Senior Security Consultant (AI Specialist)

Applicable Limited
London
3 weeks ago
Applications closed

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The team youll be working with:

Job Title: Senior Security Consultant (Architecture – AI Specialist)

Overview:

We are seeking a highly skilled and experienced Security Architect with a strong specialisation in Artificial Intelligence (AI) security. The ideal candidate will be responsible for designing, implementing, and maintaining robust security architectures for AI-powered applications and infrastructure. You will play a critical role in identifying and mitigating security risks associated with AI, ensuring data privacy, and promoting ethical AI practices. This role requires a deep understanding of both traditional security principles and the unique challenges posed by AI technologies.

What youll be doing:

  • AI Security Architecture:
    • Design and implement secure architectures for AI/ML models, data pipelines, and related infrastructure.
    • Develop security policies and procedures specific to AI systems.
    • Evaluate and select security tools and technologies for AI environments.
  • Risk Assessment and Management:
    • Conduct thorough risk assessments to identify vulnerabilities and threats specific to AI systems.
    • Develop and implement risk mitigation strategies for AI-related security issues, including adversarial attacks, data poisoning, and model bias.
    • Monitor and report on AI security risks and compliance.
  • Data Security and Privacy:
    • Ensure the security and privacy of sensitive data used in AI applications.
    • Implement data security controls and encryption techniques for AI datasets.
    • Ensure compliance with relevant data privacy regulations (e.g., GDPR, CCPA).
  • Ethical AI:
    • Develop and implement policies and procedures for ethical AI development and deployment.
    • Promote awareness of ethical considerations related to AI, including bias, fairness, and transparency.
    • Assist in the development of AI governance frameworks.
  • Security Best Practices:
    • Provide expert advice and guidance on security best practices for AI development and deployment.
    • Stay up to date on the latest AI security threats and vulnerabilities.
    • Conduct security audits and penetration testing of AI systems.
  • Collaboration:
    • Collaborate with data scientists, AI engineers, and other stakeholders to ensure security is integrated throughout the AI lifecycle.
    • Communicate security risks and recommendations effectively to both technical and non-technical audiences.

What experience youll bring:

  • 7+ Years experience in a Cyber/Information Security Role.
  • Hold a current and relevant Security Certifications (e.g., CISSP, CISM).
  • Extensive knowledge of security best practices, frameworks, and standards (e.g., NIST, ISO 27001).
  • Proven experience as a Security Architect, with a strong focus on AI security.
  • Deep understanding of AI/ML concepts, including model development, data pipelines, and deployment.
  • Strong understanding of ethical AI principles and practices.
  • Experience with AI security tools and technologies.
  • Knowledge of adversarial machine learning techniques.
  • Familiarity with AI governance frameworks.
  • Experience with data security and privacy regulations (e.g., GDPR, CCPA).
  • Experience with DevSecOps practices.
  • Strong analytical and problem-solving skills, with the ability to assess complex situations and develop effective solutions.
  • Excellent communication, collaboration, problem-solving and presentation skills, with the ability to influence and persuade stakeholders.
  • Experience in cloud security is highly desirable.
  • Ability to obtain UK government SC clearance.

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