AI Offense-Defense Dynamics Lead Researcher

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🌍 Remote📍 Anywhere (Open Globally)Full Time, Contract💰 USD 125K–200K

About this role

Job Summary As AI capabilities rapidly advance, we face a fundamental knowledge gap: we don't yet fully understand the complex dynamics that determine whether AI systems, or even individual capabilities of them, predominantly threaten or protect society. In this role, you'll lead research to decode these offense-defense dynamics, examining how specific attributes of AI technologies influence their propensity to either enhance societal safety or amplify risks. You'll apply interdisciplinary methods to develop quantitative and qualitative frameworks that analyze how AI capabilities proliferate through society as either protective or harmful applications, producing actionable insights for developers, evaluators, standards bodies, and policymakers to anticipate and mitigate risks. This position offers a unique opportunity to shape how society evaluates and governs increasingly powerful AI systems, with direct impact on global efforts to maximize AI's benefits while minimizing risks. This role is 100% remote but requires occasional travel. About CARMA The Center for AI Risk Management & Alignment (CARMA) works to help society navigate the complex and potentially catastrophic risks arising from increasingly powerful AI systems. Our mission is specifically to lower the risks to humanity and the biosphere from transformative AI. We focus on grounding AI risk management in rigorous analysis, developing policy frameworks that squarely address AGI, advancing technical safety approaches, and fostering global perspectives on durable safety. Through these complementary approaches, CARMA aims to provide critical support to society for managing the outsized risks from advanced AI before they materialize. CARMA is a fiscally-sponsored project of Social & Environmental Entrepreneurs, Inc., a 501(c)(3) nonprofit public benefit corporation. Responsibilities • Develop quantitative system dynamics models capturing the interrelationships between technological, social, and institutional factors that influence AI risk landscapes • Design detailed analytical models and simulations to identify critical leverage points where policy interventions could shift offense-defense balances toward safer outcomes • Expand and operationalize our current offense/defense dynamics taxonomy and nascent framework, developing metrics and models to predict whether specific AI system features favor offensive or defensive applications • Build empirically-informed analytical frameworks using documented cases of AI misuse and beneficial deployed uses to validate theoretical models • Research how specific technical characteristics (capabilities breadth/depth, accessibility, adaptability, etc.) interact with sociotechnical contexts to determine offense-defense balances • Build public understanding of offense-defense dynamics through blog posts, articles, conference talks, and media engagement • Create tools and methodologies to assess new AI models upon release for their likely offense-defense implications • Draft evidence-based guidance for AI governance that accounts for complex interdependencies between technological capabilities and deployment contexts • Translate research findings into actionable guidance for key stakeholders including policymakers, AI developers, security professionals, and standards organizations Requirements • A M.Sc. or higher in either Computer Science, Cybersecurity, Criminology, Security Studies, AI Policy, Risk Management, or a related field • Demonstrated experience with complex systems modeling, risk assessment methodologies, or security analysis • Strong understanding of dual-use technologies and the factors that influence whether capabilities favor offensive or defensive applications • Deep understanding of modern AI systems, including large language models, multimodal models, and autonomous agents, with ability to analyze their technical architectures and capability profiles • Experience in any of the following: Security mindset, Security studies research, Cybersecurity, Safety engineering, AI governance, Operational risk management, Systems dynamics modeling, Network theory, Complexity science, Adversarial analysis, or Technical standards development • Ability to develop both qualitative frameworks and quantitative models that capture sociotechnical interactions, and comfort creating semi-quantitative semi-empirical models also grounded in logic  • Record of relevant publications or research contributions related to technology risk, governance, or security • Exceptional analytical thinking with ability to identify non-obvious path dependencies and feedback loops in complex systems Pluses • PhD in a relevant field • Experience with system dynamics modeling, hypergraph techniques, or other complex network analysis methods • Skills in developing interactive tools or dashboards for risk visualization and communication • Background in interdisciplinary research bridging technical and social science domains • Demonstrated aptitude in top-down techniques and first-principles thinking • Experience with the quantification of qualitative risk factors or developing proxy metrics for complex phenomena • Background in compiling and analyzing incident databases or case studies for pattern recognition • Familiarity with empirical approaches to technology assessment and impact prediction • Knowledge of international relations theory as it applies to technology proliferation dynamics CARMA/SEE is proud to be an Equal Opportunity Employer. We will not discriminate on the basis of race, ethnicity, sex, age, religion, gender reassignment, partnership status, maternity, or sexual orientation. We are, by policy and action, an inclusive organization and actively promote equal opportunities for all humans with the right mix of talent, knowledge, skills, attitude, and potential, so hiring is only based on individual merit for the job. Our organization operates through a fiscal sponsor whose infrastructure only supports persons authorized to work in the U.S. as employees. Candidates outside the U.S. would be engaged as independent contractors with project-focused responsibilities. Note that we are unable to sponsor visas at this time.

Frequently Asked Questions

What is the salary for the AI Offense-Defense Dynamics Lead Researcher role at futureof-life?
The listed salary for this AI Offense-Defense Dynamics Lead Researcher position at futureof-life is USD 125K–200K. This is a remote Full Time, Contract role.
Is the AI Offense-Defense Dynamics Lead Researcher job at futureof-life remote?
Yes, this AI Offense-Defense Dynamics Lead Researcher position at futureof-life is remote, with team members based in Anywhere (Open Globally). You can work from home or anywhere in the supported regions.
Is the AI Offense-Defense Dynamics Lead Researcher role at futureof-life full-time or part-time?
This is listed as a Full Time, Contract position. It is posted as a AI Offense-Defense Dynamics Lead Researcher role in the CARMA department at futureof-life.
Which team or department does the AI Offense-Defense Dynamics Lead Researcher at futureof-life belong to?
This AI Offense-Defense Dynamics Lead Researcher position is part of the CARMA department at futureof-life. See the full job description for more information about the team structure and responsibilities.
How do I apply for the AI Offense-Defense Dynamics Lead Researcher position at futureof-life?
Click the "Apply Now" button on this page. You will be redirected to futureof-life's official application portal hosted on lever where you can submit your application directly.
When was the AI Offense-Defense Dynamics Lead Researcher job at futureof-life posted?
This AI Offense-Defense Dynamics Lead Researcher position at futureof-life was posted on May 29, 2025. Apply as soon as possible — early applications are often reviewed first.
AI Offense-Defense Dynamics Lead Researcher
futureof-life · 💰 USD 125K–200K
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