English

CREW: Facilitating Human-AI Teaming Research

Human-Computer Interaction 2025-01-03 v3 Artificial Intelligence Machine Learning

Abstract

With the increasing deployment of artificial intelligence (AI) technologies, the potential of humans working with AI agents has been growing at a great speed. Human-AI teaming is an important paradigm for studying various aspects when humans and AI agents work together. The unique aspect of Human-AI teaming research is the need to jointly study humans and AI agents, demanding multidisciplinary research efforts from machine learning to human-computer interaction, robotics, cognitive science, neuroscience, psychology, social science, and complex systems. However, existing platforms for Human-AI teaming research are limited, often supporting oversimplified scenarios and a single task, or specifically focusing on either human-teaming research or multi-agent AI algorithms. We introduce CREW, a platform to facilitate Human-AI teaming research in real-time decision-making scenarios and engage collaborations from multiple scientific disciplines, with a strong emphasis on human involvement. It includes pre-built tasks for cognitive studies and Human-AI teaming with expandable potentials from our modular design. Following conventional cognitive neuroscience research, CREW also supports multimodal human physiological signal recording for behavior analysis. Moreover, CREW benchmarks real-time human-guided reinforcement learning agents using state-of-the-art algorithms and well-tuned baselines. With CREW, we were able to conduct 50 human subject studies within a week to verify the effectiveness of our benchmark.

Keywords

Cite

@article{arxiv.2408.00170,
  title  = {CREW: Facilitating Human-AI Teaming Research},
  author = {Lingyu Zhang and Zhengran Ji and Boyuan Chen},
  journal= {arXiv preprint arXiv:2408.00170},
  year   = {2025}
}

Comments

Our project website is at: http://generalroboticslab.com/CREW

R2 v1 2026-06-28T17:59:53.043Z