MySQL 1.0.1 (GA) Source Normalization Failure

  • Is this your first time deploying Airbyte?: No
  • OS Version / Instance: Ubuntu
  • Memory / Disk: 48gb
  • Deployment: Docker
  • Airbyte Version: 0.40.1
  • Source name/version: MySQL 1.0.1
  • Destination name/version: Snowflake 0.38
  • Step: Normalization Failure
	  100038 (22018): Numeric value 'true' is not recognized,externalMessage=Normalization failed during the dbt run. This may indicate a problem with the data itself.,metadata=io.airbyte.config.Metadata@33b335ee[additionalProperties={attemptNumber=2, jobId=46501, from_trace_message=true}],stacktrace=4 of 6 ERROR creating incremental model MY_SCHEMA.MY_TABLE......................................................... [ERROR in 13.78s]

Sync was passing before I upgraded from source-mysql:0.6.12 to source-mysql:1.0.1

schema of failed table, which hasn’t change pre and post updating the source connector:

_ab_cdc_deleted_at: String
_ab_cdc_log_file: String
_ab_cdc_log_pos: Number
_ab_cdc_updated_at: String
<MY_COLUMNS>: Boolean
<MY_COLUMNS>: Number
<MY_COLUMNS>: Number
<MY_COLUMNS>: Number
<MY_COLUMNS>: Number

Related Updating Schema via API doesn't persist

It seems as if the mysql source is inferring the columns incorrectly from the source i.e. tinyint(1) is being cast to numeric. in the source DB it is 1/0 and in snowflake it is true/false in the _AIRBYTE_RAW_TABLE but is trying to be cast to numeric

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Perhaps caused by this ?

that looks promising. although I actually think this could be an issue with the destination (snowflake) and incorrect casting in the normalisation phase

Daniel can you check Edward’s comment in Github?

Im posting a new issue here with the latest specs and logs attached