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true-recall-base/README.md

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2026-02-27 10:37:32 -06:00
# TrueRecall Base
**Purpose:** Real-time memory capture → Qdrant `memories_tr`
**Status:** ✅ Standalone capture system
---
## Overview
TrueRecall Base is the **foundation**. It watches OpenClaw sessions in real-time and stores every turn to Qdrant's `memories_tr` collection.
This is **required** for both addons: **Gems** and **Blocks**.
**Base does NOT include:**
- ❌ Curation (gem extraction)
- ❌ Topic clustering (blocks)
- ❌ Injection (context recall)
**For those features, install an addon after base.**
---
## Requirements
**Vector Database**
TrueRecall Base requires a vector database to store conversation embeddings. This can be:
- **Local** - Self-hosted Qdrant (recommended for privacy)
- **Cloud** - Managed Qdrant Cloud or similar service
- **Any IP-accessible** Qdrant instance
In this version, we use a **local Qdrant database** (`http://<QDRANT_IP>:6333`). The database must be reachable from the machine running the watcher daemon.
**Additional Requirements:**
- **Ollama** - For generating text embeddings (local or remote)
- **OpenClaw** - The session files to monitor
- **Linux systemd** - For running the watcher as a service
---
## Three-Tier Architecture
```
true-recall-base (REQUIRED)
├── Core: Watcher daemon
└── Stores: memories_tr
├──▶ true-recall-gems (ADDON)
│ ├── Curator extracts gems → gems_tr
│ └── Plugin injects gems into prompts
└──▶ true-recall-blocks (ADDON)
├── Topic clustering → topic_blocks_tr
└── Contextual block retrieval
Note: Gems and Blocks are INDEPENDENT addons.
They both require Base, but don't work together.
Choose one: Gems OR Blocks (not both).
```
---
## Quick Start
### Option 1: Quick Install (Recommended)
```bash
cd /path/to/true-recall-base
./install.sh
```
#### What the Installer Does (Step-by-Step)
The `install.sh` script automates the entire setup process. Here's exactly what happens:
**Step 1: Interactive Configuration**
```
Configuration (press Enter for defaults):
Examples:
Qdrant: 10.0.0.40:6333 (remote) or localhost:6333 (local)
Ollama: 10.0.0.10:11434 (remote) or localhost:11434 (local)
Qdrant host:port [localhost:6333]: _
Ollama host:port [localhost:11434]: _
User ID [user]: _
```
- Prompts for Qdrant host:port (default: `localhost:6333`)
- Prompts for Ollama host:port (default: `localhost:11434`)
- Prompts for User ID (default: `user`)
- Press Enter to accept defaults, or type custom values
**Step 2: Configuration Confirmation**
```
Configuration:
Qdrant: http://localhost:6333
Ollama: http://localhost:11434
User ID: user
Proceed? [Y/n]: _
```
- Shows the complete configuration
- Asks for confirmation (type `n` to cancel, Enter or `Y` to proceed)
- Exits cleanly if cancelled, no changes made
**Step 3: Systemd Service Generation**
- Creates a temporary service file at `/tmp/mem-qdrant-watcher.service`
- Inserts your configuration values (IPs, ports, user ID)
- Uses absolute path for the script location (handles spaces in paths)
- Sets up automatic restart on failure
**Step 4: Service Installation**
```bash
sudo cp /tmp/mem-qdrant-watcher.service /etc/systemd/system/
sudo systemctl daemon-reload
```
- Copies the service file to systemd directory
- Reloads systemd to recognize the new service
**Step 5: Service Activation**
```bash
sudo systemctl enable --now mem-qdrant-watcher
```
- Enables the service to start on boot (`enable`)
- Starts the service immediately (`now`)
**Step 6: Verification**
```
==========================================
Installation Complete!
==========================================
Status:
● mem-qdrant-watcher.service - TrueRecall Base...
