cancel
Showing results for 
Search instead for 
Did you mean: 
Community Platform Discussions
Connect with fellow community members to discuss general topics related to the Databricks platform, industry trends, and best practices. Share experiences, ask questions, and foster collaboration within the community.
cancel
Showing results for 
Search instead for 
Did you mean: 

Struct type limitation: possible hidden limit for parquet tables

JonasStrenk
New Contributor

Recently I discovered an issue when creating a PARQUET table that contains a column of type STRUCT with more than 350 string subfields. Such a table can be successfully created via a standard DDL script nevertheless each subsequent attempt to work with the table via spark.sql ends up with an Illegal Argument Exception hinting malformed definition of the column. You cannot even drop it unless you use the approach posted here: https://kb.databricks.com/metastore/drop-table-corruptedmetadata

I have searched the internet for leads but was not successful. Is there some hidden limit for STRUCT type definition for PARQUET and Metastore? BTW, changing the format of the table to Delta helps.

The issue can be replicable with the following python script:

from pyspark.sql import SparkSession

spark = SparkSession.builder.getOrCreate()

def generate_unique_strings(count, size=5):
  """
  Returns generator of unique 'count' strings of 'size' length
  """
  seen_strings = set()

  while len(seen_strings) < count:
      new_string = ''.join(random.choice(string.ascii_letters) for _ in range(size)).upper()
      if new_string not in seen_strings:
          seen_strings.add(new_string)
          yield new_string

def get_ddl_for_single_struct_table(struct_field_size, tbl_name, db_name="temp", ):
  """
  Returns string create statement for a table with one struct with 'struct_field_size' STRING fields.
  """
  struct_fields_names = generate_unique_strings(count=struct_field_size)
  struct_fields = ','.join([f"`{field}`: STRING" for field in struct_fields_names])
  return f"CREATE TABLE {db_name}.{tbl_name} (`test` STRUCT<{struct_fields}>) USING PARQUET;"


if __name__ == "__main__":

  # Create a testing DB
  spark.sql("CREATE DATABASE IF NOT EXISTS temp")

  # This will succeed - create a table with test struct column with 300 string fields and try to show its DDL
  TEST_TABLE_NAME_1 = "struct_size_limit_test_300"
  STRUCT_SIZE_1 = 300
  spark.sql(get_ddl_for_single_struct_table(struct_field_size = STRUCT_SIZE_1, tbl_name = TEST_TABLE_NAME_1))
  spark.sql(f"show create table temp.{TEST_TABLE_NAME_1}")

  # This will produce an exception - create a table with test struct column with 500 string fields and try to show its DDL.
  TEST_TABLE_NAME_2 = "struct_size_limit_test_500"
  STRUCT_SIZE_2 = 500
  spark.sql(get_ddl_for_single_struct_table(struct_field_size = STRUCT_SIZE_2,tbl_name = TEST_TABLE_NAME_2))
  spark.sql(f"show create table temp.{TEST_TABLE_NAME_2}")

 

I

0 REPLIES 0

Connect with Databricks Users in Your Area

Join a Regional User Group to connect with local Databricks users. Events will be happening in your city, and you won’t want to miss the chance to attend and share knowledge.

If there isn’t a group near you, start one and help create a community that brings people together.

Request a New Group