Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

BUG: pd.infer_freq incompatible with Series["timestamp[s][pyarrow]"]. #58403

Open
2 of 3 tasks
randolf-scholz opened this issue Apr 24, 2024 · 0 comments · May be fixed by #58404
Open
2 of 3 tasks

BUG: pd.infer_freq incompatible with Series["timestamp[s][pyarrow]"]. #58403

randolf-scholz opened this issue Apr 24, 2024 · 0 comments · May be fixed by #58404
Labels
Bug Needs Triage Issue that has not been reviewed by a pandas team member

Comments

@randolf-scholz
Copy link
Contributor

randolf-scholz commented Apr 24, 2024

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 pandas as pd

data = ["2022-01-01T10:00:00", "2022-01-01T10:00:30", "2022-01-01T10:01:00"]
pd_series = pd.Series(data).astype("timestamp[s][pyarrow]")
pd_index = pd.Index(data).astype("timestamp[s][pyarrow]")
assert pd.infer_freq(pd_index.values) == "30s"  # ✅
assert pd.infer_freq(pd_series.values) == "30s"  # ✅
assert pd.infer_freq(pd_index) == "30s"  # ✅
assert pd.infer_freq(pd_series) == "30s"  # ❌

Issue Description

TypeError: cannot infer freq from a non-convertible dtype on a Series of timestamp[s][pyarrow]

However, it works with Index-objects of this dtype, or if we call .values (which converts it to list[pd.Timedelta])

Expected Behavior

There should be no TypeError here, especially since it works with Index objects of this dtype.

Installed Versions

INSTALLED VERSIONS

commit : d9cdd2e
python : 3.11.7.final.0
python-bits : 64
OS : Linux
OS-release : 6.5.0-28-generic
Version : #29~22.04.1-Ubuntu SMP PREEMPT_DYNAMIC Thu Apr 4 14:39:20 UTC 2
machine : x86_64
processor : x86_64
byteorder : little
LC_ALL : None
LANG : en_US.UTF-8
LOCALE : en_US.UTF-8

pandas : 2.2.2
numpy : 1.26.4
pytz : 2024.1
dateutil : 2.9.0.post0
setuptools : 69.5.1
pip : 24.0
Cython : None
pytest : 8.1.1
hypothesis : 6.100.1
sphinx : 7.3.7
blosc : None
feather : None
xlsxwriter : None
lxml.etree : None
html5lib : None
pymysql : None
psycopg2 : None
jinja2 : 3.1.3
IPython : 8.23.0
pandas_datareader : None
adbc-driver-postgresql: None
adbc-driver-sqlite : None
bs4 : 4.12.3
bottleneck : None
dataframe-api-compat : None
fastparquet : None
fsspec : 2024.3.1
gcsfs : None
matplotlib : 3.8.4
numba : None
numexpr : None
odfpy : None
openpyxl : 3.1.2
pandas_gbq : None
pyarrow : 16.0.0
pyreadstat : None
python-calamine : None
pyxlsb : None
s3fs : None
scipy : 1.13.0
sqlalchemy : None
tables : None
tabulate : None
xarray : None
xlrd : None
zstandard : None
tzdata : 2024.1
qtpy : None
pyqt5 : None

@randolf-scholz randolf-scholz added Bug Needs Triage Issue that has not been reviewed by a pandas team member labels Apr 24, 2024
randolf-scholz added a commit to randolf-scholz/pandas that referenced this issue Apr 24, 2024
Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment
Labels
Bug Needs Triage Issue that has not been reviewed by a pandas team member
Projects
None yet
Development

Successfully merging a pull request may close this issue.

1 participant