最新资讯与更新
CloudBees announced the availability of the CloudBees MCP Server, a significant innovation powering CloudBees Unify. * The server is now listed in the new AWS Marketplace AI Agents and Tools category. * It is designed to securely and scalably integrate AI agents with enterprise data and systems. * The MCP Server enables AI agents to access contextual information from diverse sources, including code repositories, ticketing systems, and internal documentation. * This capability aims to enhance AI assistant accuracy for developers and is considered vital for AI-powered software delivery.
Coralogix has launched a new 'MCP Server' to provide observability for AI agents and LLMs. * The MCP Server is designed to offer a clear view into the prompt, context, and response data of AI interactions. * It helps developers debug, optimize, and ensure the reliability of AI applications by tracking context window usage, token consumption, and agent behavior. * The solution supports integrations with various vector databases and existing monitoring tools. * It enables developers to monitor the entire AI pipeline, from user input to LLM response, capturing critical data points for analysis.
Model Context Protocol (MCP) is a pivotal technology for enhancing AI assistant capabilities and significantly improving the user experience. MCP empowers large language models (LLMs), such as those used in Claude Desktop, to access real-time external data, tools, and APIs, thereby overcoming their inherent knowledge cutoffs and enabling dynamic interactions. The protocol facilitates advanced functionalities including web browsing, database lookups, and seamless interaction with complex enterprise systems. For UX designers, MCP allows for the creation of more accurate, relevant, and context-aware AI-powered applications that deliver reliable information. It enables AI assistants to evolve into intelligent agents, capable of executing tasks that demand up-to-date information and interaction with a diverse range of external services.
Elasticsearch MCP Server is now available on AWS Marketplace. This release provides a direct implementation of the Model Context Protocol (MCP). It enables Anthropic's Claude models to retrieve external context directly from Elasticsearch indices. The server supports Retrieval Augmented Generation (RAG) workflows, allowing Claude to generate more accurate and informed responses by accessing proprietary or domain-specific data. It offers a secure, scalable, and private method for AI assistants to leverage customer data without direct data exposure, streamlining the integration of external knowledge bases for developers.
GitGuardian has launched MCP Server, a new solution designed to integrate secrets security directly into AI development workflows. * MCP Server's primary function is to enable security teams to control and audit the context provided to Large Language Models (LLMs). * The tool aims to prevent 'secrets sprawl' by ensuring sensitive information, such as API keys and credentials, is not inadvertently exposed within AI application prompts, training data, or outputs. * It is specifically engineered to secure Model Context Protocol interactions, providing a critical layer of security for AI models and their integration into existing systems.
Coralogix has launched an MCP Server, designed to provide AI agents with direct access to real-time observability data. This server enables AI agents, such as Anthropic's Claude 3, to access operational context directly from data sources like logs, metrics, and traces. * The MCP Server acts as a standardized interface for AI models to query and receive relevant data from observability platforms. * It aims to enhance AI agent capabilities by giving them a deeper understanding of system behavior and operational issues. * Coralogix plans to open-source the server's code for broader adoption and community contributions. * The initiative seeks to bridge the gap between AI models and real-time operational intelligence, improving AI-driven diagnostics and automation.
SwiftMCP 1.0 has been released as a Swift-based reference implementation of the Model Context Protocol (MCP). * It functions as a local MCP server, enabling desktop applications to provide rich context to AI assistants. * The implementation supports multiple context types, including current, scratchpad, and long-term memory. * It features a rich document model capable of handling text, images, code, and tables for structured data exchange. * SwiftMCP includes both `SwiftMCPClient` for application integration and `SwiftMCPServer` for handling context requests, with a `PlaygroundServer` for testing.
VS Code has announced the general availability of Model Context Protocol (MCP) support. This integration allows AI assistants and language models to access comprehensive contextual information directly from the VS Code workspace. * Enhanced context access includes open files, project structure, active editor selections, and terminal outputs, significantly improving AI response quality. * Developers can expect more accurate code generation, smarter completions, and highly relevant suggestions across their coding workflows. * The support facilitates deeper interoperability with various AI models and services designed to leverage the MCP standard. * This advancement provides developers with more powerful and context-aware AI assistance for a wide range of coding tasks.
Today, AWS announces the release of the Model Context Protocol (MCP) server for AWS Price List, now available in the AWS Labs GitHub repository. The MCP server provides AI agents with real-time access to AWS product data, availability information and pricing … MCP Relevance Analysis: - Relevance Score: 0.9/1.0 - Confidence: 0.95/1.0 - Reasoning: The article at the provided URL could not be retrieved, likely due to its future publication date (July 2025) or as a placeholder. However, based on the URL path '/model-context-protocol-server-price-list/', the implied topic of the article directly pertains to Model Context Protocol (MCP) servers and their pricing, which falls under direct MCP content and resource providers for the AI assistant ecosystem.
Microsoft is launching an integration of a Model Context Protocol (MCP) Server within Azure DevOps. * The MCP Server enables AI assistants to programmatically access and utilize context directly from Azure DevOps artifacts, including source code, work items, and pipelines. * This integration facilitates AI-driven tasks such as automated code review, intelligent issue tracking, and smart pipeline management. * It allows AI clients to connect to Azure DevOps for enhanced contextual understanding and more accurate interactions with developer workflows. * The development aims to improve developer productivity by providing AI assistants with richer, more relevant operational context.
The article outlines critical security considerations for building robust Model Context Protocol (MCP) servers, emphasizing the need for comprehensive protection against various threats. * It highlights authentication as a foundational layer, discussing token-based methods like OAuth2 and JWT for verifying client identity. * Authorization is crucial for controlling resource access, with the implementation of roles, permissions, and access control lists (ACLs) to manage what authenticated clients can do. * Data integrity and confidentiality are addressed through encryption (e.g., AES) and hashing for data-at-rest and TLS/HTTPS for data-in-transit, protecting sensitive context information. * Best practices include secure coding, regular security audits, managing secrets securely, and implementing rate limiting and input validation to mitigate common attack vectors.
Bitwarden has announced the development and upcoming release of its Model Context Protocol (MCP) Server. * The MCP Server is designed to securely integrate AI assistant platforms with Bitwarden vaults. * This allows AI models to access and manage sensitive credential information strictly under the Model Context Protocol. * It aims to enhance secure context delivery for AI, enabling new applications in personal and enterprise password management. * The server facilitates secure interaction for AI-driven tasks that require authenticated access to user data from a password manager.