Self-Hosted AI Companion Platform
Project description
Familiar
Self-hosted AI agent with Signal-grade encryption
Quick Start
Install from PyPI
pip install familiar-agent[llm]
export ANTHROPIC_API_KEY="sk-ant-..." # or OPENAI_API_KEY
python -m familiar
Run from source
git clone https://github.com/omegcrash/familiar.git
cd familiar/familiar
./run.sh
run.sh auto-detects your setup. If you have Ollama installed, it uses local AI (free, private). If you set an API key, it uses Claude or GPT instead.
That's it. No Docker, no databases, no config files needed.
Setup Wizard
For a guided setup experience, use the onboarding wizard:
python -m familiar --onboard # CLI wizard (step-by-step)
python -m familiar --onboard-tui # Rich terminal UI (keyboard-navigable)
python -m familiar --reconfigure # Re-run setup to change settings
The wizard auto-detects your LLM providers (Anthropic, OpenAI, Gemini, Ollama), lets you configure channels (Telegram, Discord, Matrix, WhatsApp, Signal, iMessage, Teams, CLI), sets up encryption, and sends a test message — all in under 5 minutes. A web-based version is also available at /onboard on the dashboard.
See docs/CHANNELS.md for per-channel setup instructions.
To run the web wizard from another device on your LAN (e.g. setting up a Raspberry Pi from your laptop):
FAMILIAR_ONBOARD_LAN=1 python -m familiar --dashboard
# Then open http://<pi-ip>:5000/onboard from your laptop
What Is Familiar?
A self-hosted AI agent that runs on your machine — from a Raspberry Pi to a workstation. Talk to it through CLI, Telegram, Discord, Matrix, Teams, or the web dashboard. It remembers context, executes tools, manages your calendar, reads your email, controls GPIO pins, and browses the web.
Everything is encrypted locally. Your conversations never leave your hardware unless you choose a cloud LLM provider.
Features
- Multi-provider LLM — Claude, GPT, or local models via Ollama (llama3.2, deepseek-r1, qwen2.5, mistral, gemma3, phi3)
- 50+ skills — email, calendar, browser, knowledge base, tasks, GPIO, voice, documents, Nextcloud, Gitea, Jellyfin, and more
- Signal-grade encryption — Double Ratchet secure transport, sessions and memory encrypted at rest
- Multi-channel — CLI, Telegram, Discord, Matrix, Teams, web dashboard, Signal, iMessage, WhatsApp, SMS
- Raspberry Pi optimized — runs on 4GB Pi with local Ollama models
- Multi-device mesh — connect multiple Familiar instances with encrypted peer-to-peer networking
- HIPAA-ready — compliance mode with audit logging and PHI detection
- Task hints & eval metrics — context-aware task suggestions, CI evaluation with cost tracking
- Self-hosted email server — built-in SMTP/IMAP server for fully self-hosted email
Advanced Installation
For running as a system daemon, Pi optimization, or full dependency install:
# Full install with all extras
pip install familiar-agent[full]
# Pi-specific with Ollama optimization
./familiar/scripts/install-pi.sh --with-ollama
# Nonprofit preset (email, calendar, tasks)
./familiar/scripts/install-pi.sh --nonprofit
See docs/INSTALL.md for detailed options.
Configuration
Copy and edit the sample config:
cp config.sample.yaml ~/.familiar/config.yaml
Key settings:
llm:
default_provider: anthropic # or openai, ollama
anthropic_model: claude-sonnet-4-6
ollama_model: llama3.2
agent:
name: Familiar
memory_enabled: true
skills_enabled: true
security:
encrypt_sessions: true
encrypt_memory: true
Project Structure
familiar/
├── pyproject.toml # Package config (pip install -e .)
├── familiar/
│ ├── run.sh # Quick start script
│ ├── __main__.py # CLI entry point
│ ├── core/ # Agent, providers, memory, mesh, secure transport
│ ├── channels/ # CLI, Telegram, Discord, Matrix, Teams, etc.
│ ├── skills/ # 50+ built-in skills
│ ├── dashboard/ # Web dashboard
│ ├── admin/ # Admin panel
│ ├── onboard/ # Google Workspace setup wizard
│ ├── docs/ # Documentation
│ └── scripts/ # Install scripts + dev tools
License
MIT — Copyright (c) 2026 George Scott Foley
See LICENSE for full text.
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