• Datacenter Traffic Optimization with Deep Reinforcement Learning
    with Li Chen, Justinas Lingys, and Xudong Liao
    In Ahmad Alnafessah, Gabriele Russo Russo, Valeria Cardellini, Giuliano Casale & Francesco Lo Presti (eds.), Communication Networks and Service Management in the Era of Artificial Intelligence and Machine Learning, Wiley. 2021.
    Traffic optimizations (TOs, e.g. flow scheduling, load balancing) in datacenters are difficult online decision-making problems. Previously, they are done with heuristics relying on operators’ understanding of the workload and environment. Designing and implementing proper TO algorithms thus take at least weeks. Encouraged by recent successes in applying deep reinforcement learning (DRL) techniques to solve complex online control problems and leveraging the long-tail distribution of datacenter tr…Read more
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    A possible atomic mechanism underlying the Re- and Ru-induced strengthening effects on the n - n ' interface in Ni-based single-crystal superalloys has been investigated using the DMol3 molecular orbital package based on density functional theory. The calculation of bonding properties has been performed on a cluster designed to model Re and Ru strengthening effects within the interface. The stronger Re--Ni bonds are formed mainly as a result of d- hybridization, while the Ni--Ni bonding become w…Read more