Toward Inclusive AI-Driven Development: Exploring Gender Differences in Code Generation Tool Interactions
Manaal Basha, Ivan Beschastnikh, Gema Rodriguez-Perez, Cleidson R. B. de Souza

TL;DR
This study investigates how gender differences influence interactions with code generation tools, aiming to improve fairness and inclusivity in AI-driven programming assistance.
Contribution
It introduces a mixed-methods experimental design to analyze gender-based differences in CGT usage and performance, informing more equitable tool development.
Findings
Potential gender disparities in CGT interaction patterns
Insights into cognitive load differences across genders
Data to guide inclusive AI tool design
Abstract
Context: The increasing reliance on Code Generation Tools (CGTs), such as Windsurf and GitHub Copilot, are revamping programming workflows and raising critical questions about fairness and inclusivity. While CGTs offer potential productivity enhancements, their effectiveness across diverse user groups have not been sufficiently investigated. Objectives: We hypothesize that developers' interactions with CGTs vary based on gender, influencing task outcomes and cognitive load, as prior research suggests that gender differences can affect technology use and cognitive processing. Methods: The study will employ a mixed-subjects design with 54 participants, evenly divided by gender for a counterbalanced design. Participants will complete two programming tasks (medium to hard difficulty) with only CGT assistance and then with only internet access. Task orders and conditions will be…
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