Search jobs now Find the right job type for you Create a job alert Explore how we help job seekers Contract talent Permanent talent Learn how we work with you Executive search Finance and Accounting Technology Marketing and Creative Legal Administrative and Customer Support Technology Risk, Audit and Compliance Finance and Accounting Digital, Marketing and Customer Experience Legal Operations Human Resources 2026 Salary Guide Demand for Skilled Talent Report Job Market Outlook Press Room Tech insights Labor market overview AI in recruiting Navigating the AI era Staffing for small businesses Browse jobs Find your next hire Our locations

Add your latest resume to match with open positions.

1 result for Network Engineer in Seattle, WA

Data Engineer
  • Bellevue, WA
  • onsite
  • Temporary
  • 55 - 65 USD / Hourly
  • <p>Robert Half Technology is seeking a <strong>mid-to-senior level Data Engineer</strong> to support the modernization of an existing data environment for a client in Bellevue, Washington. This role will focus on <strong>rearchitecting data pipelines into Databricks</strong>, improving performance, and establishing scalable data architecture and governance. This is a hands-on role in a <strong>fast-paced, less structured environment</strong>, ideal for someone who takes ownership and can operate with autonomy.</p><p> </p><p><strong>Duration:</strong> Long-term contract with potential for extension or conversion</p><p><strong>Location:</strong> Bellevue, Washington (3-days onsite working hybrid)</p><p><strong>Schedule:</strong> Monday-Friday (9AM-5PM PST)</p><p> </p><p><strong>Key Responsibilities</strong></p><ul><li>Rebuild and optimize existing <strong>Python-based ETL pipelines</strong> within Databricks </li><li>Design and implement scalable <strong>data ingestion and transformation processes</strong> </li><li>Architect and maintain <strong>data marts and data warehouse structures</strong> </li><li>Implement <strong>Medallion Architecture (Bronze, Silver, Gold layers)</strong> </li><li>Improve performance of data processing workflows (reduce runtimes, optimize queries) </li><li>Support migration and consolidation of data into Databricks </li><li>Document <strong>data pipelines, tables, and architecture</strong> for governance and maintainability </li><li>Define best practices for <strong>data storage, organization, and access</strong> </li><li>Ensure alignment with existing compliance and data standards </li></ul><p><br></p>
  • 2026-04-10T00:00:00Z