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SM ISO690:2012 BURLACU, Alexandru. Optical reservoir computing: prospects of using sub-10 picosecond lasers. In: Conferinţa tehnico-ştiinţifică a studenţilor, masteranzilor şi doctoranzilor, 1-3 aprilie 2020, Chișinău. Chișinău, Republica Moldova: 2020, Vol.1, pp. 262-264. ISBN 978-9975-45-633-3 (Vol. I). |
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Conferinţa tehnico-ştiinţifică a studenţilor, masteranzilor şi doctoranzilor Vol.1, 2020 |
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Conferința "Conferinţa tehnico-ştiinţifică a studenţilor, masteranzilor şi doctoranzilor" Chișinău, Moldova, 1-3 aprilie 2020 | ||||||
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Pag. 262-264 | ||||||
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Training neural networks is hard. The industry is approaching the limits of siliconbased computing, both in terms of transistor size and chip dimensions. There are already examples of technologies that allow computations without using silicon. A paradigm for machine learning that could have enough representational power also exists. It is Reservoir Computing, which is also quite amenable for adaptation on non-silicon-based computing devices. In this work, I propose a specific type of laser-based reservoir computing scheme that builds on, and should improve, the existing solutions. |
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Cuvinte-cheie reservoir computing, machine learning, optical computing, InGaN lasers |
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