{"id":19715,"date":"2017-04-19T08:00:34","date_gmt":"2017-04-19T15:00:34","guid":{"rendered":"https:\/\/blogs.technet.microsoft.com\/dataplatforminsider\/?p=19715"},"modified":"2024-01-22T22:50:51","modified_gmt":"2024-01-23T06:50:51","slug":"introducing-microsoft-r-server-9-1-release","status":"publish","type":"post","link":"https:\/\/www.microsoft.com\/en-us\/sql-server\/blog\/2017\/04\/19\/introducing-microsoft-r-server-9-1-release\/","title":{"rendered":"Introducing Microsoft R Server 9.1 release"},"content":{"rendered":"

This post is authored by Nagesh Pabbisetty, Partner Director of Program Management at Microsoft<\/em><\/p>\n

Expert data scientists are adopting Advanced Analytics (AA) and Machine Learning (ML) at a rapid pace. This pace can be significantly increased when enterprise-grade AA and ML are available within environments where the customers\u2019 data is, infusing intelligence into mission-critical applications is made much easier and, enterprises can turn to a single vendor to make the world of AA and ML synthesized and supported with the SLAs they have come to expect. At Microsoft, our mission has been to make this vision of ambient intelligence a reality for our customers. We took the first step with Microsoft R Server 9.0<\/a>, and this follow on release includes significant innovations such as:<\/p>\n