Advancing AI Through
    Self-Organizing Systems

    Research & development at the intersection of artificial intelligence,
    self-organization, and critical systems

    Research Focus

    Cadenzai conducts research in artificial intelligence with work in self-organizing memory and recursive model optimization. Our approach leverages principles of criticality and emergent behavior to develop robust and adaptive AI systems.

    Publications

    RKDO: Recursive KL Divergence Optimization

    Approaches to model improvement through recursive self-modification and optimization processes.

    Applications

    Our research findings drive innovation across multiple domains, creating practical solutions for complex real-world challenges.

    Biotechnology

    Advanced AI systems for drug discovery, protein folding prediction, and genomic analysis using self-organizing principles.

    Medicine

    Adaptive diagnostic systems and personalized treatment optimization through recursive learning algorithms.

    Finance

    Self-organizing market analysis and risk assessment systems that adapt to changing financial landscapes.

    Infrastructure

    Critical systems monitoring and optimization for smart cities and autonomous infrastructure management.

    AI Tooling

    Next-generation development frameworks and tools that leverage self-organizing capabilities for enhanced performance.

    Leadership

    Anthony Martin

    Anthony Martin

    Founder

    Contributed to research in self-organizing systems, cognitive architectures and AI optimization. Author of papers exploring recursive model improvement and memory organization in artificial intelligence systems.

    Continues to pursue applied research in self-organizing systems and criticality, working to advance understanding in artificial intelligence.

    Dr. Marcus Badgeley

    Dr. Marcus Badgeley

    M.D., Ph.D.

    Top 1% board-ranked physician-scientist and highly cited in medical AI.

    Broad research background spanning epidemiology, molecular biology, nanotech, neuroscience, genetics, and extensive CNN work with Google. Work includes generalizability studies, translating image recognition to language models, and navigating complex legal and ethical research challenges.

    Alex Isaev

    Alex Isaev

    Research Coordinator

    AI Engineer • Physics & Data Science

    Previously at AWS, holding a bachelor's degree in Physics and Data Science from Queen Mary University of London. Key contributor to the SOMA framework development with expertise in agentic systems and quantitative finance.

    Passionate problem-solver with experience in leadership roles and collaborative research, bringing hands-on technical skills from game development to network validation and financial technologies.

    Stay Updated

    Get the latest research updates and insights delivered to your inbox.