← Cursos
🎓
BásicocourseAcceso por bootcamp

Vector Databases Fundamentals Guide

67

Lecciones

8

Módulos

🎓

Acceso por bootcamp

Lo que aprenderás

Understand why RAG systems need vector databases (and when SQL, NoSQL, or numpy are enough)
Explain how vector databases work internally: architecture, HNSW, IVF, and PQ indexing algorithms
Identify essential features for production RAG: metadata filtering, hybrid search, multi-tenancy, batch operations
Implement ChromaDB from setup to optimized similarity search with metadata filtering
Build a complete RAG system: document ingestion, indexing, retrieval, and generation with FastAPI
Compare Pinecone, Weaviate, Qdrant, and Milvus — features, pricing, and architecture trade-offs
Apply a decision framework to choose the right vector database for any project
Design production strategies: scaling, monitoring, backups, migrations, and cost optimization

¿Para quién es?

  • AI Engineers building RAG systems who need to store and retrieve embeddings at scale
  • Developers who completed the Embeddings Deep Dive Guide and want to implement vector storage for production
  • Backend engineers evaluating vector database options (ChromaDB vs Pinecone vs Weaviate) for their AI projects
  • Students preparing for Week 7-9 of the AI Engineering Bootcamp (RAG implementation modules)

Requisitos

  • Embeddings Deep Dive Guide completed (Guide #6): how to generate embeddings, distance metrics, semantic search with numpy
  • AI Semantics Guide completed (Guide #5): what vectors are, cosine similarity, keyword vs semantic search
  • Python intermediate: functions, classes, async/await, pip packages
  • Basic familiarity with REST APIs (requests, endpoints, JSON)

Contenido del curso

1Módulo 1: Por qué Vector Databases para AI Engineers8 lecciones
2Módulo 2: Cómo funcionan Vector Databases (Conceptual)8 lecciones
3Módulo 3: Features Esenciales para RAG8 lecciones
4Módulo 4: ChromaDB Setup y Pipeline RAG Completo11 lecciones
5Módulo 5: Landscape de Vector Databases para AI Engineers8 lecciones
6Módulo 6: Decision Matrix para AI Engineers8 lecciones
7Módulo 7: Production Considerations para RAG8 lecciones
8Módulo 8: Proyecto Integrador - RAG System con ChromaDB8 lecciones
Reviews

What students say

Sign in to leave a review.

No approved reviews yet.

Be the first to share your experience!