This displays the figure in a GUI:
import matplotlib.pyplot as plt plt.plot([1, 2, 3], [1, 4, 9]) plt.show()
But how do I instead save the figure to a file (e.g. foo.png)?
matplotlib.pyplot.savefig, the file format can be specified by the extension:
from matplotlib import pyplot as plt plt.savefig('foo.png') plt.savefig('foo.pdf')
That gives a rasterized or vectorized output respectively. In addition, there is sometimes undesirable whitespace around the image, which can be removed with:
Note that if showing the plot,
plt.show() should follow
plt.savefig(); otherwise, the file image will be blank.
As others have said,
fig1.savefig() is indeed the way to save an image.
However I've found that in certain cases the figure is always shown. (eg. with Spyder having
plt.ion(): interactive mode = On.) I work around this by
forcing the the figure window to close with:
(see documentation). This way I don't have a million open figures during a large loop. Example usage:
import matplotlib.pyplot as plt fig, ax = plt.subplots( nrows=1, ncols=1 ) # create figure & 1 axis ax.plot([0,1,2], [10,20,3]) fig.savefig('path/to/save/image/to.png') # save the figure to file plt.close(fig) # close the figure window
You should be able to re-open the figure later if needed to with
fig.show() (didn't test myself).
There was a section on the MatPlotLib documentation addressing exactly this issue, however it has since changed.
It used to say that the easiest way to prevent the figure from popping up is to use a non-interactive backend (eg. Agg), via
import matplotlib matplotlib.use('Agg') import matplotlib.pyplot as plt plt.plot([1,2,3]) plt.savefig('myfig')
New documentation here: https://matplotlib.org/stable/users/faq/howto_faq.html#generate-images-without-having-a-window-appear
Says to not call
plt.show(). However, Spyder's default settings still causes the figure to show. See this hint for a workaround:
I personally prefer using
plt.close( fig ), since then you have the option to hide certain figures (during a loop), but still display figures for post-loop data processing. It is probably slower than choosing a non-interactive backend though - would be interesting if someone tested that.
UPDATE: for Spyder, you usually can't set the backend in this way (Because Spyder usually loads matplotlib early, preventing you from using
plt.switch_backend('Agg'), or Turn off "enable support" in the Spyder prefs and run the
matplotlib.use('Agg') command yourself.
import datetime import numpy as np from matplotlib.backends.backend_pdf import PdfPages import matplotlib.pyplot as plt # Create the PdfPages object to which we will save the pages: # The with statement makes sure that the PdfPages object is closed properly at # the end of the block, even if an Exception occurs. with PdfPages('multipage_pdf.pdf') as pdf: plt.figure(figsize=(3, 3)) plt.plot(range(7), [3, 1, 4, 1, 5, 9, 2], 'r-o') plt.title('Page One') pdf.savefig() # saves the current figure into a pdf page plt.close() plt.rc('text', usetex=True) plt.figure(figsize=(8, 6)) x = np.arange(0, 5, 0.1) plt.plot(x, np.sin(x), 'b-') plt.title('Page Two') pdf.savefig() plt.close() plt.rc('text', usetex=False) fig = plt.figure(figsize=(4, 5)) plt.plot(x, x*x, 'ko') plt.title('Page Three') pdf.savefig(fig) # or you can pass a Figure object to pdf.savefig plt.close() # We can also set the file's metadata via the PdfPages object: d = pdf.infodict() d['Title'] = 'Multipage PDF Example' d['Author'] = u'Jouni K. Sepp\xe4nen' d['Subject'] = 'How to create a multipage pdf file and set its metadata' d['Keywords'] = 'PdfPages multipage keywords author title subject' d['CreationDate'] = datetime.datetime(2009, 11, 13) d['ModDate'] = datetime.datetime.today()
I used the following:
import matplotlib.pyplot as plt p1 = plt.plot(dates, temp, 'r-', label="Temperature (celsius)") p2 = plt.plot(dates, psal, 'b-', label="Salinity (psu)") plt.legend(loc='upper center', numpoints=1, bbox_to_anchor=(0.5, -0.05), ncol=2, fancybox=True, shadow=True) plt.savefig('data.png') plt.show() plt.close()
I found very important to use plt.show after saving the figure, otherwise it won't work.figure exported in png
The other answers are correct. However, I sometimes find that I want to open the figure object later. For example, I might want to change the label sizes, add a grid, or do other processing. In a perfect world, I would simply rerun the code generating the plot, and adapt the settings. Alas, the world is not perfect. Therefore, in addition to saving to PDF or PNG, I add:
with open('some_file.pkl', "wb") as fp: pickle.dump(fig, fp, protocol=4)
Like this, I can later load the figure object and manipulate the settings as I please.
I also write out the stack with the source-code and
locals() dictionary for each function/method in the stack, so that I can later tell exactly what generated the figure.
NB: Be careful, as sometimes this method generates huge files.
After using the plot() and other functions to create the content you want, you could use a clause like this to select between plotting to the screen or to file:
import matplotlib.pyplot as plt fig = plt.figure(figsize=(4, 5)) # size in inches # use plot(), etc. to create your plot. # Pick one of the following lines to uncomment # save_file = None # save_file = os.path.join(your_directory, your_file_name) if save_file: plt.savefig(save_file) plt.close(fig) else: plt.show()
You can either do:
and remember to let savefig finish before closing the GUI plot. This way you can see the image beforehand.
