ICSE 2026
Sun 12 - Sat 18 April 2026 Rio de Janeiro, Brazil

This program is tentative and subject to change.

Wed 15 Apr 2026 17:15 - 17:30 at Asia I - AI for Software Engineering 7 Chair(s): Stan Kurkovsky

The deployment of AI-assisted development tools in compliance-relevant, large-scale industrial environments represents significant gaps in academic literature, despite growing industry adoption. We report on the industrial deployment of WhatsCode, a domain-specific AI development system that supports WhatsApp serving over 2 billion users and processes millions of lines of code across multiple platforms. Over 25 months (2023-2025), WhatsCode evolved from targeted privacy automation to autonomous agentic workflows integrated with end-to-end feature development and DevOps processes.

WhatsCode achieved substantial quantifiable impact, improving automated privacy verification coverage 3.5x from 15% to 53%, identifying privacy requirements, and generating over 3,000 accepted code changes with acceptance rates ranging from 9% to 100% across different automation domains. The system committed 692 automated refactor/fix changes, 711 framework adoptions, 141 feature development assists and maintained 90% precision in bug triage.

Our study identifies two stable human-AI collaboration patterns that emerged from production deployment: one-click rollout for high-confidence changes (60% of cases) and commandeer-revise for complex decisions (40%). We demonstrate that organizational factors: ownership models, adoption dynamics, and risk management, are as decisive as technical capabilities for enterprise-scale AI success. The findings provide evidence-based guidance for large-scale AI tool deployment in compliance-relevant environments, showing that effective human-AI collaboration, not full automation, drives sustainable business impact.

Slides for Presentation (PDF) (WhatsCode - ICSE 2026.pdf)221KiB

This program is tentative and subject to change.

Wed 15 Apr

Displayed time zone: Brasilia, Distrito Federal, Brazil change

16:00 - 17:30
AI for Software Engineering 7SE In Practice (SEIP) at Asia I
Chair(s): Stan Kurkovsky Central Connecticut State University
16:00
15m
Talk
From Rules to LLM-Enhanced Templates: A Hybrid ALPG Code Generation System
SE In Practice (SEIP)
Sanghyeok Park Sungkyunkwan University, Samsung Electronics, Sungjae Hwang Sungkyunkwan University, Simon S. Woo Sungkyunkwan University
16:15
15m
Talk
Enterprise-Scale COBOL-to-Java Translation: LLMs Augmented with Program Analysis
SE In Practice (SEIP)
Venkatesan Chakaravarthy IBM Research - India, Anamitra Roy Choudhury IBM, Dinesh Garg IBM Research, India, Vini Kanvar IBM Research, Shivmaran Pandian IBM Research - India, Aditya Raghuvanshi International Institute of Information Technology - Hyderabad, Yogish Sabharwal IBM Research - India, Amith Singhee IBM Research, India
16:30
15m
Talk
Smart Paste: Automatically Fixing Copy/Paste for Google Developers
SE In Practice (SEIP)
Vincent Nguyen Google, Guilherme Herzog Google, José Pablo Cambronero Google, USA, Marcus Revaj Google, Aditya Kini Google, Alexander Frömmgen Google, Inc., Maxim Tabachnyk Google, Inc.
DOI Pre-print
16:45
15m
Talk
Utilizing LLMs for Industrial Process Automation: A Case Study on Modifying RAPID Programs
SE In Practice (SEIP)
Salim Fares University of Passau, Faculty of Computer Science and Mathematics, Chair of AI Engineering, Steffen Herbold University of Passau
DOI Pre-print
17:00
15m
Talk
Less Effort, More Productivity: Lessons Learned from Developing Millions of Lines of Code with Large Language ModelVirtual Attendance
SE In Practice (SEIP)
Yu Duan Xidian University, Daiyang Zhang Xidian University, Zhiping Jiang Xidian University, Zhuoyu Xie Xidian University, Yiming Liu Xidian University, Yueshen Xu Xidian University, Rui Li , Di Cui Xidian University
17:15
15m
Talk
WhatsCode: Large-Scale GenAI Deployment for Developer Efficiency at WhatsAppVirtual Attendance
SE In Practice (SEIP)
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