Senior AI Engineer, Architect
Indexed description
Responsibilities
- Technical Direction, Architecture Standards & Roadmap Ownership (30%)
- Define reference architecture, design standards, and engineering guardrails for agent workflow orchestration, human collaboration, and identity/governance capabilities. (Decide/Consult)
- Own sequencing of releases, deprecation strategy, and compatibility standards to enable safe evolution with minimal disruption. (Decide)
- Secure-by-Design Identity, Policy Enforcement & Auditability (25%)
- Establish and enforce non-human identity patterns, consent propagation mechanisms, RBAC/ABAC policy models, and least-privilege access across agent workflows. (Decide/Consult)
- Ensure end-to-end auditability for agent actions, prompt/tool changes, model switches, handoffs/messages, approvals, and access decisions; define evidence requirements for compliance. (Decide/Consult)
- Define and enforce data classification, PII redaction, retention/purge, and policy-based routing to compliant models/providers. (Decide/Consult)
- Deterministic Human–Agent Collaboration & Long-Running Orchestration (20%)
- Define and drive implementation of deterministic handoff patterns (assign/escalate/co-pilot/co-author), resilient messaging, and stateful long-running workflows with timers and compensation/rollback. (Decide/Consult)
- Ensure seamless integration into enterprise systems (CRM/ITSM/custom apps) via gateways and standardized interfaces. (Consult/Decide)
- Automated Delivery, CI/CD Gates & Safe Migration Patterns (15%)
- Define promotion gates and automated CI/CD standards including versioning, testing, security scans, approvals, and drift detection. (Decide/Consult)
- Drive safe migration practices between model providers/versions with minimal downtime and proven rollback; define operational playbooks. (Decide/Consult)
- Operational Excellence, Reliability & Enablement (10%)
- Own SLIs/SLOs and operational posture: observability standards (metrics/logs/traces), incident and credential compromise runbooks, and release readiness reviews. (Decide/Consult)
- Deliver enablement: reference implementations, developer playbooks, training for platform ops and application teams; mentor senior and junior engineers. (Consult/Execute)
Supervision Required: Low — operates with periodic alignment to senior leadership and governance forums.
Complexity of Role: Very high — enterprise-grade orchestration with strict security/audit requirements, multi-tenant isolation, deterministic workflow needs, and latency SLOs across multiple integrated systems.
Cross-Functional Interactions: Yes — leadership-level engagement across security/identity, DevX, SRE, enterprise applications, and business/product stakeholders.
Qualifications
Key Skills/Experience Required Minimum Qualifications:
Minimum Qualifications
- Bachelor’s in CS/AI/ML/Data Science or equivalent experience required.
- Master’s preferred
- 10 year experience in ML, Data Science, AI required.
- Extensive experience designing and operating enterprise platforms/services with production reliability and governance requirements.
- Systems/platform architecture: multi-tenant isolation, scalability, versioning, backward compatibility, release sequencing
- Orchestration and workflow systems: Temporal-class systems (or equivalent) including long-running workflows, compensation, state persistence
- Identity and security architecture: SSO (SAML/OIDC), non-human identity, RBAC/ABAC, consent propagation, secrets/keys rotation, least-privilege design
- Governance and compliance engineering: audit logging models, approval workflows, policy routing, PII redaction, retention/purge controls
- Observability/SRE partnership: SLO definition, OTel-based telemetry, incident management, reliability engineering
- Developer enablement: SDK design, reference implementations, platform adoption strategy, mentoring and technical leadership
- Strategic thinking: shapes direction and standards; anticipates second-order impacts of platform decisions
- Proactiveness & initiative: identifies systemic risks early (security, reliability, adoption) and drives resolution
- Discretion: handles sensitive security/identity, compliance, and access-control topics appropriately
- Financial acumen: frames tradeoffs across build vs buy, provider choices, operational cost and risk
- Executive communication: crisp narratives for governance forums; evidence-based recommendations and decisions
- Organizational leadership: aligns multiple teams, mentors senior engineers, drives adoption and accountability
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