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Full-Text Articles in Physical Sciences and Mathematics
Multi-Step Prediction Using Tree Generation For Reinforcement Learning, Kevin Prakash
Multi-Step Prediction Using Tree Generation For Reinforcement Learning, Kevin Prakash
Master's Projects
The goal of reinforcement learning is to learn a policy that maximizes a reward function. In some environments with complete information, search algorithms are highly useful in simulating action sequences in a game tree. However, in many practical environments, such effective search strategies are not applicable since their state transition information may not be available. This paper proposes a novel method to approximate a game tree that enables reinforcement learning to use search strategies even in incomplete information environments. With an approximated game tree, the agent predicts all possible states multiple steps into the future and evaluates the states to …
Cloud Provisioning And Management With Deep Reinforcement Learning, Alexandru Tol
Cloud Provisioning And Management With Deep Reinforcement Learning, Alexandru Tol
Master's Projects
The first web applications appeared in the early nineteen nineties. These applica- tions were entirely hosted in house by companies that developed them. In the mid 2000s the concept of a digital cloud was introduced by the then CEO of google Eric Schmidt. Now in the current day most companies will at least partially host their applications on proprietary servers hosted at data-centers or commercial clouds like Amazon Web Services (AWS) or Heroku.
This arrangement seems like a straight forward win-win for both parties, the customer gets rid of the hassle of maintaining a live server for their applications and …