English

A Cost-based Optimizer for Gradient Descent Optimization

Databases 2017-03-28 v1

Abstract

As the use of machine learning (ML) permeates into diverse application domains, there is an urgent need to support a declarative framework for ML. Ideally, a user will specify an ML task in a high-level and easy-to-use language and the framework will invoke the appropriate algorithms and system configurations to execute it. An important observation towards designing such a framework is that many ML tasks can be expressed as mathematical optimization problems, which take a specific form. Furthermore, these optimization problems can be efficiently solved using variations of the gradient descent (GD) algorithm. Thus, to decouple a user specification of an ML task from its execution, a key component is a GD optimizer. We propose a cost-based GD optimizer that selects the best GD plan for a given ML task. To build our optimizer, we introduce a set of abstract operators for expressing GD algorithms and propose a novel approach to estimate the number of iterations a GD algorithm requires to converge. Extensive experiments on real and synthetic datasets show that our optimizer not only chooses the best GD plan but also allows for optimizations that achieve orders of magnitude performance speed-up.

Keywords

Cite

@article{arxiv.1703.09193,
  title  = {A Cost-based Optimizer for Gradient Descent Optimization},
  author = {Zoi Kaoudi and Jorge-Arnulfo Quiané-Ruiz and Saravanan Thirumuruganathan and Sanjay Chawla and Divy Agrawal},
  journal= {arXiv preprint arXiv:1703.09193},
  year   = {2017}
}

Comments

Accepted at SIGMOD 2017