Fresha
Access the Fresha Data Connector through Snowflake.
mcp-fresha
MCP (Model Context Protocol) server for accessing Fresha Data Connector via Snowflake. Query your Fresha business data directly through AI assistants like Claude.
Author: Boris Djordjevic
Quick Start
npm install -g mcp-fresha
Configuration
Claude Desktop
Add to ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"fresha": {
"command": "mcp-fresha",
"env": {
"SNOWFLAKE_ACCOUNT": "your-account.snowflakecomputing.com",
"SNOWFLAKE_USER": "FRESHA_DATA_XXX_XXX",
"SNOWFLAKE_PASSWORD": "your-password",
"SNOWFLAKE_DATABASE": "FRESHA_DATA_CONNECTOR",
"SNOWFLAKE_SCHEMA": "FRESHA_DATA_XXX",
"SNOWFLAKE_WAREHOUSE": "FRESHA_DATA_XXX"
}
}
}
}
Important: If your password contains #, wrap it in quotes: "password#123"
Get these credentials from your Fresha Data Connector settings.
Features
- Real-time Data Access: Direct connection to your Fresha business data through Snowflake
- Flexible Querying: Support for date ranges, custom filters, sorting, and pagination
- Smart Date Parsing: Natural language date inputs like "yesterday", "last week", "this month"
- Comprehensive Schema Discovery: Automatic discovery of all available tables and their structures
- Type-safe Operations: Built with TypeScript for reliability and maintainability
- Mock Mode: Development mode with sample data when Snowflake credentials are not available
- Structured Logging: Detailed logging with Pino for debugging and monitoring
Available Tools
list_fresha_reports
Lists all available tables and views in your Fresha database.
Example: "Show me all tables"
get_fresha_report
Get data from any Fresha report/table with flexible filtering options.
Parameters:
report_name(required) - Name of the table (e.g., CASH_FLOW, SALES, BOOKINGS)start_date(optional) - Start date filter (YYYY-MM-DD)end_date(optional) - End date filter (YYYY-MM-DD)limit(optional) - Max records to return (default: 1000)order_by(optional) - Column to sort by (e.g., "SALE_DATE DESC")filters(optional) - Additional filters as key-value pairs
Examples:
- "Get yesterday's cash flow"
- "Show me top 10 clients by appointment count"
- "Get all bookings for this week"
- "Show sales from location 123"
Available Tables
Your Fresha database includes:
CASH_FLOW- Transaction-level cash flow dataBOOKINGS- Service bookings and appointmentsCLIENTS- Client information and historyPAYMENTS- Payment transactionsSALES- Sales recordsLOCATIONS- Business locationsTEAM_MEMBERS- Staff information- And more...
Troubleshooting
Authentication Failed
- Ensure credentials match exactly from Fresha Data Connector
- Check for special characters in password (especially
#) - Remove
https://from account URL if present
No Data Returned
- Verify you have the correct database and schema names
- Check Fresha Data Connector is active (8-hour daily limit)
Security
Best Practices
- Environment Variables: All sensitive credentials are stored as environment variables, never in code
- No Credential Logging: The server automatically masks Snowflake credentials in logs
- Read-Only Access: Designed for read-only operations to prevent accidental data modifications
- Input Validation: All tool inputs are validated using Zod schemas to prevent injection attacks
- Parameterized Queries: All database queries use parameterized statements to prevent SQL injection
- Session Management: Each connection is properly managed with automatic cleanup
Data Protection
- Credentials are never exposed in error messages or logs
- Mock mode prevents accidental production data access during development
- All database connections are encrypted using Snowflake's secure protocols
Development
# Clone and install
git clone https://github.com/199-biotechnologies/mcp-fresha.git
cd mcp-fresha/fresha-mcp-server
npm install
# Configure environment
cp .env.example .env
# Edit .env with your credentials
# Build and test
npm run build
npm test
# Development mode with mock data
npm run dev
# Watch mode for development
npm run watch
# Lint and type check
npm run lint
npm run typecheck
Architecture
The project follows a clean architecture pattern:
- Controllers: Business logic for handling data queries and transformations
- Services: Data access layer with Snowflake connection management
- Tools: MCP tool definitions that expose functionality to AI assistants
- Utils: Shared utilities for logging, date parsing, and error handling
Contributing
Contributions are welcome! Please ensure:
- All code passes linting (
npm run lint) - TypeScript types are properly defined
- New features include appropriate error handling
- Security best practices are followed
License
MIT
İlgili Sunucular
Supabase MCP Server
An MCP server providing administrative control over a Supabase PostgreSQL database, compatible with Cursor's Composer and Codeium's Cascade.
Epicor Kinetic MCP Server by CData
A read-only MCP server by CData that enables LLMs to query live data from Epicor Kinetic.
Servidor RAG Personal con MCP
A server for Retrieval Augmented Generation (RAG), providing AI clients access to a private knowledge base built from user documents.
Notion Content Database
Manage content databases in Notion using the Notion API.
Iceberg MCP Server (via Impala)
Provides read-only access to Apache Iceberg tables via Apache Impala, allowing LLMs to inspect schemas and execute queries.
GraphRAG
Query a hybrid graph (Neo4j) and vector (Qdrant) database for powerful semantic and graph-based document retrieval.
Memento MCP
A scalable knowledge graph memory system for LLMs with semantic retrieval and temporal awareness, using Neo4j as a backend.
CData Raiser's Edge NXT
A read-only MCP server by CData that enables LLMs to query live data from Raiser's Edge NXT.
Tesouro Direto MCP Server
Provides natural language access to Brazilian treasury bond data from the Tesouro Direto API, allowing users to query market data and bond details.
VictoriaMetrics
A server for writing and querying time series data using the VictoriaMetrics API.