Cogito Tech 09月13日
AI代理:自主智能系统的力量与潜力
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Agentic AI代表着人工智能领域的一大飞跃,它使得AI系统能够以前所未有的自主性来实现复杂目标。这些系统利用包括LLMs在内的多种工具,自主地收集信息、进行推理、制定并执行计划。与仅响应指令的被动AI不同,Agentic AI具备主动性、目标驱动和适应性。生成式AI是Agentic AI的基础,而Agentic AI则将其能力应用于现实世界的任务。例如,一个Agentic AI系统不仅能生成代码,还能运行它、监控错误并与外部工具交互以达成目标。多Agent系统通过协调不同AI代理的专长,能够解决比单一代理更复杂的问题,极大地提升了协作效率和成果。

🌟 **Agentic AI 的核心在于自主性与目标驱动**:Agentic AI 系统能够独立地收集信息、进行推理、制定计划并执行任务,以实现更大的目标,这与传统被动式AI形成鲜明对比。它们具备主动性、目标导向和高度的适应性,能够利用LLMs等工具来完成复杂任务。

🛠️ **多Agent协作提升效率与能力**:在多Agent系统中,多个AI代理被分配不同的子任务,并通过协调机制进行整合。这种协作模式能够汇聚不同AI模型的独特优势,解决单一代理难以应对的复杂问题,从而产生超越个体能力的总和的成果。

🧠 **Agentic AI 的关键组成部分**:Agentic AI 的运作依赖于一系列核心功能,包括感知(收集和解读数据)、推理(理解信息和用户意图)、目标设定(制定策略以达成目标)、决策制定(评估并选择最佳行动方案)以及行动(执行选定的操作)。此外,学习与适应能力使其能够通过反馈不断优化和改进。

🌐 **广泛的行业应用前景**:Agentic AI 在医疗、金融、客户服务、软件开发、物流乃至自动驾驶等多个领域展现出巨大的应用潜力。通过自动化复杂流程、优化决策和提供个性化服务,Agentic AI 有望显著提升效率、降低成本并推动行业创新。

Collaboration among agents further amplifies their power. Multiple AI agents can interact to solve larger, more complex problems without continuous human supervision. Within such systems, agents exchange data to achieve common goals. Specialized AI agents perform subtasks with high accuracy, while an orchestrator agent coordinates their activities to complete broader, more intricate assignments. This coordinated approach is more powerful, leveraging the unique capabilities of different AI models, producing results that exceed what individual agents could achieve alone.

What is agentic AI?

Agentic AI refers to artificial intelligence systems that can achieve a larger objective with a high degree of autonomy. These systems use a suite of tools (like LLMs, external applications, and APIs) to gather information, reason through complex problems, interpret and create actionable plans, and execute them. In a multi-agent system, each AI agent is assigned a specific subtask, and their efforts are coordinated through orchestration mechanisms.

The term ‘agentic’ in this context refers to models’ agency or power to initiate actions and make choices independently and purposefully—unlike traditional passive AI systems that operate within predefined constraints, require direct human intervention, and only respond to commands. Key features of agentic AI include autonomy, goal-driven behavior, and adaptability.

Generative AI provides the foundation upon which agentic AI is built, enabling the reasoning and generative capabilities that agents use to plan and act. While generative AI models, particularly LLMs, create novel content based on the patterns in training data, agentic AI goes a step further by applying this content to accomplish real-world tasks. For instance, a generative AI system might generate code and stop there. An agentic AI system, however, could generate the code, run it, monitor for errors, store the results in a file, and call external tools (programs, APIs, or services) to ensure the objective is met.

Consider a practical example: A generative AI model might suggest the best time to visit Switzerland for a family vacation based on your work schedule. An agentic AI system, on the other hand, could search for flights, check hotel availability, make reservations, and send confirmations—managing the end-to-end task autonomously.

Read more: Agentic AI Defined: Use Cases & Cogito Tech’s Data Solutions

How does agentic AI work?

Agentic AI is built from complex autonomous software components known as agents, which use large amounts of training data and learn from user behavior to improve over time. Each agent is unique in abilities and is designed for specific tasks, operating like members of a team to solve bigger, more complex problems. This advanced framework leverages a combination of cutting-edge technologies such as machine learning, NLP, and knowledge representation, enabling agents to learn, adapt, interact, and make informed decisions.

