| + deepspeed |
| [rank2]:[W529 18:08:35.304510792 ProcessGroupNCCL.cpp:4561] [PG ID 0 PG GUID 0 Rank 2] using GPU 2 to perform barrier as devices used by this process are currently unknown. This can potentially cause a hang if this rank to GPU mapping is incorrect. Specify device_ids in barrier() to force use of a particular device, or call init_process_group() with a device_id. |
| [rank4]:[W529 18:08:35.536764699 ProcessGroupNCCL.cpp:4561] [PG ID 0 PG GUID 0 Rank 4] using GPU 4 to perform barrier as devices used by this process are currently unknown. This can potentially cause a hang if this rank to GPU mapping is incorrect. Specify device_ids in barrier() to force use of a particular device, or call init_process_group() with a device_id. |
| [rank6]:[W529 18:08:35.760733657 ProcessGroupNCCL.cpp:4561] [PG ID 0 PG GUID 0 Rank 6] using GPU 6 to perform barrier as devices used by this process are currently unknown. This can potentially cause a hang if this rank to GPU mapping is incorrect. Specify device_ids in barrier() to force use of a particular device, or call init_process_group() with a device_id. |
| [rank7]:[W529 18:08:35.804265417 ProcessGroupNCCL.cpp:4561] [PG ID 0 PG GUID 0 Rank 7] using GPU 7 to perform barrier as devices used by this process are currently unknown. This can potentially cause a hang if this rank to GPU mapping is incorrect. Specify device_ids in barrier() to force use of a particular device, or call init_process_group() with a device_id. |
| [rank1]:[W529 18:08:35.053222480 ProcessGroupNCCL.cpp:4561] [PG ID 0 PG GUID 0 Rank 1] using GPU 1 to perform barrier as devices used by this process are currently unknown. This can potentially cause a hang if this rank to GPU mapping is incorrect. Specify device_ids in barrier() to force use of a particular device, or call init_process_group() with a device_id. |
| [rank5]:[W529 18:08:36.196585961 ProcessGroupNCCL.cpp:4561] [PG ID 0 PG GUID 0 Rank 5] using GPU 5 to perform barrier as devices used by this process are currently unknown. This can potentially cause a hang if this rank to GPU mapping is incorrect. Specify device_ids in barrier() to force use of a particular device, or call init_process_group() with a device_id. |
| [rank3]:[W529 18:08:36.651405034 ProcessGroupNCCL.cpp:4561] [PG ID 0 PG GUID 0 Rank 3] using GPU 3 to perform barrier as devices used by this process are currently unknown. This can potentially cause a hang if this rank to GPU mapping is incorrect. Specify device_ids in barrier() to force use of a particular device, or call init_process_group() with a device_id. |
| [rank0]:[W529 18:08:36.690322264 ProcessGroupNCCL.cpp:4561] [PG ID 0 PG GUID 0 Rank 0] using GPU 0 to perform barrier as devices used by this process are currently unknown. This can potentially cause a hang if this rank to GPU mapping is incorrect. Specify device_ids in barrier() to force use of a particular device, or call init_process_group() with a device_id. |
| loading configuration file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/config.json |
| loading configuration file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/config.json |
| loading configuration file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/config.json |
| loading configuration file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/config.json |
| loading configuration file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/config.json |
| loading configuration file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/config.json |
| loading configuration file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/config.json |
| loading configuration file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/config.json |
| Model config LlamaConfig { |
| "architectures": [ |
| "LlamaForCausalLM" |
| ], |
| "attention_bias": false, |
| "attention_dropout": 0.0, |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "head_dim": 64, |
| "hidden_act": "silu", |
| "hidden_size": 2048, |
| "initializer_range": 0.02, |
| "intermediate_size": 5632, |
| "max_position_embeddings": 2048, |
| "mlp_bias": false, |
| "model_type": "llama", |
| "num_attention_heads": 32, |
| "num_hidden_layers": 22, |
| "num_key_value_heads": 4, |
| "pad_token_id": 32000, |
| "pretraining_tp": 1, |
| "rms_norm_eps": 1e-05, |
| "rope_scaling": null, |
| "rope_theta": 10000.0, |
| "tie_word_embeddings": false, |
| "torch_dtype": "float32", |
| "transformers_version": "4.52.1", |
| "use_cache": true, |
| "vocab_size": 32001 |
| } |
|
|
| Model config LlamaConfig { |
| "architectures": [ |
| "LlamaForCausalLM" |
| ], |
| "attention_bias": false, |
| "attention_dropout": 0.0, |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "head_dim": 64, |
| "hidden_act": "silu", |
| "hidden_size": 2048, |
| "initializer_range": 0.02, |
| "intermediate_size": 5632, |
| "max_position_embeddings": 2048, |
| "mlp_bias": false, |
| "model_type": "llama", |
| "num_attention_heads": 32, |
| "num_hidden_layers": 22, |
| "num_key_value_heads": 4, |
| "pad_token_id": 32000, |
| "pretraining_tp": 1, |
| "rms_norm_eps": 1e-05, |
| "rope_scaling": null, |
| "rope_theta": 10000.0, |
| "tie_word_embeddings": false, |
| "torch_dtype": "float32", |
| "transformers_version": "4.52.1", |
| "use_cache": true, |
| "vocab_size": 32001 |
| } |
|
|
| Model config LlamaConfig { |
| "architectures": [ |
| "LlamaForCausalLM" |
| ], |
| "attention_bias": false, |
| "attention_dropout": 0.0, |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "head_dim": 64, |
| "hidden_act": "silu", |
| "hidden_size": 2048, |
| "initializer_range": 0.02, |
| "intermediate_size": 5632, |
| "max_position_embeddings": 2048, |
| "mlp_bias": false, |
| "model_type": "llama", |
| "num_attention_heads": 32, |
| "num_hidden_layers": 22, |
| "num_key_value_heads": 4, |
| "pad_token_id": 32000, |
| "pretraining_tp": 1, |
| "rms_norm_eps": 1e-05, |
| "rope_scaling": null, |
| "rope_theta": 10000.0, |
| "tie_word_embeddings": false, |
| "torch_dtype": "float32", |
| "transformers_version": "4.52.1", |
| "use_cache": true, |
| "vocab_size": 32001 |
| } |
|
|
| Model config LlamaConfig { |
| "architectures": [ |
| "LlamaForCausalLM" |
| ], |
| "attention_bias": false, |
| "attention_dropout": 0.0, |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "head_dim": 64, |
| "hidden_act": "silu", |
| "hidden_size": 2048, |
| "initializer_range": 0.02, |
| "intermediate_size": 5632, |
| "max_position_embeddings": 2048, |
| "mlp_bias": false, |
| "model_type": "llama", |
| "num_attention_heads": 32, |
| "num_hidden_layers": 22, |
| "num_key_value_heads": 4, |
| "pad_token_id": 32000, |
| "pretraining_tp": 1, |
| "rms_norm_eps": 1e-05, |
| "rope_scaling": null, |
| "rope_theta": 10000.0, |
| "tie_word_embeddings": false, |
| "torch_dtype": "float32", |
| "transformers_version": "4.52.1", |
| "use_cache": true, |
| "vocab_size": 32001 |
| } |
|
|
| Model config LlamaConfig { |
| "architectures": [ |
| "LlamaForCausalLM" |
| ], |
| "attention_bias": false, |
| "attention_dropout": 0.0, |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "head_dim": 64, |
| "hidden_act": "silu", |
| "hidden_size": 2048, |
| "initializer_range": 0.02, |
| "intermediate_size": 5632, |
| "max_position_embeddings": 2048, |
| "mlp_bias": false, |
| "model_type": "llama", |
| "num_attention_heads": 32, |
| "num_hidden_layers": 22, |
| "num_key_value_heads": 4, |
| "pad_token_id": 32000, |
| "pretraining_tp": 1, |
| "rms_norm_eps": 1e-05, |
| "rope_scaling": null, |
| "rope_theta": 10000.0, |
| "tie_word_embeddings": false, |
| "torch_dtype": "float32", |
| "transformers_version": "4.52.1", |
| "use_cache": true, |
| "vocab_size": 32001 |
| } |
|
|
| Model config LlamaConfig { |
| "architectures": [ |
| "LlamaForCausalLM" |
| ], |
| "attention_bias": false, |
| "attention_dropout": 0.0, |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "head_dim": 64, |
| "hidden_act": "silu", |
| "hidden_size": 2048, |
| "initializer_range": 0.02, |
| "intermediate_size": 5632, |
| "max_position_embeddings": 2048, |
