End of training
Browse files- README.md +2 -0
- all_results.json +16 -16
- eval_results.json +8 -8
- predict_results.txt +291 -291
- runs/May20_05-06-29_indolem-petl-vm/events.out.tfevents.1716183553.indolem-petl-vm.2721960.1 +3 -0
- test_results.json +4 -4
- train_results.json +4 -4
- trainer_state.json +200 -200
README.md
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---
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license: mit
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base_model: indolem/indobert-base-uncased
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tags:
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---
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+
language:
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- id
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license: mit
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base_model: indolem/indobert-base-uncased
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tags:
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all_results.json
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{
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"epoch": 20.0,
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"eval_accuracy": 0.
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"eval_loss": 0.
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"eval_precision": 0.
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"eval_recall": 0.
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"eval_runtime": 4.
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"eval_samples": 399,
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-
"eval_samples_per_second": 80.
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"eval_steps_per_second": 10.
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"f1": 0.
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"precision": 0.
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-
"recall": 0.
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-
"train_loss": 0.
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-
"train_runtime":
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"train_samples": 3638,
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"train_samples_per_second": 37.
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-
"train_steps_per_second": 1.
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}
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{
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+
"accuracy": 0.8308605341246291,
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3 |
"epoch": 20.0,
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"eval_accuracy": 0.7869674185463659,
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"eval_f1": 0.7325336550973572,
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"eval_loss": 0.445127934217453,
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"eval_precision": 0.7442562883739354,
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"eval_recall": 0.7242680487361338,
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"eval_runtime": 4.9605,
|
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"eval_samples": 399,
|
