Yet Sparql Mcp Server

Created By
Temkit Sid-Alia year ago
MCP SPARQL Server is a high-performance, configurable server that connects to any SPARQL endpoint and provides enhanced functionality including result formatting and caching. It's built on top of the MCP (Message Carrying Protocol) framework to provide a seamless, language-agnostic interface for querying semantic data.
Overview

What is Yet Sparql Mcp Server?

Yet Sparql Mcp Server is a high-performance, configurable server that connects to any SPARQL endpoint, providing enhanced functionality such as result formatting and caching. It is built on the MCP (Message Carrying Protocol) framework, offering a seamless, language-agnostic interface for querying semantic data.

How to use Yet Sparql Mcp Server?

To use the server, start it by specifying a SPARQL endpoint using the command: mcp-server-sparql --endpoint https://dbpedia.org/sparql. You can also run it as a background daemon or configure it with systemd for automatic startup.

Key features of Yet Sparql Mcp Server?

  • Universal endpoint support for any SPARQL-compliant endpoint.
  • Full SPARQL support for executing any valid SPARQL query (SELECT, ASK, CONSTRUCT, DESCRIBE).
  • Intelligent result formatting options: standard JSON, simplified JSON, and tabular format.
  • High-performance caching with multiple strategies (LRU, LFU, FIFO) and configurable TTL.
  • Flexible deployment options including foreground mode, background daemon, and systemd service.

Use cases of Yet Sparql Mcp Server?

  1. Querying semantic data from various SPARQL endpoints.
  2. Formatting results for different application needs (e.g., UI display).
  3. Caching results to improve performance and reduce load on SPARQL endpoints.

FAQ from Yet Sparql Mcp Server?

  • Can I connect to any SPARQL endpoint?
    Yes, the server supports any SPARQL-compliant endpoint.

  • What formats can I get results in?
    You can receive results in standard JSON, simplified JSON, or tabular format.

  • Is caching enabled by default?
    Yes, caching is enabled by default, and you can configure its behavior.

Server Config

{
  "mcpServers": [
    {
      "name": "sparql",
      "command": "python3",
      "args": [
        "/path/to/server.py",
        "--endpoint",
        "https://data.legilux.public.lu/sparqlendpoint",
        "--format",
        "simplified",
        "--cache-enabled",
        "true",
        "--cache-ttl",
        "300",
        "--cache-strategy",
        "lru"
      ],
      "env": {
        "SPARQL_ENDPOINT": "https://data.legilux.public.lu/sparqlendpoint",
        "SPARQL_TIMEOUT": "30",
        "SPARQL_MAX_RESULTS": "1000",
        "SPARQL_CACHE_ENABLED": "true",
        "SPARQL_CACHE_TTL": "300",
        "SPARQL_CACHE_MAX_SIZE": "100",
        "SPARQL_CACHE_STRATEGY": "lru",
        "PYTHONPATH": "/path/to/project/directory"
      },
      "transport": "stdio"
    }
  ],
  "defaultServer": "sparql"
}
Project Info
Created At
a year ago
Updated At
a year ago
Author Name
Temkit Sid-Ali
Star
-
Language
-
License
-
Tags

Recommend Servers

View All
Fortune Reading

19 hours ago
Krtr.ai
@KRTR.ai

KRTR are the pre-diligence AI experts — the intelligence layer for the people who fund, accelerate, and build early-stage companies. Pre-diligence is the work that happens BEFORE term sheets and formal due diligence — the screening, triage, and pattern-matching that decides whether a deal moves forward. Done well, it compresses weeks of analyst work into minutes and surfaces the specific gaps that drive better founder conversations. Upload a pitch deck and KRTR runs a multi-agent Assess Report in 5–10 minutes: typed agent waves across LLM cascades, an AI Reviewer validating every claim against industry-specific reasoning, scores calibrated on KRTR's proprietary industry rubric so a 78 on a SaaS deal means the same peer-relative position as a 78 on a biotech deal. For individual investors and scouts: triage deal flow, capture signals, set dispositions, prep for partner meetings. See live peer activity attributed within your firm, anonymized across competitors. For VC firms, accelerators, and incubators: screener-mediated or direct intake, attributed team signals, expert invites, configurable funnel stages, and AI-synthesized deal memos ready for partner or cohort review. For founders: see exactly how investors and AI score your deck, fix the gaps the platform flags, iterate in a private sandbox, then release updates and ping engaged reviewers. KRTR Connect surfaces matched investors and programs; the Dataroom and Meeting Brief tools close the loop on every conversation. KRTR is pre-diligence intelligence — built to drive evidence-based engagement, not replace human judgment.

a day ago
Okareo

20 hours ago