Goal: This project will be used to integrate concepts developed from all the assignments in the second half of this class, specifically. You will identify a data driven business problem that requires preparation of the data. This preparation involves Extracting data (from 3 or more sources), Transforming (or cleaning) the data before Loading it into a database for analysis. In other words, you will experience, first-hand, the ETL process of Data management.
Options: You can take this project in one of two directions: (1) Identify a large file, clean the data and normalize it into three or more tables OR (2) Identify three or more large data sources, clean the data and merge them into a denormalized table for analysis. In both cases, you will need to identify what you plan to learn from the cleaned and loaded data.
Resource: This articleLinks to an external site.
In preparation for your project this term, I need you to do some digging to identify sources and ideas for a decent project.
There are a couple of decisions that have to be made. And so, I am making part of the project a “deliverable” so you can begin mulling over it. Most ETL tasks involve cleaning and integration. For integration, it is vital that you have an attribute that is common across all three data sets
Cleaning
Cleaning is one of the most important steps as it ensures the quality of the data in the data warehouse. Cleaning should perform basic data unification rules, such as:
Transform
The transform step applies a set of rules to transform the data from the source to the target. This includes
Data Integration
It is at this stage that you get the most value for the project. This typically means you are adding some attribute from a related set that adds ‘Color’ to the data. Perhaps Census data to labor data or other demographic data. The challenge is to locate data that are relatable.
Project direction: You will need to complete a datamart with significant pre-processing (ETL) activities.
Requirements:
Data sources: You are welcome to use datasets from work that has been sufficiently “anonymizedLinks to an external site.“. In fact this itself is a valuable transformation task that you can then use to protect your data and make it available for additional analysis/exploration. There are many public data sets that can be used (see “data sources” tab)
Submit: Use the text area to submit a project “proposal” that addresses the following points; I am not looking for an elaborate write up, but use these 4 prompts to develop 4 well-written paragraphs free from language/grammar errors. Please do not write it in Q&A format!
And finally, include
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