{"refrec":{"BRefID":310930,"RR":"<b>Yuret, D.</b> (2016). Knet: beginning deep learning with 100 lines of Julia, <b><i>in</i></b>: <i>NIPS 2016: Proceedings of the 30th International Conference on Neural Information Processing Systems, Barcelona, Spain, December 5-10, 2016 .</i> ","BEntID":303291,"PublicFlag":1,"CheckedFlag":0,"wosflag":0,"vabbflag":0,"RefStringPartII":", <b><i>in</i></b>: <i>NIPS 2016: Proceedings of the 30th International Conference on Neural Information Processing Systems, Barcelona, Spain, December 5-10, 2016.</i> ","DocTypID":17,"DocType":"Book chapters","MarineFlag":0,"FreshFlag":0,"BrackishFlag":0,"TerrestrialFlag":0,"Authorstring":"Yuret, D.","OrigTitleTranslFlag":0,"Authorstringtrunc":"Yuret, D.","Englishabstract":"Knet (pronounced \"kay-net\") is the Koç University machine learning framework implemented in Julia, a high-level, high-performance, dynamic programming language. 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