Constructing reusable knowledge for machine learning projects based on project practices

Author:

Takeuchi Hironori1,Imazaki Kota2,Kuno Noriyoshi3,Doi Takuo4,Motohashi Yosuke5

Affiliation:

1. Musashi University, Tokyo, Japan

2. Information-Technology Promotion Agency, Japan

3. Mitsubishi Electric Corporation, Japan

4. Digital Athlete, Japan

5. NEC Corporation, Japan

Abstract

Recently, machine learning (ML) techniques have been introduced into various domains. This study focuses on projects for the development of ML-based service systems in which ML techniques are applied to enterprise functions. In these projects, constructing reusable knowledge on projects that develop ML-based service systems is important to effectively implement such projects. Here, the collection of insights and development of architecture and design patterns for ML-based service systems are considered. We propose a method for collecting insights by referring to a development model based on project practices and developing patterns for ML projects as an enterprise architecture model. Through a practice, we attempt to collect insights as best practices and construct design patterns for ML projects using the proposed method.

Publisher

IOS Press

Subject

Artificial Intelligence,Computer Vision and Pattern Recognition,Human-Computer Interaction,Software

Reference24 articles.

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2. A Taxonomy of Software Engineering Challenges for Machine Learning Systems: An Empirical Investigation;Lwakatare;Proceedings of the 20th International Conference on Agile Software Development (XP),2019

3. Adoption and Effects of Software Engineering Best Practices in Machine Learning;Serban;Proceedings of the ACM/IEEE International Symposium on Empirical Software Engineering and Measurement,2020

4. Software Engineering for Machine Learning: A Case Study;Amershi;Proceedings of the 41st International Conference on Software Engineering,2019

5. The Emerging Role of Data Scientists on Software Development Teams;Kim;Proceedings of the 38th International Conference on Software Engineering,2016

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