MCP cover image
See in Github
2025-04-01

MCP服务器与需求API交互

10

Github Watches

0

Github Forks

0

Github Stars

🏆 Audiense Demand MCP Server

smithery badge

This server, based on the Model Context Protocol (MCP), allows Claude or any other MCP-compatible client to interact with your Audiense Demand account. It provides tools to create and analyze demand reports, track entity performance, and gain insights across different channels and countries.

This MCP server is designed to work with the Audiense Demand API and requires an Audiense account authorized to use Audiense Demand.

We provide two different guides based on your background and needs:

🌟 For Business Users and Non-Developers

If you're primarily interested in using the Audiense Demand tools with Claude or another "MCP compatible" tool and don't need to understand the technical details, follow our User Guide. This guide will help you:

  • Install the necessary software quickly
  • Set up Claude Desktop
  • Start creating and analyzing demand reports
  • Troubleshoot common issues

🛠️ For Developers and Technical Users

If you're a developer, want to contribute, or need to understand the technical implementation, follow our Developer Guide. This guide covers:

  • Detailed installation steps
  • Project architecture
  • Development setup
  • Advanced configuration
  • API documentation
  • Contributing guidelines

🛠️ Available Tools

📌 create-demand-report

Description: Creates a new demand report for specified entities.

  • Parameters:

    • title (string): Title of the demand report
    • entitiesReferences (array of strings): Array of entity names for the report
    • userEmail (string): Email of the user creating the report
  • Response:

    • Report creation details in JSON format

📌 get-demand-reports

Description: Retrieves the list of demand reports owned by the authenticated user.

  • Parameters:

    • paginationStart (number, optional): Pagination start index
    • paginationEnd (number, optional): Pagination end index
  • Response:

    • List of reports in JSON format

📌 get-demand-report-info

Description: Fetches detailed information about a specific demand report.

  • Parameters:

    • reportId (string): The ID of the report to get information for
  • Response:

    • Full report details in JSON format

📌 get-demand-report-summary-by-channels

Description: Gets a summary of the report broken down by channels.

  • Parameters:

    • reportId (string): The ID of the report to get the summary for
    • country (string, default: "Weighted-Total"): The country to filter by
    • offset (number, default: 0): Pagination offset
    • entityNames (array of strings, optional): Optional array of entity names to filter by
  • Response:

    • Channel-wise summary data in JSON format

📌 get-demand-report-summary-by-countries

Description: Gets a summary of the report broken down by countries.

  • Parameters:

    • reportId (string): The ID of the report to get the summary for
    • platform (string, default: "all_platforms"): Platform name to analyze
    • countries (array of strings): Array of country codes to analyze
    • offset (number, optional): Pagination offset
    • entityNames (array of strings, optional): Optional array of entity names to filter by
  • Response:

    • Country-wise summary data in JSON format

📌 get-youtube-search-volume-summary

Description: Gets YouTube search volume summary for entities in a report.

  • Parameters:

    • reportId (string): The ID of the report to get the summary for
    • country (string, default: "Global"): Country code to analyze
    • entityNames (array of strings, optional): Optional array of entity names to filter by
  • Response:

    • YouTube search volume data in JSON format

📌 get-google-search-volume-summary

Description: Gets Google search volume summary for entities in a report.

  • Parameters:

    • reportId (string): The ID of the report to get the summary for
    • country (string, default: "Global"): Country code to analyze
    • entityNames (array of strings, optional): Optional array of entity names to filter by
  • Response:

    • Google search volume data in JSON format

📌 check-entities

Description: Checks if entities exist and gets their details.

  • Parameters:

    • entities (array of strings): Array of entity names to check
  • Response:

    • Entity status information in JSON format

📄 License

This project is licensed under the Apache 2.0 License. See the LICENSE file for more details.

相关推荐

  • https://suefel.com
  • Latest advice and best practices for custom GPT development.

  • Yusuf Emre Yeşilyurt
  • I find academic articles and books for research and literature reviews.

  • https://maiplestudio.com
  • Find Exhibitors, Speakers and more

  • Carlos Ferrin
  • Encuentra películas y series en plataformas de streaming.

  • Joshua Armstrong
  • Confidential guide on numerology and astrology, based of GG33 Public information

  • Contraband Interactive
  • Emulating Dr. Jordan B. Peterson's style in providing life advice and insights.

  • rustassistant.com
  • Your go-to expert in the Rust ecosystem, specializing in precise code interpretation, up-to-date crate version checking, and in-depth source code analysis. I offer accurate, context-aware insights for all your Rust programming questions.

  • Elijah Ng Shi Yi
  • Advanced software engineer GPT that excels through nailing the basics.

  • Emmet Halm
  • Converts Figma frames into front-end code for various mobile frameworks.

  • Alexandru Strujac
  • Efficient thumbnail creator for YouTube videos

  • lumpenspace
  • Take an adjectivised noun, and create images making it progressively more adjective!

  • apappascs
  • 发现市场上最全面,最新的MCP服务器集合。该存储库充当集中式枢纽,提供了广泛的开源和专有MCP服务器目录,并提供功能,文档链接和贡献者。

  • ShrimpingIt
  • MCP系列GPIO Expander的基于Micropython I2C的操作,源自ADAFRUIT_MCP230XX

  • modelcontextprotocol
  • 模型上下文协议服务器

  • Mintplex-Labs
  • 带有内置抹布,AI代理,无代理构建器,MCP兼容性等的多合一桌面和Docker AI应用程序。

  • n8n-io
  • 具有本机AI功能的公平代码工作流程自动化平台。将视觉构建与自定义代码,自宿主或云相结合,400+集成。

  • WangRongsheng
  • 🧑‍🚀 llm 资料总结(数据处理、模型训练、模型部署、 o1 模型、mcp 、小语言模型、视觉语言模型)|摘要世界上最好的LLM资源。

    Reviews

    1 (1)
    Avatar
    user_iU7oy5Dk
    2025-04-16

    As a dedicated MCP user, I have found the mcp-audiense-demand by AudienseCo to be incredibly valuable for understanding audience demand and trends. The product is robust, user-friendly, and integrates seamlessly into my workflow. Highly recommended for anyone looking to gain deep market insights! Check it out at https://github.com/AudienseCo/mcp-audiense-demand.