一种基于测试和调试过程中程序员状态转换的程序员性能度量

Y. Takada, Ken-ichi Matsumoto, K. Torii
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引用次数: 11

摘要

为了组织和管理软件开发团队,基于可靠和容易收集的数据来评估每个程序员的能力是很重要的。提出了一种自动监控程序员活动的系统,并提出了一种基于系统监测数据的程序员调试性能度量方法。该系统通过监控和分析程序员的按键,实时自动将程序员的活动分为三类(编译、程序执行和程序修改)。结果输出是被监视活动的时间序列。我们提出的度量是每个故障的平均调试时间长度D,由系统监测的数据序列估计。为了估计每个故障的调试时间,我们引入了一个测试和调试过程模型。过程模型具有与程序修改的平均长度d和程序修改完全修复故障的概率r相关的参数。通过考虑r和d,可以高精度地估计每个故障的调试时间。利用极大似然估计方法从监测的数据序列中计算模型参数d和r
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A programmer performance measure based on programmer state transitions in testing and debugging process
To organize and manage software development teams, it as important to evaluate the capability of each programmer based on reliable and easily collected data. We present a system which automatically monitors programmer activities, and propose a programmer debugging performance measure based on data monitored by the system. The system automatically categorizes programmer activity in real time into three types (compilation, program execution, and program modification) by monitoring and analyzing key strokes of a programmer. The resulting outputs are the time sequences of monitored activities. The measure we propose is the average length of debugging time per fault, D, estimated from the data sequences monitored by the system. To estimate the debugging time per fault, we introduce a testing and debugging process model. The process model has parameters associated with the average length of a program modification, d, and the probability of a fault being fixed completely by a program modification, r. By taking account of r as well as d, the debugging time per fault can be estimated with high accuracy. The model parameters, such as d and r, are computed from the monitored data sequences by using a maximum likelihood estimation method.<>
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