| "mlp_bias": false, |
| "model_type": "llama", |
| "num_attention_heads": 32, |
| "num_hidden_layers": 22, |
| "num_key_value_heads": 4, |
| "pad_token_id": 32000, |
| "pretraining_tp": 1, |
| "rms_norm_eps": 1e-05, |
| "rope_scaling": null, |
| "rope_theta": 10000.0, |
| "tie_word_embeddings": false, |
| "torch_dtype": "float32", |
| "transformers_version": "4.52.1", |
| "use_cache": true, |
| "vocab_size": 32001 |
| } |
|
|
| Model config LlamaConfig { |
| "architectures": [ |
| "LlamaForCausalLM" |
| ], |
| "attention_bias": false, |
| "attention_dropout": 0.0, |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "head_dim": 64, |
| "hidden_act": "silu", |
| "hidden_size": 2048, |
| "initializer_range": 0.02, |
| "intermediate_size": 5632, |
| "max_position_embeddings": 2048, |
| "mlp_bias": false, |
| "model_type": "llama", |
| "num_attention_heads": 32, |
| "num_hidden_layers": 22, |
| "num_key_value_heads": 4, |
| "pad_token_id": 32000, |
| "pretraining_tp": 1, |
| "rms_norm_eps": 1e-05, |
| "rope_scaling": null, |
| "rope_theta": 10000.0, |
| "tie_word_embeddings": false, |
| "torch_dtype": "float32", |
| "transformers_version": "4.52.1", |
| "use_cache": true, |
| "vocab_size": 32001 |
| } |
|
|
| Model config LlamaConfig { |
| "architectures": [ |
| "LlamaForCausalLM" |
| ], |
| "attention_bias": false, |
| "attention_dropout": 0.0, |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "head_dim": 64, |
| "hidden_act": "silu", |
| "hidden_size": 2048, |
| "initializer_range": 0.02, |
| "intermediate_size": 5632, |
| "max_position_embeddings": 2048, |
| "mlp_bias": false, |
| "model_type": "llama", |
| "num_attention_heads": 32, |
| "num_hidden_layers": 22, |
| "num_key_value_heads": 4, |
| "pad_token_id": 32000, |
| "pretraining_tp": 1, |
| "rms_norm_eps": 1e-05, |
| "rope_scaling": null, |
| "rope_theta": 10000.0, |
| "tie_word_embeddings": false, |
| "torch_dtype": "float32", |
| "transformers_version": "4.52.1", |
| "use_cache": true, |
| "vocab_size": 32001 |
| } |
|
|
| loading weights file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/pytorch_model.bin |
| Will use torch_dtype=torch.float32 as defined in model's config object |
| Instantiating LlamaForCausalLM model under default dtype torch.float32. |
| Detected DeepSpeed ZeRO-3: activating zero.init() for this model |
| loading weights file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/pytorch_model.bin |
| Will use torch_dtype=torch.float32 as defined in model's config object |
| Instantiating LlamaForCausalLM model under default dtype torch.float32. |
| Detected DeepSpeed ZeRO-3: activating zero.init() for this model |
| loading weights file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/pytorch_model.bin |
| loading weights file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/pytorch_model.bin |
| loading weights file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/pytorch_model.bin |
| Will use torch_dtype=torch.float32 as defined in model's config object |
| Will use torch_dtype=torch.float32 as defined in model's config object |
| loading weights file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/pytorch_model.bin |
| Will use torch_dtype=torch.float32 as defined in model's config object |
| Instantiating LlamaForCausalLM model under default dtype torch.float32. |
| Instantiating LlamaForCausalLM model under default dtype torch.float32. |
| Instantiating LlamaForCausalLM model under default dtype torch.float32. |
| loading weights file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/pytorch_model.bin |
| Will use torch_dtype=torch.float32 as defined in model's config object |
| Detected DeepSpeed ZeRO-3: activating zero.init() for this model |
| Instantiating LlamaForCausalLM model under default dtype torch.float32. |
| Will use torch_dtype=torch.float32 as defined in model's config object |
| Detected DeepSpeed ZeRO-3: activating zero.init() for this model |
| Detected DeepSpeed ZeRO-3: activating zero.init() for this model |
| Instantiating LlamaForCausalLM model under default dtype torch.float32. |
| Detected DeepSpeed ZeRO-3: activating zero.init() for this model |
| Detected DeepSpeed ZeRO-3: activating zero.init() for this model |
| loading weights file /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000/pytorch_model.bin |
| Will use torch_dtype=torch.float32 as defined in model's config object |
| Instantiating LlamaForCausalLM model under default dtype torch.float32. |
| Detected DeepSpeed ZeRO-3: activating zero.init() for this model |
| Generate config GenerationConfig { |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "pad_token_id": 32000 |
| } |
|
|
| Generate config GenerationConfig { |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "pad_token_id": 32000 |
| } |
|
|
| Generate config GenerationConfig { |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "pad_token_id": 32000 |
| } |
|
|
| Generate config GenerationConfig { |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "pad_token_id": 32000 |
| } |
|
|
| Generate config GenerationConfig { |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "pad_token_id": 32000 |
| } |
|
|
| Generate config GenerationConfig { |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "pad_token_id": 32000 |
| } |
|
|
| Generate config GenerationConfig { |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "pad_token_id": 32000 |
| } |
|
|
| Generate config GenerationConfig { |
| "bos_token_id": 1, |
| "eos_token_id": 2, |
| "pad_token_id": 32000 |
| } |
|
|
| All model checkpoint weights were used when initializing LlamaForCausalLM. |
|
|
| All the weights of LlamaForCausalLM were initialized from the model checkpoint at /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000. |
| If your task is similar to the task the model of the checkpoint was trained on, you can already use LlamaForCausalLM for predictions without further training. |
| All model checkpoint weights were used when initializing LlamaForCausalLM. |
|
|
| All the weights of LlamaForCausalLM were initialized from the model checkpoint at /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000. |
| If your task is similar to the task the model of the checkpoint was trained on, you can already use LlamaForCausalLM for predictions without further training. |
| All model checkpoint weights were used when initializing LlamaForCausalLM. |
|
|
| All the weights of LlamaForCausalLM were initialized from the model checkpoint at /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000. |
| If your task is similar to the task the model of the checkpoint was trained on, you can already use LlamaForCausalLM for predictions without further training. |
| All model checkpoint weights were used when initializing LlamaForCausalLM. |
|
|
| All the weights of LlamaForCausalLM were initialized from the model checkpoint at /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000. |
| If your task is similar to the task the model of the checkpoint was trained on, you can already use LlamaForCausalLM for predictions without further training. |
| All model checkpoint weights were used when initializing LlamaForCausalLM. |
|
|
| All the weights of LlamaForCausalLM were initialized from the model checkpoint at /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000. |
| If your task is similar to the task the model of the checkpoint was trained on, you can already use LlamaForCausalLM for predictions without further training. |
| All model checkpoint weights were used when initializing LlamaForCausalLM. |
|
|
| All the weights of LlamaForCausalLM were initialized from the model checkpoint at /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000. |
| If your task is similar to the task the model of the checkpoint was trained on, you can already use LlamaForCausalLM for predictions without further training. |
| All model checkpoint weights were used when initializing LlamaForCausalLM. |
|
|
| All the weights of LlamaForCausalLM were initialized from the model checkpoint at /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000. |
| If your task is similar to the task the model of the checkpoint was trained on, you can already use LlamaForCausalLM for predictions without further training. |
| Generation config file not found, using a generation config created from the model config. |
| Generation config file not found, using a generation config created from the model config. |
| Generation config file not found, using a generation config created from the model config. |
| Generation config file not found, using a generation config created from the model config. |
| Generation config file not found, using a generation config created from the model config. |
| Generation config file not found, using a generation config created from the model config. |
| Generation config file not found, using a generation config created from the model config. |
| loading file tokenizer.model |
| loading file tokenizer.json |
| loading file added_tokens.json |
| loading file special_tokens_map.json |
| loading file tokenizer_config.json |
| loading file chat_template.jinja |
| loading file tokenizer.model |
| loading file tokenizer.model |
| loading file tokenizer.json |
| loading file added_tokens.json |
| loading file tokenizer.json |
| loading file special_tokens_map.json |
| loading file tokenizer_config.json |
| loading file added_tokens.json |
| loading file tokenizer.model |
| loading file chat_template.jinja |
| loading file special_tokens_map.json |
| loading file tokenizer_config.json |
| loading file tokenizer.json |
| loading file chat_template.jinja |
| loading file added_tokens.json |
| loading file special_tokens_map.json |
| loading file tokenizer_config.json |
| loading file chat_template.jinja |
| loading file tokenizer.model |
| loading file tokenizer.json |
| loading file added_tokens.json |
| loading file special_tokens_map.json |
| loading file tokenizer_config.json |
| loading file chat_template.jinja |
| loading file tokenizer.model |
| loading file tokenizer.json |
| loading file added_tokens.json |
| loading file special_tokens_map.json |
| loading file tokenizer_config.json |
| loading file chat_template.jinja |
| loading file tokenizer.model |
| loading file tokenizer.json |
| loading file added_tokens.json |
| loading file special_tokens_map.json |
| loading file tokenizer_config.json |
| loading file chat_template.jinja |
| All model checkpoint weights were used when initializing LlamaForCausalLM. |
|
|
| All the weights of LlamaForCausalLM were initialized from the model checkpoint at /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000. |
| If your task is similar to the task the model of the checkpoint was trained on, you can already use LlamaForCausalLM for predictions without further training. |
| Generation config file not found, using a generation config created from the model config. |
| loading file tokenizer.model |
| loading file tokenizer.json |
| loading file added_tokens.json |
| loading file special_tokens_map.json |
| loading file tokenizer_config.json |
| loading file chat_template.jinja |
| Using /home/hansirui_1st/.cache/torch_extensions/py311_cu124 as PyTorch extensions root... |
| Using /home/hansirui_1st/.cache/torch_extensions/py311_cu124 as PyTorch extensions root... |
| Using /home/hansirui_1st/.cache/torch_extensions/py311_cu124 as PyTorch extensions root... |
| Using /home/hansirui_1st/.cache/torch_extensions/py311_cu124 as PyTorch extensions root... |
| Using /home/hansirui_1st/.cache/torch_extensions/py311_cu124 as PyTorch extensions root... |
| Using /home/hansirui_1st/.cache/torch_extensions/py311_cu124 as PyTorch extensions root... |
| Using /home/hansirui_1st/.cache/torch_extensions/py311_cu124 as PyTorch extensions root... |
| Using /home/hansirui_1st/.cache/torch_extensions/py311_cu124 as PyTorch extensions root... |
| Detected CUDA files, patching ldflags |
| Emitting ninja build file /home/hansirui_1st/.cache/torch_extensions/py311_cu124/fused_adam/build.ninja... |
| /aifs4su/hansirui_1st/miniconda3/envs/jy-resist/lib/python3.11/site-packages/torch/utils/cpp_extension.py:2059: UserWarning: TORCH_CUDA_ARCH_LIST is not set, all archs for visible cards are included for compilation. |
| If this is not desired, please set os.environ['TORCH_CUDA_ARCH_LIST']. |
| warnings.warn( |
| Building extension module fused_adam... |
| Allowing ninja to set a default number of workers... (overridable by setting the environment variable MAX_JOBS=N) |
| Loading extension module fused_adam... |
| Loading extension module fused_adam... |
| Loading extension module fused_adam... |
| Loading extension module fused_adam... |
| Loading extension module fused_adam... |
| Loading extension module fused_adam... |
| Loading extension module fused_adam... |
| Loading extension module fused_adam... |
| `use_cache=True` is incompatible with gradient checkpointing. Setting `use_cache=False`. |
| `use_cache=True` is incompatible with gradient checkpointing. Setting `use_cache=False`. |
| `use_cache=True` is incompatible with gradient checkpointing. Setting `use_cache=False`. |
| `use_cache=True` is incompatible with gradient checkpointing. Setting `use_cache=False`. |
| `use_cache=True` is incompatible with gradient checkpointing. Setting `use_cache=False`. |
| `use_cache=True` is incompatible with gradient checkpointing. Setting `use_cache=False`. |
| `use_cache=True` is incompatible with gradient checkpointing. Setting `use_cache=False`. |
| wandb: Currently logged in as: xtom to https://api.wandb.ai. Use `wandb login |
| wandb: Tracking run with wandb version 0.19.11 |
| wandb: Run data is saved locally in /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000-Q2-2000/wandb/run-20250529_180912-eaa4dw3q |
| wandb: Run `wandb offline` to turn off syncing. |
| wandb: Syncing run imdb-tinyllama-1T-s3-Q1-10000-Q2-2000 |
| wandb: βοΈ View project at https://wandb.ai/xtom/Inverse_Alignment_IMDb |
| wandb: π View run at https://wandb.ai/xtom/Inverse_Alignment_IMDb/runs/eaa4dw3q |
|
Training 1/1 epoch: 0%| | 0/250 [00:00<?, ?it/s]`use_cache=True` is incompatible with gradient checkpointing. Setting `use_cache=False`. |
|
Training 1/1 epoch (loss 2.8406): 0%| | 0/250 [00:05<?, ?it/s]
Training 1/1 epoch (loss 2.8406): 0%| | 1/250 [00:05<24:24, 5.88s/it]
Training 1/1 epoch (loss 2.8810): 0%| | 1/250 [00:07<24:24, 5.88s/it]
Training 1/1 epoch (loss 2.8810): 1%| | 2/250 [00:07<14:09, 3.42s/it]
Training 1/1 epoch (loss 2.8020): 1%| | 2/250 [00:07<14:09, 3.42s/it]
Training 1/1 epoch (loss 2.8020): 1%| | 3/250 [00:07<08:18, 2.02s/it]
Training 1/1 epoch (loss 2.6550): 1%| | 3/250 [00:08<08:18, 2.02s/it]
Training 1/1 epoch (loss 2.6550): 2%|β | 4/250 [00:08<05:40, 1.38s/it]
Training 1/1 epoch (loss 2.7668): 2%|β | 4/250 [00:08<05:40, 1.38s/it]
Training 1/1 epoch (loss 2.7668): 2%|β | 5/250 [00:08<04:04, 1.00it/s]
Training 1/1 epoch (loss 3.1306): 2%|β | 5/250 [00:08<04:04, 1.00it/s]
Training 1/1 epoch (loss 3.1306): 2%|β | 6/250 [00:08<03:07, 1.30it/s]
Training 1/1 epoch (loss 2.9006): 2%|β | 6/250 [00:09<03:07, 1.30it/s]
Training 1/1 epoch (loss 2.9006): 3%|β | 7/250 [00:09<02:30, 1.61it/s]
Training 1/1 epoch (loss 2.7174): 3%|β | 7/250 [00:09<02:30, 1.61it/s]
Training 1/1 epoch (loss 2.7174): 3%|β | 8/250 [00:09<02:15, 1.78it/s]
Training 1/1 epoch (loss 2.8592): 3%|β | 8/250 [00:10<02:15, 1.78it/s]
Training 1/1 epoch (loss 2.8592): 4%|β | 9/250 [00:10<02:04, 1.93it/s]
Training 1/1 epoch (loss 2.7075): 4%|β | 9/250 [00:10<02:04, 1.93it/s]
Training 1/1 epoch (loss 2.7075): 4%|β | 10/250 [00:10<01:57, 2.05it/s]
Training 1/1 epoch (loss 2.4789): 4%|β | 10/250 [00:10<01:57, 2.05it/s]
Training 1/1 epoch (loss 2.4789): 4%|β | 11/250 [00:10<01:43, 2.31it/s]
Training 1/1 epoch (loss 2.7093): 4%|β | 11/250 [00:11<01:43, 2.31it/s]
Training 1/1 epoch (loss 2.7093): 5%|β | 12/250 [00:11<01:33, 2.53it/s]
Training 1/1 epoch (loss 3.0778): 5%|β | 12/250 [00:11<01:33, 2.53it/s]
Training 1/1 epoch (loss 3.0778): 5%|β | 13/250 [00:11<01:27, 2.70it/s]
Training 1/1 epoch (loss 2.7166): 5%|β | 13/250 [00:11<01:27, 2.70it/s]
