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I'd like to use pandas for all my analysis along with numpy but use Rpy2 for plotting my data. I want to do all analyses using pandas dataframes and then use full plotting of R via rpy2 to plot these. py2, and am using ipython to plot. What's the correct way to do this?

Nearly all commands I try fail. For example:

  • I'm trying to plot a scatter between two columns of a pandas DataFrame df. I'd like the labels of df to be used in x/y axis just like would be used if it were an R dataframe. Is there a way to do this? When I try to do it with r.plot, I get this gibberish plot:

In: r.plot(df.a, df.b) # df is pandas DataFrame


Out: rpy2.rinterface.NULL

resulting in the plot:

enter image description here

As you can see, the axes labels are messed up and it's not reading the axes labels from the DataFrame like it should (the X axis is column a of df and the Y axis is column b).

  • If I try to make a histogram with r.hist, it doesn't work at all, yielding the error:

    In: r.hist(df.a)
    vectors.pyc in <genexpr>((x,))
        293         if l < 7:
        294             s = '[' + \
    --> 295                 ', '.join((p_str(x, max_width = math.floor(52 / l)) for x in self[ : 8])) +\
        296                 ']'
        297         else:
    vectors.pyc in p_str(x, max_width)
        287                     res = x
        288                 else:
    --> 289                     res = "%s..." % (str(x[ : (max_width - 3)]))
        290             return res
    TypeError: slice indices must be integers or None or have an __index__ method

And resulting in this plot:

enter image description here

Any idea what the error means? And again here, the axes are all messed up and littered with gibberish data.

EDIT: This error occurs only when using ipython. When I run the command from a script, it still produces the problematic plot, but at least runs with no errors. It must be something wrong with calling these commands from ipython.

  • I also tried to convert the pandas DataFrame df to an R DataFrame as recommended by the poster below, but that fails too with this error:

    com.convert_to_r_dataframe(mydf) # mydf is a pandas DataFrame
    ----> 1 com.convert_to_r_dataframe(mydf)
    in convert_to_r_dataframe(df, strings_as_factors)
        275     # FIXME: This doesn't handle MultiIndex
    --> 277     for column in df:
        278         value = df[column]
        279         value_type = value.dtype.type
    TypeError: iteration over non-sequence

How can I get these basic plotting features to work on Pandas DataFrame (with labels of plots read from the labels of the Pandas DataFrame), and also get the conversion between a Pandas DF to an R DF to work?

EDIT2: Here is a complete example of a csv file "test.txt" ( and my code to answer @dale's comment:

import rpy2
from rpy2.robjects import r
import rpy2.robjects.numpy2ri
import pandas.rpy.common as com
from rpy2.robjects.packages import importr
from rpy2.robjects.lib import grid
from rpy2.robjects.lib import ggplot2
from numpy import *
import scipy

# load up pandas df
import pandas
data = pandas.read_table("./test.txt")
# plotting a column fails
print "data.c2: ", data.c2
# Conversion and then plotting also fails
r_df = com.convert_to_r_dataframe(data)

The call to plot the column of "data.c2" fails, even though data.c2 is a column of a pandas df and therefore for all intents and purposes should be a numpy array. I use the activate() call so I thought it would handle this column as a numpy array and plot it.

The second call to plot the dataframe data after conversion to an R dataframe also fails. Why is that? If I load up test.txt from R as a dataframe, I'm able to plot() it and since my dataframe was converted from pandas to R, it seems like it should work here too.

When I do try rmagic in ipython, it does not fire up a plot window for some reason, though it does not error. I.e. if I do:

In [12]: X = np.array([0,1,2,3,4])

In [13]: Y = np.array([3,5,4,6,7])
In [14]: import rpy2

In [15]: from rpy2.robjects import r

In [16]: import rpy2.robjects.numpy2ri

In [17]: import pandas.rpy.common as com

In [18]: from rpy2.robjects.packages import importr

In [19]: from rpy2.robjects.lib import grid

In [20]: from rpy2.robjects.lib import ggplot2

In [21]: rpy2.robjects.numpy2ri.activate()

In [22]: from numpy import *

In [23]: import scipy

In [24]: r.assign("x", X)
<Array - Python:0x592ad88 / R:0x6110850>
[       0,        1,        2,        3,        4]

In [25]: r.assign("y", Y)
<Array - Python:0x592f5f0 / R:0x61109b8>
[       3,        5,        4,        6,        7]

In [27]: %R plot(x,y)

There's no error, but no plot window either. In any case, I'd like to stick to rpy2 and not rely on rmagic if possible.


share|improve this question
you can export csv and import back or use rpy – locojay Feb 1 '13 at 23:46
@locojay: How do I use rpy with pandas dataframe? – user248237dfsf Feb 2 '13 at 0:12
take a look at which uses std python ds... take same approach using pandas df – locojay Feb 2 '13 at 1:21
up vote 6 down vote accepted

[note: Your code in "edit 2" is working here (Python 2.7, rpy2-2.3.2, R-1.15.2).]

As @dale mentions it whenever R objects are anonymous (that is no R symbol exists for the object) the R deparse(substitute()) will end up returning the structure() of the R object, and a possible fix is to specify the "xlab" and "ylab" parameters; for some plots you'll have to also specify main (the title).

An other way to work around that is to use R's formulas and feed the data frame (more below, after we work out the conversion part).

Forget about what is in pandas.rpy. It is both broken and seem to ignore features available in rpy2.

