1

Data Engineer Jobs in Ohio (NOW HIRING)

Data Engineer

Columbus, OH ยท On-site

$110K - $132K/yr

Data Engineer Full Time Columbus, OH About Andhealth AndHealth is a healthcare technology company created to radically improve access and outcomes for the most challenging chronic health conditions.

Data Engineer

Columbus, OH ยท On-site

$110K - $132K/yr

Data Engineer Full Time Columbus, OH About Andhealth AndHealth is a healthcare technology company created to radically improve access and outcomes for the most challenging chronic health conditions.

Senior Data Engineer

Cincinnati, OH

$101K - $138K/yr

Sr. Data Engineer for Cincinnati OH Will work on the projects from inception to end using Azure cloud technologies like PySpark, Spark SQL, Azure Data Lake Storage, Azure Data Factory, Azure SQL ...

Data Engineer

Columbus, OH ยท On-site

$110K - $132K/yr

They are seeking a Data Engineer to build and maintain data ingestion systems, ensure data quality, and manage data pipelines that support analytics and operational workflows. Responsibilities : โ€ข ...

Data Engineer

Columbus, OH ยท On-site

$110K - $132K/yr

Kimball Midwest, a national distributor of maintenance, repair, and operation products, is searching for a Data Engineer to join our IT team! We are looking for someone who is driven, passionate ...

Data Engineer III

Cincinnati, OH

$109K - $131K/yr

USC/GC We are seeking an experienced Data Engineer III. The ideal candidate will be responsible for working with business analysts, data engineers and upstream teams to understand impacts to data ...

Data Engineer

Cincinnati, OH ยท On-site

$109K - $132K/yr

Job Summary Our corporate activities are growing rapidly, and we are currently seeking a full-time, office-based Data Engineer to join our Information Technology team. This position will work on a ...

Azure Data Engineer

Cincinnati, OH ยท On-site

$111K - $134K/yr

Data Engineer Contract: 12 Months (potential for conversion/extension) Job Location: Cincinnati, OH (3 days' on-site required) Note: Relocation will work for this role. Candidate have to relocate at ...

Data Engineer

Hudson, OH

$104K - $125K/yr

We're looking for a Data Engineer to join our Data & Analytics team and take ownership of the data infrastructure that powers our internal analytics and reporting capabilities. You'll be the primary ...

Data Engineer

Mason, OH ยท On-site

$55 - $60/hr

Pay Range: $55/hr - $60/hr Requirement/Must Have: * 7+ years of experience in Data Engineering or related roles. * Strong hands-on experience with Snowflake (SnowSQL, Snowpipe, Streams, Tasks, Data ...

Data Engineer

Hudson, OH ยท On-site

$104K - $125K/yr

We're looking for a Data Engineer to join our Data & Analytics team and take ownership of the data infrastructure that powers our internal analytics and reporting capabilities. You'll be the primary ...

DATA ENGINEER IV

Cincinnati, OH ยท On-site

$68 - $70/hr

Data Engineer IV Location: Cincinnati, OH - onsite Payrate $70/hr on W2. USC and GC Holder candidates only. TOP SKILLS: Must Have Python SQL Nice To Have AWS Sagemaker DBT Snowflake What You'll Do ...

Azure Data Engineer

Dublin, OH ยท On-site

$110K - $132K/yr

As an individual contributor and Data Engineering owner, you play a key role in shaping a scalable and well-designed data environment, while applying strong engineering judgment and pragmatic ...

New

Data Engineer

Columbus, OH ยท On-site

$110K - $132K/yr

Must-Have Skills 3+ years of data engineering experience -- pipelines, ETL, data modeling in production or research settings Strong Python proficiency (numpy, pandas, Parquet, HDF5 are daily tools ...

Data Engineer

Cleveland, OH ยท On-site

$110K - $133K/yr

Must-Have Skills 3+ years of data engineering experience -- pipelines, ETL, data modeling in production or research settings Strong Python proficiency (numpy, pandas, Parquet, HDF5 are daily tools ...

Data Engineer

Bowling Green, OH ยท On-site

$107K - $129K/yr

Must-Have Skills 3+ years of data engineering experience -- pipelines, ETL, data modeling in production or research settings Strong Python proficiency (numpy, pandas, Parquet, HDF5 are daily tools ...

