Engineering Manager, Enterprise
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What the team is looking for.
Anthropic's mission is to create reliable, interpretable, and steerable AI systems.
The Engineering Manager, Enterprise role is central to Anthropic's mission, focusing on making Claude enterprise-ready at scale.
Responsibilities:
- Lead and develop a team of engineers building out features and foundations that make Claude enterprise-ready at scale
- Own engineering execution end-to-end: planning, prioritization, delivery quality, team health, and incident response
- Partner with engineering teams throughout the company to ensure that the platforms we build are extensible and easy to adopt
- Partner with sales and customer success on enterprise deals,understanding requirements, representing engineering in key conversations, and turning what you learn into priorities
- Shape the roadmap with product and design, not just execute against it
- Drive the compliance and platform-readiness work your customers require, partnering with security and legal
- Recruit, onboard, and grow strong engineers; give direct feedback and build a healthy, high-performing team
Minimum qualifications:
- 4+ years of experience as an engineering manager, with experience building enterprise SaaS platforms or admin tools
- Comfortable executing at a fast pace to meet the expectations of our customers
- Detail-oriented and quality-focused
- Comfortable working with enterprise customers, working alongside sales and customer success and joining customer conversations
- Skilled engineering manager who treats management as a craft,clear feedback, strong 1:1s, consistent investment in your team's growth
Preferred qualifications:
- Experience with AI/ML products and understanding how enterprises evaluate and deploy AI tools
- Background with compliance frameworks for regulated industries (SOC2, HIPAA) and enterprise audit logging requirements
- Experience building integrations, permissions, billing, or pricing infrastructure
- Familiarity with data residency and sovereignty requirements across global regions
- Startup experience, particularly in scaling enterprise platforms from early adoption to broad deployment
- Experience in working with research to improve domain specific model capabilities
The annual compensation range for this role is $405,000-$485,000 USD.
- engineering management
- enterprise SaaS platforms
- admin tools
- AI/ML products
- compliance frameworks
- enterprise audit logging
- integrations
- permissions
- billing
- pricing infrastructure
- data residency
- sovereignty requirements
- startup experience
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