06-08 02:32 - modeling.utils - INFO - not setting manual seed to 42 due to dataloader behavior after requeue 06-08 02:32 - modeling.trainer - INFO - saving experiment configuration 06-08 02:32 - filelock - DEBUG - Attempting to acquire lock 140557317273872 on /data/home/yimingzhang/.cache/huggingface/datasets/_data_home_yimingzhang_.cache_huggingface_datasets_lichess-2022-blitz-sampled_default-50cd6dff99955a33_0.0.0_35054d6d0f4ee92c.lock 06-08 02:32 - filelock - DEBUG - Lock 140557317273872 acquired on /data/home/yimingzhang/.cache/huggingface/datasets/_data_home_yimingzhang_.cache_huggingface_datasets_lichess-2022-blitz-sampled_default-50cd6dff99955a33_0.0.0_35054d6d0f4ee92c.lock 06-08 02:32 - fsspec.local - DEBUG - open file: /data/home/yimingzhang/.cache/huggingface/datasets/lichess-2022-blitz-sampled/default-50cd6dff99955a33/0.0.0/35054d6d0f4ee92c/dataset_info.json 06-08 02:32 - filelock - DEBUG - Attempting to release lock 140557317273872 on /data/home/yimingzhang/.cache/huggingface/datasets/_data_home_yimingzhang_.cache_huggingface_datasets_lichess-2022-blitz-sampled_default-50cd6dff99955a33_0.0.0_35054d6d0f4ee92c.lock 06-08 02:32 - filelock - DEBUG - Lock 140557317273872 released on /data/home/yimingzhang/.cache/huggingface/datasets/_data_home_yimingzhang_.cache_huggingface_datasets_lichess-2022-blitz-sampled_default-50cd6dff99955a33_0.0.0_35054d6d0f4ee92c.lock 06-08 02:32 - filelock - DEBUG - Attempting to acquire lock 140566309913232 on /data/home/yimingzhang/.cache/huggingface/datasets/lichess-2022-blitz-sampled/default-50cd6dff99955a33/0.0.0/35054d6d0f4ee92c_builder.lock 06-08 02:32 - filelock - DEBUG - Lock 140566309913232 acquired on /data/home/yimingzhang/.cache/huggingface/datasets/lichess-2022-blitz-sampled/default-50cd6dff99955a33/0.0.0/35054d6d0f4ee92c_builder.lock 06-08 02:32 - fsspec.local - DEBUG - open file: /data/home/yimingzhang/.cache/huggingface/datasets/lichess-2022-blitz-sampled/default-50cd6dff99955a33/0.0.0/35054d6d0f4ee92c/dataset_info.json 06-08 02:32 - filelock - DEBUG - Attempting to release lock 140566309913232 on /data/home/yimingzhang/.cache/huggingface/datasets/lichess-2022-blitz-sampled/default-50cd6dff99955a33/0.0.0/35054d6d0f4ee92c_builder.lock 06-08 02:32 - filelock - DEBUG - Lock 140566309913232 released on /data/home/yimingzhang/.cache/huggingface/datasets/lichess-2022-blitz-sampled/default-50cd6dff99955a33/0.0.0/35054d6d0f4ee92c_builder.lock 06-08 02:32 - urllib3.connectionpool - DEBUG - Starting new HTTPS connection (1): huggingface.co:443 06-08 02:32 - urllib3.connectionpool - DEBUG - https://huggingface.co:443 "HEAD /gpt2-medium/resolve/main/config.json HTTP/1.1" 200 0 06-08 02:32 - urllib3.connectionpool - DEBUG - https://huggingface.co:443 "HEAD /gpt2-medium/resolve/main/config.json HTTP/1.1" 200 0 06-08 02:32 - urllib3.connectionpool - DEBUG - https://huggingface.co:443 "HEAD /gpt2-medium/resolve/main/generation_config.json HTTP/1.1" 200 0 06-08 02:32 - modeling.trainer - INFO - model parameters: 0.31B 06-08 02:32 - modeling.trainer - INFO - using fused AdamW optimizer 06-08 02:32 - modeling.trainer - INFO - optimizer initialized 06-08 02:33 - modeling.trainer - INFO - model compiled 06-08 02:33 - modeling.trainer - INFO - no last checkpoint found, start training from scratch 06-08 02:35 - 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modeling.trainer - INFO - train - iter 1885550: loss 2.8342, time 7.06s 06-11 12:16 - modeling.trainer - INFO - train - iter 1885600: loss 2.8339, time 6.99s 06-11 12:17 - modeling.trainer - INFO - train - iter 1885650: loss 2.8330, time 6.83s 06-12 01:39 - modeling.utils - INFO - not setting manual seed to 42 due to dataloader behavior after requeue 06-12 01:39 - modeling.trainer - INFO - saving experiment configuration 06-12 01:39 - filelock - DEBUG - Attempting to acquire lock 140523498854224 on /data/home/yimingzhang/.cache/huggingface/datasets/_data_home_yimingzhang_.cache_huggingface_datasets_lichess-2022-blitz-sampled_default-50cd6dff99955a33_0.0.0_35054d6d0f4ee92c.lock 06-12 01:39 - filelock - DEBUG - Lock 140523498854224 acquired on /data/home/yimingzhang/.cache/huggingface/datasets/_data_home_yimingzhang_.cache_huggingface_datasets_lichess-2022-blitz-sampled_default-50cd6dff99955a33_0.0.0_35054d6d0f4ee92c.lock 06-12 01:39 - fsspec.local - DEBUG - open file: /data/home/yimingzhang/.cache/huggingface/datasets/lichess-2022-blitz-sampled/default-50cd6dff99955a33/0.0.0/35054d6d0f4ee92c/dataset_info.json 06-12 01:39 - filelock - DEBUG - Attempting to release lock 140523498854224 on /data/home/yimingzhang/.cache/huggingface/datasets/_data_home_yimingzhang_.cache_huggingface_datasets_lichess-2022-blitz-sampled_default-50cd6dff99955a33_0.0.0_35054d6d0f4ee92c.lock 06-12 01:39 - filelock - DEBUG - Lock 140523498854224 released on /data/home/yimingzhang/.cache/huggingface/datasets/_data_home_yimingzhang_.cache_huggingface_datasets_lichess-2022-blitz-sampled_default-50cd6dff99955a33_0.0.0_35054d6d0f4ee92c.lock 06-12 01:39 - filelock - DEBUG - Attempting to acquire lock 140514706097552 on /data/home/yimingzhang/.cache/huggingface/datasets/lichess-2022-blitz-sampled/default-50cd6dff99955a33/0.0.0/35054d6d0f4ee92c_builder.lock 06-12 01:39 - filelock - DEBUG - Lock 140514706097552 acquired on /data/home/yimingzhang/.cache/huggingface/datasets/lichess-2022-blitz-sampled/default-50cd6dff99955a33/0.0.0/35054d6d0f4ee92c_builder.lock 06-12 01:39 - fsspec.local - DEBUG - open file: /data/home/yimingzhang/.cache/huggingface/datasets/lichess-2022-blitz-sampled/default-50cd6dff99955a33/0.0.0/35054d6d0f4ee92c/dataset_info.json 06-12 01:39 - filelock - DEBUG - Attempting to release lock 140514706097552 on /data/home/yimingzhang/.cache/huggingface/datasets/lichess-2022-blitz-sampled/default-50cd6dff99955a33/0.0.0/35054d6d0f4ee92c_builder.lock 06-12 01:39 - filelock - DEBUG - Lock 140514706097552 released on /data/home/yimingzhang/.cache/huggingface/datasets/lichess-2022-blitz-sampled/default-50cd6dff99955a33/0.0.0/35054d6d0f4ee92c_builder.lock 06-12 01:39 - urllib3.connectionpool - DEBUG - Starting new HTTPS connection (1): huggingface.co:443 06-12 01:39 - urllib3.connectionpool - DEBUG - https://huggingface.co:443 "HEAD /gpt2-medium/resolve/main/config.json HTTP/1.1" 200 0 06-12 01:39 - urllib3.connectionpool - DEBUG - https://huggingface.co:443 "HEAD /gpt2-medium/resolve/main/config.json HTTP/1.1" 200 0 06-12 01:39 - urllib3.connectionpool - DEBUG - https://huggingface.co:443 "HEAD /gpt2-medium/resolve/main/generation_config.json HTTP/1.1" 200 0 06-12 01:39 - modeling.trainer - INFO - model parameters: 0.31B 06-12 01:39 - modeling.trainer - INFO - using fused AdamW optimizer 06-12 01:39 - modeling.trainer - INFO - optimizer initialized 06-12 01:39 - modeling.trainer - INFO - model compiled 06-12 01:40 - modeling.trainer - INFO - loading last checkpoint from iter 1880000: best_val_loss 2.75325268273676 06-12 01:42 - modeling.trainer - INFO - val - iter 1880000: lm_loss 1.3553, value_loss 0.7340, time_loss 0.6639, loss 2.7533, time 166.64s 06-12 01:42 - modeling.trainer - INFO - new best val loss 2.7533 06-12 01:43 - modeling.trainer - INFO - saved checkpoint to models/medium/best.pt 06-12 01:43 - modeling.trainer - INFO - saved checkpoint to models/medium/last.pt 06-12 01:44 - modeling.trainer - INFO - train - iter 1880000: loss 2.7822, time 257.80s 06-12 01:44 - modeling.trainer - INFO - train - iter 1880050: loss 2.8371, time 7.23s 06-12 01:44 - modeling.trainer - INFO - train - iter 1880100: loss 2.8312, time 7.22s 06-12 01:44 - modeling.trainer - INFO - train - iter 1880150: loss 2.8299, time 8.30s 06-12 01:44 - 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modeling.trainer - INFO - train - iter 1999950: loss 2.8283, time 5.19s 06-12 05:28 - modeling.trainer - INFO - val - iter 2000000: lm_loss 1.3535, value_loss 0.7341, time_loss 0.6631, loss 2.7507, time 4.04s 06-12 05:28 - modeling.trainer - INFO - new best val loss 2.7507 06-12 05:28 - modeling.trainer - INFO - saved checkpoint to models/medium/best.pt 06-12 05:28 - modeling.trainer - INFO - saved checkpoint to models/medium/last.pt 06-12 05:28 - modeling.trainer - INFO - train - iter 2000000: loss 2.8247, time 18.04s 06-12 05:28 - modeling.trainer - INFO - training complete! total time 13714.54s 06-12 05:28 - modeling.trainer - INFO - loading best checkpoint from iter 2000000: best_val_loss 2.7507444335896776 06-12 05:28 - modeling.trainer - INFO - test: loss 2.7685, time 7.95s 06-12 05:28 - modeling.trainer - INFO - all done! exiting gracefully... 06-12 05:29 - urllib3.connectionpool - DEBUG - Starting new HTTPS connection (1): o151352.ingest.sentry.io:443 06-12 05:29 - urllib3.connectionpool - DEBUG - https://o151352.ingest.sentry.io:443 "POST /api/4504800232407040/envelope/ HTTP/1.1" 200 0