Model training anatomy
ã¢ãã«ãã¬ãŒãã³ã°ã®å¹çãåäžãããããã«é©çšã§ããããã©ãŒãã³ã¹æé©åãã¯ããã¯ãç解ããã«ã¯ããã¬ãŒãã³ã°äžã«GPUãã©ã®ããã«å©çšãããããããã³å®è¡ãããæäœã«å¿ããŠèšç®åŒ·åºŠãã©ã®ããã«å€åããããç解ããããšã圹ç«ã¡ãŸãã
ãŸãã¯ãGPUã®å©çšäŸãšã¢ãã«ã®ãã¬ãŒãã³ã°å®è¡ã«é¢ãã瀺åã«å¯ãäŸãæ¢æ±ããããšããå§ããŸãããããã¢ã³ã¹ãã¬ãŒã·ã§ã³ã®ããã«ãããã€ãã®ã©ã€ãã©ãªãã€ã³ã¹ããŒã«ããå¿ èŠããããŸã:
pip install transformers datasets accelerate nvidia-ml-py3
nvidia-ml-py3
ã©ã€ãã©ãªã¯ãPythonå
ããã¢ãã«ã®ã¡ã¢ãªäœ¿çšç¶æ³ãã¢ãã¿ãŒããããšãå¯èœã«ããŸãããããããã¿ãŒããã«ã§ã® nvidia-smi
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å ±ã«ã¢ã¯ã»ã¹ã§ããŸãã
ãããããããã€ãã®ãããŒããŒã¿ãäœæããŸãã100ãã30000ã®éã®ã©ã³ãã ãªããŒã¯ã³IDãšãåé¡åšã®ããã®ãã€ããªã©ãã«ã§ããåèšã§ã512ã®ã·ãŒã±ã³ã¹ããããããããã®é·ãã¯512ã§ãPyTorchãã©ãŒãããã® Dataset
ã«æ ŒçŽãããŸãã
>>> import numpy as np
>>> from datasets import Dataset
>>> seq_len, dataset_size = 512, 512
>>> dummy_data = {
... "input_ids": np.random.randint(100, 30000, (dataset_size, seq_len)),
... "labels": np.random.randint(0, 1, (dataset_size)),
... }
>>> ds = Dataset.from_dict(dummy_data)
>>> ds.set_format("pt")
Trainerã䜿çšããŠGPUå©çšçãšãã¬ãŒãã³ã°å®è¡ã®èŠçŽçµ±èšæ å ±ã衚瀺ããããã«ã2ã€ã®ãã«ããŒé¢æ°ãå®çŸ©ããŸãã
>>> from pynvml import *
>>> def print_gpu_utilization():
... nvmlInit()
... handle = nvmlDeviceGetHandleByIndex(0)
... info = nvmlDeviceGetMemoryInfo(handle)
... print(f"GPU memory occupied: {info.used//1024**2} MB.")
>>> def print_summary(result):
... print(f"Time: {result.metrics['train_runtime']:.2f}")
... print(f"Samples/second: {result.metrics['train_samples_per_second']:.2f}")
... print_gpu_utilization()
以äžã¯ãç¡æã®GPUã¡ã¢ãªããéå§ããŠããããšã確èªããŸãããïŒ
>>> print_gpu_utilization()
GPU memory occupied: 0 MB.
GPUã¡ã¢ãªãã¢ãã«ãèªã¿èŸŒãåã®ããã«å æãããŠããªãããã«èŠããŸãããããã䜿ãã®ãã·ã³ã§ã®ç¶æ³ã§ãªãå Žåã¯ãGPUã¡ã¢ãªã䜿çšããŠãããã¹ãŠã®ããã»ã¹ãåæ¢ããŠãã ããããã ãããã¹ãŠã®ç©ºãGPUã¡ã¢ãªããŠãŒã¶ãŒã䜿çšã§ããããã§ã¯ãããŸãããã¢ãã«ãGPUã«èªã¿èŸŒãŸãããšãã«ãŒãã«ãèªã¿èŸŒãŸãã1ã2GBã®ã¡ã¢ãªã䜿çšããããšããããŸãããããã©ãããããã確èªããããã«ãGPUã«å°ããªãã³ãœã«ãèªã¿èŸŒããšãã«ãŒãã«ãèªã¿èŸŒãŸããŸãã
>>> import torch
>>> torch.ones((1, 1)).to("cuda")
>>> print_gpu_utilization()
GPU memory occupied: 1343 MB.
ã«ãŒãã«ã ãã§1.3GBã®GPUã¡ã¢ãªã䜿çšããŠããããšãããããŸãã次ã«ãã¢ãã«ãã©ãã ãã®ã¹ããŒã¹ã䜿çšããŠããããèŠãŠã¿ãŸãããã
Load Model
ãŸããgoogle-bert/bert-large-uncased
ã¢ãã«ãèªã¿èŸŒã¿ãŸããã¢ãã«ã®éã¿ãçŽæ¥GPUã«èªã¿èŸŒãããšã§ãéã¿ã ããã©ãã ãã®ã¹ããŒã¹ã䜿çšããŠãããã確èªã§ããŸãã
>>> from transformers import AutoModelForSequenceClassification
>>> model = AutoModelForSequenceClassification.from_pretrained("google-bert/bert-large-uncased").to("cuda")
>>> print_gpu_utilization()
GPU memory occupied: 2631 MB.
