svc-develop-team/so-vits-svc

ValueError: math domain error

Open

#169 opened on 2023年4月18日

GitHub で見る
 (0 comments) (0 reactions) (0 assignees)Python (4,513 forks)batch import
help wanted

Repository metrics

Stars
 (23,713 stars)
PR merge metrics
 (30d に merged PR はありません)

説明

Please check the checkboxes below.

  • I have read README.md and Quick solution in wiki carefully.
  • I have been troubleshooting issues through various search engines. The questions I want to ask are not common.
  • I am NOT using one click package / environment package.

OS version

Win10 Professional 22H2

GPU

RTX3060Ti, CUDA Version:12.1, Driver Version:531.41

Python version

3.8.9

PyTorch version

torch-2.0.0+cu118-cp38-cp38-win_amd64.whl

Branch of sovits

4.0(Default)

Dataset source (Used to judge the dataset quality)

No background noise and clear vocal audio recorded using a mobile phone

Where thr problem occurs or what command you executed

Trainning

Problem description

When I train using train.py, the command line window will always output information such as Epoch: XXXX, cost 6. x s. At first, it was normal, but when Epoch was over 3000, there were occasional errors such as' ValueError: math domain error '. So I had to input the training command line again. I have currently trained to a G_ The model of 20800.pth, So, in line 227 of the train.py script, I added code and made the final modifications as follows:

 for i in losses:
       try:
             reference_loss += math.log(i, 10)
       except ValueError:
             print("value error")
             continue

As of the time I submitted this issue, my training progress was not interrupted and I successfully received a G_ 21600.pth model. So, does anyone know if my problem has been effectively solved?

