DEPARTMENT:Â Data Insights and Innovation
JOB TITLE:Â AI Governance & Explainability EngineerÂ
JOB CODE:Â AIGEEÂ
REPORTS TO:Â Data Governance LeadÂ
FLSA STATUS: ExemptÂ
EMPLOYMENT TYPE: Full-TimeÂ
JOB PURPOSE:
This role at Arbitration Forums is as unique as it is rewarding because of the AF IPAAL Values (Integrity, Passion, Accountability, Achievement, Leadership) and TRI Model (Trust, Respect, Inclusion).Â
The AI Governance & Explainability Engineer is a hands‑on technical role within the Data Governance team responsible for ensuring AI, GenAI, and Agentic AI solutions are explainable, governable, auditable, and production‑ready.Â
This role embeds governance directly into the AI technology stack, translating policies, regulatory expectations, and risk requirements into technical controls, automated checks, standardized artifacts, and release gates across the AI lifecycle.Â
The role combines AI/ML engineering depth, GenAI & Agentic AI design knowledge, and governance discipline to ensure AI solutions deliver explainability, can be trusted, defended, and audited in production, particularly within the Microsoft Fabric and Purview ecosystem. Â
DEPARTMENTAL EXPECTATION OF EMPLOYEEÂ
Adheres to AF Policy and Procedures and the AF IPAAL Values and TRI ModelÂ
- Acts as a role model within and outside AF.
- Performs duties as workload necessitates.Â
- Maintains a positive and respectful attitude.Â
- Communicates regularly with the departmental leader about department issues.Â
- Demonstrates flexible and efficient time management and ability to prioritize workload.Â
- Consistently reports to work on time, prepared to perform duties of the position.Â
- Meets Department productivity standards.
ESSENTIAL DUTIES AND RESPONSIBILITIES
- AI Governance by Design Engineering (Execution Focus not Policy writing)Â
- Embed governance, explainability, and risk controls directly into AI, GenAI, and Agentic AI workflowsÂ
- Translate enterprise AI policies, standards, and Responsible AI principles into:Â
- Technical guardrailsÂ
- Automated checksÂ
- Required evidence artifactsÂ
- CI/CD release gatesÂ
- Implement governance as code and automation, eliminating reliance on manual or after-the-fact reviews.Â
- AI Governance, Explainability & Human Oversight
- Advise solution teams on explainability requirements for automated, semi-automated, and decision-support AI systems.Â
- Ensure human-in-the-loop (HITL) controls are implemented where required by risk level or use case.Â
- Define, generate, and manage explainability outputs that are:Â
- Appropriate to the end-user or reviewer persona
- Aligned to the decision context and operational use
- Document explainability assumptions, limitations, and residual risk as governance evidence.Â
- Metadata, Lineage & Governance Evidence ManagementÂ
- Operationalize AI Governance in Microsoft Purview by registering and maintaining:Â
- AI models, features, prompts, agents, notebooks, and pipelines
- Maintain end to end lineage across:Â
- Data → features → models → inferences → outputsÂ
- Apply ownership, stewardship, sensitivity, and classification metadata.Â
- Ensure governance is maintained:Â
- Discoverable
- Versioned
- Traceable
- Audit-defensible
- Operationalize AI Governance in Microsoft Purview by registering and maintaining:Â
- GenAI & Agentic AI Governance EnablementÂ
- Apply governance patterns to LLMs, RAG, and Agentic AI solutionsÂ
- Ensure governance traceability when synthetic data or augmented data is used for training, testing, or evaluation.
