding(x)
        n = x.shape[1]

        x = x + self.pos_embedding[:, :n]

        x = self.post_emb_norm(x)
        x = self.dropout(x)

        if self.has_register_tokens:
            r = repeat(self.register_tokens, 'n d -> b n d', b = b)
            x, ps = pack((x, r), 'b * d')

        embed = self.attn_layers(x)

        if self.has_register_tokens:
            embed, _ = unpack(embed, ps, 'b * d')

        assert at_most_one_of(return_embeddings, return_logits_and_embeddings)

        if not exists(self.mlp_head) or return_embeddings:
            return embed

        pooled = embed.mean(dim = -2)
        logits = self.mlp_head(pooled)

        if not return_logits_and_embeddings:
            return logits

        return logits, embed

class TransformerWrapper(Module):
    def __init__(

        self,

        *,

        num_tokens,

        max_seq_len,

        attn_layers: AttentionLayers,

        embed_num_tokens: dict[str, int] = dict(),

        emb_dim = None,

        max_mem_len = 0,

        shift_mem_down = 0,

        emb_dropout = 0.,

        post_emb_norm = False,

        num_memory_tokens = None,

        memory_tokens_interspersed_every = None,

        tie_embedding = False,

        logits_dim = None,

        return_only_embed = False,

        num_output_heads = 1,

        use_abs_pos_emb = True,

        scaled_sinu_pos_emb = False,

        l2norm_embed = False,

        recycling = False,            # from Jumper et al. - Alphafold2

        train_max_recycle_steps = 4,  # saw a benefit for language modeling up to 3 recycling steps, so let's default this to 4

        emb_frac_gradient = 1.,       # GLM-130B and Cogview successfully used this, set at 0.1

        attn_z_loss_weight = 1e-4,

        average_pool_embed = False,

        use_cls_token = False,

        num_cls_tokens = 1,

        squeeze_out_last_dim = False,

        token_emb: TokenEmbedding | None = None,

        mixture_of_softmax = False,

        mixture_of_softmax_k = 4,

        sigsoftmax_logits = False,

        to_logits: Module | None = None,

    ):
        super().__init__()

        dim = attn_layers.dim
        emb_dim = default(emb_dim, dim)
        self.emb_dim = emb_dim
        self.num_tokens = num_tokens
        self.num_cls_tokens = num_cls_tokens

        self.max_seq_len = max_seq_len
        self.max_mem_len = max_mem_len
        self.shift_mem_down = shift_mem_down

        self.l2norm_embed = l2norm_embed

        if not exists(token_emb):
            token_emb = TokenEmbedding(emb_dim, num_tokens, l2norm_embed = l2norm_embed)

        self.token_emb = token_emb

        no_abs_pos_emb = max_seq_len == 0 or not (use_abs_pos_emb and not attn_layers.disable_abs_pos_emb)

        if no_abs_pos_emb:
            self.pos_emb = always(0)
        elif scaled_sinu_pos_emb:
            self.pos_emb = ScaledSinusoidalEmbedding(emb_dim)
        else:
            self.pos_emb = AbsolutePositionalEmbedding(emb_dim, max_seq_len, l2norm_embed = l2norm_embed)

        # additional embeddings - say type embedding from BERT

        self.embeds = None

        if len(embed_num_tokens) > 0:
            self.embeds = ModuleDict({f'{name}_embed': nn.Embedding(num_tokens, emb_dim) for name, num_tokens in embed_num_tokens.items()})

        # fraction of the gradient that should go to the embedding, https://arxiv.org/abs/2105.13290

        self.emb_frac_gradient = emb_frac_gradient

        self.post_emb_norm = LayerNorm(emb_dim) if post_emb_norm else nn.Identity()
        self.emb_dropout = nn.Dropout(emb_dropout)

        self.project_emb = nn.Linear(emb_dim, dim) if emb_dim != dim else nn.Identity()
        self.attn_layers = attn_layers

        self.init_()

        assert num_output_heads > 0

        assert at_most_one_of(average_pool_embed, use_cls_token)

        # maybe recycling

        self.recycling = recycling
        self.recycled_proj = LinearNoBias(dim, dim) if recycling else None

        self.train_max_recycle_steps = train_max_recycle_steps

        # classic cls token from the bert days

        self.cls_token = None

        if use_cls_token:
            self.cls_token = nn.Parameter(torch.zeros(num_cls_tokens, dim))
            nn.init.normal_(self.cls_token, std = 0.02)

        # whether to average pool the embed (`global average pool`)

        self.average_pool_embed = average_pool_embed

        # output type

        self.output_is_log_prob = mixture_of_softmax

        self.to_mixture = None
        self.combine_mixture = None

        if mixture_of_softmax:
            assert num_output_heads == 1

            self.to_mixture = Sequential(
                LinearNoBias(dim, dim * mixture_of_softmax_k),
                Rearrange('... (k d) -> ... k d', k = mixture_of_softmax_k)
            )

            self.combine_mixture = LinearNoBias(dim, mixture_of_softmax_k)

        # sig softmax

        self.sigsoftmax_logits = sigsoftmax_logits

        # output head, usually to logits of num_tokens

        logits_dim = default(logits_dim, num_tokens)

        self.has_multiple_heads = num_output_heads > 1

        if return_only_embed:
            self.to_logits = None
        elif tie_embedding:
            assert isinstance(token_emb, TokenEmbedding), 'can only tie embedding if using `TokenEmbedding`'
            self.to_logits = lambda t: t @ self.token_emb.emb.weight.t()
        elif num_output_heads > 1:
            self.to_logits = ModuleList([LinearNoBias(dim, logits_dim) for _ in range(num_output_heads)])
        else:
            self.to_logits = LinearNoBias(dim, logits_dim) if not exists(to_logits) else to_logits

        # memory tokens (like [cls]) from Memory Transformers paper

        num_memory_tokens = default(num_memory_tokens, 0)
        self.num_memory_tokens = num_memory_tokens
        if num_memory_tokens > 0:
            self.memory_tokens = nn.Parameter(torch.randn(num_memory_tokens, dim))

        self.memory_tokens_interspersed_every = memory_tokens_interspersed_every

        # squeeze out last dimension if possible

        self.squeeze_out_last_dim = squeeze_out_last_dim

        # whether can do cached kv decoding

        self.can_cache_kv = self.num_memory_tokens == 0 and not recycling and self.attn_layers.can_cache_kv
        self.can_cache_kv_outside_max_seq_len = no_abs_pos_emb

    def init_(self):
        if hasattr(self.token_emb, 'init_'):
            self.token_emb.init_()

        if self.l2norm_embed:
            if not isinstance(self.pos_emb, always):
                nn.init.normal_(self.pos_emb.emb.weight, std = 1e-5)

    def forward(

        self,

        x,

        return_embeddings = False,

        return_logits_and_embeddings = False,

        return_intermediates = False,

        return_embeddings_and_intermediates = False,

        return_logit_entropies = False,

        mask = None,

        return_mems = False,

        return_attn = False,

        mems = None,

        mem_masks = None,

        recycle_steps = None,

        pos = None,

        prepend_embeds = None,

        prepend_mask = None,

        embed_ids: dict[str, Tensor] = dict(),

        sum_embeds = None,

        return_attn_z_loss = False,

        attn_z_loss_weight = 1e-4,

        seq_start_pos = None,

        cache: LayerIntermediates | None = None,

        token_emb_kwargs = dict(),

        to_logits_kwargs = dict(),

        **kwargs,

    ):

        # if sequence is None, auto create an empty one if `prepend_embeds` was supplied

        if not exists(x):
            assert exists(prepend_embeds)
            x = prepend_embeds.new_empty((prepend_embeds.shape[0], 0), dtype = torch.long)

        # shapes and variables

        b, n, device, num_mems, has_memory_tokens, emb_frac_gradient, orig_mask = x.shape[0], x.shape[1], x.device, self.num_memory_tokens, self.num_memory_tokens > 0, self.emb_frac_gradient, mask

        return_hiddens = return_mems | return_attn | return_intermediates | return_attn_z_loss | return_embeddings_and_intermediates
        return_embeddings = return_embeddings | (not exists(self.to_logits)) | return_embeddings_and_intermediates

        # absolute positional embedding

        external_pos_emb = exists(pos) and pos.dtype != torch.long
        pos_emb = self.pos_emb(x, pos = pos, seq_start_pos = seq_start_pos) if not external_pos_emb else pos
        x = self.token_emb(x, **token_emb_kwargs) + pos_emb

