Master Vector Database - Chromadb
Published 4/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.44 GB | Duration: 3h 49m
Published 4/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.44 GB | Duration: 3h 49m
ChromaDB methods, collections, query filter, langchain, RAG, semantic search and much more.
What you'll learn
Learn integration Vector databases with LangChain, Open AI
Master Embeddings
Transformer Models for vector embedding, Generative AI, Open AI API Usage
Understand the fundamentals of vector databases and their role in AI, generative AI, and LLM (Language Model Models)
Implement code along exercises to build and optimize vector indexing systems for real-world applications
Requirements
Basic Python programming knowledge
Desire to learn and excel more
Description
Welcome to the Master Vector Database course - ChromaDB!Are you ready to unlock the power of ChromaDB and take your data handling skills to the next level? Look no further! This course is designed to equip you with all the tools and techniques you need to become a master of vector databases.In this course, you'll dive into the fascinating world of ChromaDB, starting with an introduction that will lay the foundation for your journey. From there, you'll learn various methods on how to efficiently manage collections and add document-associated embeddings.But that's just the beginning! Ever struggled with querying data effectively? Not anymore! We'll teach you how to query data with precision using filters like 'where' and even delve into querying multiple documents using the powerful Langchain + ChromaDB combination.And it doesn't stop there! Get ready to explore advanced topics such as storing and querying stock companies data, semantic search using duckdb+parquet, and even mastering multimodal image embedding search techniques.But wait, there's more! Ever wanted to perform local vector database searches seamlessly? We'll show you how it's done using the dynamic trio of ChromaDB, Langchain, and OpenAI.And that's not all! Brace yourself for an exciting exploration into the world of RAG with ChromaDB and OpenAI/GPT Model integration, as well as leveraging ChromaDB with Gemini Pro embedding model.So, if you're ready to elevate your skills, expand your knowledge, and become a true expert in vector databases, then this course is tailor-made for you. Don't miss out on this incredible opportunity to become a master of ChromaDB. Enroll now and let's embark on this exhilarating journey together!
Overview
Section 1: Introduction
Lecture 1 Introduction to Vector Database
Lecture 2 Vectors and Embeddings
Lecture 3 Explain Vector Database like I'm 5
Section 2: ChromaDB
Lecture 4 Introduction to ChromaDB
Lecture 5 Methods on collections
Lecture 6 Storing "The Matrix" collections
Lecture 7 Adding document associated embeddings
Lecture 8 Query data with 'where' filter
Section 3: Query multiple documents - ChromaDB + Langchain
Lecture 9 ChromaDB + Langchain - QA on multiple documents - Part 1
Lecture 10 ChromaDB + Langchain - QA on multiple documents - Part 2
Section 4: Store and Query Stock Companies Data
Lecture 11 setup database, and getting data from wikipedia
Lecture 12 query stock companies data with filters
Section 5: Semantic Search, Duckdb+parquet with ChromaDB
Lecture 13 Storing Knowledgebase information with Duckdb+parquet
Lecture 14 Running semantic searches with filters, use different embedding model
Section 6: Multimodal image embedding search
Lecture 15 setup environment, data, chromadb database
Lecture 16 Image search using embedding model
Lecture 17 Finding items within an image using model
Lecture 18 Using metadatas to enhance your queries
Section 7: Local Vector Database with ChromaDB + langChain + OpenAI
Lecture 19 Query FED Speech data with local vectorDB, OpenAI and Langchain
Section 8: Streamlit + ChromaDB + LangChain - Summarize any document
Lecture 20 ChromaDB + Langchain to summarize a PDF document - Part 1
Section 9: RAG with ChromaDB and OpenAI/GPT model
Lecture 21 RAG on wikipedia articles using GPT 3.5 model
Section 10: ChromaDB with Gemini Pro embedding model
Lecture 22 Using Gemini Pro embedding model for chromaDB
Section 11: Congratulations and Thank You!
Lecture 23 Your feedback is very valuable!
Anyone who want to explore the world of AI and Vector Database,Anyone who want to step into Vector Database world with practical learning,Data engineers, database administrators and data professionals curious about the emerging field of vector databases,Software developers interested in integrating vector databases into their applications.