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"eval_samples_per_second": 80.435,
|
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"eval_steps_per_second": 10.08,
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"f1": 0.7908926081061303,
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"precision": 0.800266779694824,
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"recall": 0.7834017338592016,
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"train_loss": 0.4626342241881324,
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"train_runtime": 1944.0727,
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"train_samples": 3638,
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"train_samples_per_second": 37.427,
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"train_steps_per_second": 1.255
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}
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eval_results.json
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{
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"epoch": 20.0,
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-
"eval_accuracy": 0.
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-
"eval_f1": 0.
|
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-
"eval_loss": 0.
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-
"eval_precision": 0.
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-
"eval_recall": 0.
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"eval_runtime": 4.
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"eval_samples": 399,
|
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-
"eval_samples_per_second": 80.
|
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"eval_steps_per_second": 10.
|
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}
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{
|
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"epoch": 20.0,
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"eval_accuracy": 0.7869674185463659,
|
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"eval_f1": 0.7325336550973572,
|
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"eval_loss": 0.445127934217453,
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"eval_precision": 0.7442562883739354,
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"eval_recall": 0.7242680487361338,
|
8 |
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"eval_runtime": 4.9605,
|
9 |
"eval_samples": 399,
|
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+
"eval_samples_per_second": 80.435,
|
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+
"eval_steps_per_second": 10.08
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}
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predict_results.txt
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index prediction
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-
562
|
565 |
563 0
|
566 |
564 0
|
567 |
565 0
|
568 |
566 0
|
569 |
-
567
|
570 |
568 0
|
571 |
569 0
|
572 |
570 0
|
573 |
-
571
|
574 |
572 0
|
575 |
573 0
|
576 |
574 0
|
577 |
575 0
|
578 |
-
576
|
579 |
577 0
|
580 |
578 0
|
581 |
579 0
|
@@ -587,47 +587,47 @@ index prediction
|
|
587 |
585 0
|
588 |
586 0
|
589 |
587 0
|
590 |
-
588
|
591 |
589 0
|