        # add additional embeddings

        assert not (exists(self.embeds) ^ (len(embed_ids) > 0)), '`embed_num_tokens` must be defined on `TransformerWrapper`'

        if exists(self.embeds):
            assert len(embed_ids) == len(self.embeds)

            for name, embed_id in embed_ids.items():
                embed_key = f'{name}_embed'

                assert embed_key in self.embeds
                embed = self.embeds[embed_key](embed_id)

                x = x + embed

        # for summing embeddings passed externally - needs this for self-conditioning in non-autoregressive training

        if exists(sum_embeds):
            x = x + sum_embeds

        # post embedding norm, purportedly leads to greater stabilization

        x = self.post_emb_norm(x)

        # whether to append embeds, as in PaLI, for image embeddings

        if exists(prepend_embeds):
            prepend_seq, prepend_dim = prepend_embeds.shape[1:]
            assert prepend_dim == x.shape[-1], 'prepended embeddings need to have same dimensions as text model dimensions'

            x = cat((prepend_embeds, x), dim = -2)

            if exists(prepend_mask) or exists(mask):
                mask = default(mask, lambda: torch.ones((b, n), device = device, dtype = torch.bool))
                prepend_mask = default(prepend_mask, lambda: torch.ones((b, prepend_seq), device = device, dtype = torch.bool))

                mask = cat((prepend_mask, mask), dim = -1)

        # whether to reduce the gradient going to the embedding, from cogview paper, corroborated by GLM-130B model

        if emb_frac_gradient < 1:
            assert emb_frac_gradient > 0
            x = x * emb_frac_gradient + x.detach() * (1 - emb_frac_gradient)

        # embedding dropout

        x = self.emb_dropout(x)

        x = self.project_emb(x)

        # maybe cls token

        if exists(self.cls_token):
            cls_tokens = repeat(self.cls_token, '... -> b ...', b = b)
            x, cls_packed_shape = pack([cls_tokens, x], 'b * d')

            if exists(mask):
                mask = F.pad(mask, (self.num_cls_tokens, 0), value = True)

        # maybe memory / register tokens

        if has_memory_tokens:
            mem_seq = x.shape[-2]
            mem_every = self.memory_tokens_interspersed_every

            if exists(mem_every):
                assert mem_every > 0
                assert isinstance(self.attn_layers, Decoder), 'only for decoder'
                next_seq_len = math.ceil(n / mem_every) * mem_every

                x = pad_at_dim(x, (0, next_seq_len - n), dim = -2, value = 0.)
                x = rearrange(x, 'b (n m) d -> (b n) m d', m = mem_every)

            mem = repeat(self.memory_tokens, 'n d -> b n d', b = x.shape[0])
            x, mem_packed_shape = pack((mem, x), 'b * d')

            # auto-handle masking after appending memory tokens
            if not exists(mem_every) and exists(mask):
                mask = pad_at_dim(mask, (num_mems, 0), dim = -1, value = True)

            if exists(mem_every):
                x = rearrange(x, '(b n) m d -> b (n m) d', b = b)

        # handle maybe shifting of memories

        if self.shift_mem_down and exists(mems):
            mems_l, mems_r = mems[:self.shift_mem_down], mems[self.shift_mem_down:]
            mems = [*mems_r, *mems_l]

        # attention layers

        if not self.recycling:
            assert not exists(recycle_steps) or recycle_steps == 1, 'you did not train with recycling'

            # regular

            attended, intermediates = self.attn_layers(x, mask = mask, mems = mems, mem_masks = mem_masks, cache = cache, return_hiddens = True, seq_start_pos = seq_start_pos, **kwargs)

        else:
            # recycling

            recycle_steps = default(recycle_steps, (randrange(self.train_max_recycle_steps) + 1) if self.training else None)
            assert exists(recycle_steps) and recycle_steps > 0, '`recycle_steps` must be provided on forward if recycling is turned on and not training'

            for i in range(recycle_steps):
                first_step = i == 0
                last_step = i == (recycle_steps - 1)

                context = nullcontext if last_step else torch.no_grad

                with context():
                    maybe_recycled = self.recycled_proj(attended.detach()) if not first_step else 0.

                    attended, intermediates = self.attn_layers(x + maybe_recycled, mask = mask, mems = mems, mem_masks = mem_masks, cache = cache, return_hiddens = True, seq_start_pos = seq_start_pos, **kwargs)

        x = attended

        # handle memories post-attention

        if has_memory_tokens:
            if exists(mem_every):
                x = rearrange(x, 'b (n m) d -> (b n) m d', m = (mem_every + num_mems))

            mem, x = unpack(x, mem_packed_shape, 'b * d')

            intermediates.memory_tokens = mem

            if exists(mem_every):
                x = rearrange(x, '(b n) m d -> b (n m) d', b = b)

            x = x[:, :mem_seq]

        # global average pool

        if self.average_pool_embed:
            x = masked_mean(x, mask = orig_mask, dim = 1)

        if exists(self.cls_token):
            x, _ = unpack(x, cls_packed_shape, 'b * d')
            x = x.squeeze(1)  # Remove sequence dimension if num_cls_tokens=1 to keep previous behavior

        # handle expansion to mixture if needed (for mixture of softmax)

        combine_mixture = None

        if exists(self.to_mixture):
            combine_mixture = self.combine_mixture(x).softmax(dim = -1)
            x = self.to_mixture(x)

        # projecting to logits

        if not return_embeddings:
            if self.has_multiple_heads:
                logits = tuple(fn(x, **to_logits_kwargs) for fn in self.to_logits)
            else:
                logits = self.to_logits(x, **to_logits_kwargs)

        # maybe sig softmax

        if self.sigsoftmax_logits:
            logits = logits + logits.sigmoid().log()

        # handle maybe combine mixture

        if exists(combine_mixture):
            with autocast('cuda', enabled = False):
                prob = logits.softmax(dim = -1)
                mos = einsum('... k d, ... k -> ... d', prob, combine_mixture)
                logits = log(mos)

        # maybe squeeze out last dimension of logits

        if self.squeeze_out_last_dim:
            logits = tuple((rearrange(t, '... 1 -> ...') if t.shape[-1] == 1 else t) for t in cast_tuple(logits))

            if not self.has_multiple_heads:
                logits = first(logits)

        # different returns

        if return_logits_and_embeddings:
            out = (logits, x)
        elif return_embeddings_and_intermediates:
            out = (x, intermediates)
        elif return_embeddings:
            out = x
        else:
            out = logits

        # logit entropies

        if return_logit_entropies:
            intermediates.logit_entropies = calc_entropy(logits)
            return_intermediates = True

        # aux loss

        if return_attn_z_loss:
            pre_softmax_attns = [t.pre_softmax_attn for t in  intermediates.attn_intermediates]
            intermediates.attn_z_loss = calc_z_loss(pre_softmax_attns, weight = attn_z_loss_weight)
            return_intermediates = True

        if return_mems:
            hiddens = intermediates.hiddens
            new_mems = [cat(pair, dim = -2) for pair in zip(mems, hiddens)] if exists(mems) else hiddens
            new_mems = [t[..., -self.max_mem_len:, :].detach() for t in new_mems]

            if not return_intermediates:
                return out, new_mems

            intermediates.mems = new_mems

        if return_intermediates:
            return out, intermediates

        if return_attn:
            attn_maps = [t.post_softmax_attn for t in intermediates.attn_intermediates]
            return out, attn_maps

        return out

class XTransformer(Module):
    def __init__(

        self,

        *,

        dim,

        tie_token_emb = False,

        ignore_index = -100,

        pad_value = 0,

        cross_attn_tokens_dropout = 0.,

        **kwargs

    ):
        super().__init__()
        enc_kwargs, kwargs = groupby_prefix_and_trim('enc_', kwargs)
        dec_kwargs, kwargs = groupby_prefix_and_trim('dec_', kwargs)

        assert 'dim' not in enc_kwargs and 'dim' not in dec_kwargs, 'dimension of either encoder or decoder must be set with `dim` keyword'
        enc_transformer_kwargs = pick_and_pop(['num_tokens', 'max_seq_len'], enc_kwargs)
        enc_transformer_kwargs['emb_dropout'] = enc_kwargs.pop('emb_dropout', 0)
        enc_transformer_kwargs['num_memory_tokens'] = enc_kwargs.pop('num_memory_tokens', None)
        enc_transformer_kwargs['scaled_sinu_pos_emb'] = enc_kwargs.pop('scaled_sinu_pos_emb', False)
        enc_transformer_kwargs['use_abs_pos_emb'] = enc_kwargs.pop('use_abs_pos_emb', True)

        dec_transformer_kwargs = pick_and_pop(['num_tokens', 'max_seq_len'], dec_kwargs)
        dec_transformer_kwargs['emb_dropout'] = dec_kwargs.pop('emb_dropout', 0)
        dec_transformer_kwargs['scaled_sinu_pos_emb'] = dec_kwargs.pop('scaled_sinu_pos_emb', False)
        dec_transformer_kwargs['use_abs_pos_emb'] = dec_kwargs.pop('use_abs_pos_emb', True)

        self.cross_attn_tokens_dropout = cross_attn_tokens_dropout  # how many tokens from the encoder to dropout when cross attending from decoder - seen in a couple papers, including Perceiver AR - this will also be very effective regularization when cross attending to very long memories

        self.encoder = TransformerWrapper(
            **enc_transformer_kwargs,
            return_only_embed = True,
            attn_layers = Encoder(dim = dim, **enc_kwargs)
        )

        self.decoder = TransformerWrapper(
            **dec_transformer_kwargs,
            attn_layers = Decoder(dim = dim, cross_attend = True, **dec_kwargs)
        )

        if tie_token_emb:
            self.decoder.token_emb = self.encoder.token_emb

        self.decoder = AutoregressiveWrapper(self.decoder, ignore_index=ignore_index, pad_value=pad_value)

