Talks

Here is a list of talks that I have given online (these are recorded): 

1) Multi Type Mean Field Reinforcement Learning – A.I. Socratic Circles (AISC), Toronto  (along with Matthew E. Taylor)

2) Multi Type Mean Field Reinforcement Learning – AAMAS 2020 

3) Partially Observable Mean Field Reinforcement Learning – AAMAS 2021

4) Recent Advances in Mean-Field RL methods – University of Alberta – Alberta Machine Intelligence Institute (Amii) AI seminar – (Introduction by Matthew E. Taylor)

5) Decentralized Mean Field Games – AAAI 2022 (Preliminary version. Full conference version can be found here). 

6) Decentralized Mean Field Games – University of Alberta – Alberta Machine Intelligence Institute (Amii) AI seminar – (Introduction by Matthew E. Taylor).

7) Multi-Agent Advisor Q-Learning – IJCAI 2023 (Please open link in Google Chrome).

8) Accelerating training in multi-agent reinforcement learning through action advising – U.C. Berkeley – Multi-Agent Learning Seminar.

Here is a list of talks online by co-authors on joint research works (these are recorded): 

1) Extending Mean Field Reinforcement Learning to Partially Observable Environments, Agents of Multiple Types and Decentralized Learning: Machine Learning and Mean Field Games Seminar. – Talk by Pascal Poupart

2) The Effect of Q-function Reuse on the Total Regret of Tabular, Model-Free, Reinforcement Learning: Adaptive and Learning Agents (ALA) workshop at AAMAS 2021. – Talk by Volodymr Tkachuk

3) Deep Multi Agent Reinforcement Learning for Autonomous Driving: Canadian AI 2020 – Talk by Sushrut Bhalla.

4) Maximum Reward Formulation In Reinforcement Learning: NeurIPS Deep RL Workshop 2020 – Talk by Sai Krishna Gottipati.

Here is a list of talks I have given at various others points of time (not recorded): 

1) Learning from multiple independent advisors in multi-agent reinforcement learning – AAMAS 2023

2) Multi-agent Reinforcement Learning in Large Complex Environments – Canadian AI 2023 (Doctoral Dessertation Award talk)

3) Deep Reinforcement Learning of Abstract Reasoning From Demonstrations – University of Waterloo.

4) Multi-Type Mean Field Reinforcement Learning – Conference of “Reinforcement Learning and Decision Making (RLDM)” – MCGill University, Montreal, Canada.

5) Learning Multi-Agent Communication with Reinforcement Learning –  Conference of “Reinforcement Learning and Decision Making (RLDM)” – MCGill University, Montreal, Canada.

6) Algorithmic Analysis and Improvements in Multi-Agent Reinforcement Learning for Partially Observable Setting – University of Waterloo (AI seminar).

7) Wild Fire Response Using Game Theory and Reinforcement Learning – University of Waterloo. 

8) Reinforcement Learning in SSP and Autonomous Driving domains – Borealis AI Toronto. 

9) Reinforcement Learning for Determining Spread Dynamics of Spatially Spreading Processes with Emphasis on Forest Fires – MASc Seminar – University of Waterloo (MASc Seminar).

10) Learning Forest Wildfire Dynamics from Satellite Images Using Reinforcement Learning – Conference of “Reinforcement Learning and Decision Making (RLDM)”  – University of Michgan, Ann Arbor, MI, USA.