--- title: "Using reticulate in an R Package" output: rmarkdown::html_vignette editor_options: markdown: wrap: 80 vignette: > %\VignetteIndexEntry{Using reticulate in an R Package} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ## Declaring Python Requirements R package authors can use reticulate to make Python packages accessible to users from R. This vignette documents best practices for how package authors can declare and import their package's Python dependencies. While `reticulate::import()` can be used to load a Python module, it does not provide any mechanism for installing a Python package and actually making sure the module is available. `reticulate::py_require()` helps fill that gap, by giving R package authors a way to declare their Python package dependencies in a way that can be collated and respected across multiple packages using reticulate, each with their own unique requirements. Beginning with Reticulate version 1.41, R packages can declare Python requirements with `py_require()`. Python package dependencies requested via `py_require()` will automatically be provisioned and made available for the user when the Python session is later initialized, via an ephemeral Python virtual environment. These requested packages can then be imported and used within your R package as required. ### Typical Usage `py_require()` is typically called from `.onLoad()`, as shown below: ``` r .onLoad <- function(libname, pkgname) { reticulate::py_require("scipy") } ``` `py_require()` can also be called from other package functions to modify dependencies after the package has loaded. This is useful for packages that support multiple configurations. For example, the `keras3` R package supports multiple backends. In `.onLoad()`, `keras3` configures a default backend, but users can choose a different one using the `use_backend()` function. This function calls `py_require()` with different values based on the selected backend: ``` r .onLoad <- function(...) { py_require("keras") use_backend("tensorflow") # Default to TensorFlow } #' @export use_backend <- function(backend, gpu = TRUE) { py_require("tensorflow", action = "remove") # Remove default backend switch(paste0(backend, "_", get_os()), jax_Linux = if (gpu) py_require("jax[cuda12]") else py_require("jax[cpu]"), jax_macOS = py_require(c("jax", if (gpu) "jax-metal")), jax_Windows = py_require("jax"), tensorflow_Linux = { ... }, tensorflow_macOS = { ... }, tensorflow_Windows = { ... }, torch_Linux = { ... }, torch_macOS = { ... }, torch_Windows = { ... } ) } ``` `keras3` users can then specify a backend like this: ``` r library(keras3) use_backend("jax") ``` ### Best Practices Calling `py_require()` from a package is generally safe and recommended. It ensures dependencies are declared while having no effect on users who manage their own Python environments. `py_require()` replaces older approaches, such as listing dependencies in the `DESCRIPTION` file or calling `use_virtualenv(required = FALSE)` in `.onLoad()`. Be mindful that other R packages and users may also declare Python requirements. Avoid restrictive version constraints. If a version constraint is necessary, prefer `>=` and `!=` over `<=`, as the latter can quickly become outdated. Also, be mindful that an R package's requirements will be combined with a potentially wide variety of user requirements, like `exclude_newer`. An example user script header: ``` r library(pysparklyr) # declares requirements for PySpark library(keras3) # declares requirements for default 'tensorflow' backend use_backend("jax") # removes 'tensorflow' requirements, adds 'jax' requirements library(reticulate) py_require(c("scipy", "polars")) # user-declared requirements py_require(python_version = ">=3.12") py_require(exclude_newer = "2025-02-20") np <- import("numpy") # <-- Python initialized ... ``` ### Declaring Optional Dependencies It's recommended that all `py_require()` calls be made before reticulate initializes the Python session. However, for rarely used optional dependencies, the requirement can be declared right before use: ``` r model_to_dot <- function(x, ...) { reticulate::py_require("pydot") keras$utils$model_to_dot(x, ...) } ``` Calling `py_require()` after Python has initialized causes reticulate to activate a new ephemeral virtual environment containing the additional requirements. Only adding packages is permitted after Python has initialized; calling `py_require()` with `action="set"` or `action="remove"` is not possible. ## Delay Loading Python Modules If your R package wraps Python modules, it's common to import them within `.onLoad()`. Use the `delay_load` flag in `import()` to allow: 1. Successful R package loading even when Python packages are not installed (important for CRAN testing). 2. Users to specify their Python installation before using your package. Example: ``` r scipy <- NULL .onLoad <- function(libname, pkgname) { reticulate::py_require("scipy") scipy <<- reticulate::import("scipy", delay_load = TRUE) } ``` Without `delay_load`, Python would load immediately, preventing users from configuring their environment. ## Installing Python Dependencies `py_require()` is the recommended approach for managing Python dependencies. However, for users who prefer to manually manage a Python installation, you can document what Python packages are required. The `py_install()` function provides a high-level interface for installing Python packages. The packages will by default be installed within the currently active Python installation. ``` r library(reticulate) py_install("scipy") ``` Alternatively, create a wrapper function for `py_install()` (or `virtualenv_create()`) that installs dependencies in a dedicated environment: ``` r install_scipy <- function(envname = "r-scipy", method = "auto", ...) { reticulate::py_install("scipy", envname = envname, method = method, ...) } ``` Note that calling `py_install()` on an ephemeral environment generated from `py_require()` declared requirements will generate a warning. ## Checking and Testing on CRAN To ensure your package is well behaved on CRAN: 1. Use `delay_load` to defer module loading: ``` r scipy <- NULL .onLoad <- function(libname, pkgname) { # delay load foo module (will only be loaded when