Log

2023-04-18 08:25:09,015	44k	INFO	====> Epoch: 4268, cost 6.95 s
2023-04-18 08:25:15,851	44k	INFO	====> Epoch: 4269, cost 6.84 s
2023-04-18 08:25:22,641	44k	INFO	====> Epoch: 4270, cost 6.79 s
2023-04-18 08:25:29,419	44k	INFO	====> Epoch: 4271, cost 6.78 s
2023-04-18 08:25:36,209	44k	INFO	====> Epoch: 4272, cost 6.79 s
2023-04-18 08:25:43,076	44k	INFO	====> Epoch: 4273, cost 6.87 s
2023-04-18 09:25:55,262	44k	INFO	{'train': {'log_interval': 200, 'eval_interval': 800, 'seed': 1234, 'epochs': 30000000, 'learning_rate': 0.0001, 'betas': [0.8, 0.99], 'eps': 1e-09, 'batch_size': 6, 'fp16_run': False, 'lr_decay': 0.999875, 'segment_size': 10240, 'init_lr_ratio': 1, 'warmup_epochs': 0, 'c_mel': 45, 'c_kl': 1.0, 'use_sr': True, 'max_speclen': 512, 'port': '8001', 'keep_ckpts': 3, 'all_in_mem': False}, 'data': {'training_files': 'filelists/train.txt', 'validation_files': 'filelists/val.txt', 'max_wav_value': 32768.0, 'sampling_rate': 44100, 'filter_length': 2048, 'hop_length': 512, 'win_length': 2048, 'n_mel_channels': 80, 'mel_fmin': 0.0, 'mel_fmax': 22050}, 'model': {'inter_channels': 192, 'hidden_channels': 192, 'filter_channels': 768, 'n_heads': 2, 'n_layers': 6, 'kernel_size': 3, 'p_dropout': 0.1, 'resblock': '1', 'resblock_kernel_sizes': [3, 7, 11], 'resblock_dilation_sizes': [[1, 3, 5], [1, 3, 5], [1, 3, 5]], 'upsample_rates': [8, 8, 2, 2, 2], 'upsample_initial_channel': 512, 'upsample_kernel_sizes': [16, 16, 4, 4, 4], 'n_layers_q': 3, 'use_spectral_norm': False, 'gin_channels': 256, 'ssl_dim': 256, 'n_speakers': 1}, 'spk': {'girl': 0}, 'model_dir': './logs\\44k'}
2023-04-18 09:25:55,263	44k	WARNING	D:\so-vits-svc-4.0 is not a git repository, therefore hash value comparison will be ignored.
2023-04-18 09:25:57,163	44k	INFO	Loaded checkpoint './logs\44k\G_20800.pth' (iteration 4155)
2023-04-18 09:25:57,669	44k	INFO	Loaded checkpoint './logs\44k\D_20800.pth' (iteration 4155)
2023-04-18 09:26:14,955	44k	INFO	====> Epoch: 4155, cost 19.69 s
2023-04-18 09:26:21,865	44k	INFO	====> Epoch: 4156, cost 6.91 s
2023-04-18 09:26:28,869	44k	INFO	====> Epoch: 4157, cost 7.00 s
2023-04-18 09:26:35,866	44k	INFO	====> Epoch: 4158, cost 7.00 s
2023-04-18 09:26:42,847	44k	INFO	====> Epoch: 4159, cost 6.98 s
2023-04-18 09:26:49,664	44k	INFO	====> Epoch: 4160, cost 6.82 s
2023-04-18 09:26:56,796	44k	INFO	====> Epoch: 4161, cost 7.13 s
2023-04-18 09:27:03,655	44k	INFO	====> Epoch: 4162, cost 6.86 s
2023-04-18 09:27:10,634	44k	INFO	====> Epoch: 4163, cost 6.98 s
2023-04-18 09:27:17,629	44k	INFO	====> Epoch: 4164, cost 6.99 s
2023-04-18 09:27:24,616	44k	INFO	====> Epoch: 4165, cost 6.99 s
2023-04-18 09:27:31,605	44k	INFO	====> Epoch: 4166, cost 6.99 s
2023-04-18 09:27:38,464	44k	INFO	====> Epoch: 4167, cost 6.86 s
2023-04-18 09:27:45,199	44k	INFO	====> Epoch: 4168, cost 6.73 s
2023-04-18 09:27:52,243	44k	INFO	====> Epoch: 4169, cost 7.04 s
2023-04-18 09:27:59,200	44k	INFO	====> Epoch: 4170, cost 6.96 s
2023-04-18 09:28:06,193	44k	INFO	====> Epoch: 4171, cost 6.99 s
2023-04-18 09:28:13,205	44k	INFO	====> Epoch: 4172, cost 7.01 s
2023-04-18 09:28:20,027	44k	INFO	====> Epoch: 4173, cost 6.82 s
2023-04-18 09:28:27,053	44k	INFO	====> Epoch: 4174, cost 7.03 s
2023-04-18 09:28:34,137	44k	INFO	====> Epoch: 4175, cost 7.08 s
