Cloud Monitoring & Data Analyst

Hampton Wick
2 weeks ago
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Our client are looking for a Cloud Monitoring & Data Analyst to manage and monitor their Azure-based SaaS solution, proactively detecting and resolving issues before they impact customers.

Key Responsibilities

  • Monitoring & Incident Detection – Implement and manage Azure Monitor, Application Insights, and Log Analytics, setting up automated alerts and dashboards for real-time system health tracking.

  • Data Analysis & Reporting – Build historical trend reports, analyse logs, and provide insights into system performance and customer impact.

  • Automation & Continuous Improvement – Develop scripts (KQL, PowerShell, Python) for log analysis and implement automated remediation workflows.

  • Collaboration & Documentation – Work closely with engineering, DevOps, and support teams to resolve incidents quickly, while documenting best practices and contributing to a customer-facing status page.

    Key attributes

  • 3+ years’ experience in cloud monitoring, data analysis, or DevOps support.

  • Strong knowledge of Microsoft Azure services (App Service, SQL Database, Blob Storage, Azure Monitor, Application Insights, Log Analytics).

  • Proficiency in Kusto Query Language (KQL) and automation scripting (PowerShell, Python).

  • Experience setting up automated alerts, dashboards, and reports to enhance system reliability.

  • Familiarity with SIEM tools (Splunk, ELK, Azure Sentinel) (Desirable)

  • Microsoft Azure certifications (AZ-104, AZ-305, AZ-500) (Desirable)

    Benefits

  • Private Medical Insurance

  • Birthday Off

  • Purchase up to an additional 5 days of holiday

  • Employee Assistance Programme

  • Aim to finish work at 2pm on Fridays

  • Pension scheme via NEST.

    Please note this role is Office-Based

    Please note: Due to the large volume of applications we receive for each position we will only be able to respond to applications received with the relevant skills. Should you not hear from us within a week, unfortunately on this occasion your application has been unsuccessful.

    March Recruitment is an equal opportunities employer and complies with all relevant UK legislation. Please note that by applying for this vacancy you accept March Recruitment’s Privacy Policy and GDPR Policy which can be found on our website and therefore give us consent to contact you.

    Consultant: Donna Jackson

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