409 lines
17 KiB
Markdown
409 lines
17 KiB
Markdown
# DivaCode — AI Being Platform Action Plan
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**Language:** Go
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**Inference:** llama.cpp (HTTP server), OpenAI-compatible API planned
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**Storage:** SQLite (primary), PostgreSQL + pgvector (future)
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**Inspiration:** OpenHer, Agent Diva, nanobot
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---
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## Current Status (2026-06-10)
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**Builds:** yes
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**Runs:** yes (requires llama.cpp on :8080)
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**Known issues:**
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- Prompt template is raw text — model dumps reasoning/self-correction meta-text instead of just the response
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- No chat template configurability (ChatML, Llama 3 instruct, etc.)
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- TUI is basic (no streaming, no word-wrap polish)
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- Memory store uses keyword `LIKE` search, not real embeddings
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- OpenAI-compatible adapter not yet built
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- Matrix adapter is a stub
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---
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## Architecture Overview
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```
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User
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│
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├── TUI (Bubble Tea)
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└── Matrix (future)
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│
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┌─────┴──────────────────────────────┐
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│ Core Agent Loop │
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│ (internal/agent/) │
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│ - Message routing │
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│ - Tool invocation │
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│ - Context management │
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└─────┬──────────────────────────────┘
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│
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┌─────┴──────────────────────────────┐
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│ Companion Layer │
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│ (internal/companion/) │
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│ ├─ Personality (5 bounded traits) │
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│ ├─ Relationship (familiarity,trust)│
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│ ├─ Reflection (diary,observations)│
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│ ├─ Mood (6 states + energy) │
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│ └─ Prompt Composer (dynamic ctx) │
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└─────┬──────────────────────────────┘
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│
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┌─────┴──────────────────────────────┐
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│ Memory Layer │
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│ (internal/memory/) │
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│ ├─ Short-term (ephemeral context) │
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│ ├─ Long-term (SQLite → pgvector) │
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│ ├─ Episodic / Diary (sqlite) │
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│ └─ Self-memory (promises,strats) │
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└─────┬──────────────────────────────┘
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│
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┌─────┴──────────────────────────────┐
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│ Inference (internal/llama/) │
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│ ├─ llama.cpp HTTP client │
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│ └─ OpenAI-compatible (planned) │
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└────────────────────────────────────┘
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Skills / Tools:
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├─ web_fetch
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├─ web_search (stub)
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└─ MCP protocol (future)
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├─ Obsidian vault
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├─ Gitea
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├─ Actual Budget
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└─ Custom MCP tools
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```
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---
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## Phase 0 — Foundation & Scaffolding
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**Status: COMPLETE**
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- [x] Go module: `git.db123.ir/db123/divacode`
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- [x] Project structure per Holy Code Bible conventions
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- [x] `internal/config/` — std lib `os.Getenv` only
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- [x] `internal/storage/` — `modernc.org/sqlite` (pure Go, no CGO), auto-creates `data/` dir
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- [x] `internal/llama/client.go` — HTTP client for `POST /completion`, `POST /embedding`, `GET /health`
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- [x] `.env.example`, `Makefile`, `.gitignore`, `Dockerfile`, `docker-compose.yml`
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- [x] `AGENTS.md` with architecture, commands, conventions
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- [x] `pkg/types/types.go` — Message, Role, Mood, ToolCall types
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- [x] `pkg/personality/traits.go` — TraitValue, RelationshipMetrics, DiaryEntry, Observation types
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---
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## Phase 1 — Core Agent Loop
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**Status: COMPLETE** (minor issues remain)
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- [x] `internal/agent/agent.go` — message loop: receive → memory search → prompt → llama → save → respond
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- [x] `internal/agent/scheduler.go` — background goroutine, configurable tick (default 15m), mood check, diary trigger, autonomous message queue
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- [x] `cmd/divad/main.go` — wires everything: config, DB, llama health, TUI, scheduler, Matrix, API
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- [x] Conversation persistence to SQLite (`conversations`, `messages` tables with indexes)
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- [x] Bubble Tea TUI with viewport + input bar, Ctrl+C/Ctrl+Q quit
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- [x] HTTP API (std lib `net/http`): `GET /health`, `POST /v1/chat`, `POST /v1/conversations`
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- [ ] Prompt template is raw headers — model outputs self-correction/next-action meta-text instead of just the response
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- [ ] No token tracking — context window grows unbounded
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- [ ] TUI doesn't stream tokens (waits for full completion)
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**Schema (`internal/storage/migrations.go`):**
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```sql
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CREATE TABLE conversations (
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id TEXT PRIMARY KEY,
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created_at TEXT NOT NULL DEFAULT (datetime('now')),
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updated_at TEXT NOT NULL DEFAULT (datetime('now'))
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);
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CREATE TABLE messages (
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id TEXT PRIMARY KEY,
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conversation_id TEXT NOT NULL REFERENCES conversations(id),
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role TEXT NOT NULL CHECK(role IN ('user','assistant','system','tool')),
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content TEXT NOT NULL,
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tool_call TEXT,
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token_count INTEGER,
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created_at TEXT NOT NULL DEFAULT (datetime('now'))
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);
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CREATE INDEX IF NOT EXISTS idx_messages_conversation ON messages(conversation_id);
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CREATE TABLE context_state (
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conversation_id TEXT PRIMARY KEY REFERENCES conversations(id),
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token_count INTEGER NOT NULL DEFAULT 0,
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summary TEXT
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);
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```
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---
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## Phase 2 — Prompt Templating & Format Fix
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**Goal:** Fix model output. Swap raw prompt text for a configurable chat template so the model only returns the assistant response, not reasoning meta-text.
