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I am trying to write out a list as header and two np.arrays out to a .csv so I can read them back in again. I am new to sci-kit-learn and numpy. I read in the original .csv but greatly modified data and dimensions. Now I wat to write it out, but am at a loss.

I have feature_names = [' age', 'sex', 'height', 'weight', 'shape'] for row headers of type list.

I have a np.array X = [ 31.19418104 0. 1. 0. 0. ] a 984 x 5 array of float

I have a np.array y = 1.0, it is a 984 x 1 array of float

I to write the feature_names, X and y to a .csv file to save and read in again later.

I would like the CSV format to be: feature_names X[0] y[0] ..... X[984] y[984]

Row 0"age","sex","height","weight","shape"

Row 1 "31.19418104","0."," 1.","0.", "0.", "1.0"

Row n-1 .......

I need to maintain this format for the work I am doing.

I was hoping to do something like:

import csv

f = open("output.csv)
r = writer()
len = colLen(X)
r.writerrow(feature_name)
for x to len-1
    r.writerrow(X,y)
f.close()

I gave up after trying to find docs (2 days) and would appreciate your assistance!

share|improve this question
    
Are you gonna read them back again with python? If so you could just save the array in binary. np.save –  M4rtini Dec 14 '13 at 19:53
    
I will be using python but they must be human readable and available to other programming languages and tools so yup ... that's where I can't find anything. –  Chris Rigano Dec 14 '13 at 20:50

2 Answers 2

You can use hstack to concatenate your arrays and savetxt to save to csv (links to docs included)

Demo. Using StringIO is for demonstration purposes, you can provide your file path instead:

Set up data and stack:

from StringIO import StringIO
import numpy as np
# for repeatability
np.random.seed(11)
X = np.random.rand(984,5)
y = np.random.rand(984,1)
Xy = np.hstack([X,y])

Now we have

>>> X[:4]
array([[ 0.18026969,  0.01947524,  0.46321853,  0.72493393,  0.4202036 ],
       [ 0.4854271 ,  0.01278081,  0.48737161,  0.94180665,  0.85079509],
       [ 0.72996447,  0.10873607,  0.89390417,  0.85715425,  0.16508662],
       [ 0.63233401,  0.02048361,  0.11673727,  0.31636731,  0.15791231]])
>>> y[:4]
array([[ 0.2880356 ],
       [ 0.83924851],
       [ 0.92760524],
       [ 0.29316801]])
>>> Xy
array([[ 0.18026969,  0.01947524,  0.46321853,  0.72493393,  0.4202036 ,
         0.2880356 ],
       [ 0.4854271 ,  0.01278081,  0.48737161,  0.94180665,  0.85079509,
         0.83924851],
       [ 0.72996447,  0.10873607,  0.89390417,  0.85715425,  0.16508662,
         0.92760524],
       ...,
       [ 0.0589937 ,  0.09835012,  0.24966667,  0.33485216,  0.48755067,
         0.32618452],
       [ 0.67798696,  0.0563275 ,  0.83806763,  0.14160098,  0.53686285,
         0.49052511],
       [ 0.36844028,  0.82034601,  0.82753566,  0.96210629,  0.63720074,
         0.12148659]])

Save to buffer (or to a file):

>>> feature_names = [' age', 'sex', 'height', 'weight', 'shape']
>>> header = ', '.join(feature_names)
>>> buf = StringIO()
>>> np.savetxt(buf, Xy, fmt="%f", delimiter=', ', header=header)
>>> print '\n'.join(buf.getvalue().splitlines()[:4])
#  age, sex, height, weight, shape
0.180270, 0.019475, 0.463219, 0.724934, 0.420204, 0.288036
0.485427, 0.012781, 0.487372, 0.941807, 0.850795, 0.839249
0.729964, 0.108736, 0.893904, 0.857154, 0.165087, 0.927605

Note, that you probably don't need to add quotes " for your values, as if added, a csv reader will treat them as strings, not floats

share|improve this answer
import csv
with open('some.csv', 'wb') as f:
    out_csv = csv.writer(f)
    headers = [' age', 'sex', 'height', 'weight', 'shape']
    out_csv.writerow(headers)
    myArray = np.array([[1,2,3,4,5],[6,7,8,9,11]])
    for row in myArray:
        out = row.tolist() + [1] #if they're all just ones. 
        out_csv.writerow(out)

Output:
age,sex,height,weight,shape
1,2,3,4,5,1
6,7,8,9,11,1

share|improve this answer
    
This looks really great, but I got this errot: Xy = np.hstack([X_train,y_train]) File "/usr/lib/python2.7/dist-packages/numpy/core/shape_base.py", line 275, in hstack return _nx.concatenate(arrs, 1) ValueError: all the input arrays must have same number of dimensions –  Chris Rigano Dec 14 '13 at 22:06
1  
commented on wrong answer. but anyway, can you show the X_train.shape and y_train.shape? –  M4rtini Dec 14 '13 at 22:09
    
I check the dimensons for X and y respectivly and got: –  Chris Rigano Dec 14 '13 at 22:12
    
<type 'numpy.ndarray'> (984, 5) (984,) –  Chris Rigano Dec 14 '13 at 22:12
1  
y_train.resize(y_train.shape[0],1) try this before the hstack function –  M4rtini Dec 14 '13 at 22:18

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