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To get practical value out of the AI model, it must be integrated into the client's business process in an easy-to-use manner. We have taken the approach of making the model available via a real-time online endpoint deployed on a cloud analytics platform. The client then uses the model through communication with the endpoint managed by a client-side program which runs on the user's machine.
 
To get practical value out of the AI model, it must be integrated into the client's business process in an easy-to-use manner. We have taken the approach of making the model available via a real-time online endpoint deployed on a cloud analytics platform. The client then uses the model through communication with the endpoint managed by a client-side program which runs on the user's machine.
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For the field test setting, we have used Azure Databricks as the cloud analytics platform through which the model is deployed. A real-time online endpoint is used to make the model available via an Application Programming Interface (API). This means that authenticated users can access the model from any machine that is connected to the internet. We have produced a light-weight client-side program that runs on the user's machine to manage communication with the model. This program provides a simple graphical interface used to select the CTD files to send to the model for processing. The program receives the flags generated by the model and saves new files containing the results. These files can then be loaded directly into the graphical editor used during the standard CTD quality control process. This provides the user with a simple method to use the model with minimal overhead and integrates the model results directly into the existing quality control software.
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For the field test setting, we have used Azure Databricks as the cloud analytics platform through which the model is deployed. A real-time online endpoint is used to make the model available via an Application Programming Interface (API). This means that authenticated users can access the model from any machine that is connected to the internet. We have produced a light-weight client-side program that runs on the user's machine to manage communication with the model. This program provides a simple graphical interface used to select the CTD files to send to the model for processing. The program then receives a response with the flags generated by the model and saves new files containing the results. These files can then be loaded directly into the graphical editor used during the standard CTD quality control process. This provides the user with a simple method to use the model with minimal overhead and integrates the model results directly into the existing quality control software.
    
The user can optionally send the CTD files back to the model endpoint after the quality control process has been finished. This allows for the scan deletion decisions made by the user to be compared against the model's predicted flags in order to assess the performance of the model. The results are then analyzed to provide a breakdown of the model performance across various metrics which are presented visually in a Power BI report.[[File:Model_communications.png|alt=|center]]
 
The user can optionally send the CTD files back to the model endpoint after the quality control process has been finished. This allows for the scan deletion decisions made by the user to be compared against the model's predicted flags in order to assess the performance of the model. The results are then analyzed to provide a breakdown of the model performance across various metrics which are presented visually in a Power BI report.[[File:Model_communications.png|alt=|center]]
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