The Complete AI & GenAI Engineer Bootcamp From Zero to Hero
Become a Modern AI Engineer & Build Real-World AI Systems (GenAI + LLMs + Agents)
Unlock the power of Artificial Intelligence and Generative AI by learning how to build real-world, production-ready AI systems used in today’s industry.
The Problem
AI Engineers are in extremely high demand, but most learners struggle to break into this field because:
* AI is taught in disconnected topics (ML, DL, NLP, LLMs separately)
* Many courses focus only on theory or basic tools like ChatGPT
* There is no clear roadmap from beginner to advanced
* Building real-world AI applications feels overwhelming
Even after learning concepts, connecting everything into real systems is where most people get stuck.
The Solution
This course is designed as a complete, structured AI Engineer Bootcamp.
Instead of teaching isolated topics, this course takes you step-by-step through a clear roadmap:
Python → Machine Learning → Deep Learning → NLP → LLMs → RAG → AI Agents → Real Projects
You won’t just learn AI — you will build real AI systems.
What You Will Learn
Foundations of AI & Python
* Python for AI (NumPy, Pandas, Data Visualization)
* Data analysis and EDA (Exploratory Data Analysis)
* Core AI concepts and real-world applications
Machine Learning (Core)
* Regression, classification, clustering
* Model evaluation (accuracy, precision, recall)
* Overfitting vs underfitting
Projects:
* House Price Prediction
* Spam Email Classification
* Customer Segmentation
Deep Learning
* Neural networks and backpropagation
* CNNs for image data
* RNNs and LSTMs for sequences
* Introduction to Transformers
Natural Language Processing (NLP)
* Text preprocessing
* TF-IDF vs embeddings
* Word embeddings and BERT
Project:
* Sentiment Analysis System
Generative AI & LLMs
* Understanding Large Language Models (LLMs)
* Tokens and context windows
* GPT, Claude, LLaMA differences
* Open vs closed models
Transformers & Hugging Face
* Self-attention and transformer architecture
* Encoder vs decoder
* Using Hugging Face models and tokenizers
Prompt Engineering
* Zero-shot and few-shot prompting
* Chain-of-thought reasoning
* Prompt templates
Build Real AI Systems
Retrieval Augmented Generation (RAG)
* Chunking strategies
* Embeddings and similarity search
* Retrieval + generation pipelines
Project:
* PDF Question Answering System
AI Agents (LangChain & LangGraph)
* Tools, memory, and planning
* Single-agent and multi-agent workflows
Project:
* AI Research Agent
Bonus Topics
* Fine-tuning LLMs (LoRA, PEFT)
* Computer Vision basics
* Diffusion Models (Stable Diffusion)
* Build UI apps using Streamlit and Gradio
Hands-On Projects
This is a project-based course where you will build:
* EDA Notebook
* Machine Learning models
* NLP systems
* CNN image classifier
* RAG-based AI assistant
* LLM chatbot
* AI agent system
Who This Course Is For
* Developers who want to become AI Engineers
* DevOps / Cloud engineers moving into AI
* Students looking for a structured roadmap
* Anyone interested in Generative AI and LLMs
* Professionals who want hands-on AI skills
By the End of This Course
You will be able to:
* Build end-to-end AI applications
* Work with LLMs and modern AI tools
* Create AI agents and automation systems
* Design real-world AI solutions
* Apply for roles like AI Engineer, GenAI Engineer, and ML Engineer
What You Get
* Complete AI Engineer Bootcamp
* Hands-on real-world projects
* Lifetime access and future updates
* Certificate of completion
Final Note
AI is not the future — it’s already here.
The real question is:
Will you just use AI tools… or build them?
Start your journey today and become a job-ready AI Engineer.
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