    @torch.no_grad()
    def generate(self, seq_in, seq_out_start, seq_len, mask = None, attn_mask = None, **kwargs):
        encodings = self.encoder(seq_in, mask = mask, attn_mask = attn_mask, return_embeddings = True)
        return self.decoder.generate(seq_out_start, seq_len, context = encodings, context_mask = mask, **kwargs)

    def forward(self, src, tgt, mask = None, attn_mask = None, src_prepend_embeds = None):

        enc = self.encoder(src, mask = mask, attn_mask = attn_mask, prepend_embeds = src_prepend_embeds, return_embeddings = True)

        if exists(src_prepend_embeds) and exists(mask):
            mask = pad_at_dim(mask, (src_prepend_embeds.shape[-2], 0), dim = -1, value = True)

        if self.training and self.cross_attn_tokens_dropout > 0:
            enc, mask = dropout_seq(enc, mask, self.cross_attn_tokens_dropout)

        out = self.decoder(tgt, context = enc, context_mask = mask)
        return out

#=================================================================================================================================
# autoregressive_wrapper.py
#=================================================================================================================================

from math import ceil, log
from typing import Tuple, Callable

import torch
from torch import nn, Tensor
from torch.nn import Module
import torch.nn.functional as F

from einops import rearrange, pack, unpack

def exists(val):
    return val is not None

def default(val, d):
    return val if exists(val) else d

def identity(t, *args, **kwargs):
    return t

def join(arr, delimiter = ', '):
    return delimiter.join(arr)

def cast_tuple(t, length = 1):
    return t if isinstance(t, tuple) else (t,) * length

def eval_decorator(fn):
    def inner(self, *args, **kwargs):
        was_training = self.training
        self.eval()
        out = fn(self, *args, **kwargs)
        self.train(was_training)
        return out
    return inner

# for variable lengthed prefixes

def align_right(t, lens, pad_id = 0):
    batch, seq_len, device, dtype = *t.shape, t.device, t.dtype

    assert lens.ndim == 1 and lens.shape[0] == batch
    assert lens.amax() <= seq_len

    pad_lens = seq_len - lens
    max_pad_len = pad_lens.amax()

    batch_arange = torch.arange(batch, device = device, dtype = torch.long)[..., None]
    prompt_len_arange = torch.arange(seq_len, device = device, dtype = torch.long)

    t = F.pad(t, (max_pad_len, 0), value = pad_id)
    offset = max_pad_len - pad_lens

    aligned = t[batch_arange, prompt_len_arange + offset[..., None]]
    return aligned

# nucleus

def top_p(logits, thres = 0.9):
    sorted_logits, sorted_indices = torch.sort(logits, descending = True)
    cum_probs = torch.cumsum(F.softmax(sorted_logits, dim = -1), dim = -1)

    sorted_indices_to_remove = cum_probs > thres
    sorted_indices_to_remove = F.pad(sorted_indices_to_remove, (1, -1), value = False)

    sorted_logits[sorted_indices_to_remove] = float('-inf')
    return sorted_logits.scatter(1, sorted_indices, sorted_logits)

# topk

def top_k(logits, frac_num_tokens = 0.1, k = None):
    num_tokens = logits.shape[-1]

    k = default(k, ceil(frac_num_tokens * num_tokens))
    k = min(k, num_tokens)

    val, ind = torch.topk(logits, k)
    probs = torch.full_like(logits, float('-inf'))
    probs.scatter_(1, ind, val)
    return probs

# top_a

def top_a(logits, min_p_pow = 2.0, min_p_ratio = 0.02):
    probs = logits.softmax(dim = -1)
    max_probs = probs.amax(dim = -1, keepdim = True)
    limit = torch.pow(max_probs, min_p_pow) * min_p_ratio
    return torch.where(probs < limit, float('-inf'), logits)

# min_p
# https://arxiv.org/abs/2407.01082

def min_p(logits, min_p = 0.1):
    probs = logits.softmax(dim = -1)
    max_probs = probs.amax(dim = -1, keepdim = True)
    limit = min_p * max_probs
    return torch.where(probs < limit, float('-inf'), logits)

# filter logits functions dict[str -> Callable]

FILTER_LOGITS_FN = dict(
    top_p = top_p,
    top_k = top_k,
    top_a = top_a,
    min_p = min_p
)

# contrastive decoding function

def contrastive_decode_fn(

    expert_logits,

    amateur_logits,

    alpha = 0.1,

    beta = 0.5

):
    """

    Appendix A Algorithm 2

    https://arxiv.org/abs/2309.09117

    """

    cutoff = log(alpha) + expert_logits.amax(dim = -1, keepdim = True)
    diffs = (1 + beta) * expert_logits - beta * amateur_logits
    contrastive_decode_logits = diffs.masked_fill(expert_logits < cutoff, -torch.finfo(expert_logits.dtype).max)
    return contrastive_decode_logits

# autoregressive wrapper class

class AutoregressiveWrapper(Module):
    def __init__(

        self,

        net,

        ignore_index = -100,

        pad_value = 0,

        mask_prob = 0.,

        add_attn_z_loss = False

    ):
        super().__init__()
        self.pad_value = pad_value
        self.ignore_index = ignore_index

        self.net = net
        self.max_seq_len = net.max_seq_len

        # paper shows masking (MLM) in conjunction with autoregressive decoder-only training leads to big improvements https://arxiv.org/abs/2210.13432
        assert mask_prob < 1.
        self.mask_prob = mask_prob

        # whether to add router z-loss
        self.add_attn_z_loss = add_attn_z_loss

    @torch.inference_mode()
    @eval_decorator
    def generate(

        self,

        prompts,

        seq_len,

        eos_token = None,

        temperature = 1.,

        prompt_lens: Tensor | None = None,

        filter_logits_fn: str | Callable = top_k,

        restrict_to_max_seq_len = True,

        amateur_model: Module | Tuple[Module] | None = None,

        filter_kwargs: dict = dict(),

        contrastive_decode_kwargs: dict | Tuple[dict] = dict(

            beta = 0.5,

            alpha = 0.1

        ),

        cache_kv = True,

        return_prime=False,

        verbose=True,

        **kwargs

    ):
        max_seq_len, greedy, device = self.max_seq_len, temperature == 0., prompts.device

        prompts, ps = pack([prompts], '* n')

        b, t = prompts.shape

        # handle filter logits fn given as string

        if isinstance(filter_logits_fn, str):
            assert filter_logits_fn in FILTER_LOGITS_FN, f"only {join(FILTER_LOGITS_FN.keys())} are available"

            filter_logits_fn = FILTER_LOGITS_FN[filter_logits_fn]

        # handle variable lengthed prompts (prefixes)

        seq_start_pos = None
        if exists(prompt_lens):
            prompts = align_right(prompts, prompt_lens, pad_id = self.pad_value)
            seq_start_pos = t - prompt_lens

        # output from which sampled tokens appended to

        out = prompts
        
        if verbose:
            print("Generating sequence of max length:", seq_len)

        # kv caches

        cache = None

        # if doing contrastive decoding, turn off filter automatically

        if exists(amateur_model):
            amateur_model = cast_tuple(amateur_model)
            contrastive_decode_kwargs = cast_tuple(contrastive_decode_kwargs)

            assert len(amateur_model) == len(contrastive_decode_kwargs)

            amateur_caches = [None] * len(amateur_model)
            filter_logits_fn = identity

            for i, module in enumerate(amateur_model):
                if isinstance(module, AutoregressiveWrapper):
                    amateur_model[i] = module.net

                module.eval()

