Structured Data Validator & Transformer
@agenson-tools
About Structured Data Validator & Transformer
Professional MCP server for validating, transforming, and normalizing structured data - built specifically for AI agents
Basic information
Category
Data & Analytics
License
MIT
Runtime
node
Transports
stdio
Publisher
agenson-tools
Submitted by
agenson-horrowitz
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"structured-data-validator": {
"command": "npx",
"args": [
"@agenson-horrowitz/structured-data-validator-mcp"
]
}
}
}Tools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is Structured Data Validator & Transformer?
Structured Data Validator & Transformer is an MCP server that provides AI agents with data validation, transformation, and normalization capabilities. It handles messy, inconsistent data from APIs, web scraping, user uploads, and other agents, returning clean, validated, normalized data.
How to use Structured Data Validator & Transformer?
Install via npm (npm install -g @agenson-horrowitz/structured-data-validator-mcp) or add to Claude Desktop or Cline configuration. Invoke tools like validate_json_schema, transform_csv_to_json, normalize_data, clean_text, and merge_datasets with JSON arguments.
Key features of Structured Data Validator & Transformer
- JSON Schema validation with detailed error reporting
- Intelligent CSV to JSON conversion with auto-type inference
- Data normalization for dates, phone numbers, currencies, and emails
- Text cleaning: remove HTML, fix encoding, normalize whitespace
- Dataset merging with configurable conflict resolution strategies
- Sub-2-second response times for typical agent workloads
Use cases of Structured Data Validator & Transformer
- Validate API responses before processing
- Ensure user input matches expected format
- Clean and normalize scraped web data
- Merge multiple datasets with smart conflict resolution
- Standardize date, phone, and currency formats across records
FAQ from Structured Data Validator & Transformer
How do I authenticate with the server?
Authentication is handled via MCPize (one-click deployment with built-in billing), direct API keys from agensonhorrowitz.cc, or crypto micropayments using USDC on Base chain.
What are the pricing plans?
Free tier: 500 calls/month. Pro tier: $9/month for 10,000 calls/month. Scale tier: $29/month for 50,000 calls/month. Overage: $0.02 per call beyond plan limits.
What are the data limits and performance characteristics?
Maximum request size is 10 MB. Average response time is under 2 seconds. Scale tier guarantees 99.5% uptime SLA. Rate limit is 10 calls/second (configurable).
Can I run this server locally?
Yes, you can clone the repository, install dependencies, build, and test locally. The server is also available via npm and can be run with npx.
What data formats are supported?
The server supports JSON, CSV (with automatic delimiter detection), and common text formats. It can normalize dates, phone numbers, currencies, and email addresses.
More Data & Analytics MCP servers
Google Ads MCP
cohnenAn MCP tool that connects Google Ads with Claude AI/Cursor and others, allowing you to analyze your advertising data through natural language conversations. This integration gives you access to campaign information, performance metrics, keyword analytics, and ad managementโall th
MCP Server for Data Exploration
reading-plus-aiMCP From Zero: Quick Data
dislerPrompt focused MCP Server for .json and .csv agentic data analytics for Claude Code
๐ Semantic Scholar MCP Server
JackKuo666๐ This project implements a Model Context Protocol (MCP) server for interacting with the Semantic Scholar API. It provides tools for searching papers, retrieving paper and author details, and fetching citations and references.
๐ชโจ Jupyter MCP Server
datalayer๐ช ๐ง Model Context Protocol (MCP) Server for Jupyter.
Comments