Accenture Blog 04月07日 22:12
Leveraging intelligent agents in the operations function
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本文探讨了在投资银行业务的中后台运营中,如何利用智能代理实现流程自动化和效率提升。文章指出,智能代理能够自主完成特定目标,通过学习和优化,改进业务流程。特别是在金融服务业中,智能代理被用于解决交易中的异常处理问题,如标准结算指令不匹配等,以降低运营成本,提升效率。文章还介绍了埃森哲与ServiceNow和DeepSee合作开发的智能工作流程编排平台,该平台通过数字孪生技术和智能代理,实现了自动化异常处理。

🤖 智能代理是一种能够自主执行特定任务的软件,旨在自动化和优化业务流程,特别是在金融服务业中,用于提高运营效率。

🔑 金融服务业的运营中,异常处理需要大量人工,自动化面临挑战。文章指出了自动化异常处理的三个主要障碍:跨系统的数据和流程、操作分析师的专业知识以及大量的沟通需求。

💡 埃森哲与ServiceNow和DeepSee合作开发了智能工作流程编排平台。该平台通过数字孪生技术,协调任务分配给代理,并提供预置代理库,实现自动化异常处理,例如解决标准结算指令(SSI)不匹配问题。

📧 该平台通过一系列智能代理自动执行任务,包括确定根本原因、推荐正确的SSI、发送电子邮件给交易对手方请求更新指令等。该平台利用LLM驱动的NLP和ML技术。

✅ 智能代理需要被嵌入到精心定义的工作流程中,并遵循负责任的AI原则。企业需要构建业务流程的数字孪生,才能充分利用智能代理,降低交易成本,并使人类专注于更复杂的问题解决和战略决策。

Many of our clients are facing the challenge of where to start and how to scale with generative AI (gen AI). One promising concept is the use of intelligent agents, which automate and optimize processes, making gen AI implementation and scaling more manageable.

In simple terms, an intelligent agent is software that acts in a given environment to autonomously deliver a specific goal. Such agents are therefore supposed to do more than just automate routine tasks: ultimately, they are intended to be able to choreograph entire business workflows, learn from their past performance, acquire further knowledge, and then self-improve.

This blog explores a practical use case for leveraging such agents in middle and back office operations of investment banking.

Challenges to automating exception handling in Financial Services

Financial Services is a regulated industry. As a result, the middle and back offices of trading firms must ensure that all transactions are accurately recorded, reported, and stored. They also need to safeguard that all activities are conducted within regulatory guidelines, and that operational risks are appropriately managed.

However, even in areas that traditionally have high straight-through-processing rates in operations, there is still a considerable amount of manual effort required to resolve exceptions when they occur. Trying to automate such exception handling is not trivial and requires very specific capabilities.

To understand why, let’s examine the three most common barriers to automating exception handling:

The question we have been asking ourselves is, can intelligent agents help to further automate the handling of such exceptions—in a controlled and auditable manner—to drive new efficiencies and reduce the overall costs across the trade lifecycle?

Leveraging work orchestration to steer intelligent agents

While the vision of intelligent agents is to one day choreograph all the steps of a business outcome, today the tasks performed by intelligent agents still need some careful steering—especially if processes require a clear audit trail. In other words, there is a need to set boundaries of what an agent should do and what data it can leverage. This is where work orchestration solutions come in: embedding the respective agents in a well-defined, end-to-end orchestrated process is currently essential.

For Accenture, this goes beyond theoretical discussion. We operate a capability that provides back-office operations as a service, so we frequently grapple with the same questions our clients face. In collaboration with ServiceNow and DeepSee, we have recently created an intelligent work orchestration platform that aims to deliver operational efficiencies by also leveraging intelligent agents.

The platform is able to create a digital twin of a business process; it can coordinate task allocation to agents; and it provides a library of out-of-the-box agents to perform specific tasks within a business domain (for example, automatic email categorization, routing, and drafting).

How to fix a Standard Settlement Instruction Mismatch automatically

Here is an example of how this platform realizes the power of intelligent agents: a common exception in the cash securities settlement process that requires manual intervention is a Standard Settlement Instruction (SSI) Mismatch that prevents a transaction from being closed in an automated way.

Traditionally, an operations analyst would receive an exception from the core trading platform and would need to perform several tasks to identify the root cause, determine the next best action, agree on the resolution with the counterparty—usually over email—and then resolve the issue back in the core trading platform.

Within our platform, a set of agents, using Large Language Model (LLM) powered Natural Language Processing (NLP) and Machine Learning (ML), perform those tasks automatically: if an SSI Mismatch event occurs from the core trading platform, those agents work together to solve the issue.

The work on this platform leads me to conclude that before firms can start to deploy intelligent agents today, they would need to spend time looking at the process definitions and encoding tasks at the keystroke level into a digital twin of a business process. In my opinion, using intelligent agents controlled by a fully orchestrated business process embedded in responsible AI principles is the most promising way to achieve the efficiencies needed to significantly reduce the costs of a trading firm’s middle and back office with gen AI and enable human talent to focus on complex problem-solving and strategic decision-making.

Interested to learn more or talk about our practical experience? Feel free to reach out to me on LinkedIn and let’s have a chat.

 

The post Leveraging intelligent agents in the operations function appeared first on Accenture Capital Markets Blog.

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智能代理 金融服务 流程自动化 异常处理
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