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Utilities for partitioning large neural networks into sequential layers across multiple GPUs to enable pipeline-parallel training.
Distinguishing note: Specifically addresses pipeline-based model partitioning, distinct from data or tensor parallelism strategies.
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DeepSpeed is a high-performance library designed to scale deep learning model training and inference across massive clusters of GPUs and compute nodes. It provides a comprehensive suite of tools for distributed training, enabling the execution of models that exceed the memory capacity of single devices through advanced parameter partitioning, pipeline-based model parallelism, and memory-efficient state offloading. The framework distinguishes itself through specialized communication-efficient optimizers and hardware-aware acceleration techniques. By utilizing gradient compression, quantization
The framework enables efficient pipeline parallel training by partitioning large neural networks across multiple GPUs as a sequential list of layers.