Cyber Intelligence Senior Associate - AI Threat Intelligence & Data Science

JPMorgan Chase & Co.
Bournemouth
3 days ago
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Join us in shaping the future of cybersecurity as you lead our efforts against next-generation AI threats. You will have the opportunity to design impactful tools, collaborate with experts, and influence strategic decisions that safeguard our global operations. Your expertise will help us stay ahead of evolving adversaries and foster a culture of innovation and resilience. At JPMorganChase, you can make a difference and grow your career in a dynamic, supportive environment.


Job Summary:

As an AI Threat Intelligence associate in the Cybersecurity Intelligence Group, you will drive the development of frameworks and tools to counter emerging AI-enabled cyber threats. You will analyse diverse data sources, apply advanced modelling techniques, and deliver actionable insights that strengthen our defensive posture. Collaboration is key, as you partner with internal and external experts to validate research and translate findings into operational guidance. Your work will directly impact our ability to respond swiftly and proactively to evolving risks.


Job Responsibilities:

  • Research AI-enabled cyber threats and adversarial machine-learning techniques
  • Develop and implement methods and tools to detect, analyse, and anticipate AI-driven attacks
  • Collaborate with cybersecurity, national security, and AI research specialists to refine goals
  • Present findings at conferences and demonstrations to influence industry discourse
  • Interrogate diverse data sources to uncover insights and quantify opportunities
  • Formulate hypotheses and apply causal-inference techniques
  • Build statistical models, optimisation frameworks, and simulations to enhance decision-making
  • Present complex analyses clearly to technical and non-technical audiences
  • Design AI-enhanced tools to elevate analytical and operational capabilities
  • Define metrics to gauge threat severity and system resilience
  • Partner with internal and external stakeholders to validate and enhance research

Required Qualifications, Capabilities, and Skills:

  • Expertise in AI systems, including large-language models, autonomous agents, or advanced machine-learning architectures
  • Proficiency in Python, SQL, and data visualisation tools
  • Background in cybersecurity research or related technical fields
  • Experience in experimental design, causal inference, statistical modelling, and A/B testing
  • Strong software engineering skills, preferably in Python
  • Ability to communicate complex concepts to varied audiences
  • Experience collaborating with government, academia, or industry on security or AI research
  • Evidence of thought leadership through presentations, demonstrations, or publications
  • Professional certifications or hands-on experience in relevant fields

Preferred Qualifications, Capabilities, and Skills:

  • Background in offensive security research, vulnerability analysis, or exploit development
  • Participation in capture-the-flag competitions, bug bounties, or similar challenges
  • Experience building security automation for AI systems
  • Familiarity with AI safety research and threat modelling for advanced AI
  • Proficiency in additional languages
  • Experience with AI/ML products, large-language models, or developer tools in the AI/ML ecosystem

About the Cybersecurity Intelligence Group (CIG):

JPMorganChase’s Cybersecurity Intelligence Group operates globally to defend the firm against advanced cyber threats. The team gathers, analyses, and shares timely intelligence to support proactive defence and swift incident response. As threats evolve, CIG’s remit now includes risks and opportunities posed by cutting-edge AI systems and data-driven decision-making.


Why Join Us?

You will be at the forefront of AI-driven threat intelligence, collaborating with world-class experts and contributing to the security of a leading global financial institution. Your work will shape industry standards and provide opportunities for professional growth and impact.


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