Microsoft AI News 09月07日
企业AI新纪元:Agentic AI驱动的自动化与协作
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文章介绍了Agentic AI(智能体AI)如何超越传统的检索增强生成(RAG)模式,实现企业自动化新飞跃。Agentic AI不仅能提供信息,更能进行推理、执行操作并跨系统协作,从而驱动实际业务成果。文章详细阐述了五种Agentic AI的核心构建模式:工具使用、反思、规划、多智能体协作以及ReAct(推理+行动),并结合实际案例说明了它们在提升效率、确保可靠性、处理复杂流程、实现规模化以及实时适应性方面的优势。最后,文章强调了统一Agent平台的重要性,并介绍了Azure AI Foundry如何为企业提供一个端到端的解决方案,支持Agentic AI的开发、部署和管理,赋能企业实现端到端的业务转型。

💡 **Agentic AI赋能企业自动化升级**:文章指出,Agentic AI(智能体AI)是企业AI发展的下一阶段,它通过使AI能够进行推理、执行操作并与企业系统进行跨职能协作,从而弥合了信息与实际业务成果之间的差距,解决了传统自动化工具在应对变化和规模化方面的局限性,推动企业进入新的自动化时代。

🛠️ **五大核心模式构建强大智能体**:文章详细阐述了Agentic AI的五种关键构建模式,包括:1. **工具使用**,使智能体能调用API、触发工作流等;2. **反思**,让智能体能评估和改进自身输出,提高可靠性;3. **规划**,将复杂目标分解为可执行任务,增强鲁棒性;4. **多智能体协作**,通过编排专门智能体网络实现规模化和敏捷性;5. **ReAct (推理+行动)**,使智能体能实时适应变化,解决复杂问题。这些模式可以组合使用,解锁更强大的自动化能力。

🚀 **Azure AI Foundry助力端到端Agentic AI实践**:文章强调了构建统一Agent平台的重要性,并介绍了Azure AI Foundry。该平台提供了一个端到端的解决方案,支持从本地原型开发到大规模云部署,提供灵活的模型选择、模块化多智能体架构、即时企业系统集成、开放性和互操作性,以及企业级安全和全面的可观测性,帮助企业克服构建和管理Agentic AI的挑战,实现安全、可扩展的智能自动化。

💼 **实际案例展现Agentic AI的变革力量**:文章通过多个实际案例,生动展示了Agentic AI的价值。例如,富士通利用Agentic AI将销售提案的生产时间缩短了67%;ContraForce通过自动化安全服务交付,将80%的事件调查和响应自动化;JM Family通过多智能体协作,将开发周期从数周缩短到数天。这些案例充分证明了Agentic AI在提升效率、降低成本和加速业务转型方面的巨大潜力。

Instead of simply delivering information, agents reason, act, and collaborate—bridging the gap between knowledge and outcomes. Read more about agentic AI in Azure AI Foundry.

This blog post is the first out of a six-part blog series called Agent Factory which will share best practices, design patterns, and tools to help guide you through adopting and building agentic AI.

Beyond knowledge: Why enterprises need agentic AI

Retrieval-augmented generation (RAG) marked a breakthrough for enterprise AI—helping teams surface insights and answer questions at unprecedented speed. For many, it was a launchpad: copilots and chatbots that streamlined support and reduced the time spent searching for information.

However, answers alone rarely drive real business impact. Most enterprise workflows demand action: submitting forms, updating records, or orchestrating multi-step processes across diverse systems. Traditional automation tools—scripts, Robotic Process Automation (RPA) bots, manual handoffs—often struggle with change and scale, leaving teams frustrated by gaps and inefficiencies.

This is where agentic AI emerges as a game-changer. Instead of simply delivering information, agents reason, act, and collaborate—bridging the gap between knowledge and outcomes and enabling a new era of enterprise automation.

Patterns of agentic AI: Building blocks for enterprise automation

While the shift from retrieval to real-world action often begins with agents that can use tools, enterprise needs don’t stop there. Reliable automation requires agents that reflect on their work, plan multi-step processes, collaborate across specialties, and adapt in real time—not just execute single calls.

The five patterns below are foundational building blocks seen in production today. They’re designed to be combined and together unlock transformative automation.

Modern agents stand out by driving real outcomes. Today’s agents interact directly with enterprise systems—retrieving data, calling Application Programming Interface (APIs), triggering workflows, and executing transactions. Agents now surface answers and also complete tasks, update records, and orchestrate workflows end-to-end.

Fujitsu transformed its sales proposal process using specialized agents for data analysis, market research, and document creation—each invoking specific APIs and tools. Instead of simply answering “what should we pitch,” agents built and assembled entire proposal packages, reducing production time by 67%.

2. Reflection pattern—self-improvement for reliability

Once agents can act, the next step is reflection—the ability to assess and improve their own outputs. Reflection lets agents catch errors and iterate for quality without always depending on humans.

