(building_from_sources)= # Building from sources ```{warning} If you are building the latest development version of Pyodide from the `main` branch, please make sure to follow the build instructions from the dev version of the documentation at [pyodide.org/en/latest/](https://pyodide.org/en/latest/development/building-from-sources.html) ``` Building Pyodide is easiest using the Pyodide Docker image. This approach works with any native operating system as long as Docker is installed. You can also build on your native Linux OS if the correct build prerequisites are installed. Building on MacOS is possible, but there are known issues as of version 0.18 that you will need to work around. It is not possible to build on Windows, but you can use [Windows Subsystem for Linux](https://docs.microsoft.com/en-us/windows/wsl/install-win10) to create a Linux build environment. ## Build instructions ### Using Docker We provide a Debian-based Docker image ([`pyodide/pyodide-env`](https://hub.docker.com/r/pyodide/pyodide-env)) on Docker Hub with the dependencies already installed to make it easier to build Pyodide. On top of that we provide a pre-built image ([`pyodide/pyodide`](https://hub.docker.com/r/pyodide/pyodide)) which can be used for fast custom and partial builds. Note that building from the non pre-built Docker image is _very_ slow on Mac, building on the host machine is preferred if at all possible. ```{note} These Docker images are also available from the Github packages at [`github.com/orgs/pyodide/packages`](https://github.com/orgs/pyodide/packages). ``` 1. Install Docker 2. From a git checkout of Pyodide, run `./run_docker` or `./run_docker --pre-built` 3. Run `make` to build. ```{note} You can control the resources allocated to the build by setting the env vars `EMSDK_NUM_CORE`, `EMCC_CORES` and `PYODIDE_JOBS` (the default for each is 4). ``` If running `make` deterministically stops at some point, increasing the maximum RAM usage available to the docker container might help. (The RAM available to the container is different from the physical RAM capacity of the machine.) Ideally, at least 3 GB of RAM should be available to the docker container to build Pyodide smoothly. These settings can be changed via Docker preferences (see [here](https://stackoverflow.com/questions/44533319/how-to-assign-more-memory-to-docker-container)). You can edit the files in the shared `pyodide` source folder on your host machine (outside of Docker), and then repeatedly run `make` inside the Docker environment to test your changes. ## Using `make` Make sure the prerequisites for [emsdk](https://github.com/emscripten-core/emsdk) are installed. Pyodide will build a custom, patched version of emsdk, so there is no need to build it yourself prior. You need Python 3.10.2 to run the build scripts. To make sure that the correct Python is used during the build it is recommended to use a [virtual environment](https://packaging.python.org/guides/installing-using-pip-and-virtual-environments/#creating-a-virtual-environment), ```{tabbed} Linux Additional build prerequisites are: - A working native compiler toolchain, enough to build [CPython](https://devguide.python.org/setup/#linux). - CMake - FreeType 2 development libraries to compile Matplotlib. - gfortran (GNU Fortran 95 compiler) - [f2c](http://www.netlib.org/f2c/) - [ccache](https://ccache.samba.org) (optional) _highly_ recommended for much faster rebuilds. - (optional) SWIG to compile NLopt - (optional) sqlite3 to compile libproj ``` ```{tabbed} MacOS To build on MacOS, you need: - [Homebrew](https://brew.sh/) for installing dependencies - System libraries in the root directory ( `sudo installer -pkg /Library/Developer/CommandLineTools/Packages/macOS_SDK_headers_for_macOS_10.14.pkg -target /` should do it, see https://github.com/pyenv/pyenv/issues/1219#issuecomment-428305417) - coreutils for md5sum and other essential Unix utilities (`brew install coreutils`). - cmake (`brew install cmake`) - pkg-config (`brew install pkg-config`) - openssl (`brew install openssl`) - autoconf, automaker & libtool (`brew install autoconf automaker libtool`) - gfortran (`brew cask install gfortran`) - f2c: Install wget (`brew install wget`), and then run the buildf2c script from the root directory (`sudo ./tools/buildf2c`) - It is also recommended installing the GNU patch (`brew install gpatch`), and GNU sed (`brew install gnu-sed`) and [re-defining them temporarily as `patch` and `sed`](https://formulae.brew.sh/formula/gnu-sed). - (optional) SWIG to compile NLopt (`brew install swig`) - (optional) sqlite3 to compile libproj (`brew install sqlite3`) ``` ```{note} If you encounter issues with the requirements, it is useful to check the exact list in the [Dockerfile](https://github.com/pyodide/pyodide/blob/main/Dockerfile) which is tested in the CI. ``` You can install the Python dependencies from the requirement file at the root of Pyodide folder: `pip install -r requirements.txt` After installing the build prerequisites, run from the command line: ```bash make ``` (partial-builds)= ## Partial builds To build a subset of available packages in Pyodide, set the environment variable `PYODIDE_PACKAGES` to a comma separated list of packages. For instance, ``` PYODIDE_PACKAGES="toolz,attrs" make ``` Dependencies of the listed packages will be built automatically as well. The package names must match the folder names in `packages/` exactly; in particular they are case-sensitive. If `PYODIDE_PACKAGES` is not set, a minimal set of packages necessary to run the core test suite is installed, including "micropip", "pyparsing", "pytz", "packaging", "Jinja2", "regex". This is equivalent to setting `PYODIDE_PACKAGES='core'` meta-package. Other supported meta-packages are, - "min-scipy-stack": includes the "core" meta-package as well as some core packages from the scientific python stack and their dependencies: "numpy", "scipy", "pandas", "matplotlib", "scikit-learn", "joblib", "pytest". This option is non exhaustive and is mainly intended to make build faster while testing a diverse set of scientific packages. - "\*" builds all packages - You can exclude a package by prefixing it with "!". micropip and distutils are always automatically included. The cryptography package is a Rust extension. If you want to build it, you will need Rust >= 1.41, you need the [CARGO_HOME](https://doc.rust-lang.org/cargo/reference/environment-variables.html#environment-variables-cargo-reads) environment variable set appropriately, and you need the `wasm32-unknown-emscripten` toolchain installed. If you run `make rust`, Pyodide will install this stuff automatically. If you want to build every package except for cryptography, you can set `PYODIDE_PACKAGES="*,!cryptography"`. ## Environment variables The following environment variables additionally impact the build: - `PYODIDE_JOBS`: the `-j` option passed to the `emmake make` command when applicable for parallel compilation. Default: 3. - `PYODIDE_BASE_URL`: Base URL where Pyodide packages are deployed. It must end with a trailing `/`. Default: `./` to load Pyodide packages from the same base URL path as where `pyodide.js` is located. Example: `{{PYODIDE_CDN_URL}}` - `EXTRA_CFLAGS` : Add extra compilation flags. - `EXTRA_LDFLAGS` : Add extra linker flags. Setting `EXTRA_CFLAGS="-D DEBUG_F"` provides detailed diagnostic information whenever error branches are taken inside the Pyodide core code. These error messages are frequently helpful even when the problem is a fatal configuration problem and Pyodide cannot even be initialized. These error branches occur also in correctly working code, but they are relatively uncommon so in practice the amount of noise generated isn't too large. The shorthand `make debug` automatically sets this flag. In certain cases, setting `EXTRA_LDFLAGS="-s ASSERTIONS=1` or `ASSERTIONS=2` can also be helpful, but this slows down the linking and the runtime speed of Pyodide a lot and generates a large amount of noise in the console.