I am trying to put animations in an iPython notebook and am not finding a solution. I saw one post that discussed using interactive widgets, but there are a couple problems that I have with this: First, every example I see with widgets uses a slider or some other input, whereas I just want the animation to run automatically when the cell is run. Second, all the documentation seems out of date on Jupyter's site--whenever I download and run their notebooks I get these messages about certain modules being deprecated and then later in the file something fails to run, presumably because they're trying to import and access files that no longer exist.
I've seen a few other pages on the topic but they often require downloading binaries or other modules, but I'm partly using this to teach some students Math and I've gotten them to download Anaconda--I was hoping to not further confuse the issue by making them also download and install more complicated things all while spending time not talking about the Math.
So in short, is there a way that I can create animations in an iPython notebook that only require the use of simple import commands that will run out-of-the-box so to speak with the software that comes from Anaconda?
[Edit: I should also note that I've used Tkinter to make animations, and I could make one in matplotlib I'm sure. So if there were a way to get the animations you produce with those to render in an iPython notebook, that would certainly be a working solution for me.]
[Further edit: I suppose I could also say what I am hoping to animate at the moment, although I really want to be pretty flexible about the range of things I could animate if I decide to. Right now I'm trying to make a digital clock that displays each digit in Sumerian base-60 numerals to illustrate a different counting and base system. So it should initially display | then after a second || and so on until ten gets represented as < and so on until eventually the clock ticks over to a minute where it now displays |:| to represent one minute, one second.]
Jupyter widgets is a good way of displaying animations. The code below displays an animated gif.....
You can close this animation using:
N.B. I found a few nice animated gifs from http://www.downgraf.com/inspiration/25-beautiful-loading-bar-design-examples-gif-animated/.
You may find this tutorial interesting.
If you can turn what you need into a matplotlib animation, and I'm fairly sure from your description that it's possible, you can then use
and display your animation using
Might come in handy!
I had a similar problem, and this question helped me get started. I put together a notebook that illustrates using FuncAnimation along with good explanations of why the notebook does some things the way it does. It also has links to instructions on FFmpeg. It also has links to the examples I used in developing and understanding of animations. You can view my contribution at: Animation Illustration
For your question, you might find interactive sliders a better tool. I also created a notebook which demonstrates interactive widgets in Jupyter. It is available here; however, the interactive parts don't work there.
Both are available in a GitHub Repostory
Some options you have for animating plots in Jupyter/IPython, using matplotlib:
Using
display
in a loop UseIPython.display.display(fig)
to display a figure in the output. Using a loop you would want to clear the output before a new figure is shown. Note that this technique gives in general not so smooth resluts. I would hence advice to use any of the below.%matplotlib notebook
Use IPython magic%matplotlib notebook
to set the backend to the notebook backend. This will keep the figure alive instead of displaying a static png file and can hence also show animations.Complete example:
%matplotlib tk
Use IPython magic%matplotlib tk
to set the backend to the tk backend. This will open the figure in a new plotting window, which is interactive and can thus also show animations.Complete example:
Convert animation to mp4 video (option mentionned by @Perfi already):
or use
plt.rcParams["animation.html"] = "html5"
at the beginning of the notebook. This will require to have ffmpeg video codecs available to convert to HTML5 video. The video is then shown inline. This is therefore compatible with%matplotlib inline
backend. Complete example:Convert animation to JavaScript:
or use
plt.rcParams["animation.html"] = "jshtml"
at the beginning of the notebook. This will display the animation as HTML with JavaScript. This highly compatible with most new browsers and also with the%matplotlib inline
backend. It is available in matplotlib 2.1 or higher.Complete example: