Implementation:Elevenlabs Elevenlabs python RagConfig
| Field | Value |
|---|---|
| source | Elevenlabs_Elevenlabs_python |
| domains | Conversational AI, RAG, Knowledge Retrieval, Embeddings |
| last_updated | 2026-02-15 |
Overview
Description
RagConfig is a Pydantic model that defines the Retrieval-Augmented Generation (RAG) configuration for a conversational AI agent in the ElevenLabs platform. It controls how knowledge base documents are retrieved and used during conversations, including the embedding model, vector distance thresholds, document chunk limits, and custom query rewriting prompts.
This model is auto-generated by Fern from the ElevenLabs API definition and inherits from UncheckedBaseModel. It enables fine-grained control over the RAG pipeline to optimize relevance and performance of knowledge-grounded responses.
Usage
RagConfig is used within PromptAgentApiModelInput to configure how an agent retrieves and utilizes knowledge base content during conversations. It is essential for agents that need to answer questions based on uploaded documents or knowledge bases.
Code Reference
Source Location
src/elevenlabs/types/rag_config.py
Class Signature
class RagConfig(UncheckedBaseModel):
...
Import Statement
from elevenlabs.types import RagConfig
I/O Contract
| Field | Type | Required | Description |
|---|---|---|---|
enabled |
Optional[bool] |
No | Whether RAG is enabled for the agent. |
embedding_model |
Optional[EmbeddingModelEnum] |
No | The embedding model to use for vector search. |
max_vector_distance |
Optional[float] |
No | Maximum vector distance of retrieved chunks. |
max_documents_length |
Optional[int] |
No | Maximum total length of document chunks retrieved from RAG. |
max_retrieved_rag_chunks_count |
Optional[int] |
No | Maximum number of RAG document chunks to initially retrieve from the vector store. These are then further filtered by vector distance and total length. |
query_rewrite_prompt_override |
Optional[str] |
No | Custom prompt for rewriting user queries before RAG retrieval. The conversation history will be automatically appended at the end. If not set, the default prompt will be used. |
Usage Examples
Basic RAG Configuration
from elevenlabs.types import RagConfig
rag = RagConfig(
enabled=True,
max_documents_length=5000,
max_vector_distance=0.8,
)
Advanced RAG with Custom Query Rewriting
from elevenlabs.types import RagConfig
rag = RagConfig(
enabled=True,
max_documents_length=10000,
max_retrieved_rag_chunks_count=20,
max_vector_distance=0.7,
query_rewrite_prompt_override=(
"Given the conversation history, rewrite the user's latest query "
"into a standalone search query that captures the user's intent. "
"Focus on key entities and concepts."
),
)
Using RAG in Agent Prompt Configuration
from elevenlabs.types import PromptAgentApiModelInput, RagConfig
prompt_config = PromptAgentApiModelInput(
prompt="You are a support agent. Use the knowledge base to answer questions.",
rag=RagConfig(
enabled=True,
max_documents_length=8000,
max_retrieved_rag_chunks_count=15,
),
)
Related Pages
- Elevenlabs_Elevenlabs_python_PromptAgentApiModelInput - Parent prompt configuration that references RagConfig
- Elevenlabs_Elevenlabs_python_AgentConfig - Core agent configuration
- Elevenlabs_Elevenlabs_python_CustomLlm - Custom LLM configuration that may be used alongside RAG