This role is remote (US-based; east coast preferred)
Company Overview
Join a dynamic team that's redefining consumer data analytics. We empower top investment firms and global consumer and corporate brands with cutting-edge insights into consumer spending, leveraging privacy-compliant data across geographies. Our real-time intelligence and merchant-level benchmarks give clients a competitive edge—and you'll be at the forefront of it all.
Role Summary
We're looking for a seasoned VP of Data Engineering to lead our data engineering team and take ownership of the infrastructure that powers everything we do. Because data is our business, this role carries significant weight: the reliability, scalability, and quality of our data pipelines directly impacts our customers and our revenue.
You'll manage ~15 engineers across 3 data engineering teams, set technical direction across our GCP-based data platform, and work closely with data operations, product, and commercial teams to ensure we can continuously ingest, process, and deliver alternative datasets at scale — with the rigour that financial services clients demand.
Your Main Responsibilities
Team Leadership
Lead, mentor, and grow a team of data engineers, building a culture of ownership, craft, and continuous improvement
Own hiring, onboarding, and performance management for the data engineering function
Act as a technical role model — setting high standards while remaining approachable and supportive
Data Platform & Infrastructure
Own the architecture, reliability, and evolution of our GCP data platform — including BigQuery, Cloud Composer/Airflow, Dataflow, Pub/Sub, and GCS
Design and maintain robust, scalable pipelines for ingesting, transforming, and serving diverse alternative datasets (web, CPG, transaction data, etc.)
Drive infrastructure best practices: cost optimisation, observability, incident response, and disaster recovery
Ensure data security, access controls, and compliance standards appropriate for regulated financial services clients
Strategic & Cross-functional
Translate business priorities and client requirements into a clear, deliverable technical roadmap
Partner with data operations, data science, and product teams to accelerate dataset onboarding and expand platform capabilities
Represent data engineering at the leadership level — contributing to company strategy and advocating for data quality as a core business value
We’re looking for someone with
Experience
10+ years in data engineering, with at least 3 years in a leadership or management role (managing managers and teams)
Proven experience building and operating large-scale data pipelines on Google Cloud Platform
Experience in fintech, alternative data, financial data, or another data-as-a-product environment strongly preferred
Track record of delivering high-quality data infrastructure in a fast-moving, commercially sensitive context
Technical Skills
Deep expertise across the GCP data stack: BigQuery, Dataflow, Pub/Sub, GCS, Cloud Composer, and related services
Hands-on experience with dbt (Core or Cloud) for scalable transformation layer design, including modeling patterns, testing frameworks, and documentation standards
Strong understanding of data pipeline design, ELT/ETL patterns, data modelling, and workflow orchestration
Solid grasp of data governance, quality frameworks, and security best practices
Familiarity with the unique challenges of alternative data — diverse formats, inconsistent schemas, high ingestion volumes, and strict data provenance requirements
Practical experience with infrastructure-as-code tooling (Terraform and/or Pulumi) for provisioning and managing cloud resources; able to set IaC standards and review infrastructure changes with the same rigour applied to application code
Strong proficiency in Python and SQL; comfortable reviewing code and setting engineering standards across the team.
Leadership & Soft Skills
Excellent communicator with the ability to engage engineers, data scientists, and commercial stakeholders alike
Strong hiring instincts and a genuine passion for developing people
Pragmatic and decisive — able to balance technical rigour with commercial urgency
High ownership mindset; comfortable operating with autonomy in a high-stakes environment
Nice to Have
Experience supporting data science or ML teams with feature engineering infrastructure
Familiarity with data licensing, provenance tracking, or data vendor management
Experience with data mesh or data-as-a-product organisational models
Open source contributions or published technical work
Why Join Consumer Edge
At Consumer Edge, the data engineering team isn't a support function - it's a core part of how we deliver value to clients. You'll be joining at a critical stage of growth, with the opportunity to shape the platform, the team, and the standards that the entire business depends on.
We offer a competitive salary, an extensive benefits package including 401(k) match, paid parental leave, flexible and generous time off, work-from-home flexibility, and a vibrant work environment conducive to professional growth and innovation. Join our team and play a significant role in driving data-driven decision-making, shaping the future of global consumer insights.
Compensation and Benefits
The annual base salary for this role is between $270,000– $300,000 based on experience, with the opportunity for a performance-based bonus, company equity, 401(k) matching, work-from-home flexibility, and subsidized health benefits.
Note Consumer Edge is currently hiring employees who reside in the following states or in Washington, DC: CA, CO, CT, FL, ID, IL, LA, MA, MD, NC, NJ, NY, PA, RI, TN, TX, UT, VA, WA, WI
#LI-Remote
#LI-DN