2023-04-18 09:28:41,204	44k	INFO	====> Epoch: 4176, cost 7.07 s
2023-04-18 09:28:48,197	44k	INFO	====> Epoch: 4177, cost 6.99 s
2023-04-18 09:28:55,371	44k	INFO	====> Epoch: 4178, cost 7.17 s
2023-04-18 09:29:02,392	44k	INFO	====> Epoch: 4179, cost 7.02 s
2023-04-18 09:29:09,405	44k	INFO	====> Epoch: 4180, cost 7.01 s
2023-04-18 09:29:16,420	44k	INFO	====> Epoch: 4181, cost 7.01 s
2023-04-18 09:29:23,422	44k	INFO	====> Epoch: 4182, cost 7.00 s
2023-04-18 09:29:30,422	44k	INFO	====> Epoch: 4183, cost 7.00 s
2023-04-18 09:29:37,431	44k	INFO	====> Epoch: 4184, cost 7.01 s
2023-04-18 09:29:44,452	44k	INFO	====> Epoch: 4185, cost 7.02 s
2023-04-18 09:29:51,429	44k	INFO	====> Epoch: 4186, cost 6.98 s
2023-04-18 09:29:58,439	44k	INFO	====> Epoch: 4187, cost 7.01 s
2023-04-18 09:30:05,488	44k	INFO	====> Epoch: 4188, cost 7.05 s
2023-04-18 09:30:12,565	44k	INFO	====> Epoch: 4189, cost 7.08 s
2023-04-18 09:30:19,584	44k	INFO	====> Epoch: 4190, cost 7.02 s
2023-04-18 09:30:26,417	44k	INFO	====> Epoch: 4191, cost 6.83 s
2023-04-18 09:30:33,376	44k	INFO	====> Epoch: 4192, cost 6.96 s
2023-04-18 09:30:40,353	44k	INFO	====> Epoch: 4193, cost 6.98 s
2023-04-18 09:30:46,549	44k	INFO	Train Epoch: 4194 [80%]
2023-04-18 09:30:46,550	44k	INFO	Losses: [1.1533994674682617, 3.6290440559387207, 14.561955451965332, 19.54532814025879, 0.36340442299842834], step: 21000, lr: 5.911663351026662e-05, reference_loss: 26.36424860035109
2023-04-18 09:30:47,752	44k	INFO	====> Epoch: 4194, cost 7.40 s
2023-04-18 09:30:54,723	44k	INFO	====> Epoch: 4195, cost 6.97 s
2023-04-18 09:31:01,739	44k	INFO	====> Epoch: 4196, cost 7.02 s
2023-04-18 09:31:08,731	44k	INFO	====> Epoch: 4197, cost 6.99 s
2023-04-18 09:31:15,757	44k	INFO	====> Epoch: 4198, cost 7.03 s
2023-04-18 09:31:22,581	44k	INFO	====> Epoch: 4199, cost 6.82 s
2023-04-18 09:31:30,207	44k	INFO	====> Epoch: 4200, cost 7.63 s
2023-04-18 09:31:37,363	44k	INFO	====> Epoch: 4201, cost 7.16 s
2023-04-18 09:31:44,371	44k	INFO	====> Epoch: 4202, cost 7.01 s
2023-04-18 09:31:51,436	44k	INFO	====> Epoch: 4203, cost 7.07 s
2023-04-18 09:31:58,523	44k	INFO	====> Epoch: 4204, cost 7.09 s
2023-04-18 09:32:05,562	44k	INFO	====> Epoch: 4205, cost 7.04 s
2023-04-18 09:32:12,568	44k	INFO	====> Epoch: 4206, cost 7.01 s
2023-04-18 09:32:19,588	44k	INFO	====> Epoch: 4207, cost 7.02 s
2023-04-18 09:32:26,580	44k	INFO	====> Epoch: 4208, cost 6.99 s
2023-04-18 09:32:33,740	44k	INFO	====> Epoch: 4209, cost 7.16 s
2023-04-18 09:32:40,922	44k	INFO	====> Epoch: 4210, cost 7.18 s
2023-04-18 09:32:47,981	44k	INFO	====> Epoch: 4211, cost 7.06 s
2023-04-18 09:33:56,656	44k	INFO	{'train': {'log_interval': 200, 'eval_interval': 800, 'seed': 1234, 'epochs': 30000000, 'learning_rate': 0.0001, 'betas': [0.8, 0.99], 'eps': 1e-09, 'batch_size': 6, 'fp16_run': False, 'lr_decay': 0.999875, 'segment_size': 10240, 'init_lr_ratio': 1, 'warmup_epochs': 0, 'c_mel': 45, 'c_kl': 1.0, 'use_sr': True, 'max_speclen': 512, 'port': '8001', 'keep_ckpts': 3, 'all_in_mem': False}, 'data': {'training_files': 'filelists/train.txt', 'validation_files': 'filelists/val.txt', 'max_wav_value': 32768.0, 'sampling_rate': 44100, 'filter_length': 2048, 'hop_length': 512, 'win_length': 2048, 'n_mel_channels': 