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This work focuses on forecasting future license usage for high-performance computing environments and using such predictions to improve the effectiveness of job scheduling. Specifically, we propose a model that carries out both short-term and long-term license usage forecasting and a method of using forecasts to improve job scheduling. Our long-term forecasting model achieves a Mean Absolute Percentage Error (MAPE) as low as 0.26 for a 12-month forecast of daily peak license usage. Our job scheduling experimental results also indicate that wasted work from jobs with insufficient licenses can be reduced by up to 92% without increasing the average license-using job completion times, during periods of high license usage, with our proposed license-aware scheduler.more » « less
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Jafari, Parham; Amritkar, Amit; Ghasemi, Hadi (, The Journal of Physical Chemistry C)
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Lu, Hengyang; Li, Jiabing; Martinez-Paniagua, Melisa A; Bandey, Irfan N; Amritkar, Amit; Singh, Harjeet; Mayerich, David; Varadarajan, Navin; Roysam, Badrinath; Murphy, Robert F (, Bioinformatics)
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