How do I make the following conversion in NumPy?
["1.1", "2.2", "3.2"] ⟶ [1.1, 2.2, 3.2]
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)
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
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'>
.tolist()
at the end, like that b = np.asarray(d, dtype=np.float64).tolist()
to get comma separated list
Nov 23, 2020 at 9:27
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.
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])
You can use this as well
import numpy as np
x=np.array(['1.1', '2.2', '3.3'])
x=np.asfarray(x,float)
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])