How Do I Perform Incremental Training in an ExeML Project?
Each round of training generates a training version in an ExeML project. If a training result is unsatisfactory (for example, if the precision is not good enough), you can add high-quality data or add or delete labels, and perform training again.
- Currently, incremental training is only supported for the following types of ExeML projects: image classification, object detection, and sound classification.
- For better training results, use high-quality data for incremental training to improve data labeling performance.
Incremental Training Procedure
- Log in to the ModelArts console, and click ExeML in the left navigation pane.
- On the ExeML page, click a project name. The ExeML details page of the project is displayed.
- On the Label Data page, click the Unlabeled tab. On the Unlabeled tab page, you can add images or add or delete labels.
If you add images, label the added images again. If you add or delete labels, check all images and label them again. You also need to check whether new labels need to be added for the labeled data.
- After all images are labeled, click Train in the upper right corner. In the Training Configuration dialog box that is displayed, set Incremental Training Version to the training version that has been completed to perform incremental training based on this version. Set other parameters as prompted.
After the settings are complete, click Yes to start incremental training. The system automatically switches to the Train Model page. After the training is complete, you can view the training details, such as training precision, evaluation result, and training parameters.Figure 1 Selecting an incremental training version
Feedback
Was this page helpful?
Provide feedbackThank you very much for your feedback. We will continue working to improve the documentation.See the reply and handling status in My Cloud VOC.
For any further questions, feel free to contact us through the chatbot.
Chatbot