- Complete planning documentation for 5-phase development - UI design specifications and integration - Domain architecture and directory templates - Technical specifications and requirements - Knowledge incorporation strategies - Dana language reference and integration notes
22 lines
1.6 KiB
Markdown
22 lines
1.6 KiB
Markdown
universal@white ~/D/M/E/A/Personal Assistant> cat ./8GGuKOrooJA_AI-Dual-Manifold-Cognitive-Architecture-Experts-on_transcript.txt | fabric -sp extract_recommendations
|
|
- Use dual indexes: dense vectors for concepts and sparse indexes for exact terms.
|
|
- Build a multi-layered memory with episodic, semantic, and persona components.
|
|
- Model a user's cognitive trajectory from their personal data over time.
|
|
- Transform a person's knowledge timeline into a weighted knowledge graph.
|
|
- Convert static knowledge graphs into dynamic, gravity well-like manifolds.
|
|
- Create a novelty repulsor to push AI reasoning beyond known expertise.
|
|
- Construct a second manifold representing collective, domain-specific knowledge.
|
|
- Use a braiding processor to merge individual and collective knowledge streams.
|
|
- Implement gated fusion to filter out hallucinations and irrelevant noise.
|
|
- Move intelligence from parametric model weights to non-parametric external structures.
|
|
- Employ multi-agent systems with specialized domain and author agents.
|
|
- Optimize for ideas at the intersection of personal and community knowledge.
|
|
- Anchor new ideas in both personal history and social reality.
|
|
- Use geometric attention and manifold-constrained neural ODEs for stability.
|
|
- Ensure exact lexical matching for technical terms to prevent errors.
|
|
- Apply rank fusion to combine results from different retrieval methods.
|
|
- Linearize complex graph structures for LLM context windows.
|
|
- Design AI personas that act as intellectual sparring partners.
|
|
- Frame discovery as a dual-constraint optimization problem.
|
|
- Leverage tools like GraphRAG for advanced reasoning over knowledge graphs.
|