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Version: 2.23 (prerelease)

Java and Scala

Pants's support for Java and Scala.


Java and Scala support is beta stage

We are done implementing most functionality for Pants's Java and Scala support (tracked here). However, there may be use cases that we aren't yet handling.

Please share feedback for what you need to use Pants with your JVM project by either opening a GitHub issue or joining our Slack!

Example Java and Scala repository

Check out github.com/pantsbuild/example-jvm to try out Pants's Java and Scala support.

Initial setup

First, activate the relevant backends in pants.toml:

pants.toml
[GLOBAL]
backend_packages = [
# Each backend can be used independently, so there is no need to enable Scala if you
# have a pure-Java repository (or vice versa).
"pants.backend.experimental.java",
"pants.backend.experimental.scala",
]

Then run pants tailor :: to generate BUILD files. This will create java_sources and scala_sources targets in every directory containing library code, as well as test targets like scalatest_tests and junit_tests for filenames that look like tests.

❯ pants tailor ::
Created src/jvm/org/pantsbuild/example/app/BUILD:
- Add scala_sources target app
Created src/jvm/org/pantsbuild/example/lib/BUILD:
- Add java_sources target lib
Created tests/jvm/org/pantsbuild/example/lib/BUILD:
- Add scalatest_tests target lib

You can run pants list :: to see all targets in your project:

❯ pants list
...
src/jvm/org/pantsbuild/example/app:app
src/jvm/org/pantsbuild/example/app/ExampleApp.scala
src/jvm/org/pantsbuild/example/lib:lib
src/jvm/org/pantsbuild/example/lib/ExampleLib.java
tests/jvm/org/pantsbuild/example/lib:lib
tests/jvm/org/pantsbuild/example/lib/ExampleLibSpec.scala

Choosing JDK and Scala versions

Pants 2.11.x adds support for choosing JDK and Scala versions per target in your repository, but to reduce the amount of boilerplate required, most users set repository-wide defaults in pants.toml, and then only override them when necessary for particular targets.

JDK

JDKs used by Pants are automatically fetched using Coursier, and are chosen using the [jvm].jdk setting to set a repository-wide default.

To override the default on a particular target, you can use the jdk= field. It can be useful to use the parametrize builtin with the jdk= field, particularly to run test targets under multiple JDKs.

Scala version

The Scala version to use is configured on a resolve-by-resolve basis (see the "Third-party dependencies" section below) using the [scala].version_for_resolve option. The default Scala version for your repository will thus be whichever Scala version is configured for the "default" resolve, which is configured by the [jvm].default_resolve option.

To use multiple Scala versions in a repository, you would define multiple resolves, and then adjust the resolve field of any targets which should be used with the non-default_resolve resolve.

To cross-build a set of Scala targets for multiple Scala versions, you can use the parametrize builtin with the resolve= field of the target and its dependencies.

A jvm_artifact for scala-library artifact is explicitly required.

The Scala backend currently requires that a jvm_artifact target for the org.scala-lang:scala-library Scala runtime be present in any resolve used for Scala. If such a jvm_artifact is missing, Pants will error. Pants will automatically inject a dependency on the runtime. (This target may be automatically supplied by Pants in a future version, but that is not currently implemented.)

First-party dependencies

In many cases, the dependencies of your first-party code are automatically inferred via dependency inference based on your import statements. If you do need to declare additional dependencies for any reason, you can do so using Pants' syntax for declaring dependencies for targets.

Third-party dependencies and lockfiles

Third-party dependencies (i.e. those from repositories like Maven central) are also automatically inferred via dependency inference, but must first be declared once per repository as jvm_artifact targets:

BUILD
jvm_artifact(
group="com.google.guava",
artifact="guava",
version="31.0.1-jre",
# See the callout below for more information on the `packages` argument.
packages=["com.google.common.**"],
)

If your third party dependency is a Scala library, you should use the scala_artifact target instead like follows:

BUILD
scala_artifact(
group="org.typelevel",
artifact="cats-core",
version="2.9.0",
packages=["cats.**"],
)

Pants will use the right artifact for the Scala version corresponding for the resolve specified (or the default one).

Pants requires use of a lockfile for thirdparty dependencies. After adding or editing jvm_artifact targets, you will need to update affected lockfiles by running pants generate-lockfiles. The default lockfile is located at 3rdparty/jvm/default.lock, but it can be relocated (as well as additional resolves declared) via the [jvm].resolves option.

Thirdparty symbols and the packages argument

To efficiently determine which symbols are provided by thirdparty code (i.e., without hitting the network in order to compute dependencies in the common case), Pants relies on a static mapping of which artifacts provide which symbols, and defaults to treating each jvm_artifact as providing symbols within its group.

The packages argument allows you to override which symbols a jvm_artifact provides. See the jvm_artifact docs for more information.

To enable better IDE integration, Pants has jvm_artifacts target generator to generate jvm_artifact targets for you.

pom.xml

The jvm_artifacts() target generator parses a pom.xml to produce a jvm_artifact target for each dependency in project.dependencies.

