R is a free, open source statistics package written by statisticians, for statisticians. Python on the other hand lacks a comprehensive statistics package. RPy allows you to combine the power of Python with the power of R for an unbeatable combination in data analysis.
Note that in order to use R from Python, you need to know a little of both . . . so the learning curve can be steep. You also need to have a feel for what would be easy in R and what would be easy in Python.
There are some detailed examples below if you want to skip right to ‘em.
I use Python for most tasks, but when I need high-powered stats, I embed R code in my Python scripts to perform the analysis.
Disclaimer: I figured all of this stuff out by trial and error. The RPy documentation, while complete, was difficult for me to make sense of when I was learning. If there’s a better way to do things, please let me know! For the details that I don’t cover here, check the online documentation
Why use R?
You’ll need R if you want to do any sort of sophisticated (or even not-so-sophisiticated) statistical analysis. There are no solid statistics libraries that I’ve come across for Python . . . but maybe that’s because R is the best possible statistics library there could be.
Be warned however that accessing R from Python can get tricky at times. I’ve tried to outline some of what I’ve learned here to make it easier for others.
Why use RPy instead of writing files out to R, then using R scripts to deal with it? I did this for a little while and found that it was too much work to maintain two separate code bases . . . one for Python, then one for R. If I changed anything in the output of a Python script, I’d have to fire up R and open my R scripts to modify and debug them. I’ve found that using RPy lets me put all my code in one spot, resulting in fewer bugs and less maintenance.
R and Python are separate . . .
I found that the easiest way to think about this is to think about doing things “inside R” or “inside Python”. Things that are to be done inside R are typically wrapped in a string (a Python string). For example, this creates a variable inside R called x with a value of 5.
from rpy import *
r('x=5')
Assuming this was typed into a fresh Python session, Python has no idea about the existence of the variable x! It works in reverse, too: R has no idea about what’s in the Python namespace. So you can do this in Python:
x = 'I'm a Python string'
and the variable x inside R is still the same:
r('print(x)') # still 5
. . . but they can talk to each other
RPy does some automatic conversions:
x_from_R = r('x') # 5
What happened here is that RPy looked at what x was inside R, saw that it was an integer, and returned that integer to Python, which assigned it to the Python variable x_from_R. So that’s how you get data from R to Python: by sending a string (the variable name you want to retrieve in R) to the r object.
At first you might think this is how you send data from Python to R:
r('x_from_python') = x
#SyntaxError: can't assign to function call
Nope. Turns out you have to use the r.assign() function to do that:
r.assign('x_from_python', x)
r('print(x_from_python)') # 'I'm a Python string'
So that’s how you get data from Python to R: by using the r.assign() function, first giving the name of the variable you want to be assigned in R followed by the Python object to be sent to R.
Other data types
OK, so you can get integers back from R. And as you can imagine, strings work the same way. But what about more complex data types? This list of conversions tells you which R objects will be converted into which Python objects. It’s pretty intuitive, a string becomes a string, a list becomes a list, etc.
But then there are things like data frames in R, which have row names and column names.
It’s not on that list linked above, but an R data frame is converted to a Python dictionary. For example, the Motor Trend car data set, which comes standard in R, is a data frame.
from rpy import *
r('print(head(mtcars))') # print just the first 6 lines. Note the variable names.
# Returns:
# mpg cyl disp hp drat wt qsec vs am gear carb
# Mazda RX4 21.0 6 160 110 3.90 2.620 16.46 0 1 4 4
# Mazda RX4 Wag 21.0 6 160 110 3.90 2.875 17.02 0 1 4 4
# Datsun 710 22.8 4 108 93 3.85 2.320 18.61 1 1 4 1
# Hornet 4 Drive 21.4 6 258 110 3.08 3.215 19.44 1 0 3 1
# Hornet Sportabout 18.7 8 360 175 3.15 3.440 17.02 0 0 3 2
# Valiant 18.1 6 225 105 2.76 3.460 20.22 1 0 3 1
Now send the whole thing to Python and check the keys of the dictionary that is created:
mt = r('mtcars')
mt.keys()
Note that the keys are the same as the variable names in the dataframe.
Just like you get a Python dictionary from a dataframe, you can send a dictionary to R:
r.assign('df', dict(a=1, b=2, c=3))
r('print(df)')
r('names(df)')
May have to convert it into a dataframe once inside R though:
r('df = data.frame(df)')
R functions
So far, with the exception of r.assign(), we’ve just been sending strings to the r object. But the r object also has methods. Unfortunately, you can’t see them all using IPython’s introspection. Personally I find that I don’t use this functionality that much, (I use r.assign() to get the data into R and then operate on it in there) but here it is for completeness.
There is a trick here. Remember, before we were sending a string to the r object and it was executing the code inside R:
r('x=5')
But when you use a method of the r object, you pass it raw Python objects. For example, you can plot a Python list in R using the plot() method of the r object:
x = [1,2,3] r.plot(x)
There are some slight name changes though. R tends to use a “.” as a spacer in function names, like “_” tends to be used in Python. The “.” however is special in Python, so in method names of the r object, “.” is converted to “_”. For example, R’s t.test() function becomes r.t_test().