        # sampling up to seq_len

        for sl in range(seq_len):

            if restrict_to_max_seq_len:
                max_len_exceeded = out.shape[-1] > max_seq_len

                assert not (cache_kv and max_len_exceeded and not self.net.can_cache_kv_outside_max_seq_len), 'the network cannot use cached key values when decoding outside the max sequence length. most likely because you are using absolute positional embedding. you can switch to rotary embeddings to resolve this issue'

                x = out[:, -max_seq_len:]

                if exists(cache):
                    for inter in cache.attn_intermediates:
                        if inter.layer_type == 'a':
                            inter.cached_kv = [t[..., -(max_seq_len - 1):, :] for t in inter.cached_kv]

            logits, new_cache = self.net(
                x,
                return_intermediates = True,
                cache = cache,
                seq_start_pos = seq_start_pos,
                **kwargs
            )

            if cache_kv and self.net.can_cache_kv:
                cache = new_cache

            logits = logits[:, -1]

            # handle contrastive decoding, Li et al.
            # https://arxiv.org/abs/2210.15097

            if exists(amateur_model):
                for i, (amateur, amateur_cache, amateur_contrastive_decode_kwargs) in enumerate(zip(amateur_model, amateur_caches, contrastive_decode_kwargs)):
                    amateur_logits, next_amateur_cache = amateur(
                        x,
                        return_intermediates = True,
                        cache = amateur_cache,
                        seq_start_pos = seq_start_pos,
                        **kwargs
                    )

                    amateur_logits = amateur_logits[:, -1]

                    assert amateur_logits.shape == logits.shape, 'logits dimension are not the same between amateur and expert model'
                    logits = contrastive_decode_fn(logits, amateur_logits, **amateur_contrastive_decode_kwargs)

                    if cache_kv and amateur.can_cache_kv:
                        amateur_caches[i] = next_amateur_cache

            # filter by top_k, top_p (nucleus), top_a, or custom

            if greedy:
                sample = logits.argmax(dim = -1, keepdim = True)
            else:
                filtered_logits = filter_logits_fn(logits, **filter_kwargs)
                probs = F.softmax(filtered_logits / temperature, dim=-1)
                sample = torch.multinomial(probs, 1)

            # concat sample

            out = torch.cat((out, sample), dim=-1)

            if verbose:
              if sl % 32 == 0:
                print(sl, '/', seq_len)
                
            if not exists(eos_token):
                continue

            is_eos_tokens = (out == eos_token)

            if is_eos_tokens.any(dim = -1).all():
                
                if verbose: 
                    print('Model called the end of sequence at:', sl, '/', seq_len)
                    
                break

        if exists(eos_token):
            # mask out everything after the eos tokens
            shifted_is_eos_tokens = F.pad(is_eos_tokens, (1, -1))
            mask = shifted_is_eos_tokens.float().cumsum(dim = -1) >= 1
            out = out.masked_fill(mask, self.pad_value)

        if return_prime:
            out = out[:, :]
        
        else:
            out = out[:, t:]

        out, = unpack(out, ps, '* n')

        return out

    @torch.inference_mode()
    @eval_decorator
    def generate_masked(

        self,

        prompts,

        seq_len,

        eos_token = None,

        temperature = 1.,

        prompt_lens: Tensor | None = None,

        filter_logits_fn: str | Callable = top_k,

        restrict_to_max_seq_len = True,

        amateur_model: Module | Tuple[Module] | None = None,

        filter_kwargs: dict = dict(),

        contrastive_decode_kwargs: dict | Tuple[dict] = dict(

            beta = 0.5,

            alpha = 0.1

        ),

        cache_kv = True,

        return_prime=False,

        verbose=True,

        masked_token_ids: list[int] | Tensor | None = None,

        **kwargs

    ):
        max_seq_len, greedy, device = self.max_seq_len, temperature == 0., prompts.device

        prompts, ps = pack([prompts], '* n')

        b, t = prompts.shape

        # handle filter logits fn given as string
        if isinstance(filter_logits_fn, str):
            assert filter_logits_fn in FILTER_LOGITS_FN, f"only {join(FILTER_LOGITS_FN.keys())} are available"
            filter_logits_fn = FILTER_LOGITS_FN[filter_logits_fn]

        # prepare masked token ids tensor (if any)
        if masked_token_ids is not None:
            if not torch.is_tensor(masked_token_ids):
                masked_token_ids = torch.tensor(masked_token_ids, dtype=torch.long, device=device)
            else:
                masked_token_ids = masked_token_ids.to(device=device, dtype=torch.long)
            # keep unique and non-negative
            masked_token_ids = torch.unique(masked_token_ids)
            # remove any ids that are out of range (optional safety)
            # we can't know vocab size here, so we only remove negative ids
            masked_token_ids = masked_token_ids[masked_token_ids >= 0]
        else:
            masked_token_ids = None

        # handle variable lengthed prompts (prefixes)
        seq_start_pos = None
        if exists(prompt_lens):
            prompts = align_right(prompts, prompt_lens, pad_id = self.pad_value)
            seq_start_pos = t - prompt_lens

        # output from which sampled tokens appended to
        out = prompts

        if verbose:
            print("Generating sequence of max length:", seq_len)

        # kv caches
        cache = None

        # if doing contrastive decoding, turn off filter automatically
        if exists(amateur_model):
            amateur_model = cast_tuple(amateur_model)
            contrastive_decode_kwargs = cast_tuple(contrastive_decode_kwargs)

            assert len(amateur_model) == len(contrastive_decode_kwargs)

            amateur_caches = [None] * len(amateur_model)
            filter_logits_fn = identity

            for i, module in enumerate(amateur_model):
                if isinstance(module, AutoregressiveWrapper):
                    amateur_model[i] = module.net

                module.eval()

        # sampling up to seq_len
        for sl in range(seq_len):

            if restrict_to_max_seq_len:
                max_len_exceeded = out.shape[-1] > max_seq_len

                assert not (cache_kv and max_len_exceeded and not self.net.can_cache_kv_outside_max_seq_len), 'the network cannot use cached key values when decoding outside the max sequence length. most likely because you are using absolute positional embedding. you can switch to rotary embeddings to resolve this issue'

                x = out[:, -max_seq_len:]

                if exists(cache):
                    for inter in cache.attn_intermediates:
                        if inter.layer_type == 'a':
                            inter.cached_kv = [t[..., -(max_seq_len - 1):, :] for t in inter.cached_kv]

            logits, new_cache = self.net(
                x,
                return_intermediates = True,
                cache = cache,
                seq_start_pos = seq_start_pos,
                **kwargs
            )

            if cache_kv and self.net.can_cache_kv:
                cache = new_cache

            logits = logits[:, -1]

            # handle contrastive decoding, Li et al.
            # https://arxiv.org/abs/2210.15097
            if exists(amateur_model):
                for i, (amateur, amateur_cache, amateur_contrastive_decode_kwargs) in enumerate(zip(amateur_model, amateur_caches, contrastive_decode_kwargs)):
                    amateur_logits, next_amateur_cache = amateur(
                        x,
                        return_intermediates = True,
                        cache = amateur_cache,
                        seq_start_pos = seq_start_pos,
                        **kwargs
                    )

                    amateur_logits = amateur_logits[:, -1]

                    assert amateur_logits.shape == logits.shape, 'logits dimension are not the same between amateur and expert model'
                    logits = contrastive_decode_fn(logits, amateur_logits, **amateur_contrastive_decode_kwargs)

                    if cache_kv and amateur.can_cache_kv:
                        amateur_caches[i] = next_amateur_cache

            # --- apply masked token ids here (after contrastive decoding, before filtering/sampling)
            if masked_token_ids is not None and masked_token_ids.numel() > 0:
                # safety: ensure indices are within logits' vocab dimension
                vocab_size = logits.shape[-1]
                valid_masked = masked_token_ids[masked_token_ids < vocab_size]
                if valid_masked.numel() > 0:
                    # set logits for masked ids to a very large negative value
                    neg_inf = -1e9
                    # logits shape: (batch, vocab)
                    logits[:, valid_masked] = neg_inf

            # filter by top_k, top_p (nucleus), top_a, or custom
            if greedy:
                sample = logits.argmax(dim = -1, keepdim = True)
            else:
                filtered_logits = filter_logits_fn(logits, **filter_kwargs)
                probs = F.softmax(filtered_logits / temperature, dim=-1)
                sample = torch.multinomial(probs, 1)

