I am trying to read a Parquet file into a Pandas dataframe. Using the API's below (or even if I use pd.read_parquet() wrapper), I am hit by ValueError buffer source array is read-only.

Having searched around online, it seems to relate to Cython not supporting read-only buffer, however I couldn't find any solution on how to address this problem.

How can I read Parquet file into a Pandas dataframe when the API throws ValueError buffer source array is read-only?

In [1]: import pandas as pd
   ...: import numpy as np
   ...: import pyarrow as pa
   ...: import pyarrow.parquet as pq

In [2]: table = pq.read_table('Parquet/Journal.parquet', columns=['SOURCE_CODE','YEAR','MONTH','AMOUNT'])

In [3]: df = table.to_pandas()

In [4]: df.info()
<class 'pandas.core.frame.DataFrame'>
RangeIndex: 85326489 entries, 0 to 85326488
Data columns (total 4 columns):
AMOUNT         float64
SOURCE_CODE    category
YEAR           category
MONTH          category
dtypes: category(3), float64(1)
memory usage: 895.1 MB

In [5]: df.groupby(['SOURCE_CODE','YEAR','MONTH'])['AMOUNT'].sum()
  • As we don't have your data, it is not easy to verify the behavior. Can you make a self-contained example? – ead Dec 31 '18 at 20:37
  • Also, which version of pandas are you using? Cython supports read only memory views since 0.28, thus the resent pandas-versions should not have this limitation (or at least it could be easily fixed when your report the issue). – ead Dec 31 '18 at 20:39
  • my pandas version is 0.23.4. Cython version is 0.29.2. Do I need to configure cython for read-only memory views? – idazuwaika Jan 1 '19 at 3:19

This is a bug in the latest release of pandas (0.23.x) and will be solved in pandas 0.24+. This issue was reported already by other users: https://github.com/pandas-dev/pandas/issues/23276 and is fixed though the following pull request: https://github.com/pandas-dev/pandas/pull/21688

For the sane fix, you need to wait for a new pandas release or manually install the git master. As a workaround you might be able to fix this by adding a dummy float column via df['__dummy__'] = np.nan. This will force pandas' BlockManager to reorder the float columns and should turn AMOUNT into a writable column.

  • Is this the only workaround at the moment? Will copying the dataframe without the read-only flags work? – Geochem B Jan 10 '19 at 16:32
  • Copying does not work at the moment but in the next 2-3 days, Pandas 0.24 will released which fixes this. – Uwe L. Korn Jan 11 '19 at 15:26

I resolved this by adding a single before applying groupby.

df = df.copy() #add this line


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.