The underlying architecture of agentic AI spreads across multiple computers or servers, connected via a network for scalability and performance. This system enables multiple agents to operate simultaneously across different servers within a shared platform. Agents coordinate and communicate seamlessly in real-time to work together on a problem. This architecture ensures that the system remains fast, reliable, and adaptable to meet evolving demands. Each AI agent is independent and a complete unit, capable of autonomously completing tasks and managing workflows by leveraging machine learning, algorithms, and predictive analytics to make real-time decisions.

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Core components of an AI Agent

Agentic AI relies on several foundational functions to solve complex problems:

Agentic AI systems and orchestrations

AI orchestration refers to the automated coordination and management of models, services, and data. It ensures that AI systems and agents work together smoothly toward a common goal. Orchestration automates AI workflows, monitors data flow and memory, tracks progress toward task completion, and adjusts dynamically if something goes wrong. The sophisticated architecture enables numerous agents to work together in harmony. Orchestration streamlines the end-to-end lifecycle and delivers greater efficiency, responsiveness, and scalability.

An agentic AI system is a coordinated system where multiple AI agents collaborate to solve complex problems. While a single AI agent represents a one individual entity with its own built-in capabilities or a suite of tools, an agentic system relies on orchestration to connect and coordinate those agents with other models, external tools and data sources to work together seamlessly. Each agent in multiagent systems could have its own goals, tools, and specialized capabilities, yet they work together seamlessly to tackle multi-layered challenges.

Types of AI agents in multi-agent systems

During the implementation and orchestration of multi-agent systems, users interact with three types of AI agents:

A multi-agent system integrates agents of varying complexity, from simple ones (that follow predefined rules) confined to strict boundaries to sophisticated ones (that plan and reason to achieve a goal). Their interactions with one another, with tools, or with users depend on the design of the system.

The operational mechanism of agentic AI is designed to drive autonomy, adaptability, and scalability. By leveraging advanced technologies, collaborative orchestration, and open-source frameworks, agentic AI holds the potential to transform various industries and roles, ultimately improving human-technology interaction.

Industry applications of agentic AI

Many sectors are exploring agentic AI for its potential to transform operations. Its ability to handle tasks involving high complexity, routine data processing, and time-critical decision-making is driving rapid adoption across industries. Common use cases include:

It is clear from the above use cases that agentic AI is cross-domain—ranging from healthcare, finance, to customer service and retail. Autonomous agents can learn from domain data and execute with human-like competence. Companies across industries are already reporting substantial efficiency gains. For example, McKinsey’s research suggests an agentic system can improve productivity up to 40% in many industries, driving innovation and reducing costs when applied correctly.

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Navigating the risks

The adoption of agentic AI systems across industries introduces a novel risk landscape that is different from the traditional AI and automation risks. These sophisticated AI systems, known for their ability to operate with increasing degrees of autonomy and solve complex problems, pose distinct challenges and amplify existing ones— necessitating careful consideration and customized risk management strategies.

The self-adaptive nature of agentic systems fundamentally changes how risk management is approached. By identifying critical points where these risks manifest and putting guardrails in place, businesses can take benefits of agentic AI without losing sight of safety and compliance. Successful implementations of agentic systems are a fundamentally different technology paradigm, requiring updated governance and controls.

Agentic AI systems: Risk and key mitigations

Goal misalignment

One of the fundamental risks of adopting the agentic AI systems is that they might not stay fully aligned with the organization’s actual automation goals. Some risk of misalignment already exists in self-learning or self-calibrating models. Agentic AI systems may amplify this risk by far as they operate with greater autonomy in dynamic environments. Over time, objectives might drift away from the organization’s true objectives.

Because agentic AI systems create plans and act to achieve goals, they introduce new risks related to how they interpret situations and pursue objectives. This can lead to behaviors misaligned with human values, as well as legal and ethical considerations. For example, a healthcare scheduling agent might start overbooking patient appointments to maximize efficiency and reduce idle time, unintentionally compromising the quality of care and disregarding doctors’ availability and patient needs.

Risk mitigation

Reasoning & Planning Layer Key Controls:

These controls help ensure that agentic systems are optimized for objectives aligned with the company’s priorities, values, intent, and regulatory standards, while preventing them from interpreting goals on their own or pursuing unintended objectives that could cause financial or reputational damage.

Autonomous action

Agentic AI systems can operate autonomously without human approval to perform each subtask, sometimes potentially yielding some unintended results. Agents can interact with real-world systems and make independent, sequential decisions based on outputs. The autonomous nature of agentic AI complicates real-time human intervention, creating regulatory, ethical, and operational challenges, particularly in assigning accountability for harm (e.g., a medical AI producing a wrong diagnosis, or a military drone misidentifying a target) when humans are absent from the decision chain.

