- Getting Started
- Framework Components
- ML Packages
- Pipelines
- Data Manager
- OCR Services
- Document Understanding deployed in Automation Suite
- Document Understanding deployed in AI Center standalone
- Deep Learning
- Licensing
- References
- UiPath.Abbyy.Activities
- UiPath.AbbyyEmbedded.Activities
- UiPath.DocumentUnderstanding.ML.Activities
- UiPath.DocumentUnderstanding.OCR.LocalServer.Activities
- UiPath.IntelligentOCR.Activities
- UiPath.OCR.Activities
- UiPath.OCR.Contracts
- UiPath.DocumentProcessing.Contracts
- UiPath.OmniPage.Activities
- UiPath.PDF.Activities
Use Data Manager
This page describes how to use Data Manager to label a new dataset and retrain an ML model.
Launch the created data labeling session in First Run Experience and go to the settings to configure the OCR.
Choose the OCR you intend to use in the OCR method dropdown menu. For UiPathDocumentOCR, paste the Document Understanding license key (retrieve the Document Understanding API key from the Admin > License page) and then paste the OCR URL you generated when you deployed UiPathDocumentOCR.
Configure the prelabelling with the models that you have deployed following the instructions here. Paste the model public ML Skill endpoint and the Document Understanding license key, and then click Save.
For more details, please check the documentation here: .
Click the Import button from a Data Manager Session.
Name the dataset and click Browse files to upload.
Select the document you want to upload.
Click YES.
For more details, please check the documentation here: Import Documents.
Click to create fields to be extracted.
You can create up to 40 fields.
For this validation exercise, you can create some common invoice fields such as date, name, invoice-no, and total. Please ensure to change the content type accordingly - date (date), name (string), invoice-no (string), and total (number).
For more details, please check the documentation here: Create & Configure Fields.
Now you can start to label the documents.
Click the predict button on top to use the base invoice model to predict the labels for the defined fields, and correct it if the prediction is wrong.
d
for labeling date in the below example).
Use the arrow on top to switch to the next document until you have finished the validation of labels for all uploaded invoices.
For more details about labeling documents, please check the documentation here: Label Documents.
Make sure to select the correct dataset in the dataset filtering and click the Export button .
Click Export.
Go to Datasets under the same AI Center project, you should be able to see the exported training dataset.
For more details, please check the documentation: Export Documents.
Train a custom model on AI Center
Go to Pipelines > Create new. Please select the evaluation run type, select the model package and the input dataset.
Please select the sub folder under Export as the input dataset.
Click Create to start the pipeline. It may take 1-2 hours for the pipeline to run on CPU machines.
Go to ML Skills and create a new ML Skill.
Choose the same invoice model package created before. As we have retrained the model, now there is a new minor package version (1 vs 0). Please make sure to select the latest.
Once the ML Skill is created, please go to Modify current deployment to make the ML skill public. Switch the toggle and click Confirm.
Copy the URL of the public ML Skill for later use.
Congrats! You have now retrained an Invoice model with your own dataset and created the endpoint to access the model.