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Complete guide to begin with Python for Data Science

  • Development
  • Apr 21, 2025
SynopsisComplete guide to begin with Python for Data Science, availab...
Complete guide to begin with Python for Data Science  No.1

Complete guide to begin with Python for Data Science, available at $59.99, has an average rating of 4.75, with 62 lectures, based on 4 reviews, and has 17 subscribers.

You will learn about Learn how to use Jupyter Notebook efficiently for Programming Learn fundamentals of Python Programming Language and how to approach Python Assignments and solve them Learn various data structures of Python – List, set, tuple, dictionaries Learn how developers use Exception Handling for handling errors. Learn how to use if else statements, loops with certain illustrations Learn how to use functions and recursion to build a python project Learn advanced functions – map and lambda which will be used in data science frequently Get ready to appear for any interview, assignment, projects related to data science, development Learn Variables and data types in detail. Learn how to format strings and print statements This course is ideal for individuals who are Beginner Python developers or Data science aspirants or web development aspirants or Python for interview preparation or Data Analytics aspirants It is particularly useful for Beginner Python developers or Data science aspirants or web development aspirants or Python for interview preparation or Data Analytics aspirants.

Enroll now: Complete guide to begin with Python for Data Science

Summary

Title: Complete guide to begin with Python for Data Science

Price: $59.99

Average Rating: 4.75

Number of Lectures: 62

Number of Published Lectures: 62

Number of Curriculum Items: 85

Number of Published Curriculum Objects: 85

Original Price: $49.99

Quality Status: approved

Status: Live

What You Will Learn

  • Learn how to use Jupyter Notebook efficiently for Programming
  • Learn fundamentals of Python Programming Language and how to approach Python Assignments and solve them
  • Learn various data structures of Python – List, set, tuple, dictionaries
  • Learn how developers use Exception Handling for handling errors.
  • Learn how to use if else statements, loops with certain illustrations
  • Learn how to use functions and recursion to build a python project
  • Learn advanced functions – map and lambda which will be used in data science frequently
  • Get ready to appear for any interview, assignment, projects related to data science, development
  • Learn Variables and data types in detail.
  • Learn how to format strings and print statements
  • Who Should Attend

  • Beginner Python developers
  • Data science aspirants
  • web development aspirants
  • Python for interview preparation
  • Data Analytics aspirants
  • Target Audiences

  • Beginner Python developers
  • Data science aspirants
  • web development aspirants
  • Python for interview preparation
  • Data Analytics aspirants
  • A complete guide to begin your python learning for data science, data analysis and machine learning.

    For those, who has never written a single code in entire life and want to move into data science or advanced python, this course provides you a simple approach to learn coding from scratch using python as a tool and master it with illustrations and assignments.

    For those, who are already experienced in coding, but want to move into advanced python, this course provides you ample hands-on exercises and assignments for deeply understanding the concept.

    In this course, you will be learning from the very basics – which includes basic numbers, arithmetic operations, lists, sets, tuples, dictionaries, loops, if else statements, nested dictionaries, functions, recursive functions etc.

    We will be using Jupyter notebook in order to execute all the codes. Jupyter notebook is a tool that is being used by all the multinational organisation, who hire people for analytics and machine learning jobs.

    Key features:

    # Learn Python from scratch – from installation to writing your first code to understand the basics and finally to reach advance level.

    # No prior coding experience required.

    # Command yourself in Jupyter Notebook.

    # Prepare yourself for Data Analytics, Machine Learning, Python Development.

    Have a great learning ahead.

    Course Curriculum

    Chapter 1: Introduction to Python and Course Overview

    Lecture 1: Course Overview

    Lecture 2: Introduction to Python

    Chapter 2: Setup Installation and Jupyter Interface

    Lecture 1: Python Installation

    Lecture 2: Anaconda Installation

    Lecture 3: Jupyter Interface

    Chapter 3: Get Started with Simple Operations in Python

    Lecture 1: Getting Started and Commenting

    Lecture 2: Arithmetic Operations

    Lecture 3: Arithmetic Operations Assignment

    Chapter 4: Variables and Type of Data

    Lecture 1: Variables

    Lecture 2: Variables Assignment

    Lecture 3: Data Types

    Lecture 4: User Input and Formatting print statements

    Lecture 5: User Input Assignment

    Chapter 5: Assignment, Relational Operators and Boolean Values

    Lecture 1: Assignment Operators

    Lecture 2: Relational Operators

    Lecture 3: Boolean values

    Chapter 6: Indentation and Control flow statements – if else

    Lecture 1: Indentation

    Lecture 2: If else statements

    Lecture 3: If else Assignment

    Chapter 7: Lists

    Lecture 1: List

    Lecture 2: List Assignment

    Lecture 3: List Methods

    Lecture 4: List Methods Assignment

    Chapter 8: Strings

    Lecture 1: String

    Lecture 2: String Assignment

    Lecture 3: String Methods

    Lecture 4: String Methods Assignment

    Chapter 9: Loops

    Lecture 1: For Loop

    Lecture 2: For Loop Assignment

    Lecture 3: While loop

    Lecture 4: While loop Assignment

    Lecture 5: Break and Continue

    Lecture 6: Break and Continue Assignment

    Chapter 10: Functions

    Lecture 1: Functions

    Lecture 2: Functions Assignment

    Lecture 3: Recursive Functions

    Lecture 4: Recursive Functions Assignment

    Chapter 11: Data Structures – Set, Tuple

    Lecture 1: Set

    Lecture 2: Set Assignment

    Lecture 3: Tuple

    Lecture 4: Tuple Assignment

    Lecture 5: Tuple Methods

    Lecture 6: Tuple Methods Assignment

    Chapter 12: Data Structures – Dictionary

    Lecture 1: Dictionary

    Lecture 2: Nested Dictionary

    Lecture 3: Dictionary Assignment

    Chapter 13: Advanced Functions

    Lecture 1: Lambda Function

    Lecture 2: Lambda Function Assignment

    Lecture 3: Map Function

    Lecture 4: Map Function Assignment

    Chapter 14: Exception Handling and concatenation

    Lecture 1: Exception Handling

    Lecture 2: Concatenation

    Chapter 15: Final Assignments

    Lecture 1: Dictionary of words assignment

    Lecture 2: Remove Duplicates assignment

    Lecture 3: Greatest Common Divisor Assignment

    Lecture 4: Least Common Multiple Assignment

    Chapter 16: Bonus Lectures on Numpy

    Lecture 1: Accessing Numpy Library and Creating our first Numpy array using list

    Lecture 2: Elements in Numpy Arrays are of same data type

    Lecture 3: Creating n-dim array and determining its shape, size and dimension – part 1

    Lecture 4: Creating n-dim array and determining its shape, size and dimension – part 2

    Lecture 5: Creating n-dim array and determining its shape, size and dimension – part 3

    Instructors

  • Complete guide to begin with Python for Data Science  No.2
    Play With Data
    Data enthusiast
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  • 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!