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BMD0004 - Managing Big Visual Data Assignment

Assignment Task

For this assignment you will be required to prepare and submit a data analyticsreport, which can be based on societal, economic, or business-related data. You are tasked with identifying an issue or a problem, based on this problem you will need to:

  • Provide a data brief (what you are intending to investigate and why)
  • Discuss the data (Structured vs unstructured etc)
  • Identify the key metrics of the data (what and why)
  • Process/clean and prepare the data (describe the process)
  • Using storyboards alongside graphs and charts visualise the data
  • Identify strategic relationships and correlation between the metrics
  • Provide strategic insight (what, how, why)
  • What are your key recommendations based on your analysis?
  • There are a large number of datasets you can use to help you define your question and present your results (see below). You can use one or more than one but the focus is on what you find and what keen insight you provide

This section is for information only.

The assessment task outlined above has been designed to address specific validated learning outcomes for this module. It is useful to keep in mind that these are the things you need to show in this piece of work.

  • On compleion of this module, students will need to demonstrate:
  • Demonstrate a conceptual and critical understanding of the use of data sources, their management and the manipulation in business contexts
  • Critically evaluate visual data presentation approaches and their merits in communicating information to multiple audiences
  • Utilise a range of software and datasets to develop and operationalise an appropriate methodology for the investigation of a problem
  • Visualise and communicate the analysis of data sets to a business audience.
  • Justify the use of data visualisation methods as a means of communicating information
  • Evaluate, compare and contrast the suitability of modelling approaches for different big data domains.