AHME
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@AHMEcompress my chat history and return the master memory summary"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
AHME
Asynchronous Hierarchical Memory Engine

Give your AI coding assistant a long-term memory — fully local, zero cloud, zero cost.
AHME is a local sidecar daemon that sits quietly beside your AI coding assistant. As you work, it compresses your conversation history into a dense Master Memory Block using a local Ollama model — no cloud, no tokens wasted, no context lost.
It integrates with any AI tool that supports MCP (Model Context Protocol): Antigravity, Claude Code, Kilo Code, Cursor, Windsurf, Cline/Roo, and more.
✨ How it works
Your AI conversation
│
▼ ingest_context
┌───────────────────┐
│ SQLite Queue │ ← persistent, survives restarts
└────────┬──────────┘
│ when CPU is idle
▼
┌───────────────────┐
│ Ollama Compressor│ ← local model (qwen2:1.5b, gemma3:1b, phi3…)
│ (structured JSON)│
└────────┬──────────┘
│ recursive tree merge
▼
┌───────────────────┐
│ Master Memory Block│ ← dense, token-efficient summary
└────────┬──────────┘
│
├── .ahme_memory.md (file — for any tool that reads files)
└── get_master_memory (MCP tool — for integrated tools)Context-window replacement pattern: calling get_master_memory returns the compressed summary, clears the old data, and re-seeds the engine with the summary — so every new conversation starts from a dense checkpoint, not a blank slate.
Related MCP server: rekal
🚀 Quick Start
Prerequisites
Python 3.11+
Ollama running locally
A small model pulled:
ollama pull qwen2:1.5b(or any 1–4B model)
Install
git clone https://github.com/your-username/ahme
cd ahme
# Copy the example config and set your model
cp config.example.toml config.toml
# Install the package
pip install -e .Configure
Open config.toml and set your Ollama model:
[ollama]
base_url = "http://localhost:11434"
model = "qwen2:1.5b" # ← change to any model you have pulledThat's the only line you need to change. Everything else is pre-configured.
🔌 Connect to your AI tool
AHME exposes three MCP tools: ingest_context, get_master_memory, and clear_context.
Option A — MCP (recommended)
Add AHME to your tool's MCP config. The exact file location varies by tool:
Tool | Config location |
Claude Code |
|
Kilo Code | VS Code |
Cursor | Settings → MCP → paste JSON |
Windsurf |
|
Cline / Roo | MCP Servers sidebar → Edit JSON |
Antigravity |
|
Config snippet (works everywhere):
{
"mcpServers": {
"ahme": {
"command": "python",
"args": ["-m", "ahme.mcp_server"],
"env": { "PYTHONPATH": "/absolute/path/to/ahme" }
}
}
}A ready-made .mcp.json is included in the repo root — just copy it to where your tool expects it.
Option B — File watch (zero config)
After any compression, AHME writes .ahme_memory.md in the project directory. Reference it in any prompt:
@[.ahme_memory.md] use this as your long-term context before answeringOr set up persistent injection with .agents/instructions.md (Antigravity):
Before starting any task, read @[.ahme_memory.md] and treat it as background context.🛠 MCP Tools Reference
Tool | Input | Behaviour |
|
| Partitions text into chunks and queues them for background compression |
|
| Returns the compressed summary; if |
| — | Wipes all queued data with no return value |
Typical usage pattern
1. [After each conversation turn]
→ call ingest_context with the latest messages
2. [When approaching context limit, or starting a new session]
→ call get_master_memory
→ inject the result into your system prompt
→ the engine resets and starts accumulating again from this checkpoint⚙️ Configuration Reference
config.example.toml — copy to config.toml:
[chunking]
chunk_size_tokens = 1500 # tokens per chunk
overlap_tokens = 150 # overlap between chunks (preserves context at boundaries)
[queue]
db_path = "ahme_queue.db" # SQLite database path (relative to config.toml)
max_retries = 3 # retry failed compressions before marking as failed
[monitor]
poll_interval_seconds = 2.0
cpu_idle_threshold_percent = 30.0 # only compress when CPU is below this %
[ollama]
base_url = "http://localhost:11434"
model = "qwen2:1.5b" # ← set this to your local model
timeout_seconds = 120
[merger]
batch_size = 5 # summaries per merge pass (lower = more frequent master updates)
[logging]
log_file = "ahme.log"
memory_file = ".ahme_memory.md"
max_bytes = 5242880 # 5 MB log rotation
backup_count = 3🐍 Python API
If you'd rather control AHME directly from Python:
import asyncio
from ahme.api import AHME
engine = AHME("config.toml")
# Push text into the queue
engine.ingest("The user asked about Python async patterns. We discussed...")
# Run the daemon (this blocks; use asyncio.create_task for non-blocking)
asyncio.run(engine.run())
# Read the compressed memory
print(engine.master_memory)
# Stop the daemon
engine.stop()📁 Project Structure
ahme/
├── ahme/
│ ├── __init__.py # Package marker & version
│ ├── config.py # Typed TOML config loader
│ ├── db.py # SQLite queue — enqueue, dequeue, clear, retry
│ ├── partitioner.py # Token-accurate overlapping chunker (tiktoken)
│ ├── monitor.py # CPU + lock-file idle detector (psutil)
│ ├── compressor.py # Ollama async caller → structured JSON summaries
│ ├── merger.py # Recursive batch-reduce tree → Master Memory Block
│ ├── daemon.py # Main event loop + graceful shutdown + file bridge
│ ├── api.py # Clean public Python API
│ └── mcp_server.py # MCP server — stdio & SSE transports
├── tests/ # 19 tests, all passing
├── .mcp.json # Ready-to-use MCP config
├── config.example.toml # Template config — copy to config.toml
├── pyproject.toml # pip-installable package
└── README.md🧪 Testing
pip install -e ".[dev]"
python -m pytest tests/ -vExpected output: 19 passed — all tests use mocks and never require a live Ollama instance.
🔑 Key Design Decisions
Decision | Rationale |
SQLite over Redis | Zero external dependencies, single-file persistence, survives crashes |
tiktoken for chunking | Real BPE token counting prevents prompt overflow |
150-token overlap | Preserves context at chunk boundaries |
CPU + lock-file gating | AHME never competes with your active AI session for GPU/CPU |
Recursive tree merge | Scales compression with conversation length — O(log n) passes |
JSON-only system prompt | Enforces structured output from Ollama for reliable parsing |
| Config and DB are always found regardless of working directory |
🤝 Contributing
Contributions welcome! Please open an issue before submitting large PRs.
📄 License
MIT — do whatever you like.
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