Aug. 9, 2022, 1:11 a.m. | Dong He, Supun Nakandala, Dalitso Banda, Rathijit Sen, Karla Saur, Kwanghyun Park, Carlo Curino, Jesús Camacho-Rodríguez, Konstantinos Karan

cs.LG updates on arXiv.org arxiv.org

The huge demand for computation in artificial intelligence (AI) is driving
unparalleled investments in hardware and software systems for AI. This leads to
an explosion in the number of specialized hardware devices, which are now
offered by major cloud vendors. By hiding the low-level complexity through a
tensor-based interface, tensor computation runtimes (TCRs) such as PyTorch
allow data scientists to efficiently exploit the exciting capabilities offered
by the new hardware. In this paper, we explore how database management systems
can …

arxiv computation processing query runtimes tensor tensor computation runtimes

Senior Machine Learning Engineer (MLOps)

@ Promaton | Remote, Europe

Research Associate (Data Science/Information Engineering/Applied Mathematics/Information Technology)

@ Nanyang Technological University | NTU Main Campus, Singapore

Associate Director of Data Science and Analytics

@ Penn State University | Penn State University Park

Student Worker- Data Scientist

@ TransUnion | Israel - Tel Aviv

Vice President - Customer Segment Analytics Data Science Lead

@ JPMorgan Chase & Co. | Bengaluru, Karnataka, India

Middle/Senior Data Engineer

@ Devexperts | Sofia, Bulgaria