An analog-AI chip for energy-efficient speech recognition and transcription
Stefano Ambrogio(IBM (United States)), Geoffrey W. Burr(IBM Research - Almaden), Atsuya Okazaki(IBM Research - Tokyo), Takeo Yasuda(IBM Research - Tokyo), Nicole Saulnier(Albany Research Institute), Andrea Fasoli(IBM Research - Almaden), Jose Luquin(IBM Research - Almaden), C. Silvestre(Albany Research Institute), V. Chan(Albany Research Institute), Yasuteru Kohda(IBM Research - Tokyo), Vijay Narayanan(IBM Research - Thomas J. Watson Research Center), Pritish Narayanan(IBM Research - Almaden), Kevin Brew(Albany Research Institute), Timothy M. Philip(Albany Research Institute), Akiyo Nomura(IBM Research - Tokyo), Masatoshi Ishii(IBM Research - Tokyo), Alexander Friz(IBM Research - Almaden), Hsinyu Tsai(IBM Research - Almaden), Kang Min Ok(Albany Research Institute), Ishtiaq Ahsan(Albany Research Institute), A. Chen(IBM Research - Almaden), Kohji Hosokawa(IBM Research - Tokyo), S. Choi(Albany Research Institute), Charles Mackin(IBM Research - Almaden)
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