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Artificial Intelligence (AI) Engineer

Job

Robert Half

Grand Prairie, TX (In Person)

Full-Time

Posted 4 days ago (Updated 15 hours ago) • Actively hiring

Expires 7/13/2026

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Job Description

We are looking for an Artificial Intelligence (AI) Engineer to join a manufacturing organization in Grand Prairie, Texas on a Long-term Contract assignment. This role centers on creating enterprise-ready AI solutions that automate data-intensive processes, with a strong emphasis on autonomous workflows, backend engineering, and scalable system design. The ideal candidate will combine hands-on experience with Claude, C#, Visual Studio, and Microsoft SQL to deliver reliable AI-enabled applications that improve data classification, retention, and archiving outcomes.
Responsibilities:
  • Build and deploy autonomous AI workflows that streamline data handling, classification, and archival activities across backend platforms.
  • Create AI-enabled applications using Claude within a .NET and Visual Studio development environment to support production use cases.
  • Develop and enhance APIs, services, and processing layers that power intelligent data automation solutions.
  • Translate legacy database logic into modern Entity Framework-based implementations to improve maintainability and enable AI-assisted processing.
  • Redesign data architecture components to support a shift from tightly coupled database structures toward service-oriented or microservices-based models.
  • Define and refine prompts, agent behaviors, and orchestration logic to ensure dependable and repeatable AI outcomes.
  • Improve the efficiency, scalability, and operational cost of AI-driven workflows through performance tuning and architecture decisions.
  • Work with business and technical stakeholders to establish data governance standards, retention rules, and classification frameworks.
  • Produce clear technical documentation and share knowledge to support adoption and long-term sustainability of delivered solutions.