How to use from the
Use from the
llama-cpp-python library
# !pip install llama-cpp-python

from llama_cpp import Llama

llm = Llama.from_pretrained(
	repo_id="el4/Qwopus3.6-35B-A3B-Coder-OPAL-GGUF",
	filename="",
)
llm.create_chat_completion(
	messages = [
		{
			"role": "user",
			"content": "What is the capital of France?"
		}
	]
)

💎 OPAL

Consumer-GPU Quantization Harness

This repo contains OPAL Quants of Jackrong/Qwopus3.6-35B-A3B-Coder

Tier Name Target Size Middle Layer Strategy
💎 quality~23 GBIQ4_XS
⚖️ balanced~25 GBQ5_K
📦 compact~18 GBQ3_K
🚀 mini~14 GBIQ2_S
🔬 micro~11 GBIQ1_M
🤏 nano~12 GBIQ2_XXS
🛡️ exp-minimalist~16 GBIQ2_XXS (Protected Edges)

📚 Credits

👉 APEX Quantization Method
Ettore Di Giacinto & Richard Palethorpe (LocalAI Team). OPAL adapts the layer-wise precision gradients and MoE-aware tensor classification outlined in the APEX technical paper.

👉 Bartowski and Lamim
For the excellent semantic imatrix calibration dataset that powers OPAL's activation scaling.

👉 llama.cpp
Georgi Gerganov and contributors for the foundational inference and quantization engine.

👉 HuggingFace Accelerate
For the init_empty_weights() context manager that makes the 0-RAM "Ghost Model" possible.

👉 Jackrong
For the sexy markdown readme inspo.

Support the Project

A coffee in Ethereum would be cool! Although I don't drink coffee—I think it tastes like burnt water—but a pink lemonade would be fire! 🔥

0xDEE7fa8C421BD038D32e4441ea1aDe72fE973706
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GGUF
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