26-Oct-2022 |
1.5 hours |
Artificial Intelligence, Introduction to Machine Learning, Its implications with real-world examples, Concept of self-learning |
|
|
|
1.5 hours |
Types of learning{ Supervised learning (Classification, Regression), Unsupervised learning, Reinforcement learning) |
|
|
31-Oct-2022 |
1.5 hours |
Statistical Analysis of data (Descriptive & Predictive), Data Collection(Numerical data, Categorical data) |
Question answer session |
|
|
1.5 hours |
Data Preprocessing and its techniques (Data cleaning, Data integration, Data Argumentation, Data reduction, Data transformation) |
|
|
7-Nov-2022 |
1.5 hours |
Implementation of data preprocessing using python, Introduction to python libraries |
Assignment |
|
|
1.5 hours |
Feature extraction intuition--PCA |
|
|
14-Nov-2022 |
1.5 hours |
Regression problem Linear Regression (linear equation, slop of the line, relationship between attributes, intercept, ordinary least square, residual error) |
|
|
|
1.5 hours |
Implementation of simple linear regression Evaluate the relation between attributes using plotting. |
|
|
21-Nov-2022 |
1.5 hours |
Multiple linear regression (Dummy variable, multicollinearity, dummy variable trap, building a model using backward elimination) |
Quiz |
|
|
1.5 hours |
Implementation of multiple linear regression using stat library in python. |
|
|
28-Nov-2022 |
1.5 hours |
Polynomial Regression and implementation(Degree of polynomial) |
Qusetion Answer session |
|
|
1.5 hours |
Logistic Regression intuition and real-world example |
|
|
5-Dec-2022 |
1.5 hours |
Supervised Algorithm-Naïve Bayes (Conditional probability, Bayes theorem) Derive theorem mathematically |
|
|
|
1.5 hours |
Decision Tree (Entropy, information gain) Mathematical implementation using dataset on python |
|
|
19-Dec-2022 |
1 Hour |
Mid Term |
|
|
26-Dec-2022 |
1.5 hours |
Support vector machine (linearly separable data, non-linearly separable data) Linear SVM implementation using example |
Assignment |
|
|
1.5 hours |
Kernel function intuition (RBF kernel function, Sigmoid function) Implementation of SVM |
|
|
2-Jan-2023 |
1.5 hours |
K-nearest neighbor intuition and solved example using real-world dataset. |
Ask students to summerize the topic |
|
|
1.5 hours |
Implementation of K-NN |
|
|
9-Jan-2023 |
1.5 hours |
MID EXAMINATIONS |
|
|
|
1.5 hours |
MID EXAMINATIONS |
|
|
16-Jan-2023 |
1.5 hours |
Unsupervised learning, Clustering (k-mean clustering intuition- k mean++, the elbow method implementation using example) |
By giving dataset for implementation |
|
|
1.5 hours |
Implementation of K-mean EM Algorithm/DBSCAN intuition |
|
|
23-Jan-2023 |
1.5 hours |
Ensemble learning (Bagging, Boosting) Bagging( Bootstrap aggregation, row sampling with replacement), Random forest |
|
|
|
1.5 hours |
Bias-Variance trade off, Boosting (Adaboost) |
|
|
30-Jan-2023 |
1.5 hours |
Stacking Optimization algorithm (Gradient Descent, Stochastic Gradient Descent ) |
Quiz |
|
|
1.5 hours |
Evaluation Matrices, Reinforcement learning ( Tuning model complexity) |
|
|
6-Feb-2023 |
1.5 hours |
Natural language processing (Bag of words, stemming, lemmatization) |
|
|
|
1.5 hours |
Implementation of NLP using dataset using python |
|
|
15-Feb-2023 |
1.5 hours |
Neural network (how brain works, perceptron, the neuron) |
|
|
|
1.5 hours |
Activation function (SDG) Back propagation intuition and numerical |
|
|
20-Feb-2023 |
2 Hour |
Final Term |
|
|