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Data Analyst - SC cleared

Mastek
Corsham
2 weeks ago
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Overview

Role: Data Analyst

Location: Hybrid - Corsham (2 Days a week)

Experience: 10+ Years

Good to have Public sector or Higher education domain experience

Note: This description reflects the job responsibilities and requirements as published by the employer.

Key Responsibilities
  • Analyse identity and account data across secure systems to identify and detect trends, anomalies, policy violations, and access risks.
  • Support the design, implementation, and refinement of RBAC and ABAC models aligned with defence security standards.
  • Develop and maintain secure, auditable dashboards and reports to monitor access provisioning, deprovisioning, and entitlements.
  • Collaborate with IAM, cybersecurity, IT, and compliance teams to define access roles, attributes, compliance metrics and policies.
  • Conduct periodic access reviews and support audit and compliance efforts.
  • Automate reporting processes and improve data visualization for stakeholders.
  • Translate complex data into actionable insights to support decision-making.
RequirementsEducation & Experience
  • Bachelor’s degree in data science, Computer Science, Statistics, Mathematics, or a related field.
  • 2+ years of experience in a data analyst role, preferably within secure government programmes.
  • Strong understanding of RBAC and ABAC principles and their application in high-security environments.
  • Active SC/DV Clearance is essential.
Technical Skills
  • Strong SQL skills and ability to work with large, complex datasets from multiple systems.
  • Experience with BI and visualization tools (e.g., Power BI, Tableau, Looker).
  • Experience with IAM platforms such as Microfocus NetIQ, Microsoft Entra ID (Azure AD), SailPoint, ForgeRock, Okta.
  • Familiarity with identity lifecycle management, privileged access management (PAM), and access certification processes.
  • Understanding of event-driven data, behavioral analytics, and anomaly detection methods.
Seniority level
  • Mid-Senior level
Employment type
  • Full-time
Job function
  • Information Technology
Industries
  • Information Services and IT Services and IT Consulting

Note: Information about location-based job postings, nearby opportunities, and related roles have been trimmed to focus on the core responsibilities and qualifications for this position.


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