Data Engineer

Toledo, OH ยท On-site

$112K - $135K/yr

Must-Have Skills 3+ years of data engineering experience -- pipelines, ETL, data modeling in production or research settings Strong Python proficiency (numpy, pandas, Parquet, HDF5 are daily tools ...

GCP Data Engineer

Brooklyn, OH ยท On-site

$107K - $129K/yr

GCP Data Engineer Location: Brooklyn, OH Fulltime position Onsite position JD: * GCP Data Engineer * Experience: * Realtime and batch data integration development experience using GCP services.

Azure Data Engineer

Dublin, OH ยท On-site +1

$110K - $132K/yr

As an individual contributor and Data Engineering owner, you play a key role in shaping a scalable and welldesigned data environment, while applying strong engineering judgment and pragmatic ...

New

Data Engineer

Cincinnati, OH

$109K - $132K/yr

Support programming/software development using Extract, Transform, and Load (ETL) and Extract, Load and Transform (ELT) tools, (dbt, Azure Data Factory, SSIS); * Design, develop, enhance and support ...

next page

Showing results 1-20

Data Engineer information

See Ohio salary details

$42.3K

$123.3K

$168.7K

How much do data engineer jobs pay per year?

As of Jul 13, 2026, the average yearly pay for data engineer in Ohio is $123,321.00, according to ZipRecruiter salary data. Most workers in this role earn between $108,900.00 and $130,700.00 per year, depending on experience, location, and employer.

Is a data engineer a difficult job?

A data engineer role involves designing, building, and maintaining data pipelines and infrastructure, which requires strong programming skills, knowledge of databases, and familiarity with tools like SQL, Python, and cloud platforms. The job can be challenging due to the complexity of managing large-scale data systems and ensuring data quality and security, but it is manageable with proper training and experience.

What is the difference between Data Engineer vs Data Scientist?

AspectData EngineerData Scientist
Primary FocusBuilding and maintaining data pipelines and infrastructureAnalyzing data to extract insights and create models
SkillsSQL, ETL, programming (Python, Java), database managementStatistics, machine learning, data analysis, programming (Python, R)
Work EnvironmentData warehouses, cloud platforms, backend systemsData analysis environments, research labs, visualization tools
Common ToolsApache Spark, Hadoop, Airflow, SQLJupyter, RStudio, Tableau, scikit-learn

Data Engineers focus on creating and maintaining the infrastructure that allows data to be collected, stored, and processed efficiently. Data Scientists analyze this data to generate insights, build predictive models, and support decision-making. While their skills overlap, Data Engineers are more involved in data pipeline development, whereas Data Scientists focus on data analysis and modeling.

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

To thrive as a Data Engineer, you need a strong background in computer science, data modeling, and programming languages such as Python or Java, often coupled with a relevant degree. Familiarity with ETL tools, big data frameworks (like Hadoop or Spark), and cloud platforms (such as AWS or Azure) is typically required, along with certifications like AWS Certified Data Analytics. Strong problem-solving skills, attention to detail, and effective communication set exceptional data engineers apart. These skills and qualities are essential for building robust data pipelines, ensuring data quality, and supporting data-driven decision-making across organizations.

What Does a Data Engineer Do?

The job duties of a data engineer involve helping with the development of systems, software, and infrastructure used to process, store and analyze data. Your responsibilities in this career include working to install data management software. Your employer may expect you to perform maintenance and install updates to all software and systems that they use for data acquisition, management, and analysis. Data engineers also analyze existing data systems to find ways to improve efficiency and accessibility. You then suggest upgrades or changes based on your assessment.

What are Data Engineers?

Data Engineers are IT professionals who design, construct, install, and maintain large-scale processing systems and other infrastructure for collecting, storing, and analyzing data. They build and optimize data pipelines and architectures that allow organizations to efficiently access and use data for business insights. Data Engineers work closely with data scientists, analysts, and other stakeholders to ensure that data is reliable, accessible, and secure. Their responsibilities often include working with databases, cloud platforms, and big data tools.

How do Data Engineers typically collaborate with Data Scientists and Analysts within an organization?

