153

Is it possible to add some meta-information/metadata to a pandas DataFrame?

For example, the instrument's name used to measure the data, the instrument responsible, etc.

One workaround would be to create a column with that information, but it seems wasteful to store a single piece of information in every row!

2
  • 5
    Please note the @ryanjdillon answer (currently buried near the bottom) which mentions the updated experimental attribute 'attrs' which seems like a start, maybe
    – JohnE
    Aug 14, 2020 at 17:37
  • 1
    You can register custom accessors: pandas.pydata.org/pandas-docs/stable/development/…
    – SiP
    Feb 24, 2022 at 14:57

13 Answers 13

110

Sure, like most Python objects, you can attach new attributes to a pandas.DataFrame:

import pandas as pd
df = pd.DataFrame([])
df.instrument_name = 'Binky'

Note, however, that while you can attach attributes to a DataFrame, operations performed on the DataFrame (such as groupby, pivot, join, assign or loc to name just a few) may return a new DataFrame without the metadata attached. Pandas does not yet have a robust method of propagating metadata attached to DataFrames.

Preserving the metadata in a file is possible. You can find an example of how to store metadata in an HDF5 file here.

9
  • 5
    +1 for you choice of instrument name! Do you have any experience trying to dump these extra attributes into HDFStore?
    – Dan Allan
    Apr 4, 2013 at 14:40
  • 4
    @DanAllan: If store = pd.HDFStore(...), then attributes can be stored with store.root._v_attrs.key = value.
    – unutbu
    Apr 4, 2013 at 16:44
  • 3
    To anyone else who might use this: the docs have added a section on this. pandas.pydata.org/pandas-docs/dev/cookbook.html#hdfstore
    – Dan Allan
    Apr 11, 2013 at 18:50
  • 4
  • 8
    In pandas 0.23.1, creating a new attribute by assigning a dictionary, list, or tuple gives a warning (i.e. df = pd.DataFrame(); df.meta = {} produces UserWarning: Pandas doesn't allow columns to be created via a new attribute name - see https://pandas.pydata.org/pandas-docs/stable/indexing.html#attribute-access). (No warning is given if the attribute has already been created as in df = pd.DataFrame(); df.meta = ''; df.meta = {}).
    – teichert
    Jun 26, 2018 at 19:19
80

As of pandas 1.0, possibly earlier, there is now a Dataframe.attrs property. It is experimental, but this is probably what you'll want in the future. For example:

import pandas as pd
df = pd.DataFrame([])
df.attrs['instrument_name'] = 'Binky'

Find it in the docs here.

Trying this out with to_parquet and then from_parquet, it doesn't seem to persist, so be sure you check that out with your use case.

9
  • 1
    Just a suggestion, but maybe show an example of how to use it? The documentation is basically nothing, but just from playing around with it I can see that it is initialized as an empty dictionary and it seems to be set up so that it has to be a dictionary although of course one could nest a list inside it, for example.
    – JohnE
    Aug 14, 2020 at 17:43
  • 3
    You may find this Stackoverflow discussion useful as it demonstrates how to add custom metadata to parquet files if required
    – rdmolony
    Aug 29, 2020 at 9:17
  • 3
    @rdmolony That's great. I think using a dataclass for the metadata and then subclassing DataFrame to have a method doing the load/dumping as in the post you shared could be a nice solution. Aug 30, 2020 at 8:53
  • 3
    This is nice. In contrast to the accepted answer, this does preserve attributes after saving and loading from pickle! Oct 21, 2020 at 9:27
  • 2
    It is not persistent when stored via to_feather().
    – buhtz
    Jun 8, 2021 at 11:55
14

Not really. Although you could add attributes containing metadata to the DataFrame class as @unutbu mentions, many DataFrame methods return a new DataFrame, so your meta data would be lost. If you need to manipulate your dataframe, then the best option would be to wrap your metadata and DataFrame in another class. See this discussion on GitHub: https://github.com/pydata/pandas/issues/2485

There is currently an open pull request to add a MetaDataFrame object, which would support metadata better.

14

Just ran into this issue myself. As of pandas 0.13, DataFrames have a _metadata attribute on them that does persist through functions that return new DataFrames. Also seems to survive serialization just fine (I've only tried json, but I imagine hdf is covered as well).

7
  • 19
    _metadata is not part of the public API, so I would strongly recommend against relying on this functionality.
    – shoyer
    Jan 20, 2015 at 20:30
  • @Stephan can you elaborate on that please? Why is it important to be a part of the public API? Is your statement also true for version 0.15?
    – TomCho
    Nov 6, 2015 at 13:06
  • 1
    @TomCho yes, that answer is still true today. You might take a look at xray (github.com/xray/xray) for one alternative example of a labeled array that supports metadata, especially if you have multi-dimensional data (.attrs is part of the xray API)
    – shoyer
    Nov 9, 2015 at 6:23
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    _metadata is actually a class attribute, not an instance attribute. So new DataFrame instances inherit from previous ones, as long as the module stays loaded. Do not use _metadata for anything. +1 for xarray!
    – j08lue
    Dec 22, 2016 at 10:53
  • 1
    _metadata -- an unsupported feature that saved my day! Thank you.
    – joctee
    Dec 12, 2018 at 10:35
11

The top answer of attaching arbitrary attributes to the DataFrame object is good, but if you use a dictionary, list, or tuple, it will emit an error of "Pandas doesn't allow columns to be created via a new attribute name". The following solution works for storing arbitrary attributes.

from types import SimpleNamespace
df = pd.DataFrame()
df.meta = SimpleNamespace()
df.meta.foo = [1,2,3]
3
  • Also, if you want this to persist across copies of your dataframe, you need to do pd.DataFrame._metadata += ["meta"] . Note that this part is a attribute of Pandas, not an attribute of your specific dataframe
    – bscan
    Feb 19, 2019 at 23:43
  • This approach won't work anymore as df.meta triggers a warning that Pandas does not allow new columns to be generated this way.
    – anishtain4
    Sep 10, 2019 at 15:01
  • @anishtain4, I just tested it with Pandas 25.1 (released ~2 weeks ago) and this code still works for me. That warning is not triggered since df.meta is a SimpleNamespace. Pandas will not try and build a column from it.
    – bscan
    Sep 10, 2019 at 16:34
8

As mentioned by @choldgraf I have found xarray to be an excellent tool for attaching metadata when comparing data and plotting results between several dataframes.

In my work, we are often comparing the results of several firmware revisions and different test scenarios, adding this information is as simple as this:

df = pd.read_csv(meaningless_test)
metadata = {'fw': foo, 'test_name': bar, 'scenario': sc_01}
ds = xr.Dataset.from_dataframe(df)
ds.attrs = metadata
7

As mentioned in other answers and comments, _metadata is not a part of public API, so it's definitely not a good idea to use it in a production environment. But you still may want to use it in a research prototyping and replace it if it stops working. And right now it works with groupby/apply, which is helpful. This is an example (which I couldn't find in other answers):

df = pd.DataFrame([1, 2, 2, 3, 3], columns=['val']) 
df.my_attribute = "my_value"
df._metadata.append('my_attribute')
df.groupby('val').apply(lambda group: group.my_attribute)

Output:

val
1    my_value
2    my_value
3    my_value
dtype: object
5

Referring to the section Define original properties(of the official Pandas documentation) and if subclassing from pandas.DataFrame is an option, note that:

To let original data structures have additional properties, you should let pandas know what properties are added.

Thus, something you can do - where the name MetaedDataFrame is arbitrarily chosen - is

class MetaedDataFrame(pd.DataFrame):
    """s/e."""
    _metadata = ['instrument_name']

    @property
    def _constructor(self):
        return self.__class__

    # Define the following if providing attribute(s) at instantiation
    # is a requirement, otherwise, if YAGNI, don't.
    def __init__(
        self, *args, instrument_name: str = None, **kwargs
    ):
        super().__init__(*args, **kwargs)
        self.instrument_name = instrument_name

And then instantiate your dataframe with your (_metadata-prespecified) attribute(s)

>>> mdf = MetaedDataFrame(instrument_name='Binky')
>>> mdf.instrument_name
'Binky'

Or even after instantiation

>>> mdf = MetaedDataFrame()
>>> mdf.instrument_name = 'Binky'
'Binky'

Without any kind of warning (as of 2021/06/15): serialization and ~.copy work like a charm. Also, such approach allows to enrich your API, e.g. by adding some instrument_name-based members to MetaedDataFrame, such as properties (or methods):

    [...]
    
    @property
    def lower_instrument_name(self) -> str:
        if self.instrument_name is not None:
            return self.instrument_name.lower()

    [...]
>>> mdf.lower_instrument_name
'binky'

... but this is rather beyond the scope of this question ...

4

Coming pretty late to this, I thought this might be helpful if you need metadata to persist over I/O. There's a relatively new package called h5io that I've been using to accomplish this.

It should let you do a quick read/write from HDF5 for a few common formats, one of them being a dataframe. So you can, for example, put a dataframe in a dictionary and include metadata as fields in the dictionary. E.g.:

save_dict = dict(data=my_df, name='chris', record_date='1/1/2016')
h5io.write_hdf5('path/to/file.hdf5', save_dict)
in_data = h5io.read_hdf5('path/to/file.hdf5')
df = in_data['data']
name = in_data['name']
etc...

Another option would be to look into a project like xray, which is more complex in some ways, but I think it does let you use metadata and is pretty easy to convert to a DataFrame.

4

I have been looking for a solution and found that pandas frame has the property attrs

pd.DataFrame().attrs.update({'your_attribute' : 'value'})
frame.attrs['your_attribute']

This attribute will always stick to your frame whenever you pass it!

2
  • 2
    Note that attrs is experimental and may change without warning, but this is a very simple solution. I wonder if attrs transfers to new dataframes. Jul 15, 2020 at 20:51
  • 3
    Unfortunately, attrs aren't copied to new dataframes :(
    – Adam
    Jul 28, 2020 at 19:31
2

I was having the same issue and used a workaround of creating a new, smaller DF from a dictionary with the metadata:

    meta = {"name": "Sample Dataframe", "Created": "19/07/2019"}
    dfMeta = pd.DataFrame.from_dict(meta, orient='index')

This dfMeta can then be saved alongside your original DF in pickle etc

See Saving and loading multiple objects in pickle file? (Lutz's answer) for excellent answer on saving and retrieving multiple dataframes using pickle

1
  • Yep, you can also save the metadata file in json if it is just a dictionary, rather than casting to a pandas dataframe and then save the dataframe.
    – SeF
    Mar 25, 2021 at 11:43
1

Adding raw attributes with pandas (e.g. df.my_metadata = "source.csv") is not a good idea.

Even on the latest version (1.2.4 on python 3.8), doing this will randomly cause segfaults when doing very simple operations with things like read_csv. It will be hard to debug, because read_csv will work fine, but later on (seemingly at random) you will find that the dataframe has been freed from memory.

It seems cpython extensions involved with pandas seem to make very explicit assumptions about the data layout of the dataframe.

attrs is the only safe way to use metadata properties currently: https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.DataFrame.attrs.html

e.g.

df.attrs.update({'my_metadata' : "source.csv"})

How attrs should behave in all scenarios is not fully fleshed out. You can help provide feedback on the expected behaviors of attrs in this issue: https://github.com/pandas-dev/pandas/issues/28283

1

For those looking to store the datafram in an HDFStore, according to pandas.pydata.org, the recommended approach is:

import pandas as pd

df = pd.DataFrame(dict(keys=['a', 'b', 'c'], values=['1', '2', '3']))
df.to_hdf('/tmp/temp_df.h5', key='temp_df')
store = pd.HDFStore('/tmp/temp_df.h5') 
store.get_storer('temp_df').attrs.attr_key = 'attr_value'
store.close()

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