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    Machine Learning and Data Science Using Python

    Requirements

    • No programming experience is needed.

    Description

    Module-1​

    Welcome to the Pre-Program Preparatory Content

    Session-1:​

    1) Introduction​

    2) Preparatory Content Learning Experience

    MODULE-2​

    INTRODUCTION TO PYTHON

    Session-1:​

    Understanding Digital Disruption Course structure​

    1) Introduction​

    2) Understanding Primary Actions​

    3) Understanding es & Important Pointers

    Session-2:​

    Introduction to python​

    1) Getting Started — Installation​

    2) Introduction to Jupyter Notebook​

    The Basics Data Structures in Python

    3) Lists​

    4) Tuples​

    5) Dictionaries​

    6) Sets

    Session-3:​

    Control Structures and Functions​

    1) Introduction​

    2) If-Elif-Else​

    3) Loops​

    4) Comprehensions​

    5) Functions​

    6) Map, Filter, and Reduce​

    7) Summary

    Session-4:​

    Practice Questions​

    1) Practice Questions I​

    2) Practice Questions II

    Module-3​

    Python for Data Science

    Session-1:​

    Introduction to NumPy​

    1) Introduction​

    2) NumPy Basics​

    3) Creating NumPy Arrays​

    4) Structure and Content of Arrays​

    5) Subset, Slice, Index and Iterate through Arrays​

    6) Multidimensional Arrays​

    7) Computation Times in NumPy and Standard Python Lists​

    8) Summary

    Session-2:​

    Operations on NumPy Arrays​

    1) Introduction​

    2) Basic Operations​

    3) Operations on Arrays​

    4) Basic Linear Algebra Operations​

    5) Summary

    Session-3:​

    Introduction to Pandas​

    1) Introduction​

    2) Pandas Basics​

    3) Indexing and Selecting Data​

    4) Merge and Append​

    5) Grouping and Summarizing Data frames​

    6) Lambda function & Pivot tables​

    7) Summary

    Session-4:​

    Getting and Cleaning Data​

    1) Introduction

    2) Reading Delimited and Relational Databases​

    3) Reading Data from Websites​

    4) Getting Data from APIs​

    5) Reading Data from PDF Files​

    6) Cleaning Datasets​

    7) Summary

    Session-5:​

    Practice Questions​

    1) NumPy Practice Questions​

    2) Pandas Practice Questions​

    3) Pandas Practice Questions Solution

    Module-4

    Session-1:​

    Vectors and Vector Spaces​

    1) Introduction to Linear Algebra​

    2) Vectors: The Basics​

    3) Vector Operations – The Dot Product​

    4) Dot Product – Example Application​

    5) Vector Spaces​

    6) Summary

    Session-2:​

    Linear Transformations and Matrices​

    1) Matrices: The Basics​

    2) Matrix Operations – I​

    3) Matrix Operations – II

    4) Linear Transformations​

    5) Determinants​

    6) System of Linear Equations​

    7) Inverse, Rank, Column and Null Space​

    8) Least Squares Approximation​

    9) Summary

    Session-3:​

    Eigenvalues and Eigenvectors​

    1) Eigenvectors: What Are They?​

    2) Calculating Eigenvalues and Eigenvectors​

    3) Eigen decomposition of a Matrix​

    4) Summary

    Session-4:​

    Multivariable Calculus

    Module-5

    Session-1:​

    Introduction to Data Visualisation​

    1) Introduction: Data Visualisation​

    2) Visualisations – Some Examples​

    3) Visualisations – The World of Imagery​

    4) Understanding Basic Chart Types I​

    5) Understanding Basic Chart Types II​

    6) Summary: Data Visualisation

    Session-2:​

    Basics of Visualisation Introduction​

    1) Data Visualisation Toolkit​

    2) Components of a Plot​

    3) Sub-Plots​

    4) Functionalities of Plots​

    5) Summary

    Session-3:​

    Plotting Data Distributions Introduction​

    1) Univariate Distributions​

    2) Univariate Distributions – Rug Plots​

    3) Bivariate Distributions​

    4) Bivariate Distributions – Plotting Pairwise Relationships​

    5) Summary

    Session-4:​

    Plotting Categorical and Time-Series Data​

    1) Introduction​

    2) Plotting Distributions Across Categories​

    3) Plotting Aggregate Values Across Categories​

    4) Time Series Data​

    5) Summary

    Session-5:​

    1) Practice Questions I​

    2) Practice Questions II

    Who this course is for:

    • Beginner Python developers curious about Machine Learning


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