UPDATE: Oct 6 2018 – We have added Machine Learning & Artificial Intelligence Continue To Dominate in the Toronto Montreal Corridor on our sister site PartisanIssues.com
Machine Learning is a set of rules that a computer develops on its own to correctly solve problems. The basic idea is that a Machine Learning computer will find patterns in data (data could be numbers, pictures, shapes, …) and then predict the outcome of something it has never seen before. Machine Learning is a critical component to any Artificial Intelligence (AI) development.
Until recently Machine Learning was not possible because we lacked the very large data sets computers require to find patterns in, the storage capacity to keep all of that data and the computing power to find those patterns in a reasonable amount of time. All three of these factors have now changed:
There are MANY ‘types’ of Machine Learning but in 2017 the most prevalent ‘types’ of machine learning are Supervised Learning, Deep Learning and Reinforcement Learning. Below are simple explanations of each of the three types of Machine learning along with short, fun videos to firm up your understanding.
UPDATE MAY 2023 – There are now many machine learning systems that assist me to write my assignment.
Supervised Learning is a type of machine learning that feeds a computer system many (thousands, millions or even billions) of examples of a given item and having the computer calculate the similarities between those items so that it can recognize other examples of that item which it has not seen yet. For example, if you fed the computer the following set of graphics (and thousands more!) and told it they were all examples if the capital letter B:
it should be able to calculate distances between various parts of each of those letters to develop ratios that let it identify the following letter B graphic even though it has never ‘seen’ before like this one:
Reinforcement Learning is a type of machine learning that tells a computer if it has made the correct decision or the wrong decision. With enough iterations a reinforcement learning system will eventually be able to predict the correct outcomes and therefore make the ‘right decision’.
Deep Learning is a type of machine learning that requires computer systems to iteratively perform calculations to determine patterns by itself. This means after a Deep Learning computer has determined that a picture it is evaluating is in the shape of a rectangle; it will then cycle through again to find that the picture contains an oval shape; it will then cycle through again to find that the picture has measurements between key points on the oval shape that match typical placement of a nose, eyes and ears; it will then cycle through again to find that the eyes have fur like substance on them; it will then cycle through again to find that the nose is pink; and so on, eventually deciding that this picture has enough similarities to things it already knows to state that the it is looking at a framed cat picture.
Canada’s Montreal and Toronto areas are the global centers for Deep Learning in 2017. Google opened an AI Center in Montreal in 2016, a year that saw more than $200M in AI investments flood into Montreal alone. Microsoft bought Montreal based Deep Learning startup Maluuba and at the same time announced a $6M grant to the University of Montreal’s Deep Learning facilities and another $1M to McGill University (again in Montreal) in January 2017. That move is what prompted me to investigate Machine Learning and write this article.
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