Embedchain home page
✨ Search embedchain docs...
⌘K
GitHub
Join our slack
Join our slack
Search...
Navigation
🗄️ Vector databases
📘 Documentation
Examples
API Reference
Talk to founders
Get Started
⚡ Quickstart
📚 Introduction
❓ FAQs
💻 Full stack
🔗 Integrations
Use cases
🧱 Introduction
🤖 Chatbots
❓ Question Answering
🔍 Semantic Search
Components
🧩 Introduction
🗂️ Data sources
🗄️ Vector databases
🤖 Large language models (LLMs)
🧩 Embedding models
🔬 Evaluation
Deployment
Overview
Fly.io
Modal.com
Render.com
Railway.app
Streamlit.io
Gradio.app
Huggingface.co
Community
🤝 Connect with Us
Contributing
📋 Guidelines
👨💻 Development
📝 Documentation
🐍 Python
Product
📜 Release Notes
On this page
Overview
🗄️ Vector databases
Overview
Utilizing a vector database alongside Embedchain is a seamless process. All you need to do is configure it within the YAML configuration file. We’ve provided examples for each supported database below:
ChromaDB
Elasticsearch
OpenSearch
Zilliz
LanceDB
Pinecone
Qdrant
Weaviate
If you can't find specific feature or run into issues, please feel free to reach out through one of the following channels.
Slack
Let us know on our slack community
Discord
Let us know on discord community
GitHub
Open an issue on our GitHub
Schedule a call
Schedule a call with Embedchain founder
Was this page helpful?
Yes
No
Suggest edits
Raise issue
Assistant
Responses are generated using AI and may contain mistakes.