HexiSeq optimizes sequence and head partitioning across mixed GPUs to improve long-context LLM training throughput by up to 1.72x in simulations.
Sppo: Efficient long-sequence llm training via adaptive sequence pipeline parallel offloading
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InfiniPipe proposes elastic pipeline parallelism and stage-aware chunk-level adaptive checkpointing to achieve 1.69x speedup over state-of-the-art for variable-length long-context LLM training.
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HexiSeq: Accommodating Long Context Training of LLMs over Heterogeneous Hardware
HexiSeq optimizes sequence and head partitioning across mixed GPUs to improve long-context LLM training throughput by up to 1.72x in simulations.
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InfiniPipe: Elastic Pipeline Parallelism for Efficient Variable-Length Long-Context LLM Training
InfiniPipe proposes elastic pipeline parallelism and stage-aware chunk-level adaptive checkpointing to achieve 1.69x speedup over state-of-the-art for variable-length long-context LLM training.