Difference between revisions of "ANLY482 AY2016-17 T2 Group19 Data"
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− | + | The raw data was collected from Company Z on the 12th of January 2016 and is described as follows: | |
+ | *Sales data from Pharmaceutical Wholesale Distributions | ||
+ | *Itemised transactions occurring in the years 2014 to 2016 | ||
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Revision as of 14:11, 26 February 2017
Contents
Background
In the pharmaceutical industry, it has historically been a challenge to manage hundreds of hospitals and clinics with sizeable differences in the types of drugs, disposable items and the sheer volume in respective purchase orders
While not exclusive to this industry alone, managerial decision making processes have historically relied heavily on transactional raw data and managerial experience
The data set that was used contains sales data from a medium-sized pharmaceutical company with customer base ranging from over the counter pharmacies to clinics around Singapore.
Data Description & Acknowledgement
The raw data was collected from Company Z on the 12th of January 2016 and is described as follows:
- Sales data from Pharmaceutical Wholesale Distributions
- Itemised transactions occurring in the years 2014 to 2016
Purpose of the model
Given the context of this data set...
Through these model...
Data Exploration
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Data Cleaning and Preparation
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-discuss the treatment and why the treatment-