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Insurance Data Engineer Jobs in Columbus, OH (NOW HIRING)

Prefer bachelor's degree in computer science, data science, engineering, or a related field, or equivalent practical experience. * Insurance industry experience, including familiarity with data ...

Previous regulatory reporting or insurance experience * Working knowledge of Azure DevOps or other ... Data Modeling experience * Strong analytical and problem-solving skills * Ability to set priorities ...

This hands-on role requires technical depth in Python programming, data science workflows, and a ... Experience in financial services, banking, or insurance sectors preferred Preferred Skills ...

Lead Data Privacy Engineer

Columbus, OH · On-site

$95K - $126K/yr

POSITION SUMMARY We are seeking a Lead Data Privacy Engineer to assist in leading our Data ... Experience in healthcare, insurance, or highly regulated industries. * Strong analytical abilities ...

Sr Applied AI Data Scientist

Columbus, OH · On-site

$110K - $166K/yr

Collaborate closely with AI engineers, data engineers, platform, security, and IT to ensure ... Develops deep understanding of insurance business processes, data, and regulatory constraints ...

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Insurance Data Engineer information

See Columbus, OH salary details

$43K

$125.3K

$171.4K

How much do insurance data engineer jobs pay per year?

As of Jun 9, 2026, the average yearly pay for insurance data engineer in Columbus, OH is $125,293.00, according to ZipRecruiter salary data. Most workers in this role earn between $110,600.00 and $132,800.00 per year, depending on experience, location, and employer.

What are Insurance Data Engineers?

Insurance Data Engineers are professionals who design, build, and maintain data systems that support the needs of insurance companies. They are responsible for collecting, organizing, and processing large amounts of data from various sources to enable accurate risk assessment, pricing, claims analysis, and regulatory compliance. Their work helps insurers make data-driven decisions, improve efficiency, and enhance customer experiences by leveraging modern data technologies.

What are the key skills and qualifications needed to thrive as an Insurance Data Engineer, and why are they important?

To thrive as an Insurance Data Engineer, you need strong expertise in data modeling, ETL processes, and a solid understanding of insurance data structures, typically supported by a degree in computer science, data engineering, or a related field. Proficiency with SQL, Python, big data platforms (like Hadoop or Spark), and experience with cloud data solutions such as AWS or Azure are commonly required, along with certifications like AWS Certified Data Analytics or Google Cloud Data Engineer. Excellent problem-solving, communication, and collaboration skills help you bridge technical and business needs while ensuring data quality. These abilities are essential for building robust data pipelines and enabling accurate data-driven decision making within insurance organizations.

What is the difference between Insurance Data Engineer vs Data Analyst in the insurance industry?

AspectInsurance Data EngineerData Analyst
Required CredentialsBachelor's in Computer Science, Data Engineering certificationsBachelor's in Statistics, Data Analysis certifications
Work EnvironmentDevelops data pipelines, manages databases, works with big data toolsInterprets data, creates reports, visualizes insights
Employer & Industry UsageInsurance companies, tech firms in insuranceInsurance firms, consulting agencies, analytics companies

Insurance Data Engineers focus on building and maintaining data infrastructure, while Data Analysts interpret data to provide insights. Both roles are essential in the insurance industry but serve different functions in data management and analysis.

How does an Insurance Data Engineer typically collaborate with actuarial and underwriting teams?

Insurance Data Engineers work closely with actuarial and underwriting teams to ensure that the data infrastructure supports accurate risk assessment and pricing models. They often translate business requirements from these teams into technical specifications, build data pipelines to source and clean relevant data, and assist in implementing predictive analytics tools. Regular communication and collaboration are essential, as data engineers help bridge the gap between raw data and actionable insights for decision-making. This teamwork not only streamlines workflow but also enables continuous improvement of insurance products and customer experience.
What are popular job titles related to Insurance Data Engineer jobs in Columbus, OH? For Insurance Data Engineer jobs in Columbus, OH, the most frequently searched job titles are:
What job categories do people searching Insurance Data Engineer jobs in Columbus, OH look for? The top searched job categories for Insurance Data Engineer jobs in Columbus, OH are:
What cities near Columbus, OH are hiring for Insurance Data Engineer jobs? Cities near Columbus, OH with the most Insurance Data Engineer job openings:
AVP, AI Data Engineering, Customer Data Ecosystem

