List of Agent Communication Protocol (ACP) Integrations
This is a list of platforms and tools that integrate with Agent Communication Protocol (ACP). This list is updated as of June 2026.
-
1
Python
Python
Unlock endless programming potential with a welcoming community.At the core of extensible programming is the concept of defining functions. Python facilitates this with mandatory and optional parameters, keyword arguments, and the capability to handle arbitrary lists of arguments. Whether you're a novice in programming or possess years of expertise, Python remains approachable and easy to grasp. This language is notably inviting for newcomers while still providing considerable depth for those experienced in other programming languages. The following sections lay a strong groundwork for anyone eager to start their Python programming adventure! The dynamic community actively organizes various conferences and meetups to foster collaborative coding and the exchange of ideas. Furthermore, the comprehensive documentation acts as an invaluable guide, while mailing lists help maintain user connections. The Python Package Index (PyPI) offers a wide selection of third-party modules that enhance the Python experience. With an extensive standard library alongside community-contributed modules, Python presents endless programming possibilities, making it an adaptable choice for developers at every skill level. Additionally, the thriving ecosystem encourages continuous learning and innovation among its users. -
2
LangChain
LangChain
Empower your LLM applications with streamlined development and management.LangChain is a versatile framework that simplifies the process of building, deploying, and managing LLM-based applications, offering developers a suite of powerful tools for creating reasoning-driven systems. The platform includes LangGraph for creating sophisticated agent-driven workflows and LangSmith for ensuring real-time visibility and optimization of AI agents. With LangChain, developers can integrate their own data and APIs into their applications, making them more dynamic and context-aware. It also provides fault-tolerant scalability for enterprise-level applications, ensuring that systems remain responsive under heavy traffic. LangChain’s modular nature allows it to be used in a variety of scenarios, from prototyping new ideas to scaling production-ready LLM applications, making it a valuable tool for businesses across industries. -
3
Brief
Brief
Empower teams, enhance alignment, and streamline product workflows.Brief is an AI-focused product alignment platform built to connect organizational knowledge, product strategy, and software development workflows. The solution automatically captures decisions and contextual information from commonly used business tools, including project management, collaboration, documentation, and code repositories. Instead of allowing valuable knowledge to remain scattered across multiple platforms, Brief organizes it into a connected Product Graph that reflects the evolution of a product over time. Users can access this information through an intuitive web application that provides visibility into decisions, priorities, dependencies, and long-term objectives. The platform also extends directly into development workflows through its MCP Server and command-line interface. This integration allows AI-powered coding assistants such as Cursor, Claude Code, and Windsurf to understand not only what needs to be built but also why it matters. By supplying agents with business context, Brief helps improve the accuracy and relevance of AI-generated work. Teams can reduce costly revisions, accelerate feature delivery, and maintain stronger alignment between stakeholders and builders. The platform supports knowledge retention by preserving critical decisions and making them easily searchable for future reference. Organizations can use Brief to scale product leadership, distribute expertise more effectively, and improve collaboration across departments. Brief helps companies move from product vision to execution with greater clarity, consistency, and confidence. -
4
TypeScript
TypeScript
Transform your coding experience with enhanced error detection.TypeScript enhances JavaScript with improved syntax, creating a smoother integration with development environments, which helps in identifying errors early on within the editor. The TypeScript code is compiled into JavaScript, making it compatible with a wide range of platforms such as web browsers, Node.js, Deno, and mobile apps. Its understanding of JavaScript allows TypeScript to utilize type inference, providing robust tooling while reducing the need for extensive additional code. According to the 2020 State of JS survey, 78% of participants indicated they use TypeScript, and an impressive 93% of those surveyed plan to keep using it. The most common errors developers face are often type errors, where an unexpected type of value is encountered within a specific context. These mistakes can arise from simple errors such as typos, misinterpretations of a library’s API, incorrect assumptions about how code executes at runtime, or various other oversights. Consequently, adopting TypeScript can greatly improve both code quality and developer productivity by mitigating these frequent issues, ultimately leading to a more efficient coding experience. Additionally, its structured approach encourages best practices and fosters a more disciplined development environment. -
5
Model Context Protocol (MCP)
Anthropic
Seamless integration for powerful AI workflows and data management.The Model Context Protocol (MCP) serves as a versatile and open-source framework designed to enhance the interaction between artificial intelligence models and various external data sources. By facilitating the creation of intricate workflows, it allows developers to connect large language models (LLMs) with databases, files, and web services, thereby providing a standardized methodology for AI application development. With its client-server architecture, MCP guarantees smooth integration, and its continually expanding array of integrations simplifies the process of linking to different LLM providers. This protocol is particularly advantageous for developers aiming to construct scalable AI agents while prioritizing robust data security measures. Additionally, MCP's flexibility caters to a wide range of use cases across different industries, making it a valuable tool in the evolving landscape of AI technologies. -
6
CrewAI
CrewAI
Transform workflows effortlessly with intelligent, automated multi-agent solutions.CrewAI distinguishes itself as a leading multi-agent platform that assists enterprises in enhancing workflows across diverse industries by developing and executing automated processes utilizing any Large Language Model (LLM) and cloud technologies. It offers a rich suite of tools, including a robust framework and a user-friendly UI Studio, which facilitate the rapid development of multi-agent automations, catering to both seasoned developers and those who prefer to avoid coding. The platform presents flexible deployment options, allowing users to seamlessly transition their created 'crews'—made up of AI agents—into production settings, supported by sophisticated tools designed for various deployment needs and automatically generated user interfaces. Additionally, CrewAI encompasses thorough monitoring capabilities that enable users to evaluate the effectiveness and advancement of their AI agents in handling both simple and complex tasks. It also provides resources for testing and training, aimed at consistently enhancing the efficiency and quality of the outputs produced by these AI agents. By doing so, CrewAI not only streamlines processes but also enables organizations to fully leverage the transformative power of automation in their daily operations. This comprehensive approach positions CrewAI as a vital asset for any business looking to innovate and improve its operational efficiencies.
- Previous
- You're on page 1
- Next