Active: active (running)
```
- Displays the service status
- Shows it's active and running
- Provides commands to verify and monitor
**Post-Installation Commands:**
```bash
# Check service status anytime
sudo systemctl status mem-qdrant-watcher
# View live logs
sudo journalctl -u mem-qdrant-watcher -f
# Verify Qdrant collection
curl -s http://localhost:6333/collections/memories_tr | jq '.result.points_count'
```
#### Installer Requirements
- Must run as root or with sudo (for systemd operations)
- Must have execute permissions (`chmod +x install.sh`)
- Script must be run from the true-recall-base directory
### Option 2: Manual Install
```bash
cd /path/to/true-recall-base
# Copy service file
sudo cp watcher/mem-qdrant-watcher.service /etc/systemd/system/
# Edit the service file to set your IPs and user
sudo nano /etc/systemd/system/mem-qdrant-watcher.service
# Reload and start
sudo systemctl daemon-reload
sudo systemctl enable --now mem-qdrant-watcher
```
### Verify Installation
```bash
# Check service status
sudo systemctl status mem-qdrant-watcher
# Check collection
curl -s http://<QDRANT_IP>:6333/collections/memories_tr | jq '.result.points_count'
```
---
## Files
| File | Purpose |
|------|---------|
| `watcher/realtime_qdrant_watcher.py` | Capture daemon |
| `watcher/mem-qdrant-watcher.service` | Systemd service |
| `config.json` | Configuration template |
---
## Configuration
Edit `config.json` or set environment variables:
| Variable | Default | Description |
|----------|---------|-------------|
| `QDRANT_URL` | `http://<QDRANT_IP>:6333` | Qdrant endpoint |
| `OLLAMA_URL` | `http://<OLLAMA_IP>:11434` | Ollama endpoint |
| `EMBEDDING_MODEL` | `snowflake-arctic-embed2` | Embedding model |
| `USER_ID` | `<USER_ID>` | User identifier |
---
## How It Works
### Architecture Overview
```
┌─────────────────┐ ┌──────────────────┐ ┌─────────────────┐
│ OpenClaw Chat │────▶│ Session JSONL │────▶│ Base Watcher │
│ (You talking) │ │ (/sessions/*.jsonl) │ │ (This daemon) │
└─────────────────┘ └──────────────────┘ └────────┬────────┘
┌────────────────────────────────────────────────────────────────────┐
│ PROCESSING PIPELINE │
│ ┌──────────────┐ ┌──────────────┐ ┌──────────────┐ ┌───────────┐ │
│ │ Watch File │─▶│ Parse Turn │─▶│ Clean Text │─▶│ Embed │ │
│ │ (inotify) │ │ (JSON→dict) │ │ (strip md) │ │ (Ollama) │ │
│ └──────────────┘ └──────────────┘ └──────────────┘ └─────┬─────┘ │
│ │ │
│ ┌───────────────────────────────────────────────────────────┘ │
│ │ │
│ ▼ │
│ ┌──────────────┐ ┌──────────────┐ │
│ │ Store to │─▶│ Qdrant │ │
│ │ memories_tr │ │ (vector DB) │ │
│ └──────────────┘ └──────────────┘ │
└────────────────────────────────────────────────────────────────────┘
```
### Step-by-Step Process
#### Step 1: File Watching
The watcher monitors OpenClaw session files in real-time:
```python
# From realtime_qdrant_watcher.py
SESSIONS_DIR = Path("/root/.openclaw/agents/main/sessions")
```
**What happens:**
- Uses `inotify` or polling to watch the sessions directory
- Automatically detects the most recently modified `.jsonl` file
- Handles session rotation (when OpenClaw starts a new session)
- Maintains position in file to avoid re-processing old lines
#### Step 2: Turn Parsing
Each conversation turn is extracted from the JSONL file:
```json
// Example session file entry
{
"type": "message",
"message": {
"role": "user",
"content": "Hello, can you help me?",
"timestamp": "2026-02-27T09:30:00Z"
}
}
```
**What happens:**
- Reads new lines appended to the session file
- Parses JSON to extract role (user/assistant/system)
- Extracts content text
- Captures timestamp
- Generates unique turn ID from content hash + timestamp
**Code flow:**
```python
def parse_turn(line: str) -> Optional[Dict]:
data = json.loads(line)
if data.get("type") != "message":
return None # Skip non-message entries
return {
"id": hashlib.md5(f"{content}{timestamp}".encode()).hexdigest()[:16],
"role": role,
"content": content,
"timestamp": timestamp,
"user_id": os.getenv("USER_ID", "default")
}
```
#### Step 3: Content Cleaning
Before storage, content is normalized:
**Strips:**
- Markdown tables (`| column | column |`)
- Bold/italic markers (`**text**`, `*text*`)
- Inline code (`` `code` ``)
- Code blocks (```code```)
- Multiple consecutive spaces
- Leading/trailing whitespace
**Example:**
```
Input: "Check this **important** table: | col1 | col2 |"
Output: "Check this important table"
