Aaron Ricadela | Senior Writer | May 21, 2025
Software assistants called AI agents have the ability to automate computer users’ repetitive tasks and respond to routine customer and employee questions. Unlike prior generations of helpers built into business applications, which relied on pre-coded rules or keyword triggers, AI agents take advantage of large language models’ predictive power and ability to communicate with users in natural language to carry out multistep workflows.
Agents can help organizations realize a return on their AI initiatives by reducing errors and streamlining processes for tasks such as researching customers for a deal, writing job postings and offer letters, and evaluating and suggesting repair options for manufacturing equipment. They can also help make individual contributors more productive and keep processes moving ahead, even overnight. Agents can look for information across different tools, taking users’ roles and other context into account and staying topical by pulling information from business documents to supplement the underlying LLMs’ training data. Read on to learn about top enterprise use cases for AI agents that your company may be able to put into practice.
AI agents are software assistants, powered by generative AI, that mediate between pretrained LLMs and computer users to carry out a wide range of multistep tasks inside software applications or on the web. Instead of responding to preprogrammed rules or keywords like previous iterations of digital helpers, AI-powered agents can predict the next logical step in a series of tasks and present relevant information or complete steps in a process, tapping business documents to augment their original information sources.
Businesses are building and deploying AI agents to assist with recruiting, explain pay and benefits to employees, field customer inquiries, work on sales deals, make financial projections, and undertake equipment repairs. In healthcare, medical practices and hospitals are using agents to help with scheduling and improve automated note-taking and documentation during patient visits, among other use cases.
While it’s early days for AI agents, adopters are using them to help complete processes that require access to multiple IT systems, deliver data-driven insights, and relieve employees of some of the steps involved in routine tasks. Here are some of the most common places they can be used in healthcare, HR, manufacturing, finance, and customer support.
More efficient AI models may lead to agents that are able to work more autonomously through routine process steps. Testing procedures will also improve as software vendors add quantitative measures of AI agents’ effectiveness. The industry may also agree on a standard protocol for communications among agents.
Oracle AI Agent Studio for Fusion Applications lets businesses set up autonomous agents in their Oracle Fusion Cloud Applications by customizing prebuilt templates that contain the code needed to get started. Admins for those applications can describe which functions their agents should perform, set limits on their actions, and instruct them about the documents and data they need to tap to complete their tasks. Oracle says more than 50 AI agents are rolling out across the Fusion Cloud Applications Suite to help with a wide variety of real-world use cases. AI agents are included in Oracle Fusion Cloud Applications subscriptions at no additional cost.
Artificial intelligence is quickly moving from a futuristic concept to a practical tool that can help supply chain teams in businesses of all sizes. This ebook explores practical areas for supply chain leaders to start applying AI.
What does an AI agent do?
AI agents are generally designed to use the natural language conversation and prediction capabilities of large language models to automatically show computer users insights gleaned from multiple IT systems, or they carry out steps in a process, which can save users time.
Is ChatGPT an AI agent?
No, the ChatGPT service from OpenAI is a chatbot that lets users conduct a typed dialogue with the company’s LLMs, but it doesn’t autonomously take actions on a user’s behalf.