• IEEE.org
  • IEEE CS Standards
  • Career Center
  • About Us
  • Subscribe to Newsletter

0

IEEE
CS Logo
  • MEMBERSHIP
  • CONFERENCES
  • PUBLICATIONS
  • EDUCATION & CAREER
  • VOLUNTEER
  • ABOUT
  • Join Us
CS Logo

0

IEEE Computer Society Logo
Sign up for our newsletter
IEEE COMPUTER SOCIETY
About UsBoard of GovernorsNewslettersPress RoomIEEE Support CenterContact Us
COMPUTING RESOURCES
Career CenterCourses & CertificationsWebinarsPodcastsTech NewsMembership
BUSINESS SOLUTIONS
Corporate PartnershipsConference Sponsorships & ExhibitsAdvertisingRecruitingDigital Library Institutional Subscriptions
DIGITAL LIBRARY
MagazinesJournalsConference ProceedingsVideo LibraryLibrarian Resources
COMMUNITY RESOURCES
GovernanceConference OrganizersAuthorsChaptersCommunities
POLICIES
PrivacyAccessibility StatementIEEE Nondiscrimination PolicyIEEE Ethics ReportingXML Sitemap

Copyright 2025 IEEE - All rights reserved. A public charity, IEEE is the world’s largest technical professional organization dedicated to advancing technology for the benefit of humanity.

  • Home
  • /Digital Library
  • /Magazines
  • /So
  • Home
  • / ...
  • /Magazines
  • /So

Call for Papers: AI Models for Code Improvement

IEEE Software seeks submissions for upcoming issues.

Publication: July/August 2026


The rise of AI models, including Large Language Models (LLMs), is transforming software engineering by redefining how developers tackle code improvement tasks, such as refactoring and bug detection. Traditionally time-consuming and error-prone, these tasks can now be automated and enhanced through the application of AI. These models are offering unprecedented support, from improving code quality to autonomously detecting and fixing bugs, enabling software teams to focus on higher-level challenges and innovation. Beyond source code analysis, incorporating additional data sources—such as software models, requirements, and issue-tracking documents (e.g., JIRA reports)—can further enrich AI-driven software maintenance, providing deeper insights and more comprehensive support for developers. This special theme aims to explore cutting-edge advancements in the application of AI models to automate and optimize code improvement processes. We welcome contributions that address how these technologies are reshaping software development workflows, discuss their impact on software quality, and share real-world applications and challenges of integrating these tools into development workflows. 

We invite researchers, practitioners, and industry experts to submit their original contributions to IEEE Software Special Theme on AI Models for Code Improvement. This special theme aims to bring together professionals from academia and industry to explore the latest advancements, challenges, and solutions in the use of AI models for code improvement. We welcome papers that cover a wide range of topics, including but not limited to: 

  • Bug Detection and Automated Fixing Generation. 
  • Comparative Studies of AI Models and Traditional Tools. 
  • Intelligent Code Smell Detection. 
  • AI-assisted Technical Debt Management. 
  • Case Studies and Industrial Applications of AI for Code Improvement.
  • AI-driven Adaptive Refactoring. 
  • Improving Code Reliability and Security with AI models. 
  • Human-AI Collaboration in Refactoring and Debugging.
  • Ethical and Practical Considerations in using AI models for code improvement.
  • Challenges and limitations of AI models for Code Improvement


Submission Instructions:

For author information and guidelines on submission criteria, visit the IEEE Software Author Information page. Please submit papers through the IEEE Author Portal system, and be sure to select the special issue or special section name. Manuscripts should not be published or currently submitted for publication elsewhere. Please submit only full papers intended for review, not abstracts, to the IEEE Author Portal.

In addition to submitting your paper to IEEE Software, you are also encouraged to upload the data related to your paper to IEEE DataPort. IEEE DataPort is IEEE's data platform that supports the storage and publishing of datasets while also providing access to thousands of research datasets. Uploading your dataset to IEEE DataPort will strengthen your paper and will support research reproducibility. Your paper and the dataset can be linked, providing a good opportunity for you to increase the number of citations you receive. Data can be uploaded to IEEE DataPort prior to submitting your paper or concurrent with the paper submission. Thank you!


Questions? Contact the Lead Guest Editor at valeria.pontillo@vub.be.

  • Dr. Valeria Pontillo, Vrije Universiteit Brussel (Belgium),
  • Dr. Giammaria Giordano, University of Salerno (Italy), giagiordano@unisa.i
  • Dr. Sarra Habchi, Ubisoft, Quebec, (Canada), sarra.habchi@ubisoft.co
  • Dr. Thomas Zimmermann, University of California, Irvine (USA), tzimmer@uci.edu

LATEST NEWS
Muzeeb Mohammad: IEEE Computer Society Leader in Cloud Tech
Muzeeb Mohammad: IEEE Computer Society Leader in Cloud Tech
Setting the Standard: How SWEBOK Helps Organizations Build Reliable and Future-Ready Teams
Setting the Standard: How SWEBOK Helps Organizations Build Reliable and Future-Ready Teams
Computing’s Top 30: Bala Siva Sai Akhil Malepati
Computing’s Top 30: Bala Siva Sai Akhil Malepati
The Art of Code Meets the Standards of Science: Why SWEBOK Matters
The Art of Code Meets the Standards of Science: Why SWEBOK Matters
Re-Engineering Cloud-Native Principles for Safety-Critical Software Systems
Re-Engineering Cloud-Native Principles for Safety-Critical Software Systems
Read Next

Muzeeb Mohammad: IEEE Computer Society Leader in Cloud Tech

Setting the Standard: How SWEBOK Helps Organizations Build Reliable and Future-Ready Teams

Computing’s Top 30: Bala Siva Sai Akhil Malepati

The Art of Code Meets the Standards of Science: Why SWEBOK Matters

Re-Engineering Cloud-Native Principles for Safety-Critical Software Systems

Reliability as a First-Class Software Engineering Requirement

Case Study: Leveraging Large Language Models to Enhance Data Acquisition Software Quality in Oil & Gas Industry

Quantum Insider Session Series: The Quantum Imperative

FacebookTwitterLinkedInInstagramYoutube
Get the latest news and technology trends for computing professionals with ComputingEdge
Sign up for our newsletter