Custom path for DBT's profiles.yml

Hey, I would like to add a custom dbt transformation for my replication to Bigquery. I also need to specify custom destination dataset in Bigquery (default one writes to airbyte_raw ). To do that I had to put my file profiles.yml into my dbt project github repo in order to specify my dataset. Following Airbyte doc, I have now to specify the profiles.yml path into Airbyte GUI Entrypoint arguments for dbt cli : that field is as follow run --profiles-dir . And this is where problems begin. When I run my Airbyte sync, I have the following error during dbt phase : Could not find profile named 'normalize' Problem is my profile name is not “normalize”, neither in profiles.yml or in dbt_project.yml. What is the way to specify that profiles.yml path and why is it trying to use normalize project ? Also when I try to run the sync + transformation without specifying custom dataset, it works great.

Thank for the help

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Hey could you create a github issue incase you feel this is yet not resovled