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Eqbank

Eqbank

Senior AI Platform Operations Engineer

Company

Eqbank

Role

Senior AI Platform Operations Engineer

Location

CA

Job type

Full-time

Found on Mokaru

19 hours ago

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Salary

Not disclosed by employer

Job description

Main Activities AI Platform Reliability and Operations

  • Administer and operate the AI platform to ensure availability, performance, and resilience across environments, integrations, and supporting infrastructure.
  • Monitor platform health using dashboards, logs, metrics, and alerts, and coordinate incident and service restoration activities.
  • Lead operational triage, escalation coordination, and post-incident reviews to strengthen services stability and resilience.
  • Track and report on service reliability indicators, incident trends, and operational performance.

AI Platform Enablement & Production Readiness

  • Enable approved AI use cases into production by ensuring: o Environment readiness, o Dependency validation, o Completion of operational readiness checklists, o Structured service transition activities
  • Support platform lifecycle management through: o Release coordination, o Change readiness validation, o Maintenance and capacity planning.
  • Ensure AI platform changes meet defined operational and control readiness criteria prior to release

Observability, Automation & AI Ops

  • Implement and maintain observability capabilities, including telemetry, logging, metrics, and traces required for enterprise AI operations.
  • Analyze operational data to identify anomalies, recurring issues, root-cause patterns.
  • Implement AI Ops use cases such as: o Alert correlation, o Anomaly detection, o Root-cause support, o Forecasting and predictive insights, o Automation of repetitive operational tasks.
  • Continuously improve operational efficiency through targeted automation and process optimization.

Governance, Risk, & Control Execution

  • Execute governance controls for AI solutions, including: o Usage and access controls, o Data privacy considerations, o Auditability and traceability, o Human oversight requirements
  • Ensure operational practices align with enterprise security policies, risk controls, and compliance requirements.
  • Maintain documentation and evidence required for audit, governance reviews, production readiness checkpoints, and control validation.
  • Identify control gaps and escalate risks appropriately to relevant governance and risk stakeholders.

AI Asset Visibility & Operational Integrity

  • Maintain operational visibility of AI platform assets required for monitoring, support, and cost alignment.
  • Validate asset ownership, relationships, and lifecycle status in collaboration with application and platform owners.
  • Support ongoing audits to ensure AI assets and associated cost attribution remain accurate and current.

Knowledge/Skill Requirements

  • University degree in Computer Science, Engineering, Information Technology, or a related field, or equivalent practical experience.
  • 5-7 years of experience in platform operations, site reliability engineering, DevOps, cloud operations, or enterprise IT operations.
  • Strong experience supporting production platforms and services, including monitoring, incident response, problem management, service restoration, and operational reporting.

Technical Expertise

  • Experience with cloud platforms, observability, automation, configuration management, and integration patterns, including Azure Automation runbooks (PowerShell/Python), Azure AI, Copilot integrations, AKS, virtual networks (hub-and-spoke), and App Service.
  • Expertise with observability tools such as Azure Monitor, Application Insights, and Grafana.
  • Experience with CI/CD and automation tools such as Azure DevOps, GitHub Actions, and Logic Apps.
  • Knowledge of configuration management and infrastructure-as-code tools such as Bicep, Terraform, Azure Policy, Key Vault, and relevant open-source technologies.
  • Knowledge of integration and event-driven technologies such as API Management, open-source API tools, Service Bus, Event Grid, and Apache Kafka.
  • Working knowledge of platform-supporting data and search services such as Elastic, Azure AI Search, and Cosmos DB.
  • Knowledge of enterprise network, edge security, and related internal platforms such as DNA, Fortinet, and Akamai is an asset.

Additional Capabilities

  • Working knowledge of AI/ML operational concepts, including model lifecycle support, telemetry, governance controls, human-in-the-loop practices, and production monitoring.
  • Strong understanding of ITIL/ITSM processes, including change, release, incident, problem, configuration, and service reporting practices.
  • Analytical and structured thinker with strong troubleshooting, root-cause analysis, prioritization, and continuous improvement skills.
  • Strong service orientation, professional maturity, and the ability to collaborate effectively across operations, engineering, security, risk, data, and business teams.
  • Experience creating technical documentation, operational procedures, support playbooks, dashboards, and user guidance materials.
  • Knowledge of security, privacy, audit, and compliance considerations relevant to enterprise AI and platform operations. Job Complexities / Thinking Challenges This role requires balancing platform reliability, operational efficiency, and governance discipline in a rapidly evolving AI environment.
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