Art Wittmann | Oracle Technology Content Director | September 8, 2025
AI technologies including anomaly detection and vector search have been helping companies for some time. But conversing with computers in natural language—asking about business performance and discussing root causes—has become a possibility for most companies only in the last few years. It’s easy to imagine how computers that can analyze data in the blink of an eye could help your business. But deriving business value from them requires a substantial investment, and it isn’t always clear that the payoff will justify the cost.
In short, there’s broad consensus that AI will play a major role in business, but making a strong business case for it based on solid ROI calculations remains a challenge. Let’s explore how to justify AI investments.
Artificial intelligence refers to computer systems designed to perform tasks that typically require human intelligence. The most advanced forms, known as large language models (LLMs), are trained on large data sets from the internet and other sources. Once trained, LLMs excel at understanding language, providing help across many disciplines, and developing plans to complete a wide variety of tasks. These capabilities can be particularly useful when informed by an organization’s own data.
Key Takeaways
ChatGPT, introduced in 2022, caught the attention of students and business leaders alike. While it likely helped many students with their composition assignments, broad utility for businesses required further advances.
Businesses now benefit from two improvements in particular. The first is access to business data, usually through technologies known as retrieval-augmented generation, or RAG, or the Model Context Protocol, or MCP. With RAG, MCP, and similar technologies supplying relevant data, an LLM can use that context to answer questions about the business, such as customer requests for product details and executives’ “what if” scenarios about sales projections.
The second is AI’s ability to create plans by understanding how previous tasks were completed and using toolsets to complete more complex tasks. This is known as agentic AI, and it’s becoming key to AI providing tangible business value, especially as use of MCP takes off. It’s no longer a question of if AI will be used in business, but when and how.
Here are nine areas where companies are seeing success with AI.
Most customer service interactions are repetitive. That means AI with access to a history of questions, resolutions, and product documentation can serve as a capable tier 1 customer service agent—and may go beyond tier 1 tasks with new tools. Agentic AI can learn from past interactions and hold interactive conversations to resolve issues, for example. The business case is strongest if customer service data is complete and extensive. Let’s look at five key capabilities.
AI’s ability to quickly sift through data and develop unique marketing and sales strategies, often on a customer-by-customer basis, is an attractive proposition. Payback is quicker for those fully using the capabilities of their current CRM and marketing automation systems. The better your data, the better the results will be when you add AI. Are your salespeople keeping scrupulous notes on their customer interactions? Maybe, maybe not. Either way, AI can help, but more data will drive superior AI outcomes.
AI is well suited to automating repetitive processes that experience exceptions, especially for organizations that use a set of compatible products to manage operations, usually with ERP as the centerpiece. To get the most out of AI, you’ll want the ability for it to work on operational and financial data. That can happen within an ERP-centered system or in a data warehouse that’s been plumbed to pull data from the operations systems the company uses.
That’s not to say AI within point products, such as supply chain management, isn’t worth the effort. However, operational efficiencies and organizational insights from AI will be better when it gets a holistic view of daily business.
It seems finance teams are often stretched thin. AI can help by handling many routine tasks that suck up a lot of resources. AI built for document capture, understanding, and classification can help significantly reduce human data entry in finance. In accounts receivable, AI can properly enter payments into the books and often make required general ledger entries. AI can also match purchase orders with goods receipts and invoices to confirm that you’ve gotten what you ordered and are being invoiced appropriately.
AI can help employees or new hires navigate record systems, policies, and benefits, as well as write job descriptions and listings.
AI-based tools for product development will often be packaged as agents that help design, code, test, and simulate designs prior to building actual prototypes. Here are a few examples.
Historically, data analytics required a dedicated team with specialized skills and expensive tools. Decision-makers had to be strategic about facts they wanted the team to tease out. AI in analytics is changing that. Through the use of natural language prompting and reporting, analytics is becoming more of a self-service activity, where business users can craft their own questions. The key ingredient is access to a broad array of business data so that AI can, for example, assess demand based on sales pipelines and delivery schedules based on inventory data. Increasingly, AI and data analytics are meeting in the cloud.
AI provides significant opportunities to enhance data security and IT operations. Anomaly detection can monitor activity in real time, helping organizations identify and mitigate threats. However, attackers use AI too, so organizations face a constant challenge to stay ahead. On the brighter side, AI is becoming integrated into the management systems of complicated enterprise applications. Oracle began introducing autonomous management features in some data management products in 2018, and announced its Autonomous Database in 2023. The system’s AI self-configures, self-patches, and self-tunes, easing the work of DBAs and letting them focus on extracting value from data.
The legal profession, among others, will likely look entirely different in less than five years as AI assistants pick up many rote functions that lawyers and paralegals now perform—and do them faster and with more accuracy. Here are a few places where AI might help.
Because AI has the potential to touch most organizational functions, developing its business case isn’t as simple as identifying a need and writing a check for a solution. Businesses got themselves into expensive messes in the 1970s and 1980s doing just that. Buying expensive best-of-breed point solutions as needed left businesses struggling to integrate disparate products to create a holistic business management system.
