2023-06-15 12:39:44,844 INFO [decode.py:639] Decoding started 2023-06-15 12:39:44,845 INFO [decode.py:645] Device: cuda:0 2023-06-15 12:39:46,440 INFO [lexicon.py:168] Loading pre-compiled data/lang_char/Linv.pt 2023-06-15 12:39:46,678 INFO [decode.py:656] {'best_train_loss': inf, 'best_valid_loss': inf, 'best_train_epoch': -1, 'best_valid_epoch': -1, 'batch_idx_train': 0, 'log_interval': 50, 'reset_interval': 200, 'valid_interval': 3000, 'feature_dim': 80, 'subsampling_factor': 4, 'warm_step': 2000, 'env_info': {'k2-version': '1.24.1', 'k2-build-type': 'Release', 'k2-with-cuda': True, 'k2-git-sha1': 'c51a0b9684442a88ee37f3ce0af686a04b66855b', 'k2-git-date': 'Mon May 1 21:38:03 2023', 'lhotse-version': '1.14.0.dev+git.0f812851.dirty', 'torch-version': '1.10.0+cu102', 'torch-cuda-available': True, 'torch-cuda-version': '10.2', 'python-version': '3.8', 'icefall-git-branch': 'zipformer_wenetspeech', 'icefall-git-sha1': '28d3f6d-dirty', 'icefall-git-date': 'Thu Jun 15 10:30:34 2023', 'icefall-path': '/star-kw/kangwei/code/icefall_wenetspeech', 'k2-path': '/ceph-hw/kangwei/code/k2_release/k2/k2/python/k2/__init__.py', 'lhotse-path': '/ceph-hw/kangwei/dev_tools/anaconda3/envs/rnnt2/lib/python3.8/site-packages/lhotse-1.14.0.dev0+git.0f812851.dirty-py3.8.egg/lhotse/__init__.py', 'hostname': 'de-74279-k2-train-10-0221105906-5745685d6b-t8zzx', 'IP address': '10.177.57.19'}, 'epoch': 8, 'iter': 0, 'avg': 1, 'use_averaged_model': True, 'exp_dir': PosixPath('zipformer/exp_L_context_2'), 'lang_dir': PosixPath('data/lang_char'), 'decoding_method': 'modified_beam_search', 'beam_size': 4, 'beam': 20.0, 'ngram_lm_scale': 0.01, 'max_contexts': 8, 'max_states': 64, 'context_size': 2, 'max_sym_per_frame': 1, 'num_paths': 200, 'nbest_scale': 0.5, 'blank_penalty': 2.0, 'num_encoder_layers': '2,2,3,4,3,2', 'downsampling_factor': '1,2,4,8,4,2', 'feedforward_dim': '512,768,1024,1536,1024,768', 'num_heads': '4,4,4,8,4,4', 'encoder_dim': '192,256,384,512,384,256', 'query_head_dim': '32', 'value_head_dim': '12', 'pos_head_dim': '4', 'pos_dim': 48, 'encoder_unmasked_dim': '192,192,256,256,256,192', 'cnn_module_kernel': '31,31,15,15,15,31', 'decoder_dim': 512, 'joiner_dim': 512, 'causal': False, 'chunk_size': '16,32,64,-1', 'left_context_frames': '64,128,256,-1', 'manifest_dir': PosixPath('data/fbank'), 'max_duration': 1000, 'bucketing_sampler': True, 'num_buckets': 30, 'concatenate_cuts': False, 'duration_factor': 1.0, 'gap': 1.0, 'on_the_fly_feats': False, 'shuffle': True, 'return_cuts': True, 'num_workers': 2, 'enable_spec_aug': True, 'spec_aug_time_warp_factor': 80, 'enable_musan': True, 'training_subset': 'L', 'res_dir': PosixPath('zipformer/exp_L_context_2/modified_beam_search'), 'suffix': 'epoch-8-avg-1-modified_beam_search-beam-size-4-blank-penalty-2.0-use-averaged-model', 'blank_id': 0, 'vocab_size': 5537} 2023-06-15 12:39:46,678 INFO [decode.py:658] About to create model 2023-06-15 12:39:47,326 INFO [decode.py:725] Calculating the averaged model over epoch range from 7 (excluded) to 8 2023-06-15 12:39:58,125 INFO [decode.py:756] Number of model parameters: 75879898 2023-06-15 12:39:58,125 INFO [asr_datamodule.py:398] About to get dev cuts 2023-06-15 12:39:58,143 INFO [asr_datamodule.py:336] About to create dev dataset 2023-06-15 12:39:58,707 INFO [asr_datamodule.py:354] About to create dev dataloader 2023-06-15 12:39:58,708 INFO [asr_datamodule.py:403] About to get TEST_NET cuts 2023-06-15 12:39:58,719 INFO [asr_datamodule.py:367] About to create test dataset 2023-06-15 12:39:58,770 WARNING [decode.py:765] Exclude cut with ID TEST_NET_Y0000000004_0ub4ZzdHzBc_S00023 from decoding, num_frames : 8. 