Failed BigQuery > Clickhouse sync

  • Is this your first time deploying Airbyte?: Yes
  • OS Version / Instance: Airbyte on MacOS, Clickhouse on Ubuntu 22.10
  • Memory / Disk: 8 Gb / 256 Gb
  • Deployment: Docker
  • Airbyte Version: 0.40.18
  • Source name/version: BigQuery 0.2.3
  • Destination name/version: Cickhouse 0.2.0
  • Step: Sync
  • Description: I don’t clearly understand what is happening and I’m new to Airbyte
    When I’m trying to sync BigQuery to Clickhouse, it become “Failure Origin: source, Message: Something went wrong within the source connector”, and there is “requests.exceptions.InvalidSchema: No connection adapters were found for ‘http://http//myclickhouseserverip:8123’” and “Additional Failure Information: io.airbyte.workers.general.DefaultReplicationWorker$SourceException: Source cannot be stopped!” in logs
    I tried to off normalization, all variants of namespases, but it never works
    I tried File>Clickhouse, it works but only without normalisation, and BigQuery>File, it works normally

Logs: 3a7a5129_fc08_4196_ba78_04f8e223ba8d_logs_13_txt.txt (194.6 KB)

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