SpaceX: Exploring metrics with the SPACE model for developer productivity
By: Sanchit Kaul , Kevin Nhu , Jason Eissayou and more
Potential Business Impact:
Finds better ways to measure how well coders work.
This empirical investigation elucidates the limitations of deterministic, unidimensional productivity heuristics by operationalizing the SPACE framework through extensive repository mining. Utilizing a dataset derived from open-source repositories, the study employs rigorous statistical methodologies including Generalized Linear Mixed Models (GLMM) and RoBERTa-based sentiment classification to synthesize a holistic, multi-faceted productivity metric. Analytical results reveal a statistically significant positive correlation between negative affective states and commit frequency, implying a cycle of iterative remediation driven by frustration. Furthermore, the investigation has demonstrated that analyzing the topology of contributor interactions yields superior fidelity in mapping collaborative dynamics compared to traditional volume-based metrics. Ultimately, this research posits a Composite Productivity Score (CPS) to address the heterogeneity of developer efficacy.
Similar Papers
The SPACE of AI: Real-World Lessons on AI's Impact on Developers
Human-Computer Interaction
AI helps programmers code faster and better.
Modeling Collaborative Problem Solving Dynamics from Group Discourse: A Text-Mining Approach with Synergy Degree Model
Computers and Society
AI helps measure how well groups work together.
Developer Productivity with GenAI
Software Engineering
AI helps coders work faster, not better.