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      "text": "Three months after DeepMind's StarCraft II breakthrough, the US Army publishes interesting StarCraft results.",
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      "text": "In the State of AI Report 2019, we covered DeepMind's breakthrough results on StarCraft II.\nInevitably progress applying RL to war inspired games like Go and StarCraft is also of interest to the military.\nThe US Army Research Lab published a paper exploring how natural language commands could be used to improve performance of RL agents where there are sparse reward functions.\nWhile it is notable that cutting edge research ideas are migrating from academic and corporate research labs to military labs.",
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