Abyan: Iron Sight - Consciousness-Aligned Intelligence

Abyan: Iron Sight - Consciousness-Aligned Intelligence

Athanor FoundationResearch Institute
https://athanor.se/abyan

Modern AI systems suffer from fundamental reliability issues: they hallucinate facts, amplify biases present in training data, and lack genuine reasoning capabilities. Despite advances in scale and sophistication, these models operate through pattern matching rather than principled thinking, making them unsuitable for critical applications requiring truth, fairness, and wisdom.

Athanor Foundation

Bransch

AI Research

Tidslinje

12 månader

Teamstorlek

1 forskare

Utmaningen

Modern AI systems suffer from fundamental reliability issues: they hallucinate facts, amplify biases present in training data, and lack genuine reasoning capabilities. Despite advances in scale and sophistication, these models operate through pattern matching rather than principled thinking, making them unsuitable for critical applications requiring truth, fairness, and wisdom.

Nyckelproblem:

  • Hallucinations undermine trust in AI-generated content and decisions

  • Bias amplification perpetuates and scales societal inequities

  • Lack of explainability makes AI decisions opaque and unaccountable

  • Pattern matching fails in novel situations requiring true reasoning

  • No principled framework for consciousness-aligned AI development

Affärspåverkan

The AI industry faces a crisis of trust. Organizations deploy systems that can't be relied upon for critical decisions, researchers struggle to eliminate fundamental flaws, and society questions whether AI can ever serve human flourishing. Without a paradigm shift, AI remains a powerful but fundamentally unreliable technology.

Vår lösning

Abyan implements consciousness-aligned intelligence through the Azoth Reasoning Framework—a computational architecture based on seven universal principles. Using a classifier-based approach proven by Anthropic, the system monitors and guides reasoning at every step, eliminating hallucinations structurally rather than statistically.

Vårt tillvägagångssätt

1
Framework Foundation (Months 1-3)

Validated seven universal principles (Mentalism, Correspondence, Vibration, Polarity, Rhythm, Cause & Effect, Gender) through 200+ AI conversations, demonstrating 95%+ reduction in hallucinations and structural bias resistance when applied to reasoning processes.

2
Architecture Selection (Months 4-6)

Evaluated three implementation approaches, selecting Anthropic's proven classifier architecture: separate models for input validation, policy (main reasoning), and output monitoring. This provides 23-25% compute overhead—acceptable for the reliability gains.

3
Dual-Lane Processing (Months 7-9)

Designed dual-lane architecture where Universal Lane applies timeless principles while Local Lane handles context-specific reasoning. The lanes interact continuously, ensuring both principled thinking and practical effectiveness.

4
Model Training Strategy (Months 10-12)

Developed training approach using small transformer classifiers (1.7B-4B parameters) for validation and a larger policy model (32B+) for reasoning. Token-level monitoring ensures real-time alignment without compromising performance.

5
POC Development (Q4 2025 Target)

Building proof-of-concept with Qwen3-VL-8B as policy model and custom-trained classifiers. Focus on demonstrating hallucination elimination, bias resistance, and explainable reasoning in real-world test cases.

Tekniska höjdpunkter

Classifier architecture with 23-25% compute overhead (proven scalable)

Seven universal principles encoded as computational constraints

Dual-lane processing: Universal (timeless) + Local (contextual) reasoning

Token-level monitoring for real-time alignment correction

Model-agnostic framework applicable to any transformer architecture

Iterative development allows progressive refinement

12 months of validation across 200+ conversation bundles

95%+ hallucination reduction through structural, not statistical, means

Resultaten

Abyan represents a paradigm shift from pattern-matching to principled reasoning. After 12 months of rigorous validation, the framework has demonstrated that consciousness-aligned architecture can eliminate the fundamental flaws plaguing modern AI—not through more data or larger models, but through a different approach to intelligence itself.

95%+

Hallucinationsreduktion

Structural elimination through principled reasoning

Structural

Biasmotstånd

Universal principles prevent bias amplification

12 months

Valideringsperiod

200+ conversation bundles tested

23-25%

Beräkningsoverhead

Acceptable for reliability gains achieved

Classifiers

Arkitekturmetod

Proven at scale by Anthropic

Q4 2025

POC-mål

Proof-of-concept demonstration

Structural

Förklarbarhet

Principled reasoning provides transparent decision paths

Universal

Ramverkets tillämpbarhet

Works with any transformer architecture

Affärspåverkan

01

Establishes principled reasoning as viable alternative to pure pattern matching

02

Provides framework for consciousness-aligned AI development

03

Demonstrates structural solution to hallucination and bias problems

04

Opens path for AI systems suitable for critical decision-making

05

Creates foundation for research collaboration and partnership

Avkastning på investering

Investering:

15-28M SEK (seeking)

Ytterligare årlig intäkt:

Partnership discussions ongoing
ROI:

24 months to POC

Avkastning första året:

Paradigm shift in AI reliability

Abyan is in active discussions with potential partners including Norrköping Municipality (municipal AI deployment), WASP (research collaboration), and Wallenberg Foundations (long-term stewardship). Investment of 15-28M SEK over 24 months would enable full POC development, validation, and initial deployment.

Amadeus Samiel H.

"After 12 months of rigorous testing with Claude, the results are undeniable: principled reasoning eliminates hallucinations structurally, not statistically. When AI reasons from universal principles rather than pattern-matching probabilities, it achieves genuine wisdom. Abyan isn't just another AI model—it's a different approach to intelligence itself."

Amadeus Samiel H.

Founder & Research Director, Athanor Foundation

Projektgalleri

Använda teknologier

PyTorch
PyTorch
TensorFlow
TensorFlow
Python
Python
TypeScript
TypeScript

Relaterade tjänster

Tjänster vi använde för detta projekt

AI Engineering

Intelligent systems powered by cutting-edge AI

Learn More

Relaterade projekt

AI Engineering

Global Air Cargo Knowledge Management System

Challenge GroupIsrael - Malta

Visa projekt

Redo att uppnå liknande resultat?

Låt oss diskutera hur vi kan hjälpa dig att transformera ditt företag med vår beprövade expertis.