592 |
590 0
|
593 |
-
591
|
594 |
-
592
|
595 |
593 0
|
596 |
594 0
|
597 |
-
595
|
598 |
-
596
|
599 |
597 0
|
600 |
598 0
|
601 |
-
599
|
602 |
600 0
|
603 |
601 0
|
604 |
-
602
|
605 |
603 0
|
606 |
604 0
|
607 |
605 0
|
608 |
606 0
|
609 |
-
607
|
610 |
608 0
|
611 |
609 0
|
612 |
610 0
|
613 |
611 0
|
614 |
612 0
|
615 |
613 0
|
616 |
-
614
|
617 |
615 0
|
618 |
616 0
|
619 |
617 0
|
620 |
618 0
|
621 |
619 0
|
622 |
620 0
|
623 |
-
621
|
624 |
622 0
|
625 |
623 0
|
626 |
-
624
|
627 |
625 0
|
628 |
626 0
|
629 |
627 0
|
630 |
-
628
|
631 |
629 0
|
632 |
630 0
|
633 |
631 0
|
@@ -638,25 +638,25 @@ index prediction
|
|
638 |
636 0
|
639 |
637 0
|
640 |
638 0
|
641 |
-
639
|
642 |
-
640
|
643 |
641 0
|
644 |
-
642
|
645 |
-
643
|
646 |
644 0
|
647 |
645 0
|
648 |
646 0
|
649 |
-
647
|
650 |
-
648
|
651 |
649 0
|
652 |
-
650
|
653 |
-
651
|
654 |
-
652
|
655 |
653 0
|
656 |
654 0
|
657 |
655 0
|
658 |
656 0
|
659 |
-
657
|
660 |
658 0
|
661 |
659 0
|
662 |
660 0
|
@@ -667,14 +667,14 @@ index prediction
|
|
667 |
665 0
|
668 |
666 0
|
669 |
667 0
|
670 |
-
668
|
671 |
669 0
|
672 |
670 0
|
673 |
671 0
|
674 |
672 0
|
675 |
-
673
|
676 |
674 0
|
677 |
-
675
|
678 |
676 0
|
679 |
677 0
|
680 |
678 0
|
@@ -684,7 +684,7 @@ index prediction
|
|
684 |
682 0
|
685 |
683 0
|
686 |
684 0
|
687 |
-
685
|
688 |
686 0
|
689 |
687 0
|
690 |
688 0
|
@@ -698,9 +698,9 @@ index prediction
|
|
698 |
696 0
|
699 |
697 0
|
700 |
698 0
|
701 |
-
699
|
702 |
700 0
|
703 |
-
701
|
704 |
702 0
|
705 |
703 0
|
706 |
704 0
|
@@ -711,13 +711,13 @@ index prediction
|
|
711 |
709 0
|
712 |
710 0
|
713 |
711 0
|
714 |
-
712
|
715 |
-
713
|
716 |
714 0
|
717 |
715 0
|
718 |
716 0
|
719 |
717 0
|
720 |
-
718
|
721 |
719 0
|
722 |
720 0
|
723 |
721 0
|
@@ -726,22 +726,22 @@ index prediction
|
|
726 |
724 0
|
727 |
725 0
|
728 |
726 0
|
729 |
-
727
|
730 |
-
728
|
731 |
729 0
|
732 |
730 0
|
733 |
731 0
|
734 |
-
732
|
735 |
-
733
|
736 |
-
734
|
737 |
735 0
|
738 |
736 0
|
739 |
737 0
|
740 |
738 0
|
741 |
739 0
|
742 |
-
740
|
743 |
741 0
|
744 |
-
742
|
745 |
743 0
|
746 |
744 0
|
747 |
745 0
|
@@ -751,13 +751,13 @@ index prediction
|
|
751 |
749 0
|
752 |
750 0
|
753 |
751 0
|
754 |
-
752
|
755 |
-
753
|
756 |
754 0
|
757 |
755 0
|
758 |
756 0
|
759 |
757 0
|
760 |
-
758
|
761 |
759 0
|
762 |
760 0
|
763 |
761 0
|
@@ -769,20 +769,20 @@ index prediction
|
|
769 |
767 0
|
770 |
768 0
|
771 |
769 0
|
772 |
-
770
|
773 |
771 0
|
774 |
-
772
|
775 |
773 0
|
776 |
774 0
|
777 |
775 0
|
778 |
-
776
|
779 |
-
777
|
780 |
778 0
|
781 |
779 0
|
782 |
780 0
|
783 |
781 0
|
784 |
782 0
|
785 |
-
783
|
786 |
784 0
|
787 |
785 0
|
788 |
786 0
|
@@ -794,13 +794,13 @@ index prediction
|
|
794 |
792 0
|
795 |
793 0
|
796 |
794 0
|
797 |
-
795
|
798 |
796 0
|
799 |
797 0
|
800 |
798 0
|
801 |
799 0
|
802 |
800 0
|
803 |
-
801
|
804 |
802 0
|
805 |
803 0
|
806 |
804 0
|
@@ -808,7 +808,7 @@ index prediction
|
|
808 |
806 0
|
809 |
807 0
|
810 |
808 0
|
811 |
-
809
|
812 |
810 0
|
813 |
811 0
|
814 |
812 0
|
@@ -822,38 +822,38 @@ index prediction
|
|
822 |
820 0
|
823 |
821 0
|
824 |
822 0
|
825 |
-
823
|
826 |
824 0
|
827 |
825 0
|
828 |
-
826
|
829 |
827 0
|
830 |
828 0
|
831 |
829 0
|
832 |
830 0
|
833 |
831 0
|
834 |
-
832
|
835 |
-
833
|
836 |
834 0
|
837 |