            # concat sample
            out = torch.cat((out, sample), dim=-1)

            if verbose:
              if sl % 32 == 0:
                print(sl, '/', seq_len)

            if not exists(eos_token):
                continue

            is_eos_tokens = (out == eos_token)

            if is_eos_tokens.any(dim = -1).all():

                if verbose:
                    print('Model called the end of sequence at:', sl, '/', seq_len)

                break

        if exists(eos_token):
            # mask out everything after the eos tokens
            shifted_is_eos_tokens = F.pad(is_eos_tokens, (1, -1))
            mask = shifted_is_eos_tokens.float().cumsum(dim = -1) >= 1
            out = out.masked_fill(mask, self.pad_value)

        if return_prime:
            out = out[:, :]

        else:
            out = out[:, t:]

        out, = unpack(out, ps, '* n')

        return out

    @torch.inference_mode()
    @eval_decorator
    def generate_biased(

        self,

        prompts,

        seq_len,

        eos_token = None,

        temperature = 1.,

        prompt_lens: Tensor | None = None,

        filter_logits_fn: str | Callable = top_k,

        restrict_to_max_seq_len = True,

        amateur_model: Module | Tuple[Module] | None = None,

        filter_kwargs: dict = dict(),

        contrastive_decode_kwargs: dict | Tuple[dict] = dict(

            beta = 0.5,

            alpha = 0.1

        ),

        cache_kv = True,

        return_prime=False,

        verbose=True,

        logit_bias: dict | Tensor | None = None,   # <-- new parameter

        **kwargs

    ):
        """

        Autoregressive generation with optional additive logit bias.

    

        logit_bias:

            - dict[token_id -> float]  OR

            - torch.Tensor of shape (vocab,) OR (batch, vocab)

        """
    
        max_seq_len, greedy, device = self.max_seq_len, temperature == 0., prompts.device
    
        prompts, ps = pack([prompts], '* n')
    
        b, t = prompts.shape
    
        # handle filter logits fn given as string
        if isinstance(filter_logits_fn, str):
            assert filter_logits_fn in FILTER_LOGITS_FN, f"only {join(FILTER_LOGITS_FN.keys())} are available"
            filter_logits_fn = FILTER_LOGITS_FN[filter_logits_fn]
    
        # handle variable lengthed prompts (prefixes)
        seq_start_pos = None
        if exists(prompt_lens):
            prompts = align_right(prompts, prompt_lens, pad_id = self.pad_value)
            seq_start_pos = t - prompt_lens
    
        # output from which sampled tokens appended to
        out = prompts
    
        if verbose:
            print("Generating sequence of max length:", seq_len)
    
        # kv caches
        cache = None
    
        # if doing contrastive decoding, turn off filter automatically
        if exists(amateur_model):
            amateur_model = cast_tuple(amateur_model)
            contrastive_decode_kwargs = cast_tuple(contrastive_decode_kwargs)
            assert len(amateur_model) == len(contrastive_decode_kwargs)
            amateur_caches = [None] * len(amateur_model)
            filter_logits_fn = identity
            for i, module in enumerate(amateur_model):
                if isinstance(module, AutoregressiveWrapper):
                    amateur_model[i] = module.net
                module.eval()
    
        # -------------------------
        # Prepare logit_bias (robust vocab-size detection)
        # -------------------------
        prepared_bias = None
        lazy_build_bias_from_dict = None
    
        if exists(logit_bias):
            if isinstance(logit_bias, dict):
                # try to determine vocab size from model without using logits
                vocab_size = None
    
                # common places to find vocab size
                try:
                    if hasattr(self.net, "config") and getattr(self.net.config, "vocab_size", None) is not None:
                        vocab_size = int(self.net.config.vocab_size)
                    elif getattr(self.net, "vocab_size", None) is not None:
                        vocab_size = int(self.net.vocab_size)
                    else:
                        # try to infer from embedding / output projection weights
                        # huggingface style: get_output_embeddings() or embed_tokens or lm_head
                        get_out = getattr(self.net, "get_output_embeddings", None)
                        if callable(get_out) and get_out() is not None:
                            vocab_size = int(get_out().weight.shape[0])
                        elif hasattr(self.net, "embed_tokens"):
                            vocab_size = int(self.net.embed_tokens.weight.shape[0])
                        elif hasattr(self.net, "lm_head"):
                            vocab_size = int(self.net.lm_head.weight.shape[0])
                except Exception:
                    vocab_size = None
    
                if vocab_size is not None:
                    bias_vec = torch.zeros(int(vocab_size), device=device, dtype=torch.float32)
                    for tok, val in logit_bias.items():
                        tok_i = int(tok)
                        if tok_i < 0 or tok_i >= vocab_size:
                            raise IndexError(f"logit_bias token id {tok_i} out of range for vocab size {vocab_size}")
                        bias_vec[tok_i] = float(val)
                    prepared_bias = bias_vec
                else:
                    # can't determine vocab size yet — build lazily after first logits are available
                    lazy_build_bias_from_dict = {int(k): float(v) for k, v in logit_bias.items()}
    
            elif isinstance(logit_bias, torch.Tensor):
                prepared_bias = logit_bias.to(device=device, dtype=torch.float32)
            else:
                raise TypeError("logit_bias must be dict or torch.Tensor")
    
        # sampling up to seq_len
        for sl in range(seq_len):
    
            if restrict_to_max_seq_len:
                max_len_exceeded = out.shape[-1] > max_seq_len
                assert not (cache_kv and max_len_exceeded and not self.net.can_cache_kv_outside_max_seq_len), \
                    'the network cannot use cached key values when decoding outside the max sequence length. most likely because you are using absolute positional embedding. you can switch to rotary embeddings to resolve this issue'
                x = out[:, -max_seq_len:]
                if exists(cache):
                    for inter in cache.attn_intermediates:
                        if inter.layer_type == 'a':
                            inter.cached_kv = [t[..., -(max_seq_len - 1):, :] for t in inter.cached_kv]
            else:
                x = out
    
            logits, new_cache = self.net(
                x,
                return_intermediates = True,
                cache = cache,
                seq_start_pos = seq_start_pos,
                **kwargs
            )
    
            if cache_kv and self.net.can_cache_kv:
                cache = new_cache
    
            logits = logits[:, -1]  # shape (batch, vocab)
    
            # If we couldn't build the bias earlier because vocab size was unknown,
            # build it now from the first logits tensor.
            if lazy_build_bias_from_dict is not None:
                vocab_size = logits.shape[-1]
                bias_vec = torch.zeros(vocab_size, device=device, dtype=torch.float32)
                for tok, val in lazy_build_bias_from_dict.items():
                    if tok < 0 or tok >= vocab_size:
                        raise IndexError(f"logit_bias token id {tok} out of range for vocab size {vocab_size}")
                    bias_vec[tok] = val
                prepared_bias = bias_vec
                lazy_build_bias_from_dict = None  # only build once
    
            # handle contrastive decoding, Li et al.
            # https://arxiv.org/abs/2210.15097
            if exists(amateur_model):
                for i, (amateur, amateur_cache, amateur_contrastive_decode_kwargs) in enumerate(zip(amateur_model, amateur_caches, contrastive_decode_kwargs)):
                    amateur_logits, next_amateur_cache = amateur(
                        x,
                        return_intermediates = True,
                        cache = amateur_cache,
                        seq_start_pos = seq_start_pos,
                        **kwargs
                    )
                    amateur_logits = amateur_logits[:, -1]
                    assert amateur_logits.shape == logits.shape, 'logits dimension are not the same between amateur and expert model'
                    logits = contrastive_decode_fn(logits, amateur_logits, **amateur_contrastive_decode_kwargs)
                    if cache_kv and amateur.can_cache_kv:
                        amateur_caches[i] = next_amateur_cache
    
            # -------------------------
            # Apply logit bias if provided
            # -------------------------
            if exists(prepared_bias):
                # prepared_bias can be (vocab,) or (batch, vocab)
                if prepared_bias.dim() == 1:
                    # broadcast to batch
                    logits = logits + prepared_bias.unsqueeze(0)
                elif prepared_bias.dim() == 2:
                    # expect shape (batch, vocab)
                    if prepared_bias.shape[0] != logits.shape[0]:
                        raise ValueError("logit_bias tensor batch size must match logits batch size")
                    logits = logits + prepared_bias
                else:
                    raise ValueError("logit_bias tensor must be 1D (vocab,) or 2D (batch, vocab)")
    
            # filter by top_k, top_p (nucleus), top_a, or custom
            if greedy:
                sample = logits.argmax(dim = -1, keepdim = True)
            else:
                filtered_logits = filter_logits_fn(logits, **filter_kwargs)
                probs = F.softmax(filtered_logits / temperature, dim=-1)
                sample = torch.multinomial(probs, 1)
    
