ACM e-Energy 2026 Workshop

AI-DEEDS 2026

AI-Driven Energy Efficiency in Dynamic Systems

June 22, 2026 | In Person

About the Workshop

Machine learning is transforming engineering and physical sciences, enabling data-driven solutions across disciplines in estimation, forecasting, sensing, and control tasks. This workshop brings together domain experts, practitioners, and ML/AI developers to further innovation at the intersection of physics-informed AI and dynamic physical systems in the service of energy efficiency.

Hosted by the AI Institute in Dynamic Systems, AI-DEEDS aims to establish a community-driven framework for evaluating algorithms that address the complexities of dynamic systems in engineering and science.

Building off the success of AI-DEEDS 2025, this year we will host 2 challenges on the CTF platform, where individuals and teams can submit and benchmark their algorithms.

Workshop Goals

  • Build a taxonomy of architectures for modeling dynamic systems
  • Share datasets across disciplines focused on improving Energy Efficiency
  • Foster a vibrant research community focused on next-generation ML tools for energy efficiency

Key Dates

Paper Deadline
April 10, 2026
11:59pm AoE
Acceptance Notification
May 1, 2026
Camera Ready Deadline
May 10, 2026
Contest Paper Deadline
May 8, 2026
11:59pm AoE
Kaggle Submission Deadline
May 25, 2026
11:59pm AoE
Workshop
June 22, 2026
At ACM e-Energy

CTF Challenges

Compete on our Common Task Framework! Top submissions will be invited to give lightning talks!

🏢

Smart Buildings Challenge

Design HVAC control agents using Google's open-source simulator. Minimize carbon emissions and operating costs while maintaining comfortable building conditions. Submit a paper to this track for a chance to present at the workshop!

Buildings account for ~40% of US carbon emissions. Your solution could have massive environmental impact.

Learn More
🌀

Chaotic Systems Challenge

Advance research on modeling complex dynamical systems with applications across energy and beyond. Submit a paper to this track for a chance to present at the workshop!

Learn More

Industry Partners

Google Research

Providing the simulator for the interactive CTF challenge competition

Kaggle

Hosting the challenges with technical support and prize fund

Speakers

Michael Rossetti

Google

LLMs for Optimal Control of Sustainable Office Buildings

Vincent Taboga

Mila

AI for HVAC control at scale: learning controllers that adapt across buildings

Matt Levine

Basis / MIT

Dynestyx: Modernizing Bayesian tools for dynamical systems

Alexey Yermakov

University of Washington

The Common Task Framework

Baosen Zhang

University of Washington

Dynamic Control and Integration of Data Center into the Grid

Schedule

Time
Event
09:00 - 09:30
Introduction and Opening
09:30 - 10:00
Invited Talk #1: Vincent Taboga, Mila
10:00 - 10:40
Contributed Talks #1-2
10:40 - 11:00
Contributed Talk #3
11:00 - 11:30
Coffee / Networking Break
11:30 - 12:00
Invited Talk #2: Michael Rossetti, Google
12:00 - 12:30
Invited Talk #3: Matt Levine, Basis / MIT
12:30 - 13:30
Lunch Break
13:30 - 14:00
Invited Talk #4: Baosen Zhang, University of Washington
14:00 - 14:30
Invited Talk #5: Alexey Yermakov, University of Washington
14:30 - 15:30
Contributed Talks #4-6
15:30 - 16:00
CTF Challenge Lightning Talks
16:00 - 17:00
Poster Session
17:00 - 17:15
Concluding Remarks
17:15 - 18:15
Post-Workshop Social Event

Call for Papers

Submission Requirements

  • Maximum Length: 4 pages (excluding references). Camera-ready allows 5 pages.
  • Appendices permitted but not required for reviewers to consider
  • Use ACM conference template
  • Double-blind review process
  • Submit here: aideeds26.hotcrp.com

Subject Areas

Physics-Informed ML

  • Integrating physical constraints into models
  • Regularization via physics priors
  • Symmetry-aware architectures
  • Real-time control using physics-based ML

Hybrid Physics & Data-Driven Models

  • Physical constraints with data-driven time-series
  • Reduced-order modeling for complex flows
  • Discovering governing equations
  • Integrating data collection, control, modeling

Optimization in Dynamical Systems

  • Nonconvex optimization with physical constraints
  • Sensor optimization and uncertainty quantification
  • Optimal sensor placement
  • Control theory integration with ML

Reinforcement Learning for Control

  • Scalable RL for multi-agent systems
  • Robust RL under model mismatch
  • Model-based and model-free hybrid control
  • Physics-driven RL architectures

Uncertainty & Risk Quantification

  • Uncertainty in sensor placement and control
  • Robust control under uncertainty
  • Ethical and interpretable models for safety
  • Real-time control with embedded uncertainty

Ethics & Policies

All submissions must adhere to ACM e-Energy Policies and the ACM Code of Ethics. LLMs are permitted as tools, but authors are responsible for content. We do not accept LLMs as authors. Dual submissions are allowed but novel submissions receive higher priority.

Organizers

Judah Goldfeder

Columbia University

Main Contact jag2396@columbia.edu

PhD Candidate and research fellow at NSF AI Institute in Dynamic Systems

Philippe Wyder

Distyl AI

Applied AI Researcher

Na (Lina) Li

Harvard University

Winokur Family Professor of Electrical Engineering and Applied Mathematics

Bing Dong

Syracuse University

Research on smart buildings and human-building interactions

Alexey Yermakov

University of Washington

Researcher in scientific ML, physics-guided AI, and dynamical systems

Hod Lipson

Columbia University

Professor of Engineering and Data Science, Chair of Mechanical Engineering

J. Nathan Kutz

University of Washington

Director, NSF AI Institute in Dynamic Systems

Jiong Lin

Columbia University

Department of Mechanical Engineering

Acknowledgments

This workshop is supported by the NSF AI Institute in Dynamic Systems (Grant #2112085).