1

Data Engineer Apache Airflow Jobs (NOW HIRING)

GCP Data Engineer

Jersey City, NJ · On-site

$119K - $143K/yr

Job Posting : GCP Data Engineer We are seeking an experienced GCP Data Engineer with a strong ... Develop and automate workflows using Apache Airflow. * Collaborate with cross-functional teams to ...

AWS Data engineer

Owings, MD · On-site

$110K - $133K/yr

Overview: AWS Data Engineer Location: Owings Mills, MD - Hybrid Onsite (LOCAL CANDIDATES ONLY ... The ideal candidate will bring strong expertise in Python, PySpark, Apache Airflow, and AWS ...

Data Engineer

Jersey City, NJ

$119K - $143K/yr

Must have: -Python -Apache Airflow/DBT -Communication, both written & verbal -Kubernetes -OpenShift -8+ years of experience We are seeking a highly skilled Senior Data Engineer with 8+ years of hands ...

... Apache Airflow - Experience in Retail (preferred) --- ### Key Responsibilities - Design, develop, and maintain big data applications using open source technologies. - Build and automate data ...

Data Engineer

Suitland, MD

$123K - $148K/yr

Data Engineer We are looking for a skilled and passionate Data Engineer to join our team. You will ... Hands-on experience with data pipeline orchestration tools (e.g., Apache Airflow, dbt, Prefect ...

Data Engineer

Bentonville, AR · On-site

$100K - $120K/yr

About the Role: We're seeking a skilled Data Engineer to join our Bentonville team for a 6-month ... Implement and manage data processing workflows using Apache Airflow * Deploy and manage ...

Data Engineer - IAM

Irving, TX · On-site

$109K - $132K/yr

Utilize Apache Airflow to orchestrate and manage complex data workflows. Implement and maintain CI/CD pipelines to support automated deployment and delivery of data engineering solutions. Design and ...

next page

Showing results 1-20

Data Engineer Apache Airflow information

See salary details

$44.5K

$129.7K

$177.5K

How much do data engineer apache airflow jobs pay per year?

As of Jun 11, 2026, the average yearly pay for data engineer apache airflow in the United States is $129,716.00, according to ZipRecruiter salary data. Most workers in this role earn between $114,500.00 and $137,500.00 per year, depending on experience, location, and employer.

What is a Data Engineer specializing in Apache Airflow?

A Data Engineer specializing in Apache Airflow is a professional who designs, builds, and manages data pipelines using Apache Airflow, an open-source workflow orchestration tool. They are responsible for automating, scheduling, and monitoring complex data workflows, ensuring data moves efficiently and reliably between systems. Their role often includes integrating Airflow with various data sources, optimizing data flows, and troubleshooting issues to maintain data quality and availability. This specialization requires strong programming skills, knowledge of ETL processes, and experience with cloud or on-premise data platforms.

What is the difference between Data Engineer Apache Airflow vs Data Engineer Luigi?

AspectData Engineer Apache AirflowData Engineer Luigi
Primary UseWorkflow orchestration and schedulingWorkflow management and pipeline automation
Required SkillsPython, SQL, cloud platforms, DAG designPython, SQL, pipeline scripting, task dependencies
Work EnvironmentCloud and on-premises data platformsOn-premises and cloud environments
Common CertificationsNone specific, but cloud and Python certifications helpfulNone specific, Python knowledge preferred

Both tools are used for workflow automation in data engineering, with Airflow being more popular for complex, scalable pipelines across cloud and on-premises environments, while Luigi is often used for simpler, Python-based workflows. The choice depends on project complexity and infrastructure needs.

What are some common challenges Data Engineers face when implementing Apache Airflow in production environments?

Data Engineers often encounter challenges such as managing Airflow's scalability when workflows grow in complexity, ensuring robust monitoring and alerting for failed tasks, and handling dependency management between different DAGs. Additionally, integrating Airflow with various data sources and maintaining security best practices can present hurdles. Collaborating effectively with data scientists and analysts to design maintainable, efficient pipelines is also key to long-term success in this role.