These methods of the r object are what Python sees, so that’s why their names have to be changed. On the other hand, you call R function with its true name when you send the r object a string, like we were doing before. So both of these refer to the same underlying t-test function in R:
r.t_test
r('t.test')
This next one is tricky. First, since print is a Python function, it needs to have a slightly different name when you want to use the version in R. So an underscore is added to the end. Second, what’s in the parentheses is a Python string. So all that will get printed is the string, ‘x’ . . . not 5, or “I’m a Python string” or anything else.
r.print_('x') # 'x'
In practice though, if I want to print something I’ll either use Python’s print or if I want to print something from R, I’ll do this:
r('print(x)') # prints 5
Plotting examples
Here’s are a couple of examples of creating a plot. In each case a plot is created of the list 1,2,3. These are trivial examples, but they illustrate different ways of getting data to and from R.
Option 1: Do everything in R
You can execute arbitrary R commands by sending them as a string to the r object. Here, everything is done in R: a list is created and plotted. In this example, the variable x is never seen by Python.
from rpy import *
r("""
y = c(1,2,3)
plot(y)
""")
Note that you can send many R commands in a multi-line string.
Option 2: Use a method of the r object
Here, we start with a Python list, and then send it as the argument to the r.plot() method.
from rpy import * y = [1,2,3] r.plot(y)
Option 3: Get a list from R and plot it with matplotlib in Python
This trivial because you don’t gain anything from making a list in R instead of Python, but it shows that you can send data both ways.
from r import *
import pylab as p
y = r('c(1,2,3)')
p.plot(y)
p.show()
Option 4: Use r.assign() to get data to R, then call it inside R
I tend to use this method a lot with large data sets. The idea is to pass the data into R once, then you can use it from inside R. The trick is to use the r.assign() method.
from rpy import *
y = [1,2,3]
r.assign('Y', y)
r('plot(Y)')
Getting help on R functions
Use the r.help() function. For example, to view the help on anova:
r.help(anova)
This displays the help on screen; it doesn’t return a string.
Non-trivial examples
Plotting and printing things are not what you’d want to use R and RPy for. Instead, you’d want to use them for things that you can’t do in available packages for Python.
Here are some examples where R can really fill in the gaps in Python’s statistical functionality. Anything you can do in R, you can do from Python. Given the wide variety of packages available for R, this is some stupendous power at your fingertips. Now to learn how to wield it!
Linear models in R
Say I have a Python script already up and running, and it returns some data . . . and I want to know if the slope of two variables is significant. I haven’t found any statistics libraries for Python, but in R this kind of functionality comes standard, in the function lm().
Viewing the help for lm(), you can see that it takes a model specification, like “y~x” which means “y on x”. Now, the components of this model specification, y and x, can either refer to variables in the R workspace (which is separate from Python, remember) or they can be variables in a dataframe which is supplied in an optional argument to lm().
So first we need to figure out how to send the data to R; performing the linear regression should be trivial, then we need to get the data back out.
First, let’s set up some test data in Python:
import numpy as npy
x = npy.arange(10)
y = npy.arange(10) + npy.random.standard_normal(x.shape)</pre>
Now send it to R:
<pre>r.assign('x',x)
r.assign('y',y)
(exercise for the reader: instead of assigning x and y individually, how would you get them into R as a dataframe?)
In R, run the linear model and save it as a variable in R. Here, I’m simultaneously saving it as a Python dictionary (sneaky!)
LM = r('linear_model = lm(y~x)')
OK, here’s where it take a little exploring. The dictionary you get back may take some navigating. Looking at it for a little bit, you might notice the ‘coefficients’ key of the dictionary LM, which in turn has two more keys: ‘(Intercept)’ and ‘x’.
