Skip to content
Home
About
Our Core Team
Tutors
Courses
Stem Robotics
Gallery
Contact Us
Home
About
Our Core Team
Tutors
Courses
Stem Robotics
Gallery
Contact Us
Login
Home
About
Our Core Team
Tutors
Courses
Stem Robotics
Gallery
Contact Us
Home
About
Our Core Team
Tutors
Courses
Stem Robotics
Gallery
Contact Us
Home
All Courses
Technology
Artificial Intelligence & Machine Learning
Artificial Intelligence & Machine Learning
Curriculum
16 Sections
51 Lessons
18 Weeks
Expand all sections
Collapse all sections
Week 1: Introduction to AI & ML
4
1.1
What is AI, ML, and Deep Learning?
5 Minutes
1.2
Supervised, Unsupervised, and Reinforcement Learning
1.3
Applications of AI in various industries
1.4
Setting up the environment: Python, Jupyter Notebook, Anaconda
Week 2: Python for AI & ML
3
2.1
Python Basics (Lists, Tuples, Dictionaries, Loops, Functions)
2.2
Numpy & Pandas for data manipulation
2.3
Matplotlib & Seaborn for data visualization
Week 3: Statistics & Probability for ML
4
3.1
Descriptive Statistics (Mean, Median, Mode, Variance)
3.2
Probability Distributions (Normal, Binomial, Poisson)
3.3
Hypothesis Testing & p-values
3.4
Correlation & Covariance
Week 4: Data Preprocessing & Feature Engineering
5
4.1
Handling missing values
4.2
Data scaling & normalization
4.3
Encoding categorical variables
4.4
Feature selection & dimensionality reduction (PCA, LDA)
4.5
Project: Data Cleaning & Visualization on Real-World Dataset
Week 5: Supervised Learning – Regression
3
5.1
Linear Regression, Polynomial Regression
5.2
Ridge & Lasso Regression
5.3
Evaluation Metrics (RMSE, R², MAE)
Week 6: Supervised Learning – Classification
4
6.1
Logistic Regression, Decision Trees, Random Forest
6.2
Support Vector Machines (SVM), K-Nearest Neighbors (KNN)
6.3
Performance Metrics (Accuracy, Precision, Recall, F1-score, ROC)
6.4
📌 Project: Predicting House Prices (Regression) / Spam Email Classification
Week 7: Unsupervised Learning
3
7.1
K-Means & Hierarchical Clustering
7.2
Principal Component Analysis (PCA)
7.3
Anomaly Detection
Week 8: Feature Selection & Model Optimization
4
8.1
Hyperparameter tuning (GridSearchCV, RandomizedSearchCV)
8.2
Cross-validation techniques
8.3
Ensemble learning (Bagging, Boosting, Stacking)
8.4
Project: Customer Segmentation (K-Means Clustering)
Week 9: Neural Networks Fundamentals
3
9.1
Perceptron & Multi-layer Perceptron (MLP)
9.2
Activation functions (ReLU, Sigmoid, Softmax)
9.3
Backpropagation & Gradient Descent
Week 10: Deep Learning with TensorFlow & Keras
3
10.1
Building Neural Networks with Keras
10.2
Optimizers (Adam, RMSprop, SGD)
10.3
Dropout & Batch Normalization
Week 11: Convolutional Neural Networks (CNN)
3
11.1
Image Processing & Convolution
11.2
Pooling, Padding, Transfer Learning (ResNet, VGG)
11.3
Object Detection & Image Classification
Week 12: Recurrent Neural Networks (RNN) & NLP
4
12.1
Understanding Time Series & Sequential Data
12.2
LSTMs & GRUs for Text Processing
12.3
Sentiment Analysis, Text Generation
12.4
Project: Sentiment Analysis on Tweets
Week 13: Reinforcement Learning
2
13.1
Markov Decision Process (MDP)
13.2
Q-learning & Deep Q-Networks (DQN)
Week 14: AI in Real-World Applications
2
14.1
AI in Healthcare, Finance, and Robotics
14.2
Generative AI (GANs & Transformers)
Week 15: Model Deployment & MLOps
2
15.1
Deploying models with Flask & FastAPI
15.2
CI/CD pipelines in ML (MLflow, Docker, Kubernetes)
Week 16: Capstone Project & Resume Preparation
2
16.1
Full end-to-end AI project
16.2
Resume & Interview Preparation for AI/ML Jobs
This content is protected, please
login
and
enroll
in the course to view this content!
Modal title
Main Content