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Module 1- Python for Data Science
Introduction
Module Introduction
Intuition
Constructs
Set-up
Data Science Tools
Introduction to Jupyter notebooks
Basics of Python
Variables
Operations
Python Operations Jupyter Notebook
Quiz - Basics
Conditional Programming-1
Conditional Programming-2
Conditional Programming-3
Functions in Python-1
Functions in Python-2
Conditional Programming and Functions in Python Jupyter Notebook
Data Structures
Data Structures-1
Quiz - Lists
Data Structures-2
Data Structures-3
Quiz - Sets
Data Structures-4
Quiz - Dictionaries
Python data structures Jupyter notebook
Loops-1
Loops-2
Loops-3
Python Loops Jupyter Notebook
Libraries in Python
Numpy-1
Numpy-2
Numpy Jupyter Notebook
Matplotlib
Matplotlib Jupyter Notebook
Quiz - Numpy, Matplotlib
Quiz - End of Chapter Quiz
Coding Assignment - Python Basics
Module 2 - Pandas
Pandas 1 - Basics
Pandas 2 - Row, Column Operations
Pandas 3 - Accessing data
Pandas 4 - Slicing and Sorting
Pandas 5 - Grouping and Aggregation
Pandas 6 - Pivot Tables
Pandas 7 - Joins
Pandas 8 - Concat
Pandas 9 - Merge
Pandas -10
Pandas Quiz
Pandas Jupyter notebooks
Coding Assignment - Python Basics 2
Introduction to Statistics
Introduction to Statistics
Types of variables
Measures of Central Tendency and Spread
Quiz 1 - Basics
Measuring Position
Histograms
Quiz 2 - Position
Types of Distributions
Normal Distribution
Quiz 3 - Distributions
Central Limit Theorem
Quiz 4 - Central Limit Theorem
Confidence Intervals
T- Distribution
Quiz 5 - Confidence Intervals and T distribution
Hypothesis Testing - 1
Hypothesis Testing - 2
Examples on Hypothesis Testing
Quiz 6 - Hypothesis testing
Tutorial - Hypothesis testing
Tutorial - Sampling
Tutorial - Descriptive Primer
Final Quiz
Statistics Assignment
Module 4 - Introduction to Machine Learning
Introduction
Learning process
Somethink to think about!
Quiz 1 ML Basics
EDA_FE
Quiz 2- Basics
Feature Selection
How a model learns
Measuring Performance
Model Performance
Bias-Variance
Quiz 3 - How a model works?
Visualisation
Quiz 4 EDA
Feature Engg Demo
Feature Scaling
Quiz 5 Feature Engineering
Module 3 Assignment - EDA
Module 3 Assignment EDA and Feature Engineering
Module 5 - Supervised Learning -1
Module Intro
Introduction to Linear Regression
Model training - Linear Regression
Model evaluation - Linear Regression
Regularisation - linear regression
Assumptions of Linear Regression
Locally weighted Linear regression
Demonstration - Linear Regression
Linear Regression Quiz -1
Linear Regression Quiz - 2
Introduction to Logistic Regression
Model Training - Logistic Regression
Model evaluation - Logistic Regression
Demonstration - Logistic Regression
Multiclass Classification
Logistic Regression Quiz 1
Logistic Regression Quiz 2
Module 6 - Supervised Learning 2
Introduction to Decision Trees
Classification Trees
Bagging
Boosting
Module 7 - Unsupervised Learning
K-Means Clustering
Demo-K-Means
Hierarchical Clustering
Association Rule Mining
Demo-Association Rule Mining
Recommendation Systems
Preview - Job Assistance Program
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