LGCVDCJun 7, 2017

Comparative Analysis of Open Source Frameworks for Machine Learning with Use Case in Single-Threaded and Multi-Threaded Modes

arXiv:1706.02248v128 citationsHas Code
Originality Synthesis-oriented
AI Analysis

This is an incremental analysis for developers choosing ML frameworks, focusing on practical performance comparisons.

The paper compared TensorFlow, Deep Learning4j, and H2O frameworks, analyzing their features and performance on the MNIST dataset in single-threaded and multi-threaded modes, but did not report specific numerical results.

The basic features of some of the most versatile and popular open source frameworks for machine learning (TensorFlow, Deep Learning4j, and H2O) are considered and compared. Their comparative analysis was performed and conclusions were made as to the advantages and disadvantages of these platforms. The performance tests for the de facto standard MNIST data set were carried out on H2O framework for deep learning algorithms designed for CPU and GPU platforms for single-threaded and multithreaded modes of operation.

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