SEAILGSep 24, 2025

Intuition to Evidence: Measuring AI's True Impact on Developer Productivity

arXiv:2509.19708v16 citationsh-index: 2
Originality Incremental advance
AI Analysis

This provides empirical evidence on AI's impact on developer productivity in real-world enterprise workflows, addressing a practical deployment challenge.

The study evaluated an AI-assisted software development platform in an enterprise setting, finding a 31.8% reduction in PR review cycle time and a 28% increase in code shipment volume over one year.

We present a comprehensive real-world evaluation of AI-assisted software development tools deployed at enterprise scale. Over one year, 300 engineers across multiple teams integrated an in-house AI platform (DeputyDev) that combines code generation and automated review capabilities into their daily workflows. Through rigorous cohort analysis, our study demonstrates statistically significant productivity improvements, including an overall 31.8% reduction in PR review cycle time. Developer adoption was strong, with 85% satisfaction for code review features and 93% expressing a desire to continue using the platform. Adoption patterns showed systematic scaling from 4% engagement in month 1 to 83% peak usage by month 6, stabilizing at 60% active engagement. Top adopters achieved a 61% increase in code volume pushed to production, contributing to approximately 30 to 40% of code shipped to production through this tool, accounting for an overall 28% increase in code shipment volume. Unlike controlled benchmark evaluations, our longitudinal analysis provides empirical evidence from production environments, revealing both the transformative potential and practical deployment challenges of integrating AI into enterprise software development workflows.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes