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Privacy Engineering Jobs (NOW HIRING)

This unique role combines Privacy Engineering with hands-on software engineering work with the Privacy Preserving Machine Learning team. The Privacy Preserving Machine Learning team works with teams ...

This unique role combines Privacy Engineering with hands-on software engineering work with the Privacy Preserving Machine Learning team. The Privacy Preserving Machine Learning team works with teams ...

AIML Privacy-Engineering Rotation

Cupertino, CA · On-site

$124K - $159K/yr

This unique role combines Privacy Engineering with hands-on software engineering work with the Privacy Preserving Machine Learning team. The Privacy Preserving Machine Learning team works with teams ...

Privacy Engineer will report to the Associate Director - Privacy, assisting in and supporting the ... Demonstrated working knowledge of software engineering and/or cybersecurity fundamentals. * Strong ...

Privacy Engineer Location: Block 23 What you'll do: Privacy Engineer will report to the Associate ... Demonstrated working knowledge of software engineering and/or cybersecurity fundamentals. * Strong ...

Privacy Engineer Location: Block 23 What you'll do: Privacy Engineer will report to the Associate ... Demonstrated working knowledge of software engineering and/or cybersecurity fundamentals. * Strong ...

Privacy Engineer, User Privacy

Cupertino, CA · On-site

$124K - $159K/yr

The Privacy Engineering team works with teams all across the company to make sure that products and services protect user privacy by designing architectures that reduce the exposure of user data at ...

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Privacy Engineering information

See salary details

$99.5K

$115.5K

$129.5K

How much do privacy engineering jobs pay per year?

As of Jun 30, 2026, the average yearly pay for privacy engineering in the United States is $115,505.00, according to ZipRecruiter salary data. Most workers in this role earn between $101,000.00 and $129,000.00 per year, depending on experience, location, and employer.

What does a privacy engineer do?

A privacy engineer designs and implements systems and processes to protect user data and ensure compliance with privacy laws. They work with software development teams to embed privacy features, conduct risk assessments, and utilize tools like data encryption and privacy impact assessments. Strong knowledge of data protection regulations and technical skills are essential for this role.

What is privacy engineering?

Privacy engineering is the discipline of designing and implementing systems, processes, and technologies that protect users' personal data and ensure compliance with privacy regulations. Privacy engineers work to embed privacy protections directly into products and services, often by using techniques like data minimization, anonymization, and encryption. They collaborate with legal and compliance teams to understand regulatory requirements and translate them into technical solutions. The goal is to proactively mitigate privacy risks and build trust with users by safeguarding their information.

How much does a privacy engineer make?

A privacy engineer's salary typically ranges from $90,000 to $150,000 annually, depending on experience, location, and company size. Senior roles or those with specialized skills in data protection and compliance can earn higher salaries, often exceeding $180,000.

What are the key skills and qualifications needed to thrive as a Privacy Engineer, and why are they important?

To thrive as a Privacy Engineer, you need a strong background in computer science, data security, and privacy regulations such as GDPR or CCPA, typically supported by a degree in a related field. Familiarity with privacy-enhancing technologies, encryption tools, and compliance management systems is essential, with certifications like CIPT or CISSP being advantageous. Strong analytical thinking, problem-solving abilities, and effective cross-functional communication skills help you translate privacy requirements into practical technical solutions. These competencies are crucial for designing systems that protect user data, ensure regulatory compliance, and maintain organizational trust.

What is the difference between Privacy Engineering vs Data Privacy Analyst?

AspectPrivacy EngineeringData Privacy Analyst
Required credentialsTypically requires degrees in computer science, cybersecurity, or related fields; certifications like CIPP, CIPM are commonOften requires degrees in law, compliance, or related fields; certifications like CIPP, CIPM are also common
Work environmentFocuses on designing and implementing privacy features within systems and productsFocuses on monitoring, auditing, and ensuring compliance with privacy policies
Employer and industry usageUsed in tech companies, software development, and organizations building privacy-centric productsUsed in legal, compliance departments, and organizations managing data privacy regulations

Privacy Engineering involves designing technical solutions to protect user data, while Data Privacy Analysts focus on policy compliance and data audits. Both roles are essential in maintaining data privacy but differ in their core responsibilities and skill sets.

What engineers make $500,000?

Senior privacy engineers with extensive experience, specialized skills in data protection, and certifications such as CISSP or CIPP can earn $500,000 or more annually, especially in large tech companies or financial institutions. High compensation often reflects leadership roles, complex project management, and expertise in privacy laws and security tools.

What engineers make $300,000 a year?

Senior privacy engineers, especially those with extensive experience, advanced certifications, and expertise in security tools and compliance, can earn $300,000 or more annually. High compensation is often associated with leadership roles, specialized skills, and working in large technology companies or consulting firms.

What are some common challenges privacy engineers face when implementing privacy-preserving technologies within large organizations?