Those best of breed solutions were expensive, and the morass of middleware trying to connect them led to full employment for scads of integrators. But a bigger problem came during attempts to collect the data from dozens of different products and get it into a form where it could be analyzed to better understand how the business as a whole was performing and to predict future performance.
Adopting AI without a strategy will likely repeat this pain and forgo a competitive advantage. Here are some steps to consider:
1. Create an AI center of excellence committee
Bring together interested departmental and IT leaders to understand everyone’s AI goals and interests. This group should identify where to start with AI, plan its rollout, and track success.
We created a free 14-step checklist for helping you build an effective AI center of excellence. It also includes three universal best practices.
2. Understand your vendors’ AI roadmaps
Your current vendors likely offer AI services and plan to include more. Testing these features in existing applications is a good starting point, particularly for improving efficiency, while you develop a more comprehensive strategy.
The best way to get AI adopted by employees is to put it directly into workflows. AI that takes a lot of work to access won’t be used much. If your major suppliers’ AI roadmaps are lacking, or you have too many vendors and their systems don’t easily work together, consider a change, particularly for legacy, on-premises apps. Assume your competitors use AI and that you’ll fall behind if you don’t figure out how to adopt it. Cloud-based apps will typically bring you AI features more quickly.
3. Develop a data strategy
The cliché “good AI requires good data” is true. If you’d like AI agents to automate accounts receivable and accounts payable, they’ll need connections to financial, sales, and inventory management systems, at minimum. Want AI to help with scenario planning? You might need a data warehouse or data lake for AI to mine. If you can create the right data connections reasonably easily, the payoff from AI tends to be higher and come faster.
4. Create a roadmap for your AI rollout
AI could probably help every part of your business, so it’s tempting to jump right in, prioritizing projects with the greatest impact and highest long-term ROI. While it’s a good idea to keep those mega efforts in mind and make sure that smaller jobs help pave the way for more ambitious projects, start with some quick wins that have an obvious and immediately measurable ROI. Automating tasks is often a great place to begin.
5. Let departments adopt at their own pace—with an occasional nudge
Development teams may be using AI to help them code right now. Sales teams may move more slowly. HR may find a clear win with a chatbot that helps employees understand benefits and policies. Finance may find that AI eases AR/AP workloads and helps speed up the monthly close. These quick wins will help get your people on the AI bandwagon as word spreads. If certain teams remain hesitant, an executive push may be in order.
6. Communicate wins
Not everyone in your organization will love the idea of AI automating tasks and analyzing data. Wins in the form of those smaller projects can demonstrate value in a way that’s not threatening to hesitant workers. These smaller projects can also demonstrate that IT has a plan to keep data safe, and the automated tasks are performed consistently and correctly.
Oracle helps you make the best use of AI wherever and however you choose to deploy. Oracle applications include AI features for hundreds of uses at no additional cost, including a growing list of useful AI agents. Oracle Cloud Infrastructure (OCI) delivers price performance advantages for both model users and creators. And a rich set of AI services and a wide variety of foundation models combine with popular open source tools and frameworks. And of course, there’s no better place to connect your Oracle databases with AI for data analysis and any other use you might have.
Integrating AI into a business is a multistep process that takes planning and data preparation. But it can also be exciting for employees. Research shows that IT, marketing, sales, and customer service departments lead the way in AI adoption, but HR, finance, operations, field management, and other teams can also benefit. Studies also show that while large enterprises have adopted AI faster than smaller business, the latter are catching up quickly.
What creative, customer-facing work could your people do with that time?
Data is the differentiator between an AI project that meets productivity improvement targets and one that falls short. Our ebook outlines seven key questions to ask when building a robust data foundation to support AI success.
How do you integrate AI into a business?
AI integration is a strategic process with four key steps: Identify a challenge or opportunity where AI can provide a clear return on investment, such as improving the finance team’s efficiency or acting as tier 1 customer support. Then, prepare your data infrastructure to provide the high-quality, accessible data AI models depend on.
Once you have your use case and data sources, select your tools. Most organizations use existing software with built-in AI capabilities, such as an AI-powered database, or seek a cloud provider to partner with. Developing a custom solution for a unique need is doable but expensive. Finally, embed the AI solution into workflows, train employees on how to use it, and track its performance and ROI to guide future projects.
What is an example of a business using AI?
Retailers use AI-powered recommendation engines to analyze a customer’s browsing and purchase history, preferences, and the behavior of similar buyers. This allows it to suggest relevant products in real time, helping boost sales and personalize the shopping experience.
What are some valid business use cases for generative AI?
Businesses use AI for a wide range of creative and productivity tasks. Popular ways that marketing teams get started with AI include generating press releases, blog posts, product descriptions, and social media updates. Developers are tasking LLMs with writing, documenting, and debugging code, while many firms are deploying advanced chatbots that can handle fairly complex customer and employee queries and summarize support cases to help human agents.