Leads data product strategy for Product & Technology teams at MongoDB, building scalable pipelines, datasets, and analytics tools focused on telemetry and adoption insights. Requires 5+ years PM experience with 2+ in data products and strong data architecture knowledge.
136k – 266k
Hybrid5+ YOEProduct Management
About the role
Responsibilities
Lead Product Strategy and Ownership
Define product vision, strategy, and roadmap for MongoDB’s Data teams and products
Evangelize data-as-a-product with scalable solutions
Balance quick wins with long-term innovation, including lakehouses and medallion data architecture
Partner with Product and Technology (P&T) Teams
Collaborate with P&T teams to address challenges and workflows
Capture business processes, user stories, and pain points from diverse personas
Prioritize high-impact solutions and drive innovation
Performance and Market Analysis
Define metrics and KPIs for success and continuous improvement
Track trends in data platforms, engineering, and analytics
Stakeholder Enablement
Build documentation, guides, and onboarding materials
Partner with training and change management teams
Adoption and Evangelization
Announce features with product marketing strategies
Champion data products and lead re-launch efforts
Agile Product Management
Drive agile processes including sprint planning and retrospectives
Balance innovation with tech debt resolution
Requirements
Proven Data Product Manager & Domain Expertise
5+ years of hands-on product management experience, with at least two years focused on data products or platforms
Experience with advanced engineering organizations and software development lifecycle
Technical Strength & Understanding of Modern Data Architecture
Strong foundation in data engineering, analytics, and data products
Deep familiarity with modern data platforms, scalable architecture (e.g., lakehouses, medallion data)
Strategic and Adaptable Mindset
Prioritize roadmaps aligned with operational needs and goals
Adaptable problem-solver
Growth-Focused
Expertise in metrics, outcomes, and iterative improvement
Comfortable in agile, fast-paced environments
Outstanding Communication Skills
Articulate complex concepts to diverse audiences
Align groups on goals and priorities
What Sets You Apart
Experience with data science, BI, analytics, or data engineering tools
Track record of product enablement materials
Passion for evangelizing technical products
Knowledge of metadata management
Awareness of data market trends
Skills
Data ProductsLakehousesMedallion ArchitectureData PipelinesMongoDBTelemetryProduct AnalyticsAgile MethodologiesData EngineeringBI Tools
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