HOME > IT & Software > Learn Core Python, Numpy and Pandas

Learn Core Python, Numpy and Pandas

SynopsisLearn Core Python, Numpy and Pandas, available at Free, has a...
Learn Core Python, Numpy and Pandas  No.1

Learn Core Python, Numpy and Pandas, available at Free, has an average rating of 4.45, with 64 lectures, based on 997 reviews, and has 34971 subscribers.

Free Enroll Now

You will learn about Python Numpy Pandas This course is ideal for individuals who are Developers interested in learning Python or Developers interested in learning Numpy or Developers interested in learning Pandas It is particularly useful for Developers interested in learning Python or Developers interested in learning Numpy or Developers interested in learning Pandas.

Enroll now: Learn Core Python, Numpy and Pandas

Summary

Title: Learn Core Python, Numpy and Pandas

Price: Free

Average Rating: 4.45

Number of Lectures: 64

Number of Published Lectures: 64

Number of Curriculum Items: 64

Number of Published Curriculum Objects: 64

Original Price: Free

Quality Status: approved

Status: Live

What You Will Learn

  • Python
  • Numpy
  • Pandas
  • Who Should Attend

  • Developers interested in learning Python
  • Developers interested in learning Numpy
  • Developers interested in learning Pandas
  • Target Audiences

  • Developers interested in learning Python
  • Developers interested in learning Numpy
  • Developers interested in learning Pandas
  • The course covers Core Python, Numpy and Pandas.? Numpy and Pandas are stumbling block for many people who venture in machine learning. This course? will help students to understand machine learning code as Numpy, Pandas are the building blocks for machine learning. Please note this is nota machine learning course. Please note that I?have covered only core concepts of Python and there is fare more to Python than what I have covered.

    Google Python Notebook is used for code.

    Following are the topics in Core Python.

  • Setting up Google Notebook

  • Variables in Python – String, Integer, Boolean

  • Python Blocks

  • If else statement

  • While Loop

  • List operations

  • Range

  • Functions

  • Modules

  • Exceptions

  • File Handling

  • Dictionaries

  • Tuples

  • List Slices

  • List Comprehensions

  • String functions

  • Any,All operations

  • Object Oriented Programming

  • Magic methods

  • Class and Static methods

  • Following are topics in Numpy and Pandas

  • What is Numpy

  • Numpy – Add, Subtract, Multiply

  • Numpy Dot Product

  • Numpy Slicing

  • Mixing Integer Indexing And Slice Indexing

  • Numpy Array Indexing

  • More Array Indexing

  • Boolean Array Indexing

  • Numpy Sum

  • Numpy Reshape

  • Numpy? Tensors 1D, 2D,3D

  • Numpy Transposing

  • Numpy Broadcasting

  • Pandas

  • What is Pandas

  • Pandas Series

  • Pandas Series Index

  • Pandas Advantage Over Numpy

  • Pandas Loc and iLoc

  • Pandas example – Finding Max

  • Pandas Series Addition

  • Pandas Apply Function

  • Pandas DataFrames Introduction

  • Pandas DataFrame Index, Loc and ILoc

  • Pandas Sum Along Axis

  • Pandas DataFrame Addition

  • Pandas DataFrame ApplyMap

  • Pandas Reading A CSV File

  • Course Curriculum

    Chapter 1: Core Python Programming

    Lecture 1: Setting up free jupyter notebook on Google

    Lecture 2: How to use Jupyter notebook

    Lecture 3: Variables in Python

    Lecture 4: Python Integer Data Type

    Lecture 5: Python String Data Type

    Lecture 6: Taking Input

    Lecture 7: Python Boolean Data Type

    Lecture 8: Python Blocks

    Lecture 9: if else statement

    Lecture 10: if elif else

    Lecture 11: Boolean Logic

    Lecture 12: While Loop

    Lecture 13: Python Lists

    Lecture 14: Python List Operations – Append, Index, Max. Min

    Lecture 15: Python Range

    Lecture 16: Python Functions

    Lecture 17: Passing variable arguments to functions

    Lecture 18: Python Modules

    Lecture 19: Python Exceptions

    Lecture 20: Python File Handling

    Lecture 21: None Data Type

    Lecture 22: Python Dictionaries

    Lecture 23: Tuples

    Lecture 24: List Slices

    Lecture 25: List Comprehensions

    Lecture 26: Python String Functions

    Lecture 27: Python List Functons – Any

    Lecture 28: Python List All – Function

    Lecture 29: Object Oriented Programming

    Lecture 30: Object Oriented Programming – Methods and Class Level Attributes

    Lecture 31: Object Oriented Programming – Inheritance

    Lecture 32: Magic Methods

    Lecture 33: Python Object Lifecycle

    Lecture 34: Python Garbage Collection

    Lecture 35: Object Data Hiding- Weak Method, Private Method

    Lecture 36: Object – Class and static methods

    Chapter 2: Numpy

    Lecture 1: What is Numpy

    Lecture 2: Numpy – Add, Subtract, Multiply

    Lecture 3: Numpy Dot Product

    Lecture 4: Numpy Slicing

    Lecture 5: Mixing Integer Indexing And Slice Indexing

    Lecture 6: Numpy Array Indexing

    Lecture 7: More Array Indexing

    Lecture 8: Boolean Array Indexing

    Lecture 9: Numpy Sum

    Lecture 10: Numpy Reshape

    Lecture 11: More Numpy Reshape

    Lecture 12: Numpy Tensors 1D, 2D,3D

    Lecture 13: Numpy Transposing

    Lecture 14: Numpy Broadcasting

    Chapter 3: Pandas

    Lecture 1: Pandas Series

    Lecture 2: Pandas Series Index

    Lecture 3: Pandas Advantage Over Numpy

    Lecture 4: Pandas Loc and iLoc

    Lecture 5: Pandas example – Finding Max

    Lecture 6: Pandas Series Addition

    Lecture 7: Pandas Apply Function

    Lecture 8: Pandas DataFrames Introduction

    Lecture 9: Pandas DataFrame Index, Loc and ILoc

    Lecture 10: Pandas Sum Along Axis

    Lecture 11: Pandas DataFrame Addition

    Lecture 12: Pandas DataFrame ApplyMap

    Lecture 13: Pandas Reading A CSV File

    Chapter 4: Machine Learning Course

    Lecture 1: Bonus Machine Learning Course

    Instructors

  • Learn Core Python, Numpy and Pandas  No.2
    Vishal Kumar Singh
    Demystifying Machine Learning
  • Rating Distribution

  • 1 stars: 19 votes
  • 2 stars: 47 votes
  • 3 stars: 177 votes
  • 4 stars: 367 votes
  • 5 stars: 387 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!