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حالة تأهب وظيفة
سيتم تحديثك بأحدث تنبيهات الوظائف عبر البريد الإلكترونيحالة تأهب وظيفة
سيتم تحديثك بأحدث تنبيهات الوظائف عبر البريد الإلكترونيOverall objectives
To ensure the continuous proactive and intelligent monitoring of IT infrastructure through the integration and operation of modern observability tools.
To develop and operationalise machine learning-based anomaly detection mechanisms for early detection of issues across compute network storage and application layers.
To support incident prevention and reduction of MTTR (Mean Time to Resolution) through predictive insights automated alerts and root cause correlation.
To enhance operational visibility reliability and resilience of critical infrastructure components by applying modern data-driven monitoring strategies.
Role specific responsibilities
Design implement and fine-tune infrastructure monitoring solutions across on-prem and cloud platforms.
Develop ML-driven anomaly detection pipelines using telemetry data (logs metrics traces).
Integrate observability data into a unified dashboard and alerting platform with meaningful visualisations and thresholds.
Continuously train and evaluate ML models to reduce false positives and increase signal accuracy.
Collaborate with incident management teams to define actionable alerts and automated remediation triggers
General functional responsibilities
Ensure compliance with enterprise standards regulatory controls and audit requirements related to monitoring and data collection.
Maintain documentation of monitoring architecture detection rules ML models and escalation paths.
Work closely with infrastructure application and security teams to improve data ingestion and correlation.
Contribute to the continuous improvement roadmap for observability maturity (e.g. from reactive to predictive monitoring).
Mentor junior team members on observability tools ML practices and operational excellence.
Provide out-of-hours support for major incidents when required as part of a rota.
Qualifications :
Core competencies required
Strong knowledge of infrastructure monitoring tools (e.g. Prometheus Grafana Dynatrace Datadog Splunk New Relic).
Deep understanding of telemetry data (metrics logs traces) and how they relate to system performance and health.
Experience with ML models for anomaly detection (supervised/unsupervised learning clustering time-series forecasting).
Understanding of AIOps frameworks and concepts.
Good grasp of core infrastructure (Linux/Windows servers VMs containers cloud instances).
Familiarity with networking databases storage systems and cloud-native environments (AWS Azure).
Analytical mindset with a bias for root cause analysis.
Effective communicator able to bridge engineering and operations teams.
Proactive problem-solver with ownership mentality.
Remote Work :
No
Employment Type :
Full-time
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