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AI on your phone? Tim Dettmers on quantization of neural networks — #41

Manifold

CHAPTER

Improving Efficiency Through Quantization

The chapter discusses the concept of quantization in neural networks and its impact on improving efficiency. It explores how reducing the precision of matrix elements can still maintain performance, and highlights the importance of preserving information and accounting for outliers. The chapter also mentions the practical application of quantization in optimizing pre-trained models for faster hardware and improved inference speed.

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