FutureWorld: A Live Environment for Training Predictive Agents with Real-World Outcome Rewards
arXiv cs.AI / 4/30/2026
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Key Points
- The paper introduces “FutureWorld,” a live agentic reinforcement learning environment focused on live future prediction, where models predict real-world events before they occur.
- FutureWorld is designed to close the loop between making predictions, observing real-world outcomes, and updating model parameters, enabling continual learning.
- The authors train three open-source base models over consecutive days inside the environment, reporting that this training approach is effective.
- They also create a daily benchmark derived from FutureWorld and use it to evaluate multiple leading (frontier) agents, producing performance baselines for current systems.
- The work positions live future prediction as a unified learning environment, aiming to provide diverse, real-world grounded tasks while reducing the risk of answer leakage.
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