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The scheduling automation platform for eliminating the back-and-forth emails to find the perfect time — and so much more
Senior Data Analyst, Reporting
Location
California
Posted
4 days ago
Salary
$144.2K - $203.6K / year
Seniority
Senior
Job Description
Senior Data Analyst, Reporting
Calendly
• Utilize your deep product expertise and advanced analytics skills to drive decision-making across web and mobile product experiences • Conducting in-depth analyses, owning experimentation from end to end, developing event tracking plans, and delivering impactful reports to measure the effectiveness of features • Partnering closely with the Mobile Product and Engineering teams to analyze app user behavior, measure mobile feature adoption, and identify opportunities to improve the end-to-end mobile experience across iOS and Android • Designing and analyzing A/B tests to validate hypotheses and optimize acquisition, activation, and retention strategies • Owning the definition of success for product initiatives, ensuring features deliver meaningful and measurable user and business value • Ensuring analytics outputs are accurate, timely, and aligned with Calendly’s business goals • Representing growth levers and business objectives in cross-functional planning and strategy discussions • Applying statistical methods to uncover insights related to product usage (e.g., conversion funnel analysis, cohort retention, lifecycle segmentation, LTV modeling, and churn prediction) • Building and maintaining dashboards that surface key growth trends and enable stakeholders to self-serve insights effectively • Design, implement, and maintain comprehensive event tracking plans to ensure accurate measurement of user behavior, product adoption, and feature performance
Job Requirements
- Expertise of A/B testing statistics and experimentation end-to-end design
- Proficient in Python programming for developing advanced analytics solutions and automation scripts
- Familiarity with mobile product metrics, event instrumentation, and mobile experimentation frameworks is a strong plus
- Advanced proficiency in SQL, relational databases, and data analysis/visualization tools like Hex
- Strong strategic thinking and problem-solving skills, translating data insights into actionable growth strategies
- Excellent communication and stakeholder management skills, conveying technical concepts to non-technical audiences
- Ability to translate detailed data into clear, actionable recommendations, bridging technical and business perspectives
- Inquisitive mindset for uncovering insights and opportunities through data, driving continuous improvement
- Authorized to work lawfully in the United States of America as Calendly does not engage in immigration sponsorship at this time
Benefits
- Health insurance
- 401(k) matching
- Paid time off
- Professional development opportunities
- Top Performer Bonus program
- Equity awards
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