Reference Brief: Join us for an exciting deep dive into RLMatrix, a pure C# library revolutionizing Deep Reinforcement Join the ML.NET team to talk about the most recent ML.NET releases and latest happenings in the ML space.
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General Context Map
Join us for an exciting deep dive into RLMatrix, a pure C# library revolutionizing Deep Reinforcement Learn what model explainability is and why it's important to understand your model results.
Topic Reader Context
Join the ML.NET team to talk about the most recent ML.NET releases and latest happenings in the ML space. Join us to hear about the latest updates like the Text Classification API, AutoML, and Notebooks.
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Main details to review
- Join us to hear about the latest updates like the Text Classification API, AutoML, and Notebooks.
- Join the ML.NET team to talk about the most recent ML.NET releases and latest happenings in the ML space.
- Join us for an exciting deep dive into RLMatrix, a pure C# library revolutionizing Deep Reinforcement
- Learn what model explainability is and why it's important to understand your model results.
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