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I am writing a parquet file from a Spark DataFrame the following way:

df.write.parquet("path/myfile.parquet", mode = "overwrite", compression="gzip")

This creates a folder with multiple files in it.

When I try to read this into pandas, I get the following errors, depending on which parser I use:

import pandas as pd
df = pd.read_parquet("path/myfile.parquet", engine="pyarrow")

PyArrow:

File "pyarrow\error.pxi", line 83, in pyarrow.lib.check_status

ArrowIOError: Invalid parquet file. Corrupt footer.

fastparquet:

File "C:\Program Files\Anaconda3\lib\site-packages\fastparquet\util.py", line 38, in default_open return open(f, mode)

PermissionError: [Errno 13] Permission denied: 'path/myfile.parquet'

I am using the following versions:

  • Spark 2.4.0
  • Pandas 0.23.4
  • pyarrow 0.10.0
  • fastparquet 0.2.1

I tried gzip as well as snappy compression. Both do not work. I of course made sure that I have the file in a location where Python has permissions to read/write.

It would already help if somebody was able to reproduce this error.

2

The problem is that Spark partitions the file due to its distributed nature (each executor writes a file inside the directory that receives the filename). This is not something supported by Pandas, which expects a file, not a path.

You can circumvent this issue in different ways:

  • Reading the file with an alternative utility, such as the pyarrow.parquet.ParquetDataset, and then convert that to Pandas (I did not test this code).

    arrow_df = pyarrow.parquet.ParquetDataset('path/myfile.parquet')
    pandas_df = arrow_df.to_pandas()
    
  • Another way is to read the separate fragments separately and then concatenate them, as this answer suggest: Read multiple parquet files in a folder and write to single csv file using python

  • 1
    Thank you for your answer. It seems that reading single files (your second bullet point) works. However, the first thing does not work - it looks like pyarrow cannot handle PySpark's footer (see error message in question) – Thomas Jan 15 at 15:37
  • 1
    @Thomas, I am unfortunately not sure about the footer issue. – martinarroyo Jan 21 at 13:18
  • Or you could try calling coalesce on the dataframe: coalesce(1) so it coalesces all the part files into one file and then read from the single file instead of a directory of files? – Omkar Neogi Jun 19 at 14:18
  • @OmkarNeogi: This is only possible if you are the person writing the files, not if you receive them from somebody else... – Thomas Aug 29 at 9:22

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