04/03/2026
📢 Call for Papers: Decision-Making from Offline Datasets to Online Adaptation: Black-Box Optimization to Reinforcement Learning @ [ICML] Int'l Conference on Machine Learning-2026
Website: https://decision-making-offline2online-icml2026.github.io/
We invite the submission of research papers and position papers for our ICML 2026 workshop on Decision-Making from Offline Datasets to Online Adaptation. This workshop aims to explore methods for learning policies, acquisition strategies, and decision rules entirely from previously collected data (offline) or with a small amount of new real-world data (online), spanning settings such as black-box optimization, contextual bandits, reinforcement learning (RL), and their synergies. The workshop will highlight both foundational advances and real-world applications in domains where online experimentation is costly, unsafe, or infeasible, including scientific discovery, engineering design, healthcare, education, recommender systems, and beyond.
Topics of interest include, but are not limited to:
• Offline RL: Algorithms, theory, and applications of RL trained from offline datasets, including long-horizon and safety-constrained settings.
• Offline RL for Foundation Models: RLHF, reasoning model training, and alignment using offline data.
• Black-Box Optimization from Offline Data: Model-based optimization and high-throughput experimental design in few- or single-round settings.
• Contextual Bandits from Logged Data: Learning and evaluation using large-scale interaction logs.
• Off-Policy Evaluation and Policy Comparison: Reliable evaluation, confidence estimation, and counterfactual reasoning.
• Hybrid Offline-to-Online Learning: Methods combining offline datasets with limited online interaction.
• Uncertainty Quantification for Offline Decision-Making: Conformal prediction and risk-aware learning.
• Causal Inference from Observational Data: Leveraging causal structure for improved decision-making.
• Generative Models for Decision-Making: Deep generative approaches for policy learning and design optimization.
• Multi-Task and Multi-Objective Learning: Scaling offline methods across tasks and objectives.
• Benchmarks and Evaluation Protocols: Realistic datasets and metrics reflecting real-world deployment challenges.
• Applications in Science and Engineering: Materials discovery, drug design, chip design, robotics, healthcare, education, and industrial systems.
Submission Deadline: May 5th, 2026, AoE
Author Notification: May 15, 2026, AoE
Camera Ready Deadline: June 15, 2026, AoE
OpenReview submission site: https://lnkd.in/e6agxXFB
We have an amazing lineup of Invited Speakers covering academia and industry:
Jacob Gardner
Wen Sun
Clara Wong-Fannjiang
Eytan Bakshy
Aarti Singh
Sergey Levine
A great team of Organizers: A***n Deshwal, Haruka Kiyohara, Willie Neiswanger, Nghia Hoang, Syrine Belakaria, Thanh Nguyen-Tang, and Janardhan Rao (Jana) Doppa