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Software engineering challenges for machine learning applications: A literature review

Fumihiro Kumeno

2020Intelligent Decision Technologies82 citationsDOIOpen Access PDF

Abstract

Machine learning techniques, especially deep learning, have achieved remarkable breakthroughs over the past decade. At present, machine learning applications are deployed in many fields. However, the outcomes of software engineering researches are not always easily utilized in the development and deployment of machine learning applications. The main reason for this difficulty is the many differences between machine learning applications and traditional information systems. Machine learning techniques are evolving rapidly, but face inherent technical and non-technical challenges that complicate their lifecycle activities. This review paper attempts to clarify the software engineering challenges for machine learning applications that either exist or potentially exist by conducting a systematic literature collection and by mapping the identified challenge topics to knowledge areas defined by the Software Engineering Body of Knowledge (Swebok).

Topics & Concepts

Software deploymentComputer scienceArtificial intelligenceMachine learningSoftware engineeringSoftwareProgramming languageAnomaly Detection Techniques and ApplicationsData Stream Mining TechniquesMachine Learning and Data Classification
Software engineering challenges for machine learning applications: A literature review | Litcius