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Senior Deep learning algorithm engineer – model compression
-- Research and develop neural network compression algorithms, focusing on quantization and pruning;
-- Develop neural network compression tool chain, connecting software and hardware;
-- Stay up to date with the latest neural network compression algorithm trends and deep learning framework (Tensorflow,Pytorch) trends;
-- Master or above degrees in computer science or related majors;
-- Good knowledge of machine learning/deep learning;
-- Experience in at least one deep learning framework, such as Tensorflow, Pytorch;
-- At least 3 years' experience in C++ or Python programming under Linux;
-- With research, creativity, and ability to learn the cutting-edge algorithms and theories through paper reading.
-- Experience in academic papers is preferred, such as CVPR, ICCV, ECCV, NIPS, ICLR,TPAMI.