Conference Information
ACM REP 2025: ACM Conference on Reproducibility and Replicability
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Submission Date:
2025-04-07 Extended
Notification Date:
2025-06-23
Conference Date:
2025-07-29
Location:
Vancouver, British Columbia, Canada
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Call For Papers
ACM REP ‘25 welcomes submissions across computing disciplines, spanning both traditional computer science and interdisciplinary scientific computing applications in biology, chemistry, physics, astronomy, genomics, geosciences, etc. The conference particularly values submissions that demonstrate reproducible experimental results. Where full reproduction is not achieved, detailed documentation of the reproducibility experience is equally valuable.

The conference addresses various aspects of reproducibility and replicability, including but not limited to the following topics:

Reproducibility Concepts

Experiment dependency management.
Experiment portability for code, performance, and related metrics.
Software and artifact packaging and container-related reproducibility methods.
Approximate reproducibility.
Record and replay methods.
Data versioning and preservation.
Provenance of data-intensive experiments.
Automated experiment execution and validation.
Reproducibility-aware computational infrastructure.
Experiment discoverability for re-use.
Approaches for advancing reproducibility.

Reproducibility Experiences

Experience of sharing and consuming reproducible artifacts.
Conference-scale artifact evaluation experiences and practices.
Experiences as part of hackathons and summer programs.
Classroom and teaching experiences.
Usability and adaptability of reproducibility frameworks into already-established domain-specific tools.
Frameworks for sociological constructs to incentivize paradigm shifts.
Policies around publication of articles/software.
Experiences within computational science communities.
Collecting datasets from laboratory / real-world settings.

Systems and Security Concerns

Experience comparing published systems in a domain.
Tools to support replicability of system analysis.
Designing machine learning workflows to support reproducibility.
Reproducing real-world security findings.
Privacy concerns arising from reproducibility.
Challenges of reproducing security experiments.
Securing reproducibility infrastructure.

Broader Reproducibility

Cost-benefit analysis frameworks for reproducibility.
Novel methods and techniques that impact reproducibility.
Reusability, repurposability, and replicability methods.
Long-term artifact archiving and verification/testing for future reproducibility.
Last updated by Dou Sun in 2026-03-13