Tao PANG, Haihua QIU, Biying PAN. Research on artificial intelligence key technologies of mobile terminal[J]. Telecommunications science, 2020, 36(5): 145-151.
DOI:
Tao PANG, Haihua QIU, Biying PAN. Research on artificial intelligence key technologies of mobile terminal[J]. Telecommunications science, 2020, 36(5): 145-151. DOI: 10.11959/j.issn.1000-0801.2020045.
Research on artificial intelligence key technologies of mobile terminal
With the progress of software and hardware technology of mobile terminals
the machine learning ability of mobile terminals has been explored.Starting from the overall framework of mobile terminal artificial intelligence technology
the end-to-end artificial intelligence hardware acceleration technology was studied
mainstream on-device machine learning frameworks
neural network model compression and other software technologies were compared
the development trend of AI application was analyzed
and the current technological progress and future development trend of mobile terminal artificial intelligence were summarized.
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