Staff Product Analyst
About the role
The Product Analytics team helps shape product strategy through rigorous analysis, deep customer understanding, and clear measurement. We define the metrics that matter, identify friction across the user journey, and develop analytical approaches that support product growth and innovation.
Responsibilities
- Lead Product Measurement Strategy - Own KPI frameworks, metric definitions, and metric trees that help Product teams measure long-term user value, retention, engagement loops, and overall business health.
- Generate Proactive Insights - Beyond immediate roadmap questions to explore complex datasets, identify non-obvious user behaviors, and quantify their impact on customers and the business.
- Shape Product Strategy with Data - Synthesize multiple data sources into clear, evidence-based points of view on major product opportunities, risks, and trade-offs. Present recommendations directly to senior Product leaders and influence roadmap decisions.
- Design Scalable Data Foundations - Partner with Data Engineering and Product teams to improve upstream data models, event tracking, and analytical infrastructure so the organization can support accurate, scalable, and advanced analysis.
- Leverage AI to Improve Analytical Efficiency - Identify and implement practical AI use cases that accelerate analytics workflows, including insight generation, data exploration, documentation, code development, quality checks, dashboard creation, and narrative synthesis. Ensure AI-enabled outputs meet high standards for accuracy, explainability, privacy, and analytical rigor.
- Create Reusable AI-Enabled Analytics Solutions - Build and share reusable prompts, workflows, templates, automation patterns, and AI-assisted tools that help analysts work faster while improving consistency and quality across deliverables.
- Elevate the Analytics Community - Mentor intermediate and senior analysts across the organization by improving technical craft, analytical rigor, code quality, data storytelling, and effective use of AI tools. Help build a high-trust, high-standards data culture.
Requirements
Staff-Level Product Analytics - Experience 8+ years of experience in Product Analytics, Data Science, Growth Analytics, or a related field, with a strong track record of delivering impact at a Staff, Principal, Lead, or equivalent level.
Advanced Technical Expertise - Expert proficiency with the modern analytics stack, including SQL, Python or R, and BI tools such as Tableau. Experience with complex, high-volume behavioral datasets is essential.
AI Fluency and Practical Application - Experience leveraging AI tools, LLMs, automation, or AI-assisted to improve the speed, quality, and scalability of analytical work. You know how to use AI responsibly by validating outputs, managing risk, protecting sensitive data, and ensuring recommendations remain grounded in evidence.
Strong Analytical Judgment - Deep experience selecting the right analytical methods, experimentation frameworks, and measurement approaches for ambiguous business and product problems. You balance methodological rigor with practical business speed.
Influence Without Authority - Exceptional communication skills and the ability to translate complex analysis into clear, actionable recommendations. You partner effectively with Engineers, advise senior Product leaders, and discuss methodology with Analytics subject matter experts.
Multiplier Mindset - You measure success not only by your own analytical output, but by how much you improve the effectiveness, judgment, and technical capability of the analysts around you.
Qualifications
Master’s degree in Computer Science, Statistics, Mathematics, or a related field, or equivalent practical experience.
Experience with large-scale data processing and analysis, including experience with big data technologies like Hadoop, Spark, or similar systems.
Experience with machine learning and predictive modeling techniques, including experience with supervised and unsupervised learning algorithms.
Experience with data visualization tools and techniques, including experience with Tableau, PowerBI, or similar tools.
Experience with data engineering and data pipeline development, including experience with ETL processes and data warehousing.
Skills
- SQL, Python, or R programming
- Data visualization tools (Tableau, PowerBI)
- Data engineering and pipeline development
- Machine learning and predictive modeling
- Data warehousing and ETL processes
Benefits
Comprehensive benefits including health, dental, and vision insurance.
Competitive compensation package, including base salary ranging from $174,720 - $218,400 with eligibility for bonus, equity.
Location flexible work approach, allowing you to choose to work in the nearest office, from your home, or a hybrid of both (subject to location restrictions and roles that are required to be in the office).
Equal opportunity employer that values diversity and inclusion.
Commitment to fostering a work environment that's inclusive as well as diverse, and where our people can be themselves.
Encourages applications from minorities, women, the disabled, protected veterans, and all other qualified applicants.
Pay
$174,720 - $218,400 with eligibility for bonus, equity and comprehensive benefits including health, dental and vision.
Schedule
Location flexible work approach, allowing you to choose to work in the nearest office, from your home, or a hybrid of both (subject to location restrictions and roles that are required to be in the office).