Removed redundant/outdated files: - docs/HEARTBEAT_HOOKS.md (legacy, disabled by default) - docs/QUICK_START_PULSE.md (merged into PULSE_BRAIN.md) - docs/MONITORING_COMPARISON.md (merged into PULSE_BRAIN.md) Consolidated monitoring docs: - Merged 3 monitoring files into comprehensive PULSE_BRAIN.md - Added Quick Start section to PULSE_BRAIN.md - Added "Why Pulse & Brain?" comparison section - Added deprecation notices for Heartbeat system Updated README.md: - Clarified Haiku is default model (12x cheaper) - Added prompt caching info (90% savings on Sonnet) - Removed duplicate setup instructions - Linked to SETUP.md for detailed instructions - Added model switching commands section Simplified WINDOWS_QUICK_REFERENCE.md: - Reduced from 224 lines to ~160 lines - Removed redundant development/deployment sections - Kept essential quick commands - Added model switching commands Updated docs/README.md navigation: - Removed references to deleted files - Added deprecation notice for Heartbeat - Updated learning paths - Cleaned up file organization section Result: - Removed 300+ lines of redundant documentation - Consolidated 3 monitoring files into 1 - Improved accuracy and clarity - Easier navigation and maintenance Co-Authored-By: Claude Sonnet 4.5 <noreply@anthropic.com>
418 lines
12 KiB
Markdown
418 lines
12 KiB
Markdown
# Ajarbot
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A lightweight, cost-effective AI agent framework for building proactive bots with Claude and other LLMs. Features intelligent memory management, multi-platform messaging support, and efficient monitoring with the Pulse & Brain architecture.
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## Table of Contents
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- [Features](#features)
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- [Quick Start](#quick-start)
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- [Installation](#installation)
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- [Core Concepts](#core-concepts)
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- [Usage Examples](#usage-examples)
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- [Architecture](#architecture)
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- [Documentation](#documentation)
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- [License](#license)
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## Features
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- **Cost-Optimized AI**: Default Haiku 4.5 model (12x cheaper), auto-caching on Sonnet (90% savings), dynamic model switching
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- **Smart Memory System**: SQLite-based memory with automatic context retrieval and FTS search
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- **Multi-Platform Adapters**: Run on Slack, Telegram, and more simultaneously
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- **Pulse & Brain Monitoring**: 92% cost savings with intelligent conditional monitoring (recommended)
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- **Task Scheduling**: Cron-like scheduled tasks with flexible cadences
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- **Tool Use System**: File operations, command execution, and autonomous task completion
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- **Multi-LLM Support**: Claude (Anthropic) primary, GLM (z.ai) optional
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## Quick Start
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**For detailed setup instructions**, see **[SETUP.md](SETUP.md)** - includes API key setup, configuration, and troubleshooting.
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### 30-Second Quickstart
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```bash
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# Clone and install
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git clone https://vulcan.apophisnetworking.net/jramos/ajarbot.git
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cd ajarbot
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pip install -r requirements.txt
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# Configure (copy examples and add your API key)
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cp .env.example .env
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cp config/scheduled_tasks.example.yaml config/scheduled_tasks.yaml
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# Add your Anthropic API key to .env
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# ANTHROPIC_API_KEY=sk-ant-...