835 0
|
838 |
-
836
|
839 |
837 0
|
840 |
838 0
|
841 |
839 0
|
842 |
840 0
|
843 |
841 1
|
844 |
-
842
|
845 |
843 0
|
846 |
-
844
|
847 |
845 0
|
848 |
-
846
|
849 |
847 0
|
850 |
-
848
|
851 |
-
849
|
852 |
-
850
|
853 |
851 0
|
854 |
852 0
|
855 |
853 0
|
856 |
-
854
|
857 |
855 0
|
858 |
856 0
|
859 |
857 0
|
@@ -863,8 +863,8 @@ index prediction
|
|
863 |
861 0
|
864 |
862 0
|
865 |
863 0
|
866 |
-
864
|
867 |
-
865
|
868 |
866 0
|
869 |
867 0
|
870 |
868 0
|
@@ -877,35 +877,35 @@ index prediction
|
|
877 |
875 0
|
878 |
876 0
|
879 |
877 0
|
880 |
-
878
|
881 |
879 0
|
882 |
880 0
|
883 |
881 0
|
884 |
882 0
|
885 |
883 0
|
886 |
-
884
|
887 |
885 0
|
888 |
886 0
|
889 |
887 0
|
890 |
888 0
|
891 |
889 0
|
892 |
890 0
|
893 |
-
891
|
894 |
892 0
|
895 |
-
893
|
896 |
894 1
|
897 |
895 0
|
898 |
896 0
|
899 |
-
897
|
900 |
898 0
|
901 |
899 0
|
902 |
900 0
|
903 |
-
901
|
904 |
902 0
|
905 |
903 0
|
906 |
904 0
|
907 |
905 0
|
908 |
-
906
|
909 |
907 0
|
910 |
908 0
|
911 |
909 0
|
@@ -915,7 +915,7 @@ index prediction
|
|
915 |
913 0
|
916 |
914 0
|
917 |
915 0
|
918 |
-
916
|
919 |
917 0
|
920 |
918 0
|
921 |
919 0
|
@@ -927,18 +927,18 @@ index prediction
|
|
927 |
925 0
|
928 |
926 0
|
929 |
927 0
|
930 |
-
928
|
931 |
929 0
|
932 |
-
930
|
933 |
931 0
|
934 |
932 0
|
935 |
933 0
|
936 |
934 0
|
937 |
-
935
|
938 |
-
936
|
939 |
937 0
|
940 |
938 0
|
941 |
-
939
|
942 |
940 0
|
943 |
941 0
|
944 |
942 0
|
@@ -947,31 +947,31 @@ index prediction
|
|
947 |
945 0
|
948 |
946 0
|
949 |
947 0
|
950 |
-
948
|
951 |
-
949
|
952 |
-
950
|
953 |
951 0
|
954 |
952 0
|
955 |
953 0
|
956 |
954 0
|
957 |
955 0
|
958 |
-
956
|
959 |
-
957
|
960 |
958 0
|
961 |
959 0
|
962 |
960 0
|
963 |
961 0
|
964 |
-
962
|
965 |
963 0
|
966 |
964 0
|
967 |
965 0
|
968 |
-
966
|
969 |
967 0
|
970 |
968 0
|
971 |
969 0
|
972 |
970 0
|
973 |
971 0
|
974 |
-
972
|
975 |
973 0
|
976 |
974 0
|
977 |
975 0
|
@@ -983,22 +983,22 @@ index prediction
|
|
983 |
981 0
|
984 |
982 0
|
985 |
983 0
|
986 |
-
984
|
987 |
985 0
|
988 |
-
986
|
989 |
987 0
|
990 |
988 0
|
991 |
989 0
|
992 |
990 0
|
993 |
-
991
|
994 |
-
992
|
995 |
993 0
|
996 |
994 0
|
997 |
995 1
|
998 |
-
996
|
999 |
997 0
|
1000 |
998 0
|
1001 |
-
999
|
1002 |
1000 0
|
1003 |
1001 0
|
1004 |
1002 0
|
@@ -1009,4 +1009,4 @@ index prediction
|
|
1009 |
1007 0
|
1010 |
1008 0
|
1011 |
1009 0
|
1012 |
-
1010
|
|
|
1 |
index prediction
|
2 |
+
0 0
|
3 |
+
1 1
|
4 |
+
2 0
|
5 |
3 1
|
6 |
4 0
|
7 |
+
5 1
|
8 |
6 1
|
9 |
7 1
|
10 |
+
8 1
|
11 |
9 1
|
12 |
+
10 0
|
13 |
11 1
|
14 |
+
12 1
|
15 |
13 1
|
16 |
14 1
|
17 |
+
15 1
|
18 |
+
16 0
|
19 |
17 1
|
20 |
18 1
|
21 |
+
19 1
|
22 |
+
20 0
|
23 |
21 1
|
24 |
+
22 1
|
25 |
23 1
|
26 |
24 1
|
27 |
+
25 0
|
28 |
+
26 0
|
29 |
27 1
|
30 |
28 1
|
31 |
+
29 1
|
32 |
30 1
|
33 |
+
31 0
|
34 |
+
32 1
|
35 |
+
33 0
|
36 |
34 0
|
37 |
35 1
|
38 |
+
36 0
|
39 |
+
37 1
|
40 |
38 1
|
41 |
39 0
|
42 |
40 1
|
43 |
41 0
|
44 |
+
42 1
|
45 |
+
43 1
|
46 |
+
44 1
|
47 |
45 0
|
48 |
+
46 1
|
49 |
47 1
|
50 |
48 1
|
51 |
+
49 1
|
52 |
+
50 0
|
53 |
+
51 1
|
54 |
+
52 0
|
55 |
53 1
|
56 |
54 0
|
57 |
+
55 0
|
58 |
56 1
|
59 |
57 0
|
60 |
+
58 1
|
61 |
+
59 1
|
62 |
+
60 0
|
63 |
61 1
|
64 |
62 1
|
65 |
63 1
|
66 |
64 0
|
67 |
65 1
|
68 |
+
66 0
|
69 |
+
67 0
|
