A Novel Approach for Estimating Truck Factors
April 22, 2016 Β· Declared Dead Β· π IEEE International Conference on Program Comprehension
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Authors
Guilherme Avelino, Leonardo Passos, Andre Hora, Marco Tulio Valente
arXiv ID
1604.06766
Category
cs.SE: Software Engineering
Citations
129
Venue
IEEE International Conference on Program Comprehension
Last Checked
3 months ago
Abstract
Truck Factor (TF) is a metric proposed by the agile community as a tool to identify concentration of knowledge in software development environments. It states the minimal number of developers that have to be hit by a truck (or quit) before a project is incapacitated. In other words, TF helps to measure how prepared is a project to deal with developer turnover. Despite its clear relevance, few studies explore this metric. Altogether there is no consensus about how to calculate it, and no supporting evidence backing estimates for systems in the wild. To mitigate both issues, we propose a novel (and automated) approach for estimating TF-values, which we execute against a corpus of 133 popular project in GitHub. We later survey developers as a means to assess the reliability of our results. Among others, we find that the majority of our target systems (65%) have TF <= 2. Surveying developers from 67 target systems provides confidence towards our estimates; in 84% of the valid answers we collect, developers agree or partially agree that the TF's authors are the main authors of their systems; in 53% we receive a positive or partially positive answer regarding our estimated truck factors.
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