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Introduction to Python for Data Analysis❓
- Basics of Python programming language.
- Overview of key data structures: lists,
dictionaries, tuples, and sets.
How to Learn a Python Programming Language
for Data Analysis or Data Science??
1. Understanding the Basic👍
Introduction📍 What is Python and why Python......?
Know why you're learning Python and what you can do with it.
Setup & Installation📍
Install Python and a suitable IDE (e.g., Jupiter Notepad, VS Code).
Basics📍
Variables, data types, input-output, and basic operations.
Control Structures📍
Loops (`for`, `while`) and conditionals (`if`, `elif`, `else`).
2. Diving Deeper👍
Functions📍
Define functions, arguments, return values, and lambda functions.
Data Structures📍
Lists, tuples, sets, dictionaries, and their operations.
File Handling📍
Read, write, and manipulate files.
Modules and Packages📍
Understand the importance of modules, learn how to import them, and create your own.
3. Object-Oriented Programming (OOP)👍
Classes & Objects📍
Understand how classes and objects work, and how to create them and print properties or method value.
Inheritance📍
Learn about parent and child classes to how class inheritance
Polymorphism & Encapsulation📍
Learn about the concepts and understand their Applications and how to method overloading and overriding works.
4. Intermediate Concepts👍
Errors & Exception Handling📍
`try`, `except`, `finally`, and creating custom exceptions.
Iterators & Generators📍
Understand the difference between them and their applications.
List Comprehensions📍
Create more concise and readable lists.
5. Libraries and Frameworks👍
Data Analysis**: Pandas, Numpy, Matplotlib, seaborn, scipy & plotly
#problemsolvingskills #DataAnalaytics #SoftwareDeveloper #Interviewtips #Problemsolvingskills #productbasedcompanies #MNC #Interviewtips
- Basics of Python programming language.
- Overview of key data structures: lists,
dictionaries, tuples, and sets.
How to Learn a Python Programming Language
for Data Analysis or Data Science??
1. Understanding the Basic👍
Introduction📍 What is Python and why Python......?
Know why you're learning Python and what you can do with it.
Setup & Installation📍
Install Python and a suitable IDE (e.g., Jupiter Notepad, VS Code).
Basics📍
Variables, data types, input-output, and basic operations.
Control Structures📍
Loops (`for`, `while`) and conditionals (`if`, `elif`, `else`).
2. Diving Deeper👍
Functions📍
Define functions, arguments, return values, and lambda functions.
Data Structures📍
Lists, tuples, sets, dictionaries, and their operations.
File Handling📍
Read, write, and manipulate files.
Modules and Packages📍
Understand the importance of modules, learn how to import them, and create your own.
3. Object-Oriented Programming (OOP)👍
Classes & Objects📍
Understand how classes and objects work, and how to create them and print properties or method value.
Inheritance📍
Learn about parent and child classes to how class inheritance
Polymorphism & Encapsulation📍
Learn about the concepts and understand their Applications and how to method overloading and overriding works.
4. Intermediate Concepts👍
Errors & Exception Handling📍
`try`, `except`, `finally`, and creating custom exceptions.
Iterators & Generators📍
Understand the difference between them and their applications.
List Comprehensions📍
Create more concise and readable lists.
5. Libraries and Frameworks👍
Data Analysis**: Pandas, Numpy, Matplotlib, seaborn, scipy & plotly
#problemsolvingskills #DataAnalaytics #SoftwareDeveloper #Interviewtips #Problemsolvingskills #productbasedcompanies #MNC #Interviewtips