Crossing the Chasm: Patterns to Develop, Operationalize, and Maintain ML Models (Next Rewind '18)

406
12.3
Следующее
29.11.18 – 5 3643:13
Cloud Bigtable performance 101
Популярные
Опубликовано 27 ноября 2018, 23:44
In many organizations, data scientists develop machine learning models and data/ML engineers put them into production. The chasm between the two roles leads to many difficulties in moving models from development into production. These difficulties make it extremely difficult to maintain and enhance those models, a key requirement if ML models are used to drive the business. We describe four key concepts to keep in mind as you develop and operationalize machine learning models, and present a number of solutions (“patterns”) to realize these four concepts in practice.

Original talk by Edmond Chan, Yufeng Guo, and Valliappa Lakshmanan
Rewind by Yufeng Guo

Watch full session here → bit.ly/2DZwZkt
Watch more recaps here → bit.ly/NextRewind2018

Watch more Machine Learning & AI sessions here → bit.ly/2zGKfcg
Next ‘18 All Sessions playlist → bit.ly/Allsessions

Subscribe to the Google Cloud Platform channel! → bit.ly/GCloudPlatform
автотехномузыкадетское