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What Are AI Agents? A Guide to Types, Benefits, and Examples

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What Are AI Agents? A Guide to Types, Benefits, and Examples
Article Breakdown

Life is busy. And when you don’t have time to handle tasks on your own, artificial intelligence (AI) agents are a lifeline.

An AI agent is a versatile tool designed to handle tasks and processes autonomously. Think of it as a highly intelligent assistant that streamlines workflows, using a suite of high-tech processes to help you achieve your goals. 

While chatbots or generative tools might come to mind when you think about AI agents, they go beyond simple language processing and image generation. They can make decisions, perform responsive actions, and interface with external systems, like managing your calendar or communicating with customer support platforms. 

Here’s a guide to what these agents are, how they operate, and what types of AI agents are out there. 

5 types of AI agents 

As technology advances, AI agents become more specialized and diverse in their abilities to improve business operations and individual workflows. To decide on the right intelligent agent for your needs, let’s break down five unique examples of AI agents:

  1. Simple reflex agents

As the name suggests, simple reflex agents are the most basic type. They rely on predefined rules and inputs that trigger specific actions. That means they can’t adapt to new situations, learn autonomously, or interact with other agents. 

A simple reflex agent’s main components are the sensors, the actuators, and the inputs. When condition A occurs, the agent triggers response B. For example, a simple reflex agent might be programmed to tell time (sensor) so that it can turn on a light (actuator) every night at 7 p.m. (input). 

  1. Model-based reflex agents

Model-based reflex agents combine real-time perceptions with memory to build a model of their environment. They analyze current conditions based on past experiences, which lets them operate effectively in changing environments. 

For instance, an intelligent security system uses sensors to detect movement, monitor activity, and build an autonomous internal model with percepts about different areas of space and the time of day. The system's sensors can then differentiate between normal activity and potential security threats, adjusting how the agent acts as it monitors movement — highlighting suspicious activity when it happens. 

  1. Goal-based agents

This type of AI agent designs an internal model of its environment to take action on specific objectives. Unlike simpler agents, goal-based agents evaluate potential actions and make decisions to effectively reach the best outcome. 

Consider a personal fitness app that coaches you toward your health goals. The app tracks your activities and health data to help you define new objectives, like increasing your daily step count or increasing workout intensity. Once you give it a new goal, the AI agent creates a plan to reach it. 

  1. Utility-based agents

Utility-based agents take goal-based assistance a step further, achieving objectives by considering a fixed set of criteria. Goal-based agents help you reach a goal, and utility-based agents analyze the highest overall benefit based on the criteria — or what will make the agent (and its user) the happiest.

Imagine a smart energy management system. Its criteria would be to maintain a comfortable temperature with a low environmental footprint and reduced costs. The agent measures and adjusts temperature throughout the day, maximizing the expected utility. 

  1. Learning agents

Learning agents continuously improve their performances through experience. They autonomously update their knowledge base as they interact with their environments, and this ability to learn and adapt makes them particularly effective in new and changing situations. You can set up the system to be utility or goal-based. 

A learning agent’s performance is based on four different elements: 

  • Learning: The AI agent acquires new knowledge from its interactions with the environment. 
  • Criticism: It analyzes its actions, assessing how well its response matches the desired outcome.
  • Performance: It completes tasks based on the rules it teaches itself. 
  • Problem generation: It creates different scenarios, understanding potential benefits and challenges to propose the right response. 

Think of a smart email filtering system. The AI agent learns to identify spam and prioritize important messages based on user interactions. As it receives feedback from the user about the system’s filtering accuracy, it adjusts the rules and algorithms. Over time, the system becomes better at distinguishing between relevant and irrelevant emails, providing precise organization. 

3 benefits of using AI agents

Integrating AI into your operations can transform how you work. Here’s how the best AI agents make an impact: 

  1. Boosted productivity

AI agents automate the mundane and time-consuming tasks that drain your resources. By handling activities like data entry, scheduling, and basic customer inquiries for you, these bots give you more time and energy for creative work that requires human ingenuity. The shift to automation speeds up workflows and minimizes the risk of errors.

  1. Better customer experience

Good customer service is key to satisfaction, but you don’t always have the time and energy to handle inquiries effectively. Operating around the clock, AI agents handle a range of customer needs — from answering questions to providing tailor-made recommendations. This constant availability gives people prompt support, reducing wait times and enhancing satisfaction. 

Plus, AI agents can manage a high volume of clients simultaneously, freeing up time for humans to address more complex or sensitive problems. 

  1. Data-driven insights

Knowledge is power — but only if you know how to harness it. Certain AI agents are designed to analyze large amounts of data to create actionable insights. With advanced machine learning algorithms, they process and interpret complex information much faster than traditional, manual methods. These capabilities give you a deeper understanding of the data you’re tracking, whether that’s customer behavior or personal efficiencies, to make better decisions and uncover new growth areas. 

