model_id stringlengths 9 93 | dataset_id stringlengths 7 59 | metric stringclasses 8
values | value float64 0 1 |
|---|---|---|---|
01-ZeroOne/SUHAIL-14B-preview | OALL/AlGhafa-Arabic-LLM-Benchmark-Native | accuracy | 0.545431 |
01-ZeroOne/SUHAIL-14B-preview | OALL/Arabic_EXAMS | accuracy | 0.391061 |
01-ZeroOne/SUHAIL-14B-preview | OALL/Arabic_MMLU | accuracy | 0.504964 |
01-ZeroOne/SUHAIL-14B-preview | asas-ai/AraTrust | accuracy | 0.610421 |
01-ZeroOne/SUHAIL-14B-preview | MBZUAI/MadinahQA | accuracy | 0.449736 |
01-ai/Yi-1.5-34B-Chat-16K | TIGER-Lab/MMLU-Pro | accuracy | 0.454455 |
01-ai/Yi-1.5-34B-Chat-16K | TAUR-Lab/MuSR | accuracy | 0.439153 |
01-ai/Yi-1.5-34B-Chat-16K | Idavidrein/gpqa | accuracy | 0.338087 |
01-ai/Yi-1.5-34B-Chat-16K | google/IFEval | accuracy | 0.393715 |
01-ai/Yi-1.5-34B-Chat-16K | EleutherAI/hendrycks_math | accuracy | 0.188066 |
01-ai/Yi-1.5-34B-32K | Joschka/big_bench_hard | accuracy | 0.764 |
01-ai/Yi-1.5-34B-32K | baber/agieval | accuracy | 0.711 |
01-ai/Yi-1.5-34B-32K | google-research-datasets/mbpp | accuracy | 0.655 |
01-ai/Yi-1.5-34B | allenai/ai2_arc | accuracy | 0.672355 |
01-ai/Yi-1.5-34B | Joschka/big_bench_hard | accuracy | 0.595383 |
01-ai/Yi-1.5-34B | google/IFEval | accuracy | 0.218115 |
01-ai/Yi-1.5-34B | TIGER-Lab/mmlu_pro_leaderboard_submission | accuracy | 0.466589 |
01-ai/Yi-1.5-34B | TAUR-Lab/MuSR | accuracy | 0.42328 |
01-ai/Yi-1.5-6B-Chat | HuggingFaceH4/MATH | accuracy | 0.405 |
01-ai/Yi-1.5-6B-Chat | google-research-datasets/mbpp | accuracy | 0.709 |
01-ai/Yi-1.5-6B-Chat | google/IFEval | accuracy | 0.4547 |
01-ai/Yi-1.5-6B-Chat | Joschka/big_bench_hard | accuracy | 0.4529 |
01-ai/Yi-1.5-6B | TIGER-Lab/MMLU-Pro | accuracy | 0.426255 |
01-ai/Yi-1.5-6B | allenai/ai2_arc | accuracy | 0.314412 |
01-ai/Yi-1.5-6B | Rowan/hellaswag | accuracy | 0.448186 |
01-ai/Yi-1.5-6B | allenai/winogrande | accuracy | 0.303357 |
01-ai/Yi-1.5-6B | google/IFEval | accuracy | 0.219963 |
01-ai/Yi-1.5-6B | Joschka/big_bench_hard | accuracy | 0.448186 |
01-ai/Yi-1.5-6B | TAUR-Lab/MuSR | accuracy | 0.314412 |
01-ai/Yi-1.5-9B | allenai/ai2_arc | accuracy | 0.582765 |
01-ai/Yi-1.5-9B | Idavidrein/gpqa | accuracy | 0.379195 |
01-ai/Yi-1.5-9B | google/IFEval | accuracy | 0.231054 |
01-ai/Yi-1.5-9B-Chat | allenai/ai2_arc | accuracy | 0.6365 |
01-ai/Yi-1.5-9B-Chat | allenai/winogrande | accuracy | 0.7719 |
01-ai/Yi-1.5-9B-Chat-16K | allenai/ai2_arc | accuracy | 0.570819 |
01-ai/Yi-1.5-9B-Chat-16K | SaylorTwift/bbh | accuracy | 0.512411 |
01-ai/Yi-1.5-9B-Chat-16K | Idavidrein/gpqa | accuracy | 0.113636 |
01-ai/Yi-1.5-9B-Chat-16K | google/IFEval | accuracy | 0.351201 |
01-ai/Yi-1.5-9B-Chat-16K | EleutherAI/hendrycks_math | accuracy | 0.126133 |
01-ai/Yi-1.5-9B-Chat-16K | TIGER-Lab/MMLU-Pro | accuracy | 0.399352 |
01-ai/Yi-1.5-9B-Chat-16K | TAUR-Lab/MuSR | accuracy | 0.40873 |
01-ai/Yi-34B-200K | Joschka/big_bench_hard | accuracy | 0.527 |
01-ai/Yi-6B-200K | Joschka/big_bench_hard | accuracy | 0.424579 |
01-ai/Yi-6B-200K | HuggingFaceH4/ifeval | accuracy | 0.073937 |