Data Engineers play a crucial role in ensuring that Data Scientists and Analysts have reliable, well-structured data for their projects. This collaboration often involves building and maintaining data pipelines, optimizing data storage solutions, and troubleshooting data quality issues. Regular communication and agile teamwork are common, with Data Engineers frequently participating in meetings to understand analytical requirements and adjust data processes accordingly. By working closely together, these teams can quickly iterate on data models and deliver actionable insights to drive business decisions.

What does a data engineer actually do?

A data engineer designs, builds, and maintains the infrastructure and pipelines that enable organizations to collect, store, and process large volumes of data. They work with tools like SQL, Python, and cloud platforms to ensure data is accessible, reliable, and ready for analysis by data scientists and analysts.

Is a data engineer entry level?

Data engineering is typically an intermediate to senior role that requires experience with programming, databases, and data pipelines. Entry-level positions may be available for those with relevant internships, certifications, or strong foundational skills in SQL, Python, or cloud platforms, but most roles expect prior experience or demonstrated technical competence.

What engineer makes $500,000 a year?

Senior data engineers with extensive experience, advanced skills in big data tools, and certifications can earn salaries approaching or exceeding $500,000 annually, especially in high-cost-of-living areas or within large tech companies. Such compensation often includes bonuses, stock options, and other incentives. These roles typically require strong programming, cloud platform expertise, and a deep understanding of data architecture.
What are the most commonly searched types of Data Engineer jobs in Ohio? The most popular types of Data Engineer jobs in Ohio are:
What cities in Ohio are hiring for Data Engineer jobs? Cities in Ohio with the most Data Engineer job openings:
What are popular job titles related to Data Engineer jobs in OH? For Data Engineer jobs in OH, the most frequently searched job titles are:
Data Engineer

Data Engineer

AndHealth

Columbus, OH โ€ข On-site

$110K - $132K/yr

Full-time

Medical, Dental, Vision, PTO

Posted 21 days ago


Job description

Data Engineer
Full Time
Columbus, OH
ย 

About Andhealth

AndHealth is a healthcare technology company created to radically improve access and outcomes for the most challenging chronic health conditions. We are driven by the goal of making world-class specialty care accessible and affordable to all. We partner with health systems, community health centers, and independent practices to remove barriers to care to ensure all people have access to the care they deserve.

About the Role

We are building the modern data platform that powers AndHealthโ€™s analytics, reporting, operational workflows, product integrations, and AI initiatives. This is a senior, hands-on infrastructure and pipeline engineering role. You will own the systems that ingest, transport, transform, and serve data โ€“ the foundational layer that everything else at AndHealth depends on.
Healthcare data is messy. Partner feeds arrive in inconsistent formats with no warning when schemas change. Source systems span decades of technical debt: flat files, HL7 feeds, proprietary exports, and undocumented APIs. Compliance requirements are strict and non-negotiable. We need someone who has been through this before and knows how to build ingestion and transformation systems that absorb that complexity, so that by the time data reaches the warehouse, it is clean, consistent, and trustworthy.

We expect engineers to leverage AI tools thoughtfully to move faster, and to bring good judgment about where automation helps and where it introduces risk.


What You'll Do:

  • Build and own the ingestion layer. Design scalable frameworks for onboarding new healthcare partner data sources: file-based, API-based, streaming, with standardized validation, error handling, and schema evolution support.ย 
  • Design and maintain production-grade data pipelines that are idempotent, incremental where appropriate, and built to recover gracefully from failures.
  • Build the data quality and observability infrastructure. Implement schema validation, row-count reconciliation, freshness checks, anomaly detection, and alerting at the platform level.
  • Own orchestration, scheduling, and pipeline reliability. Every pipeline has clear SLAs, dependency management, failure alerting, and documented recovery procedures. You build the runbooks, the backfill tooling, and the incident response patterns.
  • Manage the warehouse infrastructure layer. Performance tuning, partitioning and clustering strategies, cost optimization, access control, and environment management in BigQuery.ย 
  • Translate complex healthcare source systems into clean, standardized raw and staging datasets that analytics engineers and analysts can build on with confidence. This includes messy, semi-structured partner data from EHRs, claims systems, pharmacy platforms, and billing feeds.
  • Build reusable ingestion and transformation frameworks that the team can extend without reinventing the wheel. Think config-driven pipelines, shared libraries, and standardized patterns.
  • Manage integrations with healthcare partners and external data sources, including HRSA, CMS, Medicaid, FDA Orange Book, and federal drug pricing reference datasets. Own the ingestion contracts, handle schema drift, and ensure no data is silently lost or corrupted.
  • Ensure HIPAA-compliant security, privacy, and access controls throughout the data lifecycle, including PII detection and masking, role-based access, encryption, and audit logging.
  • Define and enforce data contracts between source systems and the data platform, and between the platform and downstream consumers. When something changes upstream, you know about it before it causes damage.

