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Value Spectrum Technologies Linkedin · Posted 27d ago

AI-Ops Architect || On-site at Phoenix, AZ || W2 & C2C || Need Local to AZ

Phoenix, Arizona, United States

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Indexed description

Role: Senior AI Ops Architect

Location: Onsite in Phoenix, AZ

Experience: 12+

Job Description

We are seeking a highly skilled AI Ops – Senior Architect to lead the design, implementation, and optimization of AI-driven operational platforms across large-scale, mission-critical environments. The ideal candidate will possess deep expertise in machine learning–enabled operations, observability, automation frameworks, cloud engineering, and enterprise SRE/DevOps practices. This role will drive the transformation of traditional IT operations into intelligent, autonomous, self-healing systems.

The Senior Architect will collaborate with cross-functional engineering, cloud, platform, and data science teams to deliver predictive, proactive, and automated operational outcomes.

Key Responsibilities

  • AI-Driven Operations Architecture
  • Lead the architecture and implementation of AI-powered operational frameworks, including predictive analytics, anomaly detection, NLP-driven automation, and auto-remediation systems.
  • Define and evolve the overall AI Ops strategy, roadmap, standards, and governance.
  • Implement intelligent monitoring and decision models that enhance reliability and operational efficiency.
  • Architect solutions that integrate machine learning models into production operations workflows.

Observability, Monitoring & Automation

  • Design end-to-end observability ecosystems (metrics, logs, traces, topology, events) integrated with AI/ML platforms.
  • Build anomaly detection models using ML and time-series analysis to identify issues before failures occur.
  • Drive automated incident detection, impact assessment, and classification using AI-based models.
  • Implement proactive auto-healing and automated resolution workflows.

Cloud & Platform Engineering

  • Architect scalable AI Ops platforms using AWS, Azure, or Google Cloud Platform cloud-native services.
  • Design infrastructure and pipelines for AI-driven monitoring and operational insights.
  • Integrate AI Ops capabilities with Kubernetes, service mesh, cloud-native microservices, and distributed systems.
  • Optimize cost, performance, and reliability using intelligent orchestration and scaling.

Data Engineering & ML Ops Integration

  • Partner with data engineering teams to build robust data pipelines for operational data ingestion.
  • Work with ML Ops teams to operationalize ML models, including training, evaluation, deployment, and monitoring.
  • Ensure continuous retraining and drift detection for AI Ops models.
  • Define data taxonomies, quality standards, and metadata management for operational datasets.

SRE, DevOps & Automation Frameworks

  • Align AI Ops with SRE principles, SLIs, SLOs, and error budgets.
  • Integrate AI-driven insights into CI/CD pipelines and operational workflows.
  • Develop event-driven, automated runbooks using ML and rule-based systems.
  • Implement intelligent capacity planning, scaling, and resource optimization.

Security, Compliance & Governance

  • Ensure AI Ops solutions meet enterprise security, compliance, and audit requirements.
  • Define governance frameworks for AI model usage, transparency, and monitoring.
  • Collaborate with cybersecurity teams on intelligent threat detection and risk analysis.

Leadership & Collaboration

  • Provide architectural leadership and technical direction to engineering and operations teams.
  • Mentor teams on AI Ops concepts, automation, and intelligent operations.
  • Present architecture proposals and operational improvements to leadership stakeholders.
  • Influence enterprise-wide transformation toward autonomous operations.

Required Skills & Experience

  • 12+ years of IT experience with 5+ years in SRE/DevOps/AI Ops architecture.
  • Strong expertise in:
  • AI Ops platforms (Moogsoft, Dynatrace Davis AI, BigPanda, New Relic AI, Datadog AIOps)
  • Observability stacks (Prometheus, Grafana, ELK, Splunk, AppDynamics)
  • ML pipelines and ML Ops tooling (SageMaker, Vertex AI, MLflow, Databricks)
  • Cloud architectures on AWS / Azure / Google Cloud Platform
  • Event-driven systems and automation tools

Strong programming/scripting in Python, Go, or Java for automation and ML integration.Experience with Kubernetes, Docker, microservices, and distributed systems.Deep understanding of time-series analysis, anomaly detection, NLP, and predictive analytics.Experience operationalizing ML models and integrating them into production systems.
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