Web: http://arxiv.org/abs/2201.10268

Jan. 26, 2022, 2:11 a.m. | Yunpeng Ma, Andreas Kassler, Bestoun S. Ahmed, Pavel Krakhmalev, Andreas Thore, Arash Toyser, Hans Lindback

cs.LG updates on arXiv.org arxiv.org

Defects during production may lead to material waste, which is a significant
challenge for many companies as it reduces revenue and negatively impacts
sustainability and the environment. An essential reason for material waste is a
low degree of automation, especially in industries that currently have a low
degree of digitalization, such as steel forging. Those industries typically
rely on heavy and old machinery such as large induction ovens that are mostly
controlled manually or using well-known recipes created by experts. …

arxiv deep learning reinforcement learning smart

More from arxiv.org / cs.LG updates on arXiv.org

Director, Data Engineering and Architecture

@ Chainalysis | California | New York | Washington DC | Remote - USA

Deep Learning Researcher

@ Topaz Labs | Dallas, TX

Sr Data Engineer (Contractor)

@ SADA | US - West

Senior Cloud Database Administrator

@ Findhelp | Remote

Senior Data Analyst

@ System1 | Remote

Speech Machine Learning Research Engineer

@ Samsung Research America | Mountain View, CA