软件测试
软件工程
质量(理念)
软件质量
计算机科学
软件
验证和确认
软件开发
工程类
操作系统
运营管理
哲学
认识论
作者
Tafline Ramos,Amanda Dean,David McGregor
出处
期刊:Authorea - Authorea
日期:2024-08-25
被引量:1
标识
DOI:10.22541/au.172457385.51893657/v1
摘要
With organizations seeking faster, cheaper, and smarter ways of delivering higher quality software, many are looking towards generative artificial intelligence (AI) to drive efficiencies and innovation throughout the software development lifecycle. However, generative AI can suffer from several fundamental issues, including a lack of traceability in concept generation and decision making, the potential for making incorrect inferences (hallucinations), shortcomings in response quality, and bias. Quality engineering (QE) has long been utilized to enable more efficient and effective delivery of higher quality software. A core aspect of QE is adopting quality models to support various lifecycle practices, including requirements definition, quality risk assessments and testing. In this position paper, we introduce the application of QE to AI systems, consider shortcomings in existing AI quality models from the International Organization for Standardization (ISO), and propose extensions to ISO models based on the results of a survey. We also reflect on skills that IT graduates may need in the future, to support delivery of better-quality AI.
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