mcp-json-yaml-toml
A token-efficient, schema-aware MCP server for safely reading and modifying JSON, YAML, and TOML files
Getting Started • CLI Usage • Available Tools • Development
Stop AI coding tools from breaking your data files. No more grep guesswork, hallucinated fields, or non-schema-compliant data added to files. This MCP server gives AI assistants a strict, round-trip safe interface for working with structured data.
The Problem
AI coding tools often destroy structured data files:
- They grep through huge json, yaml, and toml files (like json logs, or AI transcript files) and guess at keys.
- They hallucinate fields that never existed.
- They use sed and regex that leave files in invalid states.
- They break YAML indentation and TOML syntax.
- They can't validate changes before writing.
The Solution
mcp-json-yaml-toml provides AI assistants with proper tools for structured data:
- Token-efficient: Extract exactly what you need without loading entire files.
- Schema validation: Enforce correctness using SchemaStore.org or custom schemas.
- Safe modifications: Enforced validation on write; preserve comments and formatting.
- Multi-format: JSON, YAML, and TOML through a unified interface.
- Directive-based detection: Support for
# yaml-language-server,#:schema, and$schemakeys in all formats. - Constraint-based guided generation: Native LMQL support for proactive validation of partial inputs.
- Local-First: All processing happens locally. No data ever leaves your machine.
- Transparent JIT Assets: The server auto-downloads
yqif missing and fetches missing schemas from SchemaStore.org for local caching.
[!NOTE]
JSONC Support: Files with
.jsoncextension (JSON with Comments) are fully supported for reading, querying, and schema validation. However, write operations will strip comments due to library limitations.
Getting Started
Prerequisites
- Python ≥ 3.11 installed.
- An MCP-compatible client (Claude Code, Cursor, Windsurf, Gemini 2.0, n8n, etc.).
Installation
The server uses uvx for automatic dependency management and zero-config execution.
AI Agents & CLI Tools
uvx mcp-json-yaml-toml
Claude Code (CLI)
claude mcp add --scope user mcp-json-yaml-toml -- uvx mcp-json-yaml-toml
Other MCP Clients
Add this to your client's MCP configuration:
{
"mcpServers": {
"json-yaml-toml": {
"command": "uvx",
"args": ["mcp-json-yaml-toml"]
}
}
}
[!TIP] See docs/clients.md for detailed setup guides for Cursor, VS Code, and more.
Schema Discovery & Recognition
The server automatically identifies the correct JSON schema for your files using multiple strategies:
- Directives: Recognizes
# yaml-language-server: $schema=...and#:schema ...directives. - In-File Keys: Detects
$schemakeys in JSON and YAML (also supports quoted"$schema"in TOML). - Local IDE Config: Discovers schemas from VS Code/Cursor extension settings and caches.
- SchemaStore.org: Performs glob-based auto-detection against thousands of known formats.
- Manual Association: Use the
data_schematool to bind a file to a specific schema URL or name.
LMQL & Guided Generation
This server provides native support for LMQL (Language Model Query Language) to enable Guided Generation. This allows AI agents to validate partial inputs (e.g., path expressions) incrementally before execution.
- Incremental Validation: Check partial inputs (e.g.,
.data.us) and get the remaining pattern needed. - Improved Reliability: Eliminate syntax errors by guiding the LLM toward valid tool inputs.
- Rich Feedback: Get suggestions and detailed error messages for common mistakes.
[!TIP] See the Deep Dive: LMQL Constraints for detailed usage examples.
Available Tools
| Tool | Description |
|---|---|
data | Get, set, or delete values at specific paths |
data_query | Advanced yq/jq expressions for transformations |
data_schema | Manage schemas and validate files |
data_convert | Convert between JSON, YAML, and TOML |
data_merge | Deep merge structured data files |
constraint_validate | Validate inputs against LMQL constraints |
constraint_list | List available generation constraints |
[!NOTE] Conversion TO TOML is not supported due to yq's internal encoder limitations for complex structures.
Development
Setup
git clone https://github.com/bitflight-devops/mcp-json-yaml-toml.git
cd mcp-json-yaml-toml
uv sync
Testing
ash
Run all tests (coverage included)
uv run pytest
### Code Quality
The project uses `prek` (a Rust-based pre-commit tool) for unified linting and formatting. AI Agents MUST use the scoped verification command:
```bash
# Recommended: Verify only touched files
uv run prek run --files <file edited>
[!IMPORTANT] Avoid
--all-filesduring feature development to keep PR diffs clean and preserve git history.
Project Structure
mcp-json-yaml-toml/
├── packages/mcp_json_yaml_toml/ # Core logic
│ ├── server.py # MCP implementation
│ ├── yq_wrapper.py # Binary management
│ ├── schemas.py # Schema validation
├── .github/ # CI/CD and assets
├── docs/ # Documentation
└── pyproject.toml # Project config
# Run all tests (coverage included)
uv run pytest
Code Quality
The project uses prek (a Rust-based pre-commit tool) for unified linting and formatting. AI Agents MUST use the scoped verification command:
# Recommended: Verify only touched files
uv run prek run --files <file edited>
[!IMPORTANT] Avoid
--all-filesduring feature development to keep PR diffs clean and preserve git history.
Project Structure
graph TD
Repo[mcp-json-yaml-toml]
Repo --> Packages[packages/mcp_json_yaml_toml]
Repo --> Github[.github]
Repo --> Docs[docs]
Repo --> Config[pyproject.toml]
subgraph "Core Logic"
Packages --> Server[server.py<br/>MCP Server & Tools]
Packages --> Schemas[schemas.py<br/>Schema Validation]
Packages --> Constraints[lmql_constraints.py<br/>LMQL Constraints]
Packages --> YQ[yq_wrapper.py<br/>Binary Manager]
Packages --> YAML[yaml_optimizer.py<br/>YAML Anchors]
Packages --> TOML[toml_utils.py<br/>TOML Utils]
Packages --> Conf[config.py<br/>Config Manager]
end
style Packages fill:#f9f,stroke:#333,stroke-width:2px
style Repo fill:#eee,stroke:#333,stroke-width:4px