so what is machine learning in this video you learn the definition of what it is and also get a sense of when you might want to apply it let's take a look together here's the definition of what is machine learning that is attributed to author Samuel he defined machine learning as the few the study that gives computers the ability to learn without being exclusively programmed Samus claim to fame was that back in the 1950s he wrote the checkers flame program and the amazing thing about this program was that author Samuel himself wasn't a very good Checkers player what he did was he had programmed the computer to play Maybe tens of thousands of games against herself and by watching what source of board positions tended to lead to wins and what position is tend to delete the losses the checkers flame program learns over time what a good or bad old positions by trying to get to goods and avoid bad positions his program learned to get better and better at playing checkers because the computer had the patience to play tens of thousands of games against itself it was able to get so much Checkers playing experience that eventually it became a better Checkers player than author Samuel himself now throughout these videos besides me trying to talk about stuff I'll occasionally ask you a question to help make sure you understand the content here's one about what happens if the computer had played far fewer games please take a look and pick whichever you think is a better answer thanks for looking at the quiz and so if you have selected this answer would have made it worse then you got it right in general the more opportunities you give a learning algorithm to learn the better it will perform if you didn't select the correct answer the first time that's totally okay too the point of these quiz questions isn't to see if you can get them all correct in the first try these questions are here just to help you practice the concepts you're learning author Samuel's definition was surrounded in formal one but in the next two videos we'll dive deeper together into one of the major types of machine learning algorithms in this class you learn about many different learning algorithms the two main types of machine learning are supervised learning and unsupervised learning we'll Define what these terms mean more in the next couple videos of these two supervised learning is the type of machine learning that is used most in many real world applications and that has seen the most rapid advancement and innovation in this specialization which has three causes in total the first and second causes will focus on supervised learning and the third will focus on unsupervised learning recommender systems and reinforcement learning by far that most used types of learning algorithms today are supervised learning unsupervised learning and recommend those systems the other thing we're going to spend a lot of time on in this specialization is practical advice for applying learning algorithms this is something I feel pretty strongly about teaching about learning algorithms is like giving someone a set of tools and equally important so even more importance than making sure you have great tools is making sure you know how to apply them because you know what good is it if someone were to give you a Steelyard hammer or a state of the art hanger and say good luck now you have all the tools you need to build a three-story house it doesn't really work like that and so too in machine learning making sure you have the tools is really important and so is making sure that you know how to apply the tools of machine learning effectively so that's what you get in this class the tools as well as the skills with applying them effectively I regularly visit with friends and teams in some of the top tech companies and even today I see experienced machine learning teams apply machine learning algorithms to some problems and sometimes they've been going at it for six months without much success and when I look at what they're doing I sometimes feel like I could have told them six months ago that the current approach won't work and there's a different way of using these tools that will give them a much better chance of success so in this class one of the relatively unique things you learn is you learn a lot about the best practices for how to actually develop a practical valuable machine Learning System this way you're less likely to end up in one of those teams that end up losing six months going in the wrong direction in this class you gain a sense of how the most skilled machine learning engineers build systems and I hope you finish this class as one of those very rare people in today's world that know how to design and build serious machine learning systems so that's machine learning in the next video Let's look more deeply at what is supervised learning and also what is unsupervised learning in addition you learn when you might want to use each of them supervised and unsupervised learning I'll see you in the next video