Unified Knowledge Graph
Project Summary
A system to capture, map, and visualize the structural connections between all domains of learning and life. The core thesis: all domains share fundamental patterns — formal grammars, wave mechanics, graph theory, boolean logic, feedback loops — and mapping these connections accelerates learning by enabling transfer.
The system builds on three existing platforms: the association engine (379 keys, 602+ edges), the competency domains (13 domains with microskills), and the codex (37 categories). What’s missing is timestamped competency snapshots, cross-domain transfer edges with dates, and a visualization layer that renders the graph and growth trajectory over time.
Domains (Initial)
| Domain | Surface | Structural Pattern |
|---|---|---|
Mathematics |
Algebra, logarithms, set theory, percentages |
Abstract structures, proofs, logical deduction |
Music |
Violin, scales, resonance, sympathetic vibration |
Wave mechanics, harmonic series, logarithmic ratios |
Language |
Spanish, syntax, morphology, rhetoric, persuasion |
Formal grammars, compositional semantics |
Computer Science |
Unix, networking, programming, C, syscalls |
Formal grammars, state machines, graph traversal |
Physics |
RF communication, wave propagation, electromagnetism |
Wave mechanics, frequency coupling, standing waves |
Literature & Philosophy |
Don Quijote, rhetoric, ethics, humility |
Narrative structure, logical argumentation, epistemology |
Health |
Exercise, diet, energy, meditation, sleep |
Feedback loops, homeostasis, systems regulation |
Security |
802.1X, ISE policy, cryptography, OWASP |
Trust models, formal verification, access control (set theory) |
Infrastructure |
Networking, Linux, automation, deployment |
State machines, idempotency, convergence |
Connecting Structures
The visualization system will map these recurring structures across domains:
-
Formal grammars — Chomsky hierarchy governs both
awkpattern syntax and Spanish verb conjugation -
Wave mechanics — violin string resonance, RF propagation, and STP convergence are all standing wave phenomena
-
Boolean logic —
findpredicates, ISE authorization rules, and rhetorical syllogisms share the same compositional structure -
Feedback loops —
ctimeinode updates, metabolic homeostasis, and musical ear training all rely on tight observation-correction cycles -
Graph theory — association engine edges, network topologies, and knowledge dependency graphs are the same mathematical object
-
Logarithmic scales — musical intervals (octave = 2:1), decibel measurement, and human perception all operate logarithmically
Status
| Component | Description | Status | Notes |
|---|---|---|---|
Phase 0: Data Model |
Define competency snapshot schema, transfer edge format, domain taxonomy |
🟡 In progress |
Initial capture |
Phase 1: Collection |
Timestamped competency snapshots, cross-domain edge capture |
❌ Not started |
Needs snapshot schema |
Phase 2: Storage |
Extend association engine YAML or new data store |
❌ Not started |
Evaluate: YAML vs SQLite vs JSON |
Phase 3: Visualization |
matplotlib/Python graphs — growth curves, transfer maps, domain heat maps |
❌ Not started |
Core deliverable |
Phase 4: Camps |
Structured intensive learning periods with pre/post snapshots |
❌ Not started |
Depends on Phase 1-3 |
Phase 5: Cross-Study |
Automated transfer edge detection from codex, worklogs, git history |
❌ Not started |
Advanced — mine existing data |
| Field | Value |
|---|---|
PRJ ID |
PRJ-2026-05-unified-knowledge-graph |
Author |
Evan Rosado |
Created |
2026-05-27 |
Updated |
2026-05-27 |
Status |
Draft |
Category |
Personal / Learning Analytics |
Priority |
P1 |