AVP, AI Data Engineering, Customer Data Ecosystem

The Hartford

Columbus, OH • On-site, Remote

$110K - $132K/yr

Full-time

Posted 13 days ago


The Hartford rating

8.8

Company rating: 8.8 out of 10

Based on 103 frontline employees who took The Breakroom Quiz

53rd of 260 rated insurance


Job description

AVP Data Engineering - GE05AE

We're determined to make a difference and are proud to be an insurance company that goes well beyond coverages and policies. Working here means having every opportunity to achieve your goals - and to help others accomplish theirs, too. Join our team as we help shape the future.

As an AVP of AI Data Engineering for Customer Data Ecosystem (CDE), you will be responsible for defining and advancing the consumer AI-ready data architecture that enables agentic analytics, GenAI applications, and differentiated customer and operational experiences. This role ensures data foundations, context, and engineering patterns are scalable, secure, reusable, and aligned across CDE, applied AI, and enterprise architecture partners. This role will lead a small, high-leverage team of architects, semantic engineers, and innovation team, and serves as the senior technical authority for AI-ready data design within CDE.

This role can have a Hybrid or Remote work schedule. Candidates who live near one of our office locations will have the expectation of working in an office 3 days a week (Tuesday through Thursday) Candidates who do not live near an office will have a remote work arrangement, with the expectation of coming into an office as business needs arise. Must be eligible to work in the US without company sponsorship.

Primary Job Responsibilities

  • Strategy and Execution: Lead the strategy and execution of complex and large Data and Analytics portfolio.

  • Architecture and Solution: Ensure data architecture and solutions align with enterprise-wide standards for Data, AI and Analytics.

  • Effectively communicate strategy, execution progress, and outcomes to diverse stakeholders and promote data capabilities through thought leadership and presentations.

  • AI Data Engineering leader responsible for Implementing AI data pipelines that integrate structured, semi-structured, and unstructured data to support AI and Agentic solutions.

  • Real-Time Data Streaming: Design, build and maintain scalable real-time data pipelines for efficient ingestion, processing, and delivery.

  • Define and operationalize ontologies, context graphs, and knowledge graphs across domains to power reasoning, explainability, and decision intelligence.

  • Lead the design and execution of enterprise-scale semantic layers to standardize business meaning and enable trusted analytics, AI, and Agentic use cases.

  • Enable semantic-first AI and Agentic analytics, ensuring LLMs and agents can consume governed business context, metrics, and rules.

  • Drive production-scale execution of semantic and knowledge platforms with strong standards for performance, governance, security, and lifecycle management.

  • Drive best practices in AI data engineering by establishing standardized processes, promoting cutting-edge technologies, and ensuring data quality and compliance across the enterprise.

  • Leadership: Build, mentor, and lead a high-performing team including Directors, Business data analysts, Data engineers and Release train engineers.

  • Drive efficiency and Productivity: Identify and champion AI augmented productivity improvements across the end-to-end data management lifecycle. This includes researching and implementing innovative solutions such as AI-driven auto-generation of data pipelines, advanced DevOps practices for data and automated data quality frameworks.

  • Technology Evaluation & Adoption: Stay current with emerging trends in Agentic AI and data engineering and lead proof-of-concepts and early pilots for emerging data and AI augmented technologies to accelerate speed to market.

  • Data Governance, Stewardship and Quality: Define and implement robust data management frameworks to ensure successful adoption of Enterprise Data Governance and Data Quality practices.

  • Budget Management: Effectively manage the budget and financials for the portfolio.

  • Develop deep partnerships and alignment with the portfolio and agile value stream frameworks. Experience with Agile at Scale and iterative development through cross-functional teams.

