I would like to read several csv files from a directory into pandas and concatenate them into one big DataFrame. I have not been able to figure it out though. Here is what I have so far:

import glob
import pandas as pd

# get data file names
path =r'C:\DRO\DCL_rawdata_files'
filenames = glob.glob(path + "/*.csv")

dfs = []
for filename in filenames:

# Concatenate all data into one DataFrame
big_frame = pd.concat(dfs, ignore_index=True)

I guess I need some help within the for loop???

  • your code does nothing because you are not appending to your dfs list, don't you want to replace the line data = pd.read_csv(filename) with dfs.append(pd.read_csv(filename). You would then need to loop over the list and concat, I don't think concat will work on a list of dfs. – EdChum Jan 3 '14 at 15:05
  • also you are mixing an alias for the module with the module name in your last line, shouldn't it be big_frame = pd.concat(dfs, ignore_index=True)?, anyway once you have a list of dataframes you will need to iterate over the list and concat to big_frame – EdChum Jan 3 '14 at 15:11
  • Yes, I edited the code, but i'm still not able to build a concatenated dataframe from the csv-files, I'm new to python so I need some more help on this – jonas Jan 3 '14 at 15:14
  • you need to loop over dfs now, so something like for df in dfs: big_frame.concat(df, ignore_index=True) should work, you could also try append instead of concat also. – EdChum Jan 3 '14 at 15:16
  • Can you tell more exactly what is not working? Because concat should handle a list of DataFrames just fine like you did. I think this is a very good approach. – joris Jan 3 '14 at 15:18

12 Answers 12


If you have same columns in all your csv files then you can try the code below. I have added header=0 so that after reading csv first row can be assigned as the column names.

import pandas as pd
import glob

path = r'C:\DRO\DCL_rawdata_files' # use your path
all_files = glob.glob(path + "/*.csv")

li = []

for filename in all_files:
    df = pd.read_csv(filename, index_col=None, header=0)

frame = pd.concat(li, axis=0, ignore_index=True)
  • 8
    What is the purpose of the initial frame = pd.DataFrame()? – FooBar Sep 17 '14 at 15:03
  • 5
    I think you should add "ignore_index=True" to pd.concat(list) – stupidbodo Nov 15 '14 at 3:44
  • 189
    The same thing more concise, and perhaps faster as it doesn't use a list: df = pd.concat((pd.read_csv(f) for f in all_files)) Also, one should perhaps use os.path.join(path, "*.csv") instead of path + "/*.csv", which makes it OS independent. – Sid Jan 23 '16 at 0:41
  • 8
    @Sid make this an answer already so that the current atrocity can lose its lead. – ivan_pozdeev Mar 17 '16 at 22:56
  • 4
    @curtisp you can still do that with Sid's answer, just use pandas.read_csv(f).assign(filename = foo) inside the generator. assign will return the entire dataframe including the new column filename – C8H10N4O2 Apr 4 '17 at 20:50

An alternative to darindaCoder's answer:

path = r'C:\DRO\DCL_rawdata_files'                     # use your path
all_files = glob.glob(os.path.join(path, "*.csv"))     # advisable to use os.path.join as this makes concatenation OS independent

df_from_each_file = (pd.read_csv(f) for f in all_files)
concatenated_df   = pd.concat(df_from_each_file, ignore_index=True)
# doesn't create a list, nor does it append to one
  • 1
    @bongbang Using parentheses returns a generator instead of a list. – Sid Apr 15 '16 at 18:45
  • 10
    @Sid the nested parens to form a generator and wrap the arguments to a function are are redundant, i.e. you can just do pd.concat(pd.read_csv(f) for f in all_files). – Mike Jun 21 '16 at 20:28
  • 3
    @Mike that's amazing, wasn't aware, editing my answer accordingly. – Sid Jun 21 '16 at 20:31
  • 3
    @Sid you'd need ignore_index=True unless by luck the csv files have an index column and that index is unique across files. – max Jul 7 '16 at 6:23
  • 5
    I recommend using glob.iglob instead of glob.glob; The first one returns and iterator (instead of a list). – toto_tico Aug 2 '17 at 12:52
import glob, os    
df = pd.concat(map(pd.read_csv, glob.glob(os.path.join('', "my_files*.csv"))))
  • 2
    Excellent one liner, specially useful if no read_csv arguments are needed! – rafaelvalle Nov 9 '17 at 19:38
  • 8
    If, on the other hand, arguments are needed, this can be done with lambdas: df = pd.concat(map(lambda file: pd.read_csv(file, delim_whitespace=True), data_files)) – fiedl Apr 11 '18 at 14:46

The Dask library can read a dataframe from multiple files:

>>> import dask.dataframe as dd
>>> df = dd.read_csv('data*.csv')

(Source: http://dask.pydata.org/en/latest/examples/dataframe-csv.html)

The Dask dataframes implement a subset of the Pandas dataframe API. If all the data fits into memory, you can call df.compute() to convert the dataframe into a Pandas dataframe.


