As artificial intelligence (AI) creeps into ever more aspects of the things we design, user experience professionals should be able to confidently follow and discuss the big tech advances of our times. These are not just dry terms for developers; they are at the core of important debates about the future of humanity.
Although most of you probably know by now what AI is, if pressed to define it, what would you say? That’s harder. And you’ve heard the term “algorithm,” but what is it really? And could you explain what the difference is between narrow and general AI? Or how machine learning, neural networks and deep learning are related? And what on Earth is this thing called “the Singularity”?
An inquisitive friend of mine asked me these questions and, embarrassingly, I was pretty stumped for good, concise answers. So I did my homework and created an AI “cheat sheet” that I’m sharing with you today. These are the super short definitions I came up with for the most important terms. After each, I suggest further reading.
Before we get to the fancier AI-related terms, let’s start off by defining plain old “intelligence” and then the more recent, human invention, “artificial intelligence.”
The ability to acquire and apply knowledge and skills to achieve a goal
Defining intelligence has long divided the scientific community and controversies still rage over how to define and measure it. Most neural scientists, however, seem to agree that intelligence is an umbrella term which covers a variety of related mental abilities, such as problem-solving, mental speed, general knowledge, creativity, abstract thinking and memory.
- For more, check out this pdf on vetta.org: A Collection of Definitions of Intelligence
Artificial intelligence (AI)
Intelligence of a non-biological entity
Just as the definition of human intelligence is elusive and controversial, it is also hard to define what intelligence would mean in the context of a machine. The best definition I found is from Emerj: “Artificial intelligence is an entity (or collective set of cooperative entities), able to receive inputs from the environment, interpret and learn from such inputs, and exhibit related and flexible behaviors and actions that help the entity achieve a particular goal or objective over a period of time.”
Now that we have those two cornerstones in place, we can tackle the terms related to AI.
1. Narrow AI
AI focused on one predefined task
Also known as “artificial narrow intelligence” (ANI) and “weak AI.” Technologists have successfully applied AI to very specific tasks (e.g. playing chess, filtering spam, driving in traffic, predicting which films you might like to watch, etc.). But an AI that was developed to play chess cannot also drive a car, unless it is specifically programmed to do so. Narrow AI is, thus, the AI that we experience today.
- More on narrow AI at techopedia.com
2. General AI
Machine intelligence that rivals human intelligence
Also known as “artificial general intelligence” (AGI) and “strong AI.” This level of AI has not yet been (and may never be) achieved. In theory, an AGI could match the flexibility of human cognitive abilities and on top of that, surpass us with the advantages we already know computers have over us (memory, speed, network access, computational accuracy, etc.).
- Read more about general AI on zdnet.com
A set of instructions that tells something or someone what to do
An algorithm must have a beginning, middle and an end. Interestingly, an algorithm doesn’t have to be related to a computer program, although in today’s parlance it usually does. A recipe, directions to someone’s house, or deciding which ad to show you while you are browsing the web are all examples of algorithms.
4. Machine learning (ML)
The ability of a machine to learn and act without explicitly being programmed to do so
Machine learning is a branch of artificial intelligence. The goal is for systems to learn from data, identify patterns and make decisions with minimal human intervention. By feeding algorithms with large amounts of data, the algorithms can adjust themselves and continuously improve (and thus “learn”).
- Find out more about ML at Emerj
5. Neural networks
A computer system patterned loosely on how the human brain is structured
In this case, it’s more accurate to talk about “artificial” neural networks since the non-artificial kind is what each of us has in our heads. In this model, the interconnected layers of a neural network process information in a way that is very similar to the how our brains process information and learn.
- This article on Forbes is a good and easy-to-understand resource
6. Deep learning
A subdivision of machine learning focused on training large neural networks
The “deep” in “deep learning” refers to the number of layers in the neural network. Each layer parses the input data and passes it on, in a more abstracted form, to the next layer, which then uses that data as input.
- Recommended reading at Machine Learning Mastery
7. The Singularity
Potential starting point of technological growth that is no longer under human control. Such a radical development, if reached, could impose unforeseeable changes on human society and our universe.
Also known as “the technological singularity,” it is the hypothetical next step after artificial general intelligence. Because a superintelligent machine could so rapidly learn and upgrade itself, the consequences are unfathomable.
Things got started for the Singularity in 1993 when Vernor Vinge, science fiction author and emeritus professor of computer science and mathematics at San Diego State University, introduced the concept and postulated the end of the human era in his paper, The Coming Technological Singularity. He writes, “From the human point of view this change will be a throwing away of all the previous rules, perhaps in the blink of an eye, an exponential runaway beyond any hope of control. […] I think it’s fair to call this event a singularity (“the Singularity” for the purposes of this paper). It is a point where our models must be discarded and a new reality rules. As we move closer and closer to this point, it will loom vaster and vaster over human affairs till the notion becomes a commonplace. Yet when it finally happens it may still be a great surprise and a greater unknown.”
I hope these definitions help you in your discussions with friends and colleagues so that you can design the best possible outcome in the brave new digital world.