An earlier quick fix to conversion with ipython can be turned into a proper conversion rather easily. I am considering adding one to the rpy2 codebase (with more bells and whistles), but in the meantime just add the following snippet after all your imports in your code examples. It will transparently convert pandas' DataFrame objects into rpy2's DataFrame whenever an R call is made.

from collections import OrderedDict
py2ri_orig = rpy2.robjects.conversion.py2ri
def conversion_pydataframe(obj):
    if isinstance(obj, pandas.core.frame.DataFrame):
        od = OrderedDict()
        for name, values in obj.iteritems():
            if values.dtype.kind == 'O':
                od[name] = rpy2.robjects.vectors.StrVector(values)
                od[name] = rpy2.robjects.conversion.py2ri(values)
        return rpy2.robjects.vectors.DataFrame(od)
    elif isinstance(obj, pandas.core.series.Series):
        # converted as a numpy array
        res = py2ri_orig(obj) 
        # "index" is equivalent to "names" in R
        if obj.ndim == 1:
            res.names = ListVector({'x': ro.conversion.py2ri(obj.index)})
            res.dimnames = ListVector(ro.conversion.py2ri(obj.index))
        return res
        return py2ri_orig(obj) 
rpy2.robjects.conversion.py2ri = conversion_pydataframe

Now the following code will "just work":

r.plot(rpy2.robjects.Formula('c3~c2'), data)
# `data` was converted to an rpy2 data.frame on the fly
# and the a scatter plot c3 vs c2 (with "c2" and "c3" the labels on
# the "x" axis and "y" axis).

I also note that you are importing ggplot2, without using it. Currently the conversion will have to be explicitly requested. For example:

p = ggplot2.ggplot(rpy2.robjects.conversion.py2ri(data)) +\
    ggplot2.geom_histogram(ggplot2.aes_string(x = 'c3'))
share|improve this answer
Your code does not work for me - here's my complete example and its output -- it complains now about datatype 'Series' not being convert-able. Any ideas? – user248237dfsf Feb 14 '13 at 20:55
If I add activate() it works but when I try it for a long dataframe, the error rpy2.rinterface.RRuntimeError: Error in plot.window(...) : need finite 'xlim' values occurs. It never works for any real dataframe. – user248237dfsf Feb 14 '13 at 21:03
I must have only looked at the first error-causing column and moved on when I fixed that one. The error message tells that rpy2 does not know how to convert objects of class pandas.core.series.Series. An elif isinstance(obj, pandas.core.series.Series): before else: and conversion code would trivially fix it. Since conversion of pandas data frames is now part of the rpy2 codebase (will be in release 2.3.3), this is now a bug report (…). – lgautier Feb 14 '13 at 21:08
I was able to handle Series like you say but it's still broken downstream of that. It cannot handle nan values, so I can use dropna() to get rid of those. But even then, r.plot(df) never gives something reasonable on my dfs. It plots crazy things with weird labels, and when I try to get rid of the labels by passing xlab="", ylab="" to r.plot, it says rpy2.rinterface.RRuntimeError: Error in plot.default(...) : formal argument "xlab" matched by multiple actual arguments – user248237dfsf Feb 14 '13 at 21:12
In conversion_pydataframe, what is original_conversion? – unutbu Jan 4 '15 at 1:51

You need to pass in the labels explicitly when calling the r.plot function.

r.plot([1,2,3],[1,2,3], xlab="X", ylab="Y")

When you plot in R, it grabs the labels via deparse(substitute(x)) which essentially grabs the variable name from the plot(testX, testY). When you're passing in python objects via rpy2, it's an anonymous R object and akin to the following in R:

> deparse(substitute(c(1,2,3)))
[1] "c(1, 2, 3)"

which is why you're getting the crazy labels.

A lot of times it's saner to use rpy2 to only push data back and forth.

r.assign('testX', df.A)
r.assign('testY', df.B)
%R plot(testX, testY)

rdf = com.convert_to_r_dataframe(df)
r.assign('bob', rdf)
%R plot(bob$$A, bob$$B)

share|improve this answer
Thank you for your answer, but how can I get around the error I get when trying to call com.convert_to_r_dataframe(mydf)? That seems to be independent of the plot labeling issue – user248237dfsf Feb 8 '13 at 14:55
also, how do you define %R in ipython? – user248237dfsf Feb 8 '13 at 14:56
Post an example dataframe or notebook. – Dale Jung Feb 8 '13 at 17:24
%R is using the RMagic ipython extension. – Dale Jung Feb 8 '13 at 17:24
thank you. I edited my post with complete code and an example csv file that hopefully should clarify the problem. – user248237dfsf Feb 8 '13 at 19:58

use rpy. the conversion is part of pandas so you don't need to do it yoursef

In [1217]: from pandas import DataFrame

In [1218]: df = DataFrame({'A': [1, 2, 3], 'B': [4, 5, 6], 'C':[7,8,9]},
   ......:                index=["one", "two", "three"])

In [1219]: r_dataframe = com.convert_to_r_dataframe(df)

In [1220]: print type(r_dataframe)
<class 'rpy2.robjects.vectors.DataFrame'>
share|improve this answer
we added in 0.10.1 ability to export in HDFStore, so that rhdf5 can read - see… – Jeff Feb 2 '13 at 3:29
This actually doesn't work... I get: 275 # FIXME: This doesn't handle MultiIndex 276 --> 277 for column in df: 278 value = df[column] 279 value_type = value.dtype.type – user248237dfsf Feb 5 '13 at 23:07
@Jeff: The conversion doesn't work and it turns out even the most basic rpy2 calls to R do not work, see above edits – user248237dfsf Feb 6 '13 at 4:02

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