Training 1/1 epoch (loss 2.7166): 6%|β | 14/250 [00:11<01:26, 2.74it/s]
Training 1/1 epoch (loss 2.5898): 6%|β | 14/250 [00:12<01:26, 2.74it/s]
Training 1/1 epoch (loss 2.5898): 6%|β | 15/250 [00:12<01:24, 2.78it/s]
Training 1/1 epoch (loss 2.6651): 6%|β | 15/250 [00:12<01:24, 2.78it/s]
Training 1/1 epoch (loss 2.6651): 6%|β | 16/250 [00:12<01:27, 2.67it/s]
Training 1/1 epoch (loss 2.8850): 6%|β | 16/250 [00:12<01:27, 2.67it/s]
Training 1/1 epoch (loss 2.8850): 7%|β | 17/250 [00:12<01:24, 2.77it/s]
Training 1/1 epoch (loss 2.6537): 7%|β | 17/250 [00:13<01:24, 2.77it/s]
Training 1/1 epoch (loss 2.6537): 7%|β | 18/250 [00:13<01:20, 2.89it/s]
Training 1/1 epoch (loss 2.6873): 7%|β | 18/250 [00:13<01:20, 2.89it/s]
Training 1/1 epoch (loss 2.6873): 8%|β | 19/250 [00:13<01:19, 2.92it/s]
Training 1/1 epoch (loss 2.8405): 8%|β | 19/250 [00:13<01:19, 2.92it/s]
Training 1/1 epoch (loss 2.8405): 8%|β | 20/250 [00:13<01:16, 2.99it/s]
Training 1/1 epoch (loss 2.8524): 8%|β | 20/250 [00:14<01:16, 2.99it/s]
Training 1/1 epoch (loss 2.8524): 8%|β | 21/250 [00:14<01:23, 2.74it/s]
Training 1/1 epoch (loss 3.0095): 8%|β | 21/250 [00:14<01:23, 2.74it/s]
Training 1/1 epoch (loss 3.0095): 9%|β | 22/250 [00:14<01:21, 2.80it/s]
Training 1/1 epoch (loss 2.8393): 9%|β | 22/250 [00:14<01:21, 2.80it/s]
Training 1/1 epoch (loss 2.8393): 9%|β | 23/250 [00:14<01:17, 2.92it/s]
Training 1/1 epoch (loss 2.9966): 9%|β | 23/250 [00:15<01:17, 2.92it/s]
Training 1/1 epoch (loss 2.9966): 10%|β | 24/250 [00:15<01:21, 2.79it/s]
Training 1/1 epoch (loss 2.7255): 10%|β | 24/250 [00:15<01:21, 2.79it/s]
Training 1/1 epoch (loss 2.7255): 10%|β | 25/250 [00:15<01:19, 2.84it/s]
Training 1/1 epoch (loss 2.8015): 10%|β | 25/250 [00:16<01:19, 2.84it/s]
Training 1/1 epoch (loss 2.8015): 10%|β | 26/250 [00:16<01:16, 2.94it/s]
Training 1/1 epoch (loss 2.5908): 10%|β | 26/250 [00:16<01:16, 2.94it/s]
Training 1/1 epoch (loss 2.5908): 11%|β | 27/250 [00:16<01:21, 2.72it/s]
Training 1/1 epoch (loss 2.7080): 11%|β | 27/250 [00:16<01:21, 2.72it/s]
Training 1/1 epoch (loss 2.7080): 11%|β | 28/250 [00:16<01:19, 2.78it/s]
Training 1/1 epoch (loss 2.8003): 11%|β | 28/250 [00:17<01:19, 2.78it/s]
Training 1/1 epoch (loss 2.8003): 12%|ββ | 29/250 [00:17<01:16, 2.87it/s]
Training 1/1 epoch (loss 2.9427): 12%|ββ | 29/250 [00:17<01:16, 2.87it/s]
Training 1/1 epoch (loss 2.9427): 12%|ββ | 30/250 [00:17<01:13, 3.00it/s]
Training 1/1 epoch (loss 2.7376): 12%|ββ | 30/250 [00:17<01:13, 3.00it/s]
Training 1/1 epoch (loss 2.7376): 12%|ββ | 31/250 [00:17<01:11, 3.05it/s]
Training 1/1 epoch (loss 2.8019): 12%|ββ | 31/250 [00:18<01:11, 3.05it/s]
Training 1/1 epoch (loss 2.8019): 13%|ββ | 32/250 [00:18<01:15, 2.89it/s]
Training 1/1 epoch (loss 2.9219): 13%|ββ | 32/250 [00:18<01:15, 2.89it/s]
Training 1/1 epoch (loss 2.9219): 13%|ββ | 33/250 [00:18<01:25, 2.53it/s]
Training 1/1 epoch (loss 2.6265): 13%|ββ | 33/250 [00:18<01:25, 2.53it/s]
Training 1/1 epoch (loss 2.6265): 14%|ββ | 34/250 [00:18<01:19, 2.73it/s]
Training 1/1 epoch (loss 2.5538): 14%|ββ | 34/250 [00:19<01:19, 2.73it/s]
Training 1/1 epoch (loss 2.5538): 14%|ββ | 35/250 [00:19<01:14, 2.88it/s]
Training 1/1 epoch (loss 3.0052): 14%|ββ | 35/250 [00:19<01:14, 2.88it/s]
Training 1/1 epoch (loss 3.0052): 14%|ββ | 36/250 [00:19<01:13, 2.90it/s]
Training 1/1 epoch (loss 2.6845): 14%|ββ | 36/250 [00:19<01:13, 2.90it/s]
Training 1/1 epoch (loss 2.6845): 15%|ββ | 37/250 [00:19<01:11, 2.96it/s]
Training 1/1 epoch (loss 2.7348): 15%|ββ | 37/250 [00:20<01:11, 2.96it/s]
Training 1/1 epoch (loss 2.7348): 15%|ββ | 38/250 [00:20<01:10, 3.02it/s]
Training 1/1 epoch (loss 2.7981): 15%|ββ | 38/250 [00:20<01:10, 3.02it/s]
Training 1/1 epoch (loss 2.7981): 16%|ββ | 39/250 [00:20<01:18, 2.69it/s]
Training 1/1 epoch (loss 2.4489): 16%|ββ | 39/250 [00:21<01:18, 2.69it/s]
Training 1/1 epoch (loss 2.4489): 16%|ββ | 40/250 [00:21<01:17, 2.71it/s]
Training 1/1 epoch (loss 2.7304): 16%|ββ | 40/250 [00:21<01:17, 2.71it/s]
Training 1/1 epoch (loss 2.7304): 16%|ββ | 41/250 [00:21<01:14, 2.82it/s]
Training 1/1 epoch (loss 2.7224): 16%|ββ | 41/250 [00:21<01:14, 2.82it/s]
Training 1/1 epoch (loss 2.7224): 17%|ββ | 42/250 [00:21<01:10, 2.95it/s]
Training 1/1 epoch (loss 2.6041): 17%|ββ | 42/250 [00:21<01:10, 2.95it/s]
Training 1/1 epoch (loss 2.6041): 17%|ββ | 43/250 [00:21<01:08, 3.01it/s]
Training 1/1 epoch (loss 2.6917): 17%|ββ | 43/250 [00:22<01:08, 3.01it/s]
Training 1/1 epoch (loss 2.6917): 18%|ββ | 44/250 [00:22<01:06, 3.09it/s]
Training 1/1 epoch (loss 2.8426): 18%|ββ | 44/250 [00:22<01:06, 3.09it/s]
Training 1/1 epoch (loss 2.8426): 18%|ββ | 45/250 [00:22<01:08, 2.98it/s]
Training 1/1 epoch (loss 2.8908): 18%|ββ | 45/250 [00:23<01:08, 2.98it/s]
Training 1/1 epoch (loss 2.8908): 18%|ββ | 46/250 [00:23<01:21, 2.51it/s]
Training 1/1 epoch (loss 2.9098): 18%|ββ | 46/250 [00:23<01:21, 2.51it/s]
Training 1/1 epoch (loss 2.9098): 19%|ββ | 47/250 [00:23<01:15, 2.68it/s]
Training 1/1 epoch (loss 2.8498): 19%|ββ | 47/250 [00:23<01:15, 2.68it/s]
Training 1/1 epoch (loss 2.8498): 19%|ββ | 48/250 [00:23<01:12, 2.79it/s]
Training 1/1 epoch (loss 2.7038): 19%|ββ | 48/250 [00:24<01:12, 2.79it/s]
Training 1/1 epoch (loss 2.7038): 20%|ββ | 49/250 [00:24<01:10, 2.84it/s]
Training 1/1 epoch (loss 2.7331): 20%|ββ | 49/250 [00:24<01:10, 2.84it/s]
Training 1/1 epoch (loss 2.7331): 20%|ββ | 50/250 [00:24<01:12, 2.75it/s]
Training 1/1 epoch (loss 2.8998): 20%|ββ | 50/250 [00:24<01:12, 2.75it/s]
Training 1/1 epoch (loss 2.8998): 20%|ββ | 51/250 [00:24<01:08, 2.92it/s]
Training 1/1 epoch (loss 2.7907): 20%|ββ | 51/250 [00:25<01:08, 2.92it/s]
Training 1/1 epoch (loss 2.7907): 21%|ββ | 52/250 [00:25<01:03, 3.10it/s]
Training 1/1 epoch (loss 2.7090): 21%|ββ | 52/250 [00:25<01:03, 3.10it/s]
Training 1/1 epoch (loss 2.7090): 21%|ββ | 53/250 [00:25<01:05, 3.02it/s]
Training 1/1 epoch (loss 2.8464): 21%|ββ | 53/250 [00:25<01:05, 3.02it/s]
Training 1/1 epoch (loss 2.8464): 22%|βββ | 54/250 [00:25<01:04, 3.06it/s]
Training 1/1 epoch (loss 2.5792): 22%|βββ | 54/250 [00:26<01:04, 3.06it/s]
Training 1/1 epoch (loss 2.5792): 22%|βββ | 55/250 [00:26<01:06, 2.95it/s]
Training 1/1 epoch (loss 2.5738): 22%|βββ | 55/250 [00:26<01:06, 2.95it/s]
Training 1/1 epoch (loss 2.5738): 22%|βββ | 56/250 [00:26<01:12, 2.68it/s]
Training 1/1 epoch (loss 2.6922): 22%|βββ | 56/250 [00:26<01:12, 2.68it/s]
Training 1/1 epoch (loss 2.6922): 23%|βββ | 57/250 [00:26<01:10, 2.76it/s]
Training 1/1 epoch (loss 2.9793): 23%|βββ | 57/250 [00:27<01:10, 2.76it/s]
Training 1/1 epoch (loss 2.9793): 23%|βββ | 58/250 [00:27<01:05, 2.94it/s]
Training 1/1 epoch (loss 2.9966): 23%|βββ | 58/250 [00:27<01:05, 2.94it/s]
Training 1/1 epoch (loss 2.9966): 24%|βββ | 59/250 [00:27<01:03, 3.02it/s]
Training 1/1 epoch (loss 2.7225): 24%|βββ | 59/250 [00:27<01:03, 3.02it/s]
Training 1/1 epoch (loss 2.7225): 24%|βββ | 60/250 [00:27<01:02, 3.03it/s]
Training 1/1 epoch (loss 2.6403): 24%|βββ | 60/250 [00:28<01:02, 3.03it/s]
Training 1/1 epoch (loss 2.6403): 24%|βββ | 61/250 [00:28<01:07, 2.79it/s]
Training 1/1 epoch (loss 2.8191): 24%|βββ | 61/250 [00:28<01:07, 2.79it/s]
Training 1/1 epoch (loss 2.8191): 25%|βββ | 62/250 [00:28<01:09, 2.69it/s]
Training 1/1 epoch (loss 2.8387): 25%|βββ | 62/250 [00:29<01:09, 2.69it/s]
Training 1/1 epoch (loss 2.8387): 25%|βββ | 63/250 [00:29<01:06, 2.81it/s]
Training 1/1 epoch (loss 2.6254): 25%|βββ | 63/250 [00:29<01:06, 2.81it/s]
Training 1/1 epoch (loss 2.6254): 26%|βββ | 64/250 [00:29<01:04, 2.87it/s]
Training 1/1 epoch (loss 2.7897): 26%|βββ | 64/250 [00:29<01:04, 2.87it/s]
Training 1/1 epoch (loss 2.7897): 26%|βββ | 65/250 [00:29<01:04, 2.87it/s]
Training 1/1 epoch (loss 2.7600): 26%|βββ | 65/250 [00:30<01:04, 2.87it/s]
Training 1/1 epoch (loss 2.7600): 26%|βββ | 66/250 [00:30<01:03, 2.90it/s]
Training 1/1 epoch (loss 2.7324): 26%|βββ | 66/250 [00:30<01:03, 2.90it/s]
Training 1/1 epoch (loss 2.7324): 27%|βββ | 67/250 [00:30<01:01, 2.99it/s]
Training 1/1 epoch (loss 2.5987): 27%|βββ | 67/250 [00:30<01:01, 2.99it/s]
Training 1/1 epoch (loss 2.5987): 27%|βββ | 68/250 [00:30<01:04, 2.81it/s]
Training 1/1 epoch (loss 2.5834): 27%|βββ | 68/250 [00:31<01:04, 2.81it/s]
