Setup
This guide walks through how to run the repository locally and check in your first code. For a development container, see the .devcontainer folder.
Dependency Management: Poetry and other env/dependency managersβ
This project utilizes Poetry v1.7.1+ as a dependency manager.
βNote: Before installing Poetry, if you use Conda
, create and activate a new Conda env (e.g. conda create -n langchain python=3.9
)
Install Poetry: documentation on how to install it.
βNote: If you use Conda
or Pyenv
as your environment/package manager, after installing Poetry,
tell Poetry to use the virtualenv python environment (poetry config virtualenvs.prefer-active-python true
)
Different packagesβ
This repository contains multiple packages:
langchain-core
: Base interfaces for key abstractions as well as logic for combining them in chains (LangChain Expression Language).langchain-community
: Third-party integrations of various components.langchain
: Chains, agents, and retrieval logic that makes up the cognitive architecture of your applications.langchain-experimental
: Components and chains that are experimental, either in the sense that the techniques are novel and still being tested, or they require giving the LLM more access than would be possible in most production systems.- Partner integrations: Partner packages in
libs/partners
that are independently version controlled.
Each of these has its own development environment. Docs are run from the top-level makefile, but development is split across separate test & release flows.
For this quickstart, start with langchain-community:
cd libs/community
Local Development Dependenciesβ
Install langchain-community development requirements (for running langchain, running examples, linting, formatting, tests, and coverage):
poetry install --with lint,typing,test,test_integration
Then verify dependency installation:
make test
If during installation you receive a WheelFileValidationError
for debugpy
, please make sure you are running
Poetry v1.6.1+. This bug was present in older versions of Poetry (e.g. 1.4.1) and has been resolved in newer releases.
If you are still seeing this bug on v1.6.1+, you may also try disabling "modern installation"
(poetry config installer.modern-installation false
) and re-installing requirements.
See this debugpy
issue for more details.
Testingβ
Note: In langchain
, langchain-community
, and langchain-experimental
, some test dependencies are optional. See the following section about optional dependencies.
Unit tests cover modular logic that does not require calls to outside APIs. If you add new logic, please add a unit test.
To run unit tests:
make test
To run unit tests in Docker:
make docker_tests
There are also integration tests and code-coverage available.
Only develop langchain_core or langchain_experimentalβ
If you are only developing langchain_core
or langchain_experimental
, you can simply install the dependencies for the respective projects and run tests:
cd libs/core
poetry install --with test
make test
Or:
cd libs/experimental
poetry install --with test
make test
Formatting and Lintingβ
Run these locally before submitting a PR; the CI system will check also.
Code Formattingβ
Formatting for this project is done via ruff.
To run formatting for docs, cookbook and templates:
make format
To run formatting for a library, run the same command from the relevant library directory:
cd libs/{LIBRARY}
make format
Additionally, you can run the formatter only on the files that have been modified in your current branch as compared to the master branch using the format_diff command:
make format_diff
This is especially useful when you have made changes to a subset of the project and want to ensure your changes are properly formatted without affecting the rest of the codebase.
Lintingβ
Linting for this project is done via a combination of ruff and mypy.
To run linting for docs, cookbook and templates:
make lint
To run linting for a library, run the same command from the relevant library directory:
cd libs/{LIBRARY}
make lint
In addition, you can run the linter only on the files that have been modified in your current branch as compared to the master branch using the lint_diff command:
make lint_diff
This can be very helpful when you've made changes to only certain parts of the project and want to ensure your changes meet the linting standards without having to check the entire codebase.
We recognize linting can be annoying - if you do not want to do it, please contact a project maintainer, and they can help you with it. We do not want this to be a blocker for good code getting contributed.
Spellcheckβ
Spellchecking for this project is done via codespell.
Note that codespell
finds common typos, so it could have false-positive (correctly spelled but rarely used) and false-negatives (not finding misspelled) words.
To check spelling for this project:
make spell_check
To fix spelling in place:
make spell_fix
If codespell is incorrectly flagging a word, you can skip spellcheck for that word by adding it to the codespell config in the pyproject.toml
file.
[tool.codespell]
...
# Add here:
ignore-words-list = 'momento,collison,ned,foor,reworkd,parth,whats,aapply,mysogyny,unsecure'
Working with Optional Dependenciesβ
langchain
, langchain-community
, and langchain-experimental
rely on optional dependencies to keep these packages lightweight.
langchain-core
and partner packages do not use optional dependencies in this way.
You'll notice that pyproject.toml
and poetry.lock
are not touched when you add optional dependencies below.
If you're adding a new dependency to Langchain, assume that it will be an optional dependency, and that most users won't have it installed.
Users who do not have the dependency installed should be able to import your code without any side effects (no warnings, no errors, no exceptions).
To introduce the dependency to a library, please do the following:
- Open extended_testing_deps.txt and add the dependency
- Add a unit test that the very least attempts to import the new code. Ideally, the unit test makes use of lightweight fixtures to test the logic of the code.
- Please use the
@pytest.mark.requires(package_name)
decorator for any unit tests that require the dependency.
Adding a Jupyter Notebookβ
If you are adding a Jupyter Notebook example, you'll want to install the optional dev
dependencies.
To install dev dependencies:
poetry install --with dev
Launch a notebook:
poetry run jupyter notebook
When you run poetry install
, the langchain
package is installed as editable in the virtualenv, so your new logic can be imported into the notebook.