Data Privacy you own this product

A runbook for engineers
Nishant Bhajaria
  • January 2022
  • ISBN 9781617298998
  • 384 pages
  • printed in black & white
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I wish I had had this text in 2015 or 2016 at Netflix, and it would have been very helpful in 2008–2012 in a time of significant architectural evolution of our technology.

From the Foreword by Neil Hunt, Former CPO, Netflix
Look inside
Engineer privacy into your systems with these hands-on techniques for data governance, legal compliance, and surviving security audits.

In Data Privacy you will learn how to:

  • Classify data based on privacy risk
  • Build technical tools to catalog and discover data in your systems
  • Share data with technical privacy controls to measure reidentification risk
  • Implement technical privacy architectures to delete data
  • Set up technical capabilities for data export to meet legal requirements like Data Subject Asset Requests (DSAR)
  • Establish a technical privacy review process to help accelerate the legal Privacy Impact Assessment (PIA)
  • Design a Consent Management Platform (CMP) to capture user consent
  • Implement security tooling to help optimize privacy
  • Build a holistic program that will get support and funding from the C-Level and board

Data Privacy teaches you to design, develop, and measure the effectiveness of privacy programs. You’ll learn from author Nishant Bhajaria, an industry-renowned expert who has overseen privacy at Google, Netflix, and Uber. The terminology and legal requirements of privacy are all explained in clear, jargon-free language. The book’s constant awareness of business requirements will help you balance trade-offs, and ensure your user’s privacy can be improved without spiraling time and resource costs.

about the technology

Data privacy is essential for any business. Data breaches, vague policies, and poor communication all erode a user’s trust in your applications. You may also face substantial legal consequences for failing to protect user data. Fortunately, there are clear practices and guidelines to keep your data secure and your users happy.

about the book

Data Privacy: A runbook for engineers teaches you how to navigate the trade-off s between strict data security and real world business needs. In this practical book, you’ll learn how to design and implement privacy programs that are easy to scale and automate. There’s no bureaucratic process—just workable solutions and smart repurposing of existing security tools to help set and achieve your privacy goals.

what's inside

  • Classify data based on privacy risk
  • Set up capabilities for data export that meet legal requirements
  • Establish a review process to accelerate privacy impact assessment
  • Design a consent management platform to capture user consent

about the reader

For engineers and business leaders looking to deliver better privacy.

about the author

Nishant Bhajaria leads the Technical Privacy and Strategy teams for Uber. His previous roles include head of privacy engineering at Netflix, and data security and privacy at Google.

FREE domestic shipping on orders of three or more print books

Your guide to building privacy into the fabric of your organization.

John Tyler, JPMorgan Chase

The most comprehensive resource you can find about privacy.

Diego Casella, InvestSuite

Offers some valuable insights and direction for enterprises looking to improve the privacy of their data.

Peter White, Charles Sturt University
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