A person sits at a desk in front of three monitors, with images of business-related icons in the background: advantages and disadvantages of AI

What Are the Advantages and Disadvantages of AI?

AI offers a wealth of benefits for your business, but it’s not without its potential risks. Here’s how you can take advantage of AI while addressing its challenges.

Missy Roback, Global Editorial Enablement Lead

As artificial intelligence continues to mature and its business applications continue to expand, more and more companies are embracing it. The promise of artificial intelligence (AI) is great, but its use has also raised ethical and environmental concerns. How can you reap the benefits of AI while avoiding the potential pitfalls of the technology? Let’s look at the advantages and disadvantages of AI — the benefits it offers across industries and the challenges it poses.

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What is AI?

AI is a set of technologies that lets machines simulate human intelligence, allowing them to learn, reason, and solve problems. AI systems offer a range of capabilities: They can be trained to understand complex and nuanced language, create new content based on existing data, and analyze data for patterns in order to predict future behaviors and events. In these cases, human input is required, whether to train a large language model (LLM), a type of AI model that can generate human-like responses by processing natural-language inputs; write a prompt for a content creation tool powered by generative AI; or act on a sales forecast produced by predictive AI.

But some AI systems can operate independently — without direct human supervision. These autonomous AI agents can reason, plan, and take action to execute specialized tasks or achieve specific goals, and they can multitask, too. Best of all, they can adjust their actions based on new inputs, and they can learn from experience.

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What are the advantages of AI?

AI offers numerous advantages for teams such as marketing, sales, customer service, IT, and operations. Here are some of the benefits of AI.

Enhanced efficiency and productivity

AI can streamline essential but repetitive manual tasks — like creating appointment reminders, sending emails, and drafting sales quotes — which frees up teams to focus on more high-value work. Sales reps can ask assistive AI agents to present the top five sales leads and provide supporting details. But autonomous AI agents can do even more. For example, they can proactively draft personalized emails for each prospect, using data from past interactions. Once a lead has been contacted, an autonomous agent can summarize the call and recommend next steps.  

All this is great, but streamlined workflows aren’t helpful if they produce errors. Fortunately, AI can help minimize human errors in basic tasks such as data entry and complicated ones like data analysis.

Better customer experiences

AI offers many benefits for commerce and customer service teams. For example, commerce teams can use AI agents to create personalized interactions and tailored product recommendations, based on a customer’s past purchases and browsing history. Service teams can resolve cases faster by using agents to provide personalized support 24/7 for complicated issues, and by deploying AI-driven help centers that let customers find answers to common questions.

Better, faster, data-based decision-making

One of the greatest benefits of AI is that it helps you make data-driven decisions. The process of grounding, which anchors AI systems in real-world data, lets AI analyze large volumes of data and quickly identify patterns and trends. By delving into data sources such as social media, customer feedback, and sales records, AI tools can uncover insights and provide recommendations to help you improve your business.  

While companies have long been able to access structured data — data that’s organized and formatted, usually in a spreadsheet or a relational database — valuable information also exists in unstructured data such as PDFs, emails, and audio, video, and image files. When you use a specialized vector database that stores, unifies, and indexes unstructured data and combines it with structured data, you get access to more complete customer information to help you make better business decisions.

Automation

Automation is at the heart of AI, allowing you to assign tasks typically performed by humans to an AI system. These tasks can be simple, like creating contact entries, or more complicated, like arranging service calls. It’s in the latter category where AI agents shine, displaying their ability to reason, plan, and take action.  

For example, imagine an agent is autonomously setting up a service call to repair a washing machine. The customer engages with the agent on the website, using natural language, to arrange an appointment time. If the customer requests a Friday appointment but the agent identifies that the required parts won’t be available until the following Monday, the agent can proactively work with the customer to arrange a more appropriate service date. And if the customer asks a question that’s outside of the scope of the agent’s actions — predefined tasks that an agent can perform in response to a trigger or instruction — the agent can transfer the customer to another AI agent or a human agent that supports the issue.  

You can use out-of-the-box agents, or build your own agents with custom actions, and use automation tools to integrate them with your customer relationship management (CRM) system.

24/7 availability

AI lets you resolve service cases around the clock through the use of chatbots on self-service portals and messaging channels. AI agents can chat with customers using conversational language and sophisticated reasoning, and can accurately answer questions about orders or customer accounts by retrieving information from your knowledge base and customer data.  

Agents can also do things like close an account or mail a replacement card — tasks that typically require human intervention. And because AI agents can provide support over multiple channels including email, chat, social media, and phone, customers get the service they need, no matter which contact method they use.

