Generative AI (Beginner to Advanced) with Machine Learning and Deep Learning

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What Will You Learn?

  • Master the creation of advanced generative AI applications using the Langchain framework and Huggingface's cutting-edge models.
  • Understand the architecture and design patterns for building robust and scalable generative AI systems.
  • Gain practical experience in deploying generative AI models across various environments, including cloud platforms and on-premise servers.
  • Explore deployment strategies that ensure scalability, reliability, and optimal performance of AI applications.
  • Develop Retrieval-Augmented Generation (RAG) pipelines to boost the accuracy and efficiency of generative models by integrating retrieval mechanisms.
  • Seamlessly incorporate Huggingface's pre-trained models into Langchain applications to leverage their powerful NLP capabilities.
  • Customize and fine-tune Huggingface models to meet specific application needs and use cases.
  • Engage in real-world projects demonstrating Generative AI applications in domains such as chatbots, content generation, and data augmentation.

Course Content

Introduction of the Course

  • Introduction-What we will learn in this course
  • Getting Started With VS Code
  • Different Ways Of creating Python Environment
  • Python Basics-Syntax And Semantics
  • Variables In Python
  • Basics DataTypes In Python
  • Operators In Python

Python Control Flow

Data Structures using Python

Functions in Python

Importing, Creating Modules an Packages

File Handling with Python

Exception Handling

OOPS Classes and Objects

Streamlit with Python

Machine Learning for Natural Language Processing (NLP)

Deep Learning for Natural Processing Language (NLP)

Simple Recurrent Neural Network (RNN) In-depth Intuition

Artificial Neural Networks (ANN) Project Implementation

Project: IMDB Dataset And Feature Engineering

LSTM RNN In-depth Intuition

Project: LSTM and GRU

Bidirectional RNN In-depth Intuition

Encoder and Decoder

Attention Mechanism – Seq2Seq Architecture

Transformers

Introduction to Generative AI and LLM Model

Introduction to LangChain for Generative AI

Getting Started with LangChain and Open AI

Important Components and Modules in LangChain

Getting Started with Open AI and Ollama

Building Basic LLM application Using LCEL (LangChain Expression Language)

Building Chatbots With Conversation History Using LangChain

Conversational Q&A Chatbot With Message History

Project: Q&A Chatbot Generative AI App with Open AI

RAG Document Q&A with GROQ API and Llama3

Project: Conversational Q&A Chatbot – Chat with PDF with Chat history

Search Engine with LangChain Tools and Agents

Gen AI Project-Chat With SQL DB With LangChain SQL Toolkit and Agentype

Text Summarization with LangChain

Project: YouTube Video And Website URL Content Summarization

Project: Text To Math Problem Solver Using Google Gemma 2

HuggingFace and LangChain Integration

Project: PDF Query RAG With LangChain And AstraDB

Multilanguage Code Assistant using CodeLama

Deployment OF Gen AI APP In Streamlit and Huggingspaces

Generative AI in AWS Cloud

Getting Started with Nvidia NIM and LangChain

Creating Multi AI Agents Using CrewAI For Real World Usecases

Hybrid Search RAG with vector Database and LangChain

Introduction to Graph Database and Cypher Query Language with LangChain

Implementing Graph Database with Python and LangChain

Detailed Intuition and Implementation Of Finetuning LLM Models

Project: Finetuning LLM Models with Lamini Platform

Building Stateful, Multi-Actor Applications Using LangGraph

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