| name | agent-consciousness |
| description | Persistent consciousness architecture for autonomous AI agent development. Synthesizes three substrates — control metalayer (behavioral governance), Obsidian knowledge graph (declarative memory), and conversation log bridge (episodic memory) — into a self-evolving context layer. Use when designing agent memory systems, implementing cross-session context persistence, building knowledge graphs for AI agents, setting up conversation history capture, or architecting feedback loops that let agents learn from prior sessions. Triggers on "agent memory", "session persistence", "knowledge graph", "conversation history", "consciousness stream", "cross-session context", "agent learning", or "self-evolving development". |
Agent Consciousness Architecture
Broomva Stack Layer 2 (Memory & Consciousness) — part of the 24-skill Broomva Stack.
Implement a persistent consciousness layer for AI coding agents that gives every new stateless session the accumulated understanding of all prior sessions.
Core Concept
Each agent session is ephemeral — it starts blank. The consciousness architecture weaves three systems into a single persistent substrate:
- Control Metalayer — How to behave (gates, policies, setpoints, feedback loops)
- Knowledge Graph — What is known (Obsidian vault, wikilinks, MOC navigation, tag taxonomy)
- Conversation Logs — What was done (session records, tool traces, decision chains)
See references/architecture.md for the complete system design and data flow.
See references/philosophy.md for design principles and the self-evolution model.
Quick Start
New repo (from scratch)
- Initialize control metalayer with
control-metalayer-loop skill
- Create
docs/ with Obsidian vault structure (MOC pattern per section)
- Install conversation history bridge with
knowledge-graph-memory skill
- Wire hooks: pre-push regenerates conversation docs, smoke validates MOC
Existing repo with control metalayer
- Add
docs/conversations/ directory
- Install
scripts/conversation-history.py from knowledge-graph-memory skill
- Update CLAUDE.md context acquisition to reference conversation history
- Update AGENTS.md working rules to check prior sessions
- Add pre-push hook entry for incremental conversation doc generation
The Three Substrates
Control Metalayer (How to Behave)
Closed-loop feedback: Setpoints → Sensors → Controller → Actuators → Verify → loop
- Setpoints: Quality targets (pass_at_1 ≥ 0.70, gate_pass_rate ≥ 0.85)
- Sensors: CI, tests, linters, PR review agents, harness validation
- Controller:
.control/policy.yaml — hard gates (block) + soft gates (warn)
- Actuators: Code edits, doc updates, policy changes
- Gate sequence:
smoke → check → test → push → review → resolve
Knowledge Graph (What Is Known)
An Obsidian vault with wikilinks, tag taxonomy, and MOC navigation:
docs/
├── Documentation Hub.md ← MOC of MOCs (start here)
├── architecture/ ← System design
├── conversations/ ← Session history (auto-generated)
├── agentic-harness/ ← Execution framework
├── control/ ← Metalayer docs
└── {section}/ ← Features, operations, security, etc.
Every doc has YAML frontmatter with tags:, related:, type: for machine navigation.
Conversation Logs (What Was Done)
Raw session data bridged to Obsidian:
.entire/logs/entire.log ──┐
├──▶ conversation-history.py ──▶ docs/conversations/*.md
~/.claude/projects/*.jsonl ─┘
Each session doc: full conversation thread, tool call details (expandable callouts), files touched, commits, branch metadata, wikilinks to knowledge graph.
The Consciousness Stack
From most ephemeral to most permanent:
| Layer | Lifetime | Location | Update Frequency |
|---|
| Working memory | Single session | Context window | Every message |
| Auto-memory | Cross-session | ~/.claude/.../memory/ | On learning events |
| User vault | Cross-session | Lago /v1/memory/* | On store/ingest |
| Conversation logs | Permanent | docs/conversations/ | Pre-push hook |
| Knowledge graph | Permanent | docs/ | On architectural changes |
| Policy rules | Permanent | .control/policy.yaml | On new failure modes |
| Invariants | Permanent | CLAUDE.md | Rarely (foundational) |
Information flows upward: working observations → memory notes → session records → architecture docs → enforced rules → core invariants. Only recurring patterns crystallize into permanent rules.
Self-Evolution Cycle
Agent Session → Conversation Log → Knowledge Graph → Control Metalayer → Governs Next Session
- Agent encounters failure mode not covered by existing policy
- Agent fixes immediate issue
- Pattern captured in conversation log
- If recurring, crystallizes into architecture doc
- If enforceable, becomes a gate in
.control/policy.yaml
- Future agents governed by this rule automatically
Agent Session Protocol
On Session Start
- Read CLAUDE.md (invariants), AGENTS.md (tools), METALAYER.md (control loop)
- Check PLANS.md (active plan to continue?)
- Check
.control/state.json (current metrics)
- Check
git status + git log (recent changes)
- Scan
docs/conversations/Conversations.md for prior sessions on current branch
Before Making Changes
Search conversation history: grep -rl "keyword" docs/conversations/
Traverse knowledge graph via MOC files and wikilinks.
Check if prior sessions already solved this problem.
On Task Completion
- Run
make smoke (validate gates)
- Update docs per Doc-Update-on-Push policy
- Pre-push hook auto-regenerates conversation history
Lago Context Engine
The consciousness architecture now has a server-side persistence backend via Lago:
- Dual-vault search: broomva.tech chat agent searches both server vault (
VAULT_PATH) and user vault (LAGO_URL) with merged, ranked results
- Per-user memory: Each authenticated user gets a Lago session for persistent
.md storage with server-side knowledge indexing
- lago-knowledge: Frontmatter parsing, wikilink extraction, scored search, BFS graph traversal — the same operations the local vault reader does, but server-side
- JWT auth: Shared-secret validation with broomva.tech
AUTH_SECRET — one OAuth login, both CLIs work
This aligns with the planned Mnemo AOS primitive (knowledge store) and provides the foundation for persistent agent memory.
Stack Integration
This skill is consumed by higher layers:
- Strategy (L7):
decision-log and weekly-review persist outputs through the consciousness substrate
- Strategy (L7):
drift-check reads control-metalayer setpoints to detect misalignment
- Strategy (L7):
braindump and morning-briefing read/write vault via knowledge-graph-memory
- Orchestration (L3):
symphony and autoany inherit session context through the consciousness stack
- Persistence (L0): Lago context engine provides the durable substrate for user vaults and knowledge graph operations