Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

Treehouse

(UPI) Chapter 17: Key Concepts in Data Analysis: Indexing, Slicing, Missing Data, and Visualization Course (How To)

via Treehouse

Overview

Coursera Flash Sale
40% Off Coursera Plus for 3 Months!
Grab it

About this Course

This course is part of our College Credit Program, designed to help you earn college credit while mastering valuable skills. If you're interested in pursuing college credit, click here to learn more.

Data Science provides the ability to derive insights and make informed decisions from data. It plays a crucial role in various disciplines, including:

  • Healthcare
  • Business
  • Education
  • Politics
  • Environmental Science
  • Social Sciences

This chapter aims to provide an introduction to the field of data science and the data science life cycle. The resources provided in this chapter are meant to guide readers using Python to further explore data science.

Syllabus

Introduction to Data Science Life Cycle and Tools

Data science is a multidisciplinary field that combines collecting, processing, and analyzing large volumes of data to extract insights and drive informed decision-making.

Chevron 2 steps
  • instruction

    Introduction to Data Science

  • Introduction to Data Science Life Cycle and Tools Quiz

    5 questions

Introduction to NumPy Library and Its Operations

NumPy is a Python library designed for efficient numerical operations on large, multi-dimensional arrays. It enables high-performance data analysis and manipulation with tools for creating arrays, performing mathematical operations, and conducting linear algebra tasks.

Chevron 2 steps
  • instruction

    Numpy Library

  • Introduction to NumPy Library and Its Operations Quiz

    5 questions

Introduction to the Pandas Library for Data Analysis

Pandas is a Python library designed for efficient data manipulation and analysis. It provides key data structures like Series and DataFrame, allowing for streamlined data processing, exploration, and cleaning, and integrates well with other data analysis libraries.

Chevron 2 steps
  • instruction

    Pandas

  • Introduction to the Pandas Library for Data Analysis Quiz

    5 questions

Exploratory Data Analysis (EDA)

Learn the fundamentals of Exploratory Data Analysis (EDA) with Pandas, including techniques for data indexing, slicing, filtering, and handling missing values to uncover insights from your datasets.

Chevron 2 steps
  • instruction

    Exploratory Data Analysis (EDA)

  • Exploratory Data Analysis (EDA): Techniques for Data Understanding, Indexing, Slicing, and Handling Missing Data Quiz

    5 questions

Essential Concepts and Tools for Data Visualization in Data Science

Data visualization plays a pivotal role in data science, enabling us to understand and interpret data more effectively. It aids in exploring data, identifying anomalies, understanding relationships and trends, and communicating findings clearly.

Chevron 3 steps
  • instruction

    Data Visualization

  • instruction

    Summary

  • Essential Concepts and Tools for Data Visualization in Data Science Quiz

    5 questions

Reviews

Start your review of (UPI) Chapter 17: Key Concepts in Data Analysis: Indexing, Slicing, Missing Data, and Visualization Course (How To)

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.