posted by organizer: ccoelho || 987 views || tracked by 2 users: [display]

ML-DE@ECAI 2024 : Machine Learning Meets Differential Equations: From Theory to Applications

FacebookTwitterLinkedInGoogle

Link: https://mlde-ecai-2024.github.io/
 
When Sep 19, 2024 - Sep 20, 2024
Where ECAI, Santiago de Compostela, Spain
Submission Deadline May 15, 2024
Notification Due Jul 1, 2024
Categories    scientific-machine learning   numerical methods   differential equations   machine learning
 

Call For Papers

Description:
The ML-DE Workshop on Machine Learning Meets Differential Equations: From Theory to Applications, co-located with ECAI 2024, is designed to spotlight the dynamic interplay between Machine Learning (ML) and Differential Equations (DE), two fields at the heart of numerous technological and scientific breakthroughs. This workshop aims to delve into how DEs, foundational in modelling complex systems across various domains, can be ingeniously coupled with ML to unlock new potentials, from enhancing prediction accuracies to fostering advancements in explainable AI. It is motivated by the emerging need to transcend traditional boundaries, leveraging the predictive power of ML to tackle DE-driven challenges in novel ways, thereby catalyzing a deeper understanding and innovative solutions to problems that were once considered intractable. By emphasizing energy-efficient algorithms and aiming to reduce the computational footprint of ML, the workshop underscores a commitment to sustainable AI practices. Participants will explore the integration of DEs into ML architectures, the application of ML in solving intricate DE problems, and the potential of these convergences to revolutionize fields as diverse as physics, biology, and beyond. Our purpose is to forge a community that not only shares insights but actively contributes to expanding the frontiers of what's possible at the intersection of ML and DE, setting a new paradigm for research and application in the era of intelligent technologies.

**Highlight**
Full-Length Papers will be in a volume by the Proceedings of Machine Learning Research (PMLR)

List of topics:
      - Embedding differential equations into machine learning (Neural ODEs, normalising flows, ...);
      - Solving differential equations using machine learning (PINNs, Neural Operators, ...);
   - Machine Learning-augmented numerical methods for solving differential equations (hybrid solvers, ...);
   - Analysis of numerical methods for incorporating differential equations' solvers into machine learning algorithms (trade-offs, benchmarks, ...);
   - Incorporation of expert-knowledge given by differential equations into machine learning algorithms (physics-inspired machine learning, ...);
      - Applications of the above to modelling/predicting real-world systems in science and engineering (finance, biology, physics, chemistry, engineering, ...); 
      - Use of machine learning to model systems described by differential equations (finance, biology, physics, chemistry, engineering, ...);
   - Approaches to extract physical knowledge out of learned differential equations for explainable AI (SINDy, ...);
- Computational efficiency of DE solvers involved in ML algorithms (ODE solvers, ...).

Publication Types:
- Full-Length Papers: Maximum of 8 pages, excluding references and supplementary material.
- Extended Abstracts: Limited to 2 pages, including references, designed for poster sessions and brief elevator pitches (approximately 5 minutes). This format provides a snapshot of your research, perfect for generating interest and discussion.
- Presentation Only: Authors of papers recently published in top-tier conferences and journals (JMLR, JAIR, MLJ, PAMI, IJCAI, NeurIPS, ICLR, AISTATS, ICML, AAAI) are encouraged to submit a 2-page extended abstract, including references, for presentation. Please indicate the original publication venue in your submission form.
- Reproducibility Track: Contributions that enhance the reproducibility of research findings are crucial. We invite interactive tutorials, demos, libraries, packages or datasets (e.g., Jupyter notebooks) and their respective 2-page extended abstracts. This track emphasizes the practical application and implementation of research, facilitating a deeper understanding and broader use of ML-DE techniques. Demo code (e.g. Jupyter notebooks etc.) will be published jointly at our Github together with a link to the paper.

Important dates:
- Submission Deadline: 15th May 2024, 23:59 CEST
- Notification of Acceptance: 1st July 2024

For more details and submission instructions, please contact us at MLDEWorkshopECAI24@hsu-hh.de

Related Resources

IEEE-Ei/Scopus-ITCC 2025   2025 5th International Conference on Information Technology and Cloud Computing (ITCC 2025)-EI Compendex
ICSTTE 2025   2025 3rd International Conference on SmartRail, Traffic and Transportation Engineering (ICSTTE 2025)
IEEE-Ei/Scopus-CNIOT 2025   2025 IEEE 6th International Conference on Computing, Networks and Internet of Things (CNIOT 2025) -EI Compendex
SPIE-Ei/Scopus-DMNLP 2025   2025 2nd International Conference on Data Mining and Natural Language Processing (DMNLP 2025)-EI Compendex&Scopus
AMLDS 2025   IEEE--2025 International Conference on Advanced Machine Learning and Data Science
IEEE-Ei/Scopus-CWCBD 2025   2025 6th International Conference on Wireless Communications and Big Data (CWCBD 2025) -EI Compendex
CSITEC 2025   11th International Conference on Computer Science, Information Technology
IEEE CACML 2025   2025 4th Asia Conference on Algorithms, Computing and Machine Learning (CACML 2025)
CETA--EI 2025   2025 4th International Conference on Computer Engineering, Technologies and Applications (CETA 2025)
ICPRS 2025   15th International Conference on Pattern Recognition Systems