[03/11 02:10:46 libai]: Rank of current process: 0. World size: 8 [03/11 02:10:46 libai]: Command line arguments: Namespace(config_file='configs/swin_imagenet.py', eval_only=False, fast_dev_run=False, opts=['model.cfg.hidden_dropout_prob=0.1', 'model.cfg.attention_probs_dropout_prob=0.1', 'model.cfg.bias_dropout_fusion=true', 'model.cfg.hidden_layers=12', 'model.cfg.hidden_size=768', 'model.cfg.num_attention_heads=12', 'model.cfg.intermediate_size=3072', 'model.cfg.ffn_hidden_size=3072', 'model.cfg.head_size=64', 'graph.enabled=true', 'train.dist.pipeline_num_layers=12', 'train.train_micro_batch_size=128', 'train.global_batch_size=512', 'train.dist.tensor_parallel_size=2', 'train.dist.pipeline_parallel_size=1', 'train.amp.enabled=true', 'train.activation_checkpoint.enabled=true', 'train.num_accumulation_steps=1', 'train.evaluation.enabled=false', 'train.train_iter=220', 'train.train_epoch=0', 'train.log_period=100', 'train.zero_optimization.enabled=true', 'train.zero_optimization.stage=2', 'train.load_weight=', 'train.output_dir=test_logs/oneflow-28/NVIDIA_GeForce_RTX_3080_Ti/1ea2bb7/LibAI_swin_imagenet_graph_nl12_nah12_hs768_FP16_actrue_DP4_MP2_PP1_zerotrue_stage2_mbs128_gbs512_acc1_1n8g'], resume=False) [03/11 02:10:46 libai]: Contents of args.config_file=configs/swin_imagenet.py: from libai.config import LazyCall from .common.models.swin.swin_tiny_patch4_window7_224 import model from .common.models.graph import graph from .common.train import train from .common.optim import optim from .common.data.imagenet import dataloader from flowvision.data import Mixup from flowvision.loss.cross_entropy import SoftTargetCrossEntropy # Refine data path to imagenet dataloader.train.dataset[0].root = "/ssd/dataset/ImageNet/extract" dataloader.test[0].dataset.root = "/ssd/dataset/ImageNet/extract" # Add Mixup Func dataloader.train.mixup_func = LazyCall(Mixup)(  mixup_alpha=0.8,  cutmix_alpha=1.0,  prob=1.0,  switch_prob=0.5,  mode="batch",  num_classes=1000, ) # Refine model cfg for vit training on imagenet model.cfg.num_classes = 1000 model.cfg.loss_func = SoftTargetCrossEntropy() # Refine optimizer cfg for vit model optim.lr = 1e-3 optim.eps = 1e-8 optim.weight_decay = 0.05 optim.params.clip_grad_max_norm = None optim.params.clip_grad_norm_type = None # Refine train cfg for vit model train.train_micro_batch_size = 128 train.test_micro_batch_size = 128 train.train_epoch = 300 train.warmup_ratio = 20 / 300 train.eval_period = 1562 train.log_period = 100 # Scheduler train.scheduler.warmup_factor = 0.001 train.scheduler.alpha = 0.01 train.scheduler.warmup_method = "linear" # Set fp16 ON train.amp.enabled = True [03/11 02:10:46 libai]: Full config saved to test_logs/oneflow-28/NVIDIA_GeForce_RTX_3080_Ti/1ea2bb7/LibAI_swin_imagenet_graph_nl12_nah12_hs768_FP16_actrue_DP4_MP2_PP1_zerotrue_stage2_mbs128_gbs512_acc1_1n8g/config.yaml [03/11 02:10:46 lb.engine.default]: > compiling dataset index builder ... make: Entering directory '/ssd/home/ouyangyu/libai_week_test/libai/libai/data/data_utils' make: Nothing to be done for 'default'. make: Leaving directory '/ssd/home/ouyangyu/libai_week_test/libai/libai/data/data_utils' [03/11 02:10:46 lb.engine.default]: >>> done with dataset index builder. Compilation time: 0.061 seconds [03/11 02:10:46 lb.engine.default]: >>> done with compiling. Compilation time: 0.063 seconds [03/11 02:10:46 lb.engine.default]: Prepare training, validating, testing set [03/11 02:10:50 lb.engine.default]: Prepare testing set [03/11 02:11:00 lb.engine.default]: Auto-scaling the config to train.train_iter=220, train.warmup_iter=15 [03/11 02:11:00 libai]: > Start building model... W20230311 02:11:03.087226 3231009 eager_local_op_interpreter.cpp:256] Casting a local tensor to a global tensor with Broadcast sbp will modify the data of input! If you want to keep the input local tensor unchanged, please set the arg copy to True. [03/11 02:11:04 lb.engine.default]: Model: SwinTransformer( (patch_embed): PatchEmbed( (proj): Conv2d(3, 96, kernel_size=(4, 