How to explain machine learning to business execs

By Isaac Sacolick If you’re a data scientist or you work with machine learning (ML) models, you have tools to label data, technology environments to train models, and a fundamental understanding of MLops and modelops. If you have ML models running in production, you probably use ML monitoring to identify data drift and other model risks. Data science teams use these essential ML practices and platforms to collaborate on model development, to configure infrastructure, to deploy ML models to different environments, and to maintain models at scale. Others who are seeking to increase the number of…

Read More

See also  Analysis-Putin launches a war the West saw coming but was powerless to stop

Leave a Reply