Principal Engineer - Agentic AI Platform Engineering & Performance

Bank of America Bank of America · Banking · Charlotte, NC

Principal Engineer role focused on defining and driving the architecture, engineering standards, and technical roadmap for AI capabilities embedded across the SDLC, specifically agentic AI. The role emphasizes agent orchestration, LLMOps, runtime governance, AI performance engineering, and developer tooling to enable scalable, secure, and governed adoption of AI across engineering teams. This involves building reusable, scalable, observable, cost-efficient, and performant AI capabilities and ensuring agentic AI systems operate efficiently at scale.

What you'd actually do

  1. Develops the engineering approach for the entire program/portfolio solution and works with Architecture, to develop/analyze/deliver the implementation of technical enablers
  2. Leads the planning, definition, and design of the complex features which span multiple teams and explore solution alternatives
  3. Creates ideas on designing complex technology and solution development approaches
  4. Leads the technical oversight for teams in solution development including design reviews and code within own domain
  5. Defines the technology tool stack for the solution within ranged of internally approved and supported technologies

Skills

Required

  • 15+ years of engineering experience
  • deep technical leadership in enterprise platforms, developer tooling, or AI-enabled engineering systems
  • Demonstrated ownership of architecture, standards, and engineering direction for shared platforms across multiple lines of business
  • Experience operating in highly regulated environments with strong SDLC, risk, and audit requirements
  • Ability to influence senior technology leaders and stakeholders through clear technical strategy and engineering standards
  • Deep expertise in enterprise AI platform engineering
  • agent orchestration
  • LLMOps pipelines
  • runtime governance
  • AI performance engineering
  • developer tooling

What the JD emphasized

  • agent orchestration
  • LLMOps pipelines
  • runtime governance
  • AI performance engineering
  • developer tooling
  • scalable, observable, cost-efficient, and performant
  • agentic AI systems operate efficiently at scale
  • operating in highly regulated environments with strong SDLC, risk, and audit requirements

Other signals

  • agentic AI capabilities
  • agent orchestration
  • LLMOps pipelines
  • runtime governance
  • AI performance engineering
  • developer tooling
  • scalable, observable, cost-efficient, and performant AI capabilities
  • agentic AI systems operate efficiently at scale