What are all the exceptions that can be thrown by pd.read_csv()?

In the example below I am capturing some exception types explicitly and using a generic Exception to catch the others, but what are the others exactly?

Reviewing the documentation for pandas read_csv() I can't see a complete list of exceptions thrown.

In a more general case, what is the recommended practice to determine all of the types of exceptions that can be thrown by any call/library?

import pandas as pd

    df = pd.read_csv("myfile.csv")
except FileNotFoundError:
    print("File not found.")
except pd.errors.EmptyDataError:
    print("No data")
except pd.errors.ParserError:
    print("Parse error")
except Exception:
    print("Some other exception")
  • 2
    I think it's important to ask yourself why you want to do this and whether it adds value to whatever you're doing.
    – cs95
    Oct 11, 2020 at 9:28
  • You can look here: github.com/pandas-dev/pandas/blob/master/pandas/io/… , but I'm not sure why you would want to to do this. Oct 11, 2020 at 9:29
  • 3
    I see some highly ranked answers for other questions such as this one which recommend against capturing generic exceptions: stackoverflow.com/a/9824050/833960. They seem to imply that I should try to determine what exceptions could be thrown, I guess that is what I am asking.
    – MattG
    Oct 11, 2020 at 9:44
  • My use case – a pipeline, where you can import CSV file, select columns, modify values, and create visualisations, export it to another format like xlsx. Let's say a user will send an excel file but with .csv extension. I would like to check if this is an eligible file to process considering content, encodings, separators, etc. Without the knowledge about the error, I would be forced to show a user very generic message.
    – pdaawr
    Jun 1, 2021 at 10:14
  • @DavidErickson you should use Copy permalink when linking to files from VCS repositories. The link is dead now. Here is the current link that will show the to_csv version at the time of posting unless the repo is cleaned: github.com/pandas-dev/pandas/blob/…
    – int_ua
    Jun 21, 2021 at 15:36

4 Answers 4


You can see all the exceptions in the following file:

Python > 3.8 > lib > python > site-packages > pandas > errors > __init__.py

BTW, the exceptions are:

  • IntCastingNaNError
  • NullFrequencyError
  • PerformanceWarning
  • UnsupportedFunctionCall
  • ParserError
  • DtypeWarning
  • EmptyDataError
  • ParserWarning
  • MergeError
  • AccessorRegistrationWarning
  • AbstractMethodError

A complete list and explanation can be found in the pandas source code


If you import pandas and use the dir function you can view all exceptions. Exceptions are contained in the pandas.errors submodule.

In [1]: import pandas as pd

In [2]: ([e for e in dir(pd.errors) if "__" not in e])

You can use these for exception handling. As an example, see below

import pandas as pd
import datetime

bad_date = datetime.date(22, 10, 4)

except pd.errors.OutOfBoundsDatetime as e:
    # do some error handling here 
    # or raise the error
    print("there was a bad date")
    raise e

This is a way to catch all exceptions:

import sys

    int("test") # creates a ValueError
except BaseException as e:
    print('The exception: {}'.format(e))

If you really want to find out the possible exceptions of read_csv you can look at the source code


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