radoslavralev commited on
Commit
2f57d0f
·
verified ·
1 Parent(s): 65c2b38

Training in progress, step 3375

Browse files
Information-Retrieval_evaluation_BeIR-touche2020-subset-test_results.csv CHANGED
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