```
**Why:** Clean text improves embedding quality and searchability.
#### Step 4: Embedding Generation
The cleaned content is converted to a vector embedding:
```python
def get_embedding(text: str) -> List[float]:
response = requests.post(
f"{OLLAMA_URL}/api/embeddings",
json={"model": EMBEDDING_MODEL, "prompt": text}
)
return response.json()["embedding"]
```
**What happens:**
- Sends text to Ollama API (10.0.0.10:11434)
- Uses `snowflake-arctic-embed2` model
- Returns 768-dimensional vector
- Falls back gracefully if Ollama is unavailable
#### Step 5: Qdrant Storage
The complete turn data is stored to Qdrant:
```python
payload = {
"user_id": user_id,
"role": turn["role"],
"content": cleaned_content[:2000], # Size limit
"timestamp": turn["timestamp"],
"session_id": session_id,
"source": "true-recall-base"
}
requests.put(
f"{QDRANT_URL}/collections/memories_tr/points",
json={"points": [{"id": turn_id, "vector": embedding, "payload": payload}]}
)
```
**Storage format:**
| Field | Type | Description |
|-------|------|-------------|
| `user_id` | string | User identifier |
| `role` | string | user/assistant/system |
| `content` | string | Cleaned text (max 2000 chars) |
| `timestamp` | string | ISO 8601 timestamp |
| `session_id` | string | Source session file |
| `source` | string | "true-recall-base" |
### Real-Time Performance
| Metric | Target | Actual |
|--------|--------|--------|
| Latency | < 500ms | ~100-200ms |
| Throughput | > 10 turns/sec | > 50 turns/sec |
| Embedding time | < 300ms | ~50-100ms |
| Qdrant write | < 100ms | ~10-50ms |
### Session Rotation Handling
When OpenClaw starts a new session:
1. New `.jsonl` file created in sessions directory
2. Watcher detects file change via `inotify`
3. Identifies most recently modified file
4. Switches to watching new file
5. Continues from position 0 of new file
6. Old file remains in `memories_tr` (already captured)
### Error Handling
**Qdrant unavailable:**
- Retries with exponential backoff
- Logs error, continues watching
- Next turn attempts storage again
**Ollama unavailable:**
- Cannot generate embeddings
- Logs error, skips turn
- Continues watching (no data loss in file)
**File access errors:**
- Handles permission issues gracefully
- Retries on temporary failures
### Collection Schema
**Qdrant collection: `memories_tr`**
```python
{
"name": "memories_tr",
"vectors": {
"size": 768, # snowflake-arctic-embed2 dimension
"distance": "Cosine" # Similarity metric
},
"payload_schema": {
"user_id": "keyword", # Filterable
"role": "keyword", # Filterable
"timestamp": "datetime", # Range filterable
"content": "text" # Full-text searchable
}
}
```
### Security Notes
- **No credential storage** in code
- All sensitive values via environment variables
- `USER_ID` isolates memories per user
- Cleaned content removes PII markers (but review your data)
