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  • Book's webpage @ CRC

Detecting patterns in space and time:

statistical analysis of big data in the power industry

course outline

The following are the online resources for the course entitled 'Detecting patterns in space and time: statistical analysis of big data in the power industry'.

This course was presented at the Centro de Modelamiento Matemático / Center of Mathematical Modelling, Universidad de Chile between 12th-13th
January 2016.

The course will be presented by Gavin Shaddick and Amelia Jobling of the University of Bath.

This course was designed for graduates/students and industrialists who have an interest in big data and spatio-temporal methods and how they might be
applied in an industrial setting.

The slides, problem sheets, solutions and other relevant resources can be found below.

Slides

Course Slides

Lab Class Slides


Lab Sessions

Lab Sheet

Lab Sheet Solutions


Data

Data Package (.zip)


Required R Packages

maps

geoR

MASS

SpatialEpi

gstat

lattice

sp

splancs

cluster

ggplot2

gridExtra

reshape2

File with R commands to install these packages

XQUARTZ

  • ©Gavin Shaddick and James V. Zidek 2015