# What does this PR do? Another doc enhancement for https://github.com/meta-llama/llama-stack/issues/1818 Summary of changes: - `docs/source/distributions/configuration.md` - Updated dropdown title to include a more user-friendly description. - `docs/_static/css/my_theme.css` - Added styling for `<h3>` elements to set a normal font weight. - `docs/source/distributions/starting_llama_stack_server.md` - Changed section headers from bold text to proper markdown headers (e.g., `##`). - Improved descriptions for starting Llama Stack server using different methods (library, container, conda, Kubernetes). - Enhanced clarity and structure by converting instructions into markdown headers and improved formatting. - `docs/source/getting_started/index.md` - Major restructuring of the "Quick Start" guide: - Added new introductory section for Llama Stack and its capabilities. - Reorganized steps into clearer subsections with proper markdown headers. - Replaced dropdowns with tabbed content for OS-specific instructions. - Added detailed steps for setting up and running the Llama Stack server and client. - Introduced new sections for running basic inference and building agents. - Enhanced readability and visual structure with emojis, admonitions, and examples. - `docs/source/providers/index.md` - Updated the list of LLM inference providers to include "Ollama." - Expanded the list of vector databases to include "SQLite-Vec." Let me know if you need further details! ## Test Plan Renders locally, included screenshot. # Documentation For https://github.com/meta-llama/llama-stack/issues/1818 <img width="1332" alt="Screenshot 2025-04-09 at 11 07 12 AM" src="https://github.com/user-attachments/assets/c106efb9-076c-4059-a4e0-a30fa738585b" /> --------- Signed-off-by: Francisco Javier Arceo <farceo@redhat.com>
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Providers Overview
The goal of Llama Stack is to build an ecosystem where users can easily swap out different implementations for the same API. Examples for these include:
- LLM inference providers (e.g., Ollama, Fireworks, Together, AWS Bedrock, Groq, Cerebras, SambaNova, vLLM, etc.),
- Vector databases (e.g., ChromaDB, Weaviate, Qdrant, Milvus, FAISS, PGVector, SQLite-Vec, etc.),
- Safety providers (e.g., Meta's Llama Guard, AWS Bedrock Guardrails, etc.)
Providers come in two flavors:
- Remote: the provider runs as a separate service external to the Llama Stack codebase. Llama Stack contains a small amount of adapter code.
- Inline: the provider is fully specified and implemented within the Llama Stack codebase. It may be a simple wrapper around an existing library, or a full fledged implementation within Llama Stack.
Importantly, Llama Stack always strives to provide at least one fully inline provider for each API so you can iterate on a fully featured environment locally.
External Providers
Llama Stack supports external providers that live outside of the main codebase. This allows you to create and maintain your own providers independently. See the External Providers Guide for details.
Agents
Run multi-step agentic workflows with LLMs with tool usage, memory (RAG), etc.
DatasetIO
Interfaces with datasets and data loaders.
Eval
Generates outputs (via Inference or Agents) and perform scoring.
Inference
Runs inference with an LLM.
Post Training
Fine-tunes a model.
Safety
Applies safety policies to the output at a Systems (not only model) level.
Scoring
Evaluates the outputs of the system.
Telemetry
Collects telemetry data from the system.
Tool Runtime
Is associated with the ToolGroup resouces.
Vector IO
Vector IO refers to operations on vector databases, such as adding documents, searching, and deleting documents. Vector IO plays a crucial role in Retreival Augmented Generation (RAG), where the vector io and database are used to store and retrieve documents for retrieval.
Vector IO Providers
The following providers (i.e., databases) are available for Vector IO:
:maxdepth: 1
external
vector_io/faiss
vector_io/sqlite-vec
vector_io/chromadb
vector_io/pgvector
vector_io/qdrant
vector_io/milvus
vector_io/weaviate