psamvault-mcp
MCP server for psamvault — lets AI agents use your stored credentials without ever seeing their plaintext values.
README
psamvault-mcp
MCP server for psamvault — lets AI agents use your stored credentials without ever seeing their plaintext values.
How it works
psamvault exposes two complementary flows depending on what the agent needs.
API request flow (use_credential)
When an AI agent needs to call an API on your behalf, psamvault decrypts the credential locally and forwards the authenticated request through its backend proxy.
The agent never sees the password. It only sees the HTTP response.
Agent: "Call the GitHub API using my stored credential"
↓
psamvault shows a consent dialog: "Allow agent to use github.com credential?"
↓ (you approve)
psamvault decrypts credential locally using your Vault Encryption Key
↓
psamvault makes: GET https://api.github.com/user
Authorization: Bearer <your token>
↓
Agent receives: {"login": "yourusername", "id": 12345, ...}
Browser login flow (browser_login)
When an AI agent needs to log you into a website, psamvault opens a real Chromium browser, navigates to the site, and fills in the credentials directly inside that browser process.
The agent never sees the credentials. It only sees whether the login succeeded.
Agent: "Log me into kaggle.com"
↓
psamvault opens Chromium → navigates to kaggle.com → finds the login page
↓
psamvault takes a screenshot of the confirmed login page
↓
psamvault shows a consent dialog with the confirmed login URL
↓ (you approve)
psamvault decrypts credential locally
↓
psamvault fills username + password fields directly in the browser
↓
If a CAPTCHA appears, psamvault takes a screenshot, pauses automation,
and tells you to solve the CAPTCHA and click Sign in manually
↓
Agent receives:
{
"success": true,
"message": "Logged in to github.com successfully. The browser is open.",
"steps_count": 8,
"url": "https://github.com/dashboard",
"captcha_detected": false,
"captcha_screenshot": null,
"failed_at": null,
"hint": null
}
↓
Browser stays open — you take over from there.
The browser session is saved and reused on subsequent calls to the same site.
Prerequisites
- Python ≥ 3.11
- psamvault installed and logged in
pipx install psamvault
psamvault configure
psamvault login
Installation
pipx install psamvault-mcp
playwright install chromium
Goose setup (recommended)
Goose is an open-source AI agent with native MCP support. There are three ways to add psamvault-mcp as a Goose extension:
Option A — One-click deeplink
Click or paste this URL into your browser while Goose Desktop is running:
goose://extension?cmd=psamvault-mcp&timeout=300&id=psamvault&name=psamVault&description=Use%20stored%20credentials%20without%20exposing%20them%20to%20the%20agent
Goose will prompt you to confirm, then the extension is added instantly.
Option B — Goose Desktop UI
-
Open Goose Desktop.
-
Click the sidebar button (top-left) → Extensions.
-
Click Add custom extension.
-
Fill in the form:
Field Value Type Standard IOID psamvaultName psamVaultDescription Use stored credentials without exposing them to the agentCommand psamvault-mcpTimeout 300 -
Click Add.
The extension appears in your Extensions list — toggle it on to activate it.
Option C — Config file (advanced)
Edit ~/.config/goose/config.yaml and add the following under extensions::
extensions:
psamvault:
name: psamVault
cmd: psamvault-mcp
args: []
enabled: true
type: stdio
timeout: 300
Save the file and restart Goose (or reload the session).
Verifying the extension works
Once added, start a Goose session and try:
What credentials do I have stored in my vault?
Goose will call list_vault_sites via psamvault-mcp. If you see your stored sites, everything is working.
Other MCP clients
Claude Desktop — config file location:
- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json - Windows:
%APPDATA%\Claude\claude_desktop_config.json
{
"mcpServers": {
"psamvault": {
"command": "psamvault-mcp"
}
}
}
Restart your MCP client after saving.
Configuration
psamvault-mcp reads its backend URL from ~/.psamvault/config.env, written
automatically by psamvault configure.
| Variable | Default | Description |
|---|---|---|
PSAMVAULT_API_URL |
https://psam-vault-backend.onrender.com |
psamvault backend endpoint |
PSAMVAULT_LOG_LEVEL |
INFO |
Log verbosity. Accepts any standard Python level: DEBUG, INFO, WARNING, ERROR. Logs go to stderr. |
To point at a self-hosted backend, set the variable in ~/.psamvault/config.env:
PSAMVAULT_API_URL=https://your-backend.example.com
Available tools
| Tool | Description |
|---|---|
get_version |
Return the installed psamvault-mcp version. No session or login required |
search_vault_tools |
Discover which tool to use — call this first; accepts a keyword or empty string for all tools |
list_vault_sites |
List stored site names (no passwords) |
check_credential_exists |
Check if a credential exists for a site |
use_credential |
Make an authenticated HTTP request |
get_username_for_site |
Get username only (not password) |
browser_login |
Open a real browser and log into a website — credentials filled silently, never shown to the agent |
Injection modes
| Mode | Header format | Use case |
|---|---|---|
bearer_token |
Authorization: Bearer <password> |
GitHub, OpenAI, most APIs |
api_key_header |
<custom-header>: <password> |
APIs with X-API-Key headers |
basic_auth |
Authorization: Basic base64(user:pass) |
HTTP basic auth |
Example agent prompts
Once connected, you can ask your agent things like:
- "What credentials do I have stored in my vault?"
- "Check my GitHub notifications using my stored github.com credential"
- "List my AWS S3 buckets using my stored aws credential"
- "Log me into kaggle.com"
- "Open github.com and log me in"
Testing
# From the repo root
pytest
Tests live in tests/ and cover crypto primitives, session management, consent
logic, the API client (with httpx mocking), and MCP tool behaviour. The test suite
requires no real network access or OS keychain — all external dependencies are mocked.
Security
- Credentials are decrypted locally on your machine — never sent to the agent
- Every credential use requires explicit approval via a consent dialog
- The agent only receives HTTP responses, never credential values
- All communication with the psamvault backend uses HTTPS
License
MIT — see LICENSE.
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