Anteroom - your gateway to AI conversation
Project description
Anteroom
Your private AI gateway. Self-hosted. Agentic. Secure.
Docs • Quick Start • Changelog • Tutorials
What is Anteroom?
Anteroom is a ChatGPT-style web UI and agentic CLI that runs on your machine and connects to any OpenAI-compatible API — OpenAI, Azure, Ollama, LM Studio, or your company's internal endpoint.
Think of it as your private room between you and the AI. Your data never leaves your machine. No cloud. No telemetry. Just pip install and go.
Built for enterprise teams behind firewalls who need agentic AI without sending data to third parties.
Built for developers who want a CLI-first, tool-rich AI workflow they fully control.
Built for anyone who believes their conversations are their own.
Get running in 60 seconds
pip install anteroom
aroom init # interactive setup wizard
aroom # web UI at http://127.0.0.1:8080
That's it. No Docker. No database server. No config files required.
Two interfaces, one brain
Everything is shared — conversations, tools, storage. Start in the web UI, pick up in the terminal. Or live entirely in the CLI. Your choice.
Web UI
A full-featured chat interface with projects, folders, tags, file attachments, canvas panels, inline tool approvals, and four built-in themes.
CLI REPL
An agentic terminal with 12 built-in tools (+ 3 optional MS Office tools), MCP integration, sub-agent orchestration, a skills system, and planning mode — all with Rich markdown rendering. Type while the AI works; messages queue automatically.
$ aroom chat
anteroom v1.57.0 — the secure AI gateway
model: gpt-4o | tools: 12 built-in + 3 MCP | safety: ask_for_writes
> Refactor the auth module to use JWT tokens
Thinking... (12s)
I'll break this into steps:
1. Read the current auth implementation
2. Design the JWT token flow
3. Implement and test
read_file src/auth.py ✓
read_file src/middleware.py ✓
edit_file src/auth.py (+42 -18) ✓ ⚠ requires approval
edit_file src/middleware.py (+15 -8) ✓
bash pytest tests/unit/test_auth.py ✓ 12 passed
Done. Refactored auth to use JWT with RS256 signing.
See the changes in src/auth.py and src/middleware.py.
>
Exec mode
Non-interactive mode for scripts, CI/CD, and automation:
aroom exec "summarize this PR" --json # structured output
aroom exec "run tests and fix failures" --timeout 300
echo "review this" | aroom exec - --quiet # pipe stdin
What makes it different
Agentic, not just chat
The AI reads files, edits code, runs commands, searches your codebase, and spawns parallel sub-agents — with safety gates at every step. Not a chatbot. A collaborator.
Built-in tools: read_file write_file edit_file bash glob_files grep create_canvas update_canvas patch_canvas run_agent ask_user introspect
Optional tools (install with pip install anteroom[office]): docx xlsx pptx — create, read, and edit Word, Excel, and PowerPoint files directly
Extensible via MCP
Connect any Model Context Protocol server to add tools. Databases, APIs, file systems, custom services — the AI can use them all with the same safety controls as built-in tools.
# config.yaml
mcp_servers:
- name: internal-tools
command: npx
args: ["-y", "@my-org/internal-tools"]
trust_level: trusted # trusted = no defensive prompt wrapping
tools_include:
- "search_*"
- "read_*"
- name: external-api
command: npx
args: ["-y", "@third-party/api"]
trust_level: untrusted # default — outputs wrapped in defensive envelopes
tools_exclude:
- "admin_*"
Planning mode
For complex tasks, the AI explores first, writes a plan, then executes only after you approve. No surprises. Works in both CLI and web UI.
CLI:
> /plan build a REST API for user management
Planning... reading codebase, designing approach
> /plan approve
Executing plan: 8 steps across 5 files...
Web UI: Check the plan panel when planning is active, approve or reject before execution continues.
Enterprise-grade security
Built to OWASP ASVS Level 2 standards. Not bolted on — baked in.
