Interested in contributing to LlamaIndex? Here's how to get started!
The best part of LlamaIndex is our community of users and contributors.
- 🆕 Extend core modules
- 🐛 Fix bugs
- 🎉 Add usage examples
- 🧪 Add experimental features
- 📄 Improve code quality & documentation
Also, join our Discord for ideas and discussions: https://discord.gg/dGcwcsnxhU.
The most impactful way to contribute to LlamaIndex is extending our core modules:
We welcome contributions in all modules shown above. So far, we have implemented a core set of functionalities for each. As a contributor, you can help each module unlock its full potential.
NOTE: We are making rapid improvements to the project, and as a result, some interfaces are still volatile. Specifically, we are actively working on making the following components more modular and extensible (uncolored boxes above): core indexes, document stores, index queries, query runner
Below, we will describe what each module does, give a high-level idea of the interface, show existing implementations, and give some ideas for contribution.
A data loader ingests data of any format from anywhere into Document
objects, which can then be parsed and indexed.
Interface: load_data
takes arbitrary arguments as input (e.g. path to data), and outputs a sequence of Document
objects.
Examples:
Contributing a data loader is easy and super impactful for the community. The preferred way to contribute is making a PR at LlamaHub Github.
Ideas
- Want to load something but there's no LlamaHub data loader for it yet? Make a PR!
A node parser parses Document
objects into Node
objects (atomic unit of data that LlamaIndex operates over, e.g., chunk of text, image, or table).
It is responsible for splitting text (via text splitters) and explicitly modelling the relationship between units of data (e.g. A is the source of B, C is a chunk after D).
Interface: get_nodes_from_documents
takes a sequence of Document
objects as input, and outputs a sequence of Node
objects.
Examples:
See the API reference for full details.
Ideas:
- Add new
Node
relationships to model to model hierarchical documents (e.g. play-act-scene, chapter-section-heading).
Text splitter splits a long text str
into smaller text str
chunks with desired size and splitting "strategy" since LLMs have a limited context window size, and the quality of text chunk used as context impacts the quality of query results.
Interface: split_text
takes a str
as input, and outputs a sequence of str
Examples:
Under the hood, LlamaIndex also supports a swappable storage layer that allows you to customize Document Stores (where ingested documents (i.e., Node
objects) are stored), and Index Stores (where index metadata are stored)
We have an underlying key-value abstraction backing the document/index stores. Currently we support in-memory and MongoDB storage for these stores. Open to contributions!
See Storage guide for details.
Our vector store classes store embeddings and support lookup via similiarity search. These serve as the main data store and retrieval engine for our vector index.
Interface:
add
takes in a sequence ofNodeEmbeddingResults
and insert the embeddings (and possibly the node contents & metadata) into the vector store.delete
removes entries given document IDs.query
retrieves top-k most similar entries given a query embedding.
Examples:
Ideas:
- See a vector database out there that we don't support yet? Make a PR!
See reference for full details.
Our retriever classes are lightweight classes that implement a retrieve
method.
They may take in an index class as input - by default, each of our indices
(list, vector, keyword) have an associated retriever. The output is a set of
NodeWithScore
objects (a Node
object with an extra score
field).
You may also choose to implement your own retriever classes on top of your own data if you wish.
Interface:
retrieve
takes in astr
orQueryBundle
as input, and outputs a list ofNodeWithScore
objects
Examples:
Ideas:
- Besides the "default" retrievers built on top of each index, what about fancier retrievers? E.g. retrievers that take in other retrivers as input? Or other types of data?
Our query engine classes are lightweight classes that implement a query
method; the query returns a response type.
For instance, they may take in a retriever class as input; our RetrieverQueryEngine
takes in a retriever
as input as well as a ResponseSynthesizer
class, and
the query
method performs retrieval and synthesis before returning the final result.
They may take in other query engine classes in as input too.
Interface:
query
takes in astr
orQueryBundle
as input, and outputs aResponse
object.
Examples:
A query transform augments a raw query string with associated transformations to improve index querying. This can interpreted as a pre-processing stage, before the core index query logic is executed.
Interface: run
takes in a str
or Querybundle
as input, and outputs a transformed QueryBundle
.
Examples:
See guide for more information.
A token usage optimizer refines the retrieved Nodes
to reduce token usage during response synthesis.
Interface: optimize
takes in the QueryBundle
and a text chunk str
, and outputs a refined text chunk str
that yeilds a more optimized response
Examples:
A node postprocessor refines a list of retrieve nodes given configuration and context.
Interface: postprocess_nodes
takes a list of Nodes
and extra metadata (e.g. similarity and query), and outputs a refined list of Nodes
.
Examples:
- Keyword Postprocessor: filters nodes based on keyword match
- Similarity Postprocessor: filers nodes based on similarity threshold
- Prev Next Postprocessor: fetchs additional nodes to augment context based on node relationships.
A output parser enables us to extract structured output from the plain text output generated by the LLM.
Interface:
format
: formats a querystr
with structured output formatting instructions, and outputs the formattedstr
parse
: takes astr
(from LLM response) as input, and gives a parsed tructured output (optionally also validated, error-corrected).
Examples:
See guide for more information.
Most bugs are reported and tracked in the Github Issues Page. We try our best in triaging and tagging these issues:
- Issues tagged as
bug
are confirmed bugs. - New contributors may want to start with issues tagged with
good first issue
.
Please feel free to open an issue and/or assign an issue to yourself.
If you have applied LlamaIndex to a unique use-case (e.g. interesting dataset, customized index structure, complex query), we would love your contribution in the form of:
- a guide: e.g. guide to LlamIndex + Structured Data Todo.
- an example notebook: e.g. Composable Indices Demo
If you have a crazy idea, make a PR for it! Whether if it's the latest research, or what you thought of in the shower, we'd love to see creative ways to improve LlamaIndex.
We would love your help in making the project cleaner, more robust, and more understandable. If you find something confusing, it most likely is for other people as well. Help us be better!
LlamaIndex is a Python package. We've tested primarily with Python versions >= 3.8. Here's a quick and dirty guide to getting your environment setup.
First, create a fork of LlamaIndex, by clicking the "Fork" button on the LlamaIndex Github page. Following these steps for more details on how to fork the repo and clone the forked repo.
Then, create a new Python virtual environment. The command below creates an environment in .venv
,
and activates it:
python -m venv .venv
source .venv/bin/activate
if you are in windows, use the following to activate your virtual environment:
.venv\scripts\activate
Install the required dependencies (this will also install gpt-index through pip install -e .
so that you can start developing on it):
pip install -r requirements.txt
Now you should be set!
Let's make sure to format/lint
our change. For bigger changes,
let's also make sure to test
it and perhaps create an example notebook
.
You can format and lint your changes with the following commands in the root directory:
make format; make lint
You can also make use of our pre-commit hooks by setting up git hook scripts:
pre-commit install
We run an assortment of linters: black
, ruff
, mypy
.
For bigger changes, you'll want to create a unit test. Our tests are in the tests
folder.
We use pytest
for unit testing. To run all unit tests, run the following in the root dir:
pytest tests
For changes that involve entirely new features, it may be worth adding an example Jupyter notebook to showcase this feature.
Example notebooks can be found in this folder: https://github.com/jerryjliu/llama_index/tree/main/examples.
See these instructions to open a pull request against the main LlamaIndex repo.