Security Architect - AI

City of London
9 months ago
Applications closed

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I am recruiting for an experienced Security Architect with a strong specialisation in Artificial Intelligence (AI) and Machine Learning (ML) security.

This is a hybrid role - 2 days in London, 3 days remote.

This role does fall inside IR35 so you will need to work through an umbrella company for the duration of the contract.

The role involves significant influence across the organisation, with customers and peers, regarding the strategic contribution of AI/ML security to business objectives.

You will apply a wide range of complex technical and professional security activities in diverse AI/ML contexts, driving the development and execution of AI/ML security strategies.

A key aspect of the role is contributing to the formulation of AI/ML security policies, standards and strategies, ensuring alignment with overall business and technology strategies.

You will have several years experience of strategic cyber security.

A current Security Professional Certification such as CISSP, CISM is required.

You must have proven understanding of security frameworks (NIST, ISO 27001, TOGAF, SABSA).

You must also have a deep understanding of AI/ML concepts, algorithms, models, regulations and controls and extensive technical experience in AI/ML Security Architecture.

Proven threat modelling, risk analysis, and architectural validations and an in-depth knowledge of adversarial machine learning mitigation is also essential for this role.

Please apply ASAP to discuss further

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