Applied Machine Learning for Data Scientists and Software Engineers: Framing--The First Steps Toward Successful Execution : 9780134116549

Applied Machine Learning for Data Scientists and Software Engineers: Framing--The First Steps Toward Successful Execution

 
Edition
 
1
ISBN
 
9780134116549
ISBN 10
 
0134116542
Published
 
25/02/2019
Published by
 
Pearson Higher Ed USA
Pages
 
280
Format
 
Out of stock
 
Title type
Book
$57.99
 
 
Title type
 
$40.99
 
 
Description

The typical data science task in industry starts with an “ask” from the business. But few data scientists have been taught what to do with that ask. This book shows them how to assess it in the context of the business’s goals, reframe it to work optimally for both the data scientist and the employer, and then execute on it. Written by two of the experts who’ve achieved breakthrough optimizations at BuzzFeed, it’s packed with real-world examples that take you from start to finish: from ask to actionable insight.

Andrew Kelleher and Adam Kelleher walk you through well-formed, concrete principles for approaching common data science problems, giving you an easy-to-use checklist for effective execution. Using their principles and techniques, you’ll gain deeper understanding of your data, learn how to analyze noise and confounding variables so they don’t compromise your analysis, and save weeks of iterative improvement by planning your projects more effectively upfront.

Once you’ve mastered their principles, you’ll put them to work in two realistic, beginning-to-end site optimization tasks. These extended examples come complete with reusable code examples and recommended open-source solutions designed for easy adaptation to your everyday challenges. They will be especially valuable for anyone seeking their first data science job -- and everyone who’s found that job and wants to succeed in it.

Table of contents
Part I: Principles of Framing
1. Introduction: How We See Data Science
2. Translate an Ask into a Well-Formed problem
3. Framing/Re-framing

Part II: Principles of Choosing a Model
4. Finding Causal Relationships
5. Quantifying Quality and Confidence
6. Quantifying Error
7. Noise

Part III: Case Studies
8. The Initial Ask: Knowing When to Reframe
9. Building Domain Knowledge
10. Causal Modeling
11. Assessment of the Data Set
12. System Modeling
13. Refinement

Part IV: Appendices
A. Brief Overview of Common Algorithms
B. History/Progression of Search Algorithms
C. History/Progression of Metrics for User Engagement
D. Useful Papers and Further Reading