ML.NET version | API type | Status | App Type | Data sources | Scenario | ML Task | Algorithms |
---|---|---|---|---|---|---|---|
v1.0.0 | Dynamic API | Up-to-date | Console app | .csv file and GitHub issues | Issues classification | Multi-class classification | SDCA multi-class classifier, AveragedPerceptronTrainer |
This is a simple prototype application to demonstrate how to use ML.NET APIs. The main focus is on creating, training, and using ML (Machine Learning) model that is implemented in Predictor.cs class.
GitHubLabeler is a .NET Core console application that:
- trains ML model on your labeled GitHub issues to teach the model what label should be assigned for a new issue. (As an example, you can use
corefx-issues-train.tsv
file that contains issues from public corefx repository) - labels a new issue. The application will get all unlabeled open issues from the GitHub repository specified at the
appsettings.json
file and label them using the trained ML model created on the step above.
This ML model is using multi-class classification algorithm (SdcaMultiClassTrainer
) from ML.NET.
-
Provide your GitHub data in the
appsettings.json
file:To allow the app to label issues in your GitHub repository you need to provide the folloving data into the appsettings.json file.
{ "GitHubToken": "YOUR-GUID-GITHUB-TOKEN", "GitHubRepoOwner": "YOUR-REPO-USER-OWNER-OR-ORGANIZATION", "GitHubRepoName": "YOUR-REPO-SINGLE-NAME" }
Your user account (
GitHubToken
) should have write rights to the repository (GitHubRepoName
).Check out here how to create a Github Token.
GitHubRepoOwner
can be a GitHub user ID (i.e. "MyUser") or it can also be a GitHub Organization (i.e. "dotnet") -
Provide training file
a. You can use existing
corefx_issues.tsv
data file for experimenting with the program. In this case the predicted labels will be chosen among labels from corefx repository. No changes required.b. To work with labels from your GitHub repository, you will need to train the model on your data. To do so, export GitHub issues from your repository in
.tsv
file with the following columns:- ID - issue's ID
- Area - issue's label (named this way to avoid confusion with the Label concept in ML.NET)
- Title - issue's title
- Description - issue's description
and add the file in
Data
folder. UpdateDataSetLocation
field to match your file's name:
private static string DataSetLocation = $"{BaseDatasetsLocation}/corefx-issues-train.tsv";
Training is a process of running an ML model through known examples (in our case - issues with labels) and teaching it how to label new issues. In this sample it is done by calling this method at the console app:
BuildAndTrainModel(DataSetLocation, ModelFilePathName);
After the training is completed, the model is saved as a .zip file in MLModels\GitHubLabelerModel.zip
.
When the model is trained, it can be used for predicting new issue's label.
For a single test/demo without connecting to a real GitHub repo, call this method from the console app:
TestSingleLabelPrediction(ModelFilePathName);
For accessing the real issues of a GitHub repo, you call this other method from the console app:
await PredictLabelsAndUpdateGitHub(ModelFilePathName);
For testing convenience when reading issues from your GitHub repo, it will only load not labeled issues that were created in the past 10 minutes and are subject to be labeled. You can change that config, though:
Since = DateTime.Now.AddMinutes(-10)
You can modify those settings. After predicting the label, the program updates the issue with the predicted label on your GitHub repo.