TRANZACT logo
TRANZACT

TRANZACT is a leading direct-to-consumer insurance services business, specializing in the distribution of Medicare Advantage, Medicare Supplement and Life & Supplemental insurance policies. Focus on leveraging a highly skilled team of over 3,000 professionals Work with some of America’s largest insurance brands Diverse team of analysts, writers, engineers, designers, business leads, data scientists and sales professionals Recognized and awarded by some of the biggest names in the industry Culture based on the principle of “Be Real” – being genuine, keeping your word, and making tough decisions Entrepreneurial and fast-paced environment that empowers people

Head of Data Engineering

Data EngineerData EngineerFull TimeRemoteLeadTeam 1,001-5,000

Location

United States

Posted

4 days ago

Salary

$200K / year

Seniority

Lead

Job Description

Head of Data Engineering

TRANZACT

Role Description We are hiring a hands-on data engineering leader to lead and scale TRANZACT's data engineering teams and pioneer a new AI-first data engineering discipline—accelerating the velocity, quality, and business impact of everything we build on data. You will own the architecture, delivery, governance, and security of our modern data platform built on Databricks and PostgreSQL, while embedding AI into how our teams design, build, and operate data systems. This role combines strategic platform ownership with sleeves-rolled-up execution and people leadership. What You'll Own (Systems-Level Outcomes) - Define and evolve the end-to-end data platform strategy across ingestion, transformation, storage, and serving—anchored on Databricks (Lakehouse, Delta, Unity Catalog) and PostgreSQL—with production-grade reliability and cost efficiency. - Establish an AI-first data engineering practice: standard patterns, SDKs, and golden paths that use AI to accelerate pipeline development, testing, documentation, and operations across teams. - Stand up enterprise-grade data governance and data security: cataloging, lineage, access controls, data quality, PII handling, and policy enforcement across the platform. - Build and lead high-performing data engineering teams—hiring, mentoring, and setting the technical bar—while driving measurable improvements in delivery velocity and platform trust. - Uplift the broader Engineering and Data organizations by sharing reusable components, best practices, and self-service capabilities that reduce bottlenecks and vendor dependency. - Serve as the accountable leader for critical data initiatives, driving requirements → architecture → implementation → launch → post-launch learning. Key Responsibilities - Architect scalable, reliable data pipelines and platform services on Databricks and PostgreSQL, supporting batch and streaming workloads across marketing, sales, and servicing domains. - Define and roll out an AI-first engineering workflow—leveraging AI coding assistants, agentic tooling, and automated eval/QA gates—to accelerate data engineering outcomes without compromising quality or security. - Establish data governance standards: Unity Catalog (or equivalent), lineage, data contracts, freshness and quality SLAs, and asset lifecycle management. - Own data security posture in partnership with Security and Compliance: role-based access, audit trails, encryption, PII/PHI handling, and regulatory alignment appropriate to insurance data. - Set engineering standards and review designs, PRs, data models, and architecture; drive adoption through documentation and enablement. - Lead vendor and tooling evaluation, and make build/buy/insource recommendations aligned to unit economics, reliability, and IP strategy. - Recruit, mentor, and develop engineers; host tech talks and cultivate a culture of ownership, experimentation, and continuous improvement. Success Profile (6–12 Months) - The data platform reliably supports key production use cases with clear SLOs, runbooks, and cost visibility. - An AI-first engineering practice is established, with reusable templates and golden paths measurably increasing delivery velocity across teams. - Data governance and data security controls are standardized, auditable, and enforced across the platform. - Teams are staffed, aligned, and performing, with healthy delivery and quality signals. - At least one critical data initiative is led to launch with documented business impact and a retrospective feeding the platform roadmap. Qualifications - 10+ years in data engineering or related distributed systems; 4+ years leading and building data engineering teams. - Proven, hands-on experience leveraging AI to accelerate data engineering outcomes (e.g., AI coding assistants, agentic tooling, LLM-assisted pipeline development, testing, or operations). - Deep expertise with Databricks or equivalent (Lakehouse, Delta Lake, Spark, Unity Catalog) and PostgreSQL in production. - Demonstrated ownership of data governance and data security programs: cataloging, lineage, access control, data quality, and PII handling. - Strong engineering fundamentals in Python and SQL; experience designing scalable ETL/ELT and streaming architectures. - Track record of setting technical standards and delivering complex data initiatives from architecture through launch. - Excellent communicator and mentor, effective with stakeholders across technical and non-technical domains. - Bachelor's degree in Computer Science or related field required. Preferred Qualifications - Master's degree in Computer Science, Data Engineering, or a related field. - Experience in insurance, healthcare, or other regulated, data-sensitive industries. - Experience with Apache Airflow (or comparable orchestration frameworks) and SQL Server in production. - Cloud-native experience on Azure and/or AWS, with strong infrastructure-as-code practices (e.g., Terraform, Bicep, CloudFormation). - Familiarity with data observability, dataset versioning, and approval/quality gates. - Exposure to ML/AI platform enablement (feature stores, model registries) supporting data science teams. How We Work - AI-first: we use AI to accelerate engineering while protecting proprietary data and process IP. - Agile and iterative: prove value quickly, then scale with governance and reliability. - Responsible by default: governance, lineage, permissions, security, and continuous evaluation built in from the start. Compensation and Benefits - The base salary compensation being offered for this role is $200,000 USD per year. - This role is also eligible to participate in the annual bonus program. Company Benefits - Health and Welfare Benefits: Medical (including prescription coverage), Dental, Vision, Health Savings Account, Health Care and Dependent Care Flexible Spending Accounts, Group Accident, Group Critical Illness, Life Insurance, AD&D, Group Legal, Identify Theft Protection, Wellbeing Program and Work/Life Resources (including Employee Assistance Program). - Leave Benefits: Paid Holidays, Annual Paid Time Off (includes state/local paid leave where required), Short-Term Disability, Long-Term Disability, Other Leaves (e.g., Bereavement, FMLA, ADA, Jury Duty, Military Leave, and Parental and Adoption Leave). - Retirement Benefits: Savings Plan with annual nonelective company contribution. TRANZACT is an Equal Opportunity Employer. We celebrate diversity and are committed to creating an inclusive environment for all employees. Equal Opportunity Employer/Disability/Vet

