I am new to Spark / Databricks. My question is whether is it recommended / possible to mix sql and Pandas API dataframes? Is it possible to create a pyspark.pandas.DataFrame directly from a pyspark.sql.dataframe.DataFrame, or I need to re-read the parquet file?

# Suppose you have an SQL dataframe (now I read Boston Safety Data from Microsoft Open Dataset)
blob_account_name = "azureopendatastorage"
blob_container_name = "citydatacontainer"
blob_relative_path = "Safety/Release/city=Boston"
blob_sas_token = r""

wasbs_path = 'wasbs://%s@%s.blob.core.windows.net/%s' % (blob_container_name, blob_account_name, blob_relative_path)
spark.conf.set('fs.azure.sas.%s.%s.blob.core.windows.net' % (blob_container_name, blob_account_name), blob_sas_token)
print('Remote blob path: ' + wasbs_path)

df = spark.read.parquet(wasbs_path)

# Convert df to pyspark.pandas.Dataframe
df2 =   # ...?

Tried df.toPandas(), that is not good, because it converts to plain, undistributed pandas.core.frame.DataFrame.

A workaround is to read the parquet again into a pyspark.pandas.Dataframe which I try to avoid.


1 Answer 1


IIUC you are looking to convert a spark dataframe to a pandas on spark dataframe.

You can do so with to_pandas_on_spark method.

df2 = df.to_pandas_on_spark()


<class 'pyspark.pandas.frame.DataFrame'>

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.