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Overview

In order to provide a list of doctors for revalidation administrators to work with, we rely on a nightly bulk update of all connected doctors from the GMC.

The GMC provide a SOAP web service GetDoctorsForDB (where DB stands for “Designated Body) that returns the details of all doctors currently connected to a given designated body. This web service is used to collect data from the GMC and save it to a DocumentDB database.

Any changes to data in the DocumentDB database are subsequently copied to Elasticsearch (AWS Opensearch) via a CDC (Change Data Capture) process. Elasticsearch is the technology that drives the list pages, providing super fast searching and filtering capabilities.

Further Reading:

How it works

  1. The tis-revalidation-recommendation service (github link) is a Spring Boot application running as three load-balanced tasks in ECS. This service manages a scheduled job that kicks off the overnight sync process at midnight

    The cron expressions that determine the start time of the job are stored in Parameter Store for preprod and prod

    preprod: /tis/revalidation/preprod/recommendation/cron/nightlysync
    prod: /tis/revalidation/prod/recommendation/cron/nightlysync

  2. When the scheduled job in tis-revalidation-recommendation (see 1.) has started, the first operation is to effectively disconnect all doctors by removing their designated bodies and setting the flag existsInGmc to false. As GMC only send us connected doctors, this approach ensures that doctors that were disconnected externally show up as disconnected in our system.

    This has the effect of “hiding” all the doctors for recommendations and current connections, so doctors cannot be worked on at this time.

    Note 1: these changes will be propagated to Elasticsearch via the CDC process at this point.

    Note 2: The tis-revalidation-recommendation service serves double duty as the “revalidation doctor service” - this is an old architecture decision that hasn’t yet been seriously re-examined

  3. Once all of the doctors in our system have been “disconnected” as described above, a message is published to the main reval exchange in our RabbitMQ instance (hosted using AmazonMQ). The routing details are as follows:

      exchange: reval.exchange
      queue: reval.queue.gmcsync.requested.gmcclient
      routingKey: reval.gmcsync.requested


    This message is consumed by the tis-gmc-client (github link) service, a Spring Boot application running as a single task in ECS.

  4. The tis-gmc-client service then sends a SOAP request to GetDoctorsForDB to GMC for each Designated Body Code stored in the following Parameter Store locations for each environement:
    preprod: tis-revalidation-preprod-gmc-designated-bodies-codes
    prod: tis-revalidation-prod-gmc-designated-bodies-codes

  5. The GMC’s GetDoctorsForDB endpoint returns a body of xml data containing the details for all the doctors currently connected to the given DB. This is processed into DTOs (Data Transfer Objects) and then the details of each doctor are individually published to be consumed to RabbitMQ with the following routing details:

      exchange: reval.exchange.gmcsync
      queue: reval.queue.gmcsync.recommendation
      routingKey: reval.gmcsync
  6. The tis-revalidation-recommendation service consumes the messages from the queue reval.queue.gmcsync.recommendation and updates the doctor’s details stored in the DocumentDB database.

    There are several things to note at this point:

    1. Any doctor returned from GMC has the existsInGmc flag field set to true, and their designated body is updated.

    2. Any doctor not returned from GMC remains in the database but disconnected (i.e. null designated body and existsInGmc flag field set to false).

    3. The workflow fields that appear as TIS Status and GMC Status columns in the recommendations doctors list are both updated here. There is logic to “re-set” these status' when a doctor comes under notice once more.

  7. As doctors are updated in the DocumentDB database, these changes are propagated to Elasticsearch via the via the CDC process.

    Note: this in of itself is a lengthy process, first the changes are propagated to the masterDoctorIndex, then they are published back to the recommendation service as the recommendation service manages its own elasticsearch index.

How to Trigger GMC Sync Manually

In case of overnight GMC sync failure, instead of waiting until the job re-run in the next mid-night, we can re-run the job manually to reduce the downtime.

NOTE (18/08/2023): The above is not necessarily advisable, as the sync job takes far to long to complete. Relevant Spike ticket here: TIS21-4956 - Getting issue details... STATUS

  1. Login to the AWS console

  2. Go to API Gateway

  3. Choose the API revalidation-preprod-gateway for Preprod or revalidation-prod-gateway for Prod

  4. Find the endpoint v1/admin/ under “Resources” and click on POST

  5. Click Test to run the endpoint, then the overnight sync job will start

  6. Logs can be checked from Recommendation service

Legacy Stuff (To be deleted?)

GMC Sync Walkthrough: https://web.microsoftstream.com/video/adefa444-30e5-4748-8e97-991d12caad16

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