AIOps Engineer

Job Description

As AIOps Engineer at CloudlyIO, you sit at the intersection of artificial intelligence and operational excellence. You will build and operate the intelligence layer on top of our infrastructure and application observability stack, applying machine learning and automation to transform raw telemetry into actionable operational insight, faster incident detection, predictive alerting, and autonomous remediation where appropriate.This role is central to how CloudlyIO operates its own AI products and also directly informs the capabilities we build into CloudlyMELT for our customers. You will both use AIOps tooling and help shape what great AIOps looks like at production scale.This is a role for someone who understands both ML techniques and production operations deeply, and who finds it genuinely exciting to apply one to improve the other.

Job Requirement

AIOps Platform Development

  • Design and build AIOps capabilities across CloudlyIO's observability and operations stack, including anomaly detection, intelligent alerting, event correlation, and root cause analysis automation
  • Develop ML models for predictive failure detection, capacity forecasting, and performance degradation early warning across cloud infrastructure and AI workloads
  • Build and maintain data pipelines that ingest telemetry from infrastructure, applications, and AI systems into unified operational intelligence systems
  • Implement LLM-powered operations tooling including natural language incident summarization, automated runbook suggestion, and root cause explanation

Intelligent Monitoring & Alerting

  • Evolve CloudlyIO's monitoring posture from reactive alerting to proactive and predictive operations using ML-driven signal analysis
  • Reduce alert noise through intelligent event correlation, deduplication, and suppression
  • Build dashboards and operational intelligence interfaces that give engineering teams clear, actionable visibility into system health and predicted risks

Incident Intelligence

  • Build and maintain automated incident triage and enrichment pipelines that accelerate mean time to detection (MTTD) and mean time to resolution (MTTR)
  • Develop post-incident analysis tooling that identifies patterns across historical incidents and surfaces systemic improvement opportunities
  • Integrate AIOps capabilities with existing incident management workflows and on-call tooling

Cross-Team Collaboration & Platform Contribution

  • Work closely with CloudOps, DevOps, SecOps, and MLOps teams to embed AI-driven intelligence throughout the operational stack
  • Collaborate with the CloudlyMELT product team to ensure internal AIOps practices inform and improve our customer-facing observability product
  • Evaluate and recommend AIOps tools, frameworks, and approaches as the discipline and our needs evolve
  • Document all AIOps systems, models, and operational procedures clearly and maintain them as systems change
YOU MAY BE A GOOD FIT IF YOU HAVE

  • 3 to 5 years of experience combining ML or data engineering with production operations, platform engineering, or site reliability engineering
  • Strong proficiency in Python with hands-on experience building ML models for anomaly detection, time series forecasting, or classification in operational contexts
  • Deep familiarity with observability tooling including Prometheus, Grafana, Elasticsearch, Kibana, CloudWatch, and Datadog
  • Experience working with large-scale telemetry data including metrics, logs, and traces
  • Working knowledge of cloud infrastructure on AWS, with familiarity in how infrastructure components fail and how those failures manifest in telemetry
  • Experience integrating LLMs or ML models into operational workflows and tooling
  • Strong understanding of incident management practices including MTTD, MTTR, and post-incident review processes
  • Comfort working across teams and translating operational needs into ML problem definitions

PREFERRED QUALIFICATIONS
  • Experience with GPU infrastructure observability and AI workload performance monitoring
  • Familiarity with distributed tracing frameworks such as Jaeger or OpenTelemetry
  • Experience with streaming data platforms such as Kafka or Kinesis for real-time telemetry processing
  • Knowledge of Kubernetes operational patterns and failure modes
  • Experience contributing to or building commercial AIOps or observability products
  • Familiarity with chaos engineering and resilience testing as inputs to operational intelligence
  • Bachelor's or Master's degree in Computer Science, Engineering, Data Science, or a related field

COMPENSATION & BENEFITS
  • Salary: Competitive and negotiable based on experience
  • Two annual festive bonuses, each equivalent to half a month's salary
  • Two-day weekends, 10 days casual leave, 10 days sick leave, and 14 public holidays per CloudlyIO's global holiday calendar 
  • Fully subsidized lunch and evening snacks, plus tea and coffee throughout the day
  • Health insurance
  • Direct collaboration with US clients and teams, working on real enterprise AI infrastructure from day one