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7 Types of AI: A Comprehensive Overview

Explore the vast landscape of artificial intelligence. Understand different types of AI from machine learning to deep learning, and their real-world applications.

BairesDev Editorial Team

By BairesDev Editorial Team

BairesDev is an award-winning nearshore software outsourcing company. Our 4,000+ engineers and specialists are well-versed in 100s of technologies.

9 min read

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Artificial intelligence (AI) describes the concept of machines having the abilities we associate with human intelligence. These abilities cover a wide range of tasks and applications, ranging from creating complex algorithms to quickly analyzing data to make accurate predictions. As the technology has grown, it has gained in popularity with endless use cases. Today, there are many different types of artificial intelligence.

Due to the practically limitless range of applications, AI is becoming an incredibly important part of the modern world, with its uses permeating almost every industry. This, in turn, allows us to deliver results faster than ever before. From healthcare to finance and beyond, AI is being used to speed up processes, increase accuracy, and open new possibilities.

In this article, we will explore the history and evolution of AI, along with its basic principles. We’ll also look at seven types of AI and their impact on everyday life. Let’s get started!

History and Evolution of AI

AI has come a long way since its inception, transforming and advancing from basic algorithms to complex systems capable of learning and adapting on their own. It has become an integral part of our lives, used in everything from self-driving cars to voice assistants and even music.

Brief History of AI

The term “AI” was first coined by John McCarthy in 1956, one of the founding fathers of the concept. Since then, AI has grown enormously. In recent years, the development of AI has been spurred by the quick growth of computational power and access to the enormous 328 million terabytes of data generated each day.

Evolution of AI

How has AI evolved over time? From where do the types of AI originate? This timeline depicts the major developments of the technology throughout history:

  • 1956: John McCarthy coins the term artificial intelligence.
  • 1969: DARPA begins funding AI research projects.
  • 1974–1980: Expert systems are developed that can make decisions based on data.
  • 1997: Deep Blue defeats world chess champion Garry Kasparov.
  • 2005: Machine learning is used in facial recognition.
  • 2011: IBM’s Watson wins Jeopardy.
  • 2019: AlphaZero defeats the world champion in Go.
  • 2020: AI is being used to fight the spread of Covid-19.
  • 2021: AI is increasingly used to improve healthcare outcomes.
  • 2022: ChatGPT is released.

All these development follow certain core basic principles that allow them to enhance people’s lives.

Basic Principles of AI

We’ve all seen movies like Terminator and RoboCop that depict machine learning and AI as a significant threat to human beings. But is it just science fiction, or is this based on actual evidence?

AI utilizes fundamental principles to guide its actions to avoid any unwanted or harmful behavior. All AI machines follow these principles—they have been developed for the sole purpose of preventing dangerous scenarios from occurring. To that end, there are certain guidelines in place for AI to follow:

  1. Must benefit society
  2. Must operate without bias
  3. Must ensure safety
  4. Must enforce accountability
  5. Must uphold privacy protections

These principles are what all AI technologies are built on today. Now, let’s learn more about AI technologies and the role of data and algorithms in AI.

AI Technologies

The types of AI we use in our daily lives may seem straightforward, as though simply inputting a command will give us our desired result in seconds without much thought. However, the reality is much more complex.

Algorithms and data are the two main components of AI. Data is used to train, test, and improve algorithms. Algorithms are used to process that data and make decisions. Without data, an algorithm cannot learn from experience or find patterns in the information. Without an algorithm, the data would be useless because it wouldn’t be able to recognize any pattern or identify relationships between different pieces of information.

The 7 Types of Artificail Intelligence

The seven common types of artificial intelligence we currently operate with are all programmed and designed for a specific purpose. They are as follows:

#1 Reactive Machines

Reactive machines are AI systems that are task-specific, meaning an input will always deliver the same output as they don’t have any long-term memory. Reactive machines are used to carry out simple tasks like analyzing customer data to provide accurate recommendations.

#2 Limited Memory AI

Limited memory AI is defined as a supervised machine that analyzes data or real-life events to make decisions. It essentially “learns” via access to increasing amounts of data to become progressively better at a specific task. Limited memory AI is what powers self-driving cars. These vehicles learn to make better decisions from vast amounts of road-accident data.

#3 Theory of Mind AI

Theory of mind AI systems are programmed to make decisions and give their results in a format that humans can understand. Designed to understand humans and reasoning, these AI machines can create a reason for human behaviors: for example, the lady reached for food so she must be hungry.

The goal of the theory of mind AI is to be implemented in technology like autonomous cars to allow them to understand human drivers and pedestrians better, thereby creating a safer environment.