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# Run
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python example_usage.py
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```
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**Windows users**: Run `quick_start.bat` for automated setup
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### Model Switching Commands
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Send these to your bot:
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- `/haiku` - Fast, cheap (default)
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- `/sonnet` - Smart, caching enabled (auto 90% cost savings)
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- `/status` - Check current model and settings
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## Core Concepts
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### Agent
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The central component that handles LLM interactions with automatic context loading:
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- Loads personality from `SOUL.md`
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- Retrieves user preferences from `users/{username}.md`
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- Searches relevant memory chunks
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- Maintains conversation history
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```python
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from agent import Agent
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agent = Agent(provider="claude")
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response = agent.chat("Tell me about Python", username="alice")
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```
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### Memory System
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SQLite-based memory with full-text search:
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```python
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# Write to memory
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agent.memory.write_memory("Completed task X", daily=True)
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# Update user preferences
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agent.memory.update_user("alice", "## Preference\n- Likes Python")
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# Search memory
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results = agent.memory.search("python")
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```
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### Task Management
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Built-in task tracking:
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```python
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# Add task
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task_id = agent.memory.add_task(
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"Implement API endpoint",
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"Details: REST API for user auth"
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)
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# Update status
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agent.memory.update_task(task_id, status="in_progress")
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# Get tasks
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pending = agent.memory.get_tasks(status="pending")
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```
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### Pulse & Brain Architecture
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The most cost-effective way to run proactive monitoring:
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```python
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from agent import Agent
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from pulse_brain import PulseBrain
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agent = Agent(provider="claude", enable_heartbeat=False)
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# Pulse runs pure Python checks (zero cost)
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# Brain only invoked when needed (92% cost savings)
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pb = PulseBrain(agent, pulse_interval=60)
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pb.start()
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```
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**Cost comparison:**
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- Traditional polling: ~$0.48/day
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- Pulse & Brain: ~$0.04/day
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- **Savings: 92%**
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### Multi-Platform Adapters
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Run your bot on multiple messaging platforms simultaneously:
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```python
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from adapters.runtime import AdapterRuntime
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from adapters.slack.adapter import SlackAdapter
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from adapters.telegram.adapter import TelegramAdapter
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runtime = AdapterRuntime(agent)
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runtime.add_adapter(slack_adapter)
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runtime.add_adapter(telegram_adapter)
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await runtime.start()
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```
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### Task Scheduling
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Cron-like scheduled tasks:
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```python
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from scheduled_tasks import TaskScheduler, ScheduledTask
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scheduler = TaskScheduler(agent)
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task = ScheduledTask(
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"morning-brief",
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"What are today's priorities?",
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schedule="08:00",
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username="alice"
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)
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scheduler.add_task(task)
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scheduler.start()
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```
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## Usage Examples
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### Basic Chat with Memory
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```python
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from agent import Agent
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agent = Agent(provider="claude")
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# First conversation
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agent.chat("I'm working on a Python API", username="bob")
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# Later conversation - agent remembers
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response = agent.chat("How's the API coming?", username="bob")
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# Agent retrieves context about Bob's Python API work
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```
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### Model Switching
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```python
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agent = Agent(provider="claude")
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# Use Claude for complex reasoning
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response = agent.chat("Explain quantum computing")
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# Switch to GLM for faster responses
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agent.switch_model("glm")
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response = agent.chat("What's 2+2?")
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```
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### Custom Pulse Checks
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```python
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from pulse_brain import PulseBrain, PulseCheck, BrainTask, CheckType
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def check_disk_space():
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import shutil
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usage = shutil.disk_usage("/")
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percent = (usage.used / usage.total) * 100
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return {
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"status": "error" if percent > 90 else "ok",
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"percent": percent
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}
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pulse_check = PulseCheck("disk", check_disk_space, interval_seconds=300)
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brain_task = BrainTask(
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name="disk-advisor",
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check_type=CheckType.CONDITIONAL,
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prompt_template="Disk is {percent:.1f}% full. Suggest cleanup.",
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condition_func=lambda data: data.get("percent", 0) > 90
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)
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pb = PulseBrain(agent)
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pb.add_pulse_check(pulse_check)
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pb.add_brain_task(brain_task)
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pb.start()
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```
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### Skills from Messaging Platforms
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```python
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from adapters.skill_integration import SkillInvoker
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skill_invoker = SkillInvoker()
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def skill_preprocessor(message):
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if message.text.startswith("/"):
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parts = message.text.split(maxsplit=1)
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skill_name = parts[0][1:]
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args = parts[1] if len(parts) > 1 else ""
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if skill_name in skill_invoker.list_available_skills():
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skill_info = skill_invoker.get_skill_info(skill_name)
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message.text = skill_info["body"].replace("$ARGUMENTS", args)
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return message
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runtime.add_preprocessor(skill_preprocessor)
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```
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Then from Slack/Telegram:
