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AI Safety & Responsible AI Lead

USG, Inc.Jersey City, NJ🇺🇸United StatesPosted 15 Jul 2026

Quick Overview

Work Type
On Site
Level
Mid Senior

Job Description

AI Safety & Responsible AI Lead (Responsible AI / AI Governance / Model Risk / Ethical AI)

Location: 210 Hudson Street, Jersey City, NJ, 07311 (3-4 days onsite per week)

Interview: May require an in-person (F2F) interview after Video Interview

About the Role

seeking an AI Safety & Responsible AI Lead to define and operationalize Responsible AI practices across the AI lifecycle for AIRP (AI Ready Platform) and enterprise citizen-development initiatives. The role ensures AI systems are safe, fair, explainable, transparent, compliant, monitored, and aligned with enterprise values, model risk, legal, compliance, data governance, cybersecurity, and audit expectations.

Client-Specific Emphasis

  • The organization is aiming to democratize AI responsibly; this role must support enterprise AI pl development through Microsoft Power Platform, Copilot Studio, Power Apps, Power Automate, and Power BI.
  • Governance must be practical enough to support business AI use cases while satisfying banking, model risk, security, privacy, and audit controls.
  • The candidate should be able to govern high-risk workflows such as KYC, credit underwriting, financial crime, and sanctions screening.

Primary Ownership

  • Responsible AI policy, control framework, risk taxonomy, governance workflows, and production-readiness criteria for AIRP and citizen AI use cases.
  • AI risk assessments, impact assessments, safety evaluations, model-risk alignment, and post-production monitoring standards.
  • Cross-functional alignment across engineering, product, legal, compliance, model risk, audit, cybersecurity, data governance, and citizen-development enablement teams.

Key Responsibilities

  • Define Responsible AI standards, policies, procedures, risk-classification methods, and operating models for AI and GenAI initiatives.
  • Establish governance processes for use-case intake, risk assessment, model review, approval workflows, deployment readiness, ongoing monitoring, and issue escalation.
  • Develop safety and evaluation frameworks covering fairness, bias, explainability, transparency, robustness, privacy, hallucination, harmful outputs, human oversight, and overreliance.
  • Define guardrail requirements for LLMs, RAG systems, agentic workflows, high-risk banking applications, and citizen-development solutions.
  • Partner with model risk, legal, compliance, data governance, cybersecurity, audit, product, engineering, and business teams to align AI controls with enterprise expectations.
  • Lead AI impact assessments, risk reviews, control assessments, readiness reviews, remediation planning, and AI incident escalation processes.
  • Establish metrics and monitoring for bias indicators, safety violations, explainability gaps, harmful outputs, hallucination trends, user feedback, and behavior drift.
  • Create governance playbooks and reusable control evidence for AIRP use cases and Power Platform / Copilot Studio citizen-development workflows.

Must-Have Qualifications

  • Deep understanding of Responsible AI, AI ethics, model governance, model risk, explainability, fairness, privacy, safety, and enterprise risk management.
  • Experience implementing AI governance or Responsible AI controls in production or enterprise environments.
  • Understanding of LLM-specific risks such as hallucination, bias, toxicity, prompt injection, data leakage, overreliance, unsafe automation, and human oversight gaps.
  • Ability to translate policy and regulatory expectations into practical product, engineering, operating, and audit controls.
  • Experience working with cross-functional risk, compliance, legal, security, data, audit, product, and engineering stakeholders.
  • Ability to define controls that scale across centralized AI platforms and distributed citizen-development adoption.

Preferred Experience

  • Experience in banking, insurance, fintech, consulting, regulatory risk, model risk management, technology governance, or data governance.
  • Experience building AI risk taxonomies, control libraries, governance operating models, Responsible AI playbooks, or model-risk-aligned review processes.
  • Familiarity with Power Platform, Microsoft Copilot Studio, Power Apps, Power Automate, Power BI, global AI governance frameworks, model validation practices, privacy regulation, and audit expectations.

 

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Skills

Compliance
KYC
LLM
Power BI
Risk Assessment
Risk Management
SAFe
Underwriting

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