To main content

Developer Productivity With and Without GitHub Copilot: A Longitudinal Mixed-Methods Case Study

Abstract

This study investigates the real-world impact of the generative AI (GenAI) tool GitHub Copilot on developer activity and perceived productivity. We conducted a mixed-methods case study in NAV IT, a large public sector agile organization. We analyzed 26,317 unique non-merge commits from 703 of NAV IT's GitHub repositories over a two-year period, focusing on commit-based activity metrics from 25 Copilot users and 14 non-users. The analysis was complemented by survey responses on their roles and perceived productivity, as well as 13 interviews. Our analysis of activity metrics revealed that individuals who used Copilot were consistently more active than non-users, even prior to Copilot’s introduction. We did not find any statistically significant changes in commit-based activity for Copilot users after they adopted the tool, although minor increases were observed. This suggests a discrepancy between changes in commit-based metrics and the subjective experience of productivity.

Category

Academic article

Language

English

Affiliation

  • SINTEF Digital / Software Engineering, Safety and Security
  • University of Oslo

Year

2026

Published in

Proceedings of the Annual Hawaii International Conference on System Sciences (HICSS)

ISSN

1530-1605

View this publication at Norwegian Research Information Repository