TAUR-dev
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Model provider
TAUR-dev
FriendliAI Corp:
San Francisco, CA
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Training Details
Table with columns: Field, Value Field Value Base model google/gemma-2-2bVersion v7 Task membership-sans-rosch-v0-allEpoch 0 Delta 0.09 Typicality correction none Length normalization False
Semi-supervised ratio None
Reproducibility Original checkpoint name: v7-google--gemma-2-2b-delta0.09-epoch0--membership-sans-rosch-v0-all--d2g--random--alpha1.0--full-completion--pref0.0--nllv1.0--nllg1.0--cft--labelonly0.1--fix1
python scripts/eval_by_claude.py \
--model TAUR-dev/rankalign-v7-gemma-2-2b-d0.09-e0-membership-sans-rosch-v0-all-p0-nv1-ng1-cft-lo0.1-fix1 \
--task membership-sans-rosch-v0-all \
--split_type random --gen-shots zero --disc-shots few --validator-log-odds --save-scores-csv \
--self-typicality