posted by organizer: inesgomes || 154 views || tracked by 2 users: [display]

AutoML 2025 : AutoML Conference 2025

FacebookTwitterLinkedInGoogle

Link: https://2025.automl.cc/
 
When Sep 8, 2025 - Sep 11, 2025
Where New York City, USA
Submission Deadline Mar 26, 2025
Notification Due May 13, 2025
Categories    automl   machine learning   hyperparameter optimization   neural architecture search
 

Call For Papers

We welcome submissions on any topic touching upon automating any aspect of machine learning, broadly interpreted. If there is any question of fit, please feel free to contact the program chairs.

This year’s conference will have two parallel tracks: one on AutoML methods and one on applications, benchmarks, challenges, and datasets (ABCD) for AutoML. Papers accepted to either track will comprise the conference program on equal footing.

The following non-exhaustive lists provide examples of work in scope for each of these tracks:

**Methods Track**
- model selection (e.g., neural architecture search, ensembling)
- configuration/tuning (e.g., via evolutionary algorithms, Bayesian optimization)
- AutoML methodologies (e.g., reinforcement learning, meta-learning, in-context learning, warmstarting, portfolios, multi-objective optimization, constrained optimization)
- pipeline automation (e.g., automated data wrangling, feature engineering, pipeline synthesis, and configuration)
- automated procedures for diverse data (e.g., tabular, relational, multimodal, etc.)
- ensuring quality of results in AutoML (e.g., fairness, interpretability, trustworthiness, sustainability, robustness, reproducibility)
- supporting analysis and insight from automated systems
- context/prompt optimization
- dataset distillation / data selection / foundation datasets
- AutoML for multi-objective optimization
- Large language models
- etc.

**ABCD Track**

→ see also https://2024.automl.cc/?page_id=625 for more details

- Applications: open-source AutoML software and applications in this category that help us bridge the gap between theory and practice
- Benchmarks: submissions to further enhance the quality of benchmarking in AutoML
- Challenges: design, visions, analyses, methods and best practices for future and past challenges
- Datasets: new datasets, collections of datasets, or meta-datasets that open up new avenues of AutoML research

Related Resources

AMLDS 2025   IEEE--2025 International Conference on Advanced Machine Learning and Data Science
IEEE-Ei/Scopus-CNIOT 2025   2025 IEEE 6th International Conference on Computing, Networks and Internet of Things (CNIOT 2025) -EI Compendex
IEEE CNCIT 2025   2025 4th International Conference on Networks, Communications and Information Technology (CNCIT 2025)
NLDB 2025   The 30th International Conference on Natural Language & Information Systems
MLMI 2025   2025 The 8th International Conference on Machine Learning and Machine Intelligence (MLMI 2025)
NLPA 2025   6th International Conference on Natural Language Processing and Applications
CMIT 2025   13th International Conference of Managing Information Technology