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Introduction to Machine Learning with Functional Programming
--client
troy
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dnf2016
--room NedSpace 11181 --force
Next: 1 Private Party at Ground Kontrol
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NedSpace
Date
jul Sun 10
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09:00
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error-in-template
Duration
00:450.0:00
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None
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16:30
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None min.
http://lanyrd.com/2016/netfringe/sfctyx/
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Workshop Abstract: Machine Learning and Functional Programming are both very hot topics these days; they are also both rather intimidating for the beginner. In this workshop, we’ll take a 100% hands-on approach, and learn practical ideas from Machine Learning, by tackling real-world problems and implementing solutions in F#, in a functional style. In the process, you will see that once you get beyond the jargon, F# and Machine Learning are actually not all that complicated – and fit beautifully together. So if you are curious about what Machine Learning is about, and want to sharpen your developer skills, come with your laptop and… let’s hack together! What you should expect: - no F# or Machine Learning prerequisites: complete beginners are totally welcome, - a hands-on introduction to simple Machine Learning ideas you can use, by solving real-world problems, - a practical introduction to writing effective F# code, - lots of coding on fun problems! Workshop Schedule: 09:00 Workshop intro: what IS machine learning? 09:30 Lab: automatically recognizing hand-written numbers 11:00 Wrap-up: lessons learnt 11:30 Lab: what language is this text written in? 12:00 Lunch 13:30 Lab (cont'd): what language is this text written in? 14:15 Demo: detecting patterns in data 14:30 Introduction to gradient descent & neural nets 14:45 Lab: recognizing language with a perceptron 15:30 Demo: from perceptrons to deep neural networks 15:45 Demo: scaling machine learning with mbrace.io 16:00 Wrap up & summary. **PRE-REQS** This will be a hands-on workshop, so be sure to come with a laptop. You’ll also need to install F# with an editor of your choice. To get that, follow the instructions on http://fsharp.org/ for Mac, Windows or Linux. On Mac, we recommend VS Code or Xamarin Studio; on Windows, we recommend VS Code or Visual Studio. If you’re using Atom or VS Code, follow the installation instructions in "Getting started” on the Ionide page (http://ionide.io/). You'll need to install mono (Mac and Linux) or F# (Windows) and Atom/VS Code itself. Then install the ionide-installer package. And that’s all, no previous experience with F# or machine learning is needed!
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