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The First Thought That Comes In Mind When We Think Of Artificial Intelligence?
- Symbolic Artificial Intelligence: A simple algorithm which is able to make decisions based on predefined parameters and expected actions. These are mere if-statement and far from what academics would call artificial intelligence. Nevertheless, it is, in a way, intelligence if I see a snake, I run. If I see cake, I salivate. The main difference is that I know why I'm running (experience, fear), and why I'm salivating (hunger, potential sugar-high which would hit the reward center of the brain). A symbolic A.I has no idea of the why and how, it's just automated to follow procedure.
- Machine Learning: This refers to an algorithm which also follows procedure but on a deeper level. When fed enough data (large amounts), it can potentially draw inferences which a human might not be able to draw in his/her lifetime (unsupervised machine learning, clustering). Beyond this, we're able to create tools which learn and adapt from this data through rewards reinforcement learning, and even tools able to identify and categorise unstructured data such as images or speech (deep learning). Though incredible, these technological advances only apply to very specific, easily automated tasks. For now, that is.
- General Artificial Intelligence: This is what you see in movies (i, Robot, Ex Machina, 2001 A Space Odyssey). It's an algorithm which could not only learn from experience but could also transfer that knowledge from one very specific task to another. Alternatively, you could look at it this way : a modern A.I could make a very accurate prediction based on data, but would need a human to infer meaning (the good old causation vs correlation debate). A general artificial intelligence could do both, but is oh so far away from ever being developed. Do we already use it in our daily lives I mean, yes, of course. We shop on Amazon, we take Ubers, we use Google, we send Gmails, we fly in plane we all use A.I everyday, and it would be very hard to find someone not using such algorithms in their daily lives. Search results, newsfeeds, digital advertisement, platform moderation, friends/products recommendations. It all is impacted by companies leveraging data to inform softwares. Individuals, however, are unlikely to leverage such a tool themselves though, due to the massive amount of data necessary to create a convincing A.I.
- Document the A.I model's intended use, data requirements, specific feature requirements, and where personal data is used and how it's protected.
- Take steps to understand and minimize unwanted biases
- Continuous monitoring by external actors such as consultants.
- Knowing how and when to pull the plug and what that would mean for the business