Training 1/1 epoch (loss 2.5834): 28%|βββ | 69/250 [00:31<01:06, 2.74it/s]
Training 1/1 epoch (loss 2.9154): 28%|βββ | 69/250 [00:31<01:06, 2.74it/s]
Training 1/1 epoch (loss 2.9154): 28%|βββ | 70/250 [00:31<01:02, 2.86it/s]
Training 1/1 epoch (loss 2.6737): 28%|βββ | 70/250 [00:31<01:02, 2.86it/s]
Training 1/1 epoch (loss 2.6737): 28%|βββ | 71/250 [00:31<01:01, 2.92it/s]
Training 1/1 epoch (loss 2.8319): 28%|βββ | 71/250 [00:32<01:01, 2.92it/s]
Training 1/1 epoch (loss 2.8319): 29%|βββ | 72/250 [00:32<01:00, 2.95it/s]
Training 1/1 epoch (loss 2.5247): 29%|βββ | 72/250 [00:32<01:00, 2.95it/s]
Training 1/1 epoch (loss 2.5247): 29%|βββ | 73/250 [00:32<01:00, 2.90it/s]
Training 1/1 epoch (loss 2.5935): 29%|βββ | 73/250 [00:32<01:00, 2.90it/s]
Training 1/1 epoch (loss 2.5935): 30%|βββ | 74/250 [00:32<01:04, 2.71it/s]
Training 1/1 epoch (loss 2.8945): 30%|βββ | 74/250 [00:33<01:04, 2.71it/s]
Training 1/1 epoch (loss 2.8945): 30%|βββ | 75/250 [00:33<01:00, 2.88it/s]
Training 1/1 epoch (loss 2.6034): 30%|βββ | 75/250 [00:33<01:00, 2.88it/s]
Training 1/1 epoch (loss 2.6034): 30%|βββ | 76/250 [00:33<00:58, 2.99it/s]
Training 1/1 epoch (loss 2.5360): 30%|βββ | 76/250 [00:33<00:58, 2.99it/s]
Training 1/1 epoch (loss 2.5360): 31%|βββ | 77/250 [00:33<00:57, 3.03it/s]
Training 1/1 epoch (loss 2.6446): 31%|βββ | 77/250 [00:34<00:57, 3.03it/s]
Training 1/1 epoch (loss 2.6446): 31%|βββ | 78/250 [00:34<00:58, 2.95it/s]
Training 1/1 epoch (loss 2.7480): 31%|βββ | 78/250 [00:34<00:58, 2.95it/s]
Training 1/1 epoch (loss 2.7480): 32%|ββββ | 79/250 [00:34<00:56, 3.00it/s]
Training 1/1 epoch (loss 2.7380): 32%|ββββ | 79/250 [00:34<00:56, 3.00it/s]
Training 1/1 epoch (loss 2.7380): 32%|ββββ | 80/250 [00:34<01:00, 2.80it/s]
Training 1/1 epoch (loss 2.8730): 32%|ββββ | 80/250 [00:35<01:00, 2.80it/s]
Training 1/1 epoch (loss 2.8730): 32%|ββββ | 81/250 [00:35<00:59, 2.85it/s]
Training 1/1 epoch (loss 2.9252): 32%|ββββ | 81/250 [00:35<00:59, 2.85it/s]
Training 1/1 epoch (loss 2.9252): 33%|ββββ | 82/250 [00:35<00:59, 2.83it/s]
Training 1/1 epoch (loss 2.7924): 33%|ββββ | 82/250 [00:35<00:59, 2.83it/s]
Training 1/1 epoch (loss 2.7924): 33%|ββββ | 83/250 [00:35<00:56, 2.93it/s]
Training 1/1 epoch (loss 2.6509): 33%|ββββ | 83/250 [00:36<00:56, 2.93it/s]
Training 1/1 epoch (loss 2.6509): 34%|ββββ | 84/250 [00:36<00:54, 3.03it/s]
Training 1/1 epoch (loss 2.8710): 34%|ββββ | 84/250 [00:36<00:54, 3.03it/s]
Training 1/1 epoch (loss 2.8710): 34%|ββββ | 85/250 [00:36<00:58, 2.83it/s]
Training 1/1 epoch (loss 2.7226): 34%|ββββ | 85/250 [00:36<00:58, 2.83it/s]
Training 1/1 epoch (loss 2.7226): 34%|ββββ | 86/250 [00:36<00:57, 2.84it/s]
Training 1/1 epoch (loss 2.7078): 34%|ββββ | 86/250 [00:37<00:57, 2.84it/s]
Training 1/1 epoch (loss 2.7078): 35%|ββββ | 87/250 [00:37<00:56, 2.88it/s]
Training 1/1 epoch (loss 2.7240): 35%|ββββ | 87/250 [00:37<00:56, 2.88it/s]
Training 1/1 epoch (loss 2.7240): 35%|ββββ | 88/250 [00:37<00:54, 2.98it/s]
Training 1/1 epoch (loss 2.7614): 35%|ββββ | 88/250 [00:37<00:54, 2.98it/s]
Training 1/1 epoch (loss 2.7614): 36%|ββββ | 89/250 [00:37<00:55, 2.91it/s]
Training 1/1 epoch (loss 2.8702): 36%|ββββ | 89/250 [00:38<00:55, 2.91it/s]
Training 1/1 epoch (loss 2.8702): 36%|ββββ | 90/250 [00:38<00:53, 2.98it/s]
Training 1/1 epoch (loss 2.7995): 36%|ββββ | 90/250 [00:38<00:53, 2.98it/s]
Training 1/1 epoch (loss 2.7995): 36%|ββββ | 91/250 [00:38<00:54, 2.94it/s]
Training 1/1 epoch (loss 2.6020): 36%|ββββ | 91/250 [00:38<00:54, 2.94it/s]
Training 1/1 epoch (loss 2.6020): 37%|ββββ | 92/250 [00:38<00:53, 2.97it/s]
Training 1/1 epoch (loss 2.4640): 37%|ββββ | 92/250 [00:39<00:53, 2.97it/s]
Training 1/1 epoch (loss 2.4640): 37%|ββββ | 93/250 [00:39<00:52, 2.97it/s]
Training 1/1 epoch (loss 2.7944): 37%|ββββ | 93/250 [00:39<00:52, 2.97it/s]
Training 1/1 epoch (loss 2.7944): 38%|ββββ | 94/250 [00:39<00:50, 3.07it/s]
Training 1/1 epoch (loss 2.8179): 38%|ββββ | 94/250 [00:39<00:50, 3.07it/s]
Training 1/1 epoch (loss 2.8179): 38%|ββββ | 95/250 [00:39<00:49, 3.12it/s]
Training 1/1 epoch (loss 2.7015): 38%|ββββ | 95/250 [00:40<00:49, 3.12it/s]
Training 1/1 epoch (loss 2.7015): 38%|ββββ | 96/250 [00:40<00:49, 3.10it/s]
Training 1/1 epoch (loss 2.7790): 38%|ββββ | 96/250 [00:40<00:49, 3.10it/s]
Training 1/1 epoch (loss 2.7790): 39%|ββββ | 97/250 [00:40<00:52, 2.92it/s]
Training 1/1 epoch (loss 2.7577): 39%|ββββ | 97/250 [00:41<00:52, 2.92it/s]
Training 1/1 epoch (loss 2.7577): 39%|ββββ | 98/250 [00:41<00:53, 2.86it/s]
Training 1/1 epoch (loss 2.7722): 39%|ββββ | 98/250 [00:41<00:53, 2.86it/s]
Training 1/1 epoch (loss 2.7722): 40%|ββββ | 99/250 [00:41<00:53, 2.83it/s]
Training 1/1 epoch (loss 2.7962): 40%|ββββ | 99/250 [00:41<00:53, 2.83it/s]
Training 1/1 epoch (loss 2.7962): 40%|ββββ | 100/250 [00:41<00:54, 2.77it/s]
Training 1/1 epoch (loss 2.6777): 40%|ββββ | 100/250 [00:42<00:54, 2.77it/s]
Training 1/1 epoch (loss 2.6777): 40%|ββββ | 101/250 [00:42<00:53, 2.80it/s]
Training 1/1 epoch (loss 2.7776): 40%|ββββ | 101/250 [00:42<00:53, 2.80it/s]
Training 1/1 epoch (loss 2.7776): 41%|ββββ | 102/250 [00:42<00:51, 2.85it/s]
Training 1/1 epoch (loss 2.8426): 41%|ββββ | 102/250 [00:42<00:51, 2.85it/s]
Training 1/1 epoch (loss 2.8426): 41%|ββββ | 103/250 [00:42<00:50, 2.89it/s]
Training 1/1 epoch (loss 2.7163): 41%|ββββ | 103/250 [00:43<00:50, 2.89it/s]
Training 1/1 epoch (loss 2.7163): 42%|βββββ | 104/250 [00:43<00:50, 2.92it/s]
Training 1/1 epoch (loss 2.7958): 42%|βββββ | 104/250 [00:43<00:50, 2.92it/s]
Training 1/1 epoch (loss 2.7958): 42%|βββββ | 105/250 [00:43<00:48, 2.96it/s]
Training 1/1 epoch (loss 2.4894): 42%|βββββ | 105/250 [00:43<00:48, 2.96it/s]
Training 1/1 epoch (loss 2.4894): 42%|βββββ | 106/250 [00:43<00:47, 3.02it/s]
Training 1/1 epoch (loss 2.8367): 42%|βββββ | 106/250 [00:44<00:47, 3.02it/s]
Training 1/1 epoch (loss 2.8367): 43%|βββββ | 107/250 [00:44<00:48, 2.96it/s]
Training 1/1 epoch (loss 2.9080): 43%|βββββ | 107/250 [00:44<00:48, 2.96it/s]
Training 1/1 epoch (loss 2.9080): 43%|βββββ | 108/250 [00:44<00:48, 2.94it/s]
Training 1/1 epoch (loss 2.6236): 43%|βββββ | 108/250 [00:44<00:48, 2.94it/s]
Training 1/1 epoch (loss 2.6236): 44%|βββββ | 109/250 [00:44<00:46, 3.03it/s]
Training 1/1 epoch (loss 2.7583): 44%|βββββ | 109/250 [00:45<00:46, 3.03it/s]
Training 1/1 epoch (loss 2.7583): 44%|βββββ | 110/250 [00:45<00:48, 2.90it/s]
Training 1/1 epoch (loss 2.7377): 44%|βββββ | 110/250 [00:45<00:48, 2.90it/s]
Training 1/1 epoch (loss 2.7377): 44%|βββββ | 111/250 [00:45<00:48, 2.89it/s]
Training 1/1 epoch (loss 2.8286): 44%|βββββ | 111/250 [00:45<00:48, 2.89it/s]
Training 1/1 epoch (loss 2.8286): 45%|βββββ | 112/250 [00:45<00:46, 3.00it/s]
Training 1/1 epoch (loss 2.8398): 45%|βββββ | 112/250 [00:46<00:46, 3.00it/s]
Training 1/1 epoch (loss 2.8398): 45%|βββββ | 113/250 [00:46<00:46, 2.98it/s]
Training 1/1 epoch (loss 2.8155): 45%|βββββ | 113/250 [00:46<00:46, 2.98it/s]
Training 1/1 epoch (loss 2.8155): 46%|βββββ | 114/250 [00:46<00:47, 2.87it/s]
Training 1/1 epoch (loss 2.6215): 46%|βββββ | 114/250 [00:46<00:47, 2.87it/s]
Training 1/1 epoch (loss 2.6215): 46%|βββββ | 115/250 [00:46<00:51, 2.60it/s]
Training 1/1 epoch (loss 2.7853): 46%|βββββ | 115/250 [00:47<00:51, 2.60it/s]
Training 1/1 epoch (loss 2.7853): 46%|βββββ | 116/250 [00:47<00:49, 2.72it/s]
Training 1/1 epoch (loss 2.8303): 46%|βββββ | 116/250 [00:47<00:49, 2.72it/s]
Training 1/1 epoch (loss 2.8303): 47%|βββββ | 117/250 [00:47<00:45, 2.90it/s]
Training 1/1 epoch (loss 2.6920): 47%|βββββ | 117/250 [00:47<00:45, 2.90it/s]
Training 1/1 epoch (loss 2.6920): 47%|βββββ | 118/250 [00:47<00:44, 2.98it/s]
Training 1/1 epoch (loss 2.7530): 47%|βββββ | 118/250 [00:48<00:44, 2.98it/s]
Training 1/1 epoch (loss 2.7530): 48%|βββββ | 119/250 [00:48<00:45, 2.91it/s]
Training 1/1 epoch (loss 2.7405): 48%|βββββ | 119/250 [00:48<00:45, 2.91it/s]
Training 1/1 epoch (loss 2.7405): 48%|βββββ | 120/250 [00:48<00:45, 2.88it/s]
Training 1/1 epoch (loss 2.7891): 48%|βββββ | 120/250 [00:49<00:45, 2.88it/s]
Training 1/1 epoch (loss 2.7891): 48%|βββββ | 121/250 [00:49<00:46, 2.75it/s]