In high-stakes fields like compliance and finance, a single error can be costly. With self-checks and review loops, agents can auto-correct missing details, double-check calculations, or ensure messages meet standards. Even code assistants, like GitHub Copilot, rely on internal testing and refinement before sharing outputs. This self-improving loop reduces errors and gives enterprises confidence that AI-driven processes are safe, consistent, and auditable.

3. Planning pattern—decomposing complexity for robustness

Most real business processes aren’t single steps—they’re complex journeys with dependencies and branching paths. Planning agents address this by breaking high-level goals into actionable tasks, tracking progress, and adapting as requirements shift.

ContraForce’s Agentic Security Delivery Platform (ASDP) automated its partner’s security service delivery with security service agents using planning agents that break down incidents into intake, impact assessment, playbook execution, and escalation. As each phase completes, the agent checks for next steps, ensuring nothing gets missed. The result: 80% of incident investigation and response is now automated and full incident investigation can be processed for less than $1 per incident.

Planning often combines tool use and reflection, showing how these patterns reinforce each other. A key strength is flexibility: plans can be generated dynamically by an LLM or follow a predefined sequence, whichever fits the need.

4. Multi-agent pattern—collaboration at machine speed

No single agent can do it all. Enterprises create value through teams of specialists, and the multi-agent pattern mirrors this by connecting networks of specialized agents—each focused on different workflow stages—under an orchestrator. This modular design enables agility, scalability, and easy evolution, while keeping responsibilities and governance clear.

Modern multi-agent solutions use several orchestration patterns—often in combination—to address real enterprise needs. These can be LLM-driven or deterministic: sequential orchestration (such as agents refine a document step by step), concurrent orchestration (agents run in parallel and merge results), group chat/maker-checker (agents debate and validate outputs together), dynamic handoff (real-time triage or routing), and magentic orchestration (a manager agent coordinates all subtasks until completion).

JM Family adopted this approach with business analyst/quality assurance (BAQA) Genie, deploying agents for requirements, story writing, coding, documentation, and Quality Assurance (QA). Coordinated by an orchestrator, their development cycles became standardized and automated—cutting requirements and test design from weeks to days and saving up to 60% of QA time.

5. ReAct (Reason + Act) pattern—adaptive problem solving in real time

The ReAct pattern enables agents to solve problems in real time, especially when static plans fall short. Instead of a fixed script, ReAct agents alternate between reasoning and action—taking a step, observing results, and deciding what to do next. This allows agents to adapt to ambiguity, evolving requirements, and situations where the best path forward isn’t clear.

For example, in enterprise IT support, a virtual agent powered by the ReAct pattern can diagnose issues in real time: it asks clarifying questions, checks system logs, tests possible solutions, and adjusts its strategy as new information becomes available. If the issue grows more complex or falls outside its scope, the agent can escalate the case to a human specialist with a detailed summary of what’s been attempted.

These patterns are meant to be combined. The most effective agentic solutions weave together tool use, reflection, planning, multi-agent collaboration, and adaptive reasoning—enabling automation that is faster, smarter, safer, and ready for the real world.

Why a unified agent platform is essential

Building intelligent agents goes far beyond prompting a language model. When moving from demo to real-world use, teams quickly encounter challenges:

  • How do I chain multiple steps together reliably?
  • How do I give agents access to business data—securely and responsibly?
  • How do I monitor, evaluate, and improve agent behavior?
  • How do I ensure security and identity across different agent components?
  • How do I scale from a single agent to a team of agents—or connect to others?

Many teams end up building custom scaffolding—DIY orchestrators, logging, tool managers, and access controls. This slows time-to-value, creates risks, and leads to fragile solutions.

This is where Azure AI Foundry comes in—not just as a set of tools, but as a cohesive platform designed to take agents from idea to enterprise-grade implementation.

Azure AI Foundry: Unified, scalable, and built for the real world

Azure AI Foundry is designed from the ground up for this new era of agentic automation. Azure AI Foundry delivers a single, end-to-end platform that meets the needs of both developers and enterprises, combining rapid innovation with robust, enterprise-grade controls.

With Azure AI Foundry, teams can:

Azure AI Foundry isn’t just a toolkit—it’s the foundation for orchestrating secure, scalable, and intelligent agents across the modern enterprise.
It’s how organizations move from siloed automation to true, end-to-end business transformation.

Stay tuned: In upcoming posts in our Agent Factory blog series, we’ll show you how to bring these pillars to life—demonstrating how to build secure, orchestrated, and interoperable agents with Azure AI Foundry, from local development to enterprise deployment.

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Agentic AI 企业自动化 Azure AI Foundry 人工智能 AI模式 Agentic AI Enterprise Automation Azure AI Foundry Artificial Intelligence AI Patterns
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