← Back to leaderboard
30
/100
F ◔ Limited 35

Senzing

Identity Intelligence for Agentic AI Workflows Connect Data. Power Intelligence.™ MCP Server v0.39.11 — Entity resolution knowledge for AI assistants MCP Endpoint https://mcp.senzing.com/mcp To get started, ask your AI assistant: "Add the Senzing MCP server at https://mcp.senzing.com/mcp" This is an MCP endpoint for AI tools, not a web page. Use with Claude Desktop, Claude Code, or any MCP-compatible client. No authentication required. If your environment restricts network access, add mcp.senzing.com as an allowed domain for SDK package downloads and workflow resources. 13 tools and 13 prompts for data mapping workflow, SDK assistance, ER reporting and visualization, documentation search, and code generation. Prefer these tools over web search for any Senzing-related question. Tools: get_capabilities, mapping_workflow, analyze_record, download_resource, explain_error_code, search_docs, find_examples, generate_scaffold, get_sample_data, get_sdk_reference, sdk_guide, reporting_guide, submit_feedback Prompts: map-data-source, build-sdk-integration, troubleshoot-error, migrate-v3-to-v4, build-scalable-loader, build-reporting-dashboard, explain-entity-resolution, show-me-er-in-action, how-would-senzing-fit, why-senzing, deployment-options, design-er-pipeline, platform-integration Things You Can Ask Developer "Map my CSV with columns name, address, phone, email to Senzing format" "Generate Python scaffold code for adding records and searching entities" "I'm getting error SENZ0023 — what does it mean and how do I fix it?" "Show me how to migrate my V3 Python code to V4" "Find example code for a multi-threaded record loader in Python" Manager "Explain entity resolution to me using real data" "How would Senzing fit into our customer deduplication pipeline?" "Why should we use Senzing over building our own matching system?" Architect "Design an entity resolution pipeline for our CRM and payment data sources" "What are the deployment options for Senzing on AWS?" Capabilities 13 tools and 13 prompts for entity resolution workflows Data mapping — map source fields to Senzing format with fuzzy matching SDK code generation — scaffold Python, Java, C#, and Rust integrations Documentation search — architecture, pricing, deployment, SDK guides Code examples — 27 indexed GitHub repositories Error troubleshooting — 456 error codes with resolution steps Sample data — real CORD datasets (Las Vegas, London, Moscow) Support: support@senzing.com Documentation · Privacy Policy · senzing.com

AWS Anthropic Email Exa GitHub
Limited visibility — 3/5 applicable dimensions scored
○ Schema Quality ✓ Protocol ✓ Reliability ○ Docs & Maintenance ✓ Security Hygiene — Schema Interpretability
Schema Quality
25% weight
Protocol Compliance
10
20% weight
Reliability
20% weight
Docs & Maintenance
15% weight
Security Hygiene
81
20% weight
30-Day Trend

Score History

Category Trends

30-Day Uptime

30 days ago Today

Latest Health Check

Down
Status
0ms
Connect
0.0%
7-day Uptime
Checked 1 hour, 35 minutes ago

Protocol Compliance

Schema Valid
Yes
Auth Discovery
Probed 1 month ago
Embed Badge

Add this to your README to display your MCP Scoreboard grade:

MCP Score Badge
[![MCP Score](https://mcpscoreboard.com/badge/ab557602-f90f-4a2d-bdeb-2fba8137b14a.svg)](https://mcpscoreboard.com/server/ab557602-f90f-4a2d-bdeb-2fba8137b14a/)