Our great sponsors
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MachineLearning-BaseballPrediction-BlazorApp
Machine Learning over historical baseball data using latest Microsoft AI & Development technology stack (.Net Core & Blazor)
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WorkOS
The modern identity platform for B2B SaaS. The APIs are flexible and easy-to-use, supporting authentication, user identity, and complex enterprise features like SSO and SCIM provisioning.
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Test-Blazor-WebAssembly-StatisticsAndML-DotNet5
Blazor WASM (WebAssembly) with .NET Core 3.x & .NET 5 implementations, that showcases howto perform statistical analysis locally inside the browser
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Test-Blazor-WebAssembly-StatisticsAndML-DotNet6
Blazor WASM (WebAssembly) with .NET Core 3.x & .NET 6 implementations, that showcases howto perform statistical analysis locally inside the browser
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Test-Blazor-MLNet-WASMHost
Blazor WASM with ML.NET without ASP.NET host - ideal for static website hosting (i.e. GitHub Pages or Azure Static Web sites)
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Simulation-SportsChampionships
Using statistical monte carlo simulations, determine how easy it was to make the playoffs or win a championship in a particular sports league decade (basketball, football).
•Baseball ML Workbench (.NET 5.x, Blazor Server): https://aka.ms/BaseballMLWorkbench
•Statistical Simulations & Visuals (.NET Core 3.x, Blazor WASM): https://github.com/bartczernicki/Test-Blazor-WebAssembly-StatisticsAndML
•Statistical Simulations & Visuals (.NET 5, Blazor WASM): https://github.com/bartczernicki/Test-Blazor-WebAssembly-StatisticsAndML-DotNet5
•Statistical Simulations & Visuals (.NET 6 RC1, Blazor WASM): https://github.com/bartczernicki/Test-Blazor-WebAssembly-StatisticsAndML-DotNet6
•ML.NET Baseball Predictions & Lucene Information Retrieval (.NET 6 RC1, Blazor WASM, Self-Host): https://github.com/bartczernicki/Test-Blazor-MLNet-WASMHost
•Sports League Simulator [IN PROGRESS] (.NET 6 RC1, Blazor WASM): https://github.com/bartczernicki/Simulation-SportsChampionships
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