Reader small image

You're reading from  Learn Python by Building Data Science Applications

Product typeBook
Published inAug 2019
Reading LevelIntermediate
PublisherPackt
ISBN-139781789535365
Edition1st Edition
Languages
Tools
Right arrow
Authors (2):
Philipp Kats
Philipp Kats
author image
Philipp Kats

Philipp Kats is a researcher at the Urban Complexity Lab, NYU CUSP, a research fellow at Kazan Federal University, and a data scientist at StreetEasy, with many years of experience in software development. His interests include data analysis, urban studies, data journalism, and visualization. Having a bachelor's degree in architectural design and a having followed the rocky path (at first) of being a self-taught developer, Philipp knows the pain points of learning programming and is eager to share his experience.
Read more about Philipp Kats

David Katz
David Katz
author image
David Katz

David Katz is a researcher and holds a Ph.D. in mathematics. As a mathematician at heart, he sees code as a tool to express his questions. David believes that code literacy is essential as it applies to most disciplines and professions. David is passionate about sharing his knowledge and has 6 years of experience teaching college and high school students.
Read more about David Katz

View More author details
Right arrow

Summary

In this chapter, we discussed how to derive insights from the raw datacompute descriptive statistics and aggregates and draw basic plots of relationships—and use special tools for big data visualization. As a result, we've learned how to start working with the dataset, investigate its overall properties, and drill down to specific details. We also learned how to visualize data, a vital skill for both personal data exploration and sharing the insights with a broad audience. These skills are fundamental for data analysisknowing what to ask and how to answer your question with the data and noticing patterns and anomalies in the data and being able to interpret them and speculate on their origins.

In our next chapter, we'll go a step further in that direction, leveraging statistical and machine learning models to guide our interpretation.

...
lock icon
The rest of the page is locked
Previous PageNext Page
You have been reading a chapter from
Learn Python by Building Data Science Applications
Published in: Aug 2019Publisher: PacktISBN-13: 9781789535365

Authors (2)

author image
Philipp Kats

Philipp Kats is a researcher at the Urban Complexity Lab, NYU CUSP, a research fellow at Kazan Federal University, and a data scientist at StreetEasy, with many years of experience in software development. His interests include data analysis, urban studies, data journalism, and visualization. Having a bachelor's degree in architectural design and a having followed the rocky path (at first) of being a self-taught developer, Philipp knows the pain points of learning programming and is eager to share his experience.
Read more about Philipp Kats

author image
David Katz

David Katz is a researcher and holds a Ph.D. in mathematics. As a mathematician at heart, he sees code as a tool to express his questions. David believes that code literacy is essential as it applies to most disciplines and professions. David is passionate about sharing his knowledge and has 6 years of experience teaching college and high school students.
Read more about David Katz