VentureBeat 10月03日 20:42
微软整合AI框架,推出统一Agent Framework
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微软正在整合其多代理框架,将AutoGen 和 Semantic Kernel 的功能整合到统一的 Microsoft Agent Framework 中,并已在公共预览版中推出。此举旨在提供更集成的可观测性能力,并成为微软唯一的编排和代理框架。AutoGen 和 Semantic Kernel 将转为维护模式。新的 Agent Framework 允许开发者构建 AI 代理,管理多代理部署,并设置可观测性系统,同时强调负责任的 AI 功能,包括任务遵循、PII 检测和提示保护。

✨ **框架整合与统一:** 微软将现有的 AutoGen 和 Semantic Kernel 框架整合为统一的 Microsoft Agent Framework,旨在简化开发流程,并提供更强大的可观测性能力。此举标志着微软在 AI 代理开发领域策略的转变,将 Agent Framework 作为未来的核心平台。

🛠️ **维护模式与迁移建议:** AutoGen 和 Semantic Kernel 将进入维护模式,不再接收新功能开发,但会继续获得错误修复和安全更新。微软鼓励用户计划迁移至新的 Agent Framework,以利用其开放标准、持久性和 Azure AI Foundry 集成带来的优势。

🚀 **核心功能与企业应用:** 新的 Agent Framework 整合了构建 AI 代理、管理多代理部署以及设置可观测性系统的能力。它提供了五项关键功能,包括本地实验、OpenAPI 集成、跨运行时协作、降低上下文切换以及构建跨不同平台的多代理系统,旨在赋能企业更高效、更安全地构建和管理 AI 代理。

🛡️ **负责任的 AI 与安全性:** Agent Framework 强调负责任的 AI,提供了任务遵循(Task Adherence)以确保代理按计划执行,PII 检测(PII Detection)以监控敏感数据访问,以及提示保护(Prompt Shields)来防御提示注入攻击。这些功能对于确保代理的质量、安全性和管理至关重要。

📈 **可观测性与生态系统:** 通过 Azure AI Foundry,开发者可以追踪 Agent Framework 构建的代理在质量、性能和成本方面的表现。微软还将贡献于 OpenTelemetry 标准,为 AI 代理提供统一的可观测性解决方案,并与其他框架兼容。

Microsoft’s multi-agent framework, AutoGen, acts as the backbone for many enterprise projects, particularly with the release of AutoGen v0.4 in January

However, the company aims to harmonize all of its agent framework offerings and bring more observability capabilities to the forefront as well. Microsoft released the Agent Framework on public preview, which will now essentially be the company's sole orchestration and agent framework.

Microsoft said AutoGen and Semantic Kernel will “remain in maintenance mode, which means they will not receive new feature investments but will continue to receive bug fixes, security patches and stability updates.”

“For future-facing work, however, the roadmap is centered on Microsoft Agent Framework, and customers should plan migration to capture the benefits of open standards, durability and Azure AI Foundry Integration,” the company said in an email to VentureBeat. 

The company assured existing workloads on AutoGen or Semantic Kernel will be safe because “no breaking changes are planned.”

Microsoft’s move to consolidate agent frameworks into one shows the company’s strategy in agentic AI. By closely tying observability and data protection to the framework for building agents, the company aims to enable the creation of agents through post-deployment, all in one place.

Agent Framework and Foundry

The Agent Framework consolidates AI workloads into a single SDK, combining the capabilities of both Semantic Kernel and AutoGen, allowing users to build AI agents, manage multi-agent deployments, and set up observability systems. 

Sarah Bird, chief product officer for Responsible AI at Microsoft, told VentureBeat in an interview that so many developers and businesses have been rapidly experimenting and adopting AI agents, but needed a way to bring a lot of capabilities together. 

“What's really exciting about what we're releasing this week is a lot of capabilities to help people more successfully build and manage agents in a way that, of course, allows them to be powerful,” Bird said. “But, one that also ensures that they are trustworthy by giving you the tools to, you know, observe their behavior and new guardrails to help them stay on task.”

The new framework offers five capabilities for enterprises building AI agents:

    Local experimentation before deployment in Azure AI Foundry

    API integration through OpenAPI and collaboration across runtimes with A2A and MCP connections

    Use Magentic One and other orchestration agents 

    Reduce context switching across platforms

    Build multi-agent systems across different agent platforms like AI Foundry, M365 Copilot or others

Microsoft is also adding Agent Framework services, such as multi-agent workflows, to its cloud-based Foundry Agent Service. 

Safety, security and monitoring

Bird said one of the differentiators for Agent Framework lies in its responsible AI features. Microsoft added:

    Task Adherence, which keeps agents aligned to tasks

    PII Detection, which alerts administrators if an agent accesses sensitive data

    Prompt Shields that help protect against prompt injection and highlight risky agent behavior. 

“For what enterprises need to think about with agents, I believe, are three important categories,” Bird said. “Number one is the quality of the agent, does it actually work and is it staying and completing the ask. The second is security, both traditional security and new types of risks like prompt injection attacks or leaking sensitive data. And the third thing is management because future organizations will have thousands of agents who could have access to different things and tasks.”

Microsoft will be contributing to the OpenTelemetry standard for observability. Through AI Foundry, developers with agents built on Agent Framework can track quality, performance and cost. AI Foundry does offer OpenTelemetry observability to agents built with other frameworks and not just Agent Framework.

All-in-one agent frameworks

AutoGen competed with other agent builders and multi-agent frameworks from LangChain, CrewAI and LlamaIndex and there’s no doubt Agent Framework would either. 

Microsoft is not the only one hoping to bring all the needed tools to build, deploy and monitor AI agents. LangChain has been building towards offering these tools even as it aims towards a 1.0 release. As agents become more ubiquitous at enterprises, more platforms could look into providing access to building, deployment and observability tools in one. 

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相关标签

Microsoft AutoGen Semantic Kernel Agent Framework AI Agents Multi-agent Systems Observability Responsible AI Azure AI Foundry
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