Python Tutorial : Fundamentals of AI in Python
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Hello, and welcome to the course "Fundamentals of AI in Python".
My name is Nemanja Radojković. I am a Senior Data Scientist, with a broad experience in developing AI solutions within a range of industries and multinational companies, primarily those belonging to the Fortune 500 list.
I will be your course instructor and help you understand the fundamentals of Artificial Intelligence! Let's go.
On planet Earth, at this moment you probably hear the word AI at least 3 times a day.
AI stands for Artificial Intelligence which is a field of research that goes back to WWII and the first computers.
It lay somewhat dormant for decades and literally exploded in recent years.
How come? Well, technical advances have only recently made it possible for almost anybody to crunch massive data-sets, using powerful algorithms in almost no time, and at a minimum cost.
Today AI-infused systems are beating humans in most complex games...driving cars on their own...
... and creating works of art -- but how does it all actually tick under the hood?
That's what you will learn in the next 4 hours.
We don't promise to immediately turn you into an AI miracle maker, but you WILL get a solid understanding of the foundations on top of which even the most complex AI systems are built.
Let's start with the core concepts.
Let's first define Intelligence as such.
One of the widely accepted formulations defines intelligence as: the ability to reason, plan, solve problems, think abstractly, comprehend complex ideas, learn quickly and learn from experience.
So, AI systems are systems that possess these capabilities. Are we there yet? Not really. So, if you're scared of machines taking over the world, don't be -- it's not likely to happen in the foreseeable future.
But we are making
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