The easiest way to get started with LlamaIndex is by using create-llama
. This CLI tool enables you to quickly start building a new LlamaIndex application, with everything set up for you.
Just run
npx create-llama@latest
to get started, or watch this video for a demo session:
Once your app is generated, run
npm run dev
to start the development server. You can then visit http://localhost:3000 to see your app.
- A set of pre-configured use cases to get you started, e.g. Agentic RAG, Data Analysis, Report Generation, etc.
- A Next.js-powered front-end using components from shadcn/ui. The app is set up as a chat interface that can answer questions about your data or interact with your agent
- Your choice of two back-ends:
- Next.js: if you select this option, you’ll have a full-stack Next.js application that you can deploy to a host like Vercel in just a few clicks. This uses LlamaIndex.TS, our TypeScript library.
- Python FastAPI: if you select this option, you’ll get a separate backend powered by the llama-index Python package, which you can deploy to a service like Render or fly.io. The separate Next.js front-end will connect to this backend.
- Each back-end has two endpoints:
- One streaming chat endpoint, that allow you to send the state of your chat and receive additional responses
- One endpoint to upload private files which can be used in your chat
- The app uses OpenAI by default, so you'll need an OpenAI API key, or you can customize it to use any of the dozens of LLMs we support.
Here's how it looks like:
generated-app.mp4
Optionally, you can supply your own data; the app will index it and make use of it, e.g. to answer questions. Your generated app will have a folder called data
(If you're using Express or Python and generate a frontend, it will be ./backend/data
).
The app will ingest any supported files you put in this directory. Your Next.js and Express apps use LlamaIndex.TS, so they will be able to ingest any PDF, text, CSV, Markdown, Word and HTML files. The Python backend can read even more types, including video and audio files.
Before you can use your data, you need to index it. If you're using the Next.js or Express apps, run:
npm run generate
Then re-start your app. Remember you'll need to re-run generate
if you add new files to your data
folder.
If you're using the Python backend, you can trigger indexing of your data by calling:
poetry run generate
The app will default to OpenAI's gpt-4o-mini
LLM and text-embedding-3-large
embedding model.
If you want to use different OpenAI models, add the --ask-models
CLI parameter.
You can also replace OpenAI with one of our dozens of other supported LLMs.
To do so, you have to manually change the generated code (edit the settings.ts
file for Typescript projects or the settings.py
file for Python projects)
The simplest thing to do is run create-llama
in interactive mode:
npx create-llama@latest
# or
npm create llama@latest
# or
yarn create llama
# or
pnpm create llama@latest
You will be asked for the name of your project, along with other configuration options, something like this:
>> npm create llama@latest
Need to install the following packages:
create-llama@latest
Ok to proceed? (y) y
✔ What is your project named? … my-app
✔ What app do you want to build? › Agentic RAG
✔ What language do you want to use? › Python (FastAPI)
✔ Do you want to use LlamaCloud services? … No / Yes
✔ Please provide your LlamaCloud API key (leave blank to skip): …
✔ Please provide your OpenAI API key (leave blank to skip): …
? How would you like to proceed? › - Use arrow-keys. Return to submit.
Just generate code (~1 sec)
❯ Start in VSCode (~1 sec)
Generate code and install dependencies (~2 min)
You can also pass command line arguments to set up a new project
non-interactively. For a list of the latest options, call create-llama --help
.
If you prefer more advanced customization options, you can run create-llama
in pro mode using the --pro
flag.
In pro mode, instead of selecting a predefined use case, you'll be prompted to select each technical component of your project. This allows for greater flexibility in customizing your project, including:
- Vector Store: Choose from a variety of vector stores for keeping your documents, including MongoDB, Pinecone, Weaviate, Qdrant and Chroma.
- Tools: Choose from a variety of agent tools (functions called by the LLM), such as:
- Code Interpreter: Executes Python code in a secure Jupyter notebook environment
- Artifact Code Generator: Generates code artifacts that can be run in a sandbox
- OpenAPI Action: Facilitates requests to a provided OpenAPI schema
- Image Generator: Creates images based on text descriptions
- Web Search: Performs web searches to retrieve up-to-date information
- Data Sources: Integrate various data sources into your chat application, including local files, websites, or database-retrieved data.
- Backend Options: Besides using Next.js or FastAPI, you can also select to use Express for a more traditional Node.js application.
- Observability: Choose from a variety of LLM observability tools, including LlamaTrace and Traceloop.
Pro mode is ideal for developers who want fine-grained control over their project's configuration and are comfortable with more technical setup options.
Inspired by and adapted from create-next-app