As a Product Manager focused on Agent Development at WHOOP, you will design, write, and continuously improve AI agents that power health coaching experiences across the app. You will shape how WHOOP AI systems are designed and work closely with Product Managers, AI Engineers, Performance Science experts, and Data Scientists to achieve this goal.
Requirements
- Design and write AI agents that help members understand their data, set goals, and make better daily decisions about sleep, recovery, training, and long-term healthspan
- Partner with AI Engineers to shape agent orchestration, including sequencing, handoff, tool usage, memory access, and fallback behaviors
- Own the conversational and behavioral strategy for agents—defining tone, structure, narrative flow, and language quality across proactive reports and interactive coaching
- Translate ambiguous cross-functional needs into well-scoped agent capabilities, turning inputs like “members don’t understand recovery” or “support is overloaded” into clearly defined agent roles, inputs, outputs, and metrics
- Define what “good” looks like for each agent and system, including success criteria, failure modes, and quality bars across correctness, personalization, actionability, and trust
- Use qualitative and quantitative feedback (member conversations, internal beta feedback, eval results, engagement metrics) to inform agent improvements and product direction
- Act as a trusted advisor to teams across WHOOP on AI strategy, agent design, and responsible use of generative AI in health contexts
- 3+ years in product management or related technical or strategic role, with at least 1+ year working on LLM-focused or agentic AI applications
- Deep understanding of LLM engineering concepts (prompt engineering, RAG, tool usage, real-time decisioning)
- Comfortable with Ambiguity: Proven ability to define product requirements and success metrics in ambiguous environments
- Exceptional written and language design skills, with strong instincts for clarity, tone, and structure—and a deep understanding of how language influences trust, motivation, and behavior change in sensitive health contexts
- Experience designing high-quality conversational AI, including prompts, system instructions, coaching narratives, and microcopy, with the ability to treat language as a control surface for agent behavior, not just user-facing copy
- Strong product and technical fluency, enabling deep collaboration with AI Engineers and Data Scientists and informed reasoning about LLM behavior, limitations, failure modes, and system tradeoffs (without requiring production ML development)
- Systems-level thinking, with experience translating ambiguous problems into well-scoped agent behaviors, modular workflows, and clear specifications that scale beyond a single agent or feature
- Analytical and strategic judgment, including the ability to diagnose agent and system failures, define quality metrics and evals, and balance short-term execution with long-term platform, scalability, and quality considerations
- Relevant technical or interdisciplinary background, such as Computer Science, Engineering, Mathematics, Cognitive Science, HCI, Linguistics, or equivalent practical experience at the intersection of technology, product, and customer experience (MBA a plus)
Benefits
- Competitive base salary
- Meaningful equity
- Consistent pay practices
- Generous benefits