huggingface-accelerate
HuggingFace Accelerate - Unified Distributed Training
Quick start
Accelerate simplifies distributed training to 4 lines of code.
Installation:
pip install accelerate
Convert PyTorch script (4 lines):
import torch
+ from accelerate import Accelerator
+ accelerator = Accelerator()
model = torch.nn.Transformer()
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