188

How do I make the following conversion in NumPy?

["1.1", "2.2", "3.2"]  ⟶  [1.1, 2.2, 3.2]

6 Answers 6

260

Well, if you're reading the data in as a list, just do np.array(map(float, list_of_strings)) (or equivalently, use a list comprehension). (In Python 3, you'll need to call list on the map return value if you use map, since map returns an iterator now.)

However, if it's already a numpy array of strings, there's a better way. Use astype().

import numpy as np
x = np.array(['1.1', '2.2', '3.3'])
y = x.astype(np.float)
4
  • and if you have a array with an string that i want to maintain? like ['a','1.1','2.2','3.3'] -> ['a',1.1,2.2,3.3]
    – ePascoal
    May 9, 2015 at 20:09
  • 8
    @MrMartin - Then use a list. Numpy arrays are deliberately homogenously typed. If you really want, you can use an object array (e.g. np.array(['apple', 1.2, 1, {'b'=None, 'c'=object()}], dtype=object)). However, object arrays don't have any significant advantages over using a list. May 9, 2015 at 20:14
  • print(list(y)) gives [1.1, 2.2, 3.3] [Program finished] as requested by OP
    – Subham
    May 3, 2021 at 10:15
  • Does not work if any of the strings is an empty string ('').
    – germ
    Oct 19, 2021 at 23:03
20

Another option might be numpy.asarray:

import numpy as np
a = ["1.1", "2.2", "3.2"]
b = np.asarray(a, dtype=float)

print(a, type(a), type(a[0]))
print(b, type(b), type(b[0]))

resulting in:

['1.1', '2.2', '3.2'] <class 'list'> <class 'str'>
[1.1 2.2 3.2] <class 'numpy.ndarray'> <class 'numpy.float64'>
3
  • 2
    I benchmarked all the answers here in python 2.7. Assuming I'm given a list of 512 strings which represent floating point numbers, this approach was the fastest (slightly faster than pradeep bisht's answer, about 1.5 times faster than Thomio's answer, and more than twice as fast as the accepted answer). Have an upvote!
    – jodag
    Aug 13, 2018 at 4:47
  • 3
    "order='C'" is not needed here since this is a 1-dim array. This also works (at least in Python 3.6.9): b=np.array(a, dtype=float)
    – DavidS
    Sep 21, 2020 at 1:36
  • add .tolist() at the end, like that b = np.asarray(d, dtype=np.float64).tolist() to get comma separated list
    – Yu Da Chi
    Nov 23, 2020 at 9:27
7

If you have (or create) a single string, you can use np.fromstring:

import numpy as np
x = ["1.1", "2.2", "3.2"]
x = ','.join(x)
x = np.fromstring( x, dtype=np.float, sep=',' )

Note, x = ','.join(x) transforms the x array to string '1.1, 2.2, 3.2'. If you read a line from a txt file, each line will be already a string.

6

You can use np.array() with dtype = float:

import numpy as np

x = ["1.1", "2.2", "3.2"]
y = np.array(x,dtype=float)

Output:

array([1.1, 2.2, 3.2])
5

You can use this as well

import numpy as np
x=np.array(['1.1', '2.2', '3.3'])
x=np.asfarray(x,float)
0

If you have an array that contains invalid values such as an empty string (''), then a straightforward casting would raise an error. If you just want to convert this "problematic" array into a numpy float array and handle the invalid values later, then pandas package has a function (pandas.to_numeric) that sets invalid values to NaN and converts the rest to float.

import pandas as pd

a = np.array(["1.1", "2.2"], float)      # OK

lst = ["1.1", "2.2", "3.2.", ""]
a = np.array(lst, float)                 # ValueError: could not convert string to float: '3.2.'
a = pd.to_numeric(lst, errors='coerce')  # array([1.1, 2.2, nan, nan])

Not the answer you're looking for? Browse other questions tagged or ask your own question.