Is there a direct way to import the contents of a CSV file into a record array, just like how R's read.table(), read.delim(), and read.csv() import data into R dataframes?

Or should I use csv.reader() and then apply numpy.core.records.fromrecords()?


13 Answers 13


Use numpy.genfromtxt() by setting the delimiter kwarg to a comma:

from numpy import genfromtxt
my_data = genfromtxt('my_file.csv', delimiter=',')
  • 17
    What if you want something of different types? Like strings and ints? Mar 21, 2017 at 2:20
  • 15
    @CGTheLegend np.genfromtxt('myfile.csv',delimiter=',',dtype=None) Apr 26, 2017 at 2:45
  • 5
    numpy.loadtxt worked pretty well for me too
    – Yibo Yang
    May 19, 2017 at 17:34
  • 12
    I tried this but I am only getting nan values, why? Also with loadtxt, I am getting UnicodeDecodeError: 'ascii' codec can't decode byte 0xc3 in position 155: ordinal not in range(128). I have umlauts such as ä and ö in the input data.
    – hhh
    Jun 18, 2017 at 12:00
  • 5
    @hhh try adding encoding="utf8" argument. Python is one of the few modern software pieces that frequently causes text encoding problems, which feel as things from the past.
    – kolen
    Sep 24, 2018 at 22:34

I would recommend the read_csv function from the pandas library:

import pandas as pd
df=pd.read_csv('myfile.csv', sep=',',header=None)
array([[ 1. ,  2. ,  3. ],
       [ 4. ,  5.5,  6. ]])

This gives a pandas DataFrame - allowing many useful data manipulation functions which are not directly available with numpy record arrays.

DataFrame is a 2-dimensional labeled data structure with columns of potentially different types. You can think of it like a spreadsheet or SQL table...

I would also recommend genfromtxt. However, since the question asks for a record array, as opposed to a normal array, the dtype=None parameter needs to be added to the genfromtxt call:

Given an input file, myfile.csv:

1.0, 2, 3
4, 5.5, 6

import numpy as np

gives an array:

array([[ 1. ,  2. ,  3. ],
       [ 4. ,  5.5,  6. ]])



gives a record array:

array([(1.0, 2.0, 3), (4.0, 5.5, 6)], 
      dtype=[('f0', '<f8'), ('f1', '<f8'), ('f2', '<i4')])

This has the advantage that file with multiple data types (including strings) can be easily imported.

  • 1
    read_csv works with commas inside quotes. Recommend this over genfromtxt
    – Viet
    Apr 6, 2016 at 21:37
  • 3
    use header=0 to skip the first line in the values, if your file has a 1-line header
    – c-chavez
    Jun 30, 2017 at 13:34
  • Bear in mind that this creates a 2d array: e.g. (1000, 1). np.genfromtxt does not do that: e.g. (1000,).
    – Newskooler
    May 12, 2020 at 18:38

I tried it :

from numpy import genfromtxt
genfromtxt(fname = dest_file, dtype = (<whatever options>))

versus :

import csv
import numpy as np
with open(dest_file,'r') as dest_f:
    data_iter = csv.reader(dest_f,
                           delimiter = delimiter,
                           quotechar = '"')
    data = [data for data in data_iter]
data_array = np.asarray(data, dtype = <whatever options>)

on 4.6 million rows with about 70 columns and found that the NumPy path took 2 min 16 secs and the csv-list comprehension method took 13 seconds.

I would recommend the csv-list comprehension method as it is most likely relies on pre-compiled libraries and not the interpreter as much as NumPy. I suspect the pandas method would have similar interpreter overhead.

  • 28
    I tested code similar to this with a csv file containing 2.6 million rows and 8 columns. numpy.recfromcsv() took about 45 seconds, np.asarray(list(csv.reader())) took about 7 seconds, and pandas.read_csv() took about 2 seconds (!). (The file had recently been read from disk in all cases, so it was already in the operating system's file cache.) I think I'll go with pandas. Mar 31, 2016 at 21:56
  • 6
    I just noticed there are some notes about the design of pandas' fast csv parser at wesmckinney.com/blog/… . The author takes speed and memory requirements pretty seriously. It's also possible to use as_recarray=True to get the result directly as a Python record array rather than a pandas dataframe. Apr 5, 2016 at 19:20

You can also try recfromcsv() which can guess data types and return a properly formatted record array.