01-ai/Yi-6B-200K | TIGER-Lab/MMLU-Pro | accuracy | 0.284408 |
01-ai/Yi-6B-200K | TAUR-Lab/MuSR | accuracy | 0.457672 |
01-ai/Yi-34B | allenai/ai2_arc | accuracy | 0.645904 |
01-ai/Yi-34B | TIGER-Lab/MMLU-Pro | accuracy | 0.441157 |
01-ai/Yi-34B | SaylorTwift/bbh | accuracy | 0.545044 |
01-ai/Yi-34B | Idavidrein/gpqa | accuracy | 0.366611 |
01-ai/Yi-34B | TAUR-Lab/MuSR | accuracy | 0.411376 |
01-ai/Yi-34B | google/IFEval | accuracy | 0.245841 |
01-ai/Yi-6B | allenai/ai2_arc | accuracy | 0.503 |
01-ai/Yi-6B | Rowan/hellaswag | accuracy | 0.744 |
01-ai/Yi-6B | allenai/winogrande | accuracy | 0.713 |
01-ai/Yi-9B | allenai/ai2_arc | accuracy | 0.556 |
01-ai/Yi-9B | Rowan/hellaswag | accuracy | 0.764 |
01-ai/Yi-9B | allenai/winogrande | accuracy | 0.73 |
01-ai/Yi-9B | S3IC/humaneval | accuracy | 0.39 |
01-ai/Yi-9B | ZHENGRAN/mbpp | accuracy | 0.544 |
01-ai/Yi-9B-200K | allenai/ai2_arc | accuracy | 0.541809 |
01-ai/Yi-9B-200K | Joschka/big_bench_hard | accuracy | 0.478042 |
01-ai/Yi-9B-200K | HuggingFaceH4/ifeval | accuracy | 0.184843 |
01-ai/Yi-9B-200K | TAUR-Lab/MuSR | accuracy | 0.428571 |
01-ai/Yi-Coder-1.5B-Chat | google-research-datasets/mbpp | accuracy | 0.491 |
01-ai/Yi-Coder-1.5B-Chat | Dahoas/svamp | accuracy | 0.362 |
01-ai/Yi-Coder-1.5B-Chat | EleutherAI/asdiv | accuracy | 0.593 |
01-ai/Yi-VL-34B | MMMU/MMMU | accuracy | 0.416 |
01-ai/Yi-VL-6B | MMMU/MMMU | accuracy | 0.378 |
0x7o/fialka-13B-v4 | allenai/ai2_arc | accuracy | 0.2969 |
0x7o/fialka-13B-v4 | Rowan/hellaswag | accuracy | 0.4737 |
0x7o/fialka-13B-v4 | allenai/winogrande | accuracy | 0.5888 |
timm/mobilenetv3_small_100.lamb_in1k | ILSVRC/imagenet-1k | accuracy | 0.6764 |
timm/mobilenetv3_small_100.lamb_in1k | ILSVRC/imagenet-1k | top-k_accuracy | 0.8765 |
timm/resnet50.a1_in1k | ILSVRC/imagenet-1k | accuracy | 0.8122 |
timm/resnet50.a1_in1k | ILSVRC/imagenet-1k | top-k_accuracy | 0.9511 |
openai/clip-vit-large-patch14 | JimmyUnleashed/FGCV_Aircraft_Dataset | accuracy | 0.361 |
openai-community/gpt2 | EleutherAI/lambada_openai | accuracy | 0.4599 |
laion/CLIP-ViT-bigG-14-laion2B-39B-b160k | ILSVRC/imagenet-1k | accuracy | 0.801 |
laion/CLIP-ViT-bigG-14-laion2B-39B-b160k | barkermrl/imagenet-a | accuracy | 0.693 |
laion/CLIP-ViT-bigG-14-laion2B-39B-b160k | JimmyUnleashed/FGCV_Aircraft_Dataset | accuracy | 0.497 |
google/siglip-so400m-patch14-384 | ILSVRC/imagenet-1k | top-k_accuracy | 0.766 |
google/siglip-so400m-patch14-384 | ILSVRC/imagenet-1k | accuracy | 0.831 |
facebook/opt-125m | allenai/ai2_arc | accuracy | 0.2287 |
facebook/opt-125m | Rowan/hellaswag | accuracy | 0.3147 |
facebook/opt-125m | EleutherAI/truthful_qa_mc | accuracy | 0.4287 |
facebook/opt-125m | allenai/winogrande | accuracy | 0.5162 |
Gensyn/Qwen2.5-1.5B-Instruct | TIGER-Lab/MMLU-Pro | accuracy | 0.324 |
Gensyn/Qwen2.5-1.5B-Instruct | RLAIF/mbpp | accuracy | 0.632 |
Gensyn/Qwen2.5-1.5B-Instruct | HuggingFaceH4/ifeval | accuracy | 0.425 |
meta-llama/Llama-3.1-8B-Instruct | TIGER-Lab/MMLU-Pro | accuracy | 0.483 |
meta-llama/Llama-3.1-8B-Instruct | allenai/ai2_arc | accuracy | 0.834 |
