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Creating a Zoo of Atari-Playing Agents to Catalyze the Understanding of Deep Reinforcement Learning

9 January 2019 / Global
Featured image for Creating a Zoo of Atari-Playing Agents to Catalyze the Understanding of Deep Reinforcement Learning
FrameObservationRAM
Figure 2: Shown are the six observations in an agent’s evaluation in Seaquest that maximally activated the sub-detecting neuron. The red box highlights the particular image patch responsible for maximally stimulating the neuron.
Figure 4: First-layer filter weights are visualized for neural networks trained by different deep RL algorithms in the Atari game Seaquest. Each row represents the weights of filters feeding into a different first-layer neuron (F1 through F6), and each column represents frames of the game over time–the left-most column is the T-3 frame, and we reach the frame representing the current situation (Now) as the right-most column.
Figure 5: The gradient-based deep RL methods seem to pay more attention to the present rather than the past, while the evolutionary methods do not.
Figure 6: Supporting what we saw in the grid video above, we notice here that the A2C and ES dots largely cover overlapping areas of the graph, whereas Ape-X’s purple dots focus on distinct parts of the state space.
Felipe Petroski Such

Felipe Petroski Such

Felipe Petroski Such is a research scientist focusing on deep neuroevolution, reinforcement learning, and HPC. Prior to joining the Uber AI labs he obtained a BS/MS from the RIT where he developed deep learning architectures for graph applications and ICR as well as hardware acceleration using FPGAs.

Vashisht Madhavan

Vashisht Madhavan

Vashisht (Vash) is a recent graduate of UC Berkeley, where he received his BS and MS in Computer Science, with a focus in Computer Vision and Artificial Intelligence. At Berkeley, his work focused on perception systems for autonomous vehicles. His interests lie at the intersection of computer vision, machine learning, and reinforcement learning.

Rosanne Liu

Rosanne Liu

Rosanne is a senior research scientist and a founding member of Uber AI. She obtained her PhD in Computer Science at Northwestern University, where she used neural networks to help discover novel materials. She is currently working on the multiple fronts where machine learning and neural networks are mysterious. She attempts to write in her spare time.

Rui Wang

Rui Wang

Rui Wang is a senior research scientist with Uber AI. He is passionate about advancing the state of the art of machine learning and AI, and connecting cutting-edge advances to the broader business and products at Uber. His recent work at Uber was published on leading international conferences in machine learning and AI (ICML, IJCAI, GECCO, etc.), won a Best Paper Award at GECCO 2019, and was covered by technology media such as Science, Wired, VentureBeat, and Quanta Magazine.

Yulun Li

Yulun Li

Yulun Li previously worked as a software engineer with Uber AI.

Jeff Clune

Jeff Clune

Jeff Clune is the former Loy and Edith Harris Associate Professor in Computer Science at the University of Wyoming, a Senior Research Manager and founding member of Uber AI Labs, and currently a Research Team Leader at OpenAI. Jeff focuses on robotics and training neural networks via deep learning and deep reinforcement learning. He has also researched open questions in evolutionary biology using computational models of evolution, including studying the evolutionary origins of modularity, hierarchy, and evolvability. Prior to becoming a professor, he was a Research Scientist at Cornell University, received a PhD in computer science and an MA in philosophy from Michigan State University, and received a BA in philosophy from the University of Michigan. More about Jeff’s research can be found at JeffClune.com

Joel Lehman

Joel Lehman

Joel Lehman was previously an assistant professor at the IT University of Copenhagen, and researches neural networks, evolutionary algorithms, and reinforcement learning.

Posted by Felipe Petroski Such, Vashisht Madhavan, Rosanne Liu, Rui Wang, Yulun Li, Jeff Clune, Joel Lehman

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