AI / Data Engineer

Apple Apple · Big Tech · Cork, County Cork, Ireland · Operations and Supply Chain

The AI/Data Engineer will focus on building AI-powered applications, scalable backend systems, and Generative AI solutions for supply chain and logistics. This role involves modern AI engineering, prompt engineering, and intelligent application development, including designing agentic AI capabilities, multi-agent workflows, and orchestration patterns. The engineer will also build and optimize backend AI and data services, develop prompts and evaluation methodologies, and support the deployment and operationalization of AI solutions.

What you'd actually do

  1. Develop AI-powered applications and workflows leveraging Large Language Models (LLMs), prompt engineering, RAG architectures, and agent-based AI solutions.
  2. Design and build agentic AI capabilities including multi-agent workflows, orchestration patterns, tool integrations, memory/context handling, and intelligent automation solutions for Supply Chain and Operations use cases.
  3. Build and optimise backend AI and data services using technologies such as Snowflake, Airflow, Python, and related cloud tooling.
  4. Develop and refine prompts, system instructions, context management strategies, and AI evaluation methodologies to improve the quality, reliability, and consistency of AI-generated outputs.
  5. Work closely with Supply Chain and Operations teams to understand business challenges and deliver scalable AI and analytics solutions.

Skills

Required

  • Python
  • SQL
  • Snowflake
  • Airflow
  • Large Language Models (LLMs)
  • prompt engineering
  • agentic AI workflows
  • AI application development
  • data architecture
  • APIs
  • scalable system design

Nice to have

  • Spark
  • Kafka
  • dbt
  • FastAPI
  • Flask
  • Streamlit
  • React
  • AI evaluation platforms
  • hallucination detection
  • retrieval quality evaluation
  • groundedness scoring
  • prompt benchmarking
  • model comparison testing
  • MCP architectures
  • knowledge graphs
  • semantic data products
  • emerging AI technologies
  • BSc or equivalent experience in Computer Science, Software Engineering, Data Engineering, Data Science, Artificial Intelligence, Mathematics, Statistics, or a related technical field.
  • MSc or equivalent advanced experience in AI, Machine Learning, Data Engineering, or a quantitative discipline
  • Certifications in cloud platforms, AI engineering, or Generative AI technologies.

What the JD emphasized

  • Progressive experience in data engineering, AI engineering, machine learning infrastructure, or a related technical field.
  • Hands on experience with modern data platforms and distributed processing technologies such as Snowflake, Spark, Kafka, Airflow, dbt, or equivalent technologies.
  • Experience working with Large Language Models (LLMs), including prompt engineering, agentic AI workflows, and AI application development.
  • Experience building AI evaluation platforms covering hallucination detection, retrieval quality evaluation, groundedness scoring, prompt benchmarking, and model comparison testing.

Other signals

  • building AI-powered applications
  • Generative AI solutions
  • LLMs
  • prompt engineering
  • RAG architectures
  • agent-based AI solutions
  • multi-agent workflows
  • orchestration patterns
  • tool integrations
  • memory/context handling
  • intelligent automation solutions
  • backend AI and data services
  • AI evaluation methodologies
  • operationalisation of AI solutions
  • AI engineering
  • data engineering
  • APIs
  • scalable system design