Sept. 28, 2022, 2:56 p.m. | Ryan Daws

AI News www.artificialintelligence-news.com

Correctly labelling training data for AI models is vital to avoid serious problems, as is using sufficiently large datasets. However, manually labelling massive amounts of data is time-consuming and laborious. Using pre-labelled datasets can be problematic, as evidenced by MIT having to pull its 80 Million Tiny Images datasets. For those unaware, the popular dataset... Read more »


The post Henry Ehrenberg, Snorkel AI: On easing the laborious process of labelling data appeared first on AI News.

ai expo artificial intelligence data datasets development ethics & society labeling labelling machine learning process snorkel ai training

More from www.artificialintelligence-news.com / AI News

Senior Data Engineer

@ Publicis Groupe | New York City, United States

Associate Principal Robotics Engineer - Research.

@ Dyson | United Kingdom - Hullavington Office

Duales Studium mit vertiefter Praxis: Bachelor of Science Künstliche Intelligenz und Data Science (m/w/d)

@ Gerresheimer | Wackersdorf, Germany

AI/ML Engineer (TS/SCI) {S}

@ ARKA Group, LP | Aurora, Colorado, United States

Data Integration Engineer

@ Find.co | Sliema

Data Engineer

@ Q2 | Bengaluru, India