Job Closed
This listing is no longer active.
The era of personalized care is finally coming to Neurodegenerative disease
Staff Data Analyst
Location
Illinois
Posted
178 days ago
Salary
0
Seniority
Lead
Job Description
Staff Data Analyst
Synapticure Inc.
• Define and Govern Analytical Strategy: Establish the multi-quarter analytical roadmap for a major business area (e.g., Clinical, Growth, or Operations), translating strategic objectives into measurable, actionable data initiatives. • Architect Data Models: Serve as the principal steward of Synapticure’s data models and semantic layers (dbt/Snowflake), ensuring scalability, performance, and data integrity across the enterprise. • Lead Cross-Functional Initiatives: Manage complex, high-impact projects that require integration of diverse data sources and alignment across Product, Clinical, Finance, and Operations teams. • Strategic Partnership: Act as a trusted advisor to senior and executive leadership—framing key questions, guiding methodology, and delivering data-driven insights that shape company direction. • Mentorship & Team Development: Provide technical mentorship to other analysts, establish standards for analytical rigor and reproducibility, and elevate the analytical maturity of the entire organization. • Define and Govern Key Metrics: Create and maintain consistent definitions for enterprise-level KPIs to ensure alignment and accuracy across teams. • Storytelling with Data: Communicate analytical findings through compelling narratives that connect technical results to business and clinical impact. • Champion Data Integrity: Lead by example in maintaining high standards of quality, governance, and documentation across all analytical outputs and infrastructure.
Job Requirements
- 8+ years of experience in advanced data roles (Data Analyst, Analytics Engineer, BI Architect, or equivalent) with proven impact in complex, high-growth organizations
- Deep understanding of healthcare data ecosystems, including CMS data, clinical workflows, value-based care models, and regulatory compliance
- Expert-level SQL proficiency and experience building transformation pipelines using dbt or equivalent modern data stack tools
- Hands-on experience designing and maintaining production-grade data models within Snowflake, BigQuery, or Redshift environments
- Strong knowledge of BI tools such as Tableau, Looker, Power BI, or Knowi, including building scalable analytics environments
- Proven ability to translate ambiguous business questions into structured analytical plans and actionable insights
- Exceptional communication and presentation skills—capable of influencing C-level stakeholders and cross-functional teams
- Demonstrated experience mentoring data professionals and implementing analytical best practices at scale
- Proven track record of delivering measurable business and clinical impact through data-driven decision-making
Benefits
- Competitive compensation based on experience
- Comprehensive health, dental, and vision insurance
- 401(k) plan with employer matching
- Flexible, remote-first work environment
- Home office stipend and technology support
- Generous paid time off and sick leave
- Opportunities for professional growth and advancement
Related Guides
Related Categories
Related Job Pages
More Data Analyst Jobs
Game Data Analyst
SOFTGAMESWe are an instant gaming company. We develop casual, truly social games that can be played instantly across all devices.
• Analyze player journeys, game mechanics, and engagement patterns to guide game development and feature design. • Conduct deep-dive investigations and exploratory analyses of KPIs to uncover growth opportunities and friction points. • Communicate findings clearly through impactful visualizations and concise storytelling tailored to stakeholders. • Collaborate with stakeholders to define success metrics, experiment frameworks, and data needs. • Design and execute experiments (e.g., AB tests) based on player insights and team priorities. • Drive improvements to our BI ecosystem and data pipelines to support scalable, product-focused analytics. • Own the full analytics cycle: from identifying questions to delivering insights and driving decisions. • Proactively identify trends, anomalies, and emerging behaviors through ongoing monitoring and analysis. • Contribute to a culture of data curiosity and excellence by supporting data democratization across teams. • Apply a product-centric mindset — focusing on delivering business value, not just tasks or reports.
Director, Data Analytics
Pearson VUEThe potential of every professional. The promise of every industry.
• Set the vision & roadmap for enterprise analytics across Higher Ed, K12, and Early Career • Raise the bar on integrity & consistency, establishing standards for data quality, reporting, and analytical best practices • Evolve our analytics stack in partnership with Pearson’s data teams • Be the executive thought partner who translates data into strategy for senior leaders • Deliver decision‑ready insight: advanced analytics/models to surface market & customer trends • Build data fluency across the business
• Use SQL and other analytical tools to conduct in-depth analysis of Mercury’s customers, transactions, alerts, TM rules, risk ratings, and more. • Use data-driven methods to improve, design, implement, and maintain Mercury’s FCC models, including transaction monitoring, sanctions screening, customer risk scoring, and relevant alert models. • Develop bespoke transaction monitoring rules designed to address Mercury’s specific AML risk. • Partner with Compliance, Product, and Data leaders to translate regulatory requirements into effective analytical frameworks. • Know how to tell stories with data, enabling people to understand the output and meaning of analytics activities in a clear, compelling manner. • Understand both the what and the why of FCC analytics – what are we looking for and why does it matter. • Develop and maintain detailed documentation on the configuration of FCC models – scenarios, thresholds, segments, tuning, etc. – and any changes made to those configurations over time. • Assist with evaluating and tuning existing detection models and rules to reduce false positives while maintaining regulatory rigor. • Develop data-driven methods to identify new typologies, emerging risks, and evolving financial crime trends. • Partner with Model Risk Management to support validation and performance monitoring of models to ensure compliance with internal and regulatory standards.