Alternatively, you can look at it with
Then close the GUI and run the script again, but this time replace
Alternatively, you can use
fig, ax = plt.figure(nrows=1, ncols=1) plt.plot(...) plt.show() fig.savefig('out.pdf')
According to question Matplotlib (pyplot) savefig outputs blank image.
One thing should note: if you use
plt.show and it should after
plt.savefig, or you will give a blank image.
A detailed example:
import numpy as np import matplotlib.pyplot as plt def draw_result(lst_iter, lst_loss, lst_acc, title): plt.plot(lst_iter, lst_loss, '-b', label='loss') plt.plot(lst_iter, lst_acc, '-r', label='accuracy') plt.xlabel("n iteration") plt.legend(loc='upper left') plt.title(title) plt.savefig(title+".png") # should before plt.show method plt.show() def test_draw(): lst_iter = range(100) lst_loss = [0.01 * i + 0.01 * i ** 2 for i in xrange(100)] # lst_loss = np.random.randn(1, 100).reshape((100, )) lst_acc = [0.01 * i - 0.01 * i ** 2 for i in xrange(100)] # lst_acc = np.random.randn(1, 100).reshape((100, )) draw_result(lst_iter, lst_loss, lst_acc, "sgd_method") if __name__ == '__main__': test_draw()
The Solution :
import pandas as pd import numpy as np import matplotlib.pyplot as plt import matplotlib matplotlib.style.use('ggplot') ts = pd.Series(np.random.randn(1000), index=pd.date_range('1/1/2000', periods=1000)) ts = ts.cumsum() plt.figure() ts.plot() plt.savefig("foo.png", bbox_inches='tight')
If you do want to display the image as well as saving the image use:
Additionally to those above, I added
__file__ for the name so the picture and Python file get the same names. I also added few arguments to make It look better:
# Saves a PNG file of the current graph to the folder and updates it every time # (nameOfimage, dpi=(sizeOfimage),Keeps_Labels_From_Disappearing) plt.savefig(__file__+".png",dpi=(250), bbox_inches='tight') # Hard coded name: './test.png'
Just a extra note because I can't comment on posts yet.
If you are using
plt.savefig('myfig') or something along these lines make sure to add a
plt.clf() after your image is saved. This is because savefig does not close the plot and if you add to the plot after without a
plt.clf() you'll be adding to the previous plot.
You may not notice if your plots are similar as it will plot over the previous plot, but if you are in a loop saving your figures the plot will slowly become massive and make your script very slow.
Given that today (was not available when this question was made) lots of people use Jupyter Notebook as python console, there is an extremely easy way to save the plots as
.png, just call the
pylab class from Jupyter Notebook, plot the figure 'inline' jupyter cells, and then drag that figure/image to a local directory. Don't forget
%matplotlib inline in the first line!
import mpltex @mpltex.acs_decorator def myplot(): plt.figure() plt.plot(x,y,'b-',lable='xxx') plt.tight_layout(pad=0.5) plt.savefig('xxxx') # the figure format was controlled by the decorator, it can be either eps, or pdf or png.... plt.close()
I basically use this decorator a lot for publishing academic papers in various journals at American Chemical Society, American Physics Society, Opticcal Society American, Elsivier and so on.
An example can be found as following image (https://github.com/MarkMa1990/gradientDescent):
As suggested before, you can either use:
import matplotlib.pyplot as plt plt.savefig("myfig.png")
For saving whatever IPhython image that you are displaying. Or on a different note (looking from a different angle), if you ever get to work with open cv, or if you have open cv imported, you can go for:
import cv2 cv2.imwrite("myfig.png",image)
But this is just in case if you need to work with Open CV. Otherwise
plt.savefig() should be sufficient.
Nothing was working for me. The problem is that the saved imaged was very small and I could not find how the hell make it bigger.
This seems to make it bigger, but still not full screen.
Hope that helps somebody.
You can save your image with any extension(png, jpg,etc.) and with the resolution you want. Here's a function to save your figure.
import os def save_fig(fig_id, tight_layout=True, fig_extension="png", resolution=300): path = os.path.join(IMAGES_PATH, fig_id + "." + fig_extension) print("Saving figure", fig_id) if tight_layout: plt.tight_layout() plt.savefig(path, format=fig_extension, dpi=resolution)
'fig_id' is the name by which you want to save your figure. Hope it helps:)
using 'agg' due to no gui on server. Debugging on ubuntu 21.10 with gui and VSC. In debug, trying to both display a plot and then saving to file for web UI.
Found out that saving before showing is required, otherwise saved plot is blank. I suppose that showing will clear the plot for some reason. Do this:
plt.savefig(imagePath) plt.show() plt.close(fig)
Instead of this:
plt.show() plt.savefig(imagePath) plt.close(fig)
Just want to point out that if you explicitly define a figure object, then you can technically do
savefig in that order. This is especially useful if you are using a third-party library that uses matplotlib in the backend that automatically calls
show() which causes the
savefig() to save a blank image. So instead of plot/show + savefig, use figure + plot/show + savefig.
fig = plt.figure() # <--- define a figure object plt.plot([1, 2, 3, 1]) plt.show() fig.savefig('myimage.png', dpi=fig.dpi) # <--- save the previously defined fig
Some library plotters returns a figure; in which case, save that figure:
from statsmodels.tsa.seasonal import seasonal_decompose fig = season_decompose(data).plot() fig.savefig('myimage.png')
One thing to note about
plt.close() is that it doesn't delete the figure instance from memory, it merely closes the window showing it; to completely flush it use