vector-vault

Quickly create ChatGPT RAG apps and Unleash the full potential of GenAI with Vector Vault


Keywords
chatgpt, chatgpt-api, chatgpt-bot, chatgpt-python, chatgpt3, chatgpt4, generative-ai, text-generation
Licenses
GPL-3.0+/OML
Install
pip install vector-vault==5.4.9.2

Documentation

Vector Vault

Vector Vault Header

Vector Vault is a cutting-edge, cloud-native and RAG-native vector database solution that revolutionizes AI integration in applications. Our platform seamlessly combines vector databases, similarity search, and AI model interactions into a single, easy-to-use service.

Key Features

  • RAG-Native Architecture: Perform Retrieval-Augmented Generation in one line of code.
  • Unparalleled Simplicity: Implement sophisticated AI features with minimal code.
  • Full-Stack Integration: Use our Python package for backend operations and our JavaScript package for easy front-end integration.
  • Cloud-Engine: Our service handles vector search, retrieval, and AI model interactions, simplifying your architecture.
  • One-Line Operations: Save to the cloud vector database and generate RAG responses in one line of code.
  • Developer-Centric: Focus on your application logic rather than complex AI and front-end integrations.
  • Unlimited Isolated Databases: Create and access an infinite number of vector databases, ideal for multi-tenant applications.

Quick Start

Install Vector Vault:

pip install vector-vault

Basic usage:

from vectorvault import Vault

vault = Vault(user='YOUR_EMAIL',
              api_key='YOUR_API_KEY', 
              openai_key='YOUR_OPENAI_KEY',
              vault='NAME_OF_VAULT')

# Add data to your vault
vault.add('some text')
vault.get_vectors()
vault.save()

# Get AI-powered RAG responses
rag_response = vault.get_chat("Your question here", get_context=True)
print(rag_response)

Key Concepts

  • Vaults: Isolated serverless Vector databases. No limits, inifitely scalable.
  • RAG-Native: Vector Similarity Search Retrieval Augmented Generation by default - fully customizable with params
  • Cloud Engine: We process operations and AI references in the Vector Vault cloud, making it easy for you to integrate to the front end and build real applications

Advanced Features

  • Metadata Management: Easily add and retrieve metadata for your vector entries.
  • Streaming Responses: Use get_chat_stream() for interactive chat experiences.
  • Custom Prompts and Personalities: Tailor AI responses to your specific needs.

Use Cases

  • AI-powered customer service chatbots
  • Semantic search in large document collections
  • Personalized content recommendations
  • Intelligent chatbots with access to vast knowledge bases
  • Multi-tenant systems needing isolated vector databases

Why Vector Vault?

  • Simplicity: Easier to use than traditional vector databases and AI integrations.
  • RAG Optimization: Built from the ground up for Retrieval-Augmented Generation workflows.
  • Customization: Add specific knowledge to your Vault and tailor AI responses to your needs.
  • Scalability: Fully serverless platform offering unparalleled scalability.
  • Time and Resource Saving: Dramatically reduce development time for AI feature integration.

Getting Started

  1. Sign up for a 30-day free trial at VectorVault.io to get your API key.
  2. Install the vectorvault package: pip install vector-vault
  3. Explore our examples folder for tutorials and practical applications.

Learn More

Start building with Vector Vault today and experience the future of RAG-native, cloud-native vector databases!