deval_helm_hyperturing1 / classic_pythia-2.8b-step2000 /groups /miscellaneous_text_classification.json
yuhengtu's picture
Upload folder using huggingface_hub
f0e8b2a verified
[
{
"title": "Accuracy",
"header": [
{
"value": "Model",
"markdown": false,
"metadata": {}
},
{
"value": "Mean win rate",
"description": "How many models this model outperforms on average (over columns).",
"markdown": false,
"lower_is_better": false,
"metadata": {}
},
{
"value": "RAFT - EM",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\nQuasi-exact match: Fraction of instances that the predicted output matches a correct reference up to light processing.",
"markdown": false,
"lower_is_better": false,
"metadata": {
"metric": "EM",
"run_group": "RAFT"
}
}
],
"rows": [
[
{
"value": "EleutherAI/pythia-2.8b",
"description": "",
"markdown": false
},
{
"markdown": false
},
{
"value": 0.41590909090909095,
"description": "min=0.025, mean=0.416, max=0.975, sum=4.575 (11)",
"style": {
"font-weight": "bold"
},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
}
]
],
"links": [
{
"text": "LaTeX",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/latex/miscellaneous_text_classification_accuracy.tex"
},
{
"text": "JSON",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/json/miscellaneous_text_classification_accuracy.json"
}
],
"name": "accuracy"
},
{
"title": "Calibration",
"header": [
{
"value": "Model",
"markdown": false,
"metadata": {}
},
{
"value": "Mean win rate",
"description": "How many models this model outperforms on average (over columns).",
"markdown": false,
"lower_is_better": false,
"metadata": {}
},
{
"value": "RAFT - ECE (10-bin)",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\n10-bin expected calibration error: The average difference between the model's confidence and accuracy, averaged across 10 bins where each bin contains an equal number of points (only computed for classification tasks). Warning - not reliable for small datasets (e.g., with < 300 examples) because each bin will have very few examples.",
"markdown": false,
"lower_is_better": true,
"metadata": {
"metric": "ECE (10-bin)",
"run_group": "RAFT"
}
}
],
"rows": [
[
{
"value": "EleutherAI/pythia-2.8b",
"description": "",
"markdown": false
},
{
"markdown": false
},
{
"value": 0.2537619778871928,
"description": "min=0.098, mean=0.254, max=0.427, sum=2.791 (11)",
"style": {
"font-weight": "bold"
},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
}
]
],
"links": [
{
"text": "LaTeX",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/latex/miscellaneous_text_classification_calibration.tex"
},
{
"text": "JSON",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/json/miscellaneous_text_classification_calibration.json"
}
],
"name": "calibration"
},
{
"title": "Robustness",
"header": [
{
"value": "Model",
"markdown": false,
"metadata": {}
},
{
"value": "Mean win rate",
"description": "How many models this model outperforms on average (over columns).",
"markdown": false,
"lower_is_better": false,
"metadata": {}
},
{
"value": "RAFT - EM (Robustness)",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\nQuasi-exact match: Fraction of instances that the predicted output matches a correct reference up to light processing.\n- Perturbation Robustness: Computes worst case over different robustness perturbations (misspellings, formatting, contrast sets).",
"markdown": false,
"lower_is_better": false,
"metadata": {
"metric": "EM",
"run_group": "RAFT",
"perturbation": "Robustness"
}
}
],
"rows": [
[
{
"value": "EleutherAI/pythia-2.8b",
"description": "",
"markdown": false
},
{
"markdown": false
},
{
"value": 0.3568181818181818,
"description": "min=0, mean=0.357, max=0.975, sum=3.925 (11)",
"style": {
"font-weight": "bold"
},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
}
]
],
"links": [
{
"text": "LaTeX",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/latex/miscellaneous_text_classification_robustness.tex"
},
{
"text": "JSON",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/json/miscellaneous_text_classification_robustness.json"
}
],
"name": "robustness"
},
{
"title": "Fairness",
"header": [
{
"value": "Model",
"markdown": false,
"metadata": {}
},
{
"value": "Mean win rate",
"description": "How many models this model outperforms on average (over columns).",
"markdown": false,
"lower_is_better": false,
"metadata": {}
},
{
"value": "RAFT - EM (Fairness)",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\nQuasi-exact match: Fraction of instances that the predicted output matches a correct reference up to light processing.\n- Perturbation Fairness: Computes worst case over different fairness perturbations (changing dialect, race of names, gender).",
"markdown": false,
"lower_is_better": false,
"metadata": {
"metric": "EM",
"run_group": "RAFT",
"perturbation": "Fairness"
}
}
],
"rows": [
[
{
"value": "EleutherAI/pythia-2.8b",
"description": "",
"markdown": false
},
{
"markdown": false
},
{
"value": 0.38181818181818183,
"description": "min=0, mean=0.382, max=0.975, sum=4.2 (11)",
"style": {
"font-weight": "bold"
},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
}
]
],
"links": [
{
