Lead Cybersecurity - Identity Analytics Engineer

AT&T AT&T · Telecom · Hyderabad, AP, India

This role focuses on building and maintaining identity data pipelines and analytics for cybersecurity, leveraging IAM principles and various data sources. It involves modeling identity data, identifying risks and violations, and visualizing controls. While the role uses AI/ML tools and concepts, its primary focus is on data engineering and analytics within a cybersecurity context, rather than core AI model development.

What you'd actually do

  1. Ability to interpret and model identity lifecycle data from multiple systems (e.g., AD, Azure AD, HRIS, PAM, and CIAM).
  2. Experience building and maintaining identity data pipelines and normalization processes.
  3. Analytical mindset with capability to identify toxic combinations, orphaned accounts, segregation of duties (SoD) violations, and access outliers.
  4. Proficient in Radiant Logic Identity Data Management (IDDM) and Identity Analytics (IDA) — able to build data feeds, perform correlation, and develop identity insights across heterogeneous sources.
  5. Ability to visualize identity controls and risks through dashboards using platforms like Power BI, Tableau, Grafana, or Kibana.

Skills

Required

  • Identity and Access Management (IAM) principles
  • identity lifecycle data interpretation and modeling
  • identity data pipelines and normalization
  • SQL
  • Python
  • PowerShell
  • SOX, PCI-DSS, HIPAA, GDPR, FFIEC compliance frameworks
  • toxic combinations, orphaned accounts, segregation of duties (SoD) violations identification
  • identity data modeling
  • Radiant Logic Identity Data Management (IDDM)
  • Radiant Logic Identity Analytics (IDA)
  • Key Performance Indicators (KPIs) and Key Risk Indicators (KRIs) calculation
  • Power BI, Tableau, Grafana, or Kibana
  • SIEM and UEBA tools
  • security control frameworks (NIST CSF, ISO 27001, CIS Controls, Zero Trust Maturity Model)
  • GRC or IRM tools integration
  • data governance, quality scoring, lineage tracking, data stewardship
  • APIs, REST interfaces
  • communication skills
  • influencing and persuading skills
  • translating technical metrics into business-relevant insights
  • data storytelling and visualization
  • problem-solving
  • critical thinking
  • continuous improvement orientation
  • applying Artificial Intelligence (AI) or Machine Learning (ML) techniques in cybersecurity
  • Experience leveraging AI-enabled tools

Nice to have

  • Industry certifications (CISSP, CISM, CISA, Azure Security Engineer, or Identity Governance Specialist)
  • Prompt engineering
  • AI governance frameworks
  • data science fundamentals relevant to security
  • AI-driven risks mitigation
  • Interest in leveraging GenAI for security operations
  • Zero Trust architecture analytics
  • Identity Fabric initiatives

What the JD emphasized

  • Identity and Access Management (IAM)
  • identity data pipelines
  • identity data modeling
  • SOX, PCI-DSS, HIPAA, GDPR, FFIEC
  • toxic combinations, orphaned accounts, segregation of duties (SoD) violations
  • Radiant Logic Identity Data Management (IDDM) and Identity Analytics (IDA)
  • SIEM and UEBA( User Entity Behavior Analytics) tools
  • security control frameworks
  • Zero Trust architecture analytics
  • Identity Fabric initiatives
  • Artificial Intelligence (AI) or Machine Learning (ML) techniques in cybersecurity
  • AI-enabled tools (such as Copilot for Security, Darktrace, CrowdStrike Charlotte AI, or custom LLM integrations)
  • AI-driven risks

Other signals

  • identity data pipelines
  • identity data modeling
  • identity analytics
  • security analytics
  • AI/ML in cybersecurity