SelectorAI SME

Hybrid

Published 9 hours ago

SelectorAI SME Overview The Selector AI Engineer will serve as a technical subject-matter expert (SME) responsible for deploying, integrating, and supporting the Selector AI platform within the client's lab and infrastructure environments. This role is hands-on and highly technical, involving configuration, data integration, performance monitoring, documentation, and collaboration with client engineering teams to ensure the platform meets defined use cases and acceptance criteria. Key Responsibilities

  • Assist the client with configuration, deployment, and integration of the Selector AI platform within the client's lab environment, providing hands-on, keyboard-level implementation support
  • Collaborate with client engineers to develop, expand, and refine product use cases, including defining and validating acceptance criteria
  • Support client engineers in monitoring the Kubernetes (K8s/MKS) cluster and underlying infrastructure that supports the Selector platform
  • Identify, define, and help measure performance and operational KPIs
  • Create and maintain technical documentation in collaboration with client engineers, including:
  • Platform usage within the client environment
  • Operational runbooks and internal support procedures
  • Assist with the setup, configuration, and validation of data feeds into the Selector platform
  • Participate in data validation activities to ensure the platform is functioning as expected and delivering accurate, reliable insights
  • Act as a Selector AI subject-matter expert, providing expert-level recommendations to the client on:
  • Platform setup and configuration
  • Integration patterns
  • Metrics, monitoring, and performance optimization
  • Ongoing operational support and best practices

Required Skills & Experience

  • Hands-on experience deploying and supporting Selector AI or similar AIOps / observability platforms
  • Strong background in Kubernetes (K8s) and containerized infrastructure monitoring
  • Experience with data ingestion pipelines, data validation, and system integrations
  • Familiarity with performance metrics, KPIs, and observability tooling
  • Ability to collaborate closely with client engineering teams in a lab or pre-production environment
  • Strong documentation skills with the ability to translate technical processes into clear operational guides

Preferred Qualifications

  • Experience supporting enterprise or financial-services environments
  • Background in AIOps, monitoring, or observability platforms (e.g., Selector, Datadog, Dynatrace, New Relic, Prometheus)
  • Experience working in proof-of-concept (PoC) or lab environments prior to production rollout

Contract

Mid-Senior Level

Hybrid