Snap ML: A Hierarchical Framework For Machine Learning

Authors:
Celestine Dünner IBM Research
Thomas Parnell IBM Research
Dimitrios Sarigiannis IBM Research
Nikolas Ioannou IBM Research
Andreea Anghel IBM Research
Gummadi Ravi IBM Systems
Madhusudanan Kandasamy IBM Systems
Haris Pozidis IBM Research

Introduction:

The authors describe a new software framework for fast training of generalized linear models.

Abstract:

We describe a new software framework for fast training of generalized linear models. The framework, named Snap Machine Learning (Snap ML), combines recent advances in machine learning systems and algorithms in a nested manner to reflect the hierarchical architecture of modern computing systems. We prove theoretically that such a hierarchical system can accelerate training in distributed environments where intra-node communication is cheaper than inter-node communication. Additionally, we provide a review of the implementation of Snap ML in terms of GPU acceleration, pipelining, communication patterns and software architecture, highlighting aspects that were critical for achieving high performance. We evaluate the performance of Snap ML in both single-node and multi-node environments, quantifying the benefit of the hierarchical scheme and the data streaming functionality, and comparing with other widely-used machine learning software frameworks. Finally, we present a logistic regression benchmark on the Criteo Terabyte Click Logs dataset and show that Snap ML achieves the same test loss an order of magnitude faster than any of the previously reported results, including those obtained using TensorFlow and scikit-learn.

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