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Check out the May 2023 edition of Quality! Meet Jared Curtis, Quality's inaugural winner of the Quality Rookie of the Year contest. Also in the this issue, a Vision & Sensors special edition and much more!
Some people might be nervous about completely switching careers, but not Jared Curtis. For his dedication to quality, strong communication skills, and interest in always learning, Jared Curtis is our 2023 Quality Rookie of the Year.
By applying DL with a Data-Centric Approach, Users Can Streamline Even the Most Challenging Manufacturing Steps with Fast, Accurate Automated Inspection.
A sub-discipline of artificial intelligence (AI), deep learning (DL) has become a breakout technology in high-profile market sectors such as retail and high-tech.
Since the beginning of modern industrial robots in the early 1980s, robots have been guided by machine vision. Originally there were only a few robots with vision, but today it is over 5,000 robots annually in the North American market and significantly more globally.