For example:

<project>
<dependencies>
<dependency>
<groupId>com.google.guava</groupId>
<artifactId>guava</artifactId>
<version>33.2.0-jre</version>
</dependency>
<dependency>
<groupId>org.apache.commons</groupId>
<artifactId>commons-lang3</artifactId>
<version>3.14.0</version>
</dependency>
</dependencies>
</project>

The above target generator is spiritually equivalent to this:

BUILD
jvm_artifact(
group="com.google.guava",
artifact="guava",
version="33.2.0-jre",
)
jvm_artifact(
group="org.apache.commons",
artifact="commons-lang3",
version="3.14.0",
)

To define jvm_artifact packages use package_mapping field:

jvm_artifacts(
name="reqs",
package_mapping={
"com.google.guava:guava": [
"com.google.common.**",
],
"org.apache.commons:commons-lang3": [
"org.apache.commons.lang3.**",
],
},
)

resource targets

To have your code load files as "resources":

  1. Add a resource or resources target with the relevant files in the source / sources field, respectively.
  2. Ensure that an appropriate source_root is detected for the resources target, in order to trim the relevant prefix from the filename to align with the layout of your JVM packages.
  3. Add that target to the dependencies field of the relevant JVM target (usually the one that uses the JVM APIs to load the resource).

For example:

[source]
# In order for the resource to be loadable as `org/pantsbuild/example/lib/hello.txt`,
# the `/src/jvm/ prefix needs to be stripped.
root_patterns = ["/src/*"]

Compile code

To manually check that sources compile, use pants check:

# Check a single file
❯ pants check src/jvm/org/pantsbuild/example/lib/ExampleLib.java

# Check files located recursively under a directory
❯ pants check src/jvm::

# Check the whole repository
❯ pants check ::

Run tests

To run tests, use pants test:

# Run a single test file
❯ pants test tests/jvm/org/pantsbuild/example/lib/ExampleLibSpec.scala

# Test all files in a directory
❯ pants test tests/jvm::

# Test the whole repository
❯ pants test ::

You can also pass through arguments to the test runner with --, e.g.:

# Pass `-z hello` to scalatest in order to test a single method
❯ pants test tests/jvm/org/pantsbuild/example/lib/ExampleLibSpec.scala -- -z hello

Timeouts

Pants can cancel tests which take too long. This is useful to prevent tests from hanging indefinitely.

To add a timeout, set the timeout field to an integer value of seconds in any of the supported targets, like this:

BUILD
java_junit_test(name="java_test", source="Test.java", timeout=120)
scala_junit_test(name="scala_junit_test", source="Test.scala", timeout=100)
scalatest_test(name="scalatest_test", source="Spec.scala", timeout=80)

When you set timeout on any of the target generators (i.e. java_junit_tests, scalatest_tests, etc.), the same timeout will apply to every generated corresponding target.

BUILD
java_junit_tests(
name="tests",
overrides={
"MyClass1Test.java": {"timeout": 20},
("MyClass2Test.java", "MyClass3Test.java"): {"timeout": 35},
},
)

You can also set a default value and a maximum value in pants.toml:

pants.toml
[test]
timeout_default = 60
timeout_maximum = 600

If a target sets its timeout higher than [test].timeout_maximum, Pants will use the value in [test].timeout_maximum.

Use the option pants test --no-timeouts to temporarily disable timeouts, e.g. when debugging.

Retries

Pants can automatically retry failed tests. This can help keep your builds passing even with flaky tests, like integration tests.

[test]
attempts_default = 3

Setting environment variables

Test runs are hermetic, meaning that they are stripped of the parent pants process's environment variables. This is important for reproducibility, and it also increases cache hits.

To add any arbitrary environment variable back to the process, you can either add the environment variable to the specific tests with the extra_env_vars field on junit_test / junit_tests / scala_junit_test / scala_junit_tests / scalatest_test / scalatest_tests targets or to all your tests with the [test].extra_env_vars option. Generally, prefer the field extra_env_vars field so that more of your tests are hermetic.

With both [test].extra_env_vars and the extra_env_vars field, you can either hardcode a value or leave off a value to "allowlist" it and read from the parent pants process's environment.

[test]
extra_env_vars = ["VAR1", "VAR2=hardcoded_value"]

Repl

Pants supports the Scala repl, but doesn't yet autodetect it based on the active backend, it always defaults to using "python" (see #14133), so for now you'll have to explicitly add --repl-shell=scala to the command line:

❯ pants repl --repl-shell=scala src/jvm/org/pantsbuild/example/app/ExampleApp.scala
Welcome to Scala 2.13.8 (OpenJDK 64-Bit Server VM, Java 11.0.21).
Type in expressions for evaluation. Or try :help.

scala> import org.pantsbuild.example.app.ExampleApp
scala> ExampleApp.main(Array())
Hello World!
scala>

Alternatively, you can set "scala" to be the default repl in pants.toml:

[repl]
shell = "scala"

Protobuf

There's support for ScalaPB and protoc Java generated code, currently in beta stage. To enable them, activate the relevant backends in pants.toml:

[GLOBAL]
backend_packages = [
"pants.backend.experimental.codegen.protobuf.scala",
"pants.backend.experimental.codegen.protobuf.java",
]

This adds the new protobuf_source target, which you can confirm by running pants help protobuf_source.