#4 Self-Aware AI

Self-aware AI understands its own existence and the needs and desires that are associated with it. Although this technology may not currently exist, the ability of AI to think and understand its purpose would allow it to access a greater level of learning and development.

#5 Artificial Narrow Intelligence (ANI)

Artificial narrow intelligence is limited to a specific data set so it can focus its operations on a single, specific task. Functioning with a high level of development channeled into a “narrow” data set, it forces all of the analysis and learning to be used to achieve the desired outcome.

An example of this is an AI model designed to play chess. By only giving AI access to data from chess games, it has nothing else to influence its decisions—allowing it to make highly accurate predictions.

#6 Artificial General Intelligence (AGI)

Artificial general intelligence can possess human-level intelligence. Characterized by a level of understanding and problem-solving only found in humans, this AI could carry out tasks like reasoning, understanding abstract concepts, and performing highly-complicated tasks without human intervention.

A model with AGI would be able to understand human behaviors and motives to mimic emotions like sympathy and understand a sense of wonder when looking at a beautiful view.

#7 Artificial Superintelligence (ASI)

Artifical superintelligence is the science fiction-level AI researchers aspire to one day achieve. The concept of artificial superintelligence is defined by the ability to comprehend information beyond human understanding. The school of thought depicts AI as possessing superintelligence in solving the mysteries of the universe that the human mind cannot comprehend.

Impact of Artificial Intelligence Systems

We’ve witnessed the impact of AI around the world. Let’s briefly explore the impact of AI on everyday life and what the future holds.

AI in Everyday Life

AI is becoming increasingly prevalent in everyday life, from the way we access information to the way we use technology. AI systems are already used in various sectors such as healthcare, finance, and transportation to help improve efficiency and accuracy.

For example, AI can be applied to medical diagnosis to analyze X-ray images to provide detailed results. It’s also used in finance to quickly analyze a client’s credit history to determine their rating.

The applications of AI in our everyday life will continue to grow and with it, so will the opportunities for innovation.

The Future of AI

The future applications of AI are limitless. Some predict that in the coming years, AI and machine learning will be applied to almost every sector. AI systems are likely to become further integrated into our daily lives, as self-learning AI becomes more advanced. The only limiting factor will be how far we allow it to transform the way we live.

Conclusion

AI, leveraging techniques from deep learning to image recognition, has been evolving and changing lives for decades. Today, with the integration of machine learning models resembling aspects of the human brain, it now has far-reaching implications for many aspects of our lives, including understanding human emotions.

While narrow AI, like image recognition systems, focuses on specific tasks, advancements towards self-awareness in machines are pushing the boundaries of what we consider possible. The basic principle that all these seven types of AI share is ensuring the safety of these technologies. With its potential to drive innovation and emulate human-like traits, AI will no doubt continue to evolve and progress in the coming years.

FAQ

What is AI?

AI stands for “artificial intelligence” and refers to the ability of machines to utilize algorithms, machine learning models, and deep learning techniques to learn, think like humans, and even recognize patterns similar to human brain functions.

What are the basic principles of AI?

The basic principles that guide the operations of AI are benefiting society, operating without bias, ensuring safety, enforcing accountability, upholding privacy protections, and developing self-awareness. These principles act as safeguards to prevent technology from being used in harmful ways, especially when interpreting human emotions.

What is reactive AI?

Reactive AI is a type of artificial intelligence that lacks the ability to store memories or achieve self-awareness, focusing instead on responding to immediate events and environments.

What is the difference between ANI, AGI, and ASI?

ANI (artificial narrow intelligence) is specialized in one area, like image recognition, and can process only one task at a time. AGI (artificial general intelligence) can process multiple tasks, learn from them, and encompasses machine learning models that hint at aspects of self-awareness. ASI (artificial superintelligence) is an advanced form of AI that, with its deep learning capabilities, can outperform humans in a variety of complex tasks, from understanding human emotions to making predictions far beyond the human brain’s capacity.

How does AI impact everyday life?

AI impacts everyday life in many ways. Examples include faster access to information by using voice assistants and navigational apps that determine the best route to your destination. AI has made everyday life easier and more efficient and will continue to do so as time progresses.

What is the future of AI?

The future of AI is promising, assuming the technology maintains its basic principles. It will continue to make our daily lives easier and solve problems. For example, autonomous vehicles and robots may be used for delivery services or emergency response.

If you enjoyed this article, check out one of our other AI articles.

BairesDev Editorial Team

By BairesDev Editorial Team

Founded in 2009, BairesDev is the leading nearshore technology solutions company, with 4,000+ professionals in more than 50 countries, representing the top 1% of tech talent. The company's goal is to create lasting value throughout the entire digital transformation journey.

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