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Hello! my name is Ian Witten, and I'm from 
the University of Waikato here in New

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Zealand, and I want to tell you about our new

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free, online course—Data Mining with Weka. 

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We're overwhelmed by data in the world today.

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Every time we check out an item at the supermarket,

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every time we swipe our credit card,
every time we send an email, 

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every time we type a keystroke on our keyboard. Every time we 
make a phone call, send a text, walk past

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a security camera. 

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We all generate a little bit of data.
Data mining is about taking this raw data, 

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and transforming it into something more useful, 

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information, perhaps, or predictions,
predictions about what might happen next, 

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predictions that can be used in the real world. 

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Let me give you an example. 
You're standing at the supermarket checkout. 

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Every item is recorded by the till and 

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at the end, you give them your loyalty card, and 

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they'll give you 2% off, 

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and you'll give them your name and address 
and access to all sorts of other data, 

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demographic data, about people like you, and so on.
You've got lots of bargains today; it's  

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been pretty good.

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Thanks to those coupons they sent you in the mail

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last week, you've been able to stock up 
on some items that you wouldn't normally 

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buy, but you've bought today, because 

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you got some money off. And next week, 
they'll send you some more coupons. 

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They'll take this data, 

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they'll analyze it, they'll include data from thousands or 

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millions of people like you. 
They'll do little experiments, 

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to find out if they reduce the price of an item just a little bit 

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are you going to buy more of that?
These coupons are a mechanism for 

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individual prices—prices set just for you. 

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Everyone benefits, you get a bargain, 
everyone loves a bargain, the supermarket 

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sells more stuff. And it's all thanks to 

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data mining. This MOOC is called Data Mining with Weka. 

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Let me tell you what a weka is. 
A weka, actually, is a little bird, 

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like it's better known relative, the kiwi, 

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found only in the islands of New Zealand. 
Flighless. About the size of a duck, actually. 

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I don't know if you can see any ducks 
in the picture, but it's about just the size of those 

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ducks out there on the lake. 

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In our case, Weka is 

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a toolkit, a data mining toolkit, a work bench. 

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It's an acronym for Waikato Environment for Knowledge 

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Analysis. it was produced here at the 
University of Waikato. We've had a machine-

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learning project going on here for 

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over 20 years now. We do research 
on machine-learning, and one of the

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 outcomes of that research 

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is this Weka workbench. A lot of 
people are starting to take data mining very 

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seriously. You've heard about big data; 

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you might have heard a lot about 
metadata recently, and what you might learn 

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from metadata.

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A lot of people find data mining mysterious. The real 

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aim of this course is to take the mystery out of data mining, 

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to get you some practical 
experience actually using the Weka toolkit

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to do some mining on the data sets that we provide, 

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to set you up so that later on, you can use Weka to 

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work on your own data sets and do your own data mining. 

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It doesn't involve any programming or 
anything like that. You're going to be using the 

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tools that we provide, 

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the Weka tools. It might 
help to know a little bit of 

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elementary statistics, like means, 
variants, standard deviations, and so on. 

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You might see a couple of mathematical 
formulas, but I'll explain those, so 

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don't worry about that. You don't really 
need any specific mathematical background. 

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The course is going to involve a number of 
short 5-10 minute videos, like this. 

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Each one will be followed by a practical activity. 
You're going to be doing something 

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on your computer using the Weka workbench.

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Weka is free, open source software. 

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It runs on anything-Windows, Mac, Linux. 

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There will be some short videos followed by an activity 

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that might take another 5-10 minutes. 
We call that a lesson, about 

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15-20 minutes worth of work.

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There are six lessons in each class; 
there are five classes altogether. 

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About one class a week is the kind of 
rate that we would expect you to take this. 

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You're going to be doing about three hours of work a week 

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for about five weeks. To take part in this course, 

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you need a computer, of course, with an 
internet connection; all of the videos are on 

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Youtube. You need a little bit of time. 

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You need a Google account to access these things, 

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and you need some motivation and 
interest in the subject. Associated with 

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the course is a text book, 

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called Data Mining. 

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It's a really good book on 
data mining. I know that, because I 

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wrote it myself with a couple of friends. 

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The publisher, Morgan Kaufmann, has kindly agreed to 

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give people on the course free access 
to large chunks of this textbook online. 

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In order to get your certificate of completion, 

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there's a couple of assessments, one in 
the middle of the course and one at the end. 

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If you do sufficiently well on those, you'll be 

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getting an official 

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certificate of completion from the University of Waikato.

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That's it—Data Mining with Weka, coming soon to a computer 

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near you. I'm looking forward 
to it, and I hope to see you there. 

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Bye for now!

