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null (Ed.)We demonstrate a video 360 navigation and streaming system for Mobile HMD devices. The Navigation Graph (NG) concept is used to predict future views that use a graph model that captures both temporal and spatial viewing behavior of prior viewers. Visualization of video 360 content navigation and view prediction algorithms is used for assessment of Quality of Experience (QoE) and evaluation of the accuracy of the NG-based view prediction algorithm.more » « less
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Ahmad, Sohaib; Rosenthal, Arielle; Hajiesmaili, Mohammad H.; Sitaraman, Ramesh K. (, Proceedings of the Tenth ACM International Conference on Future Energy Systems (e-Energy ’19))Environmental concerns and rising grid prices have motivated data center owners to invest in on-site renewable energy sources. How- ever, these sources present challenges as they are unreliable and intermittent. In an effort to mitigate these issues, data centers are incorporating energy storage systems. This introduces the oppor- tunity for electricity bill reduction, as energy storage can be used for power market arbitrage. We present two supervised learning-based algorithms, LearnBuy, that learns the amount to purchase, and LearnStore, that learns the amount to store, to solve this energy procurement problem. These algorithms utilize the idea of "learning from optimal" by using the values generated by the offline optimization as a label for training. We test our algorithms on a general case, considering buying and selling back to the grid, and a special case, considering only buying from the grid. In the general case, LearnStore achieves a 10-16% reduction compared to baseline heuristics, whereas in the special case, LearnBuy achieves a 7% reduction compared to prior art.more » « less
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