预测特定平台上发布的现场体验

Pete Rotella, Devesh Goyal, S. Chulani
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摘要

自2009年以来,每百万小时软件缺陷(SWDPMH)已经成为思科使用的主要客户体验度量标准,并以每年约100个产品系列为目标。SWDPMH被认为是至关重要的一个关键原因是,我们看到SWDPMH和软件客户满意度(SW CSAT)在广泛的产品和功能版本之间具有高度的相关性。因此,在软件发布给客户之前,尝试预测新版本的SWDPMH是很重要的,原因如下:·早期预警,一个主要的功能发布可能会在现场遇到重大的质量问题,这可能允许在功能和系统测试期间甚至之前对发布进行修复·SWDPMH的预测可以更好地规划后续的维护发布和推出策略·计算SWDPMH和功能量之间的权衡可以提供有关可接受的功能内容、测试工作、发布周期时间的指导,以及其他影响后续功能版本的关键参数。在过去的一年里,我们一直在努力提高我们在实地预测SWDPMH的能力。为此,我们开发了预测模型,用战略产品的主要特性版本测试了这些模型,并为开发、测试和发布管理团队提供了关于如何提高实现最佳SWDPMH水平的机会的指导。这项工作正在进行中,但目前有几个模型用于五个产品系列的生产模式,并取得了良好的效果。我们计划在明年增加几十个产品系列,以达到生产能力。
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Predicting field experience of releases on specific platforms
Since 2009, Software Defects Per Million Hours (SWDPMH) has been the primary customer experience metric used at Cisco, and is goaled on a yearly basis for about 100 product families. A key reason SWDPMH is considered to be of critical importance is that we see a high correlation between SWDPMH and Software Customer Satisfaction (SW CSAT) over a wide spectrum of products and feature releases. Therefore, it is important to try to anticipate SWDPMH for new releases before the software is released to customers, for several reasons: · Early warning that a major feature release is likely to experience substantial quality problems in the field may allow for remediation of the release during, or even prior to, function and system testing · Prediction of SWDPMH enables better planning for subsequent maintenance releases and rollout strategies · Calculating the tradeoffs between SWDPMH and feature volume can provide guidance concerning acceptable feature content, test effort, release cycle timing, and other key parameters affecting subsequent feature releases. Our efforts over the past year have been to enhance our ability to predict SWDPMH in the field. Toward this end, we have developed predictive models, tested the models with major feature releases for strategic products, and provided guidance to development, test, and release management teams on how to improve the chances of achieving best-in-class levels of SWDPMH. This work is ongoing, but several models are currently used in a production mode for five product families, with good results. We plan to achieve production capability with an additional several dozen product families over the next year.
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