{'assign': [0, 1],
'call': <Robj object at 0xb7d3e790>,
'coefficients': {'(Intercept)': 0.28490682478866736,
'x': 0.86209804871669171},
'df.residual': 8,
'effects': array([-13.16882479, 7.83039439, 1.22245056, 0.18398967,
0.51108108, 0.8141431 , -0.45120018, -1.1985602 ,
1.54636612, 0.51341949]),
'fitted.values': array([ 0.28490682, 1.14700487, 2.00910292, 2.87120097, 3.73329902,
4.59539707, 5.45749512, 6.31959317, 7.18169121, 8.04378926]),
'model': {'x': array([ 0., 1., 2., 3., 4., 5., 6., 7., 8., 9.]),
'y': array([-0.64212347, 1.39389811, 3.06676323, 2.84957073, 3.99793052,
5.12226093, 4.67818603, 4.7520944 , 8.3182891 , 8.10661086])},
'qr': {'pivot': [1, 2],
'qr': array([[ -3.16227766, -14.23024947],
[ 0.31622777, 9.08295106],
[ 0.31622777, 0.15621147],
[ 0.31622777, 0.0461151 ],
[ 0.31622777, -0.06398128],
[ 0.31622777, -0.17407766],
[ 0.31622777, -0.28417403],
[ 0.31622777, -0.39427041],
[ 0.31622777, -0.50436679],
[ 0.31622777, -0.61446316]]),
'qraux': [1.316227766016838, 1.2663078500948464],
'rank': 2,
'tol': 9.9999999999999995e-08},
'rank': 2,
'residuals': array([-0.92703029, 0.24689324, 1.05766031, -0.02163025, 0.2646315 ,
0.52686386, -0.77930909, -1.56749877, 1.13659789, 0.0628216 ]),
'terms': <Robj object at 0xb7d3e780>,
'xlevels': {}}
So if all we were after were the slope and intercept, then
slope = LM['coefficients']['x'] intercept = LM['coefficients']['(Intercept)']
But what about a P-value for the slope? It’s nowhere to be seen in that dictionary. Turns out, you need the summary() function in R, and it takes as its input a linear model (among other possible inputs, but here we’re just using a linear model). So save it in R (just in case) and simultaneously save it in Python:
summary = r('LM_summary = summary(linear_model)')
Hmm.
{'adj.r.squared': 0.88847497651170382,
'aliased': {'(Intercept)': False, 'x': False},
'call': <Robj object at 0xb7d3e770>,
'coefficients': array([[ 2.84906825e-01, 5.39776217e-01, 5.27823968e-01,
6.11943659e-01],
[ 8.62098049e-01, 1.01109349e-01, 8.52639301e+00,
2.75251311e-05]]),
'cov.unscaled': array([[ 0.34545455, -0.05454545],
[-0.05454545, 0.01212121]]),
'df': [2, 8, 2],
'fstatistic': {'dendf': 8.0, 'numdf': 1.0, 'value': 72.699377758431851},
'r.squared': 0.90086664578818121,
'residuals': array([-0.92703029, 0.24689324, 1.05766031, -0.02163025, 0.2646315 ,
0.52686386, -0.77930909, -1.56749877, 1.13659789, 0.0628216 ]),
'sigma': 0.9183712712215929,
'terms': <Robj object at 0xb7d3e7c0>}
There’s the r-squared and adjusted r-squared,
R_squared = summary['adj.r.squared']
but no P value. What gives? Turns out Python can’t convert everything perfectly, and a little more exploration is in order. Try printing the summary from R:
r('print(LM_summary)')
Well, that makes more sense, and you can see the P value for the slope is 2.75E-5. But how to extract it from Python?
Call:
lm(formula = y ~ x)
Residuals:
Min 1Q Median 3Q Max
-1.5675 -0.5899 0.1549 0.4613 1.1366
Coefficients:
Estimate Std. Error t value Pr(>|t|)
(Intercept) 0.2849 0.5398 0.528 0.612
x 0.8621 0.1011 8.526 2.75e-05 ***
---
Signif. codes: 0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1
Residual standard error: 0.9184 on 8 degrees of freedom
Multiple R-squared: 0.9009, Adjusted R-squared: 0.8885
F-statistic: 72.7 on 1 and 8 DF, p-value: 2.753e-05
The trick is to match output from the summary printout in R with the dictionary returned to Python. Here, it looks like the key ‘coefficients’ in the summary dictionary in Python gives the numbers in the 2nd row, 3rd column:
P = summary['coefficients'][1,2]
Whew, and there you have it. See, it takes some digging around to get what you need, but now since I’ve done the work for you, you can now do linear regressions from Python. All together it looks like this (can be wrapped in a function or class for your own reuse):
r.assign('x', x)
r.assign('y', y)
LM = r('linear_model = lm(y~x)')
summary = r('summary_LM = summary(linear_model)')
slope = LM['coefficients']['x']
intercept = LM['coefficients']['(Intercept)']
P = summary['coefficients'][1,2]
Redundancy analysis
OK, say you have this data set to perform redundancy analysis (RDA) on. First, you need the package vegan installed, which is fantastic for multivariate stats. It’s probably best to fire up R proper (from a command line, or the GUI if you have it in Windows or OSX) and run
install.packages("vegan", dep=T)
Here’s a heavily commented script, rpy-demo.py, that will:
- load and format the data included in the script
- send the data to R
- perform an RDA in R
- plot the ordination
- save the ordination as a PNG
- print the variance explained by constrained and unconstrained axes as well as each RDA axis.
If you have RPy installed and the vegan package installed, you should be able to just run this Python script.
Often-run analyses that you need R for can be wrapped in a class or module to encapsulate your data analysis needs, so you don’t need to clutter your code with it. Once things are set up that way, it would be as easy as
from myRstuff import lm, rda results = lm(x,y) ordination = rda(data)
For much, much more see the online documentation for RPy, but hopefully I gave you enough to at least get started.

