書名: MACHINE LEARNING FOR FUTURE WIRELESS COMMUNICATIONS
作者: LUO
ISBN: 9781119562252
出版社: John Wiley
書籍開數、尺寸: 25.5*18.4
重量: 1.10 Kg
頁數: 496
#資訊
#工程
#電子與電機
#通訊與無線技術
#無線通訊
#AI人工智慧與機器學習
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