Data Engineer
Location
United States
Posted
31 days ago
Salary
$43 - $51 / hour
Seniority
Mid Level
Job Description
Data Engineer
CEFCU
Role Description Are you ready to make the most of your talents and abilities, while helping others make the most of their finances? Apply to join Team CEFCU! CEFCU member service team members are critical to the success of the credit union. They provide a professional, knowledgeable, and caring experience when members contact us. We are looking for individuals who are personable, articulate, and positive to add to our already awesome team! - Supports and helps implement CEFCU's Data and Analytics strategy. - Helps to increase timely, transparent accessibility across the organization for CEFCU’s enterprise data via appropriate analytics and reporting resources. - Helps expand, maintain and administer CEFCU’s primary analytics environment, including data model and dictionary, ELT processes, connector development, and more. - Develops database models/data integration solutions and supports existing data solutions/platforms. Hours: Monday - Friday: 8:00 a.m. - 4:30 p.m. Qualifications - Bachelor’s degree in computer or information science, or equivalent experience. - 2-4 years working with high-level programming languages such as Python. - 4-6 years’ experience and knowledge of SQL. - 2-4 years’ experience performing root cause analysis on internal and external data and processes to answer specific business questions and identify opportunities for improvement. - Strong written and verbal communication skills. - Strong problem solving and analytical skills. Requirements - Fintech systems experience (preferred). - 3-5 years advanced working SQL knowledge and experience working with relational databases, data governance/data modeling, query authoring (SQL) as well as working familiarity with a variety of databases (preferred). - 1-3 years’ experience working with Microsoft SQL Server or Microsoft Azure (preferred). - 1-3 years’ experience working with ETL or ELT in a data warehouse, data lake, or data mart environment (preferred). - 1-3 years’ experience data modeling (logical/physical, relational) (preferred). - Strong analytic skills related to working with structured and/or unstructured datasets (preferred). Benefits - Financial: Merit-based raises. - Generous paid time off (Holiday, Personal or Sick Time, Vacation). - Comprehensive Medical, Dental, and Vision coverage (PPO, HDHP). - Flexible Spending Plan (Medical Reimbursement Account and Dependent Care Reimbursement Account). - Health Savings Account. - Voluntary Benefits (Accident Plan, Critical Illness Plan, Hospital Indemnity Plan, Identity Theft & Fraud Protection Plan, Legal Plan). - Life Insurance. - Accidental Death & Dismemberment Insurance. - Disability Benefits. - Defined Benefit Plan – Pension. - Defined Contribution Plan – 401K. - Employee Assistance Program. - Tuition reimbursement. - Career growth through internal job postings. - Management Development Program: formal mentoring and training. - Opportunities to help improve and build the CEFCU of tomorrow through process teams. - Opportunities to personally contribute to corporate financial literacy and community initiatives. - Casual days to support local charities. - Employee discounts on entertainment, cell phone plans, theme park tickets, and more. - On-site fitness center, fitness classes, and wellness program.
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
Senior Azure Data Engineer
DATAMAXIS, IncDatamaxis is a WMBE corporation and committed to provide IT services to commercial and government organizations.
• Design and build robust, reusable, parameter-driven ingestion and transformation pipeline using Azure Data Factory • Implement medallion architecture on Azure Data Lake Storage Gen2 • Build performant ELT workflows that leverage pushdown to source systems • Develop and optimize PySpark notebooks and jobs on Azure Databricks or Synapse Spark • Design dimensional models and data vault patterns for analytics consumption • Implement Slowly Changing Dimensions and Change Data Capture • Tune distributed SQL workloads in Synapse Dedicated SQL Pool • Implement CI/CD for data pipelines using Azure DevOps • Instrument pipelines with robust logging and monitoring • Lead or contribute to legacy-to-cloud migrations
Senior Data Engineer – Financial Transactions, Automation
NVIDIANVIDIA is committed to fostering an inclusive work environment and proud to be an equal opportunity employer. As we highly value diversity in our current and future employees, we do not discriminate (including in our hiring and promotion practices) on the basis of race, religion, color, national origin, gender, gender expression, sexual orientation, age, marital status, veteran status, disability status or any other characteristic protected by law.
• Architect event-driven pipelines (Kafka) and develop new data models that ensure transactional integrity (ACID) for commercial events like invoices, payments, and adjustments • Automate scalable ETL processes and refactor next-generation data architectures to improve quality, security, and coverage for rapidly growing business demands • Collaborate across teams to codify business processes into self-measuring systems, debugging complex challenges to ensure the reliability of financial operations
• Maintain and improve core data infrastructure for a key client account. • Architect and implement critical data foundations for advanced analytics and AI initiatives. • Hands-on development in SQL and Python within modern cloud environments. • Creating high-performance generation pipelines for product models.
• Design, develop, and maintain scalable data pipelines focused on ingestion via CDC (Change Data Capture) using Oracle GoldenGate; • Configure and manage real-time and near-real-time data replication between source systems and cloud environments; • Ensure data consistency, integrity, and synchronization between source and target systems; • Monitor ingestion pipelines, perform troubleshooting, and optimize CDC process performance; • Support full and incremental (delta) load strategies; • Develop and maintain data processing pipelines using Azure and Databricks (Spark); • Implement transformations following modern data architecture patterns using Bronze, Silver, and Gold layers; • Optimize pipelines for performance, scalability, and cost efficiency; • Work with structured and semi-structured data for analytical consumption, reporting, and AI/ML initiatives; • Collaborate with data architects to define modern Lakehouse architectures; • Support data governance, data catalog, lineage, and compliance initiatives; • Ensure data availability, reliability, security, and quality for downstream consumption.



