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Dear all,

 

RSS popular Foundation level course in Introduction to Machine Learning in R early bird registration rate is ending 1 February for the March 1 & 2 2018 London course date.
 
Name:
Introduction to Machine Learning in R


Date:
March 1 & 2 2018


Presenter
s: Doug Ashton & Chris Musselle

 

Level: Foundation


Location
: 12 Errol Street London, EC1Y 8LX

 

This is a two day course covering the application of machine-learning methodology to real-world analytics problems. The course outlines the stages involved in a machine learning analysis, and walks through how to perform them using the R programming language and the caret library.  Participants will be provided with exercises to complete in R so as to gain hands-on experience in using the methods presented.

 

The individual stages of: problem formulation, data preparation, feature engineering, model selection and model refinement will be walked through in detail giving participants a solid process to follow for any machine-learning analysis. This includes methods for evaluating machine-learning models in terms of a performance metric as well as assessing bias and variance.

 


REGISTER NOW!
 
If you’d like to find out more about this course or any of our public courses, please visit our website.
 
Best wishes
Tessa
 
Tessa Pearson
Training and Events Operations Manager
 
 
The Royal Statistical Society
12 Errol Street, London EC1Y 8LX
Direct dial: (44) 020 7614 3947
Switchboard: (44) 020 7638 8998

 
www.rss.org.uk

We are one of the world’s leading organisations to promote the importance of statistics and data. We’re a professional body for all statisticians and data analysts



 
The RSS is a registered charity No. 306096.
 
RSS (Services) Ltdis a wholly owned subsidiary of the Royal Statistical Society.
Company Reg. No. 3982652
 

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