Confined PCM-based Analog Synaptic Devices offering Low Resistance-drift and 1000 Programmable States for Deep Learning
W. Kim(IBM Research - Thomas J. Watson Research Center), M. BrightSky(IBM Research - Thomas J. Watson Research Center), Stefano Ambrogio(IBM (United States)), Fabio Carta(IBM Research - Thomas J. Watson Research Center), Nanbo Gong(IBM Research - Thomas J. Watson Research Center), M. Longstreet(IBM Research - Thomas J. Watson Research Center), Praneet Adusumilli(IBM Research - Thomas J. Watson Research Center), Takeshi Masuda(Ulvac (Japan)), Jin‐Ping Han(IBM Research - Thomas J. Watson Research Center), Gloria Fraczak(IBM Research - Thomas J. Watson Research Center), Hsinyu Tsai(IBM Research - Almaden), J. Bruley(IBM Research - Thomas J. Watson Research Center), Koukou Suu(Ulvac (Japan)), Robert L. Bruce(IBM Research - Thomas J. Watson Research Center)
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