llama-stack-mirror/docs/source/getting_started/quickstart.md
Nathan Weinberg 2bb9039173
docs: fix steps in the Quick Start Guide (#2800)
# What does this PR do?
'build' command didn't take into account ENABLE flags for starter distro

for some reason, I was having issues with HuggingFace access for the
embedding model, so added a tip for that as well

Closes #2779

## Test Plan
I ran the described steps manually, but it would be nice if someone else
could try it and verify this still works

We might consider having some CI job ensure the QSG remains functional -
it's not a great experience for new users if they try Llama Stack for
the first time and it doesn't work as we describe

Signed-off-by: Nathan Weinberg <nweinber@redhat.com>
2025-07-18 09:08:46 -07:00

6.5 KiB

Quickstart

Get started with Llama Stack in minutes!

Llama Stack is a stateful service with REST APIs to support the seamless transition of AI applications across different environments. You can build and test using a local server first and deploy to a hosted endpoint for production.

In this guide, we'll walk through how to build a RAG application locally using Llama Stack with Ollama as the inference provider for a Llama Model.

💡 Notebook Version: You can also follow this quickstart guide in a Jupyter notebook format: quick_start.ipynb

Step 1: Install and setup

  1. Install uv
  2. Run inference on a Llama model with Ollama
ollama run llama3.2:3b --keepalive 60m

Step 2: Run the Llama Stack server

We will use uv to run the Llama Stack server.

ENABLE_OLLAMA=ollama OLLAMA_INFERENCE_MODEL=llama3.2:3b uv run --with llama-stack llama stack build --template starter --image-type venv --run

Step 3: Run the demo

Now open up a new terminal and copy the following script into a file named demo_script.py.

from llama_stack_client import Agent, AgentEventLogger, RAGDocument, LlamaStackClient

vector_db_id = "my_demo_vector_db"
client = LlamaStackClient(base_url="http://localhost:8321")

models = client.models.list()

# Select the first LLM and first embedding models
model_id = next(m for m in models if m.model_type == "llm").identifier
embedding_model_id = (
    em := next(m for m in models if m.model_type == "embedding")
).identifier
embedding_dimension = em.metadata["embedding_dimension"]

_ = client.vector_dbs.register(
    vector_db_id=vector_db_id,
    embedding_model=embedding_model_id,
    embedding_dimension=embedding_dimension,
    provider_id="faiss",
)
source = "https://www.paulgraham.com/greatwork.html"
print("rag_tool> Ingesting document:", source)
document = RAGDocument(
    document_id="document_1",
    content=source,
    mime_type="text/html",
    metadata={},
)
client.tool_runtime.rag_tool.insert(
    documents=[document],
    vector_db_id=vector_db_id,
    chunk_size_in_tokens=50,
)
agent = Agent(
    client,
    model=model_id,
    instructions="You are a helpful assistant",
    tools=[
        {
            "name": "builtin::rag/knowledge_search",
            "args": {"vector_db_ids": [vector_db_id]},
        }
    ],
)

prompt = "How do you do great work?"
print("prompt>", prompt)

response = agent.create_turn(
    messages=[{"role": "user", "content": prompt}],
    session_id=agent.create_session("rag_session"),
    stream=True,
)

for log in AgentEventLogger().log(response):
    log.print()

We will use uv to run the script

uv run --with llama-stack-client,fire,requests demo_script.py

And you should see output like below.

rag_tool> Ingesting document: https://www.paulgraham.com/greatwork.html

prompt> How do you do great work?

inference> [knowledge_search(query="What is the key to doing great work")]

tool_execution> Tool:knowledge_search Args:{'query': 'What is the key to doing great work'}

tool_execution> Tool:knowledge_search Response:[TextContentItem(text='knowledge_search tool found 5 chunks:\nBEGIN of knowledge_search tool results.\n', type='text'), TextContentItem(text="Result 1:\nDocument_id:docum\nContent:  work. Doing great work means doing something important\nso well that you expand people's ideas of what's possible. But\nthere's no threshold for importance. It's a matter of degree, and\noften hard to judge at the time anyway.\n", type='text'), TextContentItem(text="Result 2:\nDocument_id:docum\nContent:  work. Doing great work means doing something important\nso well that you expand people's ideas of what's possible. But\nthere's no threshold for importance. It's a matter of degree, and\noften hard to judge at the time anyway.\n", type='text'), TextContentItem(text="Result 3:\nDocument_id:docum\nContent:  work. Doing great work means doing something important\nso well that you expand people's ideas of what's possible. But\nthere's no threshold for importance. It's a matter of degree, and\noften hard to judge at the time anyway.\n", type='text'), TextContentItem(text="Result 4:\nDocument_id:docum\nContent:  work. Doing great work means doing something important\nso well that you expand people's ideas of what's possible. But\nthere's no threshold for importance. It's a matter of degree, and\noften hard to judge at the time anyway.\n", type='text'), TextContentItem(text="Result 5:\nDocument_id:docum\nContent:  work. Doing great work means doing something important\nso well that you expand people's ideas of what's possible. But\nthere's no threshold for importance. It's a matter of degree, and\noften hard to judge at the time anyway.\n", type='text'), TextContentItem(text='END of knowledge_search tool results.\n', type='text')]

inference> Based on the search results, it seems that doing great work means doing something important so well that you expand people's ideas of what's possible. However, there is no clear threshold for importance, and it can be difficult to judge at the time.

To further clarify, I would suggest that doing great work involves:

* Completing tasks with high quality and attention to detail
* Expanding on existing knowledge or ideas
* Making a positive impact on others through your work
* Striving for excellence and continuous improvement

Ultimately, great work is about making a meaningful contribution and leaving a lasting impression.

Congratulations! You've successfully built your first RAG application using Llama Stack! 🎉🥳

:class: tip

If you are getting a **401 Client Error** from HuggingFace for the **all-MiniLM-L6-v2** model, try setting **HF_TOKEN** to a valid HuggingFace token in your environment

Next Steps

Now you're ready to dive deeper into Llama Stack!