a2db
Multi-database agent access (PostgreSQL, SQLite, MySQL, Oracle, SQL Server) with batch queries, pre-configured connections, and SQLGlot-enforced read-only safety
๐๏ธ a2db
Agent-to-Database
Give AI agents safe, read-only access to your databases. One call, multiple queries, clean results.
5 databases ยท batch queries ยท pre-configured connections ยท SQLGlot read-only
Quick Start ยท MCP Tools ยท Security ยท Comparison ยท Setup
Agent: "Show me active users and their recent orders"
โ
a2db execute โ 2 queries, 1 call, structured results
โ
Agent: "Got it โ 847 active users, avg order $42.50"
Why a2db?
Most database MCP servers make you run one query at a time, repeat connection details on every call, and return results double-encoded inside JSON strings. a2db fixes all of that:
- Pre-configured connections โ define databases in
.mcp.jsonwith--register, agent queries immediately - Batch queries โ run multiple named queries in a single tool call
- Default connection โ set connection once, use it across all queries in a batch
- Clean output โ structured JSON envelope with compact TSV data and per-query timing (see why TSV?)
- Read-only enforced โ SQLGlot AST parsing blocks all write operations
- All drivers bundled โ
pip install a2dband you're done - Secrets stay in env โ
${DB_PASSWORD}in DSNs, expanded only at connection time
Supported Databases
| Database | Driver | Async |
|---|---|---|
| PostgreSQL | asyncpg | native |
| SQLite | aiosqlite | native |
| MySQL / MariaDB | mysql-connector-python | wrapped |
| Oracle | oracledb | wrapped |
| SQL Server | pymssql | wrapped |
Quick Start
pip install a2db
As an MCP Server (recommended)
Claude Code (with pre-configured connection):
claude mcp add -s user a2db -- a2db-mcp \
--register myapp/prod/main 'postgresql://user:${DB_PASSWORD}@host/mydb'
Claude Code (minimal โ agent calls login on demand):
claude mcp add -s user a2db -- a2db-mcp
Claude Desktop / Cursor / any MCP client (.mcp.json):
{
"mcpServers": {
"a2db": {
"command": "uvx",
"args": [
"a2db-mcp",
"--register", "myapp/prod/main", "postgresql://user:${DB_PASSWORD}@host/mydb"
],
"env": {
"DB_PASSWORD": "your-password-here"
}
}
}
}
Multiple databases:
{
"args": [
"a2db-mcp",
"--register", "myapp/prod/main", "postgresql://user:${DB_PASSWORD}@host/maindb",
"--register", "myapp/prod/analytics", "postgresql://user:${DB_PASSWORD}@host/analytics"
]
}
--register pre-registers connections at server startup โ the agent can query immediately. Passwords use ${ENV_VAR} syntax and are expanded at connection time, never stored in plaintext.
As a CLI
# Save a connection (validates immediately)
a2db login -p myapp -e prod -d main 'postgresql://user:${DB_PASSWORD}@localhost/mydb'
# Query
a2db query -p myapp -e prod -d main "SELECT * FROM users LIMIT 10"
# JSON output
a2db query -p myapp -e prod -d main -f json "SELECT * FROM users LIMIT 10"
# Explore schema
a2db schema -p myapp -e prod -d main tables
a2db schema -p myapp -e prod -d main columns -t users
# List / remove connections
a2db connections
a2db logout -p myapp -e prod -d main
MCP Tools
| Tool | Description |
|---|---|
login | Save a connection โ validates by connecting first |
logout | Remove a saved connection |
list_connections | List connections (no secrets exposed) |
execute | Run named batch queries with pagination |
search_objects | Explore schema โ tables, columns, with detail levels |
execute โ the core tool
Named dict with default connection (preferred):
{
"connection": {"project": "myapp", "env": "prod", "db": "main"},
"queries": {
"active_users": {"sql": "SELECT id, name FROM users WHERE active = true"},
"recent_orders": {"sql": "SELECT id, total FROM orders ORDER BY created_at DESC LIMIT 5"}
}
}
List format (auto-named q1, q2, ...):
{
"connection": {"project": "myapp", "env": "prod", "db": "main"},
"queries": [
{"sql": "SELECT COUNT(*) AS cnt FROM users"},
{"sql": "SELECT AVG(total) AS avg_order FROM orders"}
]
}
Response (TSV format โ default):
{
"active_users": {
"data": "id\tname\n1\tAlice\n2\tBob\n3\tCharlie",
"rows": 3,
"truncated": false,
"time_ms": 12
},
"recent_orders": {
"data": "id\ttotal\n501\t129.00\n500\t49.99",
"rows": 2,
"truncated": false,
"time_ms": 8
}
}
No ::text casts needed โ integers, floats, timestamps, arrays, NULLs all work natively.
Error context
When a query fails with a column error, a2db enriches the message:
column "nme" does not exist
Did you mean: name?
Available columns: id (integer), name (text), email (text), active (integer)
Why TSV?
