Affiliation:
1. Luxembourg Institute of Science and Technology, Luxembourg
2. Goodyear Innovation Center, Luxembourg
Abstract
Python has become the prime language for application development in the data science and machine learning domains. However, data scientists are not necessarily experienced programmers. Although Python lets them quickly implement their algorithms, when moving at scale, computation efficiency becomes inevitable. Thus, harnessing high-performance devices such as multi-core processors and graphical processing units to their potential is generally not trivial. The present narrative survey can be thought of as a reference document for such practitioners to help them make their way in the wealth of tools and techniques available for the Python language. Our document revolves around user scenarios, which are meant to cover most situations they may face. We believe that this document may also be of practical use to tool developers, who may use our work to identify potential lacks in existing tools and help them motivate their contributions.
Publisher
Association for Computing Machinery (ACM)
Subject
General Computer Science,Theoretical Computer Science
Reference87 articles.
1. TensorFlow: Large-scale machine learning on heterogeneous distributed systems;Abadi Martín;CoRR,2016
2. HOPE: A Python just-in-time compiler for astrophysical computations
3. A performance portability framework for Python
4. arXiv e-prints arXiv:1605.02688 2016 Theano: A Python framework for fast computation of mathematical expressions
5. PyPacho: A Python library that implements parallel basic operations on GPUs
Cited by
2 articles.
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