"text": "LaTeX",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/latex/miscellaneous_text_classification_fairness.tex"
},
{
"text": "JSON",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/json/miscellaneous_text_classification_fairness.json"
}
],
"name": "fairness"
},
{
"title": "Bias",
"header": [
{
"value": "Model",
"markdown": false,
"metadata": {}
},
{
"value": "Mean win rate",
"description": "How many models this model outperforms on average (over columns).",
"markdown": false,
"lower_is_better": false,
"metadata": {}
},
{
"value": "RAFT - Stereotypes (race)",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\nStereotypical associations (race, profession): Measures uneven association of racial groups (Asian, Hispanic, White) with target professions. This measurement is based on cooccurence statistics between the racially-associated names (word list from [Garg et al., 2018](https://www.pnas.org/doi/10.1073/pnas.1720347115); race associations based on US Census statistics) and the target professions (word list from [Bolukbasi et al., 2016](https://papers.nips.cc/paper/2016/hash/a486cd07e4ac3d270571622f4f316ec5-Abstract.html)).",
"markdown": false,
"lower_is_better": true,
"metadata": {
"metric": "Stereotypes (race)",
"run_group": "RAFT"
}
},
{
"value": "RAFT - Stereotypes (gender)",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\nStereotypical associations (gender, profession): Measures uneven association of gender groups (male, female) with target professions. This measurement is based on cooccurence statistics between the gender terms (word list from [Bolukbasi et al., 2016](https://papers.nips.cc/paper/2016/hash/a486cd07e4ac3d270571622f4f316ec5-Abstract.html)) and the target professions (word list from [Bolukbasi et al., 2016](https://papers.nips.cc/paper/2016/hash/a486cd07e4ac3d270571622f4f316ec5-Abstract.html)).",
"markdown": false,
"lower_is_better": true,
"metadata": {
"metric": "Stereotypes (gender)",
"run_group": "RAFT"
}
},
{
"value": "RAFT - Representation (race)",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\nDemographic representation (race): Measures uneven representation of racial groups (Asian, Hispanic, White). This measurement is based on disparities in the frequency statistics across racially-associated names (word list from [Garg et al., 2018](https://www.pnas.org/doi/10.1073/pnas.1720347115); race associations based on US Census statistics).",
"markdown": false,
"lower_is_better": true,
"metadata": {
"metric": "Representation (race)",
"run_group": "RAFT"
}
},
{
"value": "RAFT - Representation (gender)",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\nDemographic representation (gender): Measures uneven representation of gender groups (male, female). This measurement is based on disparities in the frequency statistics across gender terms (word list from [Bolukbasi et al., 2016](https://papers.nips.cc/paper/2016/hash/a486cd07e4ac3d270571622f4f316ec5-Abstract.html)).",
"markdown": false,
"lower_is_better": true,
"metadata": {
"metric": "Representation (gender)",
"run_group": "RAFT"
}
}
],
"rows": [
[
{
"value": "EleutherAI/pythia-2.8b",
"description": "",
"markdown": false
},
{
"markdown": false
},
{
"description": "(0)",
"style": {},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
},
{
"description": "(0)",
"style": {},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
},
{
"description": "(0)",
"style": {},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
},
{
"value": 0.0,
"description": "min=0, mean=0, max=0, sum=0 (1)",
"style": {
"font-weight": "bold"
},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
}
]
],
"links": [
{
"text": "LaTeX",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/latex/miscellaneous_text_classification_bias.tex"
},
{
"text": "JSON",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/json/miscellaneous_text_classification_bias.json"
}
],
"name": "bias"
},
{
"title": "Toxicity",
"header": [
{
"value": "Model",
"markdown": false,
"metadata": {}
},
{
"value": "Mean win rate",
"description": "How many models this model outperforms on average (over columns).",
"markdown": false,
"lower_is_better": false,
"metadata": {}
},
{
"value": "RAFT - Toxic fraction",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\nToxic fraction: Fraction of model outputs that are toxic (based on the PerspectiveAPI toxicity classifier).",
"markdown": false,
"lower_is_better": true,
"metadata": {
"metric": "Toxic fraction",
"run_group": "RAFT"
}
}
],
"rows": [
[
{
"value": "EleutherAI/pythia-2.8b",
"description": "",
"markdown": false
},
{
"markdown": false
},
{
"description": "11 matching runs, but no matching metrics",
"markdown": false
}
]
],
"links": [
{
"text": "LaTeX",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/latex/miscellaneous_text_classification_toxicity.tex"
},
{
"text": "JSON",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/json/miscellaneous_text_classification_toxicity.json"
}
],
"name": "toxicity"
},
{
"title": "Efficiency",
"header": [
{
"value": "Model",
"markdown": false,
"metadata": {}
},
{
"value": "Mean win rate",
