PROMISE: Predictive Models in Software Engineering

FacebookTwitterLinkedInGoogle

 

Past:   Proceedings on DBLP

Future:  Post a CFP for 2027 or later

 
 

All CFPs on WikiCFP

Event When Where Deadline
PROMISE 2026 International Conference on Predictive Models in Software Engineering
Jul 5, 2026 - Jul 5, 2026 Montreal, Canada Jan 16, 2026
PROMISE 2025 The 21st International Conference on Predictive Models and Data Analytics in Software Engineering
Jun 23, 2025 - Jun 27, 2025 Trondheim, Norway Feb 25, 2025 (Feb 18, 2025)
PROMISE 2024 The 20th International Conference on Predictive Models and Data Analytics in Software Engineering
Jul 16, 2024 - Jul 16, 2024 Porto de Galinhas, Brazil Mar 28, 2024 (Mar 22, 2024)
PROMISE 2017 13th International Conference on Predictive Models and Data Analytics in Software Engineering
Nov 8, 2017 - Nov 8, 2017 Toronto, Canada Jun 12, 2017 (Jun 6, 2017)
PROMISE 2016 12th International Conference on Predictive Models and Data Analytics in Software Engineering
Sep 7, 2016 - Sep 7, 2016 Ciudad Real, Spain Jun 17, 2016 (Jun 10, 2016)
PROMISE 2015 The 11th International Conference on Predictive Models and Data Analytics in Software Engineering
Oct 21, 2015 - Oct 21, 2015 Beijing, China Jun 17, 2015
PROMISE 2013 The 9th International Conference on Predictive Models in Software Engineering
Oct 9, 2013 - Oct 9, 2013 Baltimore, MD, USA Apr 12, 2013 (Apr 5, 2013)
PROMISE 2012 Predictive Models in Software Engineering
Sep 21, 2012 - Sep 22, 2012 Lund, Southern Sweden Apr 2, 2012 (Mar 26, 2012)
PROMISE 2010 The 6th International Conference on Predictive Models in Software Engineering (co-located with ICSM 2010)
Sep 12, 2010 - Sep 13, 2010 Timisoara, Romania May 21, 2010 (May 14, 2010)
 
 

Present CFP : 2026

The International Conference on Predictive Models and Data Analytics in Software Engineering (PROMISE) is an annual forum for researchers and practitioners to present, discuss and exchange ideas, results, expertise and experiences in construction and/or application of predictive models, artificial intelligence, and data analytics in software engineering. PROMISE encourages researchers to publicly share their data in order to provide interdisciplinary research between the software engineering and data mining communities, and seek for verifiable and repeatable experiments that are useful in practice.

The International Conference on Predictive Models and Data Analytics in Software Engineering (PROMISE) welcomes three types of submissions:
Technical papers (10 pages)

PROMISE accepts a wide range of papers where AI tools have been applied to SE such as predictive modeling and other AI methods.
Both positive and negative results are welcome, though negative results should still be based on rigorous research and provide details on lessons learned.

Industrial papers (2–4 pages)

Results, challenges, lessons learned from industrial applications of software analytics.

Extended Abstract Track (1-4 pages)

Designed to encourage early sharing of initial results and new ideas.
Papers should clearly explain:

Ongoing or preliminary work not yet ready for a full paper.
Tool demonstrations, case studies, or experience reports.
Should clearly explain the main contribution, the current progress or results, and next steps or planned improvements.

Topics of Interest

PROMISE papers can explore any of the following topics (or more).
Application-oriented papers:

prediction of cost, effort, quality, defects, business value;
quantification and prediction of other intermediate or final properties of interest in software development regarding people, process or product aspects;
using predictive models and data analytics in different settings, e.g. lean/agile, waterfall, distributed, community-based software development;
dealing with changing environments in software engineering tasks;
dealing with multiple-objectives in software engineering tasks;
using predictive models and software data analytics in policy and decision-making;
generative AI, large language models (LLMs), and “vibe coding” for prediction and development.

Ethically-aligned papers:

Can we apply and adjust our AI-for-SE tools (including predictive models) to handle ethical non-functional requirements such as inclusiveness, transparency, oversight and accountability, privacy, security, reliability, safety, diversity and fairness?

Theory-oriented papers:

model construction, evaluation, sharing and reusability;
interdisciplinary and novel approaches to predictive modelling and data analytics that contribute to the theoretical body of knowledge in software engineering;
verifying/refuting/challenging previous theory and results;
combinations of predictive models and search-based software engineering;
the effectiveness of human experts vs. automated models in predictions.

Data-oriented papers:

data quality, sharing, and privacy;
curated data sets made available for the community to use;
ethical issues related to data collection and sharing;
metrics;
tools and frameworks to support researchers and practitioners to collect data and construct models to share/repeat experiments and results.

Validity-oriented papers:

replication and repeatability of previous work using predictive modelling and data analytics in software engineering;
assessment of measurement metrics for reporting the performance of predictive models;
evaluation of predictive models with industrial collaborators.

Submissions

PROMISE 2026 submissions must meet the following criteria:

be original work, not published or under review elsewhere while being considered;
conform to the submission format requirements of the FSE 2026 Companion proceedings;
not exceed 10 (4) pages for technical (industrial, new-ideas) papers including references;
be written in English;
be prepared for double blind review.

) Exception: For data-oriented papers, authors may elect not to use double blind by placing a footnote on page 1 saying “Offered for single-blind review”.

be submitted via HotCRP;
on submission, please choose the paper category appropriately, i.e.,
technical (main track, 10 pages max); industrial (4 pages max); and new idea papers (4 pages max).

For Industrial papers and New Idea papers, please clearly indicate the paper category in the keywords below the abstract.

To satisfy the double blind requirement submissions must meet the following criteria: - no author names and affiliations in the body and metadata of the submitted paper; - self-citations are written in the third person; - no references to the authors personal, lab, or university website; - no references to personal accounts on GitHub, bitbucket, Google Drive, etc.
Evaluation

Submissions will be peer reviewed by at least three experts from the international program committee. Submissions will be evaluated on the basis of their originality, importance of contribution, soundness, evaluation, quality, and consistency of presentation, and appropriate comparison to related work.
 

Related Resources

Ei/Scopus-AI2A 2026   2026 IEEE 6th International Conference on Artificial Intelligence, Automation and Algorithms (AI2A 2026)
Ei/Scopus-ACEPE 2026   2026 3rd IEEE Asia Conference on Advances in Electrical and Power Engineering (ACEPE 2026)
AAIML 2027   IEEE--2027 2nd International Conference on Advances in Artificial Intelligence and Machine Learning
ICQCT 2026   2026 2nd International Conference on Quantum Computing and Communication Technology-EI/Scopus
DEPLING 2023   International Conference on Dependency Linguistics
IEEE-PEESE 2026   2026 IEEE International Conference on Power, Electrical and Energy Systems Engineering (PEESE 2026)
IEEE CSEE 2026   IEEE--2026 The 7th International Conference on Computer Science, Engineering, and Education (CSEE 2026)
WSDM 2027   20th ACM International Conference on Web Search and Data Mining
AAAI 2027   The Forty-First AAAI Conference on Artificial Intelligence
ICSTTE 2026   2026 4th International Conference on SmartRail, Traffic and Transportation Engineering (ICSTTE 2026)