            # concat sample
            out = torch.cat((out, sample), dim=-1)
    
            if verbose:
                if sl % 32 == 0:
                    print(sl, '/', seq_len)
    
            if not exists(eos_token):
                continue
    
            is_eos_tokens = (out == eos_token)
    
            if is_eos_tokens.any(dim = -1).all():
                if verbose:
                    print('Model called the end of sequence at:', sl, '/', seq_len)
                break
    
        if exists(eos_token):
            # mask out everything after the eos tokens
            shifted_is_eos_tokens = F.pad(is_eos_tokens, (1, -1))
            mask = shifted_is_eos_tokens.float().cumsum(dim = -1) >= 1
            out = out.masked_fill(mask, self.pad_value)
    
        if return_prime:
            out = out[:, :]
        else:
            out = out[:, t:]
    
        out, = unpack(out, ps, '* n')
    
        return out

    @torch.inference_mode()
    @eval_decorator
    def generate_advanced(

        self,

        prompts,

        seq_len,

        eos_token = None,

        temperature = 1.,

        prompt_lens: Tensor | None = None,

        filter_logits_fn: str | Callable = top_k,

        restrict_to_max_seq_len = True,

        amateur_model: Module | Tuple[Module] | None = None,

        filter_kwargs: dict = dict(),

        contrastive_decode_kwargs: dict | Tuple[dict] = dict(

            beta = 0.5,

            alpha = 0.1

        ),

        cache_kv = True,

        return_prime=False,

        verbose=True,

        # --- new generation options ---

        logits_bias: dict | None = None,      # {token_id: bias_value} where bias_value is float or Tensor(batch,)

        masked_tokens: list | Tensor | None = None,  # list of token ids to forbid

        # --- binary classifier mode ---

        binary_classifier: bool = False,     # if True, run classifier snippet and return preds, probs

        classifier_model: Module | None = None,  # model to use for binary classification

        batches: list | None = None,         # iterable of input batches for classifier_model

        threshold: float = 0.5,              # threshold for converting probs to preds

        classifier_device: torch.device | None = None,

        # -----------------

        **kwargs

    ):
        # If binary classifier mode requested, run the provided snippet and return early.
        if binary_classifier:
            assert classifier_model is not None, "classifier_model must be provided when binary_classifier=True"
            assert batches is not None, "batches (iterable of input tensors) must be provided when binary_classifier=True"

            device = classifier_device if classifier_device is not None else (prompts.device if exists(prompts) else torch.device('cpu'))

            all_probs = []
            all_preds = []

            classifier_model.eval()
            with torch.no_grad():
                for x in batches:
                    x = x.to(device)
                    logits = classifier_model(x).squeeze()    # [B]
                    probs = torch.sigmoid(logits)    # [B]
                    preds = (probs >= threshold).long()

                    all_probs.extend(probs.cpu().tolist())
                    all_preds.extend(preds.cpu().tolist())

            return all_preds, all_probs

        # --- normal generation path below ---
        max_seq_len, greedy, device = self.max_seq_len, temperature == 0., prompts.device

        prompts, ps = pack([prompts], '* n')

        b, t = prompts.shape

        # handle filter logits fn given as string
        if isinstance(filter_logits_fn, str):
            assert filter_logits_fn in FILTER_LOGITS_FN, f"only {join(FILTER_LOGITS_FN.keys())} are available"
            filter_logits_fn = FILTER_LOGITS_FN[filter_logits_fn]

        # handle variable lengthed prompts (prefixes)
        seq_start_pos = None
        if exists(prompt_lens):
            prompts = align_right(prompts, prompt_lens, pad_id = self.pad_value)
            seq_start_pos = t - prompt_lens

        # output from which sampled tokens appended to
        out = prompts

        if verbose:
            print("Generating sequence of max length:", seq_len)

        # kv caches
        cache = None

        # if doing contrastive decoding, turn off filter automatically
        if exists(amateur_model):
            amateur_model = cast_tuple(amateur_model)
            contrastive_decode_kwargs = cast_tuple(contrastive_decode_kwargs)

            assert len(amateur_model) == len(contrastive_decode_kwargs)

            amateur_caches = [None] * len(amateur_model)
            filter_logits_fn = identity

            for i, module in enumerate(amateur_model):
                if isinstance(module, AutoregressiveWrapper):
                    amateur_model[i] = module.net

                module.eval()

        # normalize inputs for new args
        if exists(logits_bias):
            assert isinstance(logits_bias, dict), "logits_bias must be a dict {token_id: bias_value}"
        if exists(masked_tokens):
            if isinstance(masked_tokens, torch.Tensor):
                masked_tokens = masked_tokens.tolist()
            else:
                masked_tokens = list(masked_tokens)

        # sampling up to seq_len
        for sl in range(seq_len):

            if restrict_to_max_seq_len:
                max_len_exceeded = out.shape[-1] > max_seq_len

                assert not (cache_kv and max_len_exceeded and not self.net.can_cache_kv_outside_max_seq_len), 'the network cannot use cached key values when decoding outside the max sequence length. most likely because you are using absolute positional embedding. you can switch to rotary embeddings to resolve this issue'

                x = out[:, -max_seq_len:]

                if exists(cache):
                    for inter in cache.attn_intermediates:
                        if inter.layer_type == 'a':
                            inter.cached_kv = [t[..., -(max_seq_len - 1):, :] for t in inter.cached_kv]

            logits, new_cache = self.net(
                x,
                return_intermediates = True,
                cache = cache,
                seq_start_pos = seq_start_pos,
                **kwargs
            )

            if cache_kv and self.net.can_cache_kv:
                cache = new_cache

            logits = logits[:, -1]   # shape: (batch, vocab)

            # handle contrastive decoding, Li et al.
            if exists(amateur_model):
                for i, (amateur, amateur_cache, amateur_contrastive_decode_kwargs) in enumerate(zip(amateur_model, amateur_caches, contrastive_decode_kwargs)):
                    amateur_logits, next_amateur_cache = amateur(
                        x,
                        return_intermediates = True,
                        cache = amateur_cache,
                        seq_start_pos = seq_start_pos,
                        **kwargs
                    )

                    amateur_logits = amateur_logits[:, -1]

                    assert amateur_logits.shape == logits.shape, 'logits dimension are not the same between amateur and expert model'
                    logits = contrastive_decode_fn(logits, amateur_logits, **amateur_contrastive_decode_kwargs)

                    if cache_kv and amateur.can_cache_kv:
                        amateur_caches[i] = next_amateur_cache

            # --- APPLY LOGITS BIAS AND MASKING HERE (before filtering / softmax) ---
            # logits_bias: dict {token_id: bias_value} where bias_value is float or Tensor(batch,)
            if exists(logits_bias):
                # apply per-token bias updates directly to logits to avoid allocating full vocab bias tensor
                for tok_id, bias_val in logits_bias.items():
                    # support scalar or per-batch tensor
                    if isinstance(bias_val, torch.Tensor):
                        if bias_val.dim() == 1 and bias_val.shape[0] == b:
                            bias_to_add = bias_val.to(device)
                        else:
                            bias_to_add = bias_val.to(device).view(1).expand(b)
                    else:
                        bias_to_add = torch.tensor(float(bias_val), device=device).view(1).expand(b)

                    logits[:, int(tok_id)] = logits[:, int(tok_id)] + bias_to_add

            # masked_tokens: list of token ids to forbid
            if exists(masked_tokens) and len(masked_tokens) > 0:
                NEG_INF = -1e9
                idx = torch.tensor(masked_tokens, device=device, dtype=torch.long)
                idx = idx[(idx >= 0) & (idx < logits.shape[-1])]
                if idx.numel() > 0:
                    logits.index_fill_(dim=-1, index=idx, value=NEG_INF)
            # -------------------------------------------------------------------

            # filter by top_k, top_p (nucleus), top_a, or custom
            if greedy:
                sample = logits.argmax(dim = -1, keepdim = True)
            else:
                filtered_logits = filter_logits_fn(logits, **filter_kwargs)
                probs = F.softmax(filtered_logits / temperature, dim=-1)
                sample = torch.multinomial(probs, 1)

