Proactive Agent Research Environment: Simulating Active Users to Evaluate Proactive Assistants
AuthorsDeepak Nathani†, Cheng Zhang‡, Chang Huan†, Jiaming Shan†, Yinfei Yang**, Alkesh Patel, Zhe Gan, William Yang Wang†, Michael Saxon§, Xin Eric Wang†
Proactive Agent Research Environment: Simulating Active Users to Evaluate Proactive Assistants
AuthorsDeepak Nathani†, Cheng Zhang‡, Chang Huan†, Jiaming Shan†, Yinfei Yang**, Alkesh Patel, Zhe Gan, William Yang Wang†, Michael Saxon§, Xin Eric Wang†
Proactive agents that anticipate user needs and autonomously execute tasks hold great promise as digital assistants, yet the lack of realistic user simulation frameworks hinders their development. Existing approaches model apps as flat tool-calling APIs, failing to capture the stateful and sequential nature of user interaction in digital environments and making realistic user simulation infeasible. We introduce Proactive Agent Research Environment (Pare), a framework for building and evaluating proactive agents in digital environments. Pare models applications as finite state machines with stateful navigation and state-dependent action space for the user simulator, enabling active user simulation. Building on this foundation, we present Pare-Bench, a benchmark of 143 diverse tasks spanning communication, productivity, scheduling, and lifestyle apps, designed to test context observation, goal inference, intervention timing, and multi-app orchestration.
Reinforcement Learning for Long-Horizon Interactive LLM Agents
February 5, 2025research area Methods and Algorithms
Interactive digital agents (IDAs) leverage APIs of stateful digital environments to perform tasks in response to user requests. While IDAs powered by instruction-tuned large language models (LLMs) can react to feedback from interface invocations in multi-step exchanges, they have not been trained in their respective digital environments. Prior methods accomplish less than half of tasks in sophisticated benchmarks such as AppWorld. We present a…
Towards Learning Multi-Agent Negotiations via Self-Play
January 28, 2019research area Computer VisionWorkshop at ICCV
Making sophisticated, robust, and safe sequential decisions is at the heart of intelligent systems. This is especially critical for planning in complex multi-agent environments, where agents need to anticipate other agents’ intentions and possible future actions. Traditional methods formulate the problem as a Markov Decision Process, but the solutions often rely on various assumptions and become brittle when presented with corner cases. In…