Towards artificial general intelligence with hybrid Tianjic chip architecture.
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2019
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Abstract
There are two general approaches to developing artificial general intelligence (AGI): computer-science-oriented and neuroscience-oriented. Because of the fundamental differences in their formulations and coding schemes, these two approaches rely on distinct and incompatible platforms, retarding the development of AGI. A general platform that could support the prevailing computer-science-based artificial neural networks as well as neuroscience-inspired models and algorithms is highly desirable. Here we present the Tianjic chip, which integrates the two approaches to provide a hybrid, synergistic platform. The Tianjic chip adopts a many-core architecture, reconfigurable building blocks and a streamlined dataflow with hybrid coding schemes, and can not only accommodate computer-science-based machine-learning algorithms, but also easily implement brain-inspired circuits and several coding schemes. Using just one chip, we demonstrate the simultaneous processing of versatile algorithms and models in an unmanned bicycle system, realizing real-time object detection, tracking, voice control, obstacle avoidance and balance control. Our study is expected to stimulate AGI development by paving the way to more generalized hardware platforms.Reference Key |
pei2019towardsnature
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Authors | Pei, Jing;Deng, Lei;Song, Sen;Zhao, Mingguo;Zhang, Youhui;Wu, Shuang;Wang, Guanrui;Zou, Zhe;Wu, Zhenzhi;He, Wei;Chen, Feng;Deng, Ning;Wu, Si;Wang, Yu;Wu, Yujie;Yang, Zheyu;Ma, Cheng;Li, Guoqi;Han, Wentao;Li, Huanglong;Wu, Huaqiang;Zhao, Rong;Xie, Yuan;Shi, Luping; |
Journal | Nature |
Year | 2019 |
DOI | 10.1038/s41586-019-1424-8 |
URL | |
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