This list contains only the countries for which job offers have been published in the selected language (e.g., in the French version, only job offers written in French are displayed, and in the English version, only those in English).
We are looking for a Data Engineer to join a financial services organization in Greer, South Carolina on a contract basis with the potential for a permanent role. This role focuses on designing and delivering modern data pipelines in a cloud-based environment, with an emphasis on reliability, quality, and scalable data processing. The position offers the opportunity to contribute to both new development and targeted improvements across an evolving data ecosystem centered on Snowflake and event-driven ingestion.
Job Responsibility
Design, build, and deliver end-to-end data pipelines in Snowflake to support business and analytics needs
Create new data integration workflows while troubleshooting and resolving issues in existing pipelines
Apply sound engineering practices for coding, documentation, testing, and deployment to improve consistency and maintainability
Balance hands-on development of new solutions with optimization work that improves performance, stability, and efficiency
Develop streaming and ingestion processes using Kafka to enable timely and dependable data movement
Strengthen observability and data quality controls so pipeline health and accuracy are easier to monitor and maintain
Help reduce technical debt by simplifying legacy data processes and modernizing pipeline design where appropriate
Contribute to AI-assisted engineering efforts by using approved tools to accelerate development, testing, and documentation activities
Requirements
Hands-on experience building and supporting data pipelines in Snowflake
Working knowledge of Apache Kafka for event-driven or streaming data ingestion
Experience in data engineering within a cloud-first environment
Familiarity with Azure Databricks and its role in broader data platforms
Ability to follow engineering best practices across development, testing, and deployment workflows
Understanding of data quality, monitoring, and observability concepts in production data systems
Comfortable working in an environment with a mix of modern and legacy data processes
Exposure to AI-assisted development tools such as Claude or similar coding and documentation assistants