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Automotive Data Engineer Jobs in Raleigh, NC (NOW HIRING)

Data Engineer

Durham, NC · On-site

$110.60K - $132.90K/yr

... automotive, powering a high-technology future. Vulcan Elements is building a team of ambitious ... As the Data Engineer, you will design and build the data infrastructure that makes Vulcan ...

Data Engineer

Raleigh, NC · On-site

$111.30K - $133.70K/yr

... automotive, powering a high-technology future. Vulcan Elements is building a team of ambitious ... As the Data Engineer, you will design and build the data infrastructure that makes Vulcan ...

You'll lead a team of Data Scientists and Data Engineers and apply mixed methods to own the end-to ... automotive, and architectural design. As we continue to build our Engine technology and develop ...

Controls Engineer

Durham, NC

$80.70K - $104.40K/yr

... automotive powering a high-technology future. Vulcan Elements is building a team of ambitious ... Design and implement SCADA systems, historian databases, dashboards, alarming strategies, and data ...

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Automotive Data Engineer information

See Raleigh, NC salary details

$43.3K

$126.1K

$172.5K

How much do automotive data engineer jobs pay per year?

As of May 30, 2026, the average yearly pay for automotive data engineer in Raleigh, NC is $126,095.00, according to ZipRecruiter salary data. Most workers in this role earn between $111,300.00 and $133,700.00 per year, depending on experience, location, and employer.

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

To thrive as an Automotive Data Engineer, you need expertise in data analytics, programming (often Python or SQL), and a strong understanding of automotive systems, typically supported by a degree in computer science, engineering, or a related field. Familiarity with big data platforms (like Hadoop or Spark), automotive communication protocols (such as CAN or LIN), and certifications in data engineering or cloud technologies are highly valued. Strong problem-solving abilities, teamwork, and effective communication help distinguish top performers in this role. These skills are crucial for developing reliable data-driven solutions that enhance vehicle performance, safety, and innovation in a rapidly evolving automotive industry.

What are some common challenges Automotive Data Engineers face when working with vehicle data?

Automotive Data Engineers often encounter challenges related to the sheer volume and complexity of data generated by modern vehicles, including sensor, telematics, and diagnostic information. Integrating data from various sources and ensuring its quality, consistency, and security can be demanding. Additionally, collaborating with cross-functional teams—such as software developers, data scientists, and automotive engineers—requires strong communication skills to align technical requirements and project goals. Adapting to evolving automotive technologies and compliance standards is also crucial for success in this role.

What is an Automotive Data Engineer?

An Automotive Data Engineer is a professional who designs, develops, and manages systems for collecting, processing, and analyzing data generated by vehicles and automotive systems. They work with large datasets from sources such as sensors, telematics, and onboard diagnostics to improve vehicle performance, safety, and efficiency. Their role often involves collaborating with software developers, data scientists, and automotive engineers to build data-driven solutions for connected and autonomous vehicles.

What is the difference between Automotive Data Engineer vs Data Scientist in the automotive industry?

AspectAutomotive Data EngineerData Scientist
Required CredentialsBachelor's in Computer Science, Data Engineering, or related field; experience with SQL, Python, big data toolsBachelor's or Master's in Data Science, Statistics, or related; proficiency in Python, R, machine learning
Work EnvironmentAutomotive companies, tech firms, data infrastructure teamsResearch labs, automotive R&D, analytics teams
Employer & Industry UsageFocus on building data pipelines, managing data infrastructure in automotive settingsFocus on analyzing data, creating models for vehicle performance, customer insights

Automotive Data Engineers primarily develop and maintain data infrastructure within the automotive industry, ensuring data flows efficiently. Data Scientists analyze this data to generate insights and predictive models. Both roles often collaborate but focus on different aspects of data management and analysis.

What are popular job titles related to Automotive Data Engineer jobs in Raleigh, NC? For Automotive Data Engineer jobs in Raleigh, NC, the most frequently searched job titles are:
What job categories do people searching Automotive Data Engineer jobs in Raleigh, NC look for? The top searched job categories for Automotive Data Engineer jobs in Raleigh, NC are:
What cities near Raleigh, NC are hiring for Automotive Data Engineer jobs? Cities near Raleigh, NC with the most Automotive Data Engineer job openings:

Data Engineer

Vulcan Elements

Durham, NC • On-site

$110.60K - $132.90K/yr

Full-time

Posted 4 days ago


Job description

Vulcan Elements is manufacturing American rare-earth permanent magnets for a secure, resilient future. With a focus on national security and economic resiliency, we serve critical industries such as defense, aerospace, and automotive, powering a high-technology future. Vulcan Elements is building a team of ambitious professionals committed to Mission Focus, Technical Excellence, and Transparency.

