| Literature DB >> 31367028 |
Jing Pei1,2, Lei Deng1, Sen Song3,4, Mingguo Zhao5, Youhui Zhang6, Shuang Wu1,2, Guanrui Wang1,2, Zhe Zou1,2, Zhenzhi Wu7, Wei He1,2, Feng Chen5, Ning Deng8, Si Wu9, Yu Wang10, Yujie Wu1,2, Zheyu Yang1,2, Cheng Ma1,2, Guoqi Li1,2, Wentao Han6, Huanglong Li1,2, Huaqiang Wu8, Rong Zhao11, Yuan Xie12, Luping Shi13,14.
Abstract
There are two general approaches to developing artificial general intelligence (AGI)1: 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 platforms2-8, 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.Year: 2019 PMID: 31367028 DOI: 10.1038/s41586-019-1424-8
Source DB: PubMed Journal: Nature ISSN: 0028-0836 Impact factor: 49.962