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This is a beginner's question but how do you save a 2d numpy array to a file in (compressed) R format using rpy2? To be clear, I want to save it in rpy2 and then later read it in using R. I would like to avoid csv as the amount of data will be large.

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3 Answers 3

up vote 4 down vote accepted

Looks like you want the save command. I would use the pandas R interface and do something like the following.

import numpy as np
from rpy2.robjects import r
import pandas.rpy.common as com
from pandas import DataFrame
a = np.array([range(5), range(5)])
df = DataFrame(a)
df = com.convert_to_r_dataframe(df)
r.assign("foo", df)
r("save(foo, file='here.gzip', compress=TRUE)")

There may be a more elegant way, though. I'm open to better suggestions. The above, in R would be used:

> load("here.gzip")
> foo
  X0 X1 X2 X3 X4
0  0  1  2  3  4
1  0  1  2  3  4

You can bypass the use of pandas and use numpy2ri from rpy2. With something like:

from rpy2.robjects import r
from rpy2.robjects.numpy2ri import numpy2ri
a = np.array([[i*2147483647**2 for i in range(5)], range(5)], dtype="uint64")
a = np.array(a, dtype="float64") # <- convert to double precision numeric since R doesn't have unsigned ints
ro = numpy2ri(a)
r.assign("bar", ro)
r("save(bar, file='another.gzip', compress=TRUE)")

In R then:

> load("another.gzip")
> bar
     [,1]         [,2]         [,3]         [,4]         [,5]
[1,]    0 4.611686e+18 9.223372e+18 1.383506e+19 1.844674e+19
[2,]    0 1.000000e+00 2.000000e+00 3.000000e+00 4.000000e+00
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Thanks but installing pandas under ubuntu 11.10 fails with error: Setup script exited with pandas requires NumPy >= 1.6 due to datetime64 dependency –  Raphael Jul 20 '12 at 21:10
I'm not sure how to do it without pandas. Can you upgrade your numpy? I usually use virtualenv and pip which will install the latest stable numpy and pandas for you. –  Skylar Saveland Jul 20 '12 at 21:13
Upgrading numpy will be a pain and also make the script less portable sadly. I feel rpy2 should be able to call save too if I can just get the right syntax for it. –  Raphael Jul 20 '12 at 21:18
added a pure rpy2 example; resulting R objects are a little different, this is probably what you want. –  Skylar Saveland Jul 20 '12 at 21:27
Thanks! I have upvoted. I now get the annoying ("Cannot convert numpy array of unsigned values -- R does not have unsigned integers.") which I suppose is the next thing to worry about :) –  Raphael Jul 20 '12 at 21:34

Here's an example without pandas that adds column and row names

import numpy as np
from rpy2.robjects import rinterface, r, IntVector, FloatVector, StrVector

# older (<2.1) versions of rpy2 have globenEvn vs globalenv
# let's fix it a little
if not hasattr(rinterface,'globalenv'):
        warnings.warn('Old version of rpy2 detected')
        rinterface.globalenv = rinterface.globalEnv

var_name = 'r_var'
vals = np.arange(20,dtype='float').reshape(4,5)

# transpose because R is column major vs python is row major 
r_vals = FloatVector(vals.T.ravel())
# make it  a matrix
# give it some row and column names
r("rownames(%s) <- c%s"%(var_name,tuple('ABCDEF'[i] for i in range(vals.shape[0]))))
r("colnames(%s) <- c%s"%(var_name,tuple(range(vals.shape[1]))))

#save it to file
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Thanks. Is FloatVector changing the type from unsigned int as well as transposing (see my comment to the first answer)? –  Raphael Jul 20 '12 at 21:59
@Raphael FloatVector creates a float but I also tested a version of the above with IntVector (with dtype='int') and had no errors. –  Phil Cooper Jul 20 '12 at 22:16
In my case the data looks like [(5, 'text', 4) (3, 'more text', 2)...] so FloatVector gives me an error. –  Raphael Jul 20 '12 at 22:19

An alternative to rpy2 is to write a mat-file and load this mat-file from R.

in python:

os.chdir("/home/user/proj") #specify a path to save to
import numpy as np
import scipy.io
x = np.linspace(0, 2 * np.pi, 100)
y = np.cos(x)
scipy.io.savemat('test.mat', dict(x=x, y=y))

example copied from: "Converting" Numpy arrays to Matlab and vice versa

in R

object_list = readMat("/home/user/proj/test.mat")

I'm a beginner in python.

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