455

I wonder if there is a direct way to import the contents of a CSV file into a record array, much in the way that R's read.table(), read.delim(), and read.csv() family imports data to R's data frame?

Or is the best way to use csv.reader() and then apply something like numpy.core.records.fromrecords()?

1

12 Answers 12

717

You can use Numpy's genfromtxt() method to do so, by setting the delimiter kwarg to a comma.

from numpy import genfromtxt
my_data = genfromtxt('my_file.csv', delimiter=',')

More information on the function can be found at its respective documentation.

8
  • 14
    What if you want something of different types? Like strings and ints? – CGTheLegend Mar 21 '17 at 2:20
  • 13
    @CGTheLegend np.genfromtxt('myfile.csv',delimiter=',',dtype=None) – chickensoup Apr 26 '17 at 2:45
  • 4
    numpy.loadtxt worked pretty well for me too – Yibo Yang May 19 '17 at 17:34
  • 11
    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 '17 at 12:00
  • 3
    @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 '18 at 22:34
199

I would recommend the read_csv function from the pandas library:

import pandas as pd
df=pd.read_csv('myfile.csv', sep=',',header=None)
df.values
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
np.genfromtxt('myfile.csv',delimiter=',')

gives an array:

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

and

np.genfromtxt('myfile.csv',delimiter=',',dtype=None)

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.

3
  • 1
    read_csv works with commas inside quotes. Recommend this over genfromtxt – Viet Apr 6 '16 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 '17 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 '20 at 18:38
82

I timed the

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.

2
  • 24
    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. – Matthias Fripp Mar 31 '16 at 21:56
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    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. – Matthias Fripp Apr 5 '16 at 19:20
67

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

1
  • 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. – eacousineau Oct 17 '13 at 14:00
17

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

test_numpy_csv.py

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

test_pandas.py

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'
numpy==1.13.3
pandas==0.20.2
7

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

import numpy as np
csv = np.genfromtxt('test.csv', delimiter=",")
print(csv)
6

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
store.close()

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']
store.close()

# Data in NumPy format
data = data.values
5

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.

1
  • 2
    Why should we have to screw around with Pandas, when these tools have so much less feature bloat? – Chris Jan 7 '20 at 0:50
4

I tried this:

import pandas as p
import numpy as n

closingValue = p.read_csv("<FILENAME>", usecols=[4], dtype=float)
print(closingValue)
4

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)  
4

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)
0
0
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 at 8:31

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