Product Owner - Assurance (AIOps, Network Monitoring, Fault Managemen

Adroit People
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3 weeks ago
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  • We are seeking a Telecom OSS Product Manager with strong expertise in Assurance, AIOps, Network Monitoring, and Fault Management to define the product strategy, roadmap, and delivery of next generation service assurance capabilities across mobile, fixed, and cloud networks.
  • The role focuses on enhancing real time observability, proactive detection, anomaly identification, event correlation, RCA, and predictive insights using AI/ML techniques, while ensuring seamless integration with assurance, NOC/SOC workflows, and cross domain OSS systems. The ideal candidate brings deep knowledge of fault/performance management, alarm normalization, topology aware correlation, SLA monitoring, and closed loop automation, combined with the ability to translate operational challenges into intuitive, scalable product features that reduce MTTR, improve service reliability, and drive operational efficiency.

Strong skills in stakeholder management, backlog prioritization, data driven decision making, and cross functional collaboration are essential.

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