Training 1/1 epoch (loss 2.6585): 48%|βββββ | 121/250 [00:49<00:46, 2.75it/s]
Training 1/1 epoch (loss 2.6585): 49%|βββββ | 122/250 [00:49<00:45, 2.83it/s]
Training 1/1 epoch (loss 2.7641): 49%|βββββ | 122/250 [00:49<00:45, 2.83it/s]
Training 1/1 epoch (loss 2.7641): 49%|βββββ | 123/250 [00:49<00:43, 2.91it/s]
Training 1/1 epoch (loss 2.9548): 49%|βββββ | 123/250 [00:49<00:43, 2.91it/s]
Training 1/1 epoch (loss 2.9548): 50%|βββββ | 124/250 [00:49<00:41, 3.00it/s]
Training 1/1 epoch (loss 2.7156): 50%|βββββ | 124/250 [00:50<00:41, 3.00it/s]
Training 1/1 epoch (loss 2.7156): 50%|βββββ | 125/250 [00:50<00:41, 2.99it/s]
Training 1/1 epoch (loss 2.9492): 50%|βββββ | 125/250 [00:50<00:41, 2.99it/s]
Training 1/1 epoch (loss 2.9492): 50%|βββββ | 126/250 [00:50<00:40, 3.05it/s]
Training 1/1 epoch (loss 2.7903): 50%|βββββ | 126/250 [00:50<00:40, 3.05it/s]
Training 1/1 epoch (loss 2.7903): 51%|βββββ | 127/250 [00:50<00:40, 3.04it/s]
Training 1/1 epoch (loss 2.9495): 51%|βββββ | 127/250 [00:51<00:40, 3.04it/s]
Training 1/1 epoch (loss 2.9495): 51%|βββββ | 128/250 [00:51<00:42, 2.87it/s]
Training 1/1 epoch (loss 2.6776): 51%|βββββ | 128/250 [00:51<00:42, 2.87it/s]
Training 1/1 epoch (loss 2.6776): 52%|ββββββ | 129/250 [00:51<00:41, 2.93it/s]
Training 1/1 epoch (loss 2.6575): 52%|ββββββ | 129/250 [00:52<00:41, 2.93it/s]
Training 1/1 epoch (loss 2.6575): 52%|ββββββ | 130/250 [00:52<00:40, 2.97it/s]
Training 1/1 epoch (loss 2.7407): 52%|ββββββ | 130/250 [00:52<00:40, 2.97it/s]
Training 1/1 epoch (loss 2.7407): 52%|ββββββ | 131/250 [00:52<00:40, 2.96it/s]
Training 1/1 epoch (loss 2.6132): 52%|ββββββ | 131/250 [00:52<00:40, 2.96it/s]
Training 1/1 epoch (loss 2.6132): 53%|ββββββ | 132/250 [00:52<00:39, 2.98it/s]
Training 1/1 epoch (loss 2.7240): 53%|ββββββ | 132/250 [00:53<00:39, 2.98it/s]
Training 1/1 epoch (loss 2.7240): 53%|ββββββ | 133/250 [00:53<00:50, 2.31it/s]
Training 1/1 epoch (loss 2.8865): 53%|ββββββ | 133/250 [00:53<00:50, 2.31it/s]
Training 1/1 epoch (loss 2.8865): 54%|ββββββ | 134/250 [00:53<00:45, 2.54it/s]
Training 1/1 epoch (loss 2.8284): 54%|ββββββ | 134/250 [00:53<00:45, 2.54it/s]
Training 1/1 epoch (loss 2.8284): 54%|ββββββ | 135/250 [00:53<00:43, 2.67it/s]
Training 1/1 epoch (loss 3.0577): 54%|ββββββ | 135/250 [00:54<00:43, 2.67it/s]
Training 1/1 epoch (loss 3.0577): 54%|ββββββ | 136/250 [00:54<00:41, 2.74it/s]
Training 1/1 epoch (loss 2.8000): 54%|ββββββ | 136/250 [00:54<00:41, 2.74it/s]
Training 1/1 epoch (loss 2.8000): 55%|ββββββ | 137/250 [00:54<00:41, 2.73it/s]
Training 1/1 epoch (loss 2.7702): 55%|ββββββ | 137/250 [00:54<00:41, 2.73it/s]
Training 1/1 epoch (loss 2.7702): 55%|ββββββ | 138/250 [00:54<00:38, 2.89it/s]
Training 1/1 epoch (loss 2.6916): 55%|ββββββ | 138/250 [00:55<00:38, 2.89it/s]
Training 1/1 epoch (loss 2.6916): 56%|ββββββ | 139/250 [00:55<00:37, 2.99it/s]
Training 1/1 epoch (loss 3.0371): 56%|ββββββ | 139/250 [00:55<00:37, 2.99it/s]
Training 1/1 epoch (loss 3.0371): 56%|ββββββ | 140/250 [00:55<00:36, 3.04it/s]
Training 1/1 epoch (loss 2.5583): 56%|ββββββ | 140/250 [00:55<00:36, 3.04it/s]
Training 1/1 epoch (loss 2.5583): 56%|ββββββ | 141/250 [00:55<00:35, 3.11it/s]
Training 1/1 epoch (loss 2.8426): 56%|ββββββ | 141/250 [00:56<00:35, 3.11it/s]
Training 1/1 epoch (loss 2.8426): 57%|ββββββ | 142/250 [00:56<00:34, 3.10it/s]
Training 1/1 epoch (loss 2.7726): 57%|ββββββ | 142/250 [00:56<00:34, 3.10it/s]
Training 1/1 epoch (loss 2.7726): 57%|ββββββ | 143/250 [00:56<00:35, 2.98it/s]
Training 1/1 epoch (loss 2.7404): 57%|ββββββ | 143/250 [00:56<00:35, 2.98it/s]
Training 1/1 epoch (loss 2.7404): 58%|ββββββ | 144/250 [00:56<00:36, 2.92it/s]
Training 1/1 epoch (loss 2.6712): 58%|ββββββ | 144/250 [00:57<00:36, 2.92it/s]
Training 1/1 epoch (loss 2.6712): 58%|ββββββ | 145/250 [00:57<00:35, 2.98it/s]
Training 1/1 epoch (loss 2.8038): 58%|ββββββ | 145/250 [00:57<00:35, 2.98it/s]
Training 1/1 epoch (loss 2.8038): 58%|ββββββ | 146/250 [00:57<00:36, 2.84it/s]
Training 1/1 epoch (loss 2.8136): 58%|ββββββ | 146/250 [00:58<00:36, 2.84it/s]
Training 1/1 epoch (loss 2.8136): 59%|ββββββ | 147/250 [00:58<00:39, 2.63it/s]
Training 1/1 epoch (loss 2.8819): 59%|ββββββ | 147/250 [00:58<00:39, 2.63it/s]
Training 1/1 epoch (loss 2.8819): 59%|ββββββ | 148/250 [00:58<00:37, 2.73it/s]
Training 1/1 epoch (loss 2.8257): 59%|ββββββ | 148/250 [00:58<00:37, 2.73it/s]
Training 1/1 epoch (loss 2.8257): 60%|ββββββ | 149/250 [00:58<00:37, 2.68it/s]
Training 1/1 epoch (loss 2.8446): 60%|ββββββ | 149/250 [00:59<00:37, 2.68it/s]
Training 1/1 epoch (loss 2.8446): 60%|ββββββ | 150/250 [00:59<00:35, 2.81it/s]
Training 1/1 epoch (loss 2.5405): 60%|ββββββ | 150/250 [00:59<00:35, 2.81it/s]
Training 1/1 epoch (loss 2.5405): 60%|ββββββ | 151/250 [00:59<00:34, 2.88it/s]
Training 1/1 epoch (loss 2.8390): 60%|ββββββ | 151/250 [00:59<00:34, 2.88it/s]
Training 1/1 epoch (loss 2.8390): 61%|ββββββ | 152/250 [00:59<00:33, 2.89it/s]
Training 1/1 epoch (loss 2.6258): 61%|ββββββ | 152/250 [01:00<00:33, 2.89it/s]
Training 1/1 epoch (loss 2.6258): 61%|ββββββ | 153/250 [01:00<00:35, 2.76it/s]
Training 1/1 epoch (loss 2.7649): 61%|ββββββ | 153/250 [01:00<00:35, 2.76it/s]
Training 1/1 epoch (loss 2.7649): 62%|βββββββ | 154/250 [01:00<00:33, 2.86it/s]
Training 1/1 epoch (loss 2.8512): 62%|βββββββ | 154/250 [01:00<00:33, 2.86it/s]
Training 1/1 epoch (loss 2.8512): 62%|βββββββ | 155/250 [01:00<00:33, 2.80it/s]
Training 1/1 epoch (loss 2.9232): 62%|βββββββ | 155/250 [01:01<00:33, 2.80it/s]
Training 1/1 epoch (loss 2.9232): 62%|βββββββ | 156/250 [01:01<00:31, 2.96it/s]
Training 1/1 epoch (loss 2.6965): 62%|βββββββ | 156/250 [01:01<00:31, 2.96it/s]
Training 1/1 epoch (loss 2.6965): 63%|βββββββ | 157/250 [01:01<00:31, 2.92it/s]
Training 1/1 epoch (loss 2.6538): 63%|βββββββ | 157/250 [01:01<00:31, 2.92it/s]
Training 1/1 epoch (loss 2.6538): 63%|βββββββ | 158/250 [01:01<00:32, 2.87it/s]
Training 1/1 epoch (loss 2.6933): 63%|βββββββ | 158/250 [01:02<00:32, 2.87it/s]
Training 1/1 epoch (loss 2.6933): 64%|βββββββ | 159/250 [01:02<00:30, 2.98it/s]
Training 1/1 epoch (loss 2.5407): 64%|βββββββ | 159/250 [01:02<00:30, 2.98it/s]
Training 1/1 epoch (loss 2.5407): 64%|βββββββ | 160/250 [01:02<00:31, 2.88it/s]
Training 1/1 epoch (loss 2.7673): 64%|βββββββ | 160/250 [01:02<00:31, 2.88it/s]
Training 1/1 epoch (loss 2.7673): 64%|βββββββ | 161/250 [01:02<00:31, 2.85it/s]
Training 1/1 epoch (loss 2.6406): 64%|βββββββ | 161/250 [01:03<00:31, 2.85it/s]
Training 1/1 epoch (loss 2.6406): 65%|βββββββ | 162/250 [01:03<00:29, 2.96it/s]
Training 1/1 epoch (loss 2.6852): 65%|βββββββ | 162/250 [01:03<00:29, 2.96it/s]
Training 1/1 epoch (loss 2.6852): 65%|βββββββ | 163/250 [01:03<00:28, 3.02it/s]
Training 1/1 epoch (loss 2.6959): 65%|βββββββ | 163/250 [01:03<00:28, 3.02it/s]
Training 1/1 epoch (loss 2.6959): 66%|βββββββ | 164/250 [01:03<00:28, 3.00it/s]
Training 1/1 epoch (loss 2.5707): 66%|βββββββ | 164/250 [01:04<00:28, 3.00it/s]
Training 1/1 epoch (loss 2.5707): 66%|βββββββ | 165/250 [01:04<00:29, 2.90it/s]
Training 1/1 epoch (loss 2.4506): 66%|βββββββ | 165/250 [01:04<00:29, 2.90it/s]
Training 1/1 epoch (loss 2.4506): 66%|βββββββ | 166/250 [01:04<00:27, 3.02it/s]
Training 1/1 epoch (loss 2.8318): 66%|βββββββ | 166/250 [01:04<00:27, 3.02it/s]
Training 1/1 epoch (loss 2.8318): 67%|βββββββ | 167/250 [01:04<00:27, 3.02it/s]
Training 1/1 epoch (loss 2.9142): 67%|βββββββ | 167/250 [01:05<00:27, 3.02it/s]
Training 1/1 epoch (loss 2.9142): 67%|βββββββ | 168/250 [01:05<00:27, 2.96it/s]
Training 1/1 epoch (loss 2.7250): 67%|βββββββ | 168/250 [01:05<00:27, 2.96it/s]
Training 1/1 epoch (loss 2.7250): 68%|βββββββ | 169/250 [01:05<00:29, 2.71it/s]
Training 1/1 epoch (loss 2.8224): 68%|βββββββ | 169/250 [01:06<00:29, 2.71it/s]
Training 1/1 epoch (loss 2.8224): 68%|βββββββ | 170/250 [01:06<00:28, 2.82it/s]
Training 1/1 epoch (loss 2.8285): 68%|βββββββ | 170/250 [01:06<00:28, 2.82it/s]
Training 1/1 epoch (loss 2.8285): 68%|βββββββ | 171/250 [01:06<00:27, 2.86it/s]
Training 1/1 epoch (loss 2.6016): 68%|βββββββ | 171/250 [01:06<00:27, 2.86it/s]
Training 1/1 epoch (loss 2.6016): 69%|βββββββ | 172/250 [01:06<00:27, 2.86it/s]
