Welcome to your all-in-one roadmap to become a professional AI Engineer. This beginner-friendly course takes you step by step through the core skills, tools, and projects needed to enter the world of Artificial Intelligence — with no prior experience required.
📌 Course Highlights
- Level: Beginner to Advanced
- Format: Blog series → PDF guide → Video tutorials
- Duration: Self-paced
- Access: 100% Free
- Final Outcome: Become job-ready with portfolio projects and deployable AI apps
🎯 What You’ll Achieve
By the end of this course, you will:
✅ Understand how AI works from the ground up
✅ Build machine learning and deep learning models
✅ Use real-world datasets to solve business problems
✅ Work with powerful tools like TensorFlow, Hugging Face & Streamlit
✅ Deploy your AI projects like a pro
✅ Showcase your work in a GitHub portfolio
🧠 Skills You Will Learn
- Python programming for data and AI
- Math for machine learning: Linear Algebra, Statistics, Probability
- Supervised & unsupervised ML algorithms
- Deep learning (MLPs, CNNs) with TensorFlow/Keras
- Natural Language Processing (NLP) with scikit-learn & Hugging Face
- Working with LLMs (GPT, BERT, etc.)
- Model deployment using Streamlit and FastAPI
- Portfolio building and career preparation
🗂 Course Structure
The course is divided into 5 main modules. Each topic will be released as an individual blog post, along with code, explanation, and assignments.
🟢 Module 1: Foundation of AI
- What is an AI Engineer? Career Path, Skills & Tools
- Python Basics for AI (with NumPy, Pandas, Features, Labels & Models Explained)
- ✅ Math Essentials: Linear Algebra, Probability, Statistics
- ✅ Setting up Tools: Jupyter, Colab, GitHub, VSCode
🔵 Module 2: Machine Learning
- ✅ Introduction to Machine Learning & Types
- ✅ Your First ML Project: House Price Prediction
- ✅ Classification Models: Logistic Regression, Decision Trees
- ✅ Evaluation Metrics: Accuracy, Precision, Recall, F1
🔴 Module 3: Deep Learning
- ✅ Neural Networks (Perceptron, Activation, Backprop)
- ✅ Build a Neural Net with TensorFlow/Keras
- ✅ Computer Vision with CNNs (MNIST, CIFAR-10)
- ✅ Overfitting, Dropout, Regularization & Model Tuning
🟣 Module 4: NLP & Large Language Models
- ✅ Basics of NLP: Text Preprocessing & Tokenization
- ✅ Sentiment Analysis Project with scikit-learn
- ✅ Introduction to Transformers & GPT-style Models
- ✅ Hands-on with Hugging Face & LLM-based Text Generation
⚫ Module 5: Deployment & Career
- ✅ Deploy AI Models with Streamlit and FastAPI
- ✅ Top 3 Projects: Resume Scanner, Chatbot, Vision Classifier
- ✅ Build Your GitHub Portfolio
- ✅ Resume Building, Freelancing & Interview Prep
📦 What You’ll Get
- ✅ 20+ Full-length blog posts
- ✅ GitHub codebase for every module
- ✅ PDF downloads (Coming Soon)
- ✅ YouTube video tutorials (Coming Soon)
- ✅ Free lifetime access
🧑💼 Who This Course is For
- Beginners exploring AI or data science
- Software engineers transitioning into ML/AI
- Entrepreneurs building AI-powered products
- Students or job seekers preparing for AI roles
🔗 Stay Connected
📌 Bookmark this page to follow each new module
📺 Subscribe to @ImPranjalK for video tutorials
📣 Tag your projects using #AIwithPranjal
on LinkedIn or GitHub
💡 Final Note
This course is crafted with simplicity, clarity, and hands-on practicality. No unnecessary theory. No fluff. Just the skills and experience you need to become a confident AI Engineer — one module at a time.
🧠 Let’s build your AI career together!