Benchmarking Machine Learning: How Fast Can Your Algorithms Go?

01/08/2021
by   Zeyu Ning, et al.
33

This paper is focused on evaluating the effect of some different techniques in machine learning speed-up, including vector caches, parallel execution, and so on. The following content will include some review of the previous approaches and our own experimental results.

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