80, 'mel_fmin': 0.0, 'mel_fmax': 22050}, 'model': {'inter_channels': 192, 'hidden_channels': 192, 'filter_channels': 768, 'n_heads': 2, 'n_layers': 6, 'kernel_size': 3, 'p_dropout': 0.1, 'resblock': '1', 'resblock_kernel_sizes': [3, 7, 11], 'resblock_dilation_sizes': [[1, 3, 5], [1, 3, 5], [1, 3, 5]], 'upsample_rates': [8, 8, 2, 2, 2], 'upsample_initial_channel': 512, 'upsample_kernel_sizes': [16, 16, 4, 4, 4], 'n_layers_q': 3, 'use_spectral_norm': False, 'gin_channels': 256, 'ssl_dim': 256, 'n_speakers': 1}, 'spk': {'girl': 0}, 'model_dir': './logs\\44k'}
2023-04-18 09:33:56,656	44k	WARNING	D:\so-vits-svc-4.0 is not a git repository, therefore hash value comparison will be ignored.
2023-04-18 09:33:58,752	44k	INFO	Loaded checkpoint './logs\44k\G_20800.pth' (iteration 4155)
2023-04-18 09:33:59,262	44k	INFO	Loaded checkpoint './logs\44k\D_20800.pth' (iteration 4155)
2023-04-18 09:34:16,157	44k	INFO	====> Epoch: 4155, cost 19.50 s
2023-04-18 09:34:23,356	44k	INFO	====> Epoch: 4156, cost 7.20 s
2023-04-18 09:34:30,503	44k	INFO	====> Epoch: 4157, cost 7.15 s
2023-04-18 09:34:37,497	44k	INFO	====> Epoch: 4158, cost 6.99 s
2023-04-18 09:34:44,505	44k	INFO	====> Epoch: 4159, cost 7.01 s
2023-04-18 09:34:51,516	44k	INFO	====> Epoch: 4160, cost 7.01 s
2023-04-18 09:34:58,451	44k	INFO	====> Epoch: 4161, cost 6.94 s
2023-04-18 09:35:05,475	44k	INFO	====> Epoch: 4162, cost 7.02 s
2023-04-18 09:35:12,485	44k	INFO	====> Epoch: 4163, cost 7.01 s
2023-04-18 09:35:19,623	44k	INFO	====> Epoch: 4164, cost 7.14 s
2023-04-18 09:35:26,481	44k	INFO	====> Epoch: 4165, cost 6.86 s
2023-04-18 09:35:33,276	44k	INFO	====> Epoch: 4166, cost 6.79 s
2023-04-18 09:35:40,297	44k	INFO	====> Epoch: 4167, cost 7.02 s
2023-04-18 09:35:47,058	44k	INFO	====> Epoch: 4168, cost 6.76 s
2023-04-18 09:35:53,872	44k	INFO	====> Epoch: 4169, cost 6.81 s
2023-04-18 09:36:00,877	44k	INFO	====> Epoch: 4170, cost 7.00 s
2023-04-18 09:36:07,828	44k	INFO	====> Epoch: 4171, cost 6.95 s
2023-04-18 09:36:14,829	44k	INFO	====> Epoch: 4172, cost 7.00 s
2023-04-18 09:36:21,836	44k	INFO	====> Epoch: 4173, cost 7.01 s
2023-04-18 09:36:28,956	44k	INFO	====> Epoch: 4174, cost 7.12 s
2023-04-18 09:36:36,014	44k	INFO	====> Epoch: 4175, cost 7.06 s
2023-04-18 09:36:43,062	44k	INFO	====> Epoch: 4176, cost 7.05 s
2023-04-18 09:36:50,053	44k	INFO	====> Epoch: 4177, cost 6.99 s
2023-04-18 09:36:57,063	44k	INFO	====> Epoch: 4178, cost 7.01 s
2023-04-18 09:37:04,202	44k	INFO	====> Epoch: 4179, cost 7.14 s
2023-04-18 09:37:11,389	44k	INFO	====> Epoch: 4180, cost 7.19 s
2023-04-18 09:37:18,245	44k	INFO	====> Epoch: 4181, cost 6.86 s
2023-04-18 09:37:25,232	44k	INFO	====> Epoch: 4182, cost 6.99 s
2023-04-18 09:37:32,269	44k	INFO	====> Epoch: 4183, cost 7.04 s
2023-04-18 09:37:39,063	44k	INFO	====> Epoch: 4184, cost 6.79 s
2023-04-18 09:37:46,045	44k	INFO	====> Epoch: 4185, cost 6.98 s
2023-04-18 09:37:53,036	44k	INFO	====> Epoch: 4186, cost 6.99 s
2023-04-18 09:38:00,049	44k	INFO	====> Epoch: 4187, cost 7.01 s
2023-04-18 09:38:07,153	44k	INFO	====> Epoch: 4188, cost 7.10 s
2023-04-18 09:38:14,216	44k	INFO	====> Epoch: 4189, cost 7.06 s
2023-04-18 09:38:21,235	44k	INFO	====> Epoch: 4190, cost 7.02 s
2023-04-18 09:38:28,040	44k	INFO	====> Epoch: 4191, cost 6.80 s