3 challenges of using AI agents

AI agents are here to stay, but so are their growing pains. Here are three challenges to expect when you incorporate AI technologies into your workflow:

  1. Technical difficulties

AI agents require fine-tuning before they’re ready to meet your needs. This might involve customizing the technology to fit specific workflows and ensuring compatibility with current software and apps — steps that take time. Technical hiccups can disrupt operations or require specialized, ongoing support, making AI’s initial adoption both challenging and resource-intensive. Plus, AI is always evolving, which means ongoing training is a must if you want to take full advantage of an agent’s capabilities. 

  1. Poor computing resources

If you need AI agents to perform complex tasks or handle large volumes of data, your current computer infrastructure might not have the ability. As a smaller organization or single-owner business, it’s often difficult (and expensive) to get the necessary space and equipment to support advanced systems. 

  1. Ethical bias

Even the most high-tech machine learning technologies aren't truly autonomous. They make decisions with the datasets they’re given, and that means AI agents can unintentionally perpetuate biases present in the data they’re trained with. 

Without careful design and regular monitoring, AI agents could make decisions or recommendations that are unethical or incorrect. Keeping tabs on agents’ outputs is an ongoing challenge, requiring software and skills not everyone has. 

AI agents across different sectors

AI agents can be transformative in nearly any industry — even outside the typical tech world. Here are a few examples of how they work in different markets: 

  1. Customer service

One of the most recognizable uses of AI agents is in customer service, where AI technologies offer 24/7 support — common examples include chatbots, virtual assistants, and automated response systems. These all improve efficiency and customer satisfaction, and they’re the perfect opportunity for businesses can also analyze customer inputs and enhance the quality of service. 

  1. Healthcare

AI systems can do more than manage patient records, schedule appointments, and monitor health metrics. Medical professionals can program AI agents to help diagnose medical conditions through pattern recognition and personalize treatment plans based on patient data. These processes save time and help people get diagnoses and treatments faster.

  1. Education

AI-powered note-taking and meeting assistants help students and educators transcribe lectures, organize notes, and summarize key information — all with an emphasis on personalization and speed. Agents with searchable text functions or integration with other platforms let students adapt notes to their learning style for an individualized experience. And transcriptions can help teachers pinpoint common questions or roadblocks to improve their lectures. 

Elevate your productivity with Otter

Save time and increase productivity with an AI Agent to take and share meeting notes. Otter released it’s AI Agent for Meetings - called OtterPilot.  It can automatically join virtual meetings to record and transcribe the meeting notes.  It will automatically capture any slides that are shared and generate an automated summary with action items so you and your team can focus on the important stuff. OtterPilot will even share the notes via Slack or email.  You worry about brainstorming big ideas, and Otter will make sure it’s all noted.

Life is busy. And when you don’t have time to handle tasks on your own, artificial intelligence (AI) agents are a lifeline.

An AI agent is a versatile tool designed to handle tasks and processes autonomously. Think of it as a highly intelligent assistant that streamlines workflows, using a suite of high-tech processes to help you achieve your goals. 

While chatbots or generative tools might come to mind when you think about AI agents, they go beyond simple language processing and image generation. They can make decisions, perform responsive actions, and interface with external systems, like managing your calendar or communicating with customer support platforms. 

Here’s a guide to what these agents are, how they operate, and what types of AI agents are out there. 

5 types of AI agents 

As technology advances, AI agents become more specialized and diverse in their abilities to improve business operations and individual workflows. To decide on the right intelligent agent for your needs, let’s break down five unique examples of AI agents:

  1. Simple reflex agents

As the name suggests, simple reflex agents are the most basic type. They rely on predefined rules and inputs that trigger specific actions. That means they can’t adapt to new situations, learn autonomously, or interact with other agents. 

A simple reflex agent’s main components are the sensors, the actuators, and the inputs. When condition A occurs, the agent triggers response B. For example, a simple reflex agent might be programmed to tell time (sensor) so that it can turn on a light (actuator) every night at 7 p.m. (input). 

  1. Model-based reflex agents

Model-based reflex agents combine real-time perceptions with memory to build a model of their environment. They analyze current conditions based on past experiences, which lets them operate effectively in changing environments. 

For instance, an intelligent security system uses sensors to detect movement, monitor activity, and build an autonomous internal model with percepts about different areas of space and the time of day. The system's sensors can then differentiate between normal activity and potential security threats, adjusting how the agent acts as it monitors movement — highlighting suspicious activity when it happens. 

  1. Goal-based agents

This type of AI agent designs an internal model of its environment to take action on specific objectives. Unlike simpler agents, goal-based agents evaluate potential actions and make decisions to effectively reach the best outcome. 

Consider a personal fitness app that coaches you toward your health goals. The app tracks your activities and health data to help you define new objectives, like increasing your daily step count or increasing workout intensity. Once you give it a new goal, the AI agent creates a plan to reach it. 

  1. Utility-based agents

Utility-based agents take goal-based assistance a step further, achieving objectives by considering a fixed set of criteria. Goal-based agents help you reach a goal, and utility-based agents analyze the highest overall benefit based on the criteria — or what will make the agent (and its user) the happiest.