  • 10
    If you want to maintain ordering / column names in the CSV, you can use the following invocation: numpy.recfromcsv(fname, delimiter=',', filling_values=numpy.nan, case_sensitive=True, deletechars='', replace_space=' ') The key arguments are the last three. Oct 17, 2013 at 14:00

As I tried both ways using NumPy and Pandas, using pandas has a lot of advantages:

  • Faster
  • Less CPU usage
  • 1/3 RAM usage compared to NumPy genfromtxt

This is my test code:

$ for f in test_pandas.py test_numpy_csv.py ; do  /usr/bin/time python $f; done
2.94user 0.41system 0:03.05elapsed 109%CPU (0avgtext+0avgdata 502068maxresident)k
0inputs+24outputs (0major+107147minor)pagefaults 0swaps

23.29user 0.72system 0:23.72elapsed 101%CPU (0avgtext+0avgdata 1680888maxresident)k
0inputs+0outputs (0major+416145minor)pagefaults 0swaps


from numpy import genfromtxt
train = genfromtxt('/home/hvn/me/notebook/train.csv', delimiter=',')


from pandas import read_csv
df = read_csv('/home/hvn/me/notebook/train.csv')

Data file:

du -h ~/me/notebook/train.csv
 59M    /home/hvn/me/notebook/train.csv

With NumPy and pandas at versions:

$ pip freeze | egrep -i 'pandas|numpy'

Using numpy.loadtxt

A quite simple method. But it requires all the elements being float (int and so on)

import numpy as np 
data = np.loadtxt('c:\\1.csv',delimiter=',',skiprows=0)  
  • 1
    Also can use this: ''' data2 = np.genfromtxt(''c:\\1.csv', delimiter=',') ''' Oct 21, 2021 at 19:53

You can use this code to send CSV file data into an array:

import numpy as np
csv = np.genfromtxt('test.csv', delimiter=",")

I would suggest using tables (pip3 install tables). You can save your .csv file to .h5 using pandas (pip3 install pandas),

import pandas as pd
data = pd.read_csv("dataset.csv")
store = pd.HDFStore('dataset.h5')
store['mydata'] = data

You can then easily, and with less time even for huge amount of data, load your data in a NumPy array.

import pandas as pd
store = pd.HDFStore('dataset.h5')
data = store['mydata']

# Data in NumPy format
data = data.values

This work as a charm...

import csv
with open("data.csv", 'r') as f:
    data = list(csv.reader(f, delimiter=";"))

import numpy as np
data = np.array(data, dtype=np.float)

This is the easiest way:

import csv
with open('testfile.csv', newline='') as csvfile:
    data = list(csv.reader(csvfile))

Now each entry in data is a record, represented as an array. So you have a 2D array. It saved me so much time.

  • 3
    Why should we have to screw around with Pandas, when these tools have so much less feature bloat?
    – Chris
    Jan 7, 2020 at 0:50

Available on the newest pandas and numpy version.

import pandas as pd
import numpy as np

data = pd.read_csv('data.csv', header=None)

# Discover, visualize, and preprocess data using pandas if needed.

data = data.to_numpy()

I tried this:

import pandas as p
import numpy as n

closingValue = p.read_csv("<FILENAME>", usecols=[4], dtype=float)
In [329]: %time my_data = genfromtxt('one.csv', delimiter=',')
CPU times: user 19.8 s, sys: 4.58 s, total: 24.4 s
Wall time: 24.4 s

In [330]: %time df = pd.read_csv("one.csv", skiprows=20)
CPU times: user 1.06 s, sys: 312 ms, total: 1.38 s
Wall time: 1.38 s
  • 1
    Please edit the question with some more information about your solution.
    – Ruli
    Jan 13, 2021 at 8:31

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