In the late 2010’s classical games of Go, Chess and Shogi have been considered ’solved’ by deep
reinforcement learning AI agents. Competitive online video games may offer a new, more challenging environment for deep reinforcement learning and serve as a stepping stone in a path to real
world applications. This thesis aims to give a short introduction to the concepts of reinforcement
learning, deep networks and deep reinforcement learning. Then the thesis proceeds to look into few
popular competitive online video games and to the general problems of AI development in these
types of games. Deep reinforcement learning algorithms, techniques and architectures used in the
development of highly competitive AI agents in Starcraft 2, Dota 2 and Quake 3 are overviewed.
Finally, the results are looked into and discussed