A Survey on Human-AI Teaming with Large Pre-Trained Models
- URL: http://arxiv.org/abs/2403.04931v2
- Date: Wed, 26 Jun 2024 23:44:48 GMT
- Title: A Survey on Human-AI Teaming with Large Pre-Trained Models
- Authors: Vanshika Vats, Marzia Binta Nizam, Minghao Liu, Ziyuan Wang, Richard Ho, Mohnish Sai Prasad, Vincent Titterton, Sai Venkat Malreddy, Riya Aggarwal, Yanwen Xu, Lei Ding, Jay Mehta, Nathan Grinnell, Li Liu, Sijia Zhong, Devanathan Nallur Gandamani, Xinyi Tang, Rohan Ghosalkar, Celeste Shen, Rachel Shen, Nafisa Hussain, Kesav Ravichandran, James Davis,
- Abstract summary: Human-AI (HAI) Teaming has emerged as a cornerstone for advancing problem-solving and decision-making processes.
The advent of Large Pre-trained Models (LPtM) has significantly transformed this landscape.
It offers unprecedented capabilities by leveraging vast amounts of data to understand and predict complex patterns.
- Score: 7.280953657497549
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In the rapidly evolving landscape of artificial intelligence (AI), the collaboration between human intelligence and AI systems, known as Human-AI (HAI) Teaming, has emerged as a cornerstone for advancing problem-solving and decision-making processes. The advent of Large Pre-trained Models (LPtM) has significantly transformed this landscape, offering unprecedented capabilities by leveraging vast amounts of data to understand and predict complex patterns. This paper surveys the pivotal integration of LPtMs with HAI, emphasizing how these models enhance collaborative intelligence beyond traditional approaches. It examines the potential of LPtMs in augmenting human capabilities, discussing this collaboration for AI model improvements, effective teaming, ethical considerations, and their broad applied implications in various sectors. Through this exploration, the study sheds light on the transformative impact of LPtM-enhanced HAI Teaming, providing insights for future research, policy development, and strategic implementations aimed at harnessing the full potential of this collaboration for research and societal benefit.
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