ã¢ãã«ã®éã¿ã ãã§ãGPUã¡ã¢ãªã1.3 GB䜿çšããŠããããšãããããŸããæ£ç¢ºãªæ°å€ã¯ã䜿çšããŠããå
·äœçãªGPUã«äŸåããŸããæ°ããGPUã§ã¯ãã¢ãã«ã®éã¿ãæé©åãããæ¹æ³ã§èªã¿èŸŒãŸãããããã¢ãã«ã®äœ¿çšãé«éåããããšããããããã¢ãã«ãããå€ãã®ã¹ããŒã¹ãå æããããšããããŸããããŠãnvidia-smi
CLIãšåãçµæãåŸãããããç°¡åã«ç¢ºèªããããšãã§ããŸãã
nvidia-smi
Tue Jan 11 08:58:05 2022 +-----------------------------------------------------------------------------+ | NVIDIA-SMI 460.91.03 Driver Version: 460.91.03 CUDA Version: 11.2 | |-------------------------------+----------------------+----------------------+ | GPU Name Persistence-M| Bus-Id Disp.A | Volatile Uncorr. ECC | | Fan Temp Perf Pwr:Usage/Cap| Memory-Usage | GPU-Util Compute M. | | | | MIG M. | |===============================+======================+======================| | 0 Tesla V100-SXM2... On | 00000000:00:04.0 Off | 0 | | N/A 37C P0 39W / 300W | 2631MiB / 16160MiB | 0% Default | | | | N/A | +-------------------------------+----------------------+----------------------+ +-----------------------------------------------------------------------------+ | Processes: | | GPU GI CI PID Type Process name GPU Memory | | ID ID Usage | |=============================================================================| | 0 N/A N/A 3721 C ...nvs/codeparrot/bin/python 2629MiB | +-----------------------------------------------------------------------------+
ååãšåãæ°å€ãååŸãã16GBã®ã¡ã¢ãªãæèŒããV100 GPUã䜿çšããŠããããšãããããŸããããŠãã¢ãã«ã®ãã¬ãŒãã³ã°ãéå§ããGPUã¡ã¢ãªã®æ¶è²»ãã©ã®ããã«å€åãããã確èªããŠã¿ãŸãããããŸããããã€ãã®æšæºçãªãã¬ãŒãã³ã°åŒæ°ãèšå®ããŸã:
default_args = {
"output_dir": "tmp",
"evaluation_strategy": "steps",
"num_train_epochs": 1,
"log_level": "error",
"report_to": "none",
}
è€æ°ã®å®éšãå®è¡ããäºå®ãããå Žåãå®éšéã§ã¡ã¢ãªãé©åã«ã¯ãªã¢ããããã«ãå®éšã®éã« Python ã«ãŒãã«ãåèµ·åããŠãã ããã
Memory utilization at vanilla training
Trainer ã䜿çšããŠãGPU ããã©ãŒãã³ã¹ã®æé©åãã¯ããã¯ã䜿çšããã«ããããµã€ãº 4 ã§ã¢ãã«ããã¬ãŒãã³ã°ããŸãããïŒ
>>> from transformers import TrainingArguments, Trainer, logging
>>> logging.set_verbosity_error()
>>> training_args = TrainingArguments(per_device_train_batch_size=4, **default_args)
>>> trainer = Trainer(model=model, args=training_args, train_dataset=ds)
>>> result = trainer.train()
>>> print_summary(result)
Time: 57.82
Samples/second: 8.86
GPU memory occupied: 14949 MB.
æ¢ã«ãæ¯èŒçå°ããããããµã€ãºã§ããGPUã®ã»ãšãã©ã®ã¡ã¢ãªããã§ã«äœ¿çšãããŠããããšãããããŸãããããããã倧ããªããããµã€ãºã䜿çšããããšã¯ããã°ãã°ã¢ãã«ã®åæãéããªã£ãããæçµçãªæ§èœãåäžãããããããšããããŸãããããã£ãŠãçæ³çã«ã¯ãããããµã€ãºãã¢ãã«ã®èŠä»¶ã«åãããŠèª¿æŽãããã®ã§ãããGPUã®å¶éã«åãããŠèª¿æŽããå¿ èŠã¯ãããŸãããèå³æ·±ãããšã«ãã¢ãã«ã®ãµã€ãºãããã¯ããã«å€ãã®ã¡ã¢ãªã䜿çšããŠããŸãããªããããªãã®ããå°ãç解ããããã«ãã¢ãã«ã®æäœãšã¡ã¢ãªã®å¿ èŠæ§ãèŠãŠã¿ãŸãããã
Anatomy of Modelâs Operations
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Anatomy of Modelâs Memory
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