The International Conference on Machine Learning and Autonomous Agents (ICMLAA 2027) will be held in Tokyo, Japan from July 23-25, 2027, themed on From Foundation Models to Autonomous Agents: Learning, Reasoning and Execution. Benefiting from the continuous innovation of core machine learning theories and algorithms, foundation models have greatly boosted the development of autonomous agent technology. Centered on core machine learning methodologies including representation learning, sequential decision learning and reasoning optimization, the conference focuses on how cutting-edge machine learning approaches empower the design, training and practical execution of various autonomous agents, tracking latest research progress and future trends in this interdisciplinary field.
This conference will gather top scholars, senior engineers, industry leaders and young students from more than 30 countries and regions. Through keynote speeches, special invited reports, oral paper presentations, poster sessions and industrial round‑table forums, participants will share the latest academic achievements, algorithm innovations and engineering practices covering core machine learning directions: reinforcement learning for agent decision, transfer & fine-tuning machine learning of foundation models, multi-agent collaborative machine learning algorithms, small/zero-shot machine learning for embodied agents, world modeling based on statistical machine learning, lightweight machine learning for edge agent deployment, robust and trustworthy machine learning for agent safety, together with practical implementation of machine-learning-powered industrial autonomous robots and digital human agents, to deepen industry‑university‑research cooperation and accelerate the transformation of academic achievements into practical industrial applications of machine learning-driven autonomous intelligence.