Related Categories

Related Job Pages

More Data Engineer Jobs

YCharts logo

Software Engineer, Data

YCharts

Enabling smarter investment decisions and better client communications.

Data Engineer4 days ago
Full TimeRemoteTeam 51-200H1B No Sponsor

• Work with technologies that ensure our data pipeline efficiently maintains and calculates data for the 7 million+ securities in our universe. • Work on features that ensure financial data is consistent, reliable, timely and accurate by importing data from third party data providers and performing custom calculations on this imported data, with day-to-day emphasis on database load management, caching strategies, memory efficiency, and query optimization. • Write code (and unit tests!) in Python and the Django framework to implement complex backend features. • Use tools like Airflow to build / enhance financial data pipelines for over 7 million securities. • Make use of pandas and asynchronous task tools like celery to efficiently calculate 4,000+ unique data points for each security. • Profile and optimize database queries — analyze query plans, design effective indexes, and eliminate N+1s and slow paths that don't hold up under production load. • Manage database load — reason about read/write patterns, connection usage, replica strategy, and batching to keep the data tier healthy as volume grows. • Design and tune caching layers to reduce redundant computation and database pressure while keeping data fresh and correct. • Design robust, scalable data models that account for the structure, type, and volume of data to store, and how it will be queried. • Investigate and resolve performance regressions and incidents — using metrics, profiling, and monitoring to find root causes. • Design, plan, estimate, and ticket features that are scoped by our product team. • Perform code reviews for other engineers on the team. • Document the work you have done both in repo as well as outside of the repo for future engineers. • Collaborate with other engineers both verbally and in writing to plan, design, and build a world-class financial research platform.

