GenAI Solutions Engineer

  • Posted 2 hours ago | Updated 2 hours ago

Overview

Remote
$80 - $90
Contract - W2
Contract - 12 Month(s)

Skills

GenAI
SAP
LLM
System Integrations

Job Details

Translating AI capabilities into business value requires a technically versatile engineer who can bridge the gap between complex AI models and practical applications. This implementation-oriented full-stack role combines software engineering expertise with specialized knowledge of how to efficiently leverage data sources, LLMs, and AI agents in production environments to deliver tangible business value.
Experience required:

  • Accelerates user adoption through intuitive interfaces and seamless system integrations
  • Creates efficient data pipelines connecting LLMs to relevant utility information sources
  • Enables intelligent automation through multi-agent systems for complex workflows
  • Develops sustainable solutions that can evolve with business needs and technology advances

Key Responsibilities:

  • Build proof-of-concept applications and production-ready interfaces for GenAI capabilities
  • Connect AI services with enterprise systems (SAP, internal databases) for data exchange
  • Design and implement multi-agent architectures to solve complex business processes
  • Develop tool integration frameworks allowing AI to interact with utility systems
  • Create robust memory and reasoning systems for contextual, multi-step AI interactions
  • Implement appropriate guardrails and safety measures for AI agent systems
  • Gather requirements and translate business needs into technical implementation
  • Produce documentation and knowledge transfer materials for sustainable solutions

Expected Skillset:

  • Full-Stack Development: Modern front-end frameworks, back-end technologies, API design
  • System Integration: Experience connecting disparate systems, data orchestration, and authentication
  • AI Application Patterns: RAG architectures, prompt engineering, agent orchestration frameworks
  • Agent Architecture: Knowledge of multi-agent systems, collaboration protocols, and tool integration
  • Reasoning & Memory: Understanding of chain-of-thought reasoning, context management, and planning algorithms
  • User Experience: Ability to design intuitive AI interfaces with appropriate feedback mechanisms
  • Rapid Prototyping: Demonstrated ability to quickly build working demos and iterate based on feedback.
Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.