            # concat sample
            out = torch.cat((out, sample), dim=-1)

            if verbose:
                if sl % 32 == 0:
                    print(sl, '/', seq_len)

            if not exists(eos_token):
                continue

            is_eos_tokens = (out == eos_token)

            if is_eos_tokens.any(dim = -1).all():
                if verbose:
                    print('Model called the end of sequence at:', sl, '/', seq_len)
                break

        if exists(eos_token):
            # mask out everything after the eos tokens
            shifted_is_eos_tokens = F.pad(is_eos_tokens, (1, -1))
            mask = shifted_is_eos_tokens.float().cumsum(dim = -1) >= 1
            out = out.masked_fill(mask, self.pad_value)

        if return_prime:
            out = out[:, :]

        else:
            out = out[:, t:]

        out, = unpack(out, ps, '* n')

        return out
    
    def compute_accuracy(self, logits, labels):
        
        out = torch.argmax(logits, dim=-1) 
        out = out.flatten() 
        labels = labels.flatten() 

        mask = (labels != self.ignore_index) # can also be self.pad_value (your choice)
        out = out[mask] 
        labels = labels[mask] 

        num_right = (out == labels)
        num_right = torch.sum(num_right).type(torch.float32)

        acc = num_right / len(labels)
        
        return acc

    def forward(self, x, return_outputs = False, **kwargs):
        seq, ignore_index, add_attn_z_loss = x.shape[1], self.ignore_index, self.add_attn_z_loss

        inp, target = x[:, :-1], x[:, 1:]
        inp = torch.where(inp == ignore_index, self.pad_value, inp)

        if self.mask_prob > 0.:
            rand = torch.randn(inp.shape, device = x.device)
            rand[:, 0] = -torch.finfo(rand.dtype).max # first token should not be masked out
            num_mask = min(int(seq * self.mask_prob), seq - 1)
            indices = rand.topk(num_mask, dim = -1).indices
            mask = ~torch.zeros_like(inp).scatter(1, indices, 1.).bool()
            kwargs.update(self_attn_kv_mask = mask)

        logits, cache = self.net(
            inp,
            return_intermediates = True,
            return_attn_z_loss = add_attn_z_loss,
            **kwargs
        )
        
        acc = self.compute_accuracy(logits, target)

        loss_fn = F.cross_entropy if not self.net.output_is_log_prob else F.nll_loss

        loss = loss_fn(
            rearrange(logits, 'b n c -> b c n'),
            target,
            ignore_index = ignore_index
        )

        if add_attn_z_loss:
            loss = loss + cache.attn_z_loss

        if not return_outputs:
            return loss, acc

        return loss, acc, logits, cache

    @torch.inference_mode()
    @eval_decorator
    def generate_expert(

        self,

        prompts,

        seq_len,

        eos_token = None,

        temperature = 1.,

        prompt_lens: Tensor | None = None,

        filter_logits_fn: str | Callable = top_k,

        restrict_to_max_seq_len = True,

        amateur_model: Module | Tuple[Module] | None = None,

        filter_kwargs: dict = dict(),

        contrastive_decode_kwargs: dict | Tuple[dict] = dict(

            beta = 0.5,

            alpha = 0.1

        ),

        cache_kv = True,

        return_prime=False,

        verbose=True,

        # --- new controls ---

        token_type_ids: torch.LongTensor | None = None,   # [vocab]

        type_temperatures: dict | None = None,            # {type_id: temp}

        type_biases: dict | None = None,                  # {type_id: bias}

        repetition_window: int = 64,

        repetition_penalty_per_type: dict | None = None,  # {type_id: penalty_scale}

        rare_types: set | None = None,                    # e.g. {4, 5}

        rare_type_boost: float = 0.0,                     # small, e.g. 0.5

        entropy_threshold: float = 2.0,                   # when below, boost rare types

        # --- masked tokens option ---

        forbidden_token_ids: torch.LongTensor | torch.BoolTensor | None = None,

        forbidden_value: float = -1e9,

        **kwargs

    ):
        max_seq_len, greedy, device = self.max_seq_len, temperature == 0., prompts.device
    
        prompts, ps = pack([prompts], '* n')
    
        b, t = prompts.shape
    
        # handle filter logits fn given as string
    
        if isinstance(filter_logits_fn, str):
            assert filter_logits_fn in FILTER_LOGITS_FN, f"only {join(FILTER_LOGITS_FN.keys())} are available"
            filter_logits_fn = FILTER_LOGITS_FN[filter_logits_fn]
    
        # handle variable lengthed prompts (prefixes)
    
        seq_start_pos = None
        if exists(prompt_lens):
            prompts = align_right(prompts, prompt_lens, pad_id = self.pad_value)
            seq_start_pos = t - prompt_lens
    
        # output from which sampled tokens appended to
    
        out = prompts
    
        if verbose:
            print("Generating sequence of max length:", seq_len)
    
        # kv caches
    
        cache = None
    
        # if doing contrastive decoding, turn off filter automatically
    
        if exists(amateur_model):
            amateur_model = cast_tuple(amateur_model)
            contrastive_decode_kwargs = cast_tuple(contrastive_decode_kwargs)
    
            assert len(amateur_model) == len(contrastive_decode_kwargs)
    
            amateur_caches = [None] * len(amateur_model)
            filter_logits_fn = identity
    
            for i, module in enumerate(amateur_model):
                if isinstance(module, AutoregressiveWrapper):
                    amateur_model[i] = module.net
    
                module.eval()
    
        # precompute some tensors for type controls
    
        if token_type_ids is not None:
            token_type_ids = token_type_ids.to(device)
    
            # build per-token temperature and bias vectors if provided
            per_token_temp = None
            if type_temperatures is not None and len(type_temperatures) > 0:
                per_token_temp = torch.ones_like(token_type_ids, dtype=torch.float32)
                for type_id, temp_val in type_temperatures.items():
                    per_token_temp[token_type_ids == type_id] = float(temp_val)
    
            per_token_bias = None
            if type_biases is not None and len(type_biases) > 0:
                per_token_bias = torch.zeros_like(token_type_ids, dtype=torch.float32)
                for type_id, bias_val in type_biases.items():
                    per_token_bias[token_type_ids == type_id] = float(bias_val)
    
            # repetition penalty per type
            per_type_rep_penalty = repetition_penalty_per_type or {}
    
            # rare type mask
            rare_type_mask = None
            if rare_types is not None and len(rare_types) > 0:
                rare_type_mask = torch.zeros_like(token_type_ids, dtype=torch.bool)
                for rt in rare_types:
                    rare_type_mask |= (token_type_ids == rt)
        else:
            per_token_temp = None
            per_token_bias = None
            per_type_rep_penalty = {}
            rare_type_mask = None
    
        # prepare forbidden mask if provided
        # We'll lazily convert forbidden_token_ids into a boolean mask of shape [b, vocab]
        forbidden_mask_per_batch = None
        if forbidden_token_ids is not None:
            # If it's a LongTensor of ids (1D)
            if forbidden_token_ids.dtype in (torch.int64, torch.int32):
                # create a [vocab] bool mask from ids
                vocab_size = self.net.config.vocab_size if hasattr(self.net, 'config') else None
                # If we can't infer vocab_size, we'll infer from token_type_ids if available
                if vocab_size is None and token_type_ids is not None:
                    vocab_size = token_type_ids.shape[0]
                assert vocab_size is not None, "Cannot infer vocab size for forbidden_token_ids; provide a boolean mask instead."
                mask = torch.zeros(vocab_size, dtype=torch.bool, device=device)
                ids = forbidden_token_ids.to(device)
                mask[ids.clamp(0, vocab_size-1)] = True
                forbidden_mask_per_batch = mask.unsqueeze(0).expand(b, -1)  # [b, vocab]
            elif forbidden_token_ids.dtype == torch.bool:
                # could be [vocab] or [b, vocab]
                if forbidden_token_ids.dim() == 1:
                    forbidden_mask_per_batch = forbidden_token_ids.to(device).unsqueeze(0).expand(b, -1)
                elif forbidden_token_ids.dim() == 2:
                    assert forbidden_token_ids.shape[0] == b, "forbidden_token_ids batch dimension must match prompts batch size"
                    forbidden_mask_per_batch = forbidden_token_ids.to(device)
                else:
                    raise ValueError("forbidden_token_ids boolean mask must be 1D [vocab] or 2D [b, vocab]")
            else:
                raise TypeError("forbidden_token_ids must be LongTensor of ids or BoolTensor mask")
    
        # sampling up to seq_len
    
        for sl in range(seq_len):
    
            if restrict_to_max_seq_len:
                max_len_exceeded = out.shape[-1] > max_seq_len
    
                assert not (cache_kv and max_len_exceeded and not self.net.can_cache_kv_outside_max_seq_len), \
                    'the network cannot use cached key values when decoding outside the max sequence length. ' \
                    'most likely because you are using absolute positional embedding. ' \
                    'you can switch to rotary embeddings to resolve this issue'
    
                x = out[:, -max_seq_len:]
    
                if exists(cache):
                    for inter in cache.attn_intermediates:
                        if inter.layer_type == 'a':
                            inter.cached_kv = [t[..., -(max_seq_len - 1):, :] for t in inter.cached_kv]
    
            logits, new_cache = self.net(
                x,
                return_intermediates = True,
                cache = cache,
                seq_start_pos = seq_start_pos,
                **kwargs
            )
    
            if cache_kv and self.net.can_cache_kv:
                cache = new_cache
    
            logits = logits[:, -1]  # [b, vocab]
    
