Skip to content

A Jupyter notebook summarizing essential tools and languages used in data science, featuring popular programming languages, libraries, and examples of basic arithmetic in Python

Notifications You must be signed in to change notification settings

maddawg9838/Data_Science_Toolkit

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

9 Commits
 
 
 
 

Repository files navigation

Data Science Tools and Ecosystem

Overview

This Jupyter notebook summarizes the tools and ecosystem used in data science. It provides insights into popular programming languages, libraries, and tools that data scientists commonly utilize.

Objectives

  • List popular languages for Data Science
  • List common libraries for Data Science
  • List tools for Data Science
  • Provide examples of arithmetic expressions in Python

Content Overview

  • Popular Languages for Data Science
    • Python: Versatile and widely used for data manipulation and visualization.
    • SQL: Essential for querying and managing relational databases.
    • R: Designed for statistical analysis and visualization.
  • Common Libraries for Data Science
    • Pandas: Data manipulation and analysis.
    • NumPy: Numerical computations and array handling.
    • Seaborn: Statistical data visualization.
    • Matplotlib: Comprehensive plotting library
  • Data Science Tools
    • Apache Spark: Big data processing framework.
    • TensorFlow: Open-source machine learning library for deep learning.
    • Spyder: IDE tailored for scientific programming in Python
  • Arithmetic Expressions in Python
    • Simple arithmetic operations showcasing Python's capabilities.

Getting Started

To run this notebook, you need:

  • Jupyter Notebook installed (you can install it via Anaconda or pip)
  • Basic understanding of Python

Installation Instructions

  1. Clone this repository:
git clone https://github.com/yourusername/DataScienceEcosystem-Jupyter-Notebook.git
  1. Navigate to the directory:
cd DataScienceEcosystem-Jupyter-Notebook
  1. Start Jupyter Notebook
jupyter notebook
  1. Explore Open the DataScienceEcosystem-Jupyter-Notebook.ipynb file in Jupyter Notebook and run the cells to explore the content

Author

Madison Humphries

About

A Jupyter notebook summarizing essential tools and languages used in data science, featuring popular programming languages, libraries, and examples of basic arithmetic in Python

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published