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Python Libraries for Data Analysis and Data Science Roadmap python

I am sharing lessons in various Python Libraries from scratch to intermediate including practice sets which were useful into my journey of Data Science.

For more detials, refer: Data Analyst Roadmap βŒ› & Python Roadmap πŸ“‘

Overview of Python Libraries

Python libraries are pre-written programs that allow developers to program more efficiently. They are easy to use and can be found in many different frameworks. These libraries provide an API (application programming interface) which makes it easy for developers to use them with their own software programs.

Python libraries are a great way to data analysis and machine learning. They provide powerful functionality and flexibility for any task, regardless of the type of data. Python libraries make it easy for developers and data scientists to prototype and scale their models, regardless of their size or complexity.

The Python programming language comes with a built-in library called the β€œStandard Library” which has all the necessary modules for tasks like input/output, data manipulation, text processing, packaging, and more.

Making use of the Python Standard Library is not enough for many developers because it cannot accommodate all their needs. That is why there are also Python Libraries that can be imported in order to make them more efficient when accomplishing specific tasks.

Technologies used βš™οΈ

Python Libraries :

Certifications πŸ“œ πŸŽ“ βœ”οΈ

Featured projects:question: πŸ‘¨β€πŸ’» πŸ›°οΈ

Data Analyst Roadmap βŒ›

Spotify Data Analysis using Python πŸ“Š

Sales Insights - Data Analysis using Tableau & SQL πŸ“Š

Statistics for Data Science using Python πŸ“Š

Kaggle - Pandas Solved Exercises πŸ“Š

Complete Python Roadmap πŸ“‘

Python Libraries for Data Analysis and Data Science python

Python has become a staple in data science, allowing data analysts and other professionals to use the language to conduct complex statistical calculations, create data visualizations, build machine learning algorithms, manipulate and analyze data, and complete other data-related tasks more quickly and efficiently.

There are many different libraries in Python, which provide useful data analysis tools for scientists and engineers.These libraries can be used to analyze, graph and visualize data. They can also be used to create complex mathematical equations and 3D animations.

Prerequisite: Complete Python Roadmap πŸ“‘

Python has a number of libraries, like :

Sr.No. πŸ”’ Pandas Lessons πŸ“• Reference Links πŸ”— Exercises πŸ‘¨β€πŸ’»
1 Basics, Data Structures - Series, DataFrame, Panel Pandas Course - by Kaggle Exercise 1
2 Summary Functions and Maps, Operations - Slicing, Merging Kaggle Notebooks on Pandas Exercise 2
3 Operations - Joining, Concatenation GitHub Repo on Pandas Exercise 3
4 Changing Index & Column Header, Data Munging JavaTpoint Exercise 4
5 Grouping & Sorting, Data Types & Missing Values YouTube Exercise 5
6 Renaming and Combining TutorialsPoint Exercise 6
7 Pandas-Matplotlib βœ…
Sr.No. πŸ”’ NumPy Lessons πŸ“• Reference Links πŸ”— Exercises πŸ‘¨β€πŸ’»
1 Basics, NumPy v/s MATLAB, NumPy v/s List, NdArray, Datatypes, Array Attributes NumPy Tutorial - by Great Learning Exercise 1
2 NdArray, Datatypes, Array Attributes JavaTpoint Exercise 2
3 Indexing & Slicing, Array Creation YouTube, TutorialsPoint Exercise 3
4 Broadcasting, Operations, Functions TutorialsPoint Exercise 4
5 Mathematics, Matrix, NumPy-Matplotlib βœ… Exercise 5 & Exercise 6
Sr.No. πŸ”’ Matplotlib Lessons πŸ“• Reference Links πŸ”— Exercises πŸ‘¨β€πŸ’»
1 Basics, Data Visualization, Architecture, Concepts Matplotlib Course - by Great Learning Exercise 1
2 Pyplot & Subplot JavaTpoint Exercise 2
3 7 Types of plots YouTube Exercise 3 & Exercise 4
4 Multiple plots TutorialsPoint βœ… Exercise 5 & Exercise 6
Sr.No. πŸ”’ Seaborn Lessons πŸ“• Reference Links πŸ”—
1 Style functions YouTube
2 Color palettes TutorialsPoint
2 Distribution plots JavaTpoint
2 Categorical plots
2 Regression plots
3 Axis grid objects βœ…

Projects in Python

Sr.No. πŸ”’ Projects πŸ‘¨β€πŸ’» Reference Links πŸ”—
Python Project 1 Spotify Data Analysis using Python GitHub Project & Kaggle Notebook
Python Project 2 Boston Housing Data Analysis using Python Project

Useful sites to learn Coding in Python πŸ”—

YouTube Channels:

freeCodeCamp.org Code With Harry, Programming With Harry CodeBasics Edureka Gate Smashers Jenny's Lectures Simplilearn Intellipaat

Other Learning Platforms:

JavaTpoint TutorialsPoint Geeks For Geeks Code With Harry GitHub Kaggle DataCamp W3Schools Guru99 Dev

For Certifications:

Coursera Kaggle Simplilearn Great Learnings Forage Edureka HackerRank Udemy Codechef Upgrad Udacity

For Coding Practice:

HackerRank Leetcode Kaggle Codechef Unstop HackerEarth Codeforces Interviewbit Google Dev

Liked my Contributions:question:Follow MeπŸ‘‰ Nominate Me for GitHub Stars ⭐ ✨

For any queries/doubts πŸ”— πŸ‘‡

MrAnkitGupta_

MrAnkitGupta MrAnkitGupta_ AnkitGupta MrAnkitGupta