Skip to main content

Vector Databases

Vector databases are databases that enable embedding searches. They allow you to store many/long documents and retrieve them later using an LLM. Langdock currently supports the following providers:

Setting Up a Connection

When working with vector databases, you first need to set up a connection in the respective integration’s settings. Once the vector database is connected, it can be used in agents as an action or in chat with @. With each request, the model writes a request to the database and an embedding search is performed.

Knowledge bases

A Knowledge base is a collection of documents that can be used as knowledge. Knowledge bases use vector search within the product, so smaller use cases do not require setting up a separate vector database, and less technical users can work with many documents.

Capacity

Up to 1,000 files can be uploaded manually or via API.

Management

Users can manage Knowledge bases through the user interface (Library → Knowledge bases), including:
  • Uploading files
  • Deleting files
  • Managing permissions
Automatic synchronization from integrations is not possible.
Sharing: You can share Knowledge bases with individual users, groups, or the entire workspace.

API Access

Alternatively, users can programmatically upload, update, or delete files via the Knowledge Folder API. A link can be included to reference the original source in responses to users.

Comparison: Knowledge bases vs. Custom Vector Database

Knowledge bases are suitable for less technical users and smaller use cases that need to be implemented quickly. For very large, valuable use cases with several thousand documents, a custom vector database is recommended because settings can be adjusted to the use case, paragraph length, topics, and metadata.
FeatureKnowledge bases (Langdock)Custom Vector Database
ManagementFully managed by Langdock, no infrastructure neededFull control over models, dimensions, retrieval parameters, updates, etc.
Default SettingsOptimized defaults (2,000-character chunks, 1536 dimensions, top-50 retrieval)No predefined settings
Data VolumeIdeal for up to 1,000 filesUnlimited data volumes and custom data structures possible
SetupQuick setup via Langdock UIOwn infrastructure, maintenance, and connection via Langdock Actions required
Access ControlGranular access control and UI management in LangdockAccess control must be implemented yourself

FAQ

Use a vector database when your organization already manages retrieval infrastructure or needs custom indexing, metadata, or search behavior. Use a Langdock Knowledge base when you want Langdock to handle document processing and retrieval.
Yes. Use them for different retrieval needs, but keep the setup focused. Too many overlapping sources can make answers less predictable and harder to debug.