Description

Key Responsibilities

  • Design and build GenAI solutions, including:
    • Agent-based architectures
    • RAG (Retrieval-Augmented Generation) pipelines
    • AI-powered tools and automation workflows
  • Develop and maintain agent frameworks, including integration with MCPs (Model Context Protocols / multi-component systems)
  • Take proofs of concept (POCs) and:
    • Mature them into scalable solutions
    • Drive adoption across teams
    • Bring them into production environments
  • Partner across teams to $B!H(Bmarket$B!I(B and evangelize AI solutions internally
  • Work hands-on across the stack, including coding, architecture, and infrastructure design
  • Operate in a high data volume environment, requiring strong data engineering fundamentals

Required Technical Skillset

  • GenAI / LLM Engineering (core requirement):
    • Experience building agents and AI workflows
    • Hands-on with RAG pipelines
    • Strong understanding of LLM integration and orchestration
  • Programming & Data:
    • Python (primary language for AI/agent development)
    • SQL (data access, transformation, querying large datasets)
    • Experience working with large-scale data environments
  • Cloud & Infrastructure:
    • Strong experience with AWS
    • Understanding of deploying and scaling AI solutions in cloud environments
  • Engineering Mindset:
    • Hands-on coder (not purely conceptual/architectural)
    • Ability to build from scratch and iterate quickly

 

Education

Any Gradute