LGDCPFOct 20, 2021

A Data-Centric Optimization Framework for Machine Learning

arXiv:2110.10802v319 citations
Originality Incremental advance
AI Analysis

This work addresses the need for efficient training of arbitrary deep neural networks in research, though it appears incremental as it builds on existing optimization techniques.

The paper tackles the problem of performance optimization for diverse and novel deep neural networks by introducing a flexible, user-customizable pipeline based on data movement minimization, achieving competitive performance or speedups on ten different networks, including new opportunities in EfficientNet.

Rapid progress in deep learning is leading to a diverse set of quickly changing models, with a dramatically growing demand for compute. However, as frameworks specialize performance optimization to patterns in popular networks, they implicitly constrain novel and diverse models that drive progress in research. We empower deep learning researchers by defining a flexible and user-customizable pipeline for optimizing training of arbitrary deep neural networks, based on data movement minimization. The pipeline begins with standard networks in PyTorch or ONNX and transforms computation through progressive lowering. We define four levels of general-purpose transformations, from local intra-operator optimizations to global data movement reduction. These operate on a data-centric graph intermediate representation that expresses computation and data movement at all levels of abstraction, including expanding basic operators such as convolutions to their underlying computations. Central to the design is the interactive and introspectable nature of the pipeline. Every part is extensible through a Python API, and can be tuned interactively using a GUI. We demonstrate competitive performance or speedups on ten different networks, with interactive optimizations discovering new opportunities in EfficientNet.

Code Implementations1 repo
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