accessed via $) scipy <<- reticulate::import("scipy", delay_load = TRUE) } ``` 2. Skip tests when required modules are unavailable: ``` r skip_if_no_scipy <- function() { if (!reticulate::py_module_available("scipy")) skip("scipy not available for testing") } test_that("Things work as expected", { skip_if_no_scipy() # test code here... }) ``` ## Implementing S3 Methods Python objects exposed by **reticulate** retain their Python classes in R, allowing you to define S3 methods for them. This can be useful for customizing how objects are printed or structured in R. However, Python objects do not persist across R sessions, meaning an R object that previously pointed to a Python object will become a `NULL` external pointer when reloaded. To safely handle these cases, use `py_is_null_xptr()`, as shown in this example: ``` r print.my_python_object <- function(x, ...) { if (py_is_null_xptr(x)) { cat("\n") } else { cat(py_to_r(x)) } } ``` This prevents errors when interacting with a Python object from a previous session. This prevents errors when attempting to interact with a Python object from a previous session. ### Supporting Versions with Different S3 Classes The Python S3 method for an object is generated from the Python modules and submodules where the object is defined. In sophisticated Python packages, this path might change between package versions. For instance, you can access the `Model` object from `keras.Model` in Python. However, depending on the Keras Python package version, the actual class definition for `Model` may be located in a submodule like `keras._internals.src` or `keras._internals.models`, and since the class module path is considered an internal implementation detail of the Python package, it can vary across Python package versions. As a result, the S3 class for the Python object will also change, depending on the Python package version. To support changing S3 classes, instead of registering methods in NAMESPACE with roxygen, manually register them in `.onLoad()`: ``` r # Python class `DocumentConverterResult` changes with different MarkItDown versions. py_to_r.markitdown.DocumentConverterResult <- function(x) { paste0("# ", x$title, "\n\n", x$text_content) } .onLoad <- function(libname, pkgname) { reticulate::py_require("markitdown") reticulate::py_register_load_hook("markitdown", function() { markitdown <- reticulate::import("markitdown") registerS3method( "py_to_r", nameOfClass(markitdown$DocumentConverterResult), py_to_r.markitdown.DocumentConverterResult, environment(reticulate::py_to_r) ) }) } ``` ### Converting between R and Python **reticulate** provides the generics `r_to_py()` for converting R objects into Python objects, and `py_to_r()` for converting Python objects back into R objects. Package authors can provide methods for these generics to convert Python and R objects otherwise not handled by **reticulate**. **reticulate** provides conversion operators for some of the most commonly used Python objects, including: - Built-in Python objects (lists, dictionaries, numbers, strings, tuples) - NumPy arrays, - Pandas objects (`Index`, `Series`, `DataFrame`), - Python `datetime` objects. If you see that **reticulate** is missing support for conversion of one or more objects from these packages, please [let us know](https://github.com/rstudio/reticulate/issues) and we'll try to implement the missing converter. For Python packages not in this set, you can provide conversion operators in your own extension package. ### Writing your own `r_to_py()` methods `r_to_py()` accepts a `convert` argument, which controls how objects generated from the created Python object are converted. To illustrate, consider the difference between these two cases: ``` r library(reticulate) # [convert = TRUE] => convert Python objects to R when appropriate sys <- import("sys", convert = TRUE) class(sys$path) # [1] "character" # [convert = FALSE] => always return Python objects sys <- import("sys", convert = FALSE) class(sys$path) # [1] "python.builtin.list" "python.builtin.object" ``` This is accomplished through the use of a `convert` flag, which is set on the Python object wrappers used by `reticulate`. Therefore, if you're writing a method `r_to_py.foo()` for an object of class `foo`, you should take care to preserve the `convert` flag on the generated object. This is typically done by: 1. Passing `convert` along to the appropriate lower-level `r_to_py()` method; 2. Explicitly setting the `convert` attribute on the returned Python object. As an example of the second: ``` r # suppose 'make_python_object()' creates a Python object # from R objects of class 'my_r_object'. r_to_py.my_r_object <- function(x, convert) { object <- make_python_object(x) assign("convert", convert, envir = object) object } ``` ## Using GitHub Actions For testing R packages with GitHub Actions, dependencies declared via `py_require()` will resolve automatically with no additional steps. If there are extra Python test dependencies, declare them using `py_require()` in `tests/testthat/helper.R`. The standard R-CMD-check workflow should work: ``` yaml - uses: r-lib/actions/setup-r@v2 - uses: r-lib/actions/setup-r-dependencies@v2 with: extra-packages: rcmdcheck - uses: r-lib/actions/check-r-package@v2 ``` Optionally, you can pre-download Python dependencies in a separate step for cleaner CI logs: ``` yaml - uses: r-lib/actions/setup-r@v2 with: r-version: release - uses: r-lib/actions/setup-r-dependencies@v2 with: extra-packages: rcmdcheck local::. - run: | library(mypackage) # <-- declare requirements in .onLoad() reticulate::py_config() # <-- resolves the ephemeral python environment - uses: r-lib/actions/check-r-package@v2 # The ephemeral python environment from previous step is reused from cache. ``` If you prefer to use a manually managed Python environment, you can do this: ``` yaml - uses: actions/setup-python@v4 with: python-version: "3.x" - name: setup r-reticulate venv shell: Rscript {0} run: | path_to_python <- reticulate::virtualenv_create( envname = "r-reticulate", python = Sys.which("python"), packages = c("numpy", "other-packages") ) writeLines(sprintf("RETICULATE_PYTHON=%s", path_to_python), Sys.getenv("GITHUB_ENV")) - uses: r-lib/actions/check-r-package@v2 ```