ISYS1055 Database Concepts
Assessment details
Part A: Understanding the Data
In this assignment, we are working with the publicly available dataset: A Global Database of COVID-19 Vaccinations. Further details about this dataset are available in the article available through the following URL: https://www.nature.com/articles/s41562-021-01122-8. The abstract of the article is as follows.
A live version of the vaccination dataset and documentation are available in a public GitHub repository at https://github.com/owid/covid-19-data/tree/master/public/data/vaccinations. These data can be downloaded in CSV and JSON formats.
For the purposes of completing this assignment, we are only using the following files. You are required to review and analyse the dataset available in these files. You will find that reviewing the rest of the files, even if not listed below, will help you to form a better understanding about the big picture.
FILE NAME | DESCRIPTION | |
1 | locations.csv | Country names and the type of vaccines administered. Each line represents the last observation in a specific country. Refer to README.md for the details. |
2 | us_state_vaccinations.csv | History of observations for various locations in the US. |
3 | vaccinations-by-age-group.csv | History of observations for vaccinations of various age groups in each country. |
4 | vaccinations-by- manufacturer.csv | History of observations for various types of vaccines used in each country. |
5 | vaccinations.csv | Country-by-country data on global COVID-19 vaccinations. Each line represents an observation date. Refer to README.md for the details. |
6 | country_data/Australia.csv | Daily observations of vaccination in Australia. |
7 | country_data/United States.csv | Daily observations of vaccination in the US. |
8 | country_data/France.csv | Daily observations of vaccination in France. |
9 | country_data/Israel.csv | Daily observations of vaccination in Israel. |
To complete the tasks in the following sections, you are required to review and analyse the dataset that is available in the named files.
Part B: Designing the Database (10%)
Task B.1 Produce an ER diagram for a relational database that will be able to store the given dataset.
It is important to note that the given CSV files are not necessarily representing a good design for a relational database. It is your task to design a database that will adhere to good design principles that were taught throughout the course. This means your database schema will not match the structure of the CSV files and, therefore, you will require to manipulate the structure of the dataset (and not the data itself) to import it into your database. Importing the data is required to complete Task C.2.
The ER diagram must be produced by Lucidchart similar to the exercises that were completed in in the course. UML notation is expected and using other notations will not be acceptable. Including a high-quality image representing your model is important, which can be achieved using Export function of Lucidchart.
You are also required to transform the ER diagram into a database schema that will be used in the next part of the assignment.
Creating a good database design typically involves some database normalisation activities. You should document your normalisation activities and support them with good reasoning. This typically involves explaining what the initial design was, what the problem was, and what changes have been made to rectify the issue.
The expected outcome of completing this task is one PDF file named model.pdf containing the following sections.
- Database ER diagram and, if needed, a reasonable set of
- Explanation of normalisation challenges and the resulting
- Database
Part C: Creating the Database and Importing Data (10%)
Task C.1 Produce one SQL script file named database.sql. This script file requires all the SQL statements necessary to create all the database relations and their corresponding integrity constraints as per your proposed design in Part B. The script file must run without any errors in
SQLite Studio and contain necessary commenting to separate various relations. Note that this script is not supposed to store any data into the relations.
The expected outcome of completing this task is one script file with the specific name of database.sql.
Task C.2 Create a database file named Vaccinations.db. Import the given dataset into your database.
To complete this task, you may need to change the format of the CSV files to match the attributes of your designed database. You can use a spreadsheet editor such as Microsoft Excel.
The next step is to import the spreadsheets into the database you create in SQLite Studio. To complete this task, use the menu option Tools – Import in SQLite.
The expected outcome of completing this task is one database file named Vaccinations.db, which must contain all the data that is stored in the CSV files named in Table 1.
Part D: Data Retrieval and Visualisation (15%)
Now that you have created and populated a database, it is time to create some queries to investigate the data in various ways. In addition to writing the required queries, you are also asked to produce data visualisation for the results of your queries.
The tasks in this section represent the queries that must be supported. Each query must consist of one SQL statement. It would be acceptable to use several nested queries, combine several SELECT statements with various operators etc. However, it would not be acceptable to have multiple and separated queries for each task.
After you have written each query, you are expected to produce a data visualisation for each result set. You have the freedom to choose the tool for creating your visuals (e.g., Excel, Google Charts, Tableau) as well as the visualisation techniques (e.g., charts, plots, diagrams, maps). Completing this portion of the work will require that you understand the nature of the results of each query, undertake research to choose a visualisation tool you are comfortable with, decide about the best technique to visually represent each result set, and produce the visualisation. Answers to tasks in Part D that are not supported by a visualisation can achieve up to 80% of the grade associated with each task.
The expected outcome of completing this task is as follows.
- One SQL script file named sql containing all the queries developed for the tasks in this section. It is important that you add comment lines to separate the queries and indicate which task they belong to. Note that valid SQL comments must not generate errors in SQLite Studio. The marker of your work will use this file to execute and test your queries.
- A PDF file named pdf containing the following elements for each task.
- The SQL query
- a snapshot of the first 10 results of your query. The snapshot must also show the total number of results retrieved by the query. A sample snapshot is provided below for your reference.
- Data visualisation
List of Tasks
Task D.1 For any two given dates (i.e., you can assume any two dates, e.g., 1 April and 3 April), list the dates, the total number of vaccines administered in each observation date in each of all countries, and the difference between the administered vaccines. Each row in the result set must have the following structure. (Note: OD2 is after OD1)
Observation Date 1 (OD1) | Country Name (CN) | Administered Vaccine on OD1 (VOD1) | Observation Date 2
(OD2) |
Administered Vaccine on OD2 (VOD2) | Difference of totals
(VOD1-VOD2) |
Figure 2: Column Headers in the Result Set for Task D.1
Task D.2 Find the countries with the cumulative numbers of COVID-19 doses administered by each bigger than the average doses administered by all countries. Produces a result set containing the name of each country and the cumulative number of doses administered in that country. Each row in the result set must have the following structure.
Task D.3 Produce a list of 10 countries with the biggest numbers of vaccine types, with the type of vaccines (e.g., Oxford/AstraZeneca, Pfizer/BioNTech) administered in each country. For a country that has administered several types of vaccine, the result set is required to show several tuples
reporting each type of vaccine in a separate tuple. Each row