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AI & Machine Learning Course

AI & Machine Learning Course

Learn the foundations of Artificial Intelligence and Machine Learning. Build skills in Python, statistics, supervised & unsupervised learning, deep learning basics and model deployment to solve real‑world problems.

Key topics: Python, Stats, ML Algorithms, Deep Learning Basics, Projects Professional Course · Duration as per institution (often 4–6 months) Beginner‑friendly · Ideal for students & professionals · 4.7 / 5 learner feedback

About This Course

This AI & Machine Learning Course is designed to help you understand how computers learn from data. You start with Python, mathematics and statistics for ML, and gradually move into core algorithms like regression, classification, clustering and basic deep learning.

Through hands‑on labs and projects, you will work with real‑world datasets, train and evaluate models, and present your results clearly. By the end of the course, you’ll be comfortable implementing ML workflows and prepared for entry‑level AI / ML, data science or advanced analytics roles, or for further specialised study.

Syllabus Overview

Module 1 Python, Maths & ML Foundations
  • Introduction to AI & ML – terminology, applications & workflow
  • Python for Data Science – NumPy, pandas, Matplotlib / Seaborn
  • Mathematics for ML – linear algebra & calculus (conceptual focus)
  • Statistics & Probability for ML – distributions, estimation, tests
  • Data Pre‑processing – cleaning, encoding, scaling & train‑test splits
  • Lab: Exploratory Data Analysis (EDA) on a real‑world dataset
Module 2 Supervised & Unsupervised Learning
  • Regression Algorithms – Linear, Polynomial, Regularised models
  • Classification Algorithms – Logistic Regression, k‑NN, SVM, Trees
  • Model Evaluation – accuracy, precision/recall, ROC‑AUC, cross‑validation
  • Ensemble Methods – Random Forests, Gradient Boosting (intro)
  • Unsupervised Learning – k‑Means, Hierarchical Clustering, PCA
  • Lab: Build & compare ML models on structured datasets
Module 3 Deep Learning Basics, Deployment & Projects
  • Neural Network Fundamentals – perceptron, activation functions, loss
  • Deep Learning with Keras / TensorFlow (intro) – building simple models
  • Working with Image / Text Data (conceptual & basic hands‑on)
  • Model Optimisation – tuning, regularisation, avoiding overfitting
  • Intro to Model Deployment – saving, loading and using models in apps
  • Lab: End‑to‑end ML / DL mini‑project with presentation

*Exact modules and tools may vary as per institution and curriculum.

Projects Hands‑on Assignments & Capstones
  • Regular lab‑based assignments in Python, EDA and model building
  • Mini‑projects: prediction, classification & clustering case studies
  • Domain‑based projects (e.g. finance, marketing, healthcare datasets)
  • Final capstone project: complete ML pipeline from problem to deployment (basic)
  • Portfolio preparation – GitHub / online profile with your ML projects

Top Sectors Using AI & Machine Learning

AI & ML skills are used across tech, finance, healthcare, e‑commerce, manufacturing and more.

Google
Microsoft
Amazon
IBM
TCS
Accenture

What You Will Gain from This AI & ML Course

Develop the ability to think in models, work with data and build predictive systems.

MT

Mathematical Thinking

Understand the intuition behind ML algorithms and why they work.

PR

Practical Python Skills

Write efficient code to load data, engineer features and train models.

ML

Core ML Algorithms

Apply regression, classification and clustering to structured data.

DL

Deep Learning Basics

Build and train simple neural networks for images or text (intro level).

PJ

Project Experience

Complete end‑to‑end ML projects you can showcase to employers.

CR

Career Readiness

Build a portfolio and skillset aligned with AI / ML and data roles.

Model Performance Snapshot
Accuracy Precision Recall F1‑Score

Tools & Libraries You May Work With

Become comfortable with the core Python ecosystem for AI & Machine Learning.

Python
NumPy
pandas
scikit‑learn
TensorFlow / Keras
PyTorch (where offered)
Jupyter Notebook
Git & GitHub

Careers & Learning Journey

See how this AI & ML Course builds your skills and prepares you for AI‑driven careers.

F

From Fundamentals to Practice

Move from maths, Python and basic models to end‑to‑end ML projects and introductory deep learning.

R

Career Roles You Can Target

Use your projects and portfolio to target AI / ML‑related entry‑level roles.

ML Engineer (Junior) Data Scientist (Entry‑level) ML / Data Analyst AI Engineer (with further specialisation) Applied Scientist / Research Intern Product / Business Analyst (AI‑driven)
J

Your Learning Journey

A clear, module‑wise roadmap from basics to ML projects and deployment concepts.

Module 1: Python, maths & stats, EDA & ML foundations.
Module 2: Core ML algorithms, evaluation, unsupervised learning.
Module 3: Deep learning basics, optimisation, deployment & capstone.