Education & Experience:

  • Bachelor's degree in Computer Science, Information Systems, Engineering, Mathematics, or a related technical field preferred.

Other Skills & Qualifications:

Required

  • Hands-on data engineering experience, with a track record of building and operating production data systems.
  • Youโ€™ve built ingestion systems from scratch. Youโ€™ve dealt with unreliable source systems, inconsistent file formats, undocumented APIs, and schema changes that arrive without warning. You know how to build frameworks that handle these problems systematically.
  • Strong infrastructure and platform thinking. You make build-vs-buy decisions, evaluate new tooling, and set the standards the rest of the team builds on. Youโ€™ve designed systems, not just contributed to them.
  • Production pipeline engineering with Python: building ETL/ELT workflows, handling file-based and API-based integrations, managing retries and error handling.
  • Advanced SQL skills: complex joins, CTEs, window functions, query optimization, and large-scale transformations. You should be able to look at a slow query and know where to start.
  • Strong understanding of data warehouse architecture and modeling patterns: star schemas, slowly changing dimensions, incremental models, and when to apply each.
  • Deep fluency with Cloud Data Platforms (preferably GCP and BigQuery), partitioning strategies, clustering, slot economics, materialization trade-offs, and cost optimization.
  • Design for resilience, not just correctness. You think about failure modes, backfill strategies, idempotency, and what happens when a source schema changes at 2 AM on a Friday.
  • Experience troubleshooting and resolving production incidents: diagnosing pipeline failures, data anomalies, and performance bottlenecks under pressure.
  • Deep experience with pipeline orchestration and reliability engineering. Youโ€™ve designed DAGs with complex dependency chains, built retry and backfill mechanisms, implemented SLA monitoring. You know the difference between a pipeline that works and a pipeline thatโ€™s production-ready.
  • Raise the bar for the team. You establish patterns, write reusable systems, define standards, and mentor junior engineers.

Preferred

  • Experience working with healthcare data: EHR, claims, pharmacy, billing, or revenue cycle datasets. You understand the quirksโ€”messy provider taxonomies, adjudication cycles, NDC codes, ICD/CPT mapping.
  • Familiarity with healthcare interoperability standards: HL7, FHIR, CCD, or EDI.
  • Experience implementing data quality, observability, governance, lineage, or metadata management solutions.
  • Experience working in a startup or high-growth technology environment.
  • We expect engineers to leverage AI tools thoughtfully to move faster, and to bring good judgment about where automation helps and where it introduces risk.

Hereโ€™s what weโ€™d like to offer you:

  • Equal investment and support for our people and patients.
  • A fun and ambitious start-up environment with a culture that takes on big things, takes risks, and learns quickly.
  • The ability to demonstrate creativity, innovation, and conscientiousness, and find joy in working together.
  • A team of highly skilled, incredibly kind, and welcoming employees, every one of whom has something unique to offer.
  • We know that the overall success of our business is a collaborative effort, and we strive to provide ongoing opportunities for our employees to learn and grow, both personally and professionally.
  • Full-time employees are eligible to participate in our benefits package which includes Medical, Dental, Vision Insurance, Company paid time off, Short- and Long-Term Disability, and more.


We are an equal opportunity and affirmative action employer. We embrace diversity and are committed to creating an inclusive environment for all employees. Applicants will be considered for employment without regard to race, religion, gender, gender identity, sexual orientation, national origin, age, disability, or veteran status.

Powered by JazzHR

QekT2lkWKK