cancel
Showing results for 
Search instead for 
Did you mean: 
Data Engineering
cancel
Showing results for 
Search instead for 
Did you mean: 

Delta Live Tables consuming different files from the same path are combining the schema

Arnold_Souza
New Contributor III

Summary

I am using Delta Live Tables to create a pipeline in Databricks and I am facing a problem of merging the schema of different files that are placed in the same folder in a datalake, even though I am using File Patterns to separate the data ingestion.

Details

I have two files in the same path of a storage account. Consider file_1 and file_2. They are placed in the Abfss location like:

abfss://<container>@<storage_account>.dfs.core.windows.net/path/to/folder/

The file_1 has a schema like:

- column_a
- column_b
- column_c

The file_2 has a schema like:

- column_d
- column_e
- column_f

The code that I am applying to create the Delta Live Tables is the following one:

 

 

CREATE OR REFRESH STREAMING LIVE TABLE table_number_1 (
CONSTRAINT correct_schema EXPECT (_rescued_data IS NULL)
)
PARTITIONED BY (_JOB_UPDATED_PARTITION_YEAR, _JOB_UPDATED_PARTITION_MONTH)
COMMENT "Comment for table 1"
TBLPROPERTIES (
-- Quality flag
'mypipeline.quality' = 'bronze',

-- Delta Live Tables table properties
'pipelines.autoOptimize.managed' = 'true',
'pipelines.reset.allowed' = 'true',
'pipelines.autoOptimize.zOrderCols' = '_JOB_UPDATED_PARTITION_YEAR, _JOB_UPDATED_PARTITION_MONTH',

-- delta table options
'delta.enableDeletionVectors' = 'true',
'delta.deletedFileRetentionDuration' = '30 days',
'delta.enableChangeDataFeed' = 'true',
'delta.feature.timestampNtz' = 'supported',

-- enables special characters in the table
'delta.columnMapping.mode' = 'name',
'delta.minReaderVersion' = '2',
'delta.minWriterVersion'= '5'
)
AS
SELECT
*,
_metadata.file_path as _JOB_SOURCE_FILE,
_metadata.file_name as _FILE_NAME,
CONVERT_TIMEZONE('UTC', 'America/Belem', _metadata.file_modification_time) as _MODIFICATION_TIME_BR,
CONVERT_TIMEZONE('UTC', 'America/Belem', current_timestamp()) as _JOB_UPDATED_TIME_BR,
year(_JOB_UPDATED_TIME_BR) AS _JOB_UPDATED_PARTITION_YEAR,
month(_JOB_UPDATED_TIME_BR) AS _JOB_UPDATED_PARTITION_MONTH,
'Datalake' AS _DATA_ORIGIN
FROM cloud_files(
"abfss://<container>@<storage_account>.dfs.core.windows.net/path/to/folder/",
'csv',
map(
-- Generic options
'fileNamePattern', '*file_1*',

-- Common Auto Loader options
'cloudFiles.allowOverwrites', 'true',
'cloudFiles.inferColumnTypes', 'true',
'cloudFiles.maxFilesPerTrigger', '1',

-- CSV file format options
'ignoreLeadingWhiteSpace', 'true',
'ignoreTrailingWhiteSpace', 'true',
'encoding', 'UTF-8',
'header', 'true',
'mode', 'FAILFAST',
'multiLine', 'false',
'readerCaseSensitive', 'false',
'delimiter', ',',
'skipRows', '0',

-- Escape config
'quote', '\"',
'escape', '\"',
'unescapedQuoteHandling', 'BACK_TO_DELIMITER'
)
);

 

 

In this code, I am referring to the ABFSS path using the function cloud_files() [link] but as the folder has different files I am applying a fileNamePattern like an example '*file_1*'. According to the Auto Loader documentation [link] this is a generic option to provide a pattern for choosing files in a folder.

The problem is that when I start the DLT Pipeline to create the two tables, both of them are materialized with the following schema:

- column_a
- column_b
- column_c
- column_d
- column_e
- column_f

That is, somehow the DLT (Delta Live Table) when inferring the schema is combining all the files in the folder instead of using the fileNamePattern provided by me inside the cloud_files function.

That is strange because if I use `Auto Loader` instead of `DLT` via read_files() [link] function then the tables are created in the expected way.

The main question

Does someone know how to deal with this merging schema problem?

1 REPLY 1

Arnold_Souza
New Contributor III

Found a solution:

Never use 'fileNamePattern', '*file_1*',

Instead, put the pattern directly into the path:

"abfss://<container>@<storage_account>.dfs.core.windows.net/path/to/folder/*file_1*"

Welcome to Databricks Community: Lets learn, network and celebrate together

Join our fast-growing data practitioner and expert community of 80K+ members, ready to discover, help and collaborate together while making meaningful connections. 

Click here to register and join today! 

Engage in exciting technical discussions, join a group with your peers and meet our Featured Members.