Recently i looked into reinforcement learning and there was one question bugging me, that i could not find an answer for: How is training effectively done using GPUs? To my understanding constant interaction with an environment is required, which for me seems like a huge bottleneck, since this task is often non-mathematical / non-parallelizable. Yet for example Alpha Go uses multiple TPUs/GPUs. So how are they doing it?
Indeed, you will often have interactions with the environment in between learning steps, which will often be better off running on CPU than GPU. So, if your code for taking actions and your code for running an update / learning step are very fast (as in, for example, tabular RL algorithms), it won't be worth the effort of trying to get those on the GPU.
However, when you have a big neural network, that you need to go through whenever you select an action or run a learning step (as is the case in most of the Deep Reinforcement Learning approaches that are popular these days), the speedup of running these on GPU instead of CPU is often enough for it to be worth the effort of running them on GPU (even if it means you're quite regularly ''switching'' between CPU and GPU, and may need to copy some things from RAM to VRAM or the other way around).
When doing off-policy reinforcement learning (which means you can use transitions samples generated by a "behavioral" policy, different from the one you are currently learning), an experience replay is generally used. Therefore, you can grab a bunch of transitions from this large buffer and use a GPU to optimize the learning objective with SGD (c.f. DQN, DDPG).
One instance of CPU-GPU hybrid approach for RL is this - https://github.com/NVlabs/GA3C. Here, multiple CPUs are used to interact with different instances of the environment. "Trainer" and "Predictor" processes then collect the interactions using multi-process queues, and pass them to a GPU for back-propagation.