deval_helm_hyperturing1 / classic_pythia-2.8b-step2000 /groups /miscellaneous_text_classification.json
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| "value": "Model", | |
| "markdown": false, | |
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| { | |
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| "header": [ | |
| { | |
| "value": "Model", | |
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| { | |
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| "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.", | |
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| "metric": "# trials", | |
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