New York
$120K - $160K / year
Full TimeRemoteTeam 10,001+H1B Sponsor

• Partner with Enterprise Architects, Senior Architects, and cross functional teams, including business stakeholders, to shape solution architectures aligned to a unified IT data strategy. • Contribute to Empower’s technology roadmap by documenting target state architectures, reference architectures, and key dependencies for supported initiatives. • Design and support modernization and migration of complex systems to scalable, secure, and cost optimized cloud architectures, working with delivery teams through implementation. • Evaluate and prototype new technologies and applications, challenge existing approaches constructively, and provide input into business cases and recommendations. • Apply and help operationalize architectural standards, best practices, and governance expectations, supporting consistent adoption through guidance and enablement. • Collaborate closely with business and engineering teams to design end to end solutions that meet strategic, technical, and operational objectives. • Provide architectural guidance in process design, system orchestration, and enterprise integration to enable cohesive and efficient technology ecosystems. • Champion security, resilience, and scalability as core design principles across data platforms and data solutions. • Contribute to architecture discipline maturity by producing reusable patterns, decision documentation, and lessons learned that improve consistency and delivery speed. • Support full stack development teams through solution design and implementation, improving long term scalability, performance, and cost outcomes.

United States
$114K - $165.3K / year
Douro Labs logo

Staff Engineer, Market Data

Douro Labs

Douro Labs is the company behind Pyth Pro, real-time market data infrastructure that distributes institutional-grade price feeds from primary sources directly to exchanges, market makers, and trading firms. Pyth Pro currently provides the market data behind many major cryptocurrency exchanges and prediction markets, with a growing base of institutional users relying on it daily.

Data Engineer4 days ago
Full TimeRemoteTeam 11-50H1B No Sponsor

• Build and maintain core market data infrastructure in Rust • Work through the practical problems specific to real-time market data: cross-exchange pricing differences, data quality, latency • Bring real market data or trading systems knowledge into engineering decisions • Communicate clearly with the rest of the team as the group grows • Take on leadership of a small team over time, not immediately

Europe

Data Engineer Big Data

Experis/Manpower Group

En Experis somos especialistas en servicios profesionales y gestión de proyectos IT orientados a tres áreas clave: Business Transformation, Cloud & Infrastructure, Enterprise Applications. Combinamos tecnología, talento y formación para ofrecer soluciones end-to-end a clientes de todo el país. Contamos con más de 1.800 profesionales IT en España y presencia en 54 países.

Data Engineer4 days ago

Role Description Buscamos un/a Data Engineer con experiencia en entornos Big Data y Cloud para incorporarse a un proyecto estable donde participarás en el desarrollo, mantenimiento y evolución de soluciones de procesamiento de datos a gran escala. - Desarrollar y mantener procesos ETL en entornos Big Data. - Participar en el mantenimiento correctivo y evolutivo de plataformas de datos. - Trabajar con grandes volúmenes de información utilizando PySpark y Python. - Gestionar incidencias, cambios y releases. - Participar en despliegues y subidas a producción. - Colaborar con equipos multidisciplinares en entornos ágiles. - Contribuir a la mejora continua de los procesos y soluciones de datos. Qualifications - Titulación superior en: Ingeniería Informática, Telecomunicaciones, Matemáticas, Estadística o titulaciones afines. - Mínimo 3 años de experiencia con: - PySpark - Python - SQL - Experiencia sólida trabajando en entornos Cloud: - Azure Databricks o - AWS - Nivel de inglés profesional. Requirements - Certificaciones Cloud en Azure o AWS. - Experiencia con ServiceNow. - Conocimientos de procesos ITSM. - Experiencia en gestión de incidencias, cambios y releases. - Conocimientos de GitHub y control de versiones. - Experiencia previa en sector bancario o financiero. - Experiencia trabajando bajo metodologías Agile. Benefits - Proyectos con tecnologías punteras. - Acompañamiento de un Mentor desde tu incorporación. - Formación continua: cursos tech, idiomas y soft skills. - Retribución flexible y revisión salarial por desempeño. - Estabilidad laboral y posibilidad de rotación entre proyectos. - Equipos diversos, multiculturales y orientados a la excelencia.

Spain