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04 mars - 04 mars 2026

Classement: A (CORE2023)Offline

IEEE International Working Conference on Mining Software Repositories

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Aperçu

The 23rd International Conference on Mining Software Repositories (MSR 2026) will be held on April 13-14, 2026, in Rio de Janeiro, Brazil. MSR Technical Track submissions using data from software repositories, either solely or combined with data from other sources, can take many forms, including: studies applying existing DS/ML/AI techniques to better understand the practice of software engineering, software users, and software behavior; empirically-validated applications of existing or novel DS/ML/AI-based techniques to improve software development and support the maintenance of software systems; and cross-cutting concerns around the engineering of DS/ML/AI-enabled software systems. Evaluation Criteria: We invite both full and short work-in-progress papers. All submissions must be in PDF format and conform, at time of submission, to the IEEE Conference Proceedings Formatting Guidelines. Submissions to the Technical Track can be made via the submission site. The MSR 2026 Technical Track will employ a double-anonymous review process. Thus, no submission may reveal its authors’ identities. Authors’ names must be omitted from the submission. All references to the author’s prior work should be in the third person. By submitting to MSR 2026 authors acknowledge that they conform to the authorship policy of the ACM and the IEEE. At least one author of each paper is expected to register and present the paper at the MSR 2026 conference. All accepted contributions will be published in the electronic proceedings of the conference. Starting 2026, all articles published by ACM will be made Open Access.

Appel à communications

The 23rd International Conference on Mining Software Repositories (MSR 2026) will be held on April 13-14, 2026, in Rio de Janeiro, Brazil. MSR Technical Track submissions using data from software repositories, either solely or combined with data from other sources, can take many forms, including: studies applying existing DS/ML/AI techniques to better understand the practice of software engineering, software users, and software behavior; empirically-validated applications of existing or novel DS/ML/AI-based techniques to improve software development and support the maintenance of software systems; and cross-cutting concerns around the engineering of DS/ML/AI-enabled software systems. Evaluation Criteria: We invite both full and short work-in-progress papers. All submissions must be in PDF format and conform, at time of submission, to the IEEE Conference Proceedings Formatting Guidelines. Submissions to the Technical Track can be made via the submission site. The MSR 2026 Technical Track will employ a double-anonymous review process. Thus, no submission may reveal its authors’ identities. Authors’ names must be omitted from the submission. All references to the author’s prior work should be in the third person. By submitting to MSR 2026 authors acknowledge that they conform to the authorship policy of the ACM and the IEEE. At least one author of each paper is expected to register and present the paper at the MSR 2026 conference. All accepted contributions will be published in the electronic proceedings of the conference. Starting 2026, all articles published by ACM will be made Open Access.

Dates importantes

Dates de la conférence

Conference Date

4 mars 2026

Précédemment :
  • 13 avril 2026
  • 13 avril 2026 - 14 avril 2026

Soumission

Paper submission

NOUVEAU

10 mars 2025

Notification

Notification date

NOUVEAU

1 juillet 2026

Version finale

Camera-ready

NOUVEAU

1 juin 2026

Autres dates

(Mining Challenge Proposals) Call for Challenge Papers Published

5 septembre 2025

(Technical Papers) Author Response Period

8 décembre 202511 décembre 2025

Classement source

Source: CORE2023

Classement: A

Domaine de recherche: Software engineering, Data management and data science

Carte

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