
What Are AI Agents?
AI agents are a type of artificial intelligence (AI) system that can understand and respond to customer inquiries without human intervention.
AI agents are a type of artificial intelligence (AI) system that can understand and respond to customer inquiries without human intervention.
Wouldn’t it be great if everyone in your company — from the CEO to the newest sales rep — had an assistant? Someone always ready to help, who knows your customers well, and who can offer detailed advice about what to do next. With various types of AI agents, that possibility is here — and growing.
AI agents are a type of artificial intelligence (AI) system that can understand and respond to customer inquiries without human intervention. They are created using an agent builder, like Agentforce, and rely on machine learning and natural language processing (NLP) to handle a wide range of tasks. These intelligent agents can include anything from answering simple questions to resolving complex issues — even multi-tasking. Most importantly, they can continuously improve their own performance through self-learning. This is distinct from traditional AI, which requires human input for specific tasks.
Here’s a breakdown of how they operate:
By combining these capabilities, intelligent systems can handle a wide range of tasks autonomously, such as making product recommendations, troubleshooting problems, and engaging in follow-up interactions. This frees up human agents to focus on more complex and value-added activities.
Chatbots and AI agents have different jobs. Chatbots are usually designed for one specific task, like customer service or finding information. They follow rules and scripts, and they use pattern matching and keyword recognition to respond. This makes them good at handling simple questions, but they can't understand complex contexts or adapt to new situations.
AI agents are more advanced and independent. They can handle a wider range of tasks, learn from interactions, and get better over time. Autonomous agents can understand and keep context across multiple conversations, which makes them good for more complex and dynamic environments. They can also integrate with different systems and platforms, so they can do tasks that need a deeper understanding of the user's needs and the environment.
For example, AI agent use cases include managing a user's calendar, making reservations, and giving personalized recommendations, while a chatbot might only be able to answer FAQs or process simple transactions.
The distinction between AI agents versus chatbots is becoming increasingly blurred. However, AI agents often have more capabilities and autonomy than traditional chatbots, making them the future of human-AI collaboration.
The Agentic AI Era
The adoption of AI agents offers numerous benefits, transforming how businesses interact with their customers and manage their service operations.
AI agents offer numerous benefits, including improved productivity, reduced costs, enhanced decision-making, and a better customer experience. As management consulting firm McKinsey found , "more than 72% of companies surveyed are already deploying AI solutions, with a growing interest in generative AI. Given that activity, it would not be surprising to see companies begin to incorporate frontier technologies such as agents into their planning processes and future AI road maps."
By leveraging these advanced AI solutions, businesses can stay ahead of the curve and innovate for customer engagement.
If you’re getting ready to deploy generative AI agents, here are some best practices to keep in mind:
While AI agents can help a variety of industries, they're not all the same. Here’s a look at a few distinct types that you can use to help your business.
These simple agents function using the “condition-action” principle . They react only to their current perceptions, meaning they have no deep understanding of the world around them. This works well in some scenarios, such as a customer chatbot, but limits use cases in complex industry environments.
These agents have an internal model of the world around them, meaning they can perceive their environment and see things that aren’t immediately obvious. They can “fill the gaps” in missing information and make autonomous decisions based on their understanding of context. This makes them far more complex and agile than simple reflex agents.
Utility-based agents use a utility function to make decisions. They can evaluate different actions based on an expected utility measure to choose the optimal approach. This model is ideal when there are multiple solutions to a problem, and the agent needs to decide on the best one, such as an autonomous car deciding on the safest and quickest route.
These powerful tools are tailored to achieve specific goals. They consider the consequences of their actions and can make decisions based on whether they can use the action to achieve its objective. This means they can navigate incredibly complex scenarios autonomously and respond to the environment through sensors.
Learning agents improve over time through reinforcement learning. This is especially important in agile industries, where a business needs to stay on the cusp of new trends. For example, a virtual assistant could continually improve its service by learning more about the customer’s requirements and wants.
Here, a higher-level AI agent programs and directs lower-level agents to work toward a common goal. This structure allows businesses to break down complex multi-step processes into simpler tasks, allowing each AI agent to focus on one set of responsibilities.
AI agents can provide a much-needed boost for your company, across several industries and departments. From providing personalized customer support to generating and deploying promotions tailored to your target market, here’s how this technology can help your teams accomplish more.
It can be hard to deliver the kind of personalized customer service that financial customers now expect — but an agentic assistant eases this pain. Drawing from unified customer data, an agentic AI can surface relevant insights for your human agents, tailoring financial recommendations to each customer’s needs and goals. AI can also help you better prepare for client meetings.
Accurately summarizing client support interactions takes detailed review, and can be prone to human error. An AI agent helps with this, automatically summarizing open cases, open orders, invoices, and recent activity — saving your staff time and money.
Intelligent systems can monitor machinery to predict maintenance requirements and optimize production processes. This boosts productivity and helps avoid expensive downtime. AI agents can also help your sales team move deals down the pipeline.
With AI, you can summarize sales agreements to highlight deviations in planned versus actual quantities and revenue, helping you make better, more informed decisions.
With an agentic worker, you can improve inventory management. It can highlight the expected versus actual inventory checked out at the end of every tour. You can contextualize these assessments with added detail, like whether or not they were counted on truck, or a part of the original load document.
It also makes managing your marketing campaigns simpler, and can generate promotional content to keep people in the loop on new products.
Automotive companies can use AI agents for a complete view of vehicle or fleet performance. They can surface the most critical or time-sensitive vehicle alerts based on vehicle telematics. With AI, you can resolve issues proactively with quick visibility into maintenance needs, and choose from recommended actions.
