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ALLSTAT  March 2019

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Subject:

TRAINING: Short Courses from the Consumer Data Research Centre (Leeds)

From:

Kylie Norman <[log in to unmask]>

Reply-To:

Kylie Norman <[log in to unmask]>

Date:

Thu, 14 Mar 2019 16:31:17 +0000

Content-Type:

text/plain

Parts/Attachments:

Parts/Attachments

text/plain (221 lines)

Dear Colleagues,



**With apologies for cross-posting**



The ESRC-funded Consumer Data Research Centre<https://www.cdrc.ac.uk/> at the University of Leeds is currently offering the following courses in 2019:



Transport Data Science with R<https://www.cdrc.ac.uk/events/transport-data-science-with-r/>

5th April 2019 @ 9:00 am - 4:30 pm

Leeds Institute for Data Analytics, University of Leeds

Course Tutors: Robin Lovelace and James Tate
This course teaches two skill-sets that are fundamental in modern transport research: programming and data analytics. Combining these enables powerful transport planning and analysis workflows for tackling a wide range of problems, including:
·         How to find, download and import a range of transport datasets?
·         How to develop automated and reproducible transport planning workflows?
·         How can increasingly available datasets on air quality, traffic and active travel be used to inform policy?
·         How to visualise results in an attractive and potentially on-line and interactive manner?
This course will provide tools, code, data and, above all, face-to-face teaching to answer these questions and more, with the statistical programming language R. The data science approach opens a world of possibilities for generating insight from your transport datasets. The course is suitable for researchers in the public sector, academia and industry.

Objectives:
By the end of the course you will be able to:
·         Find, download and import a variety of transport datasets, including from OpenStreetMap and government data portals
·         Work with, analyse and model transport data with spatial, temporal and demographic attributes
·         Work with air pollution data in R and compare with transport behaviours
·         Generate and analyse route networks for transport planning with reference to:
·         Origin-destination (OD) data
·         Geographic desire lines
·         Route allocation using different routing services
·         Route network generation and analysis


Who is this course suitable for?
Prior experience with transport datasets is a prerequisite for the course. Attendees are expected to:
·         Be comfortable with the use of R, using it for everyday data analysis tasks (you will find DataCamp's free Introduction to R<https://www.datacamp.com/courses/free-introduction-to-r> easy)
·         Have experience with transport datasets and understand their structure (you will be familiar with the contents of the Transport chapter<https://geocompr.robinlovelace.net/transport.html> in Geocomputation with R)



Cost:
Early bird prices (valid until 1st March)
Student: £200
Academic, public sector and charitable sector: £300
External: £400
Price (valid 1st March - 3rd April)
Student: £250
Academic, public sector and charitable sector: £350
External: £450





Geocomputation and Data Analysis with R<https://www.cdrc.ac.uk/events/geocomputation-and-data-analysis-with-r/>

25th-26th April 2019 @ 9:30 am - 4:30 pm

Leeds Institute for Data Analytics, University of Leeds

Course Tutor: Robin Lovelace

The aim of this 2 day course is to get you up-to-speed with high performance geographic processing, analysis, visualisation and modelling capabilities from the command-line. The course will be delivered in R, a statistical programming language popular in academia, industry and, increasingly, the public sector. It will teach a range of techniques using recent developments in the package sf<https://github.com/r-spatial/sf> and the 'metapackage' tidyverse<https://www.tidyverse.org/>, based on the open source book Geocomputation with R<https://geocompr.robinlovelace.net/> (Lovelace, Nowosad, and Meunchow 2019).



Objectives:
·         Be able to use R and RStudio as a powerful Geographic Information System (GIS)
·         Know how R's spatial capabilities fit within the landscape of open source GIS software
·         Be confident with using R's command-line interface (CLI) and scripting capabilities for geographic data processing
·         Understand how to import a range of data sources into R
·         Be able to perform a range of attribute operations such as subsetting and joining
·         Understand how to implement a range of spatial data operations including spatial subsetting and spatial aggregation
·         Have the confidence to output the results of geographic research in the form of static and interactive maps.

Who is this course suitable for? Delegates must be an R user already, having at least completed a basic introductory course such as DataCamp's free introduction to R<https://www.datacamp.com/courses/free-introduction-to-r> course or equivalent.