As the Data Engineer, you will design and build the data infrastructure that makes Vulcan's operational and business data useful — first at pilot scale, and then as the foundation for a 10,000 ton/year facility. You will work from architecture to implementation: evaluating and selecting platforms, designing data models and pipelines, and building the systems that collect, contextualize, and deliver data to the teams and tools that depend on it. You will collaborate closely with cross-functional stakeholders to translate operational requirements into a durable, scalable data architecture. As Vulcan grows, this role has the opportunity to expand into a team leadership position.

Responsibilities

Architecture & Platform Design

  • Design and own Vulcan's data architecture from operational data stores through ETL pipelines to the analytics and AI layer
  • Evaluate and select platforms for the data Lakehouse, ETL tooling, and operational databases, weighing scalability, compliance requirements, operational burden, and cost
  • Review, refine, and implement data architecture design documents, ensuring designs are technically sound and account for CUI and ITAR data handling requirements
  • Make and document key platform and design decisions with enough clarity that future team members can understand the reasoning and build on it
  • Ensure the architecture scales from pilot plant to full-scale facility without fundamental redesign
  • Apply sound engineering practices to everything you build: version control, testing, observability, and documentation, and hold those standards as the data team grows

Data Pipeline & Integration

  • Design and build ETL pipelines that move data from operational data stores into the data Lakehouse with full contextual enrichment, making it ready for analytics and AI workloads
  • Build reliable ingest paths for structured data, time-series data, files, images, and other outputs from manufacturing and lab systems
  • Collaborate across engineering, operations, and IT to understand data flows, dependencies, and integration requirements, and translate them into pipeline and architecture decisions
  • Identify and eliminate manual data workflows, replacing them with monitored, reliable pipelines
  • Diagnose and resolve data quality issues across the stack, and build monitoring into pipelines so problems surface early

Data Modeling & Quality

  • Define data models that support operational queries, analytical workloads, and future AI and ML applications
  • Own data contextualization standards ensuring every data point carries the metadata needed to make it meaningful.
  • Contribute to schema design and payload definitions for operational data stores, working toward consistency and legibility across the organization
  • Support the development of reporting and visibility tools that give operations and leadership clear insight into process and quality data
  • Write clear technical documentation for architecture decisions, data models, pipeline designs, and operational runbooks

Responsibilities and tasks outlined are not exhaustive and may change as determined by the needs of the business.

Qualifications

  • 8+ years of experience in data engineering, data infrastructure, or a closely related technical role with a track record of owning and delivering production systems
  • Demonstrated experience designing and building data lakes, Lakehouses, or analytical data stores; understands the tradeoffs between platforms and can make and defend platform selection decisions
  • Strong experience designing and building ETL/ELT pipelines that enrich and contextualize data
  • Deep fluency with data modeling for both operational and analytical workloads; can design schemas that serve present needs without foreclosing future ones
  • Experience with relational databases (PostgreSQL, SQL Server, or similar); writes and debugs SQL confidently
  • Comfortable working in a fast-moving environment with a small team, making decisions with incomplete information and documenting them clearly for future colleagues
  • Strong communicator who can work across technical and non-technical stakeholders and translate between operational requirements and data architecture decisions
  • Must be a U.S. Person due to required access to U.S. export-controlled information or facilities

Desired Skills

  • Experience with time-series databases (InfluxDB, TimescaleDB, or similar) common in industrial and IoT environments
  • Familiarity with industrial data concepts — historian data, process tags, OT/IT integration — and the data challenges specific to manufacturing environments
  • Experience working on or alongside a Unified Namespace or MQTT-based data architecture; understands how industrial messaging infrastructure relates to the data layer
  • Familiarity with data Lakehouse platforms and open table formats (Delta Lake, Apache Iceberg, or similar)
  • Experience with ETL orchestration tooling (Airflow, Prefect, dbt, or similar)
  • Comfort with scripting and lightweight development (Python, SQL, or similar) for pipeline development and data quality tooling
  • Familiarity with cloud platforms (AWS, Azure, or GCP) and experience evaluating on-premises vs. cloud tradeoffs for data infrastructure
  • Experience working in a controlled information environment; familiarity with the handling requirements for Controlled Unclassified Information (CUI) or export-controlled technical data under ITAR or EAR
  • Experience in a manufacturing, industrial, or operations-heavy environment