Troubleshooting / common issues
Frequently asked questions (FAQs) and known issues you may encounter.
See Getting Help. We would love to help!
If you are confused by something, likely someone else will run into the same issue. It is helpful for us to know what is going wrong so that we can improve Pants and improve this documentation.
Debug tip: enable stack traces and increase logging
Pants defaults to not displaying the full stack trace when it encounters an error. Pants also defaults to logging at the info level.
When you encounter an exception, it can help to use the global options --print-stacktrace
and -ldebug
, like this:
pants --print-stacktrace -ldebug <rest of your command>
Setting the option --pex-verbosity=9
can help debug exceptions that occur when building .pex files.
Once you have this stack trace, we recommend copying it into Pastebin or a GitHub Gist, then opening a GitHub issue or posting on Slack. Someone from the Pants team would be happy to help. See Getting Help.
Debug tip: inspect the sandbox with --keep-sandboxes
Pants runs most processes in a hermetic sandbox (temporary directory), which allows for safely caching and running multiple processes in parallel.
Use the option --keep-sandboxes=always
for Pants to log the paths to these sandboxes, and to keep them around after the run. You can then inspect them to check if the files you are expecting are present.
pants --keep-sandboxes=always lint src/project/app.py
...
21:26:13.55 [INFO] preserving local process execution dir `"/private/var/folders/hm/qjjq4w3n0fsb07kp5bxbn8rw0000gn/T/process-executionQgIOjb"` for "Run isort on 1 file."
...
You can also pass --keep-sandboxes=on_failure
, to preserve only the sandboxes of failing processes.
There is even a __run.sh
script in the directory that will run the process using the same argv and environment variables that Pants would use.
Cache or pantsd invalidation issues
If you are using the latest stable version of Pants and still experience a cache invalidation issue: we are sorry for the trouble. We have not yet added a comprehensive goal to "clear all caches", because we are very interested in coming up with coherent solutions to potential issues (see for more information). If you experience a cache issue, please absolutely file a bug before proceeding to the following steps.
To start with, first try using --no-pantsd
. If that doesn't work, you can also try --no-local-cache
.
If --no-pantsd
worked, you can restart pantsd
, either by:
- Killing the
pantsd
process associated with your workspace. You can useps aux | grep pants
to find the PID, thekill -9 <pid>
. - Deleting the
<build root>/.pants.d/pids
directory.
If this resolves the issue, please report that on the ticket and attach the recent content of the .pants.d/workdir/pantsd/pantsd.log
file.
If restarting pantsd
is not sufficient, you can also use --no-local-cache
to ignore the persistent caches. If this resolves the issue, then it is possible that the contents of the cache (at ~/.cache/pants
) will be useful for debugging the ticket that you filed: please try to preserve the cache contents until it can be resolved.
Pants cannot find a file in your project
Pants may complain that it cannot find a file or directory, even though the file does indeed exist.
This error generally happens because of the option pants_ignore
in the [GLOBAL]
scope, but you should also check for case-mismatches in filenames ("3rdparty" vs "3rdParty"). By default, Pants will read your top-level .gitignore
file to populate pants_ignore
, along with ignoring dist/
and any top-level files/directories starting with .
.
To override something included in your .gitignore
, add a new value to pants_ignore
and prefix it with !
, like the below. pants_ignore
uses the same syntax as gitignore.
[GLOBAL]
pants_ignore.add = ["!folder/"]
Alternatively, you can stop populating pants_ignore
from your .gitignore
by setting pants_ignore_use_gitignore = false
in the [GLOBAL]
scope.
Import errors and missing dependencies
Because Pants runs processes in hermetic sandboxes (temporary directories), Pants must properly know about your dependencies to avoid import errors.
Usually, you do not need to tell Pants about your dependencies thanks to dependency inference, but sometimes dependency inference is not set up properly or cannot work.
To see what dependencies Pants knows about, run pants dependencies path/to/file.ext
and pants dependencies --transitive
.
Is the missing import from a third-party dependency? Common issues:
- Pants does know about your third-party requirements, e.g. missing
python_requirements
andgo_mod
target generators.- To see all third-party requirement targets Pants knows, run
pants --filter-target-type=$tgt list ::
, where Python:python_requirement
, Go:go_third_party_package
, and JVM:jvm_artifact
. - Run
pants tailor ::
, or manually add the relevant targets.
