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Udemy – Advance RAG : Vector to Graph RAG Neo4j Adaptive AutoGen RAG 2024-10
Published on: 2024-11-30 17:58:25
Categories: 28
Description
Advance RAG course: Vector to Graph RAG Neo4j Adaptive AutoGen RAG. In this course, you will learn how to master Retrieval Augmented Generation (RAG), an advanced artificial intelligence technique that combines retrieval-based methods with generative models. This course is designed for developers, data scientists, AI enthusiasts, quality engineers, students who want to build practical applications using RAG, from a simple chatbot based on vector RAG to advanced chatbot with Graph RAG and self-reflective RAG. You will explore the theoretical principles, practical implementation and real-world use cases of RAG. At the end of this course, you will have the skills to create RAG-based AI applications.
What you will learn in this course
- Basics of RAG (Retrieval Augmented Generation) and NLP: Understanding the core concepts to build a strong foundation of NLP and RAG.
- Understanding of NLP process like markup, embedding, POS, TF-IDF, segmentation etc.
- Understanding the evaluation of NLP models from the rule-based model to the transformer model.
- Understanding the transformer model with a simple RAG example.
- Setting up the environment for the practical implementation of the RAG program using Python and VS Code
- Learn to build a vector based RAG application with Streamlit chatbot, langchain and vectordb.
- Learn advanced RAG technique with Graph RAG, LLM and Streamlit chatbot. Learn how to configure Neo4j, create Graph RAG, display graph in your chatbot.
- Advanced RAG learning with hybrid search technique using Graph RAG. Self-reflexive RAG learning with Langgraph. Practical use cases with RAG Python code.
- RAG re-ranking with cohere API to improve RAG retrieval process.
- Practical uses in RAG.
- Tests to check learning.
- Building an agent-based RAG program with Autogen. Agent-oriented RAG.
This course is suitable for people who:
- Data scientists
- Machine learning engineers
- Artificial intelligence and natural language processing enthusiasts
- Software developers and engineers
- Researchers and academics
- Product managers and technical supervisors
- Students and learners
- Artificial intelligence experts and consultants
- Quality engineers
Advance RAG course specifications: Vector to Graph RAG Neo4j Adaptive AutoGen RAG
- Publisher: Udemy
- Lecturer: Soumen Kumar Mondal
- Training level: beginner to advanced
- Training duration: 2 hours and 43 minutes
- Number of courses: 22
Course headings
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Advance RAG course prerequisites: Vector to Graph RAG Neo4j Adaptive AutoGen RAG
- No prior RAG experience required.
- Very basic python knowledge will help.
- Don’t worry without python knowledge also you will learn how to implement RAG chatbot.
Course images
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Sample video of the course
Installation guide
After Extract, view with your favorite Player.
Subtitle: English
Quality: 720p
download link
Download part 1 – 1 GB
Download part 2 – 627 MB
File(s) password: www.downloadly.ir
File size
1.6 GB
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