Sr. Director Data & AI Platforms

Honeywell Honeywell · Industrial · Atlanta, GA +1

Senior Director of Data & AI Platforms at Honeywell, responsible for defining and scaling enterprise AI architecture across cloud, edge, and hybrid environments. Focuses on simplifying platforms, creating reusable patterns, and aligning stakeholders for Honeywell Forge AI growth, with a strong emphasis on industrial edge AI and real-time inference.

What you'd actually do

  1. Define and evolve the enterprise Data & AI platform architecture spanning data, AI, and agent capabilities.
  2. Establish standards for lakehouse, streaming, vector databases, MLOps, and real-time inference platforms.
  3. Create reusable architecture patterns, governance guardrails, and golden-path templates that accelerate delivery.
  4. Evaluate emerging AI, data, agentic, and cloud technologies and translate insights into platform strategy.
  5. Define scalable architecture patterns for cloud, on-premises, edge, and hybrid AI deployments.

Skills

Required

  • Production AI/ML or data platform architecture at enterprise scale
  • Cloud AI and data services (AWS, Azure, or GCP)
  • End-to-end ML system architecture (data pipelines, feature engineering, training, serving, monitoring, feedback loops, governance)
  • LLM and agentic systems (RAG, vector databases, orchestration frameworks, inference optimization)
  • Executive communication and stakeholder influence

Nice to have

  • MS or PhD in Computer Science, Machine Learning, Data Engineering, or related field
  • Hybrid or edge architectures in industrial/OT environments
  • Modern data architecture (lakehouse, streaming, data governance, data quality, data mesh)
  • Simplifying platforms, improving developer experience, reducing tool sprawl
  • Industrial AI experience (predictive maintenance, quality inspection, process optimization, digital twins, supply chain, energy management)
  • Historian data, SCADA, IIoT, or industrial edge platforms
  • AI security and governance (responsible AI, audit logging, explainability, confidential computing, federated learning, regulatory compliance)
  • Real-time or streaming AI systems (low-latency feature computation, online learning, event-driven pipelines, streaming inference)
  • Multi-cloud or cloud-agnostic platform design (Kubernetes, KServe, Ray, Terraform)
  • Open-source contributions, published architecture work, conference speaking, thought leadership
  • Strong executive communication skills

What the JD emphasized

  • 10+ years of hands-on architecture experience designing production AI/ML or data platforms at enterprise scale.
  • Hands-on experience with LLM and agentic systems, including RAG, vector databases, orchestration frameworks, and inference optimization.
  • industrial edge AI
  • real-time inference

Other signals

  • Define and scale enterprise AI architecture
  • Simplify complex platform landscapes
  • Create reusable patterns
  • Align stakeholders
  • Industrial edge AI
  • Real-time inference