INFO:2022-10-13 03:35:23,264:[predict.py:841 - predict_main() ] Loading /project/model/ENCSR593DGU_split000.h5 INFO:2022-10-13 03:35:27,513:[predict.py:399 - predict() ] SEQGEN Class Name: MBPNetSequenceGenerator INFO:2022-10-13 03:35:27,533:[generators.py:508 - _pad_samples() ] mode 'test': Data size (after padding 1009 samples) - 1024 INFO:2022-10-13 03:35:27,535:[predict.py:454 - predict() ] Writing predictions to /project/predictions_and_metrics/ENCSR593DGU_split000_predictions.h5 DEBUG:2022-10-13 03:35:27,543:[generators.py:804 - _epoch_run() ] test spawning process 0, df size (1024, 3) sum(num_batches) 1 DEBUG:2022-10-13 03:35:27,562:[generators.py:830 - _epoch_run() ] test num_batches list [1] DEBUG:2022-10-13 03:35:27,562:[generators.py:843 - _epoch_run() ] test starting stealer thread 0 [1] DEBUG:2022-10-13 03:35:29,552:[generators.py:725 - _proc_target() ] test process 0 put 1 batches into mpq DEBUG:2022-10-13 03:35:30,041:[generators.py:749 - _stealer() ] test stealer thread 0 got 1 batches from mpq DEBUG:2022-10-13 03:35:34,133:[generators.py:887 - gen() ] test waiting to join process 0 DEBUG:2022-10-13 03:35:34,134:[generators.py:892 - gen() ] test waiting to join thread 0 DEBUG:2022-10-13 03:35:34,134:[generators.py:896 - gen() ] test join complete for process 0 DEBUG:2022-10-13 03:35:34,134:[generators.py:899 - gen() ] test Finished join for epoch DEBUG:2022-10-13 03:35:34,134:[generators.py:901 - gen() ] test Ready for next epoch INFO:2022-10-13 03:35:34,135:[predict.py:658 - predict() ] Writing to h5 file ... INFO:2022-10-13 03:35:34,156:[predict.py:674 - predict() ] Elapsed Time: 6.617882013320923 secs INFO:2022-10-13 03:35:34,156:[predict.py:678 - predict() ] Generating predicted profile bigWigs ... INFO:2022-10-13 03:35:34,156:[predict.py:680 - predict() ] predictions shape - (15, 1000, 2) INFO:2022-10-13 03:35:34,162:[predict.py:702 - predict() ] bigWig HEADER - [('chr1', 248956422), ('chr10', 133797422), ('chr11', 135086622), ('chr12', 133275309), ('chr13', 114364328), ('chr14', 107043718), ('chr15', 101991189), ('chr16', 90338345), ('chr17', 83257441), ('chr18', 80373285), ('chr19', 58617616), ('chr2', 242193529), ('chr20', 64444167), ('chr21', 46709983), ('chr22', 50818468), ('chr3', 198295559), ('chr4', 190214555), ('chr5', 181538259), ('chr6', 170805979), ('chr7', 159345973), ('chr8', 145138636), ('chr9', 138394717), ('chrM', 16569), ('chrX', 156040895), ('chrY', 57227415)] INFO:2022-10-13 03:35:34,235:[predict.py:728 - predict() ] min max median INFO:2022-10-13 03:35:34,236:[predict.py:733 - predict() ] mnll 0.640 1.000 1.000 INFO:2022-10-13 03:35:34,236:[predict.py:738 - predict() ] cross_entropy 0.640 1.000 1.000 INFO:2022-10-13 03:35:34,236:[predict.py:743 - predict() ] jsd 0.494 0.798 0.576 INFO:2022-10-13 03:35:34,237:[predict.py:748 - predict() ] spearman 0.099 0.591 0.380 INFO:2022-10-13 03:35:34,237:[predict.py:753 - predict() ] pearson 0.169 0.815 0.595 INFO:2022-10-13 03:35:34,237:[predict.py:758 - predict() ] mse 35.382 1531.921 309.181 INFO:2022-10-13 03:35:34,237:[predict.py:760 - predict() ] ============================================== INFO:2022-10-13 03:35:34,242:[predict.py:775 - predict() ] counts pearson: [0.81965586 0.78931538] INFO:2022-10-13 03:35:34,242:[predict.py:776 - predict() ] counts spearman: [0.78214286 0.76071429]