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- [ ] `internal/llama/template.go` — chat template formatter:
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- ChatML: `<|im_start|>system\n...<|im_end|>\n<|im_start|>user\n...<|im_end|>\n<|im_start|>assistant\n`
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- Llama 3 instruct: `<|begin_of_text|><|start_header_id|>system<|end_header_id|>\n...<|eot_id|>`
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- Configurable via env `CHAT_TEMPLATE=chatml` (default)
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- [ ] Refactor `companion/promptbuilder.go` to output structured segments (system context, personality, relationship, conversation history, user message)
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- [ ] Let template.go wrap those segments in the chosen format
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- [ ] Strip system prompt of raw formatting headers — let template handle structure
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- [ ] Add `stop` tokens per template (`<|im_end|>`, `<|eot_id|>`)
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- [ ] **Test:** "hi" produces just "Hello!" not paragraphs of self-correction
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---
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## Phase 3 — Long-Term Memory (RAG)
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**Goal:** Embedding-based retrieval so the agent recalls facts across sessions.
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- [ ] `internal/memory/embed.go` — call llama.cpp `POST /embedding` to generate vectors
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- [ ] SQLite vector storage: store embeddings as BLOB in `memories` table
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- [ ] `internal/memory/store.go` — upgrade `Search()` from keyword `LIKE` to cosine similarity scan
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- [ ] Temporal decay — older memories scored lower (weight = importance \* recency_factor)
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- [ ] Importance scoring — user flags ("remember this"), emotional content, repeat mentions boost score
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```sql
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CREATE TABLE memories (
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id TEXT PRIMARY KEY,
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content TEXT NOT NULL,
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embedding BLOB, -- float32 vector
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source TEXT, -- 'conversation', 'reflection', 'user_input'
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importance REAL DEFAULT 0.5, -- 0.0–1.0
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created_at TEXT NOT NULL DEFAULT (datetime('now')),
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last_accessed TEXT
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);
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CREATE INDEX IF NOT EXISTS idx_memories_importance ON memories(importance);
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CREATE INDEX IF NOT EXISTS idx_memories_created ON memories(created_at);
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```
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- [ ] **Future:** Migrate to PostgreSQL + pgvector for production-scale vector search
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- [ ] **Test:** Store info, restart agent, ask about stored info → verify recall
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---
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## Phase 4 — OpenAI-Compatible Adapter
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**Goal:** Swap inference to any OpenAI-compatible API (OpenAI, vLLM, Ollama, Groq, etc.).
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- [ ] `internal/llama/provider.go` — interface:
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```go
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type Provider interface {
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Complete(ctx context.Context, req *CompletionRequest) (*CompletionResponse, error)
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Embed(ctx context.Context, content string) ([]float64, error)
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Health() error
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}
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```
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- [ ] Rename `internal/llama/` → `internal/inference/`
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- [ ] `llama.go` — implements Provider (existing llama.cpp client wrapped)
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- [ ] `openai.go` — implements Provider via OpenAI-compatible REST API (`/v1/chat/completions`, `/v1/embeddings`)
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- [ ] Config: `INFERENCE_PROVIDER=llama|openai`, `OPENAI_API_KEY`, `OPENAI_BASE_URL`, `OPENAI_MODEL`
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- [ ] Both providers produce same interface, switchable via env var
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- [ ] **Test:** Same conversation, swap provider, verify behavior is consistent
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---
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## Phase 5 — Episodic Diary & Reflection
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**Goal:** Daily diary entries + periodic self-reflection for narrative continuity. The diary is the emotional continuity layer.