2023-06-15 12:39:59,278 INFO [asr_datamodule.py:408] About to get TEST_MEETING cuts 2023-06-15 12:39:59,279 INFO [asr_datamodule.py:367] About to create test dataset 2023-06-15 12:40:09,240 INFO [decode.py:536] batch 0/?, cuts processed until now is 130 2023-06-15 12:40:17,255 INFO [zipformer.py:1728] name=None, attn_weights_entropy = tensor([4.6101, 4.4056, 4.2379, 4.7349], device='cuda:0') 2023-06-15 12:42:44,309 INFO [decode.py:536] batch 20/?, cuts processed until now is 3192 2023-06-15 12:45:17,777 INFO [decode.py:536] batch 40/?, cuts processed until now is 6421 2023-06-15 12:47:48,013 INFO [decode.py:536] batch 60/?, cuts processed until now is 10176 2023-06-15 12:48:09,944 INFO [zipformer.py:1728] name=None, attn_weights_entropy = tensor([5.2374, 5.3746, 2.7590, 4.9693], device='cuda:0') 2023-06-15 12:49:46,985 INFO [decode.py:536] batch 80/?, cuts processed until now is 13727 2023-06-15 12:49:54,172 INFO [decode.py:552] The transcripts are stored in zipformer/exp_L_context_2/modified_beam_search/recogs-DEV-beam_size_4_blank_penalty_2.0-epoch-8-avg-1-modified_beam_search-beam-size-4-blank-penalty-2.0-use-averaged-model.txt 2023-06-15 12:49:54,548 INFO [utils.py:562] [DEV-beam_size_4_blank_penalty_2.0] %WER 7.61% [25144 / 330498, 2599 ins, 10733 del, 11812 sub ] 2023-06-15 12:49:55,559 INFO [decode.py:565] Wrote detailed error stats to zipformer/exp_L_context_2/modified_beam_search/errs-DEV-beam_size_4_blank_penalty_2.0-epoch-8-avg-1-modified_beam_search-beam-size-4-blank-penalty-2.0-use-averaged-model.txt 2023-06-15 12:49:55,563 INFO [decode.py:581] For DEV, WER of different settings are: beam_size_4_blank_penalty_2.0 7.61 best for DEV 2023-06-15 12:49:55,831 WARNING [decode.py:765] Exclude cut with ID TEST_NET_Y0000000004_0ub4ZzdHzBc_S00023 from decoding, num_frames : 8. 2023-06-15 12:50:04,993 INFO [decode.py:536] batch 0/?, cuts processed until now is 146 2023-06-15 12:51:11,560 INFO [zipformer.py:1728] name=None, attn_weights_entropy = tensor([3.3251, 3.8993, 4.3746, 4.3445], device='cuda:0') 2023-06-15 12:52:24,472 INFO [decode.py:536] batch 20/?, cuts processed until now is 4116 2023-06-15 12:54:49,437 INFO [decode.py:536] batch 40/?, cuts processed until now is 8601 2023-06-15 12:57:10,543 INFO [decode.py:536] batch 60/?, cuts processed until now is 14082 2023-06-15 12:57:58,779 INFO [zipformer.py:1728] name=None, attn_weights_entropy = tensor([1.5411, 3.2645, 2.4807, 4.0553], device='cuda:0') 2023-06-15 12:59:38,174 INFO [decode.py:536] batch 80/?, cuts processed until now is 18750 2023-06-15 13:01:11,325 INFO [zipformer.py:1728] name=None, attn_weights_entropy = tensor([1.3225, 3.1490, 2.1981, 3.2062], device='cuda:0') 2023-06-15 13:01:24,973 INFO [decode.py:536] batch 100/?, cuts processed until now is 24487 2023-06-15 13:01:40,064 INFO [decode.py:552] The transcripts are stored in zipformer/exp_L_context_2/modified_beam_search/recogs-TEST_NET-beam_size_4_blank_penalty_2.0-epoch-8-avg-1-modified_beam_search-beam-size-4-blank-penalty-2.0-use-averaged-model.txt 2023-06-15 13:01:40,568 INFO [utils.py:562] [TEST_NET-beam_size_4_blank_penalty_2.0] %WER 7.81% [32451 / 415746, 3431 ins, 8201 del, 20819 sub ] 2023-06-15 13:01:41,924 INFO [decode.py:565] Wrote detailed error stats to zipformer/exp_L_context_2/modified_beam_search/errs-TEST_NET-beam_size_4_blank_penalty_2.0-epoch-8-avg-1-modified_beam_search-beam-size-4-blank-penalty-2.0-use-averaged-model.txt 2023-06-15 13:01:41,927 INFO [decode.py:581] For TEST_NET, WER of different settings are: beam_size_4_blank_penalty_2.0 7.81 best for TEST_NET 2023-06-15 13:01:51,351 INFO [decode.py:536] batch 0/?, cuts processed until now is 93 2023-06-15 13:04:19,505 INFO [decode.py:536] batch 20/?, cuts processed until now is 2345 2023-06-15 13:06:50,459 INFO [decode.py:536] batch 40/?, cuts processed until now is 4929 2023-06-15 13:08:52,016 INFO [decode.py:536] batch 60/?, cuts processed until now is 7955 2023-06-15 13:09:21,777 INFO [decode.py:552] The transcripts are stored in zipformer/exp_L_context_2/modified_beam_search/recogs-TEST_MEETING-beam_size_4_blank_penalty_2.0-epoch-8-avg-1-modified_beam_search-beam-size-4-blank-penalty-2.0-use-averaged-model.txt 2023-06-15 13:09:22,028 INFO [utils.py:562] [TEST_MEETING-beam_size_4_blank_penalty_2.0] %WER 12.88% [28394 / 220385, 2759 ins, 13858 del, 11777 sub ] 2023-06-15 13:09:22,719 INFO [decode.py:565] Wrote detailed error stats to zipformer/exp_L_context_2/modified_beam_search/errs-TEST_MEETING-beam_size_4_blank_penalty_2.0-epoch-8-avg-1-modified_beam_search-beam-size-4-blank-penalty-2.0-use-averaged-model.txt 2023-06-15 13:09:22,722 INFO [decode.py:581] For TEST_MEETING, WER of different settings are: beam_size_4_blank_penalty_2.0 12.88 best for TEST_MEETING 2023-06-15 13:09:22,722 INFO [decode.py:801] Done!