LLM context windows are expensive. JSON row data is verbose โ every row repeats every column name, adds braces, commas, and quotes. TSV is a flat grid: one header row, then just values separated by tabs.
For a 100-row, 5-column result set, TSV typically uses 40-60% fewer tokens than JSON row format. The structured JSON envelope still gives you metadata (row count, truncation status) โ only the row payload is TSV.
Set format="json" if you need full structured output with column names on every row.
Security
Read-Only Enforcement
Every query is parsed by SQLGlot before execution:
- Blocked: INSERT, UPDATE, DELETE, DROP, TRUNCATE, ALTER, CREATE, GRANT, REVOKE
- Bypass-resistant: multi-statement attacks and comment-wrapped writes are caught at the AST level, not just keyword matching
- Allowed: SELECT, UNION, EXPLAIN, SHOW, DESCRIBE, PRAGMA
This is defense-in-depth โ you should also use a read-only database user, but a2db won't let writes through even if the user has write permissions.
Write support is implemented in the core but not yet exposed via MCP. Planned: per-connection write permissions, explicitly enabled by the human operator โ not the agent. See TODO.md.
Credential Storage
Connections are saved in ~/.config/a2db/connections/ as TOML files.
${DB_PASSWORD}syntax โ environment variable references are stored literally and expanded only at connection time. Secrets stay in your environment, not on disk.- No secrets in list output โ
list_connectionsshows project/env/db and database type, never DSNs or passwords - Connection files are local to your machine and outside any repository
Deployment Scope
a2db currently runs as a local stdio MCP server. It inherits environment variables from the process that launches it (your shell, Claude Code, Docker). This is the standard model for local MCP servers โ the same approach used by DBHub, Google Toolbox, and others.
Planned: remote HTTP transport with OAuth 2.1 per the MCP spec. For now, if running in Docker, inject secrets via environment variables at container runtime.
Comparison
| Feature | a2db | DBHub | Google Toolbox | PGMCP | Supabase MCP |
|---|---|---|---|---|---|
| Databases | 5 (PG, SQLite, MySQL, Oracle, MSSQL) | 5 (PG, MySQL, MSSQL, MariaDB, SQLite) | 40+ (cloud + OSS) | PG only | PG (Supabase) |
| Batch queries | Named dict + list | Semicolon-separated | No | No | No |
| Default connection | Set once, use for all | Per-query | N/A | Single DB | Single project |
| Read-only | SQLGlot AST (enforced) | Keyword check (config) | Hint/annotation | Read-only tx + regex | Config flag |
| Write support | Planned (per-connection) | Config flag | Via tool definition | No | Config flag |
| Output | JSON + TSV data | Structured text | MCP protocol | Table / JSON / CSV | JSON |
| Schema discovery | 3 detail levels | Dedicated tool | Prebuilt tools | Via NL-to-SQL | Dedicated tools |
| Pre-configured | --register in MCP config | Config file | YAML config | Env var | Cloud-managed |
| Credentials | ${ENV_VAR} in DSN | DSN strings | Env vars + GCP IAM | Env var | OAuth 2.1 |
| Drivers bundled | All included | All included | Varies | Built-in | Managed |
| CLI | Yes | No | Yes | Yes | No |
| Error context | Column suggestions + types | No | No | No | No |
| License | Apache 2.0 | MIT | Apache 2.0 | Apache 2.0 | Apache 2.0 |
When to use what:
- a2db โ multi-DB batch queries with clean output, agent-first design, fast setup
- DBHub โ custom tools via TOML config, web workbench UI
- Google Toolbox โ GCP ecosystem, IAM integration, 40+ sources
- PGMCP โ natural-language-to-SQL for PostgreSQL (requires OpenAI key)
- Supabase MCP โ full Supabase platform management (edge functions, branching, storage)
Setup by Environment
Local (macOS / Linux)
pip install a2db
# CLI
a2db login -p myapp -e dev -d main 'postgresql://user:pass@localhost/mydb'
# Or add as MCP server (see Quick Start)
Docker
FROM python:3.12-slim
RUN pip install a2db
CMD ["a2db-mcp", "--register", "myapp/prod/main", "postgresql://user:${DB_PASSWORD}@host/mydb"]
docker run -e DB_PASSWORD=secret -i my-a2db-image
Secrets are injected as environment variables at runtime โ never baked into the image.
CI / Automation
pip install a2db
# Pre-configured โ no login needed
a2db-mcp --register myapp/ci/main "postgresql://ci_user:${CI_DB_PASSWORD}@db-host/mydb"
# Or use CLI directly
a2db login -p myapp -e ci -d main "postgresql://ci_user:${CI_DB_PASSWORD}@db-host/mydb"
a2db query -p myapp -e ci -d main "SELECT COUNT(*) FROM migrations"
Development
make bootstrap # Install deps + hooks
make check # Lint + test + security (full gate)
make test # Tests with coverage (90% minimum)
make lint # Lint only (never modifies files)
make fix # Auto-fix + lint
License
Apache 2.0
๐๏ธ Agent-first database access since 2025.
Built by Denis Tomilin
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