An open-source clean & customizable RAG UI for chatting with your documents. Built with both end users and developers in mind.
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This project serves as a functional RAG UI for both end users who want to do QA on their
documents and developers who want to build their own RAG pipeline.
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| End users: Those who use apps built with `kotaemon`. |
| (You use an app like the one in the demo above) |
| +----------------------------------------------------------------+ |
| | Developers: Those who built with `kotaemon`. | |
| | (You have `import kotaemon` somewhere in your project) | |
| | +----------------------------------------------------+ | |
| | | Contributors: Those who make `kotaemon` better. | | |
| | | (You make PR to this repo) | | |
| | +----------------------------------------------------+ | |
| +----------------------------------------------------------------+ |
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- Clean & Minimalistic UI: A user-friendly interface for RAG-based QA.
- Support for Various LLMs: Compatible with LLM API providers (OpenAI, AzureOpenAI, Cohere, etc.) and local LLMs (via
ollama
andllama-cpp-python
). - Easy Installation: Simple scripts to get you started quickly.
- Framework for RAG Pipelines: Tools to build your own RAG-based document QA pipeline.
- Customizable UI: See your RAG pipeline in action with the provided UI, built with Gradio .
- Gradio Theme: If you use Gradio for development, check out our theme here: kotaemon-gradio-theme.
-
Host your own document QA (RAG) web-UI: Support multi-user login, organize your files in private/public collections, collaborate and share your favorite chat with others.
-
Organize your LLM & Embedding models: Support both local LLMs & popular API providers (OpenAI, Azure, Ollama, Groq).
-
Hybrid RAG pipeline: Sane default RAG pipeline with hybrid (full-text & vector) retriever and re-ranking to ensure best retrieval quality.
-
Multi-modal QA support: Perform Question Answering on multiple documents with figures and tables support. Support multi-modal document parsing (selectable options on UI).
-
Advanced citations with document preview: By default the system will provide detailed citations to ensure the correctness of LLM answers. View your citations (incl. relevant score) directly in the in-browser PDF viewer with highlights. Warning when retrieval pipeline return low relevant articles.
-
Support complex reasoning methods: Use question decomposition to answer your complex/multi-hop question. Support agent-based reasoning with
ReAct
,ReWOO
and other agents. -
Configurable settings UI: You can adjust most important aspects of retrieval & generation process on the UI (incl. prompts).
-
Extensible: Being built on Gradio, you are free to customize or add any UI elements as you like. Also, we aim to support multiple strategies for document indexing & retrieval.
GraphRAG
indexing pipeline is provided as an example.
If you are not a developer and just want to use the app, please check out our easy-to-follow User Guide. Download the
.zip
file from the latest release to get all the newest features and bug fixes.
- Python >= 3.10
- Docker: optional, if you install with Docker
- Unstructured if you want to process files other than
.pdf
,.html
,.mhtml
, and.xlsx
documents. Installation steps differ depending on your operating system. Please visit the link and follow the specific instructions provided there.
-
We support both
lite
&full
version of Docker images. Withfull
, the extra packages ofunstructured
will be installed as well, it can support additional file types (.doc
,.docx
, ...) but the cost is larger docker image size. For most users, thelite
image should work well in most cases.-
To use the
lite
version.docker run \ -e GRADIO_SERVER_NAME=0.0.0.0 \ -e GRADIO_SERVER_PORT=7860 \ -p 7860:7860 -it --rm \ ghcr.io/cinnamon/kotaemon:main-lite
-
To use the
full
version.docker run \ -e GRADIO_SERVER_NAME=0.0.0.0 \ -e GRADIO_SERVER_PORT=7860 \ -p 7860:7860 -it --rm \ ghcr.io/cinnamon/kotaemon:main-full
-
-
We currently support and test two platforms:
linux/amd64
andlinux/arm64
(for newer Mac). You can specify the platform by passing--platform
in thedocker run
command. For example:# To run docker with platform linux/arm64 docker run \ -e GRADIO_SERVER_NAME=0.0.0.0 \ -e GRADIO_SERVER_PORT=7860 \ -p 7860:7860 -it --rm \ --platform linux/arm64 \ ghcr.io/cinnamon/kotaemon:main-lite
-
Once everything is set up correctly, you can go to
http://localhost:7860/
to access the WebUI. -
We use GHCR to store docker images, all images can be found here.
-
Clone and install required packages on a fresh python environment.
# optional (setup env) conda create -n kotaemon python=3.10 conda activate kotaemon # clone this repo git clone https://github.com/Cinnamon/kotaemon cd kotaemon pip install -e "libs/kotaemon[all]" pip install -e "libs/ktem"
-
Create a
.env
file in the root of this project. Use.env.example
as a templateThe
.env
file is there to serve use cases where users want to pre-config the models before starting up the app (e.g. deploy the app on HF hub). The file will only be used to populate the db once upon the first run, it will no longer be used in consequent runs. -
(Optional) To enable in-browser
PDF_JS
viewer, download PDF_JS_DIST then extract it tolibs/ktem/ktem/assets/prebuilt
-
Start the web server:
python app.py
- The app will be automatically launched in your browser.
- Default username and password are both
admin
. You can set up additional users directly through the UI.
-
Check the
Resources
tab andLLMs and Embeddings
and ensure that yourapi_key
value is set correctly from your.env
file. If it is not set, you can set it there.
