1

Full Stack Data Engineer Jobs (NOW HIRING)

We are seeking a Junior Full Stack Data Engineer to join our Data & Analytics team. This role is for someone who is genuinely strong with databases and great at connecting things together: you will ...

New

Full Stack Data Engineer

Dearborn, MI · On-site

$138K - $178K/yr

Full Stack Data Engineer - positions offered by Ford Motor Company (Dearborn, Michigan). Note, this is a hybrid position whereby the employee will work both from home and from the aforementioned ...

They are seeking a TS//SCI cleared Full Stack Data Engineer who specializes in formulating mathematical approaches to solve complex business problems and utilizing predictive analytics tools to draw ...

They are seeking a TS//SCI cleared Full Stack Data Engineer who specializes in formulating mathematical approaches to solve complex business problems and utilizing predictive analytics tools to draw ...

They are seeking a TS//SCI cleared Full Stack Data Engineer who specializes in formulating mathematical approaches to solve complex business problems and utilizing predictive analytics tools to draw ...

They are seeking a TS//SCI cleared Full Stack Data Engineer who specializes in formulating mathematical approaches to solve complex business problems and utilizing predictive analytics tools to draw ...

Role & Team As an Engineering Manager, Full Stack & Data, you will lead across several cross-functional teams, managing up to ~10 full stack software engineers, data engineers, and GIS specialists.

Data Engineer

San Francisco, CA · On-site

$134K - $162K/yr

You'll architect and evolve the full data stack, designing the pipelines, models, and integrations that turn raw information into reliable, real-time insight across product, engineering, finance, and ...

Senior Data Engineer

$108K - $147K/yr

We are seeking a highly motivated and hands-on Full Stack Data Engineer with strong experience in Microsoft Fabric and modern Azure-based data platforms. The ideal candidate should be capable of ...

next page

Showing results 1-20

Full Stack Data Engineer information

See salary details

$44.5K

$134.8K

$190.5K

How much do full stack data engineer jobs pay per year?

As of Jun 18, 2026, the average yearly pay for full stack data engineer in the United States is $134,771.00, according to ZipRecruiter salary data. Most workers in this role earn between $111,000.00 and $158,000.00 per year, depending on experience, location, and employer.

What is the difference between Full Stack Data Engineer vs Data Scientist?

AspectFull Stack Data EngineerData Scientist
CredentialsBachelor's/Master's in CS, Data Engineering certificationsBachelor's/Master's in CS, Data Science or related fields
Work EnvironmentBuild data pipelines, manage databases, develop APIsAnalyze data, create models, generate insights
Industry UsageTech, finance, healthcare, where data infrastructure is keyResearch, analytics, product development teams

Full Stack Data Engineers focus on building and maintaining data infrastructure, integrating data from various sources, and ensuring data availability. Data Scientists analyze data, develop models, and generate insights. While both roles require strong technical skills, Full Stack 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 Full Stack Data Engineer, and why are they important?

To thrive as a Full Stack Data Engineer, you need strong expertise in data modeling, ETL processes, and proficiency in both backend (e.g., Python, Java) and frontend (e.g., JavaScript, React) development, often supported by a degree in computer science or a related field. Familiarity with cloud platforms (such as AWS or Azure), big data tools (like Spark or Hadoop), and database systems (SQL and NoSQL) is typically required, and certifications in these technologies are advantageous. Excellent problem-solving, communication, and collaboration skills help you bridge gaps between data, development, and business teams. These skills ensure you can design, build, and maintain scalable data solutions that meet organizational needs efficiently.

How does a Full Stack Data Engineer typically balance responsibilities between backend data infrastructure and frontend data presentation tasks?

Full Stack Data Engineers are often required to split their time between developing robust backend data pipelines and creating user-facing tools or dashboards that visualize data insights. This dual responsibility means you'll need to prioritize tasks based on project needs, effectively collaborating with data scientists, analysts, and frontend developers. Communication is key, as you'll bridge gaps between technical teams and business stakeholders, ensuring data flows seamlessly from source systems to end users. Over time, many engineers find opportunities to specialize further or move into leadership roles overseeing data architecture and team strategy.

What is a Full Stack Data Engineer?

A Full Stack Data Engineer is a professional who designs, builds, and maintains the entire data pipeline, from data collection and storage to processing and visualization. They work with both the backend infrastructure (such as databases, data warehouses, and ETL processes) and frontend tools (like dashboards or reporting systems) to ensure data is accessible and usable for analytics. Full Stack Data Engineers possess skills in programming, database management, data modeling, cloud platforms, and often data visualization, allowing them to manage every stage of data flow within an organization.
More about Full Stack Data Engineer jobs
What cities are hiring for Full Stack Data Engineer jobs? Cities with the most Full Stack Data Engineer job openings:
What states have the most Full Stack Data Engineer jobs? States with the most job openings for Full Stack Data Engineer jobs include:
What job categories do people searching Full Stack Data Engineer jobs look for? The top searched job categories for Full Stack Data Engineer jobs are:
Junior Full Stack Data Engineer

Junior Full Stack Data Engineer

MOJO

Alcoa, TN • On-site

$75K - $80K/hr

Full-time

Posted yesterday


Job description

Description:

We are seeking a Junior Full Stack Data Engineer to join our Data & Analytics team. This role is for someone who is genuinely strong with databases and great at connecting things together: you will design and tune the SQL and Snowflake models at the heart of our platform, build and orchestrate the engineering pipelines that move data between systems on AWS, and stitch applications, warehouse, and reporting layers into one coherent, reliable flow. Just as important, you bring real analytics under your belt — you can interrogate data, spot what matters, and turn it into Power BI dashboards and analyses the business trusts. You will also use modern AI tooling, including LLM-based workflows and MCP servers, to make the platform smarter and more automated. With roughly three years of professional experience, you will partner with senior engineers and business stakeholders to deliver production-grade data products from ingestion through insight.

Requirements:
  • Data Engineering: design, build, and maintain ELT pipelines that ingest, clean, and transform data from multiple internal and external source systems into Snowflake.
  • Data Modeling & Transformation: develop well-structured, tested, and documented dbt models; write performant SQL for complex transformations across the warehouse.
  • Pipeline Orchestration: own the scheduling, dependency management, and monitoring of engineering pipelines end to end — so jobs run in the right order, failures are caught early, and data lands fresh and on time.
  • Systems Integration: connect things together — build the integrations that move data between source applications, APIs, the Snowflake warehouse, and downstream consumers across AWS, keeping the whole data flow coherent and reliable.
  • Analytics: go beyond reporting — dig into the data to answer real business questions, validate assumptions, and surface trends and anomalies; bring sound analytical judgment to every dataset you touch.
  • Reporting & BI: build and maintain Power BI dashboards and semantic models that stakeholders rely on daily, with clean data models, solid DAX, and clear visual design.
  • Applied AI: use AI/LLM tooling — including MCP servers and AI-assisted development workflows — to automate data tasks, integrate AI capabilities into the platform, and prototype intelligent data services.
  • Engineering Practices: write clean, well-documented, version-controlled code; participate in code reviews; and uphold data quality, testing, and monitoring standards across the stack.
  • Collaboration: work closely with senior engineers, analysts, and business partners to scope problems, present findings, and iterate on solutions.
  • Bachelor’s degree in Computer Science, Engineering, Information Systems, Mathematics, or a related field — or equivalent practical experience.
  • Approximately 3 years of professional experience in data engineering, analytics engineering, or a comparable technical role.
  • Deep database skills: expert SQL — confident writing, optimizing, and debugging complex queries — plus a solid grasp of relational design, indexing/clustering, and query performance.
  • Hands-on experience with Snowflake (or a comparable cloud data warehouse, with willingness to go deep on Snowflake).
  • Experience building and maintaining dbt models, including testing and documentation.
  • Working experience with AWS and its core data services (e.g., S3, Lambda, Glue, IAM), and a track record of connecting systems together — integrating applications, APIs, and data stores into orchestrated, dependable pipelines.
  • Strong analytics under your belt: proven ability to analyze data rigorously and communicate findings, with hands-on Power BI experience (data models, DAX, well-designed dashboards).
  • Working knowledge of modern AI tooling — LLM APIs, AI-assisted workflows, and familiarity with MCP (Model Context Protocol) servers or similar integration patterns.
  • Familiarity with version control (Git) and collaborative development workflows.
  • Solid problem-solving skills, with the ability to communicate technical results to non-technical audiences.
  • Experience with orchestration tools such as Airflow, Dagster, or dbt Cloud jobs.
  • Python for pipeline development, automation, and scripting.
  • Exposure to containerization (Docker) and infrastructure-as-code (e.g., Terraform).
  • Experience building or integrating MCP servers, agents, or AI APIs (e.g., Anthropic, OpenAI) into data workflows.
  • Familiarity with dimensional modeling and warehouse design best practices.
  • Experience administering or optimizing Snowflake (warehouses, roles, cost management).

Mojo logo

About Mojo

Sourced by ZipRecruiter

Industry

Software development

Company size

51 - 200 Employees

Headquarters location

New York, NY, US

Year founded

2021