- To see all third-party requirement targets Pants knows, run
- The dependency is missing from your third-party requirements list, e.g.
go.mod
orrequirements.txt
. - The dependency exposes a module different than the default Pants uses, e.g. Python's
ansicolors
exposingcolors
. - Python: check for any undeclared transitive dependencies.
Is the missing import from first-party code? Common issues:
- The file does not exist.
- Or, it's ignored by Pants. See the above guide "Pants cannot find a file in your project".
- The file is missing an owning target like
python_sources
,go_package
, orresources
.- Run
pants list path/to/file.ext
to see all owning targets. - Try running
pants tailor ::
. Warning: some target types likeresources
andfiles
must be manually added.
- Run
- Source roots are not set up properly (Python and JVM only).
- This allows converting file paths like
src/py/project/app.py
to the Python moduleproject.app
.
- This allows converting file paths like
- Code generation such as Protobuf is not set up properly (Python and JVM only).
- Generate missing targets so that produced modules could be found. If there are any Python files that are known to be created ad hoc only at runtime, you might consider using
.pyi
stub files for the modules to be discovered during dependency inference.
- Generate missing targets so that produced modules could be found. If there are any Python files that are known to be created ad hoc only at runtime, you might consider using
Common issues with both first and third-party imports:
- Ambiguity. >1 target exposes the same module/package.
- If it's a third-party dependency, you should likely use multiple "resolves" (lockfiles). Each resolve should have no more than one of the same requirement. See Python and JVM.
- If it's a first-party dependency, you may have unintentionally created multiple targets owning the same file. Run
pants list path/to/file.ext
to see all owners. This often happens from overlappingsources
fields. If this was intentional, follow the instructions in the ambiguity warning to disambiguate via thedependencies
field.
- Some target types like
resources
andfiles
often need to be explicitly added to thedependencies
field and cannot be inferred (yet). - Multiple resolves (Python and JVM).
- A target can only depend on targets that share the same "resolve" (lockfile).
- Pants will warn when it detects that the import exists in another resolve. This usually implies you should either change the current target's
resolve
field, or use theparametrize()
mechanism so that the code works with multiple resolves. - See Python and JVM.
When debugging dependency inference, it can help to explicitly add the problematic dependency to the dependencies
field to see if it gets the code running. If so, you can then try to figure out why dependency inference is not working.
"Out of space" error: set an alternative tmpdir
It may be necessary to explicitly set the directory Pants uses as a temporary directory. For example, if the system default temporary directory is a small partition, you may exhaust that temp space.
Use the global option local_execution_root_dir
to change the tmpdir used by Pants.
[GLOBAL]
local_execution_root_dir = "/mnt/large-partition/tmpdir"
"No space left on device" error while watching files
On Linux, Pants uses inotify
to watch all files and directories related to any particular build. Some systems have limits configured for the maximum number of files watched. To adjust the limit on file watches, you can run:
echo fs.inotify.max_user_watches=524288 | sudo tee -a /etc/sysctl.conf && sudo sysctl -p
How to change your cache directory
You may change any of these options in the [GLOBAL]
section of your pants.toml
:
Option | What it does | Default |
---|---|---|
local_store_dir | Stores the results of running subprocesses and of some file operations. | ~/.cache/pants/lmdb_store |
named_caches_dir | Stores the caches for certain tools used by Pants, like PEX's cache for resolving Python requirements. | ~/.cache/pants/named_caches |
pants_workdir | Stores some project-specific logs; used as a temporary directory when running pants repl and pants run . This is not used for caching. This must be relative to the build root. | <build_root>/.pants.d/workdir |
pants_distdir | Where Pants writes artifacts to, such as the result of pants package . This is not used for caching; you can delete this folder and still leverage the cache from local_store_dir . This must be relative to the build root. | <build_root>/dist/ |
For local_store_dir
and named_caches_dir
, you may either specify an absolute path or a relative path, which will be relative to the build root. You may use the special string %(homedir)s
to get the value of ~
, e.g. local_store_dir = "%(homedir)s/.custom_cache/pants/lmdb_store"
.
It is safe to delete these folders to free up space.
You can also change the cache used by the pants
script described in Installing Pants, which defaults to ~/.pants/cache/setup
. Either set the environment variable PANTS_SETUP_CACHE
or change the Bash script directly where it defines PANTS_SETUP_CACHE
. You may use an absolute path or a path relative to the build root.
BadZipFile error when processing Python wheels
This can happen if your temporary directory (/tmp/
by default) is not on the same filesystem as ~/.cache/pants/named_caches
, and is caused by the fact that pip
is not concurrency-safe when moving files across filesystems.
The solution is to move ~/.cache/pants
, or at least the named_caches_dir
(see above), to the same filesystem as the temporary directory, or vice versa.
Issues packaging AWS CDK into a PEX
If you get errors like ModuleNotFoundError: No module named 'aws_cdk.asset_awscli_v1
, set execution_mode="venv"
and venv_site_packages_copies=True
on your pex_binary
target.
This ensures that the aws_cdk
subpackages are properly nested under the parent package, despite those distributions not being configured as namespace packages.
"Double requirement given" error when resolving Python requirements
This is an error from pip
, and it means that the same 3rd-party Python requirement—with different version constraints—appears in your dependencies.
You can use pants peek
to help identify why the same requirement is being used more than once:
# Check the `requirements` key to see if it has the problematic requirement.
pants --filter-target-type=python_requirement peek ::
macOS users: issues with system Python interpreters
The macOS system Python interpreters are broken in several ways, such as sometimes resulting in:
ERROR: Could not install packages due to an EnvironmentError: [Errno 13] Permission denied: '/Library/Python/3.7'
You can set the option interpreter_search_paths
in the [python]
scope to teach Pants to ignore the interpreters in /usr/bin
. See here for more information.
"Too many open files" error
You may encounter this error when running Pants:
pants count-loc helloworld/greet/f.py
ERROR: Could not initialize store for process cache: "Error making env for store at \"/Users/pantsbuild/.cache/pants/lmdb_store/processes/2\": Too many open files"
(Use --print-exception-stacktrace to see more error details.)
This sometimes happens because Pants uses lots of file handles to read and write to its cache at ~/.cache/pants/lmdb_store
; often, this is more than your system's default.
This can be fixed by setting ulimit -n 10000
. (10,000 should work in all cases, but feel free to lower or increase this number as desired.)
ulimit -n
We recommend permanently setting this by either:
- Adding
ulimit -n 10000
to your.pants.bootstrap
script. - Adding
ulimit -n 10000
to your global.bashrc
or equivalent.
The first two approaches have the benefit that they will be checked into version control, so every developer at your organization can use the same setting.
ulimit unlimited
Contrary to the name, this will not fix the issue. You must use ulimit -n
instead.
Controlling (test) parallelism
When adopting Pants for your tests you may find that they have issues with being run in parallel, particularly if they are integration tests and use a shared resource such as a database.
To temporarily run a single test at a time (albeit with reduced performance), you can reduce the parallelism globally:
pants --process-execution-local-parallelism=1 test ::
A more sustainable solution for shared resources is to use the [pytest].execution_slot_var
option, which sets an environment variable which test runs can consume to determine which copy of a resource to consume.
Snap-based Docker
In recent Ubuntu distributions, the Docker service is often installed using Snap.
It works mostly same as a normal installation, but has an important difference: it cannot access the /tmp
directory of the host because it is virtualized when Snap starts the Docker service.
This may cause problems if your code or tests ry to create a container with a bind-mount of a directory or file under the current working directory. Container creation will fail with "invalid mount config for type "bind": bind source path does not exist", because Pants' default local_execution_root_dir
option is /tmp
, which the Snap-based Docker service cannot access.
You can work around this issue by explicitly setting [GLOBAL].local_execution_root_dir
to a directory outside the system /tmp
directory, such as "%(buildroot)s/tmp"
.
Using pants on self-hosted GitHub actions runner
Setting up pants to run with Python executables provided by setup-python will not work on vanilla actions runner setup. This is due to the known limitation of pants which does not allow leaking arbitrary environment variable (in this case LD_LIBRARY_PATH
for us) when evaluating dependency inference rules. If you fall into this situation, you will face an error complaining about missing shared object files, like this:
/home/ubuntu/.cache/python-tools/Python/3.11.3/x64/bin/python3.11: error while loading shared libraries: libpython3.11.so.1.0: cannot open shared object file: No such file or directory
One of the workaround to fix this issue is setting up python tool cache files at /opt/hostedtoolcache
directory. This is the default path which setup-python
action uses to download relevant files on hosted GitHub actions runner. Overriding tool cache download directory can be achieved by following setup-python documentation.