Note
Official MS GraphRAG indexing only works with OpenAI or Ollama API. We recommend most users to use NanoGraphRAG implementation for straightforward integration with Kotaemon.
Setup Nano GRAPHRAG
- Install nano-GraphRAG:
pip install nano-graphrag
nano-graphrag
install might introduce version conflicts, see this issue- To quickly fix:
pip uninstall hnswlib chroma-hnswlib && pip install chroma-hnswlib
- To quickly fix:
- Launch Kotaemon with
USE_NANO_GRAPHRAG=true
environment variable. - Set your default LLM & Embedding models in Resources setting and it will be recognized automatically from NanoGraphRAG.
Setup LIGHTRAG
- Install LightRAG:
pip install git+https://github.com/HKUDS/LightRAG.git
LightRAG
install might introduce version conflicts, see this issue- To quickly fix:
pip uninstall hnswlib chroma-hnswlib && pip install chroma-hnswlib
- To quickly fix:
- Launch Kotaemon with
USE_LIGHTRAG=true
environment variable. - Set your default LLM & Embedding models in Resources setting and it will be recognized automatically from LightRAG.
Setup MS GRAPHRAG
-
Non-Docker Installation: If you are not using Docker, install GraphRAG with the following command:
pip install graphrag future
-
Setting Up API KEY: To use the GraphRAG retriever feature, ensure you set the
GRAPHRAG_API_KEY
environment variable. You can do this directly in your environment or by adding it to a.env
file. -
Using Local Models and Custom Settings: If you want to use GraphRAG with local models (like
Ollama
) or customize the default LLM and other configurations, set theUSE_CUSTOMIZED_GRAPHRAG_SETTING
environment variable to true. Then, adjust your settings in thesettings.yaml.example
file.
See Local model setup.
-
By default, all application data is stored in the
./ktem_app_data
folder. You can back up or copy this folder to transfer your installation to a new machine. -
For advanced users or specific use cases, you can customize these files:
flowsettings.py
.env
This file contains the configuration of your application. You can use the example here as the starting point.
Notable settings
# setup your preferred document store (with full-text search capabilities)
KH_DOCSTORE=(Elasticsearch | LanceDB | SimpleFileDocumentStore)
# setup your preferred vectorstore (for vector-based search)
KH_VECTORSTORE=(ChromaDB | LanceDB | InMemory | Qdrant)
# Enable / disable multimodal QA
KH_REASONINGS_USE_MULTIMODAL=True
# Setup your new reasoning pipeline or modify existing one.
KH_REASONINGS = [
"ktem.reasoning.simple.FullQAPipeline",
"ktem.reasoning.simple.FullDecomposeQAPipeline",
"ktem.reasoning.react.ReactAgentPipeline",
"ktem.reasoning.rewoo.RewooAgentPipeline",
]
This file provides another way to configure your models and credentials.
Configure model via the .env file
-
Alternatively, you can configure the models via the
.env
file with the information needed to connect to the LLMs. This file is located in the folder of the application. If you don't see it, you can create one. -
Currently, the following providers are supported:
-
OpenAI
In the
.env
file, set theOPENAI_API_KEY
variable with your OpenAI API key in order to enable access to OpenAI's models. There are other variables that can be modified, please feel free to edit them to fit your case. Otherwise, the default parameter should work for most people.OPENAI_API_BASE=https://api.openai.com/v1 OPENAI_API_KEY=<your OpenAI API key here> OPENAI_CHAT_MODEL=gpt-3.5-turbo OPENAI_EMBEDDINGS_MODEL=text-embedding-ada-002
-
Azure OpenAI
For OpenAI models via Azure platform, you need to provide your Azure endpoint and API key. Your might also need to provide your developments' name for the chat model and the embedding model depending on how you set up Azure development.
AZURE_OPENAI_ENDPOINT= AZURE_OPENAI_API_KEY= OPENAI_API_VERSION=2024-02-15-preview AZURE_OPENAI_CHAT_DEPLOYMENT=gpt-35-turbo AZURE_OPENAI_EMBEDDINGS_DEPLOYMENT=text-embedding-ada-002
-
Local Models
-
Using
ollama
OpenAI compatible server:-
Install ollama and start the application.
-
Pull your model, for example:
ollama pull llama3.1:8b ollama pull nomic-embed-text
-
Set the model names on web UI and make it as default:
-
-
Using
GGUF
withllama-cpp-python
You can search and download a LLM to be ran locally from the Hugging Face Hub. Currently, these model formats are supported:
-
GGUF
You should choose a model whose size is less than your device's memory and should leave about 2 GB. For example, if you have 16 GB of RAM in total, of which 12 GB is available, then you should choose a model that takes up at most 10 GB of RAM. Bigger models tend to give better generation but also take more processing time.
Here are some recommendations and their size in memory:
-
Qwen1.5-1.8B-Chat-GGUF: around 2 GB
Add a new LlamaCpp model with the provided model name on the web UI.
-
-
-
- Check the default pipeline implementation in here. You can make quick adjustment to how the default QA pipeline work.
- Add new
.py
implementation inlibs/ktem/ktem/reasoning/
and later include it inflowssettings
to enable it on the UI.
- Check sample implementation in
libs/ktem/ktem/index/file/graph
(more instruction WIP).
Since our project is actively being developed, we greatly value your feedback and contributions. Please see our Contributing Guide to get started. Thank you to all our contributors!