Imagine a smart energy management system. Its criteria would be to maintain a comfortable temperature with a low environmental footprint and reduced costs. The agent measures and adjusts temperature throughout the day, maximizing the expected utility. 

  1. Learning agents

Learning agents continuously improve their performances through experience. They autonomously update their knowledge base as they interact with their environments, and this ability to learn and adapt makes them particularly effective in new and changing situations. You can set up the system to be utility or goal-based. 

A learning agent’s performance is based on four different elements: 

  • Learning: The AI agent acquires new knowledge from its interactions with the environment. 
  • Criticism: It analyzes its actions, assessing how well its response matches the desired outcome.
  • Performance: It completes tasks based on the rules it teaches itself. 
  • Problem generation: It creates different scenarios, understanding potential benefits and challenges to propose the right response. 

Think of a smart email filtering system. The AI agent learns to identify spam and prioritize important messages based on user interactions. As it receives feedback from the user about the system’s filtering accuracy, it adjusts the rules and algorithms. Over time, the system becomes better at distinguishing between relevant and irrelevant emails, providing precise organization. 

3 benefits of using AI agents

Integrating AI into your operations can transform how you work. Here’s how the best AI agents make an impact: 

  1. Boosted productivity

AI agents automate the mundane and time-consuming tasks that drain your resources. By handling activities like data entry, scheduling, and basic customer inquiries for you, these bots give you more time and energy for creative work that requires human ingenuity. The shift to automation speeds up workflows and minimizes the risk of errors.

  1. Better customer experience

Good customer service is key to satisfaction, but you don’t always have the time and energy to handle inquiries effectively. Operating around the clock, AI agents handle a range of customer needs — from answering questions to providing tailor-made recommendations. This constant availability gives people prompt support, reducing wait times and enhancing satisfaction. 

Plus, AI agents can manage a high volume of clients simultaneously, freeing up time for humans to address more complex or sensitive problems. 

  1. Data-driven insights

Knowledge is power — but only if you know how to harness it. Certain AI agents are designed to analyze large amounts of data to create actionable insights. With advanced machine learning algorithms, they process and interpret complex information much faster than traditional, manual methods. These capabilities give you a deeper understanding of the data you’re tracking, whether that’s customer behavior or personal efficiencies, to make better decisions and uncover new growth areas. 

3 challenges of using AI agents

AI agents are here to stay, but so are their growing pains. Here are three challenges to expect when you incorporate AI technologies into your workflow:

  1. Technical difficulties

AI agents require fine-tuning before they’re ready to meet your needs. This might involve customizing the technology to fit specific workflows and ensuring compatibility with current software and apps — steps that take time. Technical hiccups can disrupt operations or require specialized, ongoing support, making AI’s initial adoption both challenging and resource-intensive. Plus, AI is always evolving, which means ongoing training is a must if you want to take full advantage of an agent’s capabilities. 

  1. Poor computing resources

If you need AI agents to perform complex tasks or handle large volumes of data, your current computer infrastructure might not have the ability. As a smaller organization or single-owner business, it’s often difficult (and expensive) to get the necessary space and equipment to support advanced systems. 

  1. Ethical bias

Even the most high-tech machine learning technologies aren't truly autonomous. They make decisions with the datasets they’re given, and that means AI agents can unintentionally perpetuate biases present in the data they’re trained with. 

Without careful design and regular monitoring, AI agents could make decisions or recommendations that are unethical or incorrect. Keeping tabs on agents’ outputs is an ongoing challenge, requiring software and skills not everyone has. 

AI agents across different sectors

AI agents can be transformative in nearly any industry — even outside the typical tech world. Here are a few examples of how they work in different markets: 

  1. Customer service

One of the most recognizable uses of AI agents is in customer service, where AI technologies offer 24/7 support — common examples include chatbots, virtual assistants, and automated response systems. These all improve efficiency and customer satisfaction, and they’re the perfect opportunity for businesses can also analyze customer inputs and enhance the quality of service. 

  1. Healthcare

AI systems can do more than manage patient records, schedule appointments, and monitor health metrics. Medical professionals can program AI agents to help diagnose medical conditions through pattern recognition and personalize treatment plans based on patient data. These processes save time and help people get diagnoses and treatments faster.

  1. Education

AI-powered note-taking and meeting assistants help students and educators transcribe lectures, organize notes, and summarize key information — all with an emphasis on personalization and speed. Agents with searchable text functions or integration with other platforms let students adapt notes to their learning style for an individualized experience. And transcriptions can help teachers pinpoint common questions or roadblocks to improve their lectures. 

Elevate your productivity with Otter

Save time and increase productivity with an AI Agent to take and share meeting notes. Otter released it’s AI Agent for Meetings - called OtterPilot.  It can automatically join virtual meetings to record and transcribe the meeting notes.  It will automatically capture any slides that are shared and generate an automated summary with action items so you and your team can focus on the important stuff. OtterPilot will even share the notes via Slack or email.  You worry about brainstorming big ideas, and Otter will make sure it’s all noted.

Get started with Otter today.
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