The Art of Data Science (The Book + Lecture Videos)
The Art of Data Science
A Guide for Anyone Who Works with Data
About the Book
Data analysis is a difficult process largely because few people can describe exactly how to do it. It's not that there aren't any people doing data analysis on a regular basis. It's that the process by which we state a question, explore data, conduct formal modeling, interpret results, and communicate findings, is a difficult process to generalize and abstract. Fundamentally, data analysis is an art. It is not yet something that we can easily automate. Data analysts have many tools at their disposal, from linear regression to classification trees to random forests, and these tools have all been carefully implemented on computers. But ultimately, it takes a data analyst—a person—to find a way to assemble all of the tools and apply them to data to answer a question of interest to people.
This book writes down the process of data analysis with a minimum of technical detail. What we describe is not a specific "formula" for data analysis, but rather is a general process that can be applied in a variety of situations. Through our extensive experience both managing data analysts and conducting our own data analyses, we have carefully observed what produces coherent results and what fails to produce useful insights into data. This book is a distillation of our experience in a format that is applicable to both practitioners and managers in data science.
If you are interested in obtaining a printed copy of this book, you can purchase one at Lulu.
The package containing the lecture videos offers short commentaries on each of the chapters and contains addtional explanatory material for each of the topics. In addition there is some material in the lectures that is not included in the book.
Packages
The Book
PDF
EPUB
WEB
English
The Book + Lecture Videos
This package includes the book and lecture video files. The videos and chapters are aligned so that together they make an ideal self-learning curriculum in which students interested in data science can pair video lectures with reading material. The videos complement the reading material by extending concepts covered in the book and by providing visual and auditory presentation of the concepts. This self-guided curriculum can be covered at any pace and the completion of material should provide students with a solid foundation for thinking about the data science process. The complete package should be of interest to students interested in doing their own data analyses and to people who need to manage data science teams.
PDF
EPUB
WEB
English
About the Contributors
Table of Contents
- 1. Data Analysis as Art
-
2. Epicycles of Analysis
- 2.1 Setting the Scene
- 2.2 Epicycle of Analysis
- 2.3 Setting Expectations
- 2.4 Collecting Information
- 2.5 Comparing Expectations to Data
- 2.6 Applying the Epicycle of Analysis Process
-
3. Stating and Refining the Question
- 3.1 Types of Questions
- 3.2 Applying the Epicycle to Stating and Refining Your Question
- 3.3 Characteristics of a Good Question
- 3.4 Translating a Question into a Data Problem
- 3.5 Case Study
- 3.6 Concluding Thoughts
-
4. Exploratory Data Analysis
- 4.1 Exploratory Data Analysis Checklist: A Case Study
- 4.2 Formulate your question
- 4.3 Read in your data
- 4.4 Check the Packaging
- 4.5 Look at the Top and the Bottom of your Data
- 4.6 ABC: Always be Checking Your “n”s
- 4.7 Validate With at Least One External Data Source
- 4.8 Make a Plot
- 4.9 Try the Easy Solution First
- 4.10 Follow-up Questions
-
5. Using Models to Explore Your Data
- 5.1 Models as Expectations
- 5.2 Comparing Model Expectations to Reality
- 5.3 Reacting to Data: Refining Our Expectations
- 5.4 Examining Linear Relationships
- 5.5 When Do We Stop?
- 5.6 Summary
-
6. Inference: A Primer
- 6.1 Identify the population
- 6.2 Describe the sampling process
- 6.3 Describe a model for the population
- 6.4 A Quick Example
- 6.5 Factors Affecting the Quality of Inference
- 6.6 Example: Apple Music Usage
- 6.7 Populations Come in Many Forms
-
7. Formal Modeling
- 7.1 What Are the Goals of Formal Modeling?
- 7.2 General Framework
- 7.3 Associational Analyses
- 7.4 Prediction Analyses
- 7.5 Summary
-
8. Inference vs. Prediction: Implications for Modeling Strategy
- 8.1 Air Pollution and Mortality in New York City
- 8.2 Inferring an Association
- 8.3 Predicting the Outcome
- 8.4 Summary
-
9. Interpreting Your Results
- 9.1 Principles of Interpretation
- 9.2 Case Study: Non-diet Soda Consumption and Body Mass Index
-
10. Communication
- 10.1 Routine communication
- 10.2 The Audience
- 10.3 Content
- 10.4 Style
- 10.5 Attitude
- 11. Concluding Thoughts
- About the Authors
Other books by these authors
The Leanpub 60 Day 100% Happiness Guarantee
Within 60 days of purchase you can get a 100% refund on any Leanpub purchase, in two clicks.
Now, this is technically risky for us, since you'll have the book or course files either way. But we're so confident in our products and services, and in our authors and readers, that we're happy to offer a full money back guarantee for everything we sell.
You can only find out how good something is by trying it, and because of our 100% money back guarantee there's literally no risk to do so!
So, there's no reason not to click the Add to Cart button, is there?
See full terms...
Earn $8 on a $10 Purchase, and $16 on a $20 Purchase
We pay 80% royalties on purchases of $7.99 or more, and 80% royalties minus a 50 cent flat fee on purchases between $0.99 and $7.98. You earn $8 on a $10 sale, and $16 on a $20 sale. So, if we sell 5000 non-refunded copies of your book for $20, you'll earn $80,000.
(Yes, some authors have already earned much more than that on Leanpub.)
In fact, authors have earnedover $14 millionwriting, publishing and selling on Leanpub.
Learn more about writing on Leanpub
Free Updates. DRM Free.
If you buy a Leanpub book, you get free updates for as long as the author updates the book! Many authors use Leanpub to publish their books in-progress, while they are writing them. All readers get free updates, regardless of when they bought the book or how much they paid (including free).
Most Leanpub books are available in PDF (for computers) and EPUB (for phones, tablets and Kindle). The formats that a book includes are shown at the top right corner of this page.
Finally, Leanpub books don't have any DRM copy-protection nonsense, so you can easily read them on any supported device.
Learn more about Leanpub's ebook formats and where to read them