4 Types of AI: Getting to Know Artificial Intelligence

Written by Coursera Staff • Updated on

Artificial intelligence (AI) has enabled humans to do things faster and better, advancing technology in the 21st century. Learn about the four main types of AI.

[Featured image] Three AI engineers look at a monitor in a data server room.

Artificial intelligence (AI) technology has created opportunities to progress on real-world problems concerning health, education, and the environment. Artificial intelligence can sometimes do things more efficiently or methodically than human intelligence. 

“Smart” buildings, vehicles, and other technologies can decrease carbon emissions and support people with disabilities. Machine learning, a subset of AI, has enabled engineers to build robots and self-driving cars, recognise speech and images, and forecast market trends. 

Read on to learn more about the four main types of AI and their functions in everyday life.

4 main types of artificial intelligence

Learning in AI can fall under the types of “narrow intelligence”, “artificial general intelligence”, and “super”. These categories demonstrate AI’s capabilities as it evolves—performing narrowly defined sets of tasks, simulating thought processes in the human mind, and performing beyond human capability. Arend Hintze, researcher and professor of integrative biology at Michigan State University, defined four main types of AI [1]. They include the following: 

1. Reactive machines

Reactive machines are AI systems with no memory and are task-specific, meaning that an input always delivers the same output. Machine learning models tend to be reactive machines because they take customer data, such as purchase or search history, and use it to deliver recommendations to the same customers.  

This type of AI is reactive. It performs “super” AI because the average human would not be able to process vast amounts of data, such as a customer’s entire Netflix history and feedback customised recommendations. Reactive AI, for the most part, is reliable and works well in inventions like self-driving cars. It can’t predict future outcomes unless you feed it the appropriate information.

Compare this to our human lives, where most of our actions are not reactive because we don’t have all the information we need to react upon, but we have the capability to remember and learn. Based on those successes or failures, we may act differently in the future if faced with a similar situation.

Examples of reactive machines

Beat at chess by IBM’s supercomputer: One of the best examples of reactive AI is when Deep Blue, IBM’s chess-playing AI system, beat Garry Kasparov, a world chess champion, in the late 1990s. Deep Blue could identify its own and its opponent’s pieces on the chessboard to make predictions, but it does not have the memory capacity to use past mistakes to inform future decisions. It only makes predictions based on what moves could be next for both players and selects the best move. 

Another example you’ll likely recognise: Netflix recommendations. Machine learning models power Netflix’s recommendation engine to process the data collected from a customer’s viewing history to determine specific movies and TV shows that they will enjoy. Humans are creatures of habit. So, if someone tends to watch a lot of Korean dramas, for example, Netflix will show a preview of new releases on the home page.

2. Limited memory machines

The next type of AI in its evolution is limited memory. This algorithm imitates how our brains’ neurons work together, meaning it gets smarter as it receives more data to train on. Deep learning algorithms improve natural language processing (NLP), image recognition, and other types of reinforcement learning.

Unlike reactive machines, limited memory AI can look into the past and monitor specific objects or situations over time. Then, these observations are programmed into the AI to act based on past and present moment data. However, in limited memory, this data isn’t saved into the AI’s memory as experience to learn from, the way humans might derive meaning from their successes and failures. The AI improves over time as it’s trained on more data.

Example of limited memory artificial intelligence

Self-driving cars offer an excellent example of limited memory AI. These vehicles observe other cars on the road for speed, direction, and proximity. This information forms the basis of the car’s representation of the world, such as knowing traffic lights, signs, curves, and bumps in the road. The data helps the car decide when to change lanes so that it does not get hit by or cut off another driver. 

3. Theory of mind

The first two types of AI, reactive machines and limited memory, are types that currently exist. Theory of mind and self-aware AI are theoretical types that engineers could build in the future. As such, this type of AI doesn’t have any real-world examples yet.

Theory of mind AI could potentially understand the world and how other entities have thoughts and emotions. In turn, this affects how they behave in relation to those around them.

Human cognitive abilities are capable of processing how our own thoughts and emotions affect others, and how others affect us—this is the basis of our society’s human relationships. In the future, theory of mind AI machines could be able to understand intentions and predict behaviour, as if to simulate human relationships.

4. Self-awareness

The grand finale for the evolution of AI would be to design systems that have a sense of self, a conscious understanding of their existence. This type of AI does not exist yet.

This goes a step beyond theory of mind AI and understanding emotions to be aware of themselves, their state of being, and being able to sense or predict others’ feelings. For example, “I’m hungry” becomes “I know I am hungry” or “I want to eat lasagna because it’s my favourite food.” 

Artificial intelligence and machine learning algorithms are a long way from self-awareness because researchers still have so much to uncover about the human brain’s intelligence and how memory, learning, and decision-making work.

Keep learning about artificial intelligence with AI expert Andrew Ng.

Artificial Intelligence (AI) continues ushering in new opportunities to address real-world problems. Learning about AI can be fun and fascinating, even if you don’t want to become an AI engineer. The course AI for Everyone, offered by DeepLearning.AI, is especially designed for non-technical people to understand what AI is, including common terminology like neural networks, machine learning, deep learning, and data science. You’ll learn how to work with an AI team, build an AI strategy in your company, and much more. 

Article sources

  1. The Conversation. “Understanding the four types of AI, from reactive robots to self-aware beings, https://theconversation.com/understanding-the-four-types-of-ai-from-reactive-robots-to-self-aware-beings-67616.” Accessed 13 June 2024.

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