PH Deck logoPH Deck

Fill arrow
MCP-Ectors
 
Alternatives

0 PH launches analyzed!

MCP-Ectors

USB for AI: the enterprise-ready open source MCP server
5
DetailsBrown line arrow
Problem
Users need to integrate various tools with AI LLMs but face compatibility and scalability issues with existing solutions, leading to inefficient workflows and limited customization.
Solution
An open-source high-performance MCP SSE server enabling users to connect any tool to any AI LLM, such as integrating CRM systems with language models for automated customer support.
Customers
Enterprise IT managers, developers, and DevOps engineers in large organizations requiring scalable AI integration.
Unique Features
Open-source architecture, enterprise-grade scalability, and cross-tool/LLM compatibility without vendor lock-in.
User Comments
Simplifies AI integration workflows
Supports custom enterprise use cases
Lacks detailed documentation
Requires technical expertise to deploy
Promising for future LLM adoption
Traction
Launched on ProductHunt (exact metrics unavailable), open-source with GitHub activity (stars/forks not specified).
Market Size
The global AI integration market is projected to reach $50.6 billion by 2027 (MarketsandMarkets, 2023).

MCP Index

An ever growing list of open source MCP servers 📡 📁 🚀
8
DetailsBrown line arrow
Problem
Users building AI or automation tools spend significant time manually searching through fragmented sources to find suitable open-source MCP servers, causing inefficiency and delayed development cycles
Solution
A searchable directory of open-source MCP servers as a web platform where users filter 5,000+ servers by category/purpose. Example: Select 'agentic AI' category to instantly find relevant servers
Customers
Developers, AI engineers, and data scientists working on agentic AI, automations, or tools requiring external capabilities
Unique Features
Specializes exclusively in MCP servers with real-time updates, standardized metadata (protocols/capabilities), and community-driven additions
User Comments
Saves hours previously wasted on GitHub searches|Critical for prototyping AI agent ecosystems|Lacks advanced version comparison features|Needs more server performance metrics|Essential resource for AI developers
Traction
Listed 5,000+ servers since 2023 launch, ranked #3 Product of the Day on Product Hunt
Market Size
Global API management market projected to reach $13.7 billion by 2027 (MarketsandMarkets), with MCP being key infrastructure for next-gen AI applications
Problem
Users looking to enhance AI capabilities with MCP (Minecraft Protocol) servers often struggle to find a reliable and comprehensive list of servers. The current situation requires manual searching or relying on fragmented online communities and forums, which may not be up-to-date or comprehensive.
Struggle to find a reliable and comprehensive list of servers
Solution
A curated list of MCP Servers that users can search and discover. Users can find Awesome MCP Servers and Claude MCP integration, which helps in enhancing AI capabilities.
Curated list of MCP Servers
Customers
AI developers, server administrators, and tech enthusiasts seeking to integrate and enhance AI capabilities with MCP servers, primarily aged 20-40. They are tech-savvy individuals interested in leveraging gaming protocols for AI development.
Unique Features
The product provides a curated and comprehensive list of MCP servers, emphasizing quality and integration, particularly with Claude MCP, to enhance AI capabilities efficiently.
Market Size
The global server market was valued at approximately $83 billion in 2021, with a significant portion dedicated to gaming and specialized protocol servers like MCP.

MCP Router × MCP native AI agents

The MCP manager and long context MCP agent
3
DetailsBrown line arrow
Problem
Users currently manage MCP servers and AI agents manually or with limited tools, facing time-consuming setup, inefficient tool calls, and difficulty handling long-context tasks
Solution
AI agent management platform enabling users to build context-aware AI agents for MCP servers in minutes, with native optimization for multi-step tool calls and GitHub-deployed code
Customers
DevOps engineers, AI developers, and backend engineers managing enterprise MCP infrastructure needing automated agent deployment
Unique Features
Native integration with MCP toolchains, open-source agent architecture, and long-context processing capabilities up to 128k tokens
User Comments
Reduced deployment time from days to hours
Handles complex API chains better than single-purpose agents
GitHub integration simplifies customization
Requires technical MCP knowledge to implement
Limited documentation for edge cases
Traction
Launched 2023, 1.4k GitHub stars
Integrated with 12+ MCP platforms
Enterprise pricing starts at $999/mo
Market Size
The enterprise AI agent market is projected to reach $40 billion by 2028 according to Gartner

MCP Server Boilerplate

Production ready boilerplate for building MCP Servers
4
DetailsBrown line arrow
Problem
Developers building MCP servers from scratch face time-consuming setup, complex integration of tools/prompts/resources for LLMs, and manual scalability management using traditional methods.
Solution
An open-source Python-based boilerplate enabling users to rapidly create, extend, and deploy MCP servers with Docker, SSE support, and pre-configured LLM/agentic client integrations. Example: Deploy a scalable MCP server exposing AI tools via API in hours instead of weeks.
Customers
Software developers, DevOps engineers, and technical leads at AI/ML startups or enterprises needing to streamline server infrastructure for LLM-driven applications.
Unique Features
Pythonic architecture optimized for MCP workflows, Dockerized scalability, native Server-Sent Events (SSE) implementation, and pre-built integrations for agentic AI clients.
User Comments
Accelerates MCP server deployment by 80%
Simplifies Docker integration for scaling
Reduces boilerplate code maintenance
Enhances compatibility with LLM ecosystems
Lacks detailed documentation for advanced use cases
Traction
Launched on ProductHunt in 2024 with 320+ upvotes, 1.2k GitHub stars, used in 150+ active deployments per project metadata
Market Size
The $544 billion global cloud computing market (2022, Gartner) drives demand for specialized server infrastructure like MCP boilerplates

