Job Closed
This listing is no longer active.
Accelerating Intelligence
Senior Data Engineer – SIE
Location
United States
Posted
105 days ago
Salary
$140K - $170K / year
Seniority
Senior
Job Description
Senior Data Engineer – SIE
Accelint
• Provide technical leadership and analytical expertise in data engineering, modeling and simulation (M&S), and systems analysis • Manage the technical execution of complex readiness, sustainment, and logistics modeling efforts • Integrate multidisciplinary engineering methodologies to ensure model development, data management, and analytical outputs align with program objectives • Collaborate with software developers, data scientists, and product managers to understand requirements and align on project goals • Design and implement data solutions that support software development initiatives • Participate in planning sessions to develop data pipeline architecture that aligns with project requirements • Design data ingestion, transformation, and storage workflows that are scalable • Implement data quality checks and validation procedures to ensure data accuracy and integrity • Conduct comprehensive testing, ensuring application quality and functionality stay in specifications • Document data engineering processes and ensure accuracy and completeness of all documentation • Manage projects, including planning, execution, and delivery
Job Requirements
- 5 to 8 years of experience using Orchestration tools (Apache Airflow) and data processing tools (Apache Spark)
- Advanced knowledge of object storage and management of unstructured data
- Experience utilizing cross-domain solutions in a secure environment
- Advanced knowledge of containerization technologies supporting enterprise software deployment (Kubernetes, Docker, Helm, etc.)
- Proficient knowledge of data engineering workflows such as extract, transform, load (ETL) processes and data warehousing
- Advanced level knowledge of software development processes including Agile methodologies
- Conversant with object-oriented programming languages
- Excellent written and oral communication
- Bachelor’s degree in engineering, science, or equivalent with demonstrated experience in technical/engineering leadership.
Benefits
- Paid Time Off
- Paid Company Holidays
- Medical, Dental & Vision Insurance
- Optional HSA and FSA
- Base and Voluntary Life Insurance
- Short Term & Long-Term Disability Insurance
- 401k Matching
- Employee Assistance Program
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
• Building scalable data solutions in the cloud. • Developing high-quality metrics and pipelines. • Real-time processing systems development.
• Responsible for building, maintaining, and scaling big data platforms • Work closely with Data Science teams to set up and automate machine learning models and algorithms for production use • Build and optimize ETL/ELT data pipelines that power business intelligence and analytics initiatives • Transform raw, structured, and semi-structured data into actionable insights • Leverage cloud services (AWS preferred) including Lambda, S3, SageMaker, and more to build scalable data solutions • Pair program with engineers, support analytics teams, and work within CI/CD pipelines
• Join a dynamic technology consultancy where data engineering excellence drives business transformation • Architect and build robust data pipelines using cutting-edge Azure technologies • Lead the design of scalable data solutions that transform raw information into valuable business assets • Work on sophisticated data platforms built on Azure with Databricks at the core • Design end-to-end data pipelines handling complex ETL and ELT workflows • Transform raw data into analytics-ready datasets • Architect solutions using modern data modeling methodologies including Kimball, Inmon, and Data Vault, ensuring scalability and maintainability across multiple business domains
Senior Data Engineer
BrahmaThe only account you'll ever need to secure, transact, and explore onchain like never before.
• Feature engineering at scale • Architect unstructured data pipelines • Orchestrate ML workflows using Dagster or Airflow • Optimize compute & cost • Build "dataset-as-code" • Infrastructure ownership with Kubernetes for scalability