Edit: I googled my way into https://stackoverflow.com/a/21232849/186078. However of late I am finding it faster to do any manipulation using numpy and then assigning it once to dataframe rather than manipulating the dataframe itself on an iterative basis and it seems to work in this solution too.

I do sincerely want anyone hitting this page to consider this approach, but don't want to attach this huge piece of code as a comment and making it less readable.

You can leverage numpy to really speed up the dataframe concatenation.

import os
import glob
import pandas as pd
import numpy as np

path = "my_dir_full_path"
allFiles = glob.glob(os.path.join(path,"*.csv"))

np_array_list = []
for file_ in allFiles:
    df = pd.read_csv(file_,index_col=None, header=0)

comb_np_array = np.vstack(np_array_list)
big_frame = pd.DataFrame(comb_np_array)

big_frame.columns = ["col1","col2"....]

Timing stats:

total files :192
avg lines per file :8492
--approach 1 without numpy -- 8.248656988143921 seconds ---
total records old :1630571
--approach 2 with numpy -- 2.289292573928833 seconds ---
  • Any numbers to back the "speed up"? Specifically, is it faster than stackoverflow.com/questions/20906474/… ? – ivan_pozdeev Mar 17 '16 at 22:46
  • I don't see the OP asking for a way to speed up his concatenation, this just looks like a rework of a pre-existing accepted answer. – pydsigner Mar 17 '16 at 22:49
  • @ivan, see my edit with timing – SKG Mar 18 '16 at 1:29
  • 1
    That won't work if the data has mixed columns types. – Pimin Konstantin Kefaloukos Nov 16 '17 at 13:46
  • 1
    @SKG perfect.. this is the only working solution for me. 500 files 400k rows total in 2 secs. Thanks for posting it. – FrankC Sep 15 '18 at 1:45

Almost all of the answers here are either unnecessarily complex (glob pattern matching) or rely on additional 3rd party libraries. You can do this in 2 lines using everything Pandas and python (all versions) already have built in.

For a few files - 1 liner:

df = pd.concat(map(pd.read_csv, ['data/d1.csv', 'data/d2.csv','data/d3.csv']))

For many files:

from os import listdir

filepaths = [f for f in listdir("./data") if f.endswith('.csv')]
df = pd.concat(map(pd.read_csv, filepaths))

This pandas line which sets the df utilizes 3 things:

  1. Python's map (function, iterable) sends to the function (the pd.read_csv()) the iterable (our list) which is every csv element in filepaths).
  2. Panda's read_csv() function reads in each CSV file as normal.
  3. Panda's concat() brings all these under one df variable.
  • 1
    or just df = pd.concat(map(pd.read_csv, glob.glob('data/*.csv)) – muon Mar 1 at 18:05

If you want to search recursively (Python 3.5 or above), you can do the following:

from glob import iglob
import pandas as pd

path = r'C:\user\your\path\**\*.csv'

all_rec = iglob(path, recursive=True)     
dataframes = (pd.read_csv(f) for f in all_rec)
big_dataframe = pd.concat(dataframes, ignore_index=True)

Note that the three last lines can be expressed in one single line:

df = pd.concat((pd.read_csv(f) for f in iglob(path, recursive=True)), ignore_index=True)

You can find the documentation of ** here. Also, I used iglobinstead of glob, as it returns an iterator instead of a list.

EDIT: Multiplatform recursive function:

You can wrap the above into a multiplatform function (Linux, Windows, Mac), so you can do:

df = read_df_rec('C:\user\your\path', *.csv)

Here is the function:

from glob import iglob
from os.path import join
import pandas as pd

def read_df_rec(path, fn_regex=r'*.csv'):
    return pd.concat((pd.read_csv(f) for f in iglob(
        join(path, '**', fn_regex), recursive=True)), ignore_index=True)

If the multiple csv files are zipped, you may use zipfile to read all and concatenate as below:

import zipfile
import numpy as np
import pandas as pd

ziptrain = zipfile.ZipFile('yourpath/yourfile.zip')


for f in range(0,len(ziptrain.namelist())):
    if (f == 0):
        train = pd.read_csv(ziptrain.open(ziptrain.namelist()[f]))
        my_df = pd.read_csv(ziptrain.open(ziptrain.namelist()[f]))
        train = (pd.DataFrame(np.concatenate((train,my_df),axis=0), 

I found this method pretty elegant.

import pandas as pd
import os

big_frame = pd.DataFrame()

for file in os.listdir():
    if file.endswith('.csv'):
        df = pd.read_csv(file)
        big_frame = big_frame.append(df, ignore_index=True)

one liner using map, but if you'd like to specify additional args, you could do:

import pandas as pd
import glob
import functools

df = pd.concat(map(functools.partial(pd.read_csv, sep='|', compressed=None), 

Note: map be itself does not let you supply additional args.


Another on-liner with list comprehension which allows to use arguments with read_csv.

df = pd.concat([pd.read_csv(f'dir/{f}') for f in os.listdir('dir') if f.endswith('.csv')])

Easy and Fast

Import 2 or more csv's without having to make a list of names.

import glob

df = pd.concat(map(pd.read_csv, glob.glob('data/*.csv'))

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