Privacy engineers often encounter challenges such as aligning technical solutions with evolving legal requirements (like GDPR or CCPA), integrating privacy-preserving features into legacy systems, and balancing user experience with robust data protection. Collaboration with cross-functional teams—including legal, security, and product management—is essential to ensure compliance without hindering innovation. Additionally, privacy engineers must stay updated on the latest tools and frameworks to effectively manage risks and implement scalable solutions.
More about Privacy Engineering jobs
What cities are hiring for Privacy Engineering jobs? Cities with the most Privacy Engineering job openings:
What states have the most Privacy Engineering jobs? States with the most job openings for Privacy Engineering jobs include:
Infographic showing various Privacy Engineering job openings in the United States as of June 2026, with employment types broken down into 93% Full Time, 4% Part Time, and 3% Contract. Highlights an 88% Physical, 3% Hybrid, and 9% Remote job distribution, with an average salary of $115,505 per year, or $55.5 per hour.
Engineering Manager - Privacy Infrastructure

Engineering Manager - Privacy Infrastructure

Anthropic

San Francisco, CA

$119K - $152K/yr

Other

Posted 25 days ago


Job description

About the Role

We're looking for an Engineering Manager to build and lead our Privacy Engineering team:a small, high-leverage group responsible for designing and operating the privacy infrastructure that protects user data across our AI systems. You'll have an outsized impact in shaping how Anthropic builds world-class privacy into Claude from the ground up.

This is a role with extraordinary scope and leverage. You'll own privacy engineering for Anthropic end-to-end.The work that spans privacy-preserving architectures for AI training and inference, foundational data governance and lifecycle systems, and the automated controls that turn complex regulation into engineering reality. You'll lead a  team of talented privacy engineers that builds and operates the platform and infra frameworks underpinning Anthropic's privacy and compliance posture. Your job is to scale the team and its charter as Anthropic grows. .

Working at the intersection of privacy engineering, AI safety, and distributed systems, your team will solve novel challenges in protecting user data at scale, handling billions of conversations while maintaining model quality and research velocity. If owning the whole problem and having an outsized impact on how a frontier AI lab protects its users sounds compelling, this role might be for you.

Key Responsibilities
  • Build and lead the team: Recruit, develop, and retain a team of exceptional privacy engineers; establish team charter, practices, and priorities as the team matures
  • Drive technical strategy: Partner with technical leads, researchers, and legal to set direction for privacy infrastructure across training, inference, and product surfaces: data governance and policy enforcement, deletion and retention at scale, encryption and key management, audit and access transparency, and ML-based PII detection and redaction.
  • Build foundational privacy infrastructure: Guide the team in building automated data discovery, classification, access controls, audit logging, and lifecycle management systems, plus data governance platforms for tracking lineage, purpose limitation, and retention across distributed AI systems
  • Translate regulation into engineering: Ensure the team turns complex regulatory requirements (GDPR, CCPA, HIPAA, EU AI Act) into actionable technical implementations and automated compliance controls
  • Lead privacy reviews at scale: Oversee technical privacy reviews and threat modeling for new AI models and features, identifying risks and architecting scalable mitigations
  • Enable privacy by default: Champion privacy engineering toolkits and frameworks that let all engineers build privacy-preserving features by default, and embed privacy controls into Claude's inference systems, interfaces, and data pipelines
  • Communicate and coordinate: Work closely with security, legal, data infrastructure, research, and go-to-market teams; clearly articulate dependencies, risks, and progress to stakeholders, and advocate for privacy as central to our mission of AI safety.
  • Stay technically grounded: Maintain enough technical depth to understand your team's work, provide meaningful guidance, and credibly represent privacy concerns in cross-functional discussions
About You

We're looking for a technical leader who thinks of themselves as a problem-solver and team-builder first. The ideal candidate has:

Required:

  • Significant experience managing engineering teams, including hiring and growing teams through periods of ambiguity and rapid change
  • Deep expertise in privacy engineering principles: privacy by design, data minimization, and purpose limitation
  • Strong technical foundation in data governance and privacy infrastructure (policy enforcement, deletion/retention/lineage systems, encryption key management, audit logging) and the ability to discuss them at a level that earns respect from senior ICs.
  • Strong understanding of privacy regulations (GDPR, CCPA) and the ability to translate legal requirements into technical solutions
  • Experience with data governance, classification, and lifecycle management systems serving large user bases
  • Ability to balance technical depth with pragmatic decision-making; you know when to dive deep and when to trust your team
  • Strong communication skills: you can translate complex privacy challenges into business terms and vice versa
  • Comfort with end-to-end ownership, including defining practices where industry precedent is thin

Preferred:

  • 8+ years of experience managing technical teams
  • Experience growing an engineering team and charter through a period of rapid company scaling.
  • Experience conducting privacy reviews, threat modeling, and risk assessments for production systems
  • Proven track record of designing and implementing privacy infrastructure serving millions of users
  • Experience at companies during periods of hypergrowth where you've scaled privacy alongside the business
  • Exposure to AI/ML infrastructure and the unique privacy demands of large-scale training and inference