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Cardiff School of Computer Science and Informatics Coursework Assessment Pro-forma
Module Code: CMT218
Module Title: Data Visualisation
Lecturer: Dr Martin Chorley
Assessment Title: Data Analysis and Visualisation Creation Assessment Number: 2
Date Set: 9th March 2020
Submission Date and Time: 4th May 2020 at 9:30am Return Date: 3rd June 2020
This assignment is worth 70% of the total marks available for this module. If coursework is submitted late (and where there are no extenuating circumstances):
1 If the assessment is submitted no later than 24 hours after the deadline, the mark for the assessment will be capped at the minimum pass mark;
2 If the assessment is submitted more than 24 hours after the deadline, a
mark of 0 will be given for the assessment.
Your submission must include the official Coursework Submission Cover sheet, which can be found here:
https://docs.cs.cf.ac.uk/downloads/coursework/Coversheet.pdf
Submission Instructions
The coursework submission should consist of two items: a coursework coversheet, and your submission for the coursework in your chosen format, as explained in the next section
Description
Type
Name
Cover sheet
Compulsory
One PDF (.pdf) file
[student number].pdf
Data Analysis and Visualisation
Compulsory
One zip archive (.zip) containing all code/outputs used to analyse and visualise data
DAV_[student number].zip
Process Report and Evaluation
Compulsory
One PDF (.pdf) or Word file (.doc or .docx)
PR_[student_number] .pdf/.doc/.docx
Any deviation from the submission instructions above (including the number and types of files submitted) will result a reduction in marks for that assessment or question part of 10%.
Staff reserve the right to invite students to a meeting to discuss coursework submissions

Assignment
You are asked to carry out an analysis of a dataset(s) and to present your findings in the form of a report and visualisation(s), along with a record and evaluation of your analysis.
You should find one or more freely available dataset(s) on any topic, from a reliable source. You may wish to choose something from data.gov.uk or ons.gov.uk for example.
You should then carry out an analysis of this data to determine what the data tells you about its particular topic and should visualise this data in a way that allows a user to understand the data and what the data shows. You can use any language or tool you like to carry out both the analysis and the visualisation, but all code used must be submitted as part of the coursework. For example, you may wish to extract, transform and analyse the data using Python, and then create visualisations using d3.js.
You should create a short (2-4 page) report of your process that includes a description of your analysis methods and the procedure used to create your visualisation. This record should show the development of the resulting visualisation(s), including any prototype or rejected visualisations/analyses. Most importantly, it should also include a reflective evaluation of your finished analysis.
Important! It is expected that each student will choose a different dataset. Once you have chosen your dataset(s) for analysis, you should complete the form at http://bit.ly/cmt218- 1920-cw2 with your selection to confirm it is a unique choice. Dataset allocation will be done on a first-come, first-served basis, so do not delay, as another student may ¡®claim¡¯ the dataset first! Data selection should be completed by 20th March at 5PM. Any data redistribution as part of your submission must abide by the licence under which the data was obtained.
Learning Outcomes Assessed
3. Examine and explore data to find the best way it can be visually represented
4. Access web APIs and data sources, retrieve and manipulate data
5. Create static, animated and interactive visualisations of data
6. Critically reflect upon and discuss the merits and shortcomings of their own visualisation work

Criteria for assessment
Credit will be awarded against the following criteria.
Component & Contribution
Fail
Pass
Merit
Distinction
Dataset selection and analysis (10%)
No real data used, or dataset ¡®fake¡¯
No/basic analysis of data
Real-world data selected
Cursory high-level analysis of data
Real-world data selected
Data analysed in detail
Multiple real- world datasets on similar theme selected
Visualisation and Data Presentation (60%)
None/poor visualisation of data
Poor data presentation
No story conveyed to user, story/findings unclear
Data visualised appropriately Message/story clear to end user
Multiple appropriate visualisations End user able to explore/interpret data and affect display Message/story clear
Multiple appropriate visualisations with interaction and/or appropriate animation
End user able to explore/interpret data and/or affect display Message/story clear
Process Report and Evaluation (30%)
No report/report lacking in content Little to no evaluation
Analysis and visualisation process described well.
Some effort at evaluation
Analysis and visualisation process well documented. Reasonable evaluation
Analysis and visualisation process thoroughly documented. Insightful evaluation
Feedback and suggestion for future learning
Feedback on your coursework will address the above criteria. Individual feedback and marks will be returned on 3rd June 2020 via email, with further cohort feedback given by video.
Feedback from this assignment will be useful your dissertation.
Questions
Questions about the assignment can be posted to the COMSC StackOverflow site: https://stackoverflow.com/c/comsc using the tag cmt218-cw