We are seeking a Senior Product Manager to drive the strategic evolution of our Core Data Platform. In this role, you will bridge the gap between high-level data vision and tactical execution, transforming complex datasets into high-growth product capabilities. Acting as a Product Catalyst, you will own the end-to-end data lifecycle by collaborating with Data Engineering, Analytics, and Design to ship data products that customers find indispensable. We are looking for a product leader comfortable defining 10x growth strategy for data accessibility, insights and data products while ensuring the flawless delivery of platform scalability.
What You’ll Do
Data Insight & Platform Strategy
- Market Intelligence: Synthesize deep customer empathy with rigorous analysis of data trends and the competitive landscape to drive informed platform and tool decisions.
- Strategic Direction: Uncover and validate data "whitespace” emerging analytics trends, and growth levers to inform our data platform and data products direction.
- Enterprise Portfolio Strategy: Lead the data platform’s expansion across a complex multi-product portfolio, influencing the integration roadmap for 10+ products to maximize collective business value and platform adoption.
- Platform Vision: Define and evangelize an aspirational vision for our Data Platform, aligning it with long-term company goals and market opportunities.
- Data Contract Excellence: Identify and validate whitespace in our data architecture, establishing data contracts to ensure high-quality, reliable, and decoupled data exchanges between producers and consumers.
Roadmap & Backlog Management
- Strategic Alignment: Translate high-level strategy into a high-impact roadmap that rigorously balances customer value, business ROI, and technical constraints like latency and throughput.
- Operational Rigor: Author and maintain a high velocity backlog characterized by precision-engineered epics and user stories for data pipelines, APIs, stream-based processing and semantic data modeling to unify our product data.
- Technical Trade-offs: Execute complex trade-off decisions that prioritize speed to market without compromising long-term platform scalability or data consistency.
Product Discovery & Experience Optimization
- Collaborative Design: Partner with Design and Business Unit Product Managers to prototype and rapidly validate data-as-a-product solutions that solve complex user problems.
- Experimentation Culture: Spearhead an experimentation culture, utilizing A/B testing and performance benchmarking to relentlessly optimize data latency to optimize data-driven user journeys powered by the data platform.
- Synthesis: Merge qualitative user feedback with quantitative behavioral data to drive high-conviction product decisions.
Cross-Functional Execution
- Engineering Partnership: Work in lockstep with Data Engineering to translate complex schema requirements and stream-processing logic into shippable code, maintaining a focus on quality and "on-time" delivery.
- Stakeholder Synchronization: Socialize priorities and scope across the organization, ensuring cross-functional stakeholders are unified on data quality standards and integration patterns.
- Radical Accountability: Act as the ultimate point of accountability for the success, quality, and impact of every product increment, from pipeline stability to data accuracy.
- Product Team Partnership: Forge deep strategic alliances with business unit leaders to co-author data adoption requirements, ensuring the platform roadmap is prioritized to maximize portfolio-wide customer value.
Go-To-Market & Performance
- Commercial Synergy: Partner with Product Marketing to architect compelling positioning for our platform's real-time insights and advanced analytics capabilities.
- Enablement: Empower Sales and Customer Success with deep product intelligence to accelerate adoption of our data-driven features.
- Growth Metrics: Define and measure a robust set of success metrics including platform adoption, pipeline reliability, and time-to-insight to quantify product impact.
- Continuous Optimization: Extract actionable intelligence from platform usage data to pinpoint a roadmap of optimizations designed to increase customer lifetime value (LTV) and system efficiency.
What Success Looks Like
- Market-Leading Data Strategy: A compelling, differentiated product vision that establishes our data platform as the "must-have" solution for real-time asset and facility intelligence.
- Engineering Grade Data Contracts: Seamless collaboration where data producers and consumers operate under robust data contracts, resulting in high data quality and decoupled, scalable architecture across our portfolio of products.
- High Velocity Stream Processing: An outcome driven roadmap that consistently delivers measurable ROI through optimized stream-based processing and sub-second latency for critical business insights.