- Implement Agentic AI lifecycle governance, including:Â
- Observability of agent actions, deviations, and failuresÂ
- Oversight of planning, reflection, and tool-use behaviorÂ
- Controls on autonomous vs. constrained operationÂ
- Enable GenAI explainability, including:Â
- Retrieval transparency for RAG (sources, relevance)Â
- Inference context documentationÂ
- Decision trace generation where applicableÂ
- Explainability, Interpretability & Model Risk ControlsÂ
- Own and operate explainability capabilities used for governance, audit, and trust.Â
- Implement and operationalize techniques such as:Â
- Feature attribution (e.g., SHAP or equivalent)Â
- Driver and proxy detectionÂ
- Global and local model explanationsÂ
- Identify bias signals, risk indicators, and explainability gaps.Â
- Store and manage explainability and observability outputs as governed, audit-ready artifacts.Â
- Support audit, compliance, and risk review activities with defensible evidence.Â
Â
- Monitoring, Observability & Incident ReadinessÂ
- Define and implement AI monitoring metrics, alerts, and thresholds for:Â
- Performance degradationÂ
- Bias and ethical risk indicatorsÂ
- Drift and instabilityÂ
- Partner with MLOps and platform teams to integrate monitoring into production pipelines.Â
- Support AI incident response and post-incident reviews with governance evidence.Â
- Ensure all observability outputs are retained, traceable, and audit‑ready.Â
- Define and implement AI monitoring metrics, alerts, and thresholds for:Â
- Governance Checkpoints & Release Gating Â
- Define and enforce governance checkpoints within CI/CD pipelines (DEV-> TEST/UAT -> PROD).Â
- Implement automated release checks for:Â
- Required documentation and evidence artifactsÂ
- Explainability artifactsÂ
- Monitoring configurationÂ
- Data usage, lineage completeness, and medallion-layer alignmentÂ
- Partner with Engineering and MLOps teams on promotion decisions while owning governance readiness, not platform approval.Â
Â
QUALIFICATIONSÂ
Required Qualifications
- Bachelor’s or Master’s degree in Computer Science, Information Systems, Data Science, Engineering, or a related field.Â
- Minimum 7 years of experience in AI/ML engineering, data science, GenAI/LLMs, NLP, Agentic AI, data governance, or related roles.Â
- Demonstrated experience operationalizing AI governance, explainability, and risk controls in production environments.Â
- Deep understanding of Agentic AI architectures and lifecycle considerations.Â
Â
Technical Skills Â
- Strong proficiency in Python with hands‑on experience in AI/ML engineering workflows.Â
- Working knowledge of Microsoft Fabric (Lakehouse, OneLake, notebooks, pipelines).Â
- Experience with Microsoft Purview (catalog, lineage, classification, ownership).Â
Experience with AI/ML and GenAI tooling, including:Â
- Azure AI Foundry / Azure MLÂ
- ML explainability libraries (e.g., SHAP)Â
- LLMs, RAG architecture, and prompt engineeringÂ
- Familiarity with Agentic AI frameworks and patterns (e.g., tool use, planning, reflection).Â
- Experience integrating governance controls into CI/CD pipelines using GitHub or Azure DevOps.Â
- Understanding of cloud platforms (Azure preferred; AWS/GCP a plus
- Experience producing audit‑ready technical documentation and evidence artifacts.Â
- Familiarity with reporting and visualization tools (e.g., Power BI) for governance and monitoring views.Â
Soft SkillsÂ
- Strong analytical and problem‑solving abilities, particularly in risk‑based decision‑making.Â
- Excellent written and verbal communication skills, with the ability to translate technical details into governance‑relevant insights.Â
- Ability to lead governance execution initiatives and influence cross‑functional teams without direct authority.Â
- Strong organizational skills with attention to detail and audit readiness.Â
- Auto insurance or claims industry experience preferred.Â
Â
Preferred Qualifications
- Experience evaluating or governing model training approaches (e.g., NLP, generative models) without owning full training pipelines.Â
- Familiarity with synthetic data governance (generation methods, limitations, risk documentation).Â
- Experience with additional AI platforms (Databricks AI, Snowflake Cortex, Dataiku).Â
- Experience in regulated industries (insurance, financial services, healthcare).Â
AMERICANS WITH DISABILITY SPECIFICATIONSÂ
PHYSICAL DEMANDS
The physical demands described here are representative of those that must be met by an employee to successfully perform the essential functions of this job.Â
While performing the duties of this job, the employee is occasionally required to stand; walk; sit; use hands to finger, handle, or feel objects, tools, or controls; reach with hands and arms; climb stairs; balance; stoop, kneel, crouch, or crawl; talk or hear; taste or smell. The employee must occasionally lift and/or move up to 25 pounds. Specific vision abilities required by the job include close vision, distance vision, color vision, peripheral vision, depth perception, and the ability to adjust focus.Â
WORK ENVIRONMENTÂ [Standard language tied to each job description]
This is a fully remote position requiring reliable high-speed internet access and a dedicated workspace.
Reasonable accommodations may be made to enable individuals with disabilities to perform the essential functions.Â
Learn more about this Employer on their Career Site