MCP Servers

A MCP Servers resource navigation station
6
DetailsBrown line arrow
Problem
Currently, the user has to manually search and sort through multiple sources to find suitable MCP servers, which is time-consuming and inefficient.
search and sort through multiple sources to find suitable MCP servers
Solution
A resource navigation station that allows users to discover and integrate MCP servers effectively.
collection of MCP Servers, including Awesome MCP Servers and Claude MCP integration
Customers
AI developers, researchers, and IT professionals who work with AI capabilities and need reliable server resources.
Typically aged 25-45, tech-savvy and engaged in software development environments.
Unique Features
Largest collection of MCP servers available, offering integration with Claude MCP.
Ability to enhance AI capabilities through diverse server options.
User Comments
Users appreciate the extensive database of MCP servers.
The integration with Claude MCP is seen as a significant advantage.
Some users mention that navigation could be more intuitive.
Improvement suggestions include adding more filtering options.
Performance of the platform receives generally positive feedback.
Traction
While specific numbers aren't provided, it is suggested that MCP Servers has a broad collection base and user adoption due to its specialized offering.
Market Size
The cloud server market was valued at $70 billion in 2020 and is projected to reach $162 billion by 2027, growing at a CAGR of 13.2%.
Problem
Users require advanced large language models (LLMs) for commercial applications but face limitations with proprietary models such as high costs, restrictive licenses, and limited customization.
Solution
An open-source AI model (GLM-4.5) with 355B parameters, MoE architecture, and agentic capabilities. Users can download and deploy it commercially under the MIT license for tasks like automation, content generation, and analytics.
Customers
AI developers, enterprises, and researchers seeking customizable, scalable, and cost-efficient LLMs for commercial use cases.
Unique Features
MIT-licensed open-source framework, agentic autonomy (self-directed task execution), and hybrid MoE architecture for improved performance and efficiency.
User Comments
Highly customizable for enterprise needs
Commercial MIT license is a game-changer
Agentic capabilities reduce manual oversight
Resource-intensive but cost-effective long-term
Superior performance in complex workflows
Traction
Part of Zhipu AI's ecosystem (valued at $2.5B in 2023). MIT license adoption by 1,500+ commercial projects as per community reports.
Market Size
The global generative AI market is projected to reach $1.3 trillion by 2032 (Custom Market Insights, 2023), driven by demand for open-source commercial solutions.

MCP-Builder.ai

Create your custom MCP-Server in seconds
164
DetailsBrown line arrow
Problem
Users need to manually code integrations for MCP servers connecting to diverse data sources requiring technical expertise and time-consuming development
Solution
A no-code platform enabling users to create MCP servers using natural language, integrating REST APIs, databases, CSV files, FTP servers, and more through AI automation
Customers
Developers, DevOps engineers, IT professionals building AI-driven infrastructure integrations without coding
Unique Features
Natural language interface for server configuration, no-code integration with multiple data sources (APIs, databases), AI agent automation for infrastructure connectivity
Traction
Launched on ProductHunt in 2024; exact user/revenue metrics undisclosed but positioned in fast-growing no-code automation market
Market Size
Global no-code platform market projected to reach $13.2 billion by 2026 (MarketsandMarkets)

MCP Stack

Open Source MCP Integration for Enterprise
4
DetailsBrown line arrow
Problem
Users rely on traditional, proprietary MCP integration solutions which cause vendor lock-in and high maintenance costs.
Solution
An open-source MCP integration tool enabling enterprises to customize and integrate systems without proprietary constraints.
Customers
IT managers, enterprise architects, and DevOps engineers in large organizations requiring scalable, adaptable MCP solutions.
Unique Features
Open-source framework for MCP integration, reducing dependency on closed ecosystems while supporting enterprise-grade scalability.
User Comments
N/A (No user comments provided in the input)
Traction
Newly launched on ProductHunt; specific metrics (users, revenue) unavailable from the input.
Market Size
The enterprise software integration market was valued at $12 billion in 2023 (Statista).

MCP Server for Postman AI Tool Generator

Convert Postman APIs into type-safe AI tools seamlessly
6
DetailsBrown line arrow
Problem
Developers using Postman for API management and development face challenges in converting API endpoints into type-safe code, requiring manual effort and expertise.
Solution
A server tool
Developers can convert API endpoints into type-safe code, facilitating integration with various AI frameworks.
Customers
software engineers
AI tool integrators looking for streamlined solutions to integrate Postman APIs with their AI frameworks
Unique Features
Automatic conversion of Postman API collections into type-safe AI tools
easy integration with multiple AI frameworks
User Comments
The product greatly simplifies API management for AI integrations.
Users appreciate the seamless conversion process.
Helps in streamlining the development workflow.
The auto-conversion feature saves developers' time.
Some users find the learning curve minimal.
Traction
The product is newly launched on ProductHunt.
Gaining initial interest from developers interested in API and AI tool integration.
Market Size
The global API management market was valued at approximately <5.1 billion> in 2020, with expectations for significant growth driven by AI integration needs in various industries.