Large-Scale Machine Learning on Debugging Machine Learning Systems

Authors

  • K. Ravikumar  Assistant Professor, Department of Computer science, Tamil University (Established by the Govt.of.Tamilnadu), Thanjavur, Tamil Nadu, India
  • M. Maheswaran  Research Scholar, Department of Computer Science, Tamil University, Thanjavur, Tamil Nadu, India

DOI:

https://doi.org//10.32628/CSEIT195396

Keywords:

Machine Learning, Algorithms, Pseudo Code, Debugging.

Abstract

A computation indicated applying Tensor Movement may be accomplished with minimum modify on a wide selection of heterogeneous methods, including cellular devices such as for example devices and pills around large-scale spread methods of a huge selection of products and 1000s of computational units such as for example GPU cards. Even with arrangement, it's frequent to find out restrictions of the design or improvements in the goal notion that necessitate improvements to working out information and parameters. But, by nowadays, there's number frequent knowledge by what these iterations contain, or what debugging resources are required to help the investigative process. As more information becomes accessible, more formidable issues may be tackled. Consequently, device understanding is commonly utilized in pc technology and different fields. But, establishing effective device understanding programs involves an amazing level of "dark art" that's difficult to find in textbooks. This short article summarizes a dozen critical classes that device understanding scientists and practitioners have learned. These calculations are useful for numerous applications like information mining, picture running, predictive analytics, etc. to call a few. The key benefit of applying device understanding is that, when an algorithm finds what direction to go with information, it may do their function automatically.

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Published

2019-06-30

Issue

Section

Research Articles

How to Cite

[1]
K. Ravikumar, M. Maheswaran, " Large-Scale Machine Learning on Debugging Machine Learning Systems, IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 5, Issue 3, pp.355-360, May-June-2019. Available at doi : https://doi.org/10.32628/CSEIT195396