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    Dr. Cat Hicks (grimalkina@mastodon.social)'s status on Monday, 09-Jun-2025 15:15:48 JSTDr. Cat HicksDr. Cat Hicks
    in reply to
    • Carol Lee

    We have so many pseudo-studies in software, and given its importance in the world and the size of this industry and the economic powers involved, I really believe we deserve better. Going through symbolic rituals of science doesn't mean you're really generating the evidence that will bring clarity to our decisions.

    Our preprint, led by @flourn0 and @CSLee who are both exceptionally brilliant scientists on the job market right now: https://arxiv.org/abs/2503.05040

    In conversationabout 9 days ago from mastodon.socialpermalink

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    1. Domain not in remote thumbnail source whitelist: arxiv.org
      No Silver Bullets: Why Understanding Software Cycle Time is Messy, Not Magic
      Understanding factors that influence software development velocity is crucial for engineering teams and organizations, yet empirical evidence at scale remains limited. A more robust understanding of the dynamics of cycle time may help practitioners avoid pitfalls in relying on velocity measures while evaluating software work. We analyze cycle time, a widely-used metric measuring time from ticket creation to completion, using a dataset of over 55,000 observations across 216 organizations. Through Bayesian hierarchical modeling that appropriately separates individual and organizational variation, we examine how coding time, task scoping, and collaboration patterns affect cycle time while characterizing its substantial variability across contexts. We find precise but modest associations between cycle time and factors including coding days per week, number of merged pull requests, and degree of collaboration. However, these effects are set against considerable unexplained variation both between and within individuals. Our findings suggest that while common workplace factors do influence cycle time in expected directions, any single observation provides limited signal about typical performance. This work demonstrates methods for analyzing complex operational metrics at scale while highlighting potential pitfalls in using such measurements to drive decision-making. We conclude that improving software delivery velocity likely requires systems-level thinking rather than individual-focused interventions.
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