Microsoft Releases ML.NET 0.6 with Machine Learning APIs
Earlier this year, Microsoft launched ML.NET, a cross-platform machine learning platform for .NET developers. This week, the company is rolling out ML.NET 0.6 with several improvements. All the additions will help developers to improve their training models for machine learning. Included in ML.NET 0.6 is a new API that helps developers create models. Microsoft says this is the first release of ML.NET APIs.
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