- Standardized Data Modeling: A unified and intuitive semantic data model that reduces time-to-insight for internal teams and external customers alike.
- Platform Excellence: A culture of continuous discovery and experimentation that results in a frictionless, category-leading user experience for data-driven personas within our customer base.
- Quantifiable Growth Velocity: Sustained upward trends across core platform KPIs, specifically driving deeper adoption of real-time data features, higher retention, and expansion revenue.
- Organizational Trust & Alignment: A unified cross-functional engine where Data Engineering, Analytics, Design, and GTM teams operate with absolute clarity, shared technical standards, and a common purpose to deliver data enable user experiences across our entire product portfolio.
What You Bring
- Data Platform Expertise: 8+ years of progressive Product Management experience, with a proven track record of scaling B2B SaaS data platforms and distributed systems.
- Technical Mastery: Deep understanding of data modeling (relational and dimensional) and the implementation of data contracts to ensure decoupled, high-quality data exchange.
- Stream Processing Proficiency: Hands-on experience defining requirements for stream-based data processing (e.g., Kafka, Flink) and real-time analytical workloads.
- Outcome Driven Leadership: A portfolio of successful product outcomes where you led the journey from an abstract data vision to a measurable market win.
- Discovery & Validation Rigor: Extensive experience in user centered discovery, partnering with UX and Engineering to move from ideation to validated, high-conversion experiences via A/B testing and technical prototyping.
- Commercial & GTM Acumen: Proven success in defining positioning and launch strategies that drive real user adoption for complex technical capabilities.
- Analytical Fluency: Proficiency in leveraging complex datasets and system telemetry to diagnose platform health, identify growth levers, and make high stakes tradeoff decisions.
- Executive Presence: The ability to navigate organizational complexity and communicate technical concepts clearly to both engineers and C-suite stakeholders.
- Educational Foundation: Bachelor’s degree in Computer Science, Data Science, or a related field required; MBA or advanced technical degree preferred.
Preferred Qualifications
- Advanced Data Architecture: Deep familiarity with distributed systems, microservices architecture, and managing schema evolution at scale.
- Product-Led Growth (PLG): Proven experience in PLG environments, specifically leveraging data transparency and self-service analytics to drive user expansion.
- Modern Data Stack: Expert-level use of cloud data warehouses (e.g., Snowflake, BigQuery) and advanced analytics platforms like Amplitude, Mixpanel, or Heap.
- Stream-Processing Frameworks: Practical knowledge of real-time data orchestration tools and stream-processing engines such as Apache Kafka, Flink, or Spark Streaming.
- Enterprise Complexity: Background in managing complex workflow based products or large-scale enterprise SaaS ecosystems.
- Advanced Degree: MS in Data Science, Computer Science, or an MBA with a focus on technical product management.
Ready to Build What’s Next?
If you’re a growth-driven SaaS product leader who thrives on building, scaling, and leading through change - join us. At Accruent, you won’t just manage a business, you’ll define its future.
About UsFortive Corporation Overview
Fortive’s essential technology makes the world stronger, safer, and smarter. We accelerate transformation across a broad range of applications including environmental, health and safety compliance, industrial condition monitoring, next-generation product design, and healthcare safety solutions.
We are a global industrial technology innovator with a startup spirit. Our forward-looking companies lead the way in software-powered workflow solutions, data-driven intelligence, AI-powered automation, and other disruptive technologies. We’re a force for progress, working alongside our customers and partners to solve challenges on a global scale, from workplace safety in the most demanding conditions to groundbreaking sustainability solutions.
We are a diverse team 18,000 strong, united by a dynamic, inclusive culture and energized by limitless learning and growth. We use the proven Fortive Business System (FBS) to accelerate our positive impact.
At Fortive, we believe in you. We believe in your potential—your ability to learn, grow, and make a difference.
At Fortive, we believe in us. We believe in the power of people working together to solve problems no one could solve alone.
At Fortive, we believe in growth. We’re honest about what’s working and what isn’t, and we never stop improving and innovating.
Fortive: For you, for us, for growth.
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