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Product Manager

Reinforce Labs
Full-time
Remote friendly (Palo Alto, California, United States)
Worldwide
About UsWe’re an early-stage B2B SaaS company building AI-powered products for enterprise teams. Our customers care deeply about safety, trust, compliance, and revenue impact, and we help them launch AI features confidently.We’re looking for a Product Manager who can own customer-facing dashboards end-to-end, defining the right KPIs, partnering with eng/ML on the data and evaluation, and turning complex signals into simple, decision-ready UI for our customers.What You’ll DoOwn Metrics & Evaluation FrameworksDefine and evolve the core Metrics framework for AI readiness, safety, security, and compliance.Partner with ML/eng to design metrics and evaluation loops that reflect real-world risk.Work with GTM and customers to ensure metrics map cleanly to business outcomes and internal reporting needs.Build Customer Dashboards & UXOwn the end-to-end UX for customer-facing dashboards: readiness scores, risk heatmaps, experiment views, trend charts, and drill-downs into specific conversations.Translate complex technical signals (attack success rates, severities, false positives/negatives) into simple visualizations and narratives.Work closely with design to define information architecture, layouts, and interaction patterns.Drive Customer Discovery & Feedback LoopsRun customer discovery with T&S leaders, PMs, compliance, and security stakeholders to understand how they make decisions and what data they trust.Turn feedback and usage data into a prioritized roadmap for dashboards, reports, and self-serve analytics.Experimentation & Data-Driven DecisionsDefine success metrics and guardrail metrics for new features; partner with eng/ML on rollouts.Use product analytics and customer data to understand adoption, engagement, and impact of dashboards and reports.What We’re Looking ForMust-Haves4–8+ years of Product Management experience in B2B SaaS and/or AI/ML-powered products.Demonstrated experience owning customer-facing dashboards, analytics products, or reporting surfaces.High comfort with metrics: defining KPIs, reasoning about tradeoffs, and turning raw data into clear definitions and thresholds.Strong collaboration with engineering, ops, and data/ML teamsExcellent written and verbal communication; you can explain complex AI risk concepts in simple language to non-technical stakeholders.Nice-to-HavesExperience with LLMs, GenAI, or ML-based productsBackground working with trust & safety, security, compliance, or risk teams.Prior startup experience building v1 products and iterating quickly with design partners.
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