What You Need to Know Before
You Start

Starts 5 June 2025 10:25

Ends 5 June 2025

00 days
00 hours
00 minutes
00 seconds
course image

AI & ML Made Easy: From Basic to Advanced (2025)

Learn AI, Machine Learning & Deep Learning from Scratch with Real Projects, NLP, and Industry-Focused Applications
via Udemy

4052 Courses


7 hours 10 minutes

Optional upgrade avallable

Not Specified

Progress at your own speed

Paid Course

Optional upgrade avallable

Overview

AI & ML Made Easy:

From Basic to Advanced (2025) is a beginner-friendly yet comprehensive course designed to take you from the fundamentals of Artificial Intelligence (AI) and Machine Learning (ML) to advanced concepts like Deep Learning, Natural Language Processing (NLP), and real-world applications.

Syllabus

  • Introduction to AI & ML
  • Overview of AI and ML
    History and evolution of AI
    Key concepts and terminology
  • Programming Foundations for AI & ML
  • Introduction to Python
    Essential libraries (NumPy, Pandas)
    Data types and structures
  • Data Handling and Preprocessing
  • Data collection and cleaning
    Feature selection and engineering
    Handling missing values
  • Supervised Learning
  • Linear and logistic regression
    Decision trees and ensemble methods
    Model evaluation and metrics
  • Unsupervised Learning
  • Clustering techniques (K-means, hierarchical clustering)
    Dimensionality reduction (PCA, t-SNE)
    Applications of unsupervised learning
  • Neural Networks and Deep Learning
  • Basics of neural networks
    Deep Learning architectures (CNN, RNN)
    Introduction to training and optimization
  • Natural Language Processing (NLP)
  • Text preprocessing techniques
    Sentiment analysis and text classification
    Advanced NLP models (transformers)
  • AI & ML Tools and Libraries
  • TensorFlow and PyTorch
    Scikit-learn overview
    AI platforms and cloud services
  • Ethical and Responsible AI
  • AI bias and fairness
    Privacy and security concerns
    AI governance and ethics
  • Real-world Applications and Case Studies
  • AI in healthcare
    AI in finance
    AI in autonomous systems
  • Advanced Topics and Trends
  • Deep Reinforcement Learning
    Explainable AI
    Future directions in AI research
  • Hands-on Projects and Assignments
  • Implement a supervised learning project
    Build an NLP model for sentiment analysis
    Develop a deep learning application
  • Review and Final Assessment
  • Course recap and key takeaways
    Final project presentation
    Feedback and course reflections

Taught by

Programming Hub: 40 million+ global students and Laxminarayan Narayan G


Subjects

Computer Science