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```
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@bot /code-review adapters/slack/adapter.py
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@bot /deploy --env prod --version v1.2.3
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```
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## Architecture
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```
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┌──────────────────────────────────────────────────────┐
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│ Ajarbot Core │
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│ │
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│ ┌────────────┐ ┌────────────┐ ┌──────────────┐ │
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│ │ Agent │ │ Memory │ │ LLM Interface│ │
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│ │ │──│ System │──│(Claude/GLM) │ │
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│ └─────┬──────┘ └────────────┘ └──────────────┘ │
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│ │ │
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│ │ ┌────────────────┐ │
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│ └─────────│ Pulse & Brain │ │
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│ │ Monitoring │ │
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│ └────────────────┘ │
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└──────────────────────┬───────────────────────────────┘
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│
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┌─────────────┴─────────────┐
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│ │
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┌────▼─────┐ ┌──────▼──────┐
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│ Slack │ │ Telegram │
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│ Adapter │ │ Adapter │
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└──────────┘ └─────────────┘
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```
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### Key Components
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1. **agent.py** - Main agent class with automatic context loading
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2. **memory_system.py** - SQLite-based memory with FTS5 search
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3. **llm_interface.py** - Unified interface for Claude and GLM
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4. **pulse_brain.py** - Cost-effective monitoring system
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5. **scheduled_tasks.py** - Cron-like task scheduler
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6. **adapters/** - Multi-platform messaging support
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- **base.py** - Abstract adapter interface
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- **runtime.py** - Message routing and processing
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- **slack/**, **telegram/** - Platform implementations
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7. **config/** - Configuration management
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## Documentation
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Comprehensive documentation is available in the [docs/](docs/) directory:
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### Getting Started
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- [Quick Start Guide](docs/QUICKSTART.md) - 30-second setup and basic usage
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- [Windows 11 Deployment](docs/WINDOWS_DEPLOYMENT.md) - Complete Windows deployment and testing guide
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- [Pulse & Brain Quick Start](docs/QUICK_START_PULSE.md) - Efficient monitoring setup
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### Core Systems
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- [Pulse & Brain Architecture](docs/PULSE_BRAIN.md) - Cost-effective monitoring (92% savings)
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- [Memory System](docs/README_MEMORY.md) - SQLite-based memory management
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- [Scheduled Tasks](docs/SCHEDULED_TASKS.md) - Cron-like task scheduling
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- [Heartbeat Hooks](docs/HEARTBEAT_HOOKS.md) - Proactive health monitoring
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### Platform Integration
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- [Adapters Guide](docs/README_ADAPTERS.md) - Multi-platform messaging (Slack, Telegram)
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- [Skills Integration](docs/SKILLS_INTEGRATION.md) - Claude Code skills from messaging platforms
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### Advanced Topics
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- [Control & Configuration](docs/CONTROL_AND_CONFIGURATION.md) - Configuration management
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- [Monitoring Comparison](docs/MONITORING_COMPARISON.md) - Choosing the right monitoring approach
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## Project Structure
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```
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ajarbot/
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├── agent.py # Main agent class
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├── memory_system.py # Memory management
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├── llm_interface.py # LLM provider interface
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├── pulse_brain.py # Pulse & Brain monitoring
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├── scheduled_tasks.py # Task scheduler
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├── heartbeat.py # Legacy heartbeat system
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├── hooks.py # Event hooks
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├── bot_runner.py # Multi-platform bot runner
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├── adapters/ # Platform adapters
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│ ├── base.py # Base adapter interface
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│ ├── runtime.py # Adapter runtime
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│ ├── skill_integration.py # Skills system
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│ ├── slack/ # Slack adapter
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│ └── telegram/ # Telegram adapter
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├── config/ # Configuration files
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│ ├── config_loader.py
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│ └── adapters.yaml
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├── docs/ # Documentation
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├── memory_workspace/ # Memory storage
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└── examples/ # Example scripts
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├── example_usage.py
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├── example_bot_with_pulse_brain.py
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├── example_bot_with_scheduler.py
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└── example_bot_with_skills.py
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```
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## Configuration
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### Environment Variables
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```bash
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# Required
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export ANTHROPIC_API_KEY="sk-ant-..."
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# Optional
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export GLM_API_KEY="..."
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export AJARBOT_SLACK_BOT_TOKEN="xoxb-..."
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export AJARBOT_SLACK_APP_TOKEN="xapp-..."
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export AJARBOT_TELEGRAM_BOT_TOKEN="123456:ABC..."
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```
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### Adapter Configuration
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Generate configuration template:
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```bash
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python bot_runner.py --init
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```
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Edit `config/adapters.local.yaml`:
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```yaml
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adapters:
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slack:
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enabled: true
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credentials:
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bot_token: "xoxb-..."
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app_token: "xapp-..."
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telegram:
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enabled: true
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credentials:
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bot_token: "123456:ABC..."
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```
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## Testing
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Run tests to verify installation:
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```bash
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# Test memory system
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python test_skills.py
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# Test task scheduler
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python test_scheduler.py
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```
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## Contributing
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Contributions are welcome! Please:
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1. Follow PEP 8 style guidelines
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2. Add tests for new features
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3. Update documentation
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4. Keep code concise and maintainable
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## Credits
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- Adapter architecture inspired by [OpenClaw](https://github.com/chloebt/openclaw)
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- Built with [Anthropic Claude](https://www.anthropic.com/claude)
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- Alternative LLM support via [z.ai](https://z.ai)
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## License
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MIT License - See LICENSE file for details
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---
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**Need Help?**
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- Check the [documentation](docs/)
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- Review the [examples](example_usage.py)
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- Open an issue on GitHub
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