2023-04-18 09:38:35,169	44k	INFO	====> Epoch: 4192, cost 7.13 s
2023-04-18 09:38:42,192	44k	INFO	====> Epoch: 4193, cost 7.02 s
2023-04-18 09:38:48,463	44k	INFO	Train Epoch: 4194 [80%]
2023-04-18 09:38:48,463	44k	INFO	Losses: [1.0800206661224365, 4.064505100250244, 15.424717903137207, 19.831018447875977, 0.3648463785648346], step: 21000, lr: 5.911663351026662e-05, reference_loss: 26.90112027122955
2023-04-18 09:38:49,673	44k	INFO	====> Epoch: 4194, cost 7.48 s
2023-04-18 09:38:56,654	44k	INFO	====> Epoch: 4195, cost 6.98 s
2023-04-18 09:39:03,624	44k	INFO	====> Epoch: 4196, cost 6.97 s
2023-04-18 09:39:10,415	44k	INFO	====> Epoch: 4197, cost 6.79 s
2023-04-18 09:39:17,242	44k	INFO	====> Epoch: 4198, cost 6.83 s
2023-04-18 09:39:23,999	44k	INFO	====> Epoch: 4199, cost 6.76 s
2023-04-18 09:39:31,070	44k	INFO	====> Epoch: 4200, cost 7.07 s
2023-04-18 09:39:38,214	44k	INFO	====> Epoch: 4201, cost 7.14 s
2023-04-18 09:39:45,221	44k	INFO	====> Epoch: 4202, cost 7.01 s
2023-04-18 09:39:52,633	44k	INFO	====> Epoch: 4203, cost 7.41 s
2023-04-18 09:39:59,948	44k	INFO	====> Epoch: 4204, cost 7.32 s
2023-04-18 09:40:07,205	44k	INFO	====> Epoch: 4205, cost 7.26 s
2023-04-18 09:40:14,472	44k	INFO	====> Epoch: 4206, cost 7.27 s
2023-04-18 09:40:21,267	44k	INFO	====> Epoch: 4207, cost 6.79 s
2023-04-18 09:40:28,029	44k	INFO	====> Epoch: 4208, cost 6.76 s
2023-04-18 09:40:35,251	44k	INFO	====> Epoch: 4209, cost 7.22 s
2023-04-18 09:40:42,567	44k	INFO	====> Epoch: 4210, cost 7.32 s
2023-04-18 09:40:49,788	44k	INFO	====> Epoch: 4211, cost 7.22 s
2023-04-18 09:40:57,181	44k	INFO	====> Epoch: 4212, cost 7.39 s
2023-04-18 09:41:04,581	44k	INFO	====> Epoch: 4213, cost 7.40 s
2023-04-18 09:41:11,961	44k	INFO	====> Epoch: 4214, cost 7.38 s
2023-04-18 09:41:19,223	44k	INFO	====> Epoch: 4215, cost 7.26 s
2023-04-18 09:41:26,156	44k	INFO	====> Epoch: 4216, cost 6.93 s
2023-04-18 09:41:33,114	44k	INFO	====> Epoch: 4217, cost 6.96 s
2023-04-18 09:41:39,961	44k	INFO	====> Epoch: 4218, cost 6.85 s
2023-04-18 09:41:46,999	44k	INFO	====> Epoch: 4219, cost 7.04 s
2023-04-18 09:41:53,956	44k	INFO	====> Epoch: 4220, cost 6.96 s
2023-04-18 09:42:00,966	44k	INFO	====> Epoch: 4221, cost 7.01 s
2023-04-18 09:42:07,971	44k	INFO	====> Epoch: 4222, cost 7.01 s
2023-04-18 09:42:14,960	44k	INFO	====> Epoch: 4223, cost 6.99 s
2023-04-18 09:42:21,943	44k	INFO	====> Epoch: 4224, cost 6.98 s
2023-04-18 09:42:28,961	44k	INFO	====> Epoch: 4225, cost 7.02 s
2023-04-18 09:42:35,951	44k	INFO	====> Epoch: 4226, cost 6.99 s
2023-04-18 09:42:42,933	44k	INFO	====> Epoch: 4227, cost 6.98 s
2023-04-18 09:42:49,954	44k	INFO	====> Epoch: 4228, cost 7.02 s
2023-04-18 09:42:57,011	44k	INFO	====> Epoch: 4229, cost 7.06 s
2023-04-18 09:43:03,967	44k	INFO	====> Epoch: 4230, cost 6.96 s
2023-04-18 09:43:10,945	44k	INFO	====> Epoch: 4231, cost 6.98 s
2023-04-18 09:43:17,946	44k	INFO	====> Epoch: 4232, cost 7.00 s
2023-04-18 09:43:24,962	44k	INFO	====> Epoch: 4233, cost 7.02 s
2023-04-18 09:43:31,123	44k	INFO	Train Epoch: 4234 [80%]
2023-04-18 09:43:31,124	44k	INFO	Losses: [1.0183080434799194, 3.8086729049682617, 17.133316040039062, 20.698583602905273, 0.18538106977939606], step: 21200, lr: 5.882176968723764e-05, reference_loss: 24.065002883507034
