Incremental Models Failing

  • Is this your first time deploying Airbyte?: No
  • OS Version / Instance: amazon_linux_2_ami_id
  • Memory / Disk: volume size 100gb
  • Deployment: Docker
  • Airbyte Version: 0.40.3
  • Source name/version: Postgres 1.0.4
  • Destination name/version: Snowflake 0.4.34
  • Step: My sync is failing for incremental deduped + history models on the second run (incremental run)
  • Description: The error message I’m getting is Cannot drop column ‘_AIRBYTE_UNIQUE_KEY’ which belongs to a clustering key

I am not sure what may be causing that specific error, but the following tutorial will show you how to see where that value is calculated and how the data is deduplicated. The tutorial is for a Postgres-to-Postgres configuration, but should provide enough guidance that you can figure out how to look into what is happening for the Snowflake destination. See: Incremental data synchronization between Postgres databases

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Hey could you help us with the sync logs file here