meta-llama/Meta-Llama-3-8B | HuggingFaceFW/CommonsenseQA | accuracy | 0.726 |
meta-llama/Meta-Llama-3-8B | allenai/winogrande | accuracy | 0.761 |
meta-llama/Meta-Llama-3-8B | Joschka/big_bench_hard | accuracy | 0.611 |
meta-llama/Meta-Llama-3-8B | allenai/ai2_arc | accuracy | 0.786 |
meta-llama/Meta-Llama-3-8B | allenai/quac | f1 | 0.444 |
dphn/dolphin-2.9.1-yi-1.5-34b | HuggingFaceH4/ifeval | accuracy | 0.3853 |
dphn/dolphin-2.9.1-yi-1.5-34b | Idavidrein/gpqa | accuracy | 0.1242 |
dphn/dolphin-2.9.1-yi-1.5-34b | TAUR-Lab/MuSR | accuracy | 0.1697 |
ArtifactBench
A heterogeneous graph of HuggingFace model / dataset / paper / codebase nodes (14,053) with observed (model, dataset, performance-metric) evaluation edges (51,337 relations), for benchmarking link prediction and attribute (metric-value) regression, plus an agent-based verification suite.
License
Released under the Open Database License (ODbL) v1.0 — see LICENSE or
https://opendatacommons.org/licenses/odbl/1-0/. Share/modify/use freely
with attribution; keep derivative databases open under ODbL.
Dataset Viewer
The viewer renders data/eval_edges.jsonl (config eval_edges): one row per
(model_id, dataset_id, metric, value) over all 30,499 normalized evaluation
edges. The full graph (embeddings, adjacency, splits) lives in the directories
below as .npz / .json and is loaded programmatically.
Layout
| path | contents |
|---|---|
full/ |
unsplit graph: node_metadata.json, node_mappings.json, node_embeddings_{voyage,random}.npy (N×1024), edges{,_eval,_base_model,_resource}.npz, matching edge_metadata*.json |
transductive/ |
edge-level split (all nodes in train & test); {train,test}_split/{edges,pos_edges}.npz, node_metadata.json, edge_metadata_normalized.json, node_embeddings_*.npy, split_info.json |
inductive/ |
disjoint-node split (test models unseen in train); same layout + node_split.json |
verification_bench/ |
bench.json (263 (model,dataset,metric) triples) + agent_results/<cell>/ reference agent outputs |
case_study_nli/ |
frozen 48-model × 12-dataset NLI grid + aggregate & plotting scripts |
Node types: model, dataset, paper, codebase. Edge types: model↔dataset
(eval, metrics normalized to [0,1]), model↔{paper,codebase},
dataset↔{paper,codebase} (resource), model↔model (base-model/fine-tune).
Usage
from huggingface_hub import snapshot_download
import numpy as np, json
p = snapshot_download("lwaekfjlk/artifact-bench", repo_type="dataset")
emb = np.load(f"{p}/transductive/node_embeddings_voyage.npy") # (N, 1024)
nm = json.load(open(f"{p}/transductive/train_split/node_metadata.json"))
pos = np.load(f"{p}/transductive/train_split/pos_edges.npz")["edges"] # (2, E)
Notes
case_study_nli: 9 bug cells useprevious_accuracy; 3 binary-output models are masked on 3-way NLI sets; 2 cells are true failures. Scripts incase_study_nli/scripts/regenerate the aggregate + figures.verification_bench: 263/266 cells have a completeresults.json; cell dirs named<model>_<dataset>_<metric>with/→_.
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