Risk mitigation

Reasoning & planning layer and tools – key controls

Agentic AI and labeled data

Agentic AI systems are autonomous, goal-driven agents that perceive environments and take multi-step actions. These systems typically rely on machine learning models (for vision, language, planning, etc.) to process inputs and decide actions.

Data quality plays a pivotal role in developing reliable agents. Inconsistent or outdated information can degrade agent performance and cause erratic behavior. Ensuring data quality means maintaining accuracy, diversity, consistency, validity, timeliness, and relevance. For example, an agent trained on incomplete and erroneous flight data might tell one customer, “All flight tickets are booked”, while telling another, “Two seats are available”, creating confusion. Incomplete, outdated, or inconsistent data drives agents to make dangerous assumptions or produce factually incorrect results.

Conversely, rigorous data cleaning and governance form the first line of defense against such failures. Labeled examples are used to train agentic AI to interpret sensory input and language.

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Labeled data in supervised learning for agentic AI

The autonomous capabilities of AI agents are built upon specialized, task-specific models developed through supervised learning, where AI is trained on large labeled datasets. For visual perception tasks, convolutional neural networks (CNNs) and other deep learning architectures learn from vast collections of annotated images. In natural language processing, models are trained on labeled text corpora, such as transcripts tagged with intents, sentiments, or entities, and mapped to correct responses. This training enables agents to interpret inputs and generate contextually relevant responses.

In a nutshell, supervised models serve as the “eyes and ears” of the agent. Without labeled data, agentic systems would struggle to develop the perception and understanding needed to perform meaningful tasks.

Labeled data for fine-tuning and adaptation

Large agentic AI models are often trained in stages, with labeled data playing different roles at each step. While initial pre-training may rely on vast amounts of unlabeled data, fine-tuning typically introduces labeled data to adapt a pre-trained model to a specific task or domain. Many agentic systems build on a foundation model and fine-tune it with labeled examples that reflect the specific tasks it is expected to perform. For example, an AI assistant might be fine-tuned on question–answer pairs or dialogue transcripts.

Agentic systems are dynamic and must continuously learn and grow from their experiences. When encountering new scenarios or the input distribution shifts, additional labeled data from the new environment may be used for fine-tuning or retraining. Techniques such as active learning allow the agent to request labels for uncertain cases, while continuous human feedback helps refine performance.

For example, engineers label edge cases (such as unforeseen traffic situations) collected by autonomous vehicles to refine their perception models. Labeled data is essential not only for supervised fine-tuning but also for adapting agents as they evolve in real-world environments.

Alternative learning paradigms

Unlike supervised learning, which needs large labeled datasets to train for each new task, advanced AI can adapt with far fewer labels. Few-shot and zero-shot learning approaches minimize the need for new labeling at task time. A few-shot learning model requires only a small set of examples to adapt to a new task, while a zero-shot learning model relies only on natural language instructions and can still perform the task without any labeled examples.

For example, a language agent might answer a new type of question by being given just a couple of examples in the prompt. In this way, few-shot methods greatly reduce the need for extensive new labeling for each task, though they still rely on the vast “self-supervised” pre-training already embedded in the model.

From AI assistants and chatbots to self-driving cars and collaborative multi-agent systems, labeled data isn’t the only thing models learn from, but it plays a key role alongside other signals. For example, autonomous agents may use LLMs to interpret market news, but are fine-tuned on labeled historical market data. Similarly, software agents rely on standard labels and schemas to interpret the digital world consistently. In short, real-world agentic AI systems almost always include components trained on human-provided labels – from perception to language understanding to task execution.

Conclusion

Agentic AI represents a shift from reactive tools to autonomous, goal-driven systems capable of perceiving, reasoning, planning, and acting with minimal human oversight. Across industries—from healthcare and finance to logistics and customer service—these systems rely on multiple AI agents working together, coordinated through orchestration, to tackle complex problems efficiently. At the core of their reliability and effectiveness is high-quality labeled data: it enables agents to perceive environments accurately, understand language, learn from past examples, and fine-tune their actions over time. Whether through supervised learning, imitation learning, or targeted fine-tuning, labeled data ensures agentic AI can interpret inputs, make informed decisions, and act purposefully. In short, the combination of autonomous agentic behavior and human-curated labeled data drives intelligent, adaptable, and scalable AI systems that transform real-world operations.

The post Agentic AI and Labeled Data: Driving Reliable Autonomy appeared first on Cogitotech.

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Agentic AI 人工智能 自主系统 AI代理 多Agent系统 AI驱动 AI automation Generative AI
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