2023-04-18 09:43:32,331	44k	INFO	====> Epoch: 4234, cost 7.37 s
2023-04-18 09:43:39,333	44k	INFO	====> Epoch: 4235, cost 7.00 s
2023-04-18 09:43:46,345	44k	INFO	====> Epoch: 4236, cost 7.01 s
2023-04-18 09:43:53,353	44k	INFO	====> Epoch: 4237, cost 7.01 s
2023-04-18 09:44:00,457	44k	INFO	====> Epoch: 4238, cost 7.10 s
2023-04-18 09:44:07,568	44k	INFO	====> Epoch: 4239, cost 7.11 s
2023-04-18 09:44:14,483	44k	INFO	====> Epoch: 4240, cost 6.92 s
2023-04-18 09:44:21,336	44k	INFO	====> Epoch: 4241, cost 6.85 s
2023-04-18 09:44:28,332	44k	INFO	====> Epoch: 4242, cost 7.00 s
2023-04-18 09:44:35,170	44k	INFO	====> Epoch: 4243, cost 6.84 s
2023-04-18 09:44:42,134	44k	INFO	====> Epoch: 4244, cost 6.96 s
2023-04-18 09:44:49,084	44k	INFO	====> Epoch: 4245, cost 6.95 s
2023-04-18 09:44:55,920	44k	INFO	====> Epoch: 4246, cost 6.84 s
2023-04-18 09:45:02,928	44k	INFO	====> Epoch: 4247, cost 7.01 s
2023-04-18 09:45:09,722	44k	INFO	====> Epoch: 4248, cost 6.79 s
2023-04-18 09:45:16,692	44k	INFO	====> Epoch: 4249, cost 6.97 s
2023-04-18 09:45:23,679	44k	INFO	====> Epoch: 4250, cost 6.99 s
2023-04-18 09:45:30,709	44k	INFO	====> Epoch: 4251, cost 7.03 s
2023-04-18 09:45:37,836	44k	INFO	====> Epoch: 4252, cost 7.13 s
2023-04-18 09:45:45,289	44k	INFO	====> Epoch: 4253, cost 7.45 s
2023-04-18 09:45:52,102	44k	INFO	====> Epoch: 4254, cost 6.81 s
2023-04-18 09:45:59,170	44k	INFO	====> Epoch: 4255, cost 7.07 s
2023-04-18 09:46:06,285	44k	INFO	====> Epoch: 4256, cost 7.12 s
2023-04-18 09:46:13,114	44k	INFO	====> Epoch: 4257, cost 6.83 s
2023-04-18 09:46:19,899	44k	INFO	====> Epoch: 4258, cost 6.79 s
2023-04-18 09:46:26,868	44k	INFO	====> Epoch: 4259, cost 6.97 s
2023-04-18 09:46:33,669	44k	INFO	====> Epoch: 4260, cost 6.80 s
2023-04-18 09:46:40,690	44k	INFO	====> Epoch: 4261, cost 7.02 s
2023-04-18 09:46:47,659	44k	INFO	====> Epoch: 4262, cost 6.97 s
2023-04-18 09:46:54,645	44k	INFO	====> Epoch: 4263, cost 6.99 s
2023-04-18 09:47:01,637	44k	INFO	====> Epoch: 4264, cost 6.99 s
2023-04-18 09:47:08,659	44k	INFO	====> Epoch: 4265, cost 7.02 s
2023-04-18 09:47:15,675	44k	INFO	====> Epoch: 4266, cost 7.02 s
2023-04-18 09:47:22,893	44k	INFO	====> Epoch: 4267, cost 7.22 s
2023-04-18 09:47:29,880	44k	INFO	====> Epoch: 4268, cost 6.99 s
2023-04-18 09:47:36,841	44k	INFO	====> Epoch: 4269, cost 6.96 s
2023-04-18 09:47:44,082	44k	INFO	====> Epoch: 4270, cost 7.24 s
2023-04-18 09:47:51,259	44k	INFO	====> Epoch: 4271, cost 7.18 s
2023-04-18 09:47:58,268	44k	INFO	====> Epoch: 4272, cost 7.01 s
2023-04-18 09:48:05,247	44k	INFO	====> Epoch: 4273, cost 6.98 s
2023-04-18 09:48:11,453	44k	INFO	Train Epoch: 4274 [80%]
2023-04-18 09:48:11,453	44k	INFO	Losses: [1.2744048833847046, 4.040312767028809, 12.233488082885742, 18.33358383178711, -0.048623278737068176], step: 21400, lr: 5.852837659535434e-05, reference_loss: 30.625200847914876
2023-04-18 09:48:12,646	44k	INFO	====> Epoch: 4274, cost 7.40 s
2023-04-18 09:48:19,683	44k	INFO	====> Epoch: 4275, cost 7.04 s
2023-04-18 09:48:26,643	44k	INFO	====> Epoch: 4276, cost 6.96 s
2023-04-18 09:48:33,451	44k	INFO	====> Epoch: 4277, cost 6.81 s
2023-04-18 09:48:40,242	44k	INFO	====> Epoch: 4278, cost 6.79 s
2023-04-18 09:48:47,055	44k	INFO	====> Epoch: 4279, cost 6.81 s