Dealerships and repair shops can use agentic AI for commerce, quickly and easily creating promotions that appeal to their target market.
Intelligent systems can deliver next-level customer experiences in healthcare, too. A patient services agent not only answers questions, but helps patients schedule the best physician for their needs. The system can review coverage benefits, generate medical history summaries, and approve care requests.
They can also build personalized patient treatment plans and assist with records management. Looking for ideal candidates for trials? An AI agent can match eligible candidates to relevant clinical trials using patient details and study criteria, simplifying analysis.
You can also use agentic systems to gain a complete view of your provider network. This allows you to quickly review provider information and past performance, boosting efficiency and lowering patient wait times.
With AI agents in place, your customer service team can resolve customer inquiries in their sleep — literally. AI responds to your customers’ questions 24/7, escalating priority cases to your human agents, including all the necessary context. Agentforce for Service can do this autonomously across all channels, drawing from your trusted customer data and responding in your brand’s voice.
You can set your Agentforce for Service up in minutes with prebuilt templates, or quickly customize agents to fit your needs.
Much like how your service team can use AI to respond to inquiries around the clock, your sales team can autonomously answer product questions at all hours and book meetings for sales reps. Agentforce Sales Development Representative (SDR) Agents respond immediately and accurately, using responses grounded in your data. You can set how often, which channels, and when your Agentforce SDR engages before escalating to your employees.
Digital workers can be a huge help to your commerce team, too. AI agents offer personalized product recommendations and even give shoppers a personal assistant, drawing from your trusted customer data. With Agentforce, AI can respond to customers directly on your commerce site or on messaging apps like WhatsApp. AI can help people make purchases faster by guiding search queries and tailoring product recommendations to the shopper.
Want better, fully-optimized marketing campaigns? AI agents can help your marketing team build better campaigns — faster. With Agentforce Campaigns, autonomous assistants generate a campaign brief and target audience segment, then create relevant content speaking to those audiences. AI can even build a customer journey in Flow. AI agents also continually analyze campaign performance against your key performance indicators and proactively recommend improvements.
Think of AI agents as the always-on help for all your teams. They allow your employees to get more done, giving customers the personalization they’ve come to expect.
It's an exciting time for business owners. The adoption of AI agents represents a significant turning point. Automating tasks used to rely on predefined input from human users, but now, AI agents can perform tasks and learn with minimal intervention.
As machine learning, large language models (LLMs), and natural language processing (NLP) tools develop, so too will their ability to learn, improve, and make more informed decisions.
We can expect faster decision-making, more productivity, and more space for experts to focus on high-value processes.
With all these new AI developments, introducing autonomous agent models at scale can seem like a daunting task. That’s why we created Agentforce, the fastest and easiest way to build AI agents. And you don’t have to be an IT professional to build them. Simply describe what you need it to do, using natural language, and Agentforce does the rest. Give it a try today.
An AI agent is a smart computer program designed to work toward a specific goal without constant human help. It can observe its environment, make decisions, and then take actions to achieve its objectives. These agents are often built to handle complex, multi-step tasks by breaking them down into smaller pieces. They learn from their experiences, allowing them to adapt and improve over time.
ChatGPT is a powerful generative AI tool, but it's not typically considered a full AI agent on its own. ChatGPT is designed to generate text and answer questions based on the information it has learned. While it can produce intelligent responses, it doesn't independently set goals, plan complex actions, or execute tasks in the real world without a human giving it commands. It's more of a sophisticated tool that an AI agent might use. You can also now create AI agents with it.
Key characteristics of AI agents include their ability to act autonomously, meaning they can operate without constant human instruction. They are also goal-oriented, always working to achieve a specific objective. AI agents can perceive their environment, whether digital or physical, and learn from new information. They are designed to be proactive, taking the initiative to complete tasks rather than just reacting to commands.
You can find AI agents in many places. For example, a personal assistant on your phone that can book appointments or order groceries for you is an AI agent. In business, an AI agent might manage an inventory system, automatically reordering supplies when they run low. Financial AI agents can monitor markets and make trades based on specific rules. Even some smart robots performing tasks in a warehouse are examples of AI agents.
The future implications of AI agents are vast. They could automate even more complex tasks across industries, leading to greater efficiency and innovation. Businesses might see faster decision-making and highly personalized customer experiences. It also means rethinking job roles and ensuring ethical guidelines are in place. The goal is for AI agents to free up humans for more creative and strategic work.
Benefits of using AI agents include significantly increased speed and efficiency in completing tasks. They can work tirelessly 24/7 and reduce human error, leading to more consistent results. However, there are potential downsides. Initial setup can be complex and costly. There's also the risk of errors if they're not programmed correctly, and they lack human creativity or judgment in unexpected situations.
Yes, definitely! Many AI agents are built specifically for marketing and sales. For marketing, agents can personalize email campaigns, optimize ad spending in real-time, or even generate initial marketing content ideas. In sales, AI agents can qualify leads, schedule follow-up calls, or provide sales teams with insights into customer needs and preferences. They help automate and enhance various parts of the customer journey.
AI agents are increasingly common in everyday business. Many customer service chatbots are AI agents that handle routine inquiries and direct complex issues to human staff. AI agents manage cybersecurity, identifying and blocking threats automatically. In logistics, they optimize delivery routes or manage warehouse robots. They also assist in financial services, monitoring for fraud, or providing automated investment advice to clients.
Autonomous agents are designed to operate independently, without needing constant human directions. They have the ability to set their own sub-goals and make decisions to achieve a larger objective. These agents can learn from their experiences and adapt their behavior when situations change. They also possess "perception," meaning they can gather and understand information from their environment, whether it's digital data or real-world input.
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