posted by user: gonzo1453 || 476 views || tracked by 1 users: [display]

MODA 2026 : 7th International Workshop on Monitoring, Observability, and Operational Data Analytics

FacebookTwitterLinkedInGoogle

Link: https://moda.dmi.unibas.ch/
 
When Jun 26, 2026 - Jun 26, 2026
Where Hamburg, Germany
Submission Deadline Feb 23, 2026
Notification Due Apr 13, 2026
Final Version Due May 26, 2026
Categories    high performance computing   machine learning   monitoring   explainability
 

Call For Papers

MODA26 is held in conjunction with ISC-HPC in Hamburg, Germany.
The web site for ISC-HPC is at:
https://isc-hpc.com


The Monitoring, Observability, and operational Data Analytics Workshop (MODA26) invites original contributions on monitoring and analyzing operational data in High Performance Computing (HPC) systems and data centers. We welcome submissions on ways to collect, store, visualize, interpret, and leverage large-scale system data, as well as the use of machine learning and AI techniques to enable proactive system control and optimization. New this year, the workshop explicitly invites contributions on observability and explainability of HPC system behavior. MODA26 also encourages contributions with regard to monitoring for integrated Quantum-HPC systems, and solutions that contribute to the successful co-design, procurement, and operation of next-generation HPC systems.
Workshop Goals

Establish common frameworks and standards to guide more consistent and effective MODA practices, and encourage work that closes the gap between simply collecting data and using it effectively to achieve real improvements in HPC operations.
Bring together experts to share practical solutions, discuss challenges, and explore new ideas for improving how we gather, analyze, and leverage operational data.
Identify current trends, highlight critical gaps, and shape the evolution of MODA, influencing the design, planning, and procurement of next-generation systems.

Scope and Topics

Collecting and analyzing operational data in HPC and data centers at scale
State-of-the-practice monitoring tools, methods, and techniques
AI/ML approaches to understand system behavior and improve operations
Critical evaluations of AI/ML approaches to ensure practical improvements for MODA
Integrating MODA into system software, runtime environments, and resource management
Solutions to increase observability and explainability of HPC systems
Data-driven strategies for predictive maintenance, scheduling, and energy optimization
Guidelines, tools, and best practices for energy efficiency and reporting
Approaches to ensure FAIR data practices, compliance, and trusted multitenancy
Successful real-world MODA deployments, case studies, and work-in-progress
Integration of monitoring and analysis for Quantum Computing and HPC
Monitoring, Observability, and Operational Data Analytics as drivers for digital twins of supercomputers

Contributions focused solely on application performance modeling, compiler analysis, debugging, or programming models are out-of-scope for the MODA26 workshop.

Related Resources

DATA ANALYTICS 2026   The Fifteenth International Conference on Data Analytics
IEEE-ICECCS 2026   2025 IEEE International Conference on Electronics, Communications and Computer Science (ICECCS 2026)
CICBA 2026   8th International Conference on Computational Intelligence in Communications and Business Analytics
AMLDS 2026   IEEE--2026 2nd International Conference on Advanced Machine Learning and Data Science
DSAA 2026   13th International Conference on Data Science and Advanced Analytics
CVIPPR 2026   2026 4th Asia Conference on Computer Vision, Image Processing and Pattern Recognition (CVIPPR 2026)
DATA 2026   15th International Conference on Data Science, Technology and Applications
CNCIT 2026   2026 5th International Conference on Networks, Communications and Information Technology
DATA 2026   7th International Conference on Digital Age & Technological Advances for Sustainable Development
VEHICULAR ANALYTICS 2026   The Third International Conference on Vehicular Systems