2023-04-18 09:48:54,005	44k	INFO	====> Epoch: 4280, cost 6.95 s
2023-04-18 09:49:00,981	44k	INFO	====> Epoch: 4281, cost 6.98 s
2023-04-18 09:49:08,014	44k	INFO	====> Epoch: 4282, cost 7.03 s
2023-04-18 09:49:15,008	44k	INFO	====> Epoch: 4283, cost 6.99 s
2023-04-18 09:49:22,001	44k	INFO	====> Epoch: 4284, cost 6.99 s
2023-04-18 09:49:28,849	44k	INFO	====> Epoch: 4285, cost 6.85 s
2023-04-18 09:49:35,853	44k	INFO	====> Epoch: 4286, cost 7.00 s
2023-04-18 09:49:42,830	44k	INFO	====> Epoch: 4287, cost 6.98 s
2023-04-18 09:49:49,835	44k	INFO	====> Epoch: 4288, cost 7.00 s
2023-04-18 09:49:56,828	44k	INFO	====> Epoch: 4289, cost 6.99 s
2023-04-18 09:50:03,802	44k	INFO	====> Epoch: 4290, cost 6.97 s
2023-04-18 09:50:10,824	44k	INFO	====> Epoch: 4291, cost 7.02 s
2023-04-18 09:50:17,819	44k	INFO	====> Epoch: 4292, cost 7.00 s
2023-04-18 09:50:24,790	44k	INFO	====> Epoch: 4293, cost 6.97 s
2023-04-18 09:50:31,561	44k	INFO	====> Epoch: 4294, cost 6.77 s
2023-04-18 09:50:38,417	44k	INFO	====> Epoch: 4295, cost 6.86 s
2023-04-18 09:50:45,347	44k	INFO	====> Epoch: 4296, cost 6.93 s
2023-04-18 09:50:52,376	44k	INFO	====> Epoch: 4297, cost 7.03 s
2023-04-18 09:50:59,358	44k	INFO	====> Epoch: 4298, cost 6.98 s
2023-04-18 09:51:06,171	44k	INFO	====> Epoch: 4299, cost 6.81 s
2023-04-18 09:51:13,159	44k	INFO	====> Epoch: 4300, cost 6.99 s
2023-04-18 09:51:20,055	44k	INFO	====> Epoch: 4301, cost 6.90 s
2023-04-18 09:51:26,807	44k	INFO	====> Epoch: 4302, cost 6.75 s
2023-04-18 09:51:33,754	44k	INFO	====> Epoch: 4303, cost 6.95 s
2023-04-18 09:51:40,844	44k	INFO	====> Epoch: 4304, cost 7.09 s
2023-04-18 09:51:47,810	44k	INFO	====> Epoch: 4305, cost 6.97 s
2023-04-18 09:51:54,802	44k	INFO	====> Epoch: 4306, cost 6.99 s
2023-04-18 09:52:02,009	44k	INFO	====> Epoch: 4307, cost 7.21 s
2023-04-18 09:52:09,021	44k	INFO	====> Epoch: 4308, cost 7.01 s
2023-04-18 09:52:15,971	44k	INFO	====> Epoch: 4309, cost 6.95 s
2023-04-18 09:52:22,962	44k	INFO	====> Epoch: 4310, cost 6.99 s
2023-04-18 09:52:29,934	44k	INFO	====> Epoch: 4311, cost 6.97 s
2023-04-18 09:52:36,929	44k	INFO	====> Epoch: 4312, cost 7.00 s
2023-04-18 09:52:43,778	44k	INFO	====> Epoch: 4313, cost 6.85 s
2023-04-18 09:52:49,831	44k	INFO	Train Epoch: 4314 [80%]
2023-04-18 09:52:49,831	44k	INFO	Losses: [1.0186668634414673, 4.287105083465576, 14.895614624023438, 21.103084564208984, 0.8100769519805908], step: 21600, lr: 5.8236446898857163e-05, reference_loss: 30.461269509519603
2023-04-18 09:52:57,074	44k	INFO	Saving model and optimizer state at iteration 4314 to ./logs\44k\G_21600.pth
2023-04-18 09:52:57,777	44k	INFO	Saving model and optimizer state at iteration 4314 to ./logs\44k\D_21600.pth
2023-04-18 09:52:58,408	44k	INFO	.. Free up space by deleting ckpt ./logs\44k\G_19200.pth
2023-04-18 09:52:58,438	44k	INFO	.. Free up space by deleting ckpt ./logs\44k\D_19200.pth
2023-04-18 09:52:59,281	44k	INFO	====> Epoch: 4314, cost 15.50 s
2023-04-18 09:53:06,400	44k	INFO	====> Epoch: 4315, cost 7.12 s
2023-04-18 09:53:13,503	44k	INFO	====> Epoch: 4316, cost 7.10 s
2023-04-18 09:53:20,536	44k	INFO	====> Epoch: 4317, cost 7.03 s
2023-04-18 09:53:27,394	44k	INFO	====> Epoch: 4318, cost 6.86 s
2023-04-18 09:53:34,184	44k	INFO	====> Epoch: 4319, cost 6.79 s
