Skip to content

BUG: Selecting columns from a DataFrame affects display of warnings #57054

Open
@EBurtonRod

Description

Pandas version checks

  • I have checked that this issue has not already been reported.

  • I have confirmed this bug exists on the latest version of pandas.

  • I have confirmed this bug exists on the main branch of pandas.

Reproducible Example

import warnings
import pandas as pd

df = pd.DataFrame({"A": [0, 1], "B": [2, 3], "C": [4, 5]})

for _ in range(3):
    # Normal behaviour (warning will display once).
    warnings.warn("First warning.")

for _ in range(3):
    warnings.warn("Second warning.")

    # Select two columns from the DataFrame.
    # This line seems to affect the behaviour of the second
    # warning - it will display on all 3 iterations of the loop.
    df = df[["A", "B"]]

Issue Description

Selecting columns from a DataFrame appears to affect the normal behaviour of Python warnings.

Where a warning is raised repeatedly by a given line within a loop, the default behaviour is that the warning will only be displayed the first time it is raised. This is what happens in the first loop above.

However, in the second loop, the line which filters the columns of the DataFrame (df = df[["A", "B"]]) seems to affect this behaviour, as this time the warning is displayed on each iteration of the loop, rather than just once. Interestingly, this behaviour occurs regardless of whether this filtering line appears before or after the second warn() statement.

The following is the output produced:

..\repeated_warnings.py:8: UserWarning: First warning.
  warnings.warn("First warning.")
..\repeated_warnings.py:11: UserWarning: Second warning.
  warnings.warn("Second warning.")
..\repeated_warnings.py:11: UserWarning: Second warning.
  warnings.warn("Second warning.")
..\repeated_warnings.py:11: UserWarning: Second warning.
  warnings.warn("Second warning.")

I've experimented with putting warnings.resetwarnings() at the start of the script and then examining the contents of the warnings.filters list immediately prior to the two warn() statements - I thought perhaps Pandas might be adding filters to the filters list. However, in each case the filters list seems to be empty, so that doesn't seem to be the problem.

This may be in some way related to Issue #55801, although that issue relates to creation of a DataFrame, rather than selecting columns from it.

Expected Behavior

I would expect each warning to display only once:

..\repeated_warnings.py:8: UserWarning: First warning.
  warnings.warn("First warning.")
..\repeated_warnings.py:11: UserWarning: Second warning.
  warnings.warn("Second warning.")

Installed Versions

INSTALLED VERSIONS

commit : f538741
python : 3.12.1.final.0
python-bits : 64
OS : Windows
OS-release : 10
Version : 10.0.19045
machine : AMD64
processor : Intel64 Family 6 Model 154 Stepping 4, GenuineIntel
byteorder : little
LC_ALL : None
LANG : None
LOCALE : English_Ireland.1252

pandas : 2.2.0
numpy : 1.26.3
pytz : 2023.3.post1
dateutil : 2.8.2
setuptools : 69.0.3
pip : 23.3.2
Cython : None
pytest : None
hypothesis : None
sphinx : None
blosc : None
feather : None
xlsxwriter : None
lxml.etree : None
html5lib : None
pymysql : None
psycopg2 : None
jinja2 : None
IPython : None
pandas_datareader : None
adbc-driver-postgresql: None
adbc-driver-sqlite : None
bs4 : None
bottleneck : None
dataframe-api-compat : None
fastparquet : None
fsspec : None
gcsfs : None
matplotlib : None
numba : None
numexpr : None
odfpy : None
openpyxl : None
pandas_gbq : None
pyarrow : None
pyreadstat : None
python-calamine : None
pyxlsb : None
s3fs : None
scipy : None
sqlalchemy : None
tables : None
tabulate : None
xarray : None
xlrd : None
zstandard : None
tzdata : 2023.4
qtpy : None
pyqt5 : None

Metadata

Assignees

No one assigned

    Labels

    BugUpstream issueIssue related to pandas dependencyWarningsWarnings that appear or should be added to pandas

    Type

    No type

    Projects

    No projects

    Milestone

    No milestone

    Relationships

    None yet

    Development

    No branches or pull requests

    Issue actions