Text analytics models editing and versioning
Valid from Pega Version 8.3
Pega Platform™ now supports editing and updating training data for text analytics models.
Pega Platform also supports the versioning of text analytics models. When you update the model, Prediction Studio creates an updated model version. You can then switch between the model versions.
Upgrade impact
In versions of Pega Platform earlier than 8.3, the training data for text models was stored in the database. In Pega Platform version 8.3 and later, the training data for text models is stored in Pega Repository. You cannot build new models without setting the repository. After the repository is set, all text models are automatically upgraded and will work normally.
What steps are required to update the application to be compatible with this change?
After a successful upgrade, set the repository in Prediction Studio before building or updating any Natural Language Processing (NLP) models. In Prediction Studio, click Settings > Text Model Data Repository.
For more information, see:
- Increase the accuracy of text analytics models by adding feedback data (8.3)
- Updating training data for text analytics models
Text analytics models migration
Valid from Pega Version 8.3
Pega Platform™ now supports the exporting and importing of text analytics models. For example, you can export a model to a production system so that it can gather feedback data. You can then update the model with the collected feedback data to increase the model's accuracy.
Upgrade impact
In versions of Pega Platform earlier than 8.3, the training data for text models was stored in the database. In Pega Platform version 8.3 and later, the training data for text models is stored in Pega Repository. You cannot build new models without setting the repository. After the repository is set, all text models are automatically upgraded and will work normally.
What steps are required to update the application to be compatible with this change?
After a successful upgrade, set the repository in Prediction Studio before building or updating any Natural Language Processing (NLP) models. In Prediction Studio, click Settings > Text Model Data Repository.
For more information, see:
- Increase the accuracy of text analytics models by adding feedback data (8.3)
- Exporting text analytics models
- Importing text analytics models
Connect to Amazon SageMaker models in Prediction Studio
Valid from Pega Version 8.4
Make the most of your custom Amazon SageMaker models in Pega Platform™ by connecting to the models in Prediction Studio. You can then run the Amazon SageMaker models as part of your decision strategies.
For more information, see Enrich your decisioning strategies with H2O and Amazon SageMaker predictive models (8.4).
Import H2O models to Prediction Studio
Valid from Pega Version 8.4
Make the most of your custom H2O models in Pega Platform™ by importing them to Prediction Studio. You can then include the H2O models in your decision strategies.
For more information, see Enrich your decision strategies with H2O and Amazon SageMaker predictive models (8.4).
Support for auditing adaptive model decisions
Valid from Pega Version 8.4
Pega Platform™ now stores all adaptive model scoring data so that you can identify the source of each decision, such as the exact model version that was used for scoring. With this feature, you can ensure that your application is auditable, transparent, and in compliance with regulatory requirements related to using adaptive models.
For more information, see Configuring the Adaptive Decision Manager service.
Create predictions in Prediction Studio
Valid from Pega Version 8.4
Predict customer behavior and business events by creating predictions. To create a prediction, you answer a series of questions about what you want to predict. For example, you can create a prediction to determine the likelihood of customer churn.
For more information, see Create predictions in just a few clicks (8.4).
Improvements for test cases and assertions
Valid from Pega Version 8.4
The process of modifying test cases and assertions has been improved. Adjusting test cases to application changes is now much easier.
You now can:
- Select a page on which to run a tested rule.
- Change the class and rule of unit test cases.
- Create assertions that validate specific error messages on pages, properties, and activities.
- Automatically update decision result assertions with property changes made to a rule.
- Modify a rule's properties directly from decision result assertions.
For more information, see:
- Updating scenario tests
- Setting up your test environment
- Configuring page assertions
- Configuring property assertions
- Configuring decision result assertions
New text analytics APIs for Intelligent Virtual Assistant
Valid from Pega Version 8.4
Pega Platform™ now provides text analytics APIs that separate Intelligent Virtual Assistant and text analyzers into independent modules. This solution prevents integration issues when you change your text analyzer configuration.
For more information, see Text analytics APIs.
Optimized performance of embedded decision strategies
Valid from Pega Version 8.4
The performance of embedded strategies has now been optimized so that these strategies take less time and fewer CPU and memory resources to complete. This enhancement increases the performance of cloud and on-premises deployments.
For more information, see About Strategy rules.
New method of aggregating real-time events
Valid from Pega Version 8.4
Event Strategy now uses the approximate median for calculating aggregations. Approximate median calculation replaces the existing method because it requires fewer system resources for saving or loading the event strategy state. In addition, you can now calculate aggregated values by using a new Landmark window type. The window type captures all values of specific event properties from the start of the data flow that references the event strategy.
For more information, see Adding aggregations in event strategies.