预测多平台发布质量

Pete Rotella, Satyabrata Pradhan
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引用次数: 0

摘要

描述主要功能版本质量的一个困难是,许多版本是在几个平台上实现的,每个平台使用新功能的不同子集。此外,这些平台的性能期望和结果可能有很大的不同。为了在预测模型中充分描述整个版本,我们需要一个能够表示许多不同平台的健壮的客户体验度量。已经开发了几个多平台SWDPMH(每月每百万使用小时的软件缺陷)变体,试图预测发布的整体领域质量。除了预测整个版本的质量之外,我们还必须为业务单位提供指导,以纠正预计无法达到适当质量的版本,并提供关于如何修改实践以使后续版本达到适当质量的指导。已经开发了模型来预测MP-SWDPMH,并确定可能影响MP-SWDPMH的特定进程内驱动因素。此时,这些建模结果可以早在向客户发布之前的五到六个月就可用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting multi-platform release quality
One difficulty in characterizing the quality of a major feature release is that many releases are implemented on several platforms, with each platform using a different subset of the new features. Also, these platforms can have substantially different performance expectations and results. In order to characterize the entire release adequately in predictive models, we need a robust customer experience metric that is capable of representing many disparate platforms. Several multi-platform SWDPMH (software defects per million usage hours per month) variants have been developed in an attempt to anticipate a release's overall field quality. In addition to predicting the overall release quality, it is critical that we provide guidance to business units concerning remediation of releases predicted to not achieve adequate quality, and also provide guidance regarding how to modify practices so subsequent releases achieve adequate quality. Models have been developed to both predict MP-SWDPMH and to identify specific in-process drivers that likely influence MP-SWDPMH. At this time, these modeling results can be available as early as five or six months prior to release to the customers.
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