4), stride=(4, 4)) (norm): LayerNorm((96,), eps=1e-05, elementwise_affine=True) ) (pos_drop): Dropout(p=0.0, inplace=False) (layers): ModuleList( (0): BasicLayer( (blocks): ModuleList( (0): SwinTransformerBlock( (norm1): LayerNorm((96,), eps=1e-05, elementwise_affine=True) (attn): WindowAttention( (qkv): Linear1D(in_features=96, out_features=288, bias=True, parallel=data) (attn_drop): Dropout(p=0.0, inplace=False) (proj): Linear1D(in_features=96, out_features=96, bias=True, parallel=data) (proj_drop): Dropout(p=0.0, inplace=False) (softmax): Softmax(dim=-1) ) (drop_path): Identity() (norm2): LayerNorm((96,), eps=1e-05, elementwise_affine=True) (mlp): MLP( bias_gelu_fusion=True, bias_dropout_fusion=True, dropout=0.0 (dense_h_to_4h): Linear1D(in_features=96, out_features=384, bias=True, parallel=col) (dense_4h_to_h): Linear1D(in_features=384, out_features=96, bias=True, parallel=row) ) ) (1): SwinTransformerBlock( (norm1): LayerNorm((96,), eps=1e-05, elementwise_affine=True) (attn): WindowAttention( (qkv): Linear1D(in_features=96, out_features=288, bias=True, parallel=data) (attn_drop): Dropout(p=0.0, inplace=False) (proj): Linear1D(in_features=96, out_features=96, bias=True, parallel=data) (proj_drop): Dropout(p=0.0, inplace=False) (softmax): Softmax(dim=-1) ) (drop_path): DropPath() (norm2): LayerNorm((96,), eps=1e-05, elementwise_affine=True) (mlp): MLP( bias_gelu_fusion=True, bias_dropout_fusion=True, dropout=0.0 (dense_h_to_4h): Linear1D(in_features=96, out_features=384, bias=True, parallel=col) (dense_4h_to_h): Linear1D(in_features=384, out_features=96, bias=True, parallel=row) ) ) ) (downsample): PatchMerging( (reduction): Linear1D(in_features=384, out_features=192, bias=False, parallel=data) (norm): LayerNorm((384,), eps=1e-05, elementwise_affine=True) ) ) (1): BasicLayer( (blocks): ModuleList( (0): SwinTransformerBlock( (norm1): LayerNorm((192,), eps=1e-05, elementwise_affine=True) (attn): WindowAttention( (qkv): Linear1D(in_features=192, out_features=576, bias=True, parallel=data) (attn_drop): Dropout(p=0.0, inplace=False) (proj): Linear1D(in_features=192, out_features=192, bias=True, parallel=data) (proj_drop): Dropout(p=0.0, inplace=False) (softmax): Softmax(dim=-1) ) (drop_path): DropPath() (norm2): LayerNorm((192,), eps=1e-05, elementwise_affine=True) (mlp): MLP( bias_gelu_fusion=True, bias_dropout_fusion=True, dropout=0.0 (dense_h_to_4h): Linear1D(in_features=192, out_features=768, bias=True, parallel=col) (dense_4h_to_h): Linear1D(in_features=768, out_features=192, bias=True, parallel=row) ) ) (1): SwinTransformerBlock( (norm1): LayerNorm((192,), eps=1e-05, elementwise_affine=True) (attn): WindowAttention( (qkv): Linear1D(in_features=192, out_features=576, bias=True, parallel=data) (attn_drop): Dropout(p=0.0, inplace=False) (proj): Linear1D(in_features=192, out_features=192, bias=True, parallel=data) (proj_drop): Dropout(p=0.0, inplace=False) (softmax): Softmax(dim=-1) ) (drop_path): DropPath() (norm2): LayerNorm((192,), eps=1e-05, elementwise_affine=True) (mlp): MLP( bias_gelu_fusion=True, bias_dropout_fusion=True, dropout=0.0 (dense_h_to_4h): Linear1D(in_features=192, out_features=768, bias=True, parallel=col) (dense_4h_to_h): Linear1D(in_features=768, out_features=192, bias=True, parallel=row) ) ) ) (downsample): PatchMerging( (reduction): Linear1D(in_features=768, out_features=384, bias=False, parallel=data) (norm): LayerNorm((768,), eps=1e-05, elementwise_affine=True) ) ) (2): BasicLayer( (blocks): ModuleList( (0): SwinTransformerBlock( (norm1): LayerNorm((384,), eps=1e-05, elementwise_affine=True) (attn): WindowAttention( (qkv): Linear1D(in_features=384, out_features=1152, bias=True, parallel=data) (attn_drop): Dropout(p=0.0, inplace=False) (proj): Linear1D(in_features=384, out_features=384, bias=True, parallel=data) (proj_drop): Dropout(p=0.0, inplace=False) (softmax): Softmax(dim=-1) ) (drop_path): DropPath() (norm2): LayerNorm((384,), eps=1e-05, elementwise_affine=True) (mlp): MLP( bias_gelu_fusion=True, bias_dropout_fusion=True, dropout=0.0 (dense_h_to_4h): Linear1D(in_features=384, out_features=1536, bias=True, parallel=col) (dense_4h_to_h): Linear1D(in_features=1536, out_features=384, bias=True, parallel=row) ) ) (1): SwinTransformerBlock( (norm1): LayerNorm((384,), eps=1e-05, elementwise_affine=True) (attn): WindowAttention( (qkv): Linear1D(in_features=384, out_features=1152, bias=True, parallel=data) (attn_drop): Dropout(p=0.0, inplace=False) (proj): Linear1D(in_features=384, out_features=384, bias=True, parallel=data) (proj_drop): Dropout(p=0.0, inplace=False) (softmax): Softmax(dim=-1) ) (drop_path): DropPath() (norm2): LayerNorm((384,), eps=1e-05, elementwise_affine=True) (mlp): MLP( bias_gelu_fusion=True, bias_dropout_fusion=True, dropout=0.0 (dense_h_to_4h): Linear1D(in_features=384, out_features=1536, bias=True, parallel=col) (dense_4h_to_h): Linear1D(in_features=1536, out_features=384, bias=True, parallel=row) ) ) (2): SwinTransformerBlock( (norm1): LayerNorm((384,), eps=1e-05, elementwise_affine=True) (attn): WindowAttention( (qkv): Linear1D(in_features=384, out_features=1152, bias=True, parallel=data) (attn_drop): Dropout(p=0.0, inplace=False) (proj): Linear1D(in_features=384, out_features=384, bias=True, parallel=data) (proj_drop): Dropout(p=0.0, inplace=False) (softmax): Softmax(dim=-1) ) (drop_path): DropPath() (norm2): LayerNorm((384,), eps=1e-05, elementwise_affine=True) (mlp): MLP( bias_gelu_fusion=True, bias_dropout_fusion=True, dropout=0.0 (dense_h_to_4h): Linear1D(in_features=384, out_features=1536, bias=True, parallel=col) (dense_4h_to_h): Linear1D(in_features=1536, out_features=384, bias=True, parallel=row) ) ) (3): SwinTransformerBlock( (norm1): LayerNorm((384,), eps=1e-05, elementwise_affine=True) (attn): WindowAttention( (qkv): Linear1D(in_features=384, out_features=1152, bias=True, parallel=data) (attn_drop): Dropout(p=0.0, inplace=False) (proj): Linear1D(in_features=384, out_features=384, bias=True, parallel=data) (proj_drop): Dropout(p=0.0, inplace=False) (softmax): Softmax(dim=-1) ) (drop_path): DropPath() (norm2): LayerNorm((384,), eps=1e-05, elementwise_affine=True) (mlp): MLP( bias_gelu_fusion=True, bias_dropout_fusion=True, dropout=0.0 (dense_h_to_4h): Linear1D(in_features=384, out_features=1536, bias=True, parallel=col) (dense_4h_to_h): Linear1D(in_features=1536, out_features=384, bias=True, parallel=row) ) ) (4): SwinTransformerBlock( (norm1): LayerNorm((384,), eps=1e-05, elementwise_affine=True) (attn): WindowAttention( (qkv): Linear1D(in_features=384, out_features=1152, bias=True, parallel=data) (attn_drop): Dropout(p=0.0, inplace=False) (proj): Linear1D(in_features=384, out_features=384, bias=True, parallel=data) (proj_drop): Dropout(p=0.0, inplace=False) (softmax): Softmax(dim=-1) ) (drop_path): DropPath() (norm2): LayerNorm((384,), eps=1e-05, elementwise_affine=True) (mlp): MLP( bias_gelu_fusion=True, bias_dropout_fusion=True, dropout=0.0 (dense_h_to_4h): Linear1D(in_features=384, out_features=1536, bias=True, parallel=col) (dense_4h_to_h): Linear1D(in_features=1536, out_features=384, bias=True, parallel=row) ) ) (5): SwinTransformerBlock( (norm1): LayerNorm((384,), eps=1e-05, elementwise_affine=True) (attn): WindowAttention( (qkv): Linear1D(in_features=384, out_features=1152, bias=True, parallel=data) (attn_drop): Dropout(p=0.0, inplace=False) (proj): Linear1D(in_features=384, out_features=384, bias=True, parallel=data) (proj_drop): Dropout(p=0.0, inplace=False) (softmax): Softmax(dim=-1) ) (drop_path): DropPath() (norm2): LayerNorm((384,), eps=1e-05, elementwise_affine=True) (mlp): MLP( bias_gelu_fusion=True, bias_dropout_fusion=True, dropout=0.0 (dense_h_to_4h): Linear1D(in_features=384, out_features=1536, bias=True, parallel=col) (dense_4h_to_h): Linear1D(in_features=1536, out_features=384, bias=True, parallel=row) ) ) ) (downsample): PatchMerging( (reduction): Linear1D(in_features=1536, out_features=768, bias=False, parallel=data) (norm): LayerNorm((1536,), eps=1e-05, elementwise_affine=True) ) ) (3): BasicLayer( (blocks): ModuleList( (0): SwinTransformerBlock( (norm1): LayerNorm((768,), eps=1e-05, elementwise_affine=True) (attn): WindowAttention( (qkv): Linear1D(in_features=768, out_features=2304, bias=True, parallel=data) (attn_drop): Dropout(p=0.0, inplace=False) (proj): Linear1D(in_features=768, out_features=768, bias=True, parallel=data) (proj_drop): Dropout(p=0.0, inplace=False) (softmax): Softmax(dim=-1) ) (drop_path): DropPath() (norm2): LayerNorm((768,), eps=1e-05, elementwise_affine=True) (mlp): MLP( bias_gelu_fusion=True, bias_dropout_fusion=True, dropout=0.0 (dense_h_to_4h): Linear1D(in_features=768, out_features=3072, bias=True, parallel=col) (dense_4h_to_h): Linear1D(in_features=3072, out_features=768, bias=True, parallel=row) ) ) (1): SwinTransformerBlock( (norm1): LayerNorm((768,), eps=1e-05, elementwise_affine=True) (attn): WindowAttention( (qkv): Linear1D(in_features=768, out_features=2304, bias=True, parallel=data) (attn_drop): Dropout(p=0.0, inplace=False) (proj): Linear1D(in_features=768, out_features=768, bias=True, parallel=data) (proj_drop): Dropout(p=0.0, inplace=False) (softmax): Softmax(dim=-1) ) (drop_path): DropPath() (norm2): LayerNorm((768,), eps=1e-05, elementwise_affine=True) (mlp): MLP( bias_gelu_fusion=True, bias_dropout_fusion=True, dropout=0.0 (dense_h_to_4h): Linear1D(in_features=768, out_features=3072, bias=True, parallel=col) (dense_4h_to_h): Linear1D(in_features=3072, out_features=768, bias=True, parallel=row) ) ) ) ) ) (norm): LayerNorm((768,), eps=1e-05, elementwise_affine=True) (avgpool): AdaptiveAvgPool1d() (head): Linear1D(in_features=768, out_features=1000, bias=True, parallel=data) (loss_func): SoftTargetCrossEntropy() ) [03/11 02:11:04 libai]: >>> done with building model. Building time: 4.598 seconds [03/11 02:11:04 lb.engine.trainer]: Starting training from iteration 0 [03/11 02:11:04 lb.models.utils.graph_base]: Start compiling the train graph which may take some time. Please wait for a moment ... timestamp, name, driver_version, utilization.gpu [%], utilization.memory [%], memory.total [MiB], memory.free [MiB], memory.used [MiB] timestamp, name, driver_version, utilization.gpu [%], utilization.memory [%], memory.total [MiB], memory.free [MiB], memory.used [MiB] 2023/03/11 02:12:58.886, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 31 %, 4 %, 12288 MiB, 9217 MiB, 2836 MiB 2023/03/11 02:12:58.892, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 31 %, 4 %, 12288 MiB, 9217 MiB, 2836 MiB 2023/03/11 02:12:58.897, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 95 %, 21 %, 12288 MiB, 9227 MiB, 2826 MiB timestamp, name, driver_version, utilization.gpu [%], utilization.memory [%], memory.total [MiB], memory.free [MiB], memory.used [MiB] 2023/03/11 02:12:58.901, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 95 %, 21 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.907, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 28 %, 4 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.908, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 31 %, 4 %, 12288 MiB, 9217 MiB, 2836 MiB 2023/03/11 02:12:58.910, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 28 %, 4 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.921, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 69 %, 13 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.925, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 95 %, 21 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.925, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 69 %, 13 %, 12288 MiB, 9227 MiB, 2826 MiB timestamp, name, driver_version, utilization.gpu [%], utilization.memory [%], memory.total [MiB], memory.free [MiB], memory.used [MiB] timestamp, name, driver_version, utilization.gpu [%], utilization.memory [%], memory.total [MiB], memory.free [MiB], memory.used [MiB] 2023/03/11 02:12:58.928, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 54 %, 18 %, 12288 MiB, 9227 MiB, 2826 MiB