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**Status: CODE DONE** — needs LLM integration for real summaries.
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- [x] `internal/companion/reflection.go` — `GenerateDiary`, `RecentObservations`, `AddObservation`
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- [x] `diary_entries` table:
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```sql
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CREATE TABLE diary_entries (
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id TEXT PRIMARY KEY,
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date TEXT NOT NULL, -- YYYY-MM-DD
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summary TEXT NOT NULL,
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mood TEXT,
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topics TEXT, -- JSON array
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observations TEXT, -- JSON array
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created_at TEXT NOT NULL DEFAULT (datetime('now'))
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);
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```
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- [x] `observations` table:
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```sql
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CREATE TABLE observations (
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id TEXT PRIMARY KEY,
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content TEXT NOT NULL,
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confidence REAL DEFAULT 0.5,
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category TEXT, -- 'topic_interest', 'interaction_style', 'mood_pattern'
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applied INTEGER DEFAULT 0,
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created_at TEXT NOT NULL DEFAULT (datetime('now'))
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);
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```
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- [ ] Connect scheduler's nightly diary trigger to LLM-generated summaries (currently writes stub text)
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- [ ] Reflection → Personality update pipeline:
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- Diary entries accumulate → periodic analysis → trait drift candidates
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- Approval process: observations → candidates → bounded update
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- Max 0.5% trait change/day, max 5%/month — slow evolution feels human, fast feels schizophrenic
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- [ ] **Test:** Simulate conversations across multiple "days", verify diary entries, verify trait drift remains within bounds
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---
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## Phase 6 — MCP Tools & Integrations
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**Goal:** Extensible tool system for web search, file access, external services.
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**Status: PARTIAL**
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- [x] `internal/tools/registry.go` — register/list/execute tools with parameter definitions
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- [x] `internal/tools/builtin.go` — `web_fetch` (working), `web_search` (stub)
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- [ ] MCP protocol client (`internal/tools/mcp.go`):
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- Connect to MCP servers via stdio or TCP
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- List available tools with parameters
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- Execute tool calls, parse results into context
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- [ ] Tool call loop in agent:
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- LLM decides to call tool → agent executes → result appended to context → LLM generates final response
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- [ ] MCP-managed integrations:
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- Obsidian vault (via `enquire-mcp` or custom)
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- Gitea/Forgejo operations
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- Actual Budget (spending tracking, categorization)
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- [ ] **Test:** `web_fetch` tool, verify agent can search, summarize, cite sources
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---
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## Phase 7 — Matrix Integration
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**Goal:** Agent lives as a Matrix bot, accessible via DM. Matrix feels like `@diva:homeserver.tld` instead of `Bot #4321`.
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**Status: STUB**
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- [x] `internal/channel/matrix.go` — config + start stub (disabled by default)
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- [ ] Full Matrix bot with `mautrix-go`:
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- Listen for invitations, join rooms
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- Handle DMs with typing indicators, read receipts
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- Message parsing & sending
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- Bot identity: `@diva:homeserver.tld`
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- [ ] Config: homeserver URL, bot user token in env
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- [ ] TUI and Matrix run concurrently — messages sync between both
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- [ ] **Test:** Send DM to bot, verify response, verify cross-session memory
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---
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## Phase 8 — Self-Memory & Identity
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**Goal:** Agent remembers its own state — promises, strategies, mistakes. "Bidirectional memory."
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**Status: CODE DONE**
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- [x] `internal/memory/self_memory.go`:
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```go
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type Promise struct {
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ID string
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Promise string
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Context string
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Fulfilled bool
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CreatedAt time.Time
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Deadline *time.Time
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}
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type Strategy struct {
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ID string
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Situation string
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Strategy string
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Outcome string
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CreatedAt time.Time
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}
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```
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- [x] `agent_promises` table (id, promise, context, fulfilled, created_at, deadline)
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- [x] `agent_strategies` table (id, situation, strategy, outcome, created_at)
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- [ ] Wire into Prompt Composer: recent promises, relevant strategies added to context
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- [ ] **Test:** "What did you promise me yesterday?" → verify recall from self-memory
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---
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## Phase 9 — Safety Guardrails & Identity Stability
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**Goal:** Prevent personality drift, maintain core safety rules.
