01743nam a22001337a 4500003000500000082001400005100002700019245011100046264003400157300001500191505134100206650002101547700004101568NUST a005.1,KAM aKamal, Muhammad Haider aReplication of Multi-Agent Reinforcement Learning for “Hide & Seek” Problem /cMuhammad Haider Kamal,  aRawalpindi bMCS, NUST c2023 aviii, 79 p aReinforcement learning generates policies based on reward functions and hyperparameters. Slight changes in these can significantly affect results. The lack of documentation and reproducibility in Reinforcement learning research makes it difficult to replicate once-deduced strategies. While previous research has identified strategies using grounded maneuver, there is limited work in the more complex environments. The agents in this study are simulated similarly to Open Al’s hide and seek agents, in addition to a flying mechanism, enhancing their mobility, and expanding their range of possible actions and strategies. This added functionality improves the Hider agents to develop chasing strategy from approximately 2 million steps to 1.6 million steps and hiders shelter strategy from approximately 25 million steps to 2.3 million steps while using a smaller batch size of 3072 instead of 64000. We also discuss the importance of reward functions design and deployment in a curriculum-based environment to encourage agents to learn basic skills along with the challenges in replicating these Reinforcement learning strategies. We demonstrated that the results of the reinforcement agent can be replicated in more complex environment and similar strategies are evolved including” running and chasing” and ”fort building”. aMSCSE / MSSE-27  aSupervisor Dr. Muaz Ahmed Khan Niazi