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{ |
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}, |
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"versions": { |
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"arc_easy": "Yaml", |
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"lambada_openai": "Yaml", |
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"sciq": "Yaml", |
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"winogrande": "Yaml", |
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}, |
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"config": { |
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"model": "hf", |
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"model_args": "pretrained=usvsnsp/pythia-6.9b-ppo,dtype=float16", |
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} |