Weaviate Cookbooks

← Back to skills

This skill provides an index of implementation guides and foundational requirements for building Weaviate-powered AI applications. Use the references to quickly scaffold full-stack applications with best practices for connection management, environment setup, and application architecture.

Category: General & Miscellaneous
Repo: antigravity-awesome-skills
Path: skills/weaviate-cookbooks/SKILL.md
Updated: 7/5/2026, 4:58:46 PM

AI Summary

This skill provides an index of implementation guides and foundational requirements for building Weaviate-powered AI applications. Use the references to quickly scaffold full-stack applications with best practices for connection management, environment setup, and application architecture. It is useful for general automation, multi-purpose workflows, cross-disciplinary tasks, and utility skills. Source: antigravity-awesome-skills (skills/weaviate-cookbooks/SKILL.md).

Weaviate Cookbooks

Overview

This skill provides an index of implementation guides and foundational requirements for building Weaviate-powered AI applications. Use the references to quickly scaffold full-stack applications with best practices for connection management, environment setup, and application architecture.

When to Use This Skill

  • Use when the user wants a Weaviate-backed RAG, agentic RAG, chatbot, data explorer, or multimodal document-search application.
  • Use when selecting between cookbook patterns before writing a full-stack Weaviate app.
  • Use when the project needs Weaviate environment, setup, async-client, or frontend guidance.
  • Use when the user asks for an official Weaviate blueprint rather than a generic vector database recipe.

Weaviate Cloud Instance

If the user does not have an instance yet, direct them to the cloud console to register and create a free sandbox. Create a Weaviate instance via Weaviate Cloud.

Before Building Any Cookbook

Follow these shared guidelines before generating any cookbook app:

Then proceed to the specific cookbook reference below.

Cookbook Index

  • Query Agent Chatbot: Build a full-stack chatbot using Weaviate Query Agent with streaming and chat history support.
  • Data Explorer: Build a full-stack data explorer app including sorting, keyword search and tabular view of weaviate data.
  • Multimodal RAG: Building Document Search: Build a multimodal Retrieval-Augmented Generation (RAG) system using Weaviate Embeddings (ModernVBERT/colmodernvbert) and Ollama with Qwen3-VL for generation.
  • Basic RAG: Implement basic retrieval and generation with Weaviate. Useful for most forms of data retrieval from a Weaviate collection.
  • Advanced RAG: Improve on basic RAG by adding extra features such as re-ranking, query decomposition, query re-writing, LLM filter selection.
  • Basic Agent: Build a tool-calling AI agent with structured outputs using DSPy. Covers AgentResponse signatures, RouterAgent, tool design, and sequential multi-step loops.
  • Agentic RAG: Build RAG-powered AI agents with Weaviate. Covers naive RAG tools, hierarchical RAG with LLM-created filters, vector DB memory, Weaviate Query Agent, and Elysia integration.

Interface (Optional)

Use this when the user explicitly asks for a frontend for their Weaviate backend.

Client Usage

  • Async Client: Guide for using the Weaviate Python async client in production applications (FastAPI, async frameworks). Covers connection patterns, lifecycle management, common pitfalls, and multi-cluster setups.

Limitations

  • Cookbook blueprints still need adaptation to the user's data model, embedding provider, auth model, deployment platform, and latency/cost targets.
  • This skill does not validate live Weaviate credentials, cloud quotas, or model availability unless the user provides and approves the relevant environment.
  • Generated apps should be reviewed for security, data privacy, prompt injection exposure, and production observability before launch.

Related skills