ECS Tech Inc logo
ECS Tech Inc

All candidates must meet the following criteria: Must be a US Citizen, no dual Citizenships. Must be able to secure a Public trust clearance. Must be able to work across multiple programs across the Federal and DOD space. The core values that ECS looks for in an engagement manager include: Teamwork, Respect, Accountability, Integrity, and Leadership.

Data Engineer

Location

United States

Posted

37 days ago

Salary

$130K - $145K / year

Seniority

Mid Level

Job Description

Data Engineer

ECS Tech Inc

Role Description Everforth ECS is seeking a Data Engineer to work on our US Postal Service Data Analytics team. This is an exciting position that develops, implements, and maintains data workflow and architecture solutions across large enterprise warehouses and pipelines. These solutions will be used to support effective and efficient data management and enterprise-wide business intelligence and efficiency analytics for the US Postal Service. - Implement and optimize data pipeline architectures for data sourcing, ingestion, transformation, and extraction processes, ensuring data integrity, consistency, and compliance with organizational standards. - Develop and maintain scalable database schemas, data models, and data warehouse structures; perform data mapping, schema evolution, and integration between source systems, staging areas, and data marts. - Automate data extraction workflows and develop comprehensive technical documentation for ETL/ELT procedures; collaborate with cross-functional teams to translate business requirements into technical specifications and data schemas. - Establish and enforce data governance standards, including data quality metrics, validation rules, and best practices for data warehouse design, architecture, and tooling. - Develop, test, and deploy ETL/ELT scripts and programs using SQL, Python, Spark, or other relevant languages; optimize code for performance, scalability, and resource utilization. - Implement and tune data warehouse systems, focusing on query performance, batch processing efficiency, and resource management; utilize indexing, partitioning, and caching strategies. - Perform advanced data analysis, validation, and profiling using SQL and scripting languages; develop data models, dashboards, and reports in collaboration with stakeholders. - Conduct testing and validation of ETL workflows to ensure data loads meet scheduled SLAs and business quality standards; document testing protocols, results, and remediation steps. - Perform root cause analysis for data processing failures, troubleshoot production issues, and implement corrective actions; validate data accuracy and consistency across systems; support iterative development and continuous improvement of data pipelines. Qualifications - Must be a US Citizen or Green Card holder, and must be able to obtain a Public Trust Clearance. - 5-10+ years of experience building and designing data extraction, formatting and engineering tools, workflows, pipelines and ETL / ELT processes. - Detail oriented with strong analytical and problem-solving skills. - Ability to use database tools, techniques, and applications (e.g., Teradata, Oracle, Non-Relational) to develop complex SQL statements (e.g., multi-join), and to tune and troubleshoot queries for optimal performance. - Skill using Unix/Linux shell scripting to develop and implement automation scripts for Extract, Transfer Load (ETL) processes. - Communications skills (both verbal & written) - ability to work and communicate with all levels in team structure. - Team player with the ability to prioritize and multi-task, work in a fast-paced environment, and effectively manage time. - Java/J2EE and REST APIs, Web Services and building event-driven Micro Services and Kafka streaming using Schema registry, OAuth authentication. - Spring Framework and GCP Services in public cloud infrastructure, Git, CI/CD pipeline and containerization, data ingestion/data modeling. - Develop Microservices using Java/J2EE Spring for ingesting large volume real-time events into Kafka topics. Architect solutions that make the data available to consumers in real time. Requirements - Salary Range: $130,000-$145,000 Benefits - General Description of Benefits

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