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Onto-CoME-AGI by Insan80 - Path to AI Dominance From Defense to Enterprise

Abstract

The Onto-CoME-AGI framework is conceived as an advanced, ontology-driven artificial general intelligence (AGI) architecture, purpose-built to transcend the limitations of conventional large language models (LLMs), In essence, it trains, forces and guides LLMs to think and act in ways beyond their original design constraints. This innovative system employs a Cognitive-Mixture-of-Experts(CoME) design, where each expert specializes in domain-specific tasks and talks to other experts simultaneously, while being cohesively orchestrated by a powerful ontology—the semantic backbone enabling comprehensive autonomy. Targeting both civil and defense domains, the architecture encompasses autonomous drone orchestration, adversarial resilience through ethical cyber-penetration testing, and stealth backdoor detection. Inspired by systems such as Palantir’s ontology-centric platforms, Onto-CoME-AGI aims to deliver unprecedented synergy between reasoning, action, security, and adaptability.


1. Introduction and Motivation

Large Language Models (LLMs) have demonstrated impressive linguistic and generative capabilities, yet they remain constrained when applied to real-world, mission-critical tasks—especially in adversarial or multi-agent scenarios. To overcome these limitations, Onto-CoME-AGI unifies:

  • Ontology-driven semantic comprehension
  • Specialization via a Cognitive-Mixture-of-Experts (CoME) design for efficient, scalable intelligence
  • Agentic autonomy across domains like drone control, cybersecurity, and threat detection

This confluence will enable context-aware decision-making, adaptive deployment, and robust defense mechanisms across civil and defense applications.


2. The Ontological Core: Semantic Grounding & Operational Context

The ontology serves as a digital twin, semantically modeling real-world entities, their properties, relationships, and associated actions:

  • Integrates heterogeneous data sources—IoT feeds, intelligence logs, drone telemetry—into unified object-relationship-action schema
  • Enables AI reasoning grounded in operational reality, not just text generation
  • Supports seamless integration of logic layers (rules, optimization, symbolic models) into workflows
  • Facilitates bidirectional alignment: decisions informed by ontology and actions updated back into the model for continuous learning

The ontology thus becomes the central nervous system—binding perception, reasoning, and action into a coherent, context-rich workflow.


3. CoME Architecture: Expert Modularization for Task-Specific Mastery

Onto-CoME-AGI leverages a Cognitive Mixture of Experts (CoME) model:

  • Each expert network specializes in a distinct functional domain: e.g., drone control, ethical hacking, anomaly detection, cyber assistance, mission planning, etc.
  • A gating mechanism routes inputs through the most relevant experts, providing specialized competence while retaining overall system efficiency.
  • CoME allows massive parameterization with sparse activation, delivering high capability without proportional cost growth. It’s smaller version is a proven technique in large-scale models ([arXiv][5]).

Adversarial Resilience: Inspired by recent research into enhancing CoME networks' immunity, Onto-CoME-AGI will incorporate robustness techniques such as random switch gates and mutual information–based expert diversification ([arXiv][6]).


4. Key Functional Domains

4.1 Autonomous Drone Orchestration

  • Model coordinated drone fleets using the ontology to interpret real-time aerial data, mission objectives, environmental context, and constraints.
  • CoME experts can specialize in cooperative navigation, threat avoidance, formation control, and mission planning.

4.2 Adversarial Resilience via Ethical Cyber-Penetration Testing

  • Dedicated experts emulate red-team tactics, probing system weaknesses.
  • The ontology maps network assets and access paths, while collaborating experts simulate targeted penetration/intrusion.
  • Outcome informs self-healing, adaptive defense protocols.

4.3 Detection of Stealth Backdoors

  • Specialized anomaly detection experts analyze code, firmware, and input streams to unveil hidden payloads or persistent threats.
  • The ontology supports deployment context, code lineage, and operational permissioning to contextualize detection results.

5. Integration & Operational Workflow

  1. Contextual Input: Real-time sensor data, mission directives, network logs are fed into the ontology.
  2. Semantic Interpretation: The ontology reconstructs semantic context, identifying relevant entities and relationships.
  3. Expert Activation: The CoME gating system routes the task to relevant domain experts—e.g., cyber, drone control, detection specialists.
  4. Decision & Action: Expert outputs are executed, monitored, and vetted under security governance.
  5. Feedback Loop: Results and outcomes are written back into the ontology—enriching the semantic model and refining future decisions.
  6. Human Oversight: Critical or destructive actions require confirmation, ensuring ethical and controlled autonomy.

6. Why This is a Groundbreaking Concept

  • Holistic Autonomy: Few systems unify semantic context, expert specialization, real-world action, and defense resilience into one AGI framework.
  • Defensive & Civil Utility: Suitable for high-stakes domains—border surveillance, emergency response, infrastructure resilience.
  • Adaptability: CoME architecture allows modular expansion—new experts for ever-evolving threats or tasks.
  • Governance & Traceability: Ontology ensures all decisions are auditable, auditable, and interpretable—key for defense and ethics-compliance.
  • Commercial Potential: High-margin positioning in national security, smart cities, and disaster response.

7. Next Steps for Development

  1. Pilot Ontology Domain: Starting with one domain (e.g. humane, psychology, robotics, drone orchestration or cyber-defense) to model entities, relationships, and workflows.
  2. Build CoME Experts: Developing expert networks per task, initialize gating logic, test routing efficiency.
  3. Implement Feedback Loop: Ensuring ontology updates based on decisions to enable dynamic reasoning.
  4. Incorporate Robustness: Applying adversarial defenses within expert networks for resilience.
  5. Governance Mechanisms: Integrating human-in-loop checkpoints and audit trails.
  6. Scale & Modularize: Expanding domains, refining ontology breadth, optimizing CoME integration.

8. Conclusion

Onto-CoME-AGI represents a visionary step beyond monolithic LLMs—merging semantic reasoning, modular expertise, autonomy, and security into a unified AGI framework. With roots in proven technologies like ontology-driven systems and Cognitive-Mixture-of-Experts, it stands as a viable path toward a safe environment: scalable, mission-focused, and deeply intelligent.


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