timestamp, name, driver_version, utilization.gpu [%], utilization.memory [%], memory.total [MiB], memory.free [MiB], memory.used [MiB] 2023/03/11 02:12:58.931, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 28 %, 4 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.931, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 54 %, 18 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.936, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 31 %, 4 %, 12288 MiB, 9217 MiB, 2836 MiB 2023/03/11 02:12:58.936, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 31 %, 4 %, 12288 MiB, 9217 MiB, 2836 MiB 2023/03/11 02:12:58.939, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 40 %, 4 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.943, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 31 %, 4 %, 12288 MiB, 9217 MiB, 2836 MiB 2023/03/11 02:12:58.945, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 69 %, 13 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.945, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 40 %, 4 %, 12288 MiB, 9227 MiB, 2826 MiB timestamp, name, driver_version, utilization.gpu [%], utilization.memory [%], memory.total [MiB], memory.free [MiB], memory.used [MiB] 2023/03/11 02:12:58.948, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 95 %, 21 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.949, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 95 %, 21 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.950, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 98 %, 23 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.954, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 54 %, 18 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.953, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 95 %, 21 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.956, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 98 %, 23 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.956, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 100 %, 24 %, 12288 MiB, 9217 MiB, 2836 MiB 2023/03/11 02:12:58.958, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 100 %, 23 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.960, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 100 %, 23 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.962, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 58 %, 10 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.968, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 40 %, 4 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.969, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 100 %, 23 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.971, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 58 %, 10 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.975, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 95 %, 21 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.979, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 69 %, 13 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.980, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 69 %, 13 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.986, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 98 %, 23 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.987, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 69 %, 13 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.989, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 100 %, 23 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.995, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 54 %, 18 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:58.996, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 54 %, 18 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.001, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 58 %, 10 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.002, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 54 %, 18 