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Build Status Documentation MIT License Manim Subreddit Manim Discord

Manim is an animation engine for explanatory math videos. It's used to create precise animations programmatically, as seen in the videos at 3Blue1Brown.

We are currently participating in the Lauzhack-Covid19 hackaton. Inspired by 3Blue1Brown's video about simulating an epidemic. We decided to try and push further and investigate the effect of various deconfinement strategies, using as a base his work.

Installation of this fork

Tested on Debian 9 (stretch), Ubuntu (18) and Debian 10 (buster): First, be sure to have installed:

Using Anaconda3 (based on the original installation instructions):

  • Clone the repository: git clone [email protected]:sercharpak/manim.git
  • Go to the main folder: cd manim
  • Create the environment: conda env create -f environment.yml
  • Activate it: conda activate manim
  • [Optional] Install ffmpeg with conda, specifying the codec: conda install x264=='1!152.20180717' ffmpeg=4.0.2 -c conda-forge
  • Install ipython: conda install -c anaconda ipython
  • Install moderngl: conda install -c conda-forge moderngl
  • Install mapbox earcut: pip install mapbox_earcut
  • Install moderngl window: pip install moderngl_window

This change solved an error related to OpenGL and the classic driver-GPU-Graphics-Linux struggle.

Running instructions

  • Activate the environment: conda activate manim
  • Go to the manim main folder: cd manim
  • See the available scenes with: python3 -m manim from_3b1b/active/sir.py
  • See the help options with: python3 -m manim from_3b1b/active/sir.py --help
  • Example of a simulation (original CentralMarketLargePopulation scene) by specifying an output media directory and with no window open by: python3 -m manim from_3b1b/active/sir.py CentralMarketLargePopulation --media_dir /output/custum/media_dir/test_sim --show_file_in_finder

Original Installation Instructions

Manim runs on Python 3.7. You can install it from PyPI via pip:

pip3 install manimlib

System requirements are cairo, ffmpeg, sox, latex (optional, if you want to use LaTeX).

You can now use it via the manim command. For example:

manim my_project.py MyScene

For more options, take a look at the Using manim sections further below.

Directly

If you want to hack on manimlib itself, clone this repository and in that directory execute:

# Install python requirements
python3 -m pip install -r requirements.txt

# Try it out
python3 ./manim.py example_scenes.py SquareToCircle -pl

Directly (Windows)

  1. Install FFmpeg.

  2. Type conda create -n 3b1b python=3.7

  3. Install Cairo. For most users, pycairo‑1.18.0‑cp37‑cp37m‑win32.whl will do fine.

    pip3 install C:\path\to\wheel\pycairo‑1.18.0‑cp37‑cp37m‑win32.whl
  4. Install a LaTeX distribution. MiKTeX is recommended.

  5. Install SoX.

  6. Install the remaining Python packages. Make sure that pycairo==1.17.1 is changed to pycairo==1.18.0 in requirements.txt.

    git clone https://github.com/3b1b/manim_deconfinement.git
    cd manim_deconfinement
    pip3 install -r requirements.txt
    python3 manim.py example_scenes.py SquareToCircle -pl
  7. You might need to add the packages described above (ipython, moderngl, ...)

Anaconda Install

  • Install sox and latex as above.
  • Create a conda environment using conda env create -f environment.yml
  • WINDOWS ONLY Install pyreadline via pip install pyreadline.

Using virtualenv and virtualenvwrapper

After installing virtualenv and virtualenvwrapper

git clone https://github.com/3b1b/manim.git
mkvirtualenv -a manim -r requirements.txt manim
python3 -m manim example_scenes.py SquareToCircle -pl

Using Docker

Since it's a bit tricky to get all the dependencies set up just right, there is a Dockerfile and Compose file provided in this repo as well as a premade image on Docker Hub. The Dockerfile contains instructions on how to build a manim image, while the Compose file contains instructions on how to run the image.

The prebuilt container image has manim repository included. INPUT_PATH is where the container looks for scene files. You must set the INPUT_PATH environment variable to the absolute path containing your scene file and the OUTPUT_PATH environment variable to the directory where you want media to be written.

  1. Install Docker
  2. Install Docker Compose
  3. Render an animation:
INPUT_PATH=/path/to/dir/containing/source/code \
OUTPUT_PATH=/path/to/output/ \
docker-compose run manim example_scenes.py SquareToCircle -l

The command needs to be run as root if your username is not in the docker group.

You can replace example.scenes.py with any relative path from your INPUT_PATH.

docker diagram

After running the output will say files ready at /tmp/output/, which refers to path inside the container. Your OUTPUT_PATH is bind mounted to this /tmp/output so any changes made by the container to /tmp/output will be mirrored on your OUTPUT_PATH. /media/ will be created in OUTPUT_PATH.

-p won't work as manim would look for video player in the container system, which it does not have.

The first time you execute the above command, Docker will pull the image from Docker Hub and cache it. Any subsequent runs until the image is evicted will use the cached image. Note that the image doesn't have any development tools installed and can't preview animations. Its purpose is building and testing only.

Using manim

Try running the following:

python3 -m manim example_scenes.py SquareToCircle -pl

The -p flag in the command above is for previewing, meaning the video file will automatically open when it is done rendering. The -l flag is for a faster rendering at a lower quality.

Some other useful flags include:

  • -s to skip to the end and just show the final frame.
  • -n <number> to skip ahead to the n'th animation of a scene.
  • -f to show the file in finder (for OSX).

Set MEDIA_DIR environment variable to specify where the image and animation files will be written.

Look through the old_projects folder to see the code for previous 3b1b videos. Note, however, that developments are often made to the library without considering backwards compatibility with those old projects. To run an old project with a guarantee that it will work, you will have to go back to the commit which completed that project.

While developing a scene, the -sp flags are helpful to just see what things look like at the end without having to generate the full animation. It can also be helpful to use the -n flag to skip over some number of animations.

Documentation

Documentation is in progress at eulertour.com/learn/manim.

Walkthrough

Todd Zimmerman put together a tutorial on getting started with manim, which has been updated to run on Python 3.7.

Live Streaming

To live stream your animations, simply run manim with the --livestream option.

> python -m manim --livestream
Writing to media/videos/scene/scene/1080p30/LiveStreamTemp.mp4

Manim is now running in streaming mode. Stream animations by passing
them to manim.play(), e.g.
>>> c = Circle()
>>> manim.play(ShowCreation(c))

>>>

It is also possible to stream directly to Twitch. To do that simply pass --livestream and --to-twitch to manim and specify the stream key with --with-key. Then when you follow the above example the stream will directly start on your Twitch channel (with no audio support).

Contributing

Is always welcome. In particular, there is a dire need for tests and documentation.

License

All files in the directory from_3b1b, which by and large generate the visuals for 3b1b videos, are copyright 3Blue1Brown.

The general purpose animation code found in the remainder of the repository, on the other hand, is under the MIT license.