This repository contains ddtrace
, Datadog's APM client Python package. ddtrace
contains APIs to automatically or
manually trace and
profile Python applications.
These features power Distributed Tracing, Continuous Profiling, Error Tracking, Continuous Integration Visibility, Deployment Tracking, Code Hotspots and more.
To get started, check out the setup documentation.
For advanced usage and configuration, check out the API documentation.
Confused about the terminology of APM? Take a look at the APM Glossary.
See the contributing docs first.
The tracer library uses formatting/linting tools including black, flake8, and mypy.
While these are run in each CI pipeline for pull requests, they are automated to run
when you call git commit
as pre-commit hooks to catch any formatting errors before
you commit. To initialize the pre-commit hook script to run in your development
branch, run the following command:
$ hooks/autohook.sh install
The test suite requires many backing services such as PostgreSQL, MySQL, Redis
and more. We use docker
and docker-compose
to run the services in our CI
and for development. To run the test matrix, please install docker and
docker-compose using the instructions provided by your platform. Then
launch them through:
$ docker-compose up -d
- Clone the repository locally:
git clone https://github.com/DataDog/dd-trace-py
- The tests for this project run on various versions of Python. We recommend using a Python version management tool, such as pyenv, to utilize multiple versions of Python. Install Pyenv: https://github.com/pyenv/pyenv#installation
- Install the relevant versions of Python in Pyenv:
pyenv install 3.9.1, 2.7.18, 3.5.10, 3.6.12, 3.7.9, 3.8.7, 3.10.0
- Make those versions available globally:
pyenv global 3.9.1, 2.7.18, 3.5.10, 3.6.12, 3.7.9, 3.8.7, 3.10.0
Once your docker-compose environment is running, you can use the shell script to execute tests within a Docker image. You can start the container with a bash shell:
$ scripts/ddtest
You can now run tests as you would do in your local environment. We use tox as well as riot, a new tool that we developed for addressing our specific needs with an ever growing matrix of tests. You can list the tests managed by each:
$ tox -l
$ riot list
You can run multiple tests by using regular expressions:
$ scripts/run-tox-scenario '^futures_contrib-'
$ riot run psycopg
- Install riot:
pip install riot
. - Create the base virtual environments:
riot -v generate
. - You can list the available test suites with
riot list
. - Certain tests might require running service containers in order to emulate
the necessary testing environment. You can spin up individual containers with
docker-compose up -d <SERVICE_NAME>
, where<SERVICE_NAME>
should match a service specified in thedocker-compose.yml
file. - Run a test suite:
riot -v run <RUN_FLAGS> <TEST_SUITE_NAME>
.- Optionally, use the
-s
and-x
flags:-s
prevents riot from reinstalling the dev package;-x
forces an exit after the first failed test suite. To limit the tests to a particular version of Python, use the-p
flag:riot -v run -p <PYTHON_VERSION>
.
- Optionally, use the
The run
command uses regex syntax, which in some cases will cause multiple
test suites to run. Use the following syntax to ensure only an individual suite
runs: ^<TEST_SUITE_NAME>$
where ^
signifies the start of a string and $
signifies the end of a string. For example, use riot -v run -s -x ^redis$
to
run only the redis suite.
The APM test agent can emulate the APM endpoints of the Datadog agent. Spin up
the testagent
container along with any other service container:
$ docker-compose up -d testagent <SERVICE_CONTAINER>
Run the test agent as a proxy in your tests:
$ DD_TRACE_AGENT_URL=http://localhost:9126/ riot -v run <RUN_FLAGS> --pass-env <TEST_SUITE_NAME>
--pass-env
injects the environment variables of the current shell session into
the command. Here's an example command for running the redis test suite along
with the test agent, limited to tests for Python 3.9:
$ DD_TRACE_AGENT_URL=http://localhost:9126/ riot -v run -p 3.9 -s -x --pass-env '^redis$'
Read more about the APM test agent: https://github.com/datadog/dd-apm-test-agent#readme
We use CircleCI 2.0 for our continuous integration.
The CI tests are configured through config.yml.
The CI tests can be run locally using the circleci
CLI. More information about
the CLI can be found at https://circleci.com/docs/2.0/local-cli/.
After installing the circleci
CLI, you can run jobs by name. For example:
$ circleci build --job django
This project follows semver and so bug fixes, breaking changes, new features, etc must be accompanied by a release note. To generate a release note:
$ riot run reno new <short-description-of-change>
Document the changes in the generated file, remove the irrelevant sections and commit the release note with the change.