Director of Software Engineering - Workplace Technology

JPMorgan Chase JPMorgan Chase · Banking · Dublin, Ireland · Corporate Sector

Director of Software Engineering leading a team to develop and deploy phygital AI solutions leveraging IoT and edge-to-cloud computing. Focus on integrating AI/ML with IoT ecosystems for real-time analytics and scalable solutions.

What you'd actually do

  1. Develops strategic roadmaps for phygital AI leveraging IoT sensors, edge computing, and cloud infrastructure
  2. Mentors and upskill engineers in IoT data interoperability, edge-to-cloud workflows, and AI model deployment
  3. Implements governance for IoT-generated data streams, applying FAIR principles for findability and reusability
  4. Addresses cybersecurity and scalability challenges across edge devices and cloud platforms
  5. Drives R&D from IoT pilots to production-scale phygital solutions, ensuring interoperability and advanced analytics integration

Skills

Required

  • AI/IoT R&D concepts
  • Applied AI/IoT experience
  • Leading technologists
  • Edge-to-cloud deployments
  • Phygital or Industry 4.0 applications
  • IoT data interoperability
  • Edge-to-cloud workflows
  • AI model deployment
  • IoT solutions for operations optimization
  • Predictive maintenance
  • Real-time monitoring
  • Sensor integration
  • Edge computing for low-latency AI inference
  • Cloud platforms for advanced ML
  • Big data analytics
  • Scalable storage
  • Integrating IoT data with phygital models
  • Prompt engineering for GenAI on edge devices
  • Cloud-based validation
  • FAIR data principles for IoT ecosystems
  • Architecting resilient edge-to-cloud pipelines
  • Cybersecurity
  • Cost management
  • Talent management
  • Stakeholder communication

Nice to have

  • Advanced degree in Computer Science, AI, or related field
  • Certifications in cloud platforms such as AWS IoT or Azure Edge

What the JD emphasized

  • Experience leading teams in edge-to-cloud deployments for phygital or Industry 4.0 applications
  • Deep hands-on knowledge of edge computing for low-latency AI inference (e.g., 5G-enabled processing) transitioning to cloud platforms for advanced ML, big data analytics, and scalable storage
  • AI technical depth in integrating IoT data with phygital models, including prompt engineering for GenAI on edge devices and cloud-based validation

Other signals

  • AI/ML integration with IoT
  • Edge-to-cloud AI inference
  • Phygital AI solutions