- Tool safety gate: 4 risk tiers, 4 approval modes, 3 permission scopes
- 16 hard-block patterns: Catastrophic commands (rm -rf, fork bombs, disk wipes) blocked unconditionally
- Bash sandboxing: Execution timeouts, output limits, path/command blocking, network/package restrictions
- Prompt injection defense: Trust classification, defensive XML envelopes, tag breakout prevention
- Structured audit log: HMAC-SHA256 chained JSONL for tamper detection, SIEM-ready
- Session hardening: Ed25519 identity, concurrent session limits, IP allowlisting, idle/absolute timeouts
- Token budgets: Per-request, per-conversation, per-day limits (denial-of-wallet prevention)
- Sub-agent isolation: Concurrency, depth, iteration, timeout, and output caps
- Team config enforcement: Lock security settings across team members
- MCP SSRF protection: DNS validation, metacharacter rejection, per-server tool filtering and trust levels
Knowledge sources
Upload documents (PDFs, DOCX, code, etc.) via CLI (/upload <path>) or web UI drag-and-drop. Text is automatically extracted from binary formats and indexed for semantic search. Sources persist across conversations and are searchable with local vector embeddings — no API key needed.
pip install anteroom[docs] # adds PDF/DOCX text extraction
pip install anteroom[embeddings] # adds local vector search
Works with everything
Any endpoint that speaks the OpenAI protocol:
- OpenAI — GPT-4o, o1, etc.
- Azure OpenAI — your enterprise deployment
- Ollama / LM Studio — fully offline
- vLLM / TGI — self-hosted open models
- Any OpenAI-compatible API
The full picture
| Web UI | Conversations with auto-generated slugs, projects, folders, tags, attachments, canvas, themes, keyboard shortcuts |
| CLI | REPL, one-shot, exec mode, planning, skills, @file references, Rich rendering, slug-based conversation lookup |
| Tools | 12 built-in + 3 optional office tools + unlimited MCP tools, parallel execution, sub-agent orchestration |
| Tool Safety | 4 risk tiers, 4 approval modes, 16 hard-block patterns, destructive command detection |
| Bash Sandbox | Execution timeouts, output limits, path/command blocking, network/package restrictions, OS-level sandbox |
| Prompt Defense | Trust classification, defensive XML envelopes, tag breakout prevention, per-server trust levels |
| Audit | HMAC-SHA256 chained JSONL, daily rotation, content redaction, SIEM integration |
| Token Budgets | Per-request, per-conversation, per-day limits with configurable block/warn actions |
| Storage | SQLite + FTS5 + optional vector search, fully local, no cloud |
| Security | OWASP ASVS L2, CSRF, CSP, HSTS, SRI, rate limiting, parameterized queries |
| Identity | Ed25519 keypairs, HMAC-SHA256 session tokens, stable across restarts |
| Sessions | Memory or SQLite stores, idle/absolute timeouts, concurrent limits, IP allowlisting |
| Spaces | Workspace management, auto-discovery from cwd, repository cloning, pack bootstrapping, per-space config overlays |
| Packs | 7 artifact types, 6-layer precedence, pack manifests, git distribution, background refresh, lock files, health checks |
| Config | YAML + env vars, per-project ANTEROOM.md conventions, team config enforcement, dynamic API key refresh |
| Teams | Shared databases, team config with enforced fields, project configs with SHA-256 trust, skills system |
| Deployment | pip install anteroom — one command, no infrastructure |
Development
git clone https://github.com/troylar/anteroom.git
cd anteroom && pip install -e ".[dev]"
pytest tests/ -v # 2900+ tests
ruff check src/ tests/ # lint
ruff format src/ tests/ # format
Stack: Python 3.10+ • FastAPI • SQLite • Vanilla JS • Rich • prompt-toolkit • OpenAI SDK • MCP SDK
MIT License
An anteroom is the private chamber just outside a larger hall —
a controlled space where you decide who enters and what leaves.
anteroom.readthedocs.io
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