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.006, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 69 %, 13 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.007, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 92 %, 26 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.009, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 92 %, 26 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.017, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 92 %, 26 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.018, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 54 %, 18 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.022, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 98 %, 23 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.024, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 98 %, 23 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.029, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 98 %, 23 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.030, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 92 %, 26 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.034, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 100 %, 24 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.036, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 100 %, 24 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.044, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 98 %, 23 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.044, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 100 %, 24 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.051, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 100 %, 24 %, 12288 MiB, 9227 MiB, 2826 MiB timestamp, name, driver_version, utilization.gpu [%], utilization.memory [%], memory.total [MiB], memory.free [MiB], memory.used [MiB] 2023/03/11 02:12:59.438, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 86 %, 32 %, 12288 MiB, 9217 MiB, 2836 MiB 2023/03/11 02:12:59.439, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 100 %, 37 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.440, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 87 %, 33 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.441, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 99 %, 32 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.442, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 100 %, 36 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.443, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 75 %, 29 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.444, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 100 %, 35 %, 12288 MiB, 9227 MiB, 2826 MiB 2023/03/11 02:12:59.445, NVIDIA GeForce RTX 3080 Ti, 515.65.01, 56 %, 20 %, 12288 MiB, 9227 MiB, 2826 MiB [03/11 02:13:00 lb.utils.events]: eta: 0:01:21 iteration: 99/220 consumed_samples: 51200 total_loss: 6.949 time: 0.8701 s/iter data_time: 0.2465 s/iter total_throughput: 588.42 samples/s lr: 5.82e-04 [03/11 02:14:29 lb.utils.events]: eta: 0:00:13 iteration: 199/220 consumed_samples: 102400 total_loss: 6.933 time: 0.8815 s/iter data_time: 0.2258 s/iter total_throughput: 580.81 samples/s lr: 3.21e-05 [03/11 02:14:48 lb.utils.events]: eta: 0:00:00 iteration: 219/220 consumed_samples: 112640 total_loss: 6.928 time: 0.8871 s/iter data_time: 0.2969 s/iter total_throughput: 577.16 samples/s lr: 1.01e-05 [03/11 02:14:48 lb.engine.hooks]: Overall training speed: 218 iterations in 0:03:13 (0.8871 s / it) [03/11 02:14:48 lb.engine.hooks]: Total training time: 0:03:13 (0:00:00 on hooks) ***************************************** Setting OMP_NUM_THREADS environment variable for each process to be 1 in default, to avoid your system being overloaded, please further tune the variable for optimal performance in your application as needed. ***************************************** oneflow-version(git_commit)=0.9.1.dev20230309+cu117 oneflow-commit(git_commit)=1ea2bb7 oneflow-libai(git_commit)=50a973dc5de635b8613ad7666c073c763e238850