Open Framework, Information Management Strategy & Collaborative Governance | Data & Social Methodology - MIKE2.0 Methodology
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Detailed Analytical Requirements Deliverable Template

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This article is a stub. It is currently undergoing major changes as it is in the very early stages of development and is only a placeholder. Please help improve MIKE2.0 by adding to this article.
This deliverable template is used to describe a sample of the MIKE2.0 Methodology (typically at a task level). More templates are now being added to MIKE2.0 as this has been a frequently requested aspect of the methodology. Contributors are strongly encouraged to assist in this effort.
Deliverable templates are illustrative as opposed to fully representative. Please help add examples to this template that are representative of the proposed output.

The Detailed Analytical Requirements task is specific to gathering the detailed information requirements for a Business Intelligence System. These requirements tend to be more complex, composite requirements that are dependent on data from many systems and detailed analytics. Examples include:

  • Standard Reports and Queries (Operational Information) - monitoring operational performance against business objectives and analysing relatively short term trends where requirements for queries are well known, definable, and repetition is required.
  • Ad-hoc Query Capability - allow business community independence from IS for information access. Evolve often-used queries into standard reports over time.
  • Statistical Analysis Systems - perform complex statistical operations on selected sets of variables and their observations.
  • Data Pattern Analysis/Data Mining - where measurement criterion is not well understood or very complex. These applications may require multidimensional visualization tools or fuzzy logic query engines.


Example for sample Detailed Analytical Requirements

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