Lint and Format

scalafmt and Google Java Format can be enabled by adding the pants.backend.experimental.scala.lint.scalafmt and pants.backend.experimental.java.lint.google_java_format backends (respectively) to backend_packages in the [GLOBAL] section of pants.toml.

Once enabled, lint and fmt will check and automatically reformat your code:

# Format this directory and all subdirectories
❯ pants fmt src/jvm::

# Check that the whole project is formatted
❯ pants lint ::

# Format all changed files
❯ pants --changed-since=HEAD fmt

Fix Scala code

Additionally to the previously mentioned tools, scalafix can also be enabled by adding the pants.backend.experimental.scala.lint.scalafix backend to backend_packages in the [GLOBAL] section of pants.toml. However to take full advantage of it additional settings are required.

If we want to use Scalafix's semantic rules, Scalafix needs to be able to find .semanticdb compiled files in our classpath. In versions prior to Scala 3 this is achieved by adding the semanticdb scalac plugin to our build. Find which is the right version of it for the Scala version you are using and add the following targets:

scala_artifact(
name="semanticdb-jar",
group="org.scalameta",
artifact="semanticdb-scalac",
version="<SEMANTICDB_VERSION>",
crossversion="full",
)

scalac_plugin(name="semanticdb", artifact=":semanticdb-jar")

Now you will need to add the scalac_plugins field to your scala targets like in the following:

scala_sources(scalac_plugins=["semanticdb"])

Alternatively, you could add semanticdb to the [scalac].plugins_for_resolve setting:

[scalac.plugins_for_resolve]
jvm-default = "semanticdb"
Scalafix and Scala 3

At the moment the support for Scalac 3 in Scalafix is limited, most of the syntactic rules work but not that many in the semantic front.

Despite those raugh edges, Scalafix is a great linting tool for Scala 3, just note that the setup is different than from prior versions: Instead of adding a scalac plugin to our build, we only need to add the -Xsemanticdb flag to our [scalac].args settings to enable the generation of .semanticdb compiled files.

Working in an IDE

Pants supports loading Java and Scala projects in IntelliJ via the BSP protocol (which should ease VSCode support via Metals, although it is not yet supported).

Usage

After Setup (see below), and after IntelliJ has finished indexing your code, you should be able to:

  • Use goto definition and other symbol-index-using operations.
  • Run test classes, which will first compile them with Pants (and render compile failures if not), and then run them in the foreground with IntelliJ's test runner.

Setup

First time setup (per-repository)

  1. Use a version of Pants containing BSP support:
    1. Versions after 2.12.0a0 support code indexing.
    2. Versions after 2.13.0.dev2 support test running.
  2. Add a .gitignore entry for the .bsp directory:
# This directory is not committed: each BSP user will create it independently.
/.bsp/
  1. Add a "group" config file like the one below, adjusting the address specs and resolve name as appropriate.
# A "group" named `default`.
# Multiple groups are supported: consider creating a group per project or team.
[groups.default]
addresses = [
"src/jvm::",
"tests/jvm::",
]

resolve = "jvm:jvm-default"
  1. Add to pants.toml an option to point at the BSP configuration file:
[experimental-bsp]
groups_config_files = ["bsp-groups.toml"]

Per-user setup

  1. Run pants experimental-bsp to write the BSP connection file and script.
  2. Ensure that you have the IntelliJ Scala plugin installed (it provides BSP support).
  3. In IntelliJ, choose File > New > Project from Existing Sources…
  4. Choose the root of the repository for the project from the file dialog.
  5. In the "Import Project" dialog, choose "Import project from external model" and select "BSP."

  1. Click "Create".
  2. IntelliJ will invoke Pants to run the BSP server and synchronize state to produce IntelliJ modules.

Troubleshooting

  • If you see errors related to missing tools, you can set additional environment variables for BSP invocations in pants.toml under the [experimental-bsp].runner_env_vars option, and then re-run pants experimental-bsp.
    • This is necessary because IntelliJ is invoked on macOS generally by launchd and not from the shell. Any PATH set in the shell will not be passed to the Pants BSP server in that case.
    • If this is developer-specific, consider setting --experimental-bsp-runner-env-args as a command-line option, or using a .pantsrc file.
  • After configuration changes, or after adding new thirdparty dependencies, you will generally need to reload the BSP configuration (for now), which you can do with this button in the side panel:

  • When filing bug reports, include the log output of the Pants instance hosting the BSP server, which goes to .pants.d/bsp/logs/stderr.log.