/MachineLearning-BaseballPrediction-BlazorApp

Machine Learning over historical baseball data using latest Microsoft AI & Development technology stack.

Primary LanguageC#MIT LicenseMIT

Baseball Machine Learning Workbench A web application that showcases performing advanced analysis (decision thresholding, what-if analysis) using in-memory Machine Learning models.

Live Demo: https://baseballmlworkbench-v1.azurewebsites.net

Baseball ML Workbench

The application has the following features:

  • Three different decision analysis mechanisms using what-if analysis
  • A simple rules engine to predict baseball hall of fame induction contrasted with Machine Intelligence
  • Single and multiple machine learning models working together to predict baseball hall of fame ballot and induction
  • Machine Learning models are surfaced via ML.NET
  • Surfaced via the Blazor .NET Core application framework for real-time low latency predictions

Architecture - Cloud Deployment Diagram: Baseball ML Workbench - Architecture Deployment Diagram

Project Structure:

  • Visual Studio 2019 v4.0, .NET Core 3.1, Server-Side Blazor, ML.NET v1.4, SignalR

More Information: