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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!

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up vote 24 down vote accepted

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 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.

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1  
+1 for you choice of instrument name! Do you have any experience trying to dump these extra attributes into HDFStore? – Dan Allan Apr 4 '13 at 14:40
2  
@DanAllan: If store = pd.HDFStore(...), then attributes can be stored with store.root._v_attrs.key = value. – unutbu Apr 4 '13 at 16:44
2  
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 '13 at 18:50
1  
The cookbook or this answer do not explain how to automatically add all attributes that you added to the DataFrame to the HDFStore, though. – j08lue Oct 8 '14 at 14:34

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.

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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).

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4  
_metadata is not part of the public API, so I would strongly recommend against relying on this functionality. – Stephan Jan 20 '15 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 '15 at 13:06
    
@Stephan Sorry, I found an answer of yours elaborating on this: stackoverflow.com/a/28054711. But is that still true today? Are there no better alternatives than to build a wrapper? – TomCho Nov 6 '15 at 14:10
    
@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) – Stephan Nov 9 '15 at 6:23

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.

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