Early Bird rates (valid until 18th March 2019)
£400 - Students
£600 - Academics, charitable and public sector
£800 - Other


Introduction to R<https://www.cdrc.ac.uk/events/introduction-to-r-3/>

29th April 2019 @ 9:30 am - 12:30 pm

Leeds Institute for Data Analytics, University of Leeds
Course Tutors: Richard Hodgett and Emmanouil Konstantinidis

This half-day course will provide you with an introduction to the analytical programming language R. The course will focus on data pre-processing and visualisation, two of the key steps in understanding and generating insights from data. During the course you will learn about the benefits or R, how R handles different data types and how you can begin to use R to solve complex data science, machine learning and statistical problems. Specifically, you will work with R and its various packages to import, clean, manipulate and visualise real world data. The course assumes no knowledge of R or statistics.


Objectives:

  1.  To familiarise attendees with R, including the RStudio integrated development environment.
  2.  To learn more about the broader R ecosystem - i.e. packages that extend the functionality of 'base R'.
  3.  To introduce R's syntax and a variety of primary functions.
  4.  To learn how to tidy and manipulate data using R.
  5.  To learn how to utilise data visualisations to communicate your results.
Who is this course suitable for? No prior knowledge is assumed for this course other than having basic IT skills.


Cost:

£40 (students)

£60 (academic, public and charitable sector employees)

£150 (private sector)



Introduction to Python for Data Analytics<https://www.cdrc.ac.uk/events/introduction-to-python-for-data-analytics/>

2nd-3rd May 2019 @ 8:30 am - 4:00 pm

Leeds Institute for Data Analytics, University of Leeds
Course Tutor: Viktoria Spaiser


This two-day course provides an introduction to Python programming with a focus on data analytics. The course will introduce some basics in Python programming such as data types, basic operations, data sequences and data structures, control flows, exceptions and object-oriented programming. We will then focus on working with actual data, such as survey data, time-series data, JSON data (e.g. Twitter data), and geo-spatial data. This will include visualization and statistical analysis of numerical data. The course will also give an introduction in spatial analyses and visualization of geo-spatial data and an introduction into natural language processing and text mining of large textual data. Short lectures will be interspersed with hands-on practical exercises with plenty of opportunity to work with real data of various types.


Who is this course suitable for?
No prior knowledge is assumed for this course other than having basic IT skills and basic statistical understanding.
Fees
£100 - Students
£200 - Academic, public and charitable sector employees
£400 - Other

Tableau Workshop<https://www.cdrc.ac.uk/events/tableau-workshop-2/>

17th Jun 2019 @ 9:30 am - 4:30 pm

Leeds Institute for Data Analytics, University of Leeds

Course Tutor: Roy Ruddle

Due to licensing restrictions, we regret that this course is not available to the private sector.

This 1-day interactive course provides a practical introduction to data visualization with Tableau Desktop, an industry-leading visualization tool. You will learn how to create effective visualizations by avoiding common mistakes and how to use Tableau by creating visualizations that range from bar and line charts to heat maps and geographic maps. You'll then have the opportunity to apply your knowledge by tackling a series of data analysis 'challenges'. The majority of the course will involve hands-on practical exercises.


Cost:

£70 (students)

£120 (academic, public and charitable sector employees)
[Not open to private sector due to licensing restrictions]


 Spatial Analytics for Public Health Researchers<https://www.cdrc.ac.uk/events/spatial-analytics-for-public-health-researchers/>

18th October 2019 @ 9:30 am - 4:30 pm

Leeds Institute for Data Analytics, University of Leeds

Course Tutor: Michelle Morris

This 1 day course offers an introduction to spatial analytics in a public health context. As spatial data sets get larger, more sophisticated software needs to be harnessed for their analysis. R is now a widely used open source software platform for statistical analysis and is increasingly popular for those working with spatial data thanks to its powerful analysis and visualisation packages. This course introduces the basics of how R can be used for spatial data. The course will begin with an overview of different spatial units and how they fit together. Public health examples will be used to illustrate the relevance of using each of these units. You will work through examples of how spatial units can be added into existing data sets. In the afternoon you will generate your first map using public health data.


Who is this course suitable for? This course is for researchers who want to start looking at spatial or social variations in their data and generating maps to present results. The course will assume that your knowledge of spatial scales and generation of maps is zero. Examples will all be from a public health context.

Cost:

£70 (students)

£120 (academic, public and charitable sector employees)

£300 (private sector)



Please click on the title for more information on content or to make a booking.

Please email Kylie Norman<mailto:[log in to unmask]> for further information or if you are booking using a Leeds internal account.



Best Wishes,



Kylie Norman

Administrative Assistant

Consumer Data Research Centre (CDRC)



Leeds Institute for Data Analytics (LIDA)

Level 11, Worsley Building

University of Leeds

LS2 9JT



Email: [log in to unmask]<mailto:[log in to unmask]>

Tel: 0113 3430242

Please visit our website: http://cdrc.ac.uk<http://cdrc.ac.uk/>

You may leave the list at any time by sending the command

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