TixelJobs
P
Phizenixvia Greenhouse

Sr. Data Engineer, Data Analytics & Reporting

San Francisco, CA (Onsite)Posted 6d ago
Data EngineerSeniorFull-time

Not sure if you're a good fit?

Upload your resume and TixelJobs AI will compare it against Sr. Data Engineer, Data Analytics & Reporting at Phizenix. Get a match score, missing keywords, and improvement tips before you apply.

Free preview · Your resume stays private

About the Role

 

Client is looking for a Sr. Data Engineer to lead the Data Analytics & Engineering function supporting our portfolio. You will define and execute the data and analytics strategy that enables trusted insights, build reporting & analytics that will supports decision-making across business functions across. This role blends strategic data leadership, data engineering and reporting experience, and strong business partnership, with accountability for delivering scalable, secure, and consumer.

Key Responsibilities

  • Architect, build, and optimize scalable enterprise data solutions on Snowflake, ensuring performance, reliability, and security across the data ecosystem.
  • Design and maintain modern data warehouse, data mart, and semantic layer architectures that support trusted, business-ready analytics.
  • Develop and manage robust ELT/ETL pipelines using FiveTran, dbt, Airflow, and related technologies to deliver high-quality, governed data.
  • Establish data quality, observability, lineage, monitoring, and governance frameworks that ensure accuracy and trust in enterprise data assets.
  • Create and manage semantic models that standardize business metrics, KPIs, and reporting definitions across the organization.
  • Partner with business, analytics, and technology stakeholders to translate complex requirements into scalable data products and self-service analytics solutions.
  • Design and deliver executive dashboards, reports, and visual analytics in Power BI that drive strategic and operational decision-making.
  • Collaborate with marketing, DTC, Digital Product, Commercial teams, and clean room partners to enable privacy-safe data sharing, audience insights, attribution, and customer analytics.
  • Lead data integration and modeling efforts across customer, digital, retail media, advertising, and enterprise platforms to create a unified view of business performance.
  • Champion engineering excellence through architecture leadership, best practices, mentoring, innovation, and continuous improvement of the modern data platform.
  • Establish and co-lead the Unilever Prestige Data Governance Council with brand technology leaders to establish data governance and quality frameworks.
  • Partner with Security, Privacy, and Legal teams to ensure compliance with data privacy, access controls, retention, and regulatory requirements.

Qualifications

  • 8+ years of experience in Data Engineering, Analytics Engineering, Business Intelligence, or related fields.
  • Deep expertise with Snowflake architecture, performance optimization, security, and data modeling.
  • Proven experience building enterprise data warehouses and dimensional models.
  • Strong experience designing and implementing semantic models and business metric layers.
  • Hands-on expertise with Power BI, including data modeling, dashboard development, and enterprise reporting.
  • Experience building and maintaining ELT/ETL pipelines using FiveTran and similar data integration platforms.
  • Advanced SQL skills and strong understanding of data transformation frameworks.
  • Experience working with cloud-based data ecosystems.
  • Strong understanding of data governance, privacy, security, and compliance principles.
  • Experience partnering with business stakeholders and translating requirements into scalable data solutions.

What Success Looks Like - In your first year, you will:

  • Elevate Client's Snowflake environment into a trusted, scalable enterprise data platform.
  • Establish standardized semantic models and KPI definitions across the organization.
  • Deliver executive reporting experiences that drive strategic decisions.
  • Expand privacy-safe data collaboration capabilities through clean room integrations.
  • Improve data accessibility, quality, reliability, and self-service adoption.
  • Create a foundation for advanced analytics, AI, and future data product innovation.

 

Share