Towards Hardware-Aware Tractable Learning of Probabilistic Models
Olascoaga, Laura I. Galindez, Meert, Wannes, Shah, Nimish, Verhelst, Marian, Broeck, Guy Van den
–Neural Information Processing Systems
Smart portable applications increasingly rely on edge computing due to privacy and latency concerns. But guaranteeing always-on functionality comes with two major challenges: heavily resource-constrained hardware; and dynamic application conditions. Probabilistic models present an ideal solution to these challenges: they are robust to missing data, allow for joint predictions and have small data needs. In addition, ongoing efforts in field of tractable learning have resulted in probabilistic models with strict inference efficiency guarantees. However, the current notions of tractability are often limited to model complexity, disregarding the hardware's specifications and constraints.
Neural Information Processing Systems
Mar-19-2020, 02:16:53 GMT
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