Pinto, Jervis
Winning Isn't Everything: Training Human-Like Agents for Playtesting and Game AI
Zhao, Yunqi, Borovikov, Igor, Beirami, Ahmad, Rupert, Jason, Somers, Caedmon, Harder, Jesse, Silva, Fernando de Mesentier, Kolen, John, Pinto, Jervis, Pourabolghasem, Reza, Chaput, Harold, Pestrak, James, Sardari, Mohsen, Lin, Long, Aghdaie, Navid, Zaman, Kazi
Recently, there have been several high-profile achievements of agents learning to play games against humans and beat them. We consider an alternative approach that instead addresses game design for a better player experience by training human-like game agents. Specifically, we study the problem of training game agents in service of the development processes of the game developers that design, build, and operate modern games. We highlight some of the ways in which we think intelligent agents can assist game developers to understand their games, and even to build them. Our early results using the proposed agent framework mark a few steps toward addressing the unique challenges that game developers face.
An Application of Transfer to American Football: From Observation of Raw Video to Control in a Simulated Environment
Stracuzzi, David J. (Sandia National Laboratories) | Fern, Alan (Oregon State University) | Ali, Kamal (Stanford University) | Hess, Robin (Oregon State University) | Pinto, Jervis (Oregon State University) | Li, Nan (Carnegie Mellon University) | Konik, Tolga (Stanford University) | Shapiro, Daniel G. (Institute for the Study of Learning and Expertise)
Automatic transfer of learned knowledge from one task or domain to another offers great potential to simplify and expedite the construction and deployment of intelligent systems. In practice however, there are many barriers to achieving this goal. In this article, we present a prototype system for the real-world context of transferring knowledge of American football from video observation to control in a game simulator. We trace an example play from the raw video through execution and adaptation in the simulator, highlighting the system's component algorithms along with issues of complexity, generality, and scale. We then conclude with a discussion of the implications of this work for other applications, along with several possible improvements.