2023-04-18 09:53:41,173	44k	INFO	====> Epoch: 4320, cost 6.99 s
2023-04-18 09:53:48,193	44k	INFO	====> Epoch: 4321, cost 7.02 s
2023-04-18 09:53:55,135	44k	INFO	====> Epoch: 4322, cost 6.94 s
2023-04-18 09:54:02,142	44k	INFO	====> Epoch: 4323, cost 7.01 s
2023-04-18 09:54:09,154	44k	INFO	====> Epoch: 4324, cost 7.01 s
2023-04-18 09:54:16,281	44k	INFO	====> Epoch: 4325, cost 7.13 s
2023-04-18 09:54:23,353	44k	INFO	====> Epoch: 4326, cost 7.07 s
2023-04-18 09:54:30,382	44k	INFO	====> Epoch: 4327, cost 7.03 s
2023-04-18 09:54:37,331	44k	INFO	====> Epoch: 4328, cost 6.95 s
2023-04-18 09:54:44,170	44k	INFO	====> Epoch: 4329, cost 6.84 s
2023-04-18 09:54:51,116	44k	INFO	====> Epoch: 4330, cost 6.95 s
2023-04-18 09:54:57,971	44k	INFO	====> Epoch: 4331, cost 6.86 s
2023-04-18 09:55:04,945	44k	INFO	====> Epoch: 4332, cost 6.97 s
2023-04-18 09:55:11,903	44k	INFO	====> Epoch: 4333, cost 6.96 s
2023-04-18 09:55:18,925	44k	INFO	====> Epoch: 4334, cost 7.02 s
2023-04-18 09:55:25,903	44k	INFO	====> Epoch: 4335, cost 6.98 s
2023-04-18 09:55:32,890	44k	INFO	====> Epoch: 4336, cost 6.99 s
2023-04-18 09:55:39,928	44k	INFO	====> Epoch: 4337, cost 7.04 s
2023-04-18 09:55:47,016	44k	INFO	====> Epoch: 4338, cost 7.09 s
2023-04-18 09:55:53,979	44k	INFO	====> Epoch: 4339, cost 6.96 s
2023-04-18 09:56:00,959	44k	INFO	====> Epoch: 4340, cost 6.98 s
2023-04-18 09:56:08,048	44k	INFO	====> Epoch: 4341, cost 7.09 s
2023-04-18 09:56:16,485	44k	INFO	====> Epoch: 4342, cost 8.44 s
2023-04-18 09:56:23,844	44k	INFO	====> Epoch: 4343, cost 7.36 s
2023-04-18 09:56:30,674	44k	INFO	====> Epoch: 4344, cost 6.83 s
2023-04-18 09:56:37,678	44k	INFO	====> Epoch: 4345, cost 7.00 s
2023-04-18 09:56:44,666	44k	INFO	====> Epoch: 4346, cost 6.99 s
2023-04-18 09:56:51,496	44k	INFO	====> Epoch: 4347, cost 6.83 s
2023-04-18 09:56:58,496	44k	INFO	====> Epoch: 4348, cost 7.00 s
2023-04-18 09:57:05,491	44k	INFO	====> Epoch: 4349, cost 7.00 s
2023-04-18 09:57:12,481	44k	INFO	====> Epoch: 4350, cost 6.99 s
2023-04-18 09:57:19,402	44k	INFO	====> Epoch: 4351, cost 6.92 s
2023-04-18 09:57:26,246	44k	INFO	====> Epoch: 4352, cost 6.84 s
2023-04-18 09:57:33,263	44k	INFO	====> Epoch: 4353, cost 7.02 s
2023-04-18 09:57:39,569	44k	INFO	Train Epoch: 4354 [80%]
2023-04-18 09:57:39,569	44k	INFO	Losses: [2.0403993129730225, 2.927959442138672, 8.839935302734375, 17.390018463134766, 0.8205661177635193], step: 21800, lr: 5.7945973298576136e-05, reference_loss: 28.771429352922596
2023-04-18 09:57:40,772	44k	INFO	====> Epoch: 4354, cost 7.51 s
2023-04-18 09:57:47,675	44k	INFO	====> Epoch: 4355, cost 6.90 s
2023-04-18 09:57:54,603	44k	INFO	====> Epoch: 4356, cost 6.93 s
2023-04-18 09:58:01,504	44k	INFO	====> Epoch: 4357, cost 6.90 s
2023-04-18 09:58:08,493	44k	INFO	====> Epoch: 4358, cost 6.99 s
2023-04-18 09:58:15,454	44k	INFO	====> Epoch: 4359, cost 6.96 s
2023-04-18 09:58:22,253	44k	INFO	====> Epoch: 4360, cost 6.80 s
2023-04-18 09:58:29,204	44k	INFO	====> Epoch: 4361, cost 6.95 s
2023-04-18 09:58:36,046	44k	INFO	====> Epoch: 4362, cost 6.84 s
2023-04-18 09:58:42,876	44k	INFO	====> Epoch: 4363, cost 6.83 s

Screenshot so-vits-svc and logs/44k folders and paste here

so-vits-svc so-vits-svc

Supplementary description

No response

コントリビューターガイド