Scalability

The always-on availability of AI means you can easily scale your service operations, whether you’re looking to handle increased seasonal volume or expand your overall business. As your case volume rises, you can adjust your AI agents to take on the extra load without missing a beat, keeping customers satisfied with reliable and personalized service.

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What are the disadvantages of AI?

While AI offers many benefits for your business, it’s important to be aware of its risks — and how to address them — as you move forward with your AI strategy.

Privacy concerns and ethical problems

Each new AI advancement brings new ethical concerns, and the advent of autonomous AI is no exception. How do you collect, store, and analyze personal data in a way that protects sensitive information and earns customers’ trust? Make sure the AI platform you choose implements guardrails that improve safety, accuracy, and trust across all of its AI products. These guardrails should limit what actions an AI agent can take and require that humans are involved at critical moments in the AI experience. They should also disclose the presence of AI-generated content, ensure that AI systems don’t produce harmful or malicious content, and limit the scope of what an AI can generate in order to reduce hallucinations.

In addition, make sure the platform supports the responsible use of AI, with guidelines that focus not only on accuracy, safety, and transparency, but also accessibility and sustainability.

When it comes to data storage, using a method called zero copy lets you access and share data across multiple locations without needing to move or copy it. This reduces duplicate data and increases data security.

Cost of implementation and maintenance

LLMs are the foundation for today's AI applications. They’re trained on massive datasets, which gives them a deep understanding of a broad range of information, allowing them to reason, make logical inferences, and draw conclusions. You can train your own LLM, but it’s a challenging and expensive task that takes weeks to months to complete, and requires a significant amount of hardware, software, and engineering resources. Fortunately, you can skip all that by using an existing LLM with smart prompts grounded in your data. It’s the easiest and most commonly used approach to building LLM-powered applications.

Environmental issues

Training LLMs is not only costly to businesses; it’s costly to the environment, too. For example, training an LLM like GPT-3, the precursor to ChatGPT-4, uses about 1,300 megawatt hours of electricityOpens in a new window — enough to power 130 homes in a year. Once an LLM is trained, the energy needed to keep it running can be even greater, especially if it’s used at scale. One way to avoid this massive environmental footprint is to use a smaller, highly trained, domain- and task-specific model, which is more energy efficient than a general-purpose LLM. Several small language models are currently being developed specifically for CRM.

Since AI typically runs on cloud-based data centers, which also use considerable amounts of energy and water, choosing a low-carbon data center is another way to reduce environmental impact.

Hallucinations

You’ve probably heard that generative AI can be a rather confident liar — making things up, or hallucinating, close to 30% of the timeOpens in a new window. Such confabulations can result in inaccurate analyses, negative biases, and other missteps that erode customer trust. If you’re using an LLM, there are several ways to reduce AI hallucinations. For example, you can write more-specific prompts and follow-up questions for the LLM, and you can tell it to not make up an answer if it doesn’t know it.

But all the great prompts in the world won’t matter if you’re not using a trusted LLM. Domain-specific models, which are built on your own knowledge base, offer more trusted, current, and relevant information than off-the-shelf models, which are trained on the public internet and may not use the most recent data. The best way to get high-quality results from your LLM is to use retrieval augmented generation (RAG). This AI technique lets companies automatically embed their most current and relevant proprietary data — both structured and unstructured — directly into their LLM prompt. The result? Fewer hallucinations and more accurate outputs.

Lack of transparency

Whether people are buying clothing online, undergoing medical tests, or applying for a job, they deserve to know when and how AI is using their data. But not all companies are as upfront about this as they could be — and this lack of transparency can erode consumer trust and, sometimes, even cross legal boundaries.  

To become more transparent about AI, clearly explain the role of AI in your business, and disclose how the technology is being used. Create data usage policies, and explain how and why your AI system forms its responses. Clarify what tasks customer data will be used for, such as product recommendations, and what it won’t be used for, such as marketing. When possible, offer tools that let customers see the type of data AI is using, and allow them to opt out. Finally, perform regular bias audits to make sure outcomes are fair and nondiscriminatory.

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AI is here to stay

AI is changing the way business works, improving efficiency and productivity, and building stronger customer relationships. As you take advantage of all that the technology offers, be sure to do so in a way that’s transparent, responsible, and trustworthy.

Missy Roback is an award-winning writer and editor with deep experience in journalism and marketing. She’s also a published fiction writer, a singer-songwriter, a vintage fanatic, and a devoted cat lady.