Product Manager, Safeguards (Verticals)
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What the team is looking for.
About the role
Anthropic is dedicated to developing AI assistants that are helpful, harmless, and honest. As usage of our AI services grows, we need to ensure they are not misused. The Safeguards team is at the forefront of protecting our users from the risks of powerful AIs as well as ethical, technical, and social risks from the use of generative AI.
As a Product Manager for the Safeguards team at Anthropic, you will own the ideation, design, development and deployment of Safeguards systems and relevant product UX to ensure we are advancing frontier models safely to users across various cloud platforms. You will work closely with our research and product teams to develop detections, evals, interventions, and tools to measure and mitigate deployment and user risks.
Responsibilities:
- Determine how to build in safety by design upstream and leverage downstream defenses for Anthropic’s frontier models, AI products, customers on different surfaces - Claude.ai, 1P API, external Cloud providers.
- Ability to write safety evals and communicate externally about safety.
- Drive impact via ruthless prioritization by clearly defining problems, solution options forward, clarity on both business & technical tradeoffs and accordingly clear requirements toward MVP vs. ideal state.
- Align & collaborate with policy, enforcement, research, engineering and cross functional stakeholders.
- Understand the AI landscape and ecosystem to plan for mitigation of deployment risks of increasingly powerful models and determined adversaries.
- Lead the development of metrics to understand the area, performance, blindspots to help inform future project planning.
Minimum Qualifications
You may be a good fit if you have:
- Ability to make technical tradeoff decisions; ideally with experience working across policy experts, AI/ML research engineers and software engineering teams to design and build state of the art safety systems.
- Strong user understanding of how our products are used, their Safeguards concerns and how we provide the best solutions.
- Demonstrated ability to build product and engineering strategy across multiple cross-functional teams for a rapidly changing space.
- Demonstrated experience in designing and building metrics to evaluate risks, system performance, user impact and making crisp tradeoffs.
- Very strong ability to navigate, and prioritize amidst rapidly changing product specs, and to flex into different domains to bring clarity and execute.
- Evidence of exercising judgment and decision making in ambiguous situations.
- Planning, building, launching and measuring new products / systems in a zero to one environment.
- Ability to clearly articulate complex technical concepts to non-technical audiences in written and verbal communication.
- Think creatively about the risks and benefits of new technologies, and think beyond past checklists and playbooks.
Preferred Qualifications
- 5+ years in product management with a focus on fast problem understanding, building roadmaps with tractable progress, ability to get into the details on data, detection & interventions, infrastructure & tools, and/or evals.
The annual compensation range for this role is $305,000-$385,000 USD.
- AI safety
- product management
- technical tradeoffs
- safety evals
- cross-functional collaboration
- 5+ years in product management
- data analysis
- detection & interventions
- infrastructure & tools
- evals
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