ribesstefano commited on
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Pushing current results

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  1. reports/report_ablation_Active_Dmax_0.6_pDC50_6.0_test_split_0.1.csv +25 -0
  2. reports/report_ablation_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_e3_ligase.csv +7 -0
  3. reports/report_ablation_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_random.csv +7 -0
  4. reports/report_ablation_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_tanimoto.csv +7 -0
  5. reports/report_ablation_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_uniprot.csv +7 -0
  6. reports/report_cv_train_Active_Dmax_0.6_pDC50_6.0_test_split_0.1.csv +21 -0
  7. reports/report_cv_train_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_e3_ligase.csv +6 -0
  8. reports/report_cv_train_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_random.csv +6 -0
  9. reports/report_cv_train_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_tanimoto.csv +6 -0
  10. reports/report_cv_train_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_uniprot.csv +6 -0
  11. reports/report_hparam_Active_Dmax_0.6_pDC50_6.0_test_split_0.1.csv +5 -0
  12. reports/report_hparams_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_e3_ligase.csv +2 -0
  13. reports/report_hparams_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_random.csv +2 -0
  14. reports/report_hparams_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_tanimoto.csv +2 -0
  15. reports/report_hparams_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_uniprot.csv +2 -0
  16. reports/report_test_Active_Dmax_0.6_pDC50_6.0_test_split_0.1.csv +13 -0
  17. reports/report_test_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_e3_ligase.csv +4 -0
  18. reports/report_test_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_random.csv +4 -0
  19. reports/report_test_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_tanimoto.csv +4 -0
  20. reports/report_test_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_uniprot.csv +4 -0
  21. reports/study_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_e3_ligase.pkl +2 -2
  22. reports/study_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_random.pkl +2 -2
  23. reports/study_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_tanimoto.pkl +2 -2
  24. reports/study_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_uniprot.pkl +2 -2
reports/report_ablation_Active_Dmax_0.6_pDC50_6.0_test_split_0.1.csv ADDED
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reports/report_ablation_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_e3_ligase.csv ADDED
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reports/report_ablation_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_random.csv ADDED
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reports/report_ablation_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_tanimoto.csv ADDED
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reports/report_ablation_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_uniprot.csv ADDED
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reports/report_cv_train_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_e3_ligase.csv ADDED
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1
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reports/report_cv_train_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_random.csv ADDED
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reports/report_cv_train_Active_Dmax_0.6_pDC50_6.0_test_split_0.1_tanimoto.csv ADDED
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4
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