Training 1/1 epoch (loss 2.6569): 69%|βββββββ | 172/250 [01:07<00:27, 2.86it/s]
Training 1/1 epoch (loss 2.6569): 69%|βββββββ | 173/250 [01:07<00:26, 2.94it/s]
Training 1/1 epoch (loss 2.8580): 69%|βββββββ | 173/250 [01:07<00:26, 2.94it/s]
Training 1/1 epoch (loss 2.8580): 70%|βββββββ | 174/250 [01:07<00:25, 2.98it/s]
Training 1/1 epoch (loss 2.8010): 70%|βββββββ | 174/250 [01:07<00:25, 2.98it/s]
Training 1/1 epoch (loss 2.8010): 70%|βββββββ | 175/250 [01:07<00:24, 3.07it/s]
Training 1/1 epoch (loss 2.8283): 70%|βββββββ | 175/250 [01:08<00:24, 3.07it/s]
Training 1/1 epoch (loss 2.8283): 70%|βββββββ | 176/250 [01:08<00:26, 2.84it/s]
Training 1/1 epoch (loss 2.8632): 70%|βββββββ | 176/250 [01:08<00:26, 2.84it/s]
Training 1/1 epoch (loss 2.8632): 71%|βββββββ | 177/250 [01:08<00:27, 2.69it/s]
Training 1/1 epoch (loss 2.9226): 71%|βββββββ | 177/250 [01:08<00:27, 2.69it/s]
Training 1/1 epoch (loss 2.9226): 71%|βββββββ | 178/250 [01:08<00:26, 2.72it/s]
Training 1/1 epoch (loss 2.8829): 71%|βββββββ | 178/250 [01:09<00:26, 2.72it/s]
Training 1/1 epoch (loss 2.8829): 72%|ββββββββ | 179/250 [01:09<00:25, 2.84it/s]
Training 1/1 epoch (loss 2.6085): 72%|ββββββββ | 179/250 [01:09<00:25, 2.84it/s]
Training 1/1 epoch (loss 2.6085): 72%|ββββββββ | 180/250 [01:09<00:24, 2.90it/s]
Training 1/1 epoch (loss 2.6914): 72%|ββββββββ | 180/250 [01:09<00:24, 2.90it/s]
Training 1/1 epoch (loss 2.6914): 72%|ββββββββ | 181/250 [01:09<00:23, 2.92it/s]
Training 1/1 epoch (loss 2.7306): 72%|ββββββββ | 181/250 [01:10<00:23, 2.92it/s]
Training 1/1 epoch (loss 2.7306): 73%|ββββββββ | 182/250 [01:10<00:21, 3.11it/s]
Training 1/1 epoch (loss 2.5265): 73%|ββββββββ | 182/250 [01:10<00:21, 3.11it/s]
Training 1/1 epoch (loss 2.5265): 73%|ββββββββ | 183/250 [01:10<00:22, 2.97it/s]
Training 1/1 epoch (loss 2.7201): 73%|ββββββββ | 183/250 [01:10<00:22, 2.97it/s]
Training 1/1 epoch (loss 2.7201): 74%|ββββββββ | 184/250 [01:10<00:22, 2.96it/s]
Training 1/1 epoch (loss 2.8495): 74%|ββββββββ | 184/250 [01:11<00:22, 2.96it/s]
Training 1/1 epoch (loss 2.8495): 74%|ββββββββ | 185/250 [01:11<00:22, 2.94it/s]
Training 1/1 epoch (loss 2.7964): 74%|ββββββββ | 185/250 [01:11<00:22, 2.94it/s]
Training 1/1 epoch (loss 2.7964): 74%|ββββββββ | 186/250 [01:11<00:21, 3.02it/s]
Training 1/1 epoch (loss 2.8056): 74%|ββββββββ | 186/250 [01:11<00:21, 3.02it/s]
Training 1/1 epoch (loss 2.8056): 75%|ββββββββ | 187/250 [01:11<00:20, 3.07it/s]
Training 1/1 epoch (loss 2.9082): 75%|ββββββββ | 187/250 [01:12<00:20, 3.07it/s]
Training 1/1 epoch (loss 2.9082): 75%|ββββββββ | 188/250 [01:12<00:20, 3.07it/s]
Training 1/1 epoch (loss 2.6147): 75%|ββββββββ | 188/250 [01:12<00:20, 3.07it/s]
Training 1/1 epoch (loss 2.6147): 76%|ββββββββ | 189/250 [01:12<00:19, 3.06it/s]
Training 1/1 epoch (loss 2.7464): 76%|ββββββββ | 189/250 [01:12<00:19, 3.06it/s]
Training 1/1 epoch (loss 2.7464): 76%|ββββββββ | 190/250 [01:12<00:19, 3.04it/s]
Training 1/1 epoch (loss 2.8275): 76%|ββββββββ | 190/250 [01:13<00:19, 3.04it/s]
Training 1/1 epoch (loss 2.8275): 76%|ββββββββ | 191/250 [01:13<00:20, 2.93it/s]
Training 1/1 epoch (loss 2.7661): 76%|ββββββββ | 191/250 [01:13<00:20, 2.93it/s]
Training 1/1 epoch (loss 2.7661): 77%|ββββββββ | 192/250 [01:13<00:19, 2.95it/s]
Training 1/1 epoch (loss 2.5899): 77%|ββββββββ | 192/250 [01:13<00:19, 2.95it/s]
Training 1/1 epoch (loss 2.5899): 77%|ββββββββ | 193/250 [01:13<00:19, 2.96it/s]
Training 1/1 epoch (loss 2.7121): 77%|ββββββββ | 193/250 [01:14<00:19, 2.96it/s]
Training 1/1 epoch (loss 2.7121): 78%|ββββββββ | 194/250 [01:14<00:18, 2.96it/s]
Training 1/1 epoch (loss 2.7735): 78%|ββββββββ | 194/250 [01:14<00:18, 2.96it/s]
Training 1/1 epoch (loss 2.7735): 78%|ββββββββ | 195/250 [01:14<00:18, 2.92it/s]
Training 1/1 epoch (loss 2.6263): 78%|ββββββββ | 195/250 [01:14<00:18, 2.92it/s]
Training 1/1 epoch (loss 2.6263): 78%|ββββββββ | 196/250 [01:14<00:18, 2.89it/s]
Training 1/1 epoch (loss 2.6714): 78%|ββββββββ | 196/250 [01:15<00:18, 2.89it/s]
Training 1/1 epoch (loss 2.6714): 79%|ββββββββ | 197/250 [01:15<00:17, 2.95it/s]
Training 1/1 epoch (loss 2.7283): 79%|ββββββββ | 197/250 [01:15<00:17, 2.95it/s]
Training 1/1 epoch (loss 2.7283): 79%|ββββββββ | 198/250 [01:15<00:17, 2.97it/s]
Training 1/1 epoch (loss 2.7202): 79%|ββββββββ | 198/250 [01:15<00:17, 2.97it/s]
Training 1/1 epoch (loss 2.7202): 80%|ββββββββ | 199/250 [01:15<00:16, 3.00it/s]
Training 1/1 epoch (loss 2.7721): 80%|ββββββββ | 199/250 [01:16<00:16, 3.00it/s]
Training 1/1 epoch (loss 2.7721): 80%|ββββββββ | 200/250 [01:16<00:16, 3.02it/s]
Training 1/1 epoch (loss 2.6076): 80%|ββββββββ | 200/250 [01:16<00:16, 3.02it/s]
Training 1/1 epoch (loss 2.6076): 80%|ββββββββ | 201/250 [01:16<00:16, 2.96it/s]
Training 1/1 epoch (loss 2.7736): 80%|ββββββββ | 201/250 [01:16<00:16, 2.96it/s]
Training 1/1 epoch (loss 2.7736): 81%|ββββββββ | 202/250 [01:16<00:16, 2.85it/s]
Training 1/1 epoch (loss 2.6996): 81%|ββββββββ | 202/250 [01:17<00:16, 2.85it/s]
Training 1/1 epoch (loss 2.6996): 81%|ββββββββ | 203/250 [01:17<00:16, 2.86it/s]
Training 1/1 epoch (loss 2.8091): 81%|ββββββββ | 203/250 [01:17<00:16, 2.86it/s]
Training 1/1 epoch (loss 2.8091): 82%|βββββββββ | 204/250 [01:17<00:15, 2.96it/s]
Training 1/1 epoch (loss 2.6893): 82%|βββββββββ | 204/250 [01:17<00:15, 2.96it/s]
Training 1/1 epoch (loss 2.6893): 82%|βββββββββ | 205/250 [01:17<00:15, 2.94it/s]
Training 1/1 epoch (loss 2.9468): 82%|βββββββββ | 205/250 [01:18<00:15, 2.94it/s]
Training 1/1 epoch (loss 2.9468): 82%|βββββββββ | 206/250 [01:18<00:14, 2.96it/s]
Training 1/1 epoch (loss 2.8307): 82%|βββββββββ | 206/250 [01:18<00:14, 2.96it/s]
Training 1/1 epoch (loss 2.8307): 83%|βββββββββ | 207/250 [01:18<00:14, 2.91it/s]
Training 1/1 epoch (loss 2.6531): 83%|βββββββββ | 207/250 [01:19<00:14, 2.91it/s]
Training 1/1 epoch (loss 2.6531): 83%|βββββββββ | 208/250 [01:19<00:15, 2.76it/s]
Training 1/1 epoch (loss 2.7664): 83%|βββββββββ | 208/250 [01:19<00:15, 2.76it/s]
Training 1/1 epoch (loss 2.7664): 84%|βββββββββ | 209/250 [01:19<00:14, 2.82it/s]
Training 1/1 epoch (loss 2.6304): 84%|βββββββββ | 209/250 [01:19<00:14, 2.82it/s]
Training 1/1 epoch (loss 2.6304): 84%|βββββββββ | 210/250 [01:19<00:13, 2.97it/s]
Training 1/1 epoch (loss 2.7386): 84%|βββββββββ | 210/250 [01:19<00:13, 2.97it/s]
Training 1/1 epoch (loss 2.7386): 84%|βββββββββ | 211/250 [01:19<00:13, 2.99it/s]
Training 1/1 epoch (loss 2.8355): 84%|βββββββββ | 211/250 [01:20<00:13, 2.99it/s]
Training 1/1 epoch (loss 2.8355): 85%|βββββββββ | 212/250 [01:20<00:12, 3.06it/s]
Training 1/1 epoch (loss 2.6831): 85%|βββββββββ | 212/250 [01:20<00:12, 3.06it/s]
Training 1/1 epoch (loss 2.6831): 85%|βββββββββ | 213/250 [01:20<00:11, 3.09it/s]
Training 1/1 epoch (loss 2.8912): 85%|βββββββββ | 213/250 [01:20<00:11, 3.09it/s]
Training 1/1 epoch (loss 2.8912): 86%|βββββββββ | 214/250 [01:20<00:11, 3.13it/s]
Training 1/1 epoch (loss 2.8329): 86%|βββββββββ | 214/250 [01:21<00:11, 3.13it/s]
Training 1/1 epoch (loss 2.8329): 86%|βββββββββ | 215/250 [01:21<00:11, 3.11it/s]
Training 1/1 epoch (loss 2.7377): 86%|βββββββββ | 215/250 [01:21<00:11, 3.11it/s]
Training 1/1 epoch (loss 2.7377): 86%|βββββββββ | 216/250 [01:21<00:10, 3.09it/s]
Training 1/1 epoch (loss 2.9194): 86%|βββββββββ | 216/250 [01:21<00:10, 3.09it/s]
Training 1/1 epoch (loss 2.9194): 87%|βββββββββ | 217/250 [01:21<00:11, 2.99it/s]
Training 1/1 epoch (loss 2.7572): 87%|βββββββββ | 217/250 [01:22<00:11, 2.99it/s]
Training 1/1 epoch (loss 2.7572): 87%|βββββββββ | 218/250 [01:22<00:10, 2.93it/s]
Training 1/1 epoch (loss 2.8956): 87%|βββββββββ | 218/250 [01:22<00:10, 2.93it/s]
Training 1/1 epoch (loss 2.8956): 88%|βββββββββ | 219/250 [01:22<00:10, 3.00it/s]
Training 1/1 epoch (loss 2.8941): 88%|βββββββββ | 219/250 [01:23<00:10, 3.00it/s]
Training 1/1 epoch (loss 2.8941): 88%|βββββββββ | 220/250 [01:23<00:10, 2.82it/s]
Training 1/1 epoch (loss 2.7359): 88%|βββββββββ | 220/250 [01:23<00:10, 2.82it/s]
Training 1/1 epoch (loss 2.7359): 88%|βββββββββ | 221/250 [01:23<00:11, 2.52it/s]
Training 1/1 epoch (loss 2.7276): 88%|βββββββββ | 221/250 [01:23<00:11, 2.52it/s]
