# Graphing matplotlib with Python code in a R Markdown document

Is it possible to use Python matplotlib code to draw graph in RStudio?

e.g. below Python matplotlib code:

``````import numpy as np
import matplotlib.pyplot as plt

n = 256
X = np.linspace(-np.pi,np.pi,n,endpoint=True)
Y = np.sin(2*X)

plt.plot (X, Y+1, color='blue', alpha=1.00)
plt.plot (X, Y-1, color='blue', alpha=1.00)
plt.show()
``````

Output graph will be:

Then I need to write a R Markdown to include these code and generate graph automatically after knitting the markdown.

• R can do it easy! why need to use python! – lucky1928 Apr 5 '16 at 21:06
• @lucky1928 It's just a example, python can do many other things which not proper for R. :-) – beetlej Apr 5 '16 at 21:08

One possible solution is save the plot as a image, then load the file to markdown.

``````### Call python code sample
```{r,engine='python'}
import numpy as np
import matplotlib.pyplot as plt

n = 256
X = np.linspace(-np.pi,np.pi,n,endpoint=True)
Y = np.sin(2*X)

fig, ax = plt.subplots( nrows=1, ncols=1 )
ax.plot (X, Y+1, color='blue', alpha=1.00)
ax.plot (X, Y-1, color='blue', alpha=1.00)
#plt.show()
fig.savefig('foo.png', bbox_inches='tight')
print "finished"
```
Output image:
![output](foo.png)

#### The End
``````

Output:

• I had a go today at trying to use hooks in knitr to make this solution more automatic, but the issue was that the hooks are written in R, so don't seem to have any access to the python code. Maybe there's a way to write out some python code at the end though. – Mark Adamson Feb 6 '17 at 22:25
• Now, anno 2018, you can insert Python code in Rmarkdown. To plot something with matplotlib you simply need to add `plt.show`. – user989762 Sep 4 '18 at 12:42
1. install.packages('devtools') first, get install_github function
2. install_github("rstudio/reticulate") install the dev version of reticulate
3. in r markdown doc, use code below to enable the function.

``` ```{r setup, include=FALSE} library(knitr) library(reticulate) knitr::knit_engines\$set(python = reticulate::eng_python) ``` ```

Try it , you will get what you want and don't need to save any image.

You can do that with `reticulate`, but most time in trying to follow a tutorial in doing that you may encounter some technicalities that weren't sufficiently explained.

My answer is a little late but I hope it's a thorough walkthrough of doing it the right way - not rendering it and then loading it as a png but have the python code executed more "natively".

## Step 1: Configure Python from RStudio

You want to insert an R chunk, and run the following code to configure the path to the version of Python you want to use. The default `python` that comes shipped with most OS is usually the outdated python 2 and is not where you install your packages. That is the reason why it's important to do this, to make sure Rstudio will use the specified python instance where your `matplotlib` library (and the other libraries you will be using for that project) can be found:

``````library(reticulate)
# change the following to point to the desired path on your system
use_python('/Users/Samuel/anaconda3/bin/python')
# prints the python configuration
py_config()
``````

You should expect to see that your session is configured with the settings you specified:

``````python:         /Users/Samuel/anaconda3/bin/python
libpython:      /Users/Samuel/anaconda3/lib/libpython3.6m.dylib
pythonhome:     /Users/Samuel/anaconda3:/Users/Samuel/anaconda3
version:        3.6.3 |Anaconda custom (64-bit)| (default, Oct  6 2017, 12:04:38)  [GCC 4.2.1 Compatible Clang 4.0.1 (tags/RELEASE_401/final)]
numpy:          /Users/Samuel/anaconda3/lib/python3.6/site-packages/numpy
numpy_version:  1.15.2

python versions found:
/Users/Samuel/anaconda3/bin/python
/usr/bin/python
/usr/local/bin/python
/usr/local/bin/python3
/Users/Samuel/.virtualenvs/r-tensorflow/bin/python
``````

## Step 2: The familiar `plt.show`

Add a Python chunk (not R!) in your R Markdown document (see attached screenshot) and you can now write native Python code. This means that the familiar `plt.show()` and `plt.imshow()` will work without any extra work. It will be rendered and can be compiled into HTML / PDF using `knitr`.

This will work:

``````plt.imshow(my_image, cmap='gray')
``````

Or a more elaborated example:

``````import numpy as np
import matplotlib.pyplot as plt
import os
import cv2

CATEGORIES = ['Dog', 'Cat']

for category in CATEGORIES:
path = os.path.join(DATADIR, category) # path to cat or dog dir
for img in os.listdir(path):