It’s no news that artificial intelligence [AI] is taking over. What we mean is that most industries are adapting to the use of artificial intelligence in their products, systems, or processes.
Fun fact: Artificial intelligence has been around since the 1950s. AI systems at the time were used to perform tasks like solving mathematical problems, playing chess, and so on.
Now, AI is all around us, integrated into different areas of our daily activities, like the use of ChatGPT, an AI chatbot that allows humans to have human-like conversations to enable the completion of various tasks, and voice assistants like Amazon’s Alexa.
There are different models of artificial intelligence; however, in this article, we’ll be discussing generative and discriminative artificial intelligence. Before we get to know the differences between these models of artificial intelligence, we must first understand what AI is in general.
What Really is Artificial Intelligence?
The concept of Artificial intelligence dates back to the 1950s, when it began to take shape as a technology that allows computers or machines to think and act like humans. The term “Artificial intelligence” was coined by John McCarthy in 1956, marking the official birth of AI as a discipline.
Artificial intelligence has since evolved with advancements in computing power. Today, we have language models that have enhanced interactions between humans and machines, among other applications.
The benefits of artificial intelligence shine through in various sectors, like;
Medicine: AI algorithms can analyse MRIs and X-rays with high accuracy, which leads to early diagnosis and treatment of diseases or illnesses.
Manufacturing: AI can predict when an equipment is likely to fail, the cause of failure, and what is required to prevent such failure.
Education: AI can be used to create educational content based on students' needs, as well as grade assignments and exams, providing instant results, which makes it easier for teachers and reduces their workload.
There are different types of Artificial intelligence, and they can be divided based on capabilities and functionalities. Examples include:
Based on Capabilities
Narrow AI or Weak AI: Narrow AI is trained to perform narrow tasks that usually exceed what humans can do; however, it cannot perform outside its designated tasks, which means it needs humans to train it.
It’s also known as Realised AI and is considered the only type of AI we have today, while others are theoretical.
General AI or Strong AI: General AI can use learnings and skills to perform new tasks without the need for human training. This means the AGI can learn by itself how to perform a task. This is still a theoretical concept.
Super Intelligent AI: The super-intelligent AI is also a theoretical concept; imagine if it becomes realised, the super-intelligent AI would be able to think, reason, learn, make judgements, and possess cognitive abilities transcending those of human beings. They would be able to have needs and desires, express different emotions, and so on.
Based on Functionalities
AI types based on functionalities that fall under Narrow AI or Weak AI include;
Reactive Machine AI: These are AI systems that are designed to perform specific specialised tasks based on predefined algorithms. They do not learn from past experiences or new data but operate and respond to specific inputs with predetermined responses.
Limited Memory AI: This form of AI can make improved decisions based on past or present events and data to help achieve a desired outcome. An AI chatbot is an example; it relies on limited memory AI to predict the next word or phrase within the context it's generating.
AI types based on functionalities that fall under general AI or strong AI include;
Theory of Mind AI: This type of AI will understand the thoughts and emotions of humans and would be able to deduce these emotions and personalise how it reacts to humans based on their different mental states, emotional needs, and intentions.
AI types based on functionalities that fall under super-intelligent AI include;
Self-Aware AI: This AI would be able to understand its traits and internal states possessing human-like consciousness and emotions, which would lead to forming its own beliefs and desires.
Now that we've understood AI and its types, we can further discuss the different techniques or models of AI, which include generative and discriminative models.