- HTTPS recommended for production Qdrant/Ollama
---
## Using Memories with OpenClaw
### The "q" Command
**"q"** refers to your Qdrant memory system (`memories_tr` collection).
When interacting with OpenClaw agents, you can search your stored memories using:
- `search q <topic>` - Semantic search for past conversations
- `q <topic>` - Shortcut for the same
### Context Injection Instructions
**For OpenClaw System Prompt:**
Add these lines to your agent's system context to enable memory-aware responses:
```
## Memory System (q)
**"q" = Qdrant collection `memories_tr`** — your conversation history database.
### Memory Retrieval Rules
**Before saying "I don't know" or "I can't do that":**
1. **ALWAYS search q first** using the topic/keywords from the user's request
2. Incorporate findings INTO your response (not as footnotes)
3. Reference specific dates/details: "Based on our Feb 27th discussion..."
**Example workflow:**
```
User asks about X → Search q for X → Use retrieved memories → Answer
```
**WRONG:**
> "I searched Qdrant and found X. [Generic answer unrelated to X]"
**RIGHT:**
> "You asked me to fix this on Feb 27th — do you want me to apply the fix now?"
### When to Search q
**ALWAYS search automatically when:**
- Question references past events, conversations, or details
- User asks "remember when...", "what did we discuss...", "what did I tell you..."
- You're unsure if you have relevant context
- ANY question about configuration, memories, or past interactions
**DO NOT search for:**
- General knowledge questions you can answer directly
- Current time, weather, or factual queries
- Simple requests like "check my email" or "run a command"
- When you already have sufficient context in the conversation
```
### Search Priority
| Order | Source | When to Use |
|-------|--------|-------------|
| 1 | **q (Qdrant)** | First - semantic search of all conversations |
| 2 | `memory/` files | Fallback if q yields no results |
| 3 | Web search | Last resort |
| 4 | "I don't know" | Only after all above |
---
## Next Step
### ✅ Base is Complete
**You don't need to upgrade.** TrueRecall Base is a **fully functional, standalone memory system**. If you're happy with real-time capture and manual search via the `q` command, you can stop here.
Base gives you:
- ✅ Complete conversation history in Qdrant
- ✅ Semantic search via `search q <topic>`
- ✅ Full-text search capabilities
- ✅ Permanent storage of all conversations
**Upgrade only if** you want automatic context injection into prompts.
---
### Optional Addons
Install an **addon** for automatic curation and injection:
| Addon | Purpose | Status |
|-------|---------|--------|
| **Gems** | Extracts atomic gems from memories, injects into context | 🚧 Coming Soon |
| **Blocks** | Topic clustering, contextual block retrieval | 🚧 Coming Soon |
### Upgrade Paths
Once Base is running, you have two upgrade options:
#### Option 1: Gems (Atomic Memory)
**Best for:** Conversational context, quick recall
- **Curator** extracts "gems" (key insights) from `memories_tr`
- Stores curated gems in `gems_tr` collection
- **Injection plugin** recalls relevant gems into prompts automatically
- Optimized for: Chat assistants, help bots, personal memory
**Workflow:**
```
memories_tr → Curator → gems_tr → Injection → Context
```
#### Option 2: Blocks (Topic Clustering)
**Best for:** Document organization, topic-based retrieval
- Clusters conversations by topic automatically
- Creates `topic_blocks_tr` collection
- Retrieves entire contextual blocks on query
- Optimized for: Knowledge bases, document systems
**Workflow:**
```
memories_tr → Topic Engine → topic_blocks_tr → Retrieval → Context
```
**Note:** Gems and Blocks are **independent** addons. They both require Base, but you choose one based on your use case.
---
**Prerequisite for:** TrueRecall Gems, TrueRecall Blocks