Configuration tips for Predictive Intelligence
Summarize
Summary of Configuration Tips for Predictive Intelligence
This guide provides essential configuration tips for optimizing Predictive Intelligence within ServiceNow, focusing on input data quality, solution training, and troubleshooting common issues that may arise during solution training and prediction processes.
Show less
Key Features
- Input Data Quality: Ensure at least 30,000 records for model training, emphasizing data cleanliness, quality, and distribution to enhance predictive accuracy.
- Solution Training Management: Address common training issues related to instance URLs, user authentication, and data sufficiency to ensure successful model creation.
- Multilingual Support: Improve performance by adjusting processing languages and generating solutions for specific languages when data is available.
- Prediction Evaluation: Utilize logs and threshold settings to troubleshoot prediction failures and improve confidence levels for accurate outcomes.
Key Outcomes
By following these configuration tips, ServiceNow customers can expect:
- Improved model accuracy through enhanced data quality and proper input management.
- Successful training and predictions by resolving common issues and optimizing user settings.
- Effective handling of multilingual data to ensure precise predictions across different languages.
- Clear pathways for troubleshooting and refining predictive solutions for better operational efficiency.
If you encounter issues during your solution training and solution prediction, follow these suggested resolutions.
Input Data
It is recommended to have at least 30,000 records to train your models with, but the accuracy of the model is determined by the input data.
There are three primary factors that determine the quality of the input data used to train solutions:
- Cleanliness: Sanitized data reduces noise, making the model more accurate.
- Quality: The input and output should be valid and correct to train the model to make accurate predictions.
- Distribution: Data that represents the entire dataset as a whole will result in a model that can make more generalized predictions.
Most raw data sets contain dirty and unusable data. Reviewing your input sets before training is essential to keeping accurate predictive models.
It is recommended to use approximately 80% of your input data to train your model and about 20% of the data to evaluate whether the model is accurate. You can compare the model's predicted results against the real values for the 20% of remaining data.
Solution training
| Issue | Resolution or suggested action |
|---|---|
| The solution training remains in Waiting for Training status for too long, as the scheduler job is using an incorrect Glide callback instance URL. | Ensure the glide.servlet.uri property in the Glide instance is set to the correct instance URL. This issue can occur when:
|
| New categories have been added and aren't yet having an impact on training. | This is expected behavior, as the new categories may not yet have sufficient data until the solution is retrained. |
| The solution training fails. | When the training fails, click the Show Training Progress related link on the solution screen to determine where the potential problem resides. |
| The solution training fails due to user authentication. | Navigate to System Security> Users and ensure the sharedservice.worker user is set to Active. |
| The model training returns saying the model cannot be created. The training fails and shows the “Error while training solution” message. The training progress window shows this message: “Solution training failed as either the data used isn't sufficient or the input field isn't predictive of the output field." | This issue can occur when the data quantity or the distribution of field values isn't sufficient for a model to build successfully. Follow these steps to troubleshoot:
|
| The solution has data in multiple languages but the coverage and precision results are poor. | Use the following options to help improve your metrics. Option 1: Update the processing language of the solution to the most prominent non-English language.
Note: English is applied by default for all datasets. Option 2: If there's sufficient data for each language/region:
|
Solution prediction
| Issue | Resolution or suggested action |
|---|---|
| The prediction fails and returns a Java exception where the cause is unknown. |
|
| There is no prediction applied to the incident/case record but the prediction returns a value when tested in the Rest API Explorer. | This can occur when the confidence of the prediction is less than the threshold required to make a prediction. After your solution is trained, use the following steps to confirm if your solution settings need adjusting.
|
Instance cloning
| Issue | Resolution or suggested action |
|---|---|
| After an instance is cloned, predictions for your existing solutions fail. | The ML solution artifacts in the [ml_artifacts] table are stored in the [sys_attachment table]. If the [ml_artifacts] table isn't included in the clone when you run it, the predictions fail. Ensure your clone includes the machine-learning artifacts, as these are critical components of your Predictive Intelligence solution. |
| After an instance is cloned, the solution training fails. | As the cloning run proceeds, it is possible that the sharedservice.worker user has either been inactivated, locked out, or the user ID isn't set. Resolve these problems so that the solution training succeeds. |