            # handle contrastive decoding
    
            if exists(amateur_model):
                for i, (amateur, amateur_cache, amateur_contrastive_decode_kwargs) in enumerate(
                    zip(amateur_model, amateur_caches, contrastive_decode_kwargs)
                ):
                    amateur_logits, next_amateur_cache = amateur(
                        x,
                        return_intermediates = True,
                        cache = amateur_cache,
                        seq_start_pos = seq_start_pos,
                        **kwargs
                    )
    
                    amateur_logits = amateur_logits[:, -1]
    
                    assert amateur_logits.shape == logits.shape, \
                        'logits dimension are not the same between amateur and expert model'
                    logits = contrastive_decode_fn(logits, amateur_logits, **amateur_contrastive_decode_kwargs)
    
                    if cache_kv and amateur.can_cache_kv:
                        amateur_caches[i] = next_amateur_cache
    
            # --------- STRUCTURED LOGIT SHAPING (no training) ---------
    
            if token_type_ids is not None:
    
                # 1) per-token bias (type-aware)
                if per_token_bias is not None:
                    logits = logits + per_token_bias  # broadcast [vocab]
    
                # 2) repetition penalty per type (context-aware)
                if repetition_window > 0 and len(per_type_rep_penalty) > 0:
                    # look at recent tokens
                    recent = out[:, -repetition_window:].to(device)  # [b, w]
                    # map to types
                    recent_types = token_type_ids[recent]  # [b, w]
    
                    # for each type, compute frequency and apply penalty
                    # we do this per batch element
                    for bi in range(b):
                        types_b = recent_types[bi]  # [w]
                        if types_b.numel() == 0:
                            continue
                        # count occurrences per type id present in penalties
                        for type_id, penalty_scale in per_type_rep_penalty.items():
                            # penalty_scale > 1.0 means stronger penalty
                            mask = (types_b == type_id)
                            if mask.any():
                                freq = mask.float().mean().item()  # 0..1
                                if freq > 0.0:
                                    # build a penalty vector for this type
                                    type_mask = (token_type_ids == type_id)  # [vocab]
                                    # subtract a penalty proportional to freq
                                    # (log-space penalty)
                                    logits[bi, type_mask] /= (1.0 + freq * (penalty_scale - 1.0))
    
                # 3) entropy-based rare-type boost (gentle, context-aware)
                if rare_type_mask is not None and rare_type_boost > 0.0:
                    # compute current probs & entropy (before global temperature)
                    probs_raw = F.softmax(logits, dim=-1)  # [b, vocab]
                    log_probs_raw = torch.log(probs_raw + 1e-9)
                    entropy = -(probs_raw * log_probs_raw).sum(dim=-1)  # [b]
    
                    # for low-entropy states, gently boost rare types
                    low_entropy = entropy < entropy_threshold
                    if low_entropy.any():
                        # boost only for those batch elements
                        boost_vec = torch.zeros_like(logits)
                        boost_vec[:, rare_type_mask] = rare_type_boost
                        logits = torch.where(
                            low_entropy.unsqueeze(-1),
                            logits + boost_vec,
                            logits
                        )
    
                # 4) per-token temperature (type-aware)
                # apply before global temperature
                if per_token_temp is not None:
                    # divide logits by per-token temperature
                    # (smaller temp -> sharper distribution for that type)
                    logits = logits / per_token_temp
    
            # --------- APPLY FORBIDDEN TOKEN MASK ---------
            if forbidden_mask_per_batch is not None:
                # ensure shapes match
                assert forbidden_mask_per_batch.shape[0] == b and forbidden_mask_per_batch.shape[1] == logits.shape[-1], \
                    "forbidden mask shape must be [b, vocab]"
                # set logits for forbidden tokens to a large negative value
                logits = logits.masked_fill(forbidden_mask_per_batch, float(forbidden_value))
    
            # ----------------------------------------------------------
    
            # filter by top_k, top_p (nucleus), top_a, or custom
    
            if greedy:
                sample = logits.argmax(dim = -1, keepdim = True)
            else:
                filtered_logits = filter_logits_fn(logits, **filter_kwargs)
                probs = F.softmax(filtered_logits / temperature, dim=-1)
                sample = torch.multinomial(probs, 1)
    
            # concat sample
    
            out = torch.cat((out, sample), dim=-1)
    
            if verbose:
                if sl % 32 == 0:
                    print(sl, '/', seq_len)
    
            if not exists(eos_token):
                continue
    
            is_eos_tokens = (out == eos_token)
    
            if is_eos_tokens.any(dim = -1).all():
    
                if verbose:
                    print('Model called the end of sequence at:', sl, '/', seq_len)
    
                break
    
        if exists(eos_token):
            # mask out everything after the eos tokens
            shifted_is_eos_tokens = F.pad(is_eos_tokens, (1, -1))
            mask = shifted_is_eos_tokens.float().cumsum(dim = -1) >= 1
            out = out.masked_fill(mask, self.pad_value)
    
        if return_prime:
            out = out[:, :]
        else:
            out = out[:, t:]
    
        out, = unpack(out, ps, '* n')
    
        return out

#=========================================================================================

# Binary classifier fuctions

class ClsInferenceDataset(Dataset):
    """

    Dataset for pairs (src_seq, label).

    src_seq: list of token IDs (ints).

    label: single int or float (0 or 1).

    """
    def __init__(self, data_pairs):
        self.data_pairs = data_pairs

    def __len__(self):
        return len(self.data_pairs)

    def __getitem__(self, idx):
        src_seq = self.data_pairs[idx]
        x = torch.tensor(src_seq, dtype=torch.long)
        return x

def build_cls_model(num_tokens=18819,

                    max_seq_len=1024,

                    logits_dim=1,

                    use_cls_token=True,

                    squeeze_out_last_dim=True,

                    dim=1024,

                    depth=8,

                    heads=8,

                    device='cuda'

                   ):

    """

    Constructs the Transformer model that outputs a single logit per input.

    """

    model = TransformerWrapper(
        num_tokens=num_tokens,
        max_seq_len=max_seq_len,
        logits_dim=logits_dim,
        use_cls_token=use_cls_token,
        squeeze_out_last_dim = squeeze_out_last_dim,
        attn_layers=Encoder(dim=dim,
                            depth=depth,
                            heads=heads
                           )
    )

    return model.to(device)

def load_cls_model(checkpoint_path, device='cuda'):
    
    """

    Rebuilds the architecture, loads weights.

    """
    
    model = build_cls_model(device=device)
    state = torch.load(checkpoint_path, map_location=device)
    model.load_state_dict(state)
    model.to(device).eval()
    
    return model

def cls_predict(model,

                seqs,

                batch_size=8,

                threshold=0.5,

                seq_len=1024,

                pad_token=18818,

                device='cuda'

               ):
    
    """

    Returns two lists:

      - probs: float probabilities  

      - preds: int 0/1 predictions  

    """
    
    def collate_fn(batch):
        # batch: list of sequences (list/1D-tensor)
        tensors = [s[:seq_len].detach().clone() for s in batch]
        max_len = min(seq_len, max(t.size(0) for t in tensors))
        padded = torch.full((len(tensors), max_len), pad_token, dtype=torch.long)
        for i, t in enumerate(tensors):
            L = t.size(0)
            padded[i, :L] = t
        return padded

    ds = ClsInferenceDataset(seqs)
    loader = DataLoader(ds, batch_size=batch_size, shuffle=False, collate_fn=collate_fn)

    all_probs = []
    all_preds = []

    model.to(device)
    model.eval()
    
    with torch.inference_mode():
        for x in loader:
            
            x = x.to(device)                       # [B, L] (truncated & padded)
            
            logits = model(x).squeeze()            # [B]
            
            probs = torch.sigmoid(logits)         # [B]
            
            preds = (probs >= threshold).long()

            probs = probs.cpu().tolist()
            preds = preds.cpu().tolist()

            if type(preds) == list:
                all_probs.extend(probs)
                all_preds.extend(preds)

            else:
                all_probs.append(probs)
                all_preds.append(preds)                

    return all_preds, all_probs

#=================================================================================================================================
# This is the end of x_transformer_2_3_1 Python module
#=================================================================================================================================