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Delete files evaluation/ c4_validation.json evaluation.log with huggingface_hub

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c4_validation.json DELETED
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evaluation/results__hf_ckpts__blockffn_05b_mul1001_withmean_d64_s128_lr78e4_b256__/results_2026-01-25T01-55-39.634755.json DELETED
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