Abstract:
With the fast advance of artificial intelligence technology and data-driven machine learning techniques, building high-quality AI-based software in different application ...Show MoreMetadata
Abstract:
With the fast advance of artificial intelligence technology and data-driven machine learning techniques, building high-quality AI-based software in different application domains is becoming a very hot research topic in both academic and industry communities. Today, many machine learning models and artificial technologies have been developed to build smart application systems based on multimedia inputs to achieve intelligent functional features, such as recommendation, object detection, classification, and prediction, natural language processing and translation, and so on. This brings strong demand in quality validation and assurance for AI software systems. Current research work seldom discusses AI software testing questions, challenges, and validation approaches with clear quality requirements and criteria. This paper focuses on AI software quality validation, including validation focuses, features, and process, and potential testing approaches. Moreover, it presents a test process and a classification-based test modeling for AI classification function testing. Finally, it discusses the challenges, issues, and needs in AI software testing.
Date of Conference: 04-09 April 2019
Date Added to IEEE Xplore: 06 May 2019
ISBN Information: