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September 18-19, 2024
San Francisco, California
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Note: The schedule is subject to change.

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Thursday September 19, 2024 4:45pm - 4:55pm PDT
We introduce dmx-compressor, d-Matrix's open-source LLM compression toolkit that is modular, robust, efficient, and user-friendly. It utilizes symbolic tracing and fx.Transformer for network compression while keeping the model a first-class citizen in PyTorch for the user, despite prevalent graph dynamism in LLMs. It achieves this by maintaining both the original nn.Module and a just-in-time (JIT) traced and transformed fx.GraphModule representation behind the scenes, in conjunction with an abstraction that cleanly decouples network compression from the original model graph definition. This design allows the FXIR to dynamically adapt to diverse forward call signatures and flow-control arguments throughout quantization-aware training and post-training quantization written in plain PyTorch, yielding a compressed FXIR fully compatible with application-level APIs like the Hugging Face pipeline. We also provide a graph visualizer based on fx.Interpreter for ease of debugging. We believe this project shall empower the community to build efficient LLMs for deployment on custom hardware accelerators and contribute to the PyTorch ecosystem.
Speakers
TW

Tristan Webb

d-Matrix Corporation
avatar for Zifei Xu

Zifei Xu

Senior Machine Learning Research Engineer, d-Matrix Corporation
Zifei is a Senior Machine Learning Research Engineer at d-Matrix. Her current work focuses on developing model quantization pipelines and efficient quantization algorithms. She graduated from Stanford University with a Master's degree in Computational & Mathematical Engineering and... Read More →
Thursday September 19, 2024 4:45pm - 4:55pm PDT
Room A

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