Yesterday
was the first PASS SQL Saturday Business Analytics event in London and Europe. This event wouldn’t have been possible without
the event organiser Jen Stirrup and a whole raft of other people. It was an amazing privilege to help at the
event also along side my colleague Jason
Linham for the Data Community. The purpose
of the event for Business Data now and future: interacting with
data to drive the business, at the velocity of the business. This
event supplements the core SQL Server community events such as SQLBits, PASS
SQL Saturdays and Local User Groups. The event was for those people Business Analytics and Business
Intelligence professionals who were interested in knowing more about analytical
features in Excel, Big Data, Azure Machine Learning, Hadoop, R and SQL Server
Business Intelligence.
The keynote was presented by Jonathan Woodward, Microsoft UK’s Business Lead for BI, Analytics, Big Data and Data Science on Data Culture : From BI & Analytics to Big Data and Data Science.
There was an introductory session on predictive analytics which covered the history of data mining, algorithm choice and the CRISP-DM methodology. The CRISP-DM (cross-industry process for data mining) methodology is a methodology for providing a robust structured approach to data mining.
Image from: http://www.sv-europe.com/crisp-dm-methodology/
A few useful links to find
out more
R
Programming https://www.coursera.org/course/rprog
There were various sessions
on excel charts with a strong emphasis on never using the 3Dcharts or cones as a choice for data visualization. (Edward Tufte, The Visual Display of Quantitative
Information is a recommended read)
A few resources to look at
Peltier Tech Excel Charts
and Programming Blog http://peltiertech.com/
chandoo.org http://chandoo.org/wp/
www.excelcharts.com/ for dashboards
One of my favourite
sessions was delivered by Mark Wilcock on Using R, Cubes And Data Visualisation
To Answer “What If” Questions. The session provided some interested insight into
how data exploration and data munging lead to data visualization and drew on a
combined tool set. It was very interesting to see the benefits and
disadvantages of each area R, Excel, SQL and Cubes across the Load, Model and Visualization
stack. He recommended
watching a presentation delivered by Prof. Mark Whitehorn, School of Computing,
University of Dundee on the Monte Carlo scenario.
Microsoft Finance
shared how they used the full set of BI tools to deliver finance dashboard and
drilldown reports.
The day
concluded with an excellent session from Chris Webb on the usage scenarios for
Power Query and the use of the M language.
This was a fun
and informative day which I hope will be repeated next year.