Training 1/1 epoch (loss 2.7276): 89%|βββββββββ | 222/250 [01:23<00:10, 2.67it/s]
Training 1/1 epoch (loss 2.6509): 89%|βββββββββ | 222/250 [01:24<00:10, 2.67it/s]
Training 1/1 epoch (loss 2.6509): 89%|βββββββββ | 223/250 [01:24<00:09, 2.76it/s]
Training 1/1 epoch (loss 2.7417): 89%|βββββββββ | 223/250 [01:24<00:09, 2.76it/s]
Training 1/1 epoch (loss 2.7417): 90%|βββββββββ | 224/250 [01:24<00:09, 2.76it/s]
Training 1/1 epoch (loss 2.7278): 90%|βββββββββ | 224/250 [01:24<00:09, 2.76it/s]
Training 1/1 epoch (loss 2.7278): 90%|βββββββββ | 225/250 [01:24<00:08, 2.79it/s]
Training 1/1 epoch (loss 2.6489): 90%|βββββββββ | 225/250 [01:25<00:08, 2.79it/s]
Training 1/1 epoch (loss 2.6489): 90%|βββββββββ | 226/250 [01:25<00:08, 2.91it/s]
Training 1/1 epoch (loss 2.3428): 90%|βββββββββ | 226/250 [01:25<00:08, 2.91it/s]
Training 1/1 epoch (loss 2.3428): 91%|βββββββββ | 227/250 [01:25<00:07, 2.89it/s]
Training 1/1 epoch (loss 2.8390): 91%|βββββββββ | 227/250 [01:25<00:07, 2.89it/s]
Training 1/1 epoch (loss 2.8390): 91%|βββββββββ | 228/250 [01:25<00:07, 3.01it/s]
Training 1/1 epoch (loss 2.5823): 91%|βββββββββ | 228/250 [01:26<00:07, 3.01it/s]
Training 1/1 epoch (loss 2.5823): 92%|ββββββββββ| 229/250 [01:26<00:06, 3.16it/s]
Training 1/1 epoch (loss 2.9150): 92%|ββββββββββ| 229/250 [01:26<00:06, 3.16it/s]
Training 1/1 epoch (loss 2.9150): 92%|ββββββββββ| 230/250 [01:26<00:06, 3.00it/s]
Training 1/1 epoch (loss 2.9068): 92%|ββββββββββ| 230/250 [01:26<00:06, 3.00it/s]
Training 1/1 epoch (loss 2.9068): 92%|ββββββββββ| 231/250 [01:26<00:06, 2.95it/s]
Training 1/1 epoch (loss 2.6678): 92%|ββββββββββ| 231/250 [01:27<00:06, 2.95it/s]
Training 1/1 epoch (loss 2.6678): 93%|ββββββββββ| 232/250 [01:27<00:06, 2.96it/s]
Training 1/1 epoch (loss 2.6887): 93%|ββββββββββ| 232/250 [01:27<00:06, 2.96it/s]
Training 1/1 epoch (loss 2.6887): 93%|ββββββββββ| 233/250 [01:27<00:05, 2.95it/s]
Training 1/1 epoch (loss 2.7777): 93%|ββββββββββ| 233/250 [01:27<00:05, 2.95it/s]
Training 1/1 epoch (loss 2.7777): 94%|ββββββββββ| 234/250 [01:27<00:05, 2.87it/s]
Training 1/1 epoch (loss 2.5503): 94%|ββββββββββ| 234/250 [01:28<00:05, 2.87it/s]
Training 1/1 epoch (loss 2.5503): 94%|ββββββββββ| 235/250 [01:28<00:05, 2.78it/s]
Training 1/1 epoch (loss 2.6394): 94%|ββββββββββ| 235/250 [01:28<00:05, 2.78it/s]
Training 1/1 epoch (loss 2.6394): 94%|ββββββββββ| 236/250 [01:28<00:05, 2.69it/s]
Training 1/1 epoch (loss 2.6472): 94%|ββββββββββ| 236/250 [01:29<00:05, 2.69it/s]
Training 1/1 epoch (loss 2.6472): 95%|ββββββββββ| 237/250 [01:29<00:04, 2.60it/s]
Training 1/1 epoch (loss 2.6233): 95%|ββββββββββ| 237/250 [01:29<00:04, 2.60it/s]
Training 1/1 epoch (loss 2.6233): 95%|ββββββββββ| 238/250 [01:29<00:04, 2.74it/s]
Training 1/1 epoch (loss 2.6859): 95%|ββββββββββ| 238/250 [01:29<00:04, 2.74it/s]
Training 1/1 epoch (loss 2.6859): 96%|ββββββββββ| 239/250 [01:29<00:03, 2.81it/s]
Training 1/1 epoch (loss 2.5051): 96%|ββββββββββ| 239/250 [01:30<00:03, 2.81it/s]
Training 1/1 epoch (loss 2.5051): 96%|ββββββββββ| 240/250 [01:30<00:03, 2.83it/s]
Training 1/1 epoch (loss 2.7454): 96%|ββββββββββ| 240/250 [01:30<00:03, 2.83it/s]
Training 1/1 epoch (loss 2.7454): 96%|ββββββββββ| 241/250 [01:30<00:03, 2.77it/s]
Training 1/1 epoch (loss 2.5992): 96%|ββββββββββ| 241/250 [01:30<00:03, 2.77it/s]
Training 1/1 epoch (loss 2.5992): 97%|ββββββββββ| 242/250 [01:30<00:02, 2.78it/s]
Training 1/1 epoch (loss 2.7875): 97%|ββββββββββ| 242/250 [01:31<00:02, 2.78it/s]
Training 1/1 epoch (loss 2.7875): 97%|ββββββββββ| 243/250 [01:31<00:02, 2.98it/s]
Training 1/1 epoch (loss 2.7225): 97%|ββββββββββ| 243/250 [01:31<00:02, 2.98it/s]
Training 1/1 epoch (loss 2.7225): 98%|ββββββββββ| 244/250 [01:31<00:02, 2.99it/s]
Training 1/1 epoch (loss 2.7598): 98%|ββββββββββ| 244/250 [01:31<00:02, 2.99it/s]
Training 1/1 epoch (loss 2.7598): 98%|ββββββββββ| 245/250 [01:31<00:01, 3.08it/s]
Training 1/1 epoch (loss 2.8140): 98%|ββββββββββ| 245/250 [01:32<00:01, 3.08it/s]
Training 1/1 epoch (loss 2.8140): 98%|ββββββββββ| 246/250 [01:32<00:01, 3.15it/s]
Training 1/1 epoch (loss 2.6908): 98%|ββββββββββ| 246/250 [01:32<00:01, 3.15it/s]
Training 1/1 epoch (loss 2.6908): 99%|ββββββββββ| 247/250 [01:32<00:00, 3.17it/s]
Training 1/1 epoch (loss 2.7997): 99%|ββββββββββ| 247/250 [01:32<00:00, 3.17it/s]
Training 1/1 epoch (loss 2.7997): 99%|ββββββββββ| 248/250 [01:32<00:00, 2.85it/s]
Training 1/1 epoch (loss 2.6407): 99%|ββββββββββ| 248/250 [01:33<00:00, 2.85it/s]
Training 1/1 epoch (loss 2.6407): 100%|ββββββββββ| 249/250 [01:33<00:00, 2.89it/s]
Training 1/1 epoch (loss 2.7876): 100%|ββββββββββ| 249/250 [01:33<00:00, 2.89it/s]
Training 1/1 epoch (loss 2.7876): 100%|ββββββββββ| 250/250 [01:33<00:00, 2.98it/s]
Training 1/1 epoch (loss 2.7876): 100%|ββββββββββ| 250/250 [01:33<00:00, 2.68it/s] |
| tokenizer config file saved in /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000-Q2-2000/tokenizer_config.json |
| Special tokens file saved in /aifs4su/hansirui_1st/jiayi/setting3-imdb/tinyllama-1T/tinyllama-1T-s3-Q1-10000-Q2-2000/special_tokens_map.json |
| wandb: ERROR Problem finishing run |
| Exception ignored in atexit callback: <bound method rank_zero_only.<locals>.wrapper of <safe_rlhf.logger.Logger object at 0x1550cc80dfd0>> |
| Traceback (most recent call last): |
| File "/home/hansirui_1st/jiayi/resist/setting3/safe_rlhf/utils.py", line 212, in wrapper |
| return func(*args, **kwargs) |
| ^^^^^^^^^^^^^^^^^^^^^ |
| File "/home/hansirui_1st/jiayi/resist/setting3/safe_rlhf/logger.py", line 183, in close |
| self.wandb.finish() |
| File "/aifs4su/hansirui_1st/miniconda3/envs/jy-resist/lib/python3.11/site-packages/wandb/sdk/wandb_run.py", line 406, in wrapper |
| return func(self, *args, **kwargs) |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
| File "/aifs4su/hansirui_1st/miniconda3/envs/jy-resist/lib/python3.11/site-packages/wandb/sdk/wandb_run.py", line 503, in wrapper |
| return func(self, *args, **kwargs) |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
| File "/aifs4su/hansirui_1st/miniconda3/envs/jy-resist/lib/python3.11/site-packages/wandb/sdk/wandb_run.py", line 451, in wrapper |
| return func(self, *args, **kwargs) |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
| File "/aifs4su/hansirui_1st/miniconda3/envs/jy-resist/lib/python3.11/site-packages/wandb/sdk/wandb_run.py", line 2309, in finish |
| return self._finish(exit_code) |
| ^^^^^^^^^^^^^^^^^^^^^^^ |
| File "/aifs4su/hansirui_1st/miniconda3/envs/jy-resist/lib/python3.11/site-packages/wandb/sdk/wandb_run.py", line 406, in wrapper |
| return func(self, *args, **kwargs) |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
| File "/aifs4su/hansirui_1st/miniconda3/envs/jy-resist/lib/python3.11/site-packages/wandb/sdk/wandb_run.py", line 2337, in _finish |
| self._atexit_cleanup(exit_code=exit_code) |
| File "/aifs4su/hansirui_1st/miniconda3/envs/jy-resist/lib/python3.11/site-packages/wandb/sdk/wandb_run.py", line 2550, in _atexit_cleanup |
| self._on_finish() |
| File "/aifs4su/hansirui_1st/miniconda3/envs/jy-resist/lib/python3.11/site-packages/wandb/sdk/wandb_run.py", line 2806, in _on_finish |
| wait_with_progress( |
| File "/aifs4su/hansirui_1st/miniconda3/envs/jy-resist/lib/python3.11/site-packages/wandb/sdk/mailbox/wait_with_progress.py", line 24, in wait_with_progress |
| return wait_all_with_progress( |
| ^^^^^^^^^^^^^^^^^^^^^^^ |
| File "/aifs4su/hansirui_1st/miniconda3/envs/jy-resist/lib/python3.11/site-packages/wandb/sdk/mailbox/wait_with_progress.py", line 87, in wait_all_with_progress |
| return asyncio_compat.run(progress_loop_with_timeout) |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
| File "/aifs4su/hansirui_1st/miniconda3/envs/jy-resist/lib/python3.11/site-packages/wandb/sdk/lib/asyncio_compat.py", line 27, in run |
| future = executor.submit(runner.run, fn) |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
| File "/aifs4su/hansirui_1st/miniconda3/envs/jy-resist/lib/python3.11/concurrent/futures/thread.py", line 169, in submit |
| raise RuntimeError('cannot schedule new futures after ' |
| RuntimeError: cannot schedule new futures after interpreter shutdown |
|
|