70 |
68 1
|
71 |
+
69 1
|
72 |
70 1
|
73 |
71 1
|
74 |
+
72 1
|
75 |
73 1
|
76 |
74 1
|
77 |
+
75 1
|
78 |
+
76 0
|
79 |
+
77 1
|
80 |
78 1
|
81 |
+
79 0
|
82 |
+
80 1
|
83 |
+
81 0
|
84 |
+
82 0
|
85 |
+
83 0
|
86 |
+
84 1
|
87 |
+
85 1
|
88 |
+
86 1
|
89 |
+
87 0
|
90 |
+
88 1
|
91 |
89 1
|
92 |
+
90 0
|
93 |
91 0
|
94 |
+
92 1
|
95 |
+
93 1
|
96 |
+
94 0
|
97 |
95 1
|
98 |
96 1
|
99 |
+
97 1
|
100 |
+
98 1
|
101 |
+
99 0
|
102 |
100 0
|
103 |
+
101 1
|
104 |
+
102 0
|
105 |
103 1
|
106 |
+
104 1
|
107 |
+
105 1
|
108 |
106 0
|
109 |
+
107 0
|
110 |
108 1
|
111 |
109 1
|
112 |
+
110 0
|
113 |
111 1
|
114 |
112 1
|
115 |
+
113 1
|
116 |
114 1
|
117 |
+
115 0
|
118 |
116 1
|
119 |
117 1
|
120 |
+
118 1
|
121 |
119 1
|
122 |
120 1
|
123 |
121 1
|
124 |
122 0
|
125 |
123 1
|
126 |
+
124 0
|
127 |
125 1
|
128 |
+
126 0
|
129 |
+
127 0
|
130 |
+
128 0
|
131 |
129 1
|
132 |
+
130 0
|
133 |
+
131 1
|
134 |
132 1
|
135 |
133 1
|
136 |
134 1
|
137 |
+
135 1
|
138 |
+
136 1
|
139 |
+
137 1
|
140 |
138 1
|
141 |
139 1
|
142 |
+
140 0
|
143 |
141 1
|
144 |
142 1
|
145 |
143 1
|
146 |
144 1
|
147 |
+
145 0
|
148 |
146 1
|
149 |
147 0
|
150 |
+
148 0
|
151 |
+
149 0
|
152 |
150 1
|
153 |
151 1
|
154 |
152 1
|
155 |
153 1
|
156 |
154 1
|
157 |
+
155 1
|
158 |
156 0
|
159 |
157 1
|
160 |
+
158 1
|
161 |
+
159 0
|
162 |
+
160 0
|
163 |
161 1
|
164 |
162 1
|
165 |
163 1
|
166 |
+
164 1
|
167 |
+
165 1
|
168 |
+
166 1
|
169 |
167 1
|
170 |
+
168 1
|
171 |
+
169 1
|
172 |
+
170 0
|
173 |
+
171 0
|
174 |
172 1
|
175 |
173 1
|
176 |
174 0
|
177 |
175 1
|
178 |
+
176 1
|
179 |
+
177 0
|
180 |
178 1
|
181 |
+
179 0
|
182 |
180 1
|
183 |
+
181 0
|
184 |
182 1
|
185 |
183 1
|
186 |
184 1
|
187 |
+
185 0
|
188 |
+
186 1
|
189 |
+
187 0
|
190 |
188 1
|
191 |
+
189 0
|
192 |
+
190 1
|
193 |
+
191 1
|
194 |
192 1
|
195 |
193 1
|
196 |
194 1
|
197 |
195 1
|
198 |
+
196 0
|
199 |
197 1
|
200 |
198 1
|
201 |
199 1
|
202 |
+
200 1
|
203 |
201 1
|
204 |
202 1
|
205 |
203 1
|
206 |
204 1
|
207 |
+
205 1
|
208 |
+
206 0
|
209 |
+
207 0
|
210 |
208 1
|
211 |
209 1
|
212 |
+
210 1
|
213 |
211 1
|
214 |
212 1
|
215 |
213 1
|
216 |
+
214 0
|
217 |
+
215 0
|
218 |
216 0
|
219 |
+
217 1
|
220 |
218 0
|
221 |
219 1
|
222 |
220 0
|
223 |
221 1
|
224 |
+
222 0
|
225 |
223 1
|
226 |
+
224 0
|
227 |
225 1
|
228 |
+
226 1
|
229 |
227 0
|
230 |
228 0
|
231 |
+
229 1
|
232 |
230 1
|
233 |
231 1
|
234 |
+
232 1
|
235 |
233 1
|
236 |
234 1
|
237 |
+
235 1
|
238 |
236 1
|
239 |
237 1
|
240 |
238 1
|
241 |
+
239 0
|
242 |
+
240 0
|
243 |
+
241 0
|
244 |
242 1
|
245 |
243 1
|
246 |
244 1
|
247 |
245 1
|
248 |
246 1
|
249 |
247 1
|
250 |
+
248 0
|
251 |
249 1
|
252 |
250 0
|
253 |
251 1
|
254 |
252 1
|
255 |
+
253 0
|
256 |
254 1
|
257 |
+
255 1
|
258 |
256 1
|
259 |
+
257 1
|
260 |
+
258 0
|
261 |
259 1
|
262 |
+
260 0
|
263 |
261 0
|
264 |
262 1
|
265 |
+
263 0
|
266 |
+
264 0
|
267 |
+
265 1
|
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runs/May20_05-06-29_indolem-petl-vm/events.out.tfevents.1716183553.indolem-petl-vm.2721960.1
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test_results.json
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{
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{
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