NVIDIA video team is located in Shanghai, focuses on algorithm, architecture and HW design of video/CV solutions in all NVIDIA products, including datacenter, desktop, automotive, embedded system, etc. More than 80% of global internet traffic is video stream and it’s still growing, there’s a strong demand for reducing video bandwidth and increasing video quality. We are looking for architecture engineers to address this problem in a DL based approach. What you’ll be doing:Develop DL based solutions for video pre/post-processing, compression, etc. Including algorithm study, implementation, performance tuning, and productization.Study new video compression/computer vision technology, specifications, papers, etc.Define the chip architecture of NVIDIA's next-generation video/CV solution, collaborate with ASIC team to deliver HW design. What we need to see:Master Degree or above in Compute Science or Electronic EngineeringMinimum of 2+ years’ experience in deep learning or video codec projects.Experience with deep learning training frameworks such as Tensorflow, Pytorch, Caffe.Good programming skill and C/C++ or python coding abilities.Fluent English and good communication skill. Ways to stand out from the crowd:Project experiences on deep learning-based video pre/post processing, compression.Experience with video codec such as H264/AVC, HEVC, VP9, AV1 or VVCBackground with computer vision projects such as optical flow, stereo, super-resolution, frame rate up-conversion, etc.Experience with CUDA.
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