Skip to content

This is an simple example of tagging bank transactions with ML.NET

Notifications You must be signed in to change notification settings

jernejk/MLSample.SimpleTransactionTagging

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

76 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

MLSample.SimpleTransactionTagging

This is an simple example of tagging bank transactions with ML.NET built for a console as well as server-side Blazor application.

You can read more about this example and ML.NET on my blog post: https://jkdev.me/simple-machine-learning-classification/

Live demo: https://jernejk.github.io/MLSample.SimpleTransactionTagging/

Usage

You can either run console application (.NET Core 2.2 at the time of writing) or Server-side Blazor (.NET Core 3.0) either via dotnet run or Visual Studio 2019.

Console (MLSample.TransactionTagging)

This is the initial example on how to use ML.NET for classification. It will train based on the training.json in MLSample.TransationTagging.Core file and it will classify a couple of example transaction descriptions.

If it fails to correctly classify a transaction, it will likely be "Coffee & drink". This category will likely be a "catch-all" (but not always, the beauty of ML) simple because training data has a lot of them.

Cmd Dotnet Run Figure: Run Console application with training.

You can also run the application without building the model. Just make sure to run the console application 1 time to generate the model, before trying to run it without training.

dotnet run no-training

Cmd Dotnet Run No Training Figure: Run Console application without training.

Server-side Blazor

This is designed to be more interactive as well as you why ML.NET might have decided for a certain classification. It uses dependency injection to train and load ML model, so it doesn't have to be reloaded every time we hit the page where we want to do classification.

The DI is done based on a MS blog post: https://devblogs.microsoft.com/cesardelatorre/how-to-optimize-and-run-ml-net-models-on-scalable-asp-net-core-webapis-or-web-apps/ UPDATE: Upgraded the code to PredictionEnginePool.

Most of the code is in the Startup.cs and Pages/Index.razor.

Blazor Uber Sample Figure: Example of Blazor application.

Integration test

There is also a integration test, that tests the most common uses cases in my demos. If they fail, it usually because my demo data has changed and confused ML.NET.

AutoML

You can also try out AutoML, which will try to find the best trainer for the data.

For console run:

dotnet run auto-ml

Cmd Dotnet Run Auto Ml Figure: Running AutoML in console application.

For Blazor:

Run the app, go to AutoML and click train. This will create a new model every time you train.

Automl Blazor Training Figure: Running AutoML in Blazor application.