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Machine Learning in the Air

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arxiv 1904.12385 v1 pith:P5NJA5ZM submitted 2019-04-28 cs.IT cs.AIcs.LGcs.NImath.IT

Machine Learning in the Air

classification cs.IT cs.AIcs.LGcs.NImath.IT
keywords wirelesscommunicationrecentresearchtechniquescommunicationsfundamentalimpact
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Thanks to the recent advances in processing speed and data acquisition and storage, machine learning (ML) is penetrating every facet of our lives, and transforming research in many areas in a fundamental manner. Wireless communications is another success story -- ubiquitous in our lives, from handheld devices to wearables, smart homes, and automobiles. While recent years have seen a flurry of research activity in exploiting ML tools for various wireless communication problems, the impact of these techniques in practical communication systems and standards is yet to be seen. In this paper, we review some of the major promises and challenges of ML in wireless communication systems, focusing mainly on the physical layer. We present some of the most striking recent accomplishments that ML techniques have achieved with respect to classical approaches, and point to promising research directions where ML is likely to make the biggest impact in the near future. We also highlight the complementary problem of designing physical layer techniques to enable distributed ML at the wireless network edge, which further emphasizes the need to understand and connect ML with fundamental concepts in wireless communications.

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