Sr Data Architect

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

Senior Data Architect role focused on designing and assessing AI control capabilities, guardrails, and governance frameworks for secure and compliant AI ecosystems within a regulated financial institution. The role involves architecting AI controls, evaluating AI platforms/tools, and ensuring adherence to enterprise risk and compliance requirements for AI adoption.

What you'd actually do

  1. Design & maintain the architectural framework for AI/ML controls, ensuring alignment with enterprise risk & compliance requirements.
  2. Conduct formal assessments of AI platforms, tools, and frameworks to determine their control maturity, gaps, and alignment with enterprise standards.
  3. Embed Responsible AI principles (explainability, fairness, transparency, robustness) into all AI architectural designs.
  4. Serve as the enterprise expert for AI controls, helping shape policy, standards, and long-term architecture strategy.
  5. Evaluate vendor AI capabilities (e.g., model APIs, LLM platforms, vector databases, AI orchestration tools) against security, privacy, and operational control requirements.

Skills

Required

  • 10+ years in data architecture, ML/AI engineering, or enterprise architecture roles
  • Demonstrated experience assessing AI control capabilities, including evaluating vendors, platforms, and internal systems
  • Deep expertise in AI/ML governance, risk management, and Responsible AI frameworks
  • Strong knowledge of enterprise data architecture, governance, lineage, metadata, and privacy controls
  • Hands-on experience with AI/ML lifecycle governance and controls

Nice to have

  • AI Controls Architecture & Governance
  • Assessment of AI Control Capabilities
  • Responsible AI, Model Controls & Lifecycle Governance
  • AI platforms, tools, and frameworks
  • LLM platforms
  • vector databases
  • AI orchestration tools
  • RAG pipelines
  • MLOps/LLMOps platforms

What the JD emphasized

  • assessing AI control capabilities
  • AI risks
  • model governance
  • technical control frameworks required in regulated environments
  • AI Controls Architecture & Governance
  • Assessment of AI Control Capabilities
  • Responsible AI, Model Controls & Lifecycle Governance

Other signals

  • AI Controls Architecture & Governance
  • Assessment of AI Control Capabilities
  • Responsible AI, Model Controls & Lifecycle Governance