  • Partners with Technology, Data, AI COE, Applied AI and Architecture teams to influence technology, data, platform and tooling strategy.

  • Evangelize Agentic Data Engineering, driving adoption through patterns, playbooks, and real-world deployments across the enterprise.

Skills
  • Mastery level data engineering and architecture skills, including deep expertise in data architecture patterns, lakehouses, data integration, data domains, data products, conversational business intelligence, and cloud technology capabilities.

  • Mastery in implementing scalable AI driven data systems supporting agentic solutions (AWS Lambda, S3, EC2, Langchain, Langgraph, MCP, A2A).

  • Technical expertise in LLMs, AI platforms, prompt engineering, LLM optimization, Retrieval-Augmented Generation (RAG) architectures and vector database technologies (Vertex AI, Postgres, OpenSearch, Pinecone etc.).

  • Experience in multi cloud environment.

  • Experience in Lang chain, AI agents, Vertex AI and Google Agent ecosystem.

  • Strong experience with the design and development of complex data ecosystems leveraging next-generation cloud technology stack across AWS or GCP Cloud and Snowflake.

  • Exceptional presentation and verbal/written communication skills; must be able to communicate effectively at all levels across the organization.

  • Ability to lead successfully in a lean, agile, and fast-paced organization, leveraging Scaled Agile principles and ways of working.

  • Excellent negotiation, influencing, and conflict resolution skills; adept at building strong cross-functional relationships.

  • Preferred experience in the Property & Casualty insurance industry.

Education, Experience, Certifications and Licenses
  • Bachelor's or Master's degree in Computer Science, Data Science or a related field.

  • 12+ years in data engineering, data management and building large-scale data ecosystems.

  • 7+ years in senior leadership roles managing complex data and AI portfolio with hands-on experience.

  • Expertise in real-time data streaming, agentic frameworks, Data APIs, vector stores, and RAG architecture, self-serve analytics and AI.

  • Deep expertise in semantic layer architecture, ontology modeling, and knowledge graph design at enterprise scale.

  • Experience integrating knowledge graphs with LLMs, RAG pipelines, vector stores, and Agentic frameworks.

  • Strong understanding of context-aware data engineering and semantic interoperability.

  • Proven ability to move from strategy pilot scaled enterprise capability.

  • Strong executive influence and thought leadership in Agentic analytics and AI native data engineering.

Compensation

The listed annualized base pay range is primarily based on analysis of similar positions in the external market. Actual base pay could vary and may be above or below the listed range based on factors including but not limited to performance, proficiency and demonstration of competencies required for the role. The base pay is just one component of The Hartford's total compensation package for employees. Other rewards may include short-term or annual bonuses, long-term incentives, and on-the-spot recognition. The annualized base pay range for this role is:

$182,000 - $273,000

Equal Opportunity Employer/Sex/Race/Color/Veterans/Disability/Sexual Orientation/Gender Identity or Expression/Religion/Age

About Us|Our Culture|What It's Like to Work Here|Perks & Benefits


What The Hartford employees say

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Benefits

Hours and flexibility

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About Hartford

Sourced by ZipRecruiter

Hartford Financial Services Group, widely recognized as The Hartford, is a renowned company based in Hartford, CT, US. Established in 1810, it has evolved into an industry leader in the insurance and financial services sector, proudly serving more than one million businesses in the US. The Hartford is committed to offering a gamut of insurance products that include homeowners, automobile, and business insurance as well as employee benefits and mutual funds. The company’s core values revolve around customer-focused innovations, diversity and inclusion, and ethical dealings that have earned them a customer-centric reputation. This shapes their mission which revolves around aiding their clients to overcome unforeseen obstacles and enhancing their wealth over time. Among the company's noted accomplishments is being consistently listed among the World's Most Ethical Companies, a testament to their unwavering commitment towards responsible business practices.

Industry

Finance and insurance

Company size

10,000+ Employees

Headquarters location

Hartford, CT, US

Year founded

1810

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