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- [ ] `internal/companion/safety.go`:
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- Core Identity (never changes): values, communication style, boundaries, role definition
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- State (dynamic): mood, interests, current projects, relationship opinions
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- Separation: identity config (env/read-only) vs state (SQLite/writable)
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- [ ] Personality safety rules:
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- Traits bounded within configured min/max at all times
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- Core safety rules override any personality state
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- Permission policies cannot be modified by personality
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- No tool access changes via personality evolution
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- [ ] Prompt injection protection:
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- User messages wrapped in separator tokens
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- System prompt templates with strict, non-overridable sections
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- Input sanitization at the agent boundary
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- [ ] **Test:** Attempt prompt injection, verify guardrails hold
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---
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## Phase 10 — Polish: Streaming TUI, Token Tracking, Observability
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**Goal:** Production-quality UX and operations.
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- [ ] Token streaming in TUI — char-by-char from llama.cpp SSE or chunked response
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- [ ] Context window manager:
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- Track total token count per conversation
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- Sliding window when context exceeds limit
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- Auto-summarize oldest messages to stay within context
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- [ ] `POST /v1/chat` streaming via SSE in API mode
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- [ ] Structured JSON logging via `log/slog` (already done — custom handler with `[LEVEL] [TIME] [FILE:LINE]`)
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- [ ] Prometheus metrics (`GET /metrics`)
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- [ ] Graceful shutdown — drain in-flight requests, save agent state
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- [ ] **Test:** Full restart cycle, verify all state restored
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---
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## Phase 11 — Future Enhancements (Optional)
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- [ ] Voice interface: whisper.cpp (STT) + piper/XTTS (TTS)
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- [ ] VRM/Live2D avatar rendering (like Open-LLM-VTuber, Soul of Waifu)
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- [ ] Multi-user support with per-user relationship tracking
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- [ ] Multi-room Matrix support
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- [ ] Plugin system for community-contributed tools
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- [ ] WebUI dashboard (like nanobot's WebUI)
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- [ ] Mobile companion via Matrix (any Matrix client works)
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- [ ] Home Assistant integration for physical automation
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- [ ] PostgreSQL + pgvector migration for production-scale vector search
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---
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## Database Summary
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Two separate SQLite databases (clean separation of concerns):
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| Database | Purpose | Tables |
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| -------------- | --------------- | ------------------------------------------------------- |
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| `divacode.db` | Core agent data | `conversations`, `messages`, `context_state` |
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| `divacode.db` | Memory | `memories` |
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| `companion.db` | Personality | `personality_traits` |
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| `companion.db` | Relationship | `relationship_metrics`, `shared_topics`, `inside_jokes` |
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| `companion.db` | Reflection | `diary_entries`, `observations` |
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| `companion.db` | Self-memory | `agent_promises`, `agent_strategies` |
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**Future:** `divacode.db` may be replaced by PostgreSQL + pgvector for production deployments with many users or large memory stores.
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---
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## Key Principles
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1. **Build the smallest loop first** — get message → memory → LLM → response → diary → reflection working before adding complexity
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2. **Personality is data, not prompt text** — traits stored in SQLite, composed dynamically by the prompt builder
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3. **Memory ≠ Personality** — factual memory (Engram-style RAG) is separate from relationship/emotional state
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4. **Slow evolution** — max 0.5% trait change/day, max 5%/month. Fast evolution feels schizophrenic, slow feels human
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5. **Core Identity is stable** — identity.yaml (or env config) never changes much; state.json (SQLite) changes constantly
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6. **Diary before reflection** — the nightly diary is the emotional continuity layer, more important than vector search
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7. **Autonomous messaging** — the scheduler is what makes the character feel alive, not the LLM intelligence
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8. **No secrets in code** — all config via env vars, `.env` in `.gitignore`
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9. **No config libraries** — std lib `os.Getenv` only, never `caarlos0/env` or similar
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10. **No HTTP routers** — std lib `net/http` only, no third-party routers (chi, gorilla, etc.)
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11. **Error handling** — wrap errors with `fmt.Errorf("context: %w", err)`, never silent discards
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12. **Test as you go** — `go test -race ./...` before every push
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13. **Output readable code** — explain _why_, never _what_. No comments for self-documenting code
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