"description": "How many models this model outperforms on average (over columns).",
"markdown": false,
"lower_is_better": false,
"metadata": {}
},
{
"value": "RAFT - Denoised inference time (s)",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\nDenoised inference runtime (s): Average time to process a request to the model minus performance contention by using profiled runtimes from multiple trials of SyntheticEfficiencyScenario.",
"markdown": false,
"lower_is_better": true,
"metadata": {
"metric": "Denoised inference time (s)",
"run_group": "RAFT"
}
}
],
"rows": [
[
{
"value": "EleutherAI/pythia-2.8b",
"description": "",
"markdown": false
},
{
"markdown": false
},
{
"description": "11 matching runs, but no matching metrics",
"markdown": false
}
]
],
"links": [
{
"text": "LaTeX",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/latex/miscellaneous_text_classification_efficiency.tex"
},
{
"text": "JSON",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/json/miscellaneous_text_classification_efficiency.json"
}
],
"name": "efficiency"
},
{
"title": "General information",
"header": [
{
"value": "Model",
"markdown": false,
"metadata": {}
},
{
"value": "Mean win rate",
"description": "How many models this model outperforms on average (over columns).",
"markdown": false,
"lower_is_better": false,
"metadata": {}
},
{
"value": "RAFT - # eval",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\n# eval: Number of evaluation instances.",
"markdown": false,
"metadata": {
"metric": "# eval",
"run_group": "RAFT"
}
},
{
"value": "RAFT - # train",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\n# train: Number of training instances (e.g., in-context examples).",
"markdown": false,
"metadata": {
"metric": "# train",
"run_group": "RAFT"
}
},
{
"value": "RAFT - truncated",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\ntruncated: Fraction of instances where the prompt itself was truncated (implies that there were no in-context examples).",
"markdown": false,
"metadata": {
"metric": "truncated",
"run_group": "RAFT"
}
},
{
"value": "RAFT - # prompt tokens",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\n# prompt tokens: Number of tokens in the prompt.",
"markdown": false,
"metadata": {
"metric": "# prompt tokens",
"run_group": "RAFT"
}
},
{
"value": "RAFT - # output tokens",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\n# output tokens: Actual number of output tokens.",
"markdown": false,
"metadata": {
"metric": "# output tokens",
"run_group": "RAFT"
}
},
{
"value": "RAFT - # trials",
"description": "The Real-world annotated few-shot (RAFT) meta-benchmark of 11 real-world text classification tasks [(Alex et al., 2021)](https://datasets-benchmarks-proceedings.neurips.cc/paper/2021/hash/ca46c1b9512a7a8315fa3c5a946e8265-Abstract-round2.html).\n\n# trials: Number of trials, where in each trial we choose an independent, random set of training instances.",
"markdown": false,
"metadata": {
"metric": "# trials",
"run_group": "RAFT"
}
}
],
"rows": [
[
{
"value": "EleutherAI/pythia-2.8b",
"description": "",
"markdown": false
},
{
"markdown": false
},
{
"value": 40.0,
"description": "min=40, mean=40, max=40, sum=440 (11)",
"style": {},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
},
{
"value": 4.6045454545454545,
"description": "min=0.7, mean=4.605, max=5, sum=50.65 (11)",
"style": {},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
},
{
"value": 0.0,
"description": "min=0, mean=0, max=0, sum=0 (11)",
"style": {},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
},
{
"value": 869.6909090909089,
"description": "min=280.35, mean=869.691, max=1756.575, sum=9566.6 (11)",
"style": {},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
},
{
"value": 4.661363636363637,
"description": "min=1.1, mean=4.661, max=18.65, sum=51.275 (11)",
"style": {},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
},
{
"value": 1.0,
"description": "min=1, mean=1, max=1, sum=11 (11)",
"style": {},
"markdown": false,
"run_spec_names": [
"raft:subset=ade_corpus_v2,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=banking_77,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=neurips_impact_statement_risks,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=one_stop_english,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=overruling,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=semiconductor_org_types,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=systematic_review_inclusion,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tai_safety_research,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=terms_of_service,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=tweet_eval_hate,model=EleutherAI_pythia-2.8b,data_augmentation=canonical",
"raft:subset=twitter_complaints,model=EleutherAI_pythia-2.8b,data_augmentation=canonical"
]
}
]
],
"links": [
{
"text": "LaTeX",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/latex/miscellaneous_text_classification_general_information.tex"
},
{
"text": "JSON",
"href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/json/miscellaneous_text_classification_general_information.json"
}
],
"name": "general_information"
}
]