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

To thrive as a Data Engineer with a focus on Apache Airflow, you need strong programming skills (typically in Python or SQL), data pipeline design experience, and a background in computer science or a related field. Familiarity with workflow orchestration tools like Apache Airflow, cloud platforms (AWS, GCP, or Azure), and data warehousing technologies is essential, along with certifications such as Google Cloud Professional Data Engineer or AWS Certified Data Analytics. Problem-solving abilities, attention to detail, and effective communication set top performers apart in this role. These skills are crucial for building reliable, scalable, and maintainable data workflows that drive business insights and support data-driven decision-making.
Infographic showing various Data Engineer Apache Airflow job openings in the United States as of June 2026, with employment types broken down into 50% Full Time, and 50% Contract. Highlights an 100% In-person job distribution, with an average salary of $129,716 per year, or $62.4 per hour.
Data Engineer - Apache

$97K - $116K/yr

Other

Posted 28 days ago


Job description

Role: Data Engineer - Apache

Location: Data Engineer

Type: 100% on site in Corning, NY

Duration: Long Term

Education and Experience:

·         This position focuses on Data pipelines & workflows

·         Bachelor’s degree in computer science, information systems, data engineering, or related field, or equivalent practical experience. May consider an Associates if the candidate has an additional 3-5 years experience than what is being required.

·         2+ years of professional experience in data engineering, ETL development, or related work, or equivalent hands-on experience

·         Experience or interest in scientific software, materials science, research environments, or technically complex domains is a plus

 

Scope of the position

·         Embed within a cross-functional Agile team, participating in sprint planning, stand-ups, backlog refinement, and technical discussions.

·         Design, build, troubleshoot, and maintain ETL/ELT workflows that support application functionality, analytics, reporting, and scientific workflows.

·         Develop and manage data pipelines using Apache Airflow, ensuring reliable orchestration, scheduling, monitoring, and recovery of data processes.

·         Work with stakeholders including software developers, scientists, and engineers to understand data sources, workflow requirements, and downstream data needs.

·         Extract, transform, validate, and load data across systems, including relational databases such as Postgres SQL and Oracle.

·         Write, optimize, and maintain complex SQL queries, scripts, and transformation logic to support operational and analytical use cases.

·         Troubleshoot data quality issues, ETL failures, pipeline bottlenecks, and schema inconsistencies; identify root causes and implement durable solutions.

·         Support database exploration, data validation, and troubleshooting using tools such as DBeaver and related database utilities.

·         Evaluate and help adopt new data tools and technologies, including lightweight analytics and transformation solutions (e.g. DuckDB) where appropriate.

·         Collaborate with engineering teams to support reliable integration between data pipelines, applications, APIs, and downstream consumers.

·         Assist with schema evolution, data modeling, migration planning, and data consistency across systems.

·         Document pipeline logic, data dependencies, transformation rules, and operational procedures to support maintainability and team knowledge sharing.

·         Help improve data engineering standards, observability, testing practices, and operational reliability across the team.

·         Regularly interacting with scientists and engineers to understand research and technical workflows; experience in scientific or research environments is a strong plus.

 Technical Skills – 2+ years (or commensurate experience):

·         Experience designing, building, and troubleshooting ETL/ELT pipelines

·         Hands-on experience with workflow orchestration tools, preferably Apache Airflow

·         Strong experience writing and optimizing SQL

·         Experience working with relational databases, especially Postgres SQL and Oracle

·         Ability to develop and maintain data transformations, validation steps, and pipeline logic across multiple systems

·         Experience with database tools such as DBeaver or similar for query development, exploration, and troubleshooting

·         Familiarity with modern data processing and analytical tools such as DuckDB or interest in evaluating emerging data technologies

·         Understanding of data modeling, schema design, data integrity, and performance tuning

·         Experience troubleshooting pipeline failures, performance issues, and inconsistent or incomplete datasets

·         Familiarity with scripting or programming for pipeline development and automation; Python experience is strongly preferred

·         Understanding of version control and collaborative development workflows

·         Experience supporting production data systems with an emphasis on reliability, maintainability, and clear documentation


Indotronix logo

About Indotronix

Sourced by ZipRecruiter

In 1986, Indotronix established itself in the staffing space. 22 years later, Avani entered the scene, offering consulting and technology development. Finally, in 2016, the two joined forces to begin delivering talent across all areas, from Staffing to Consulting to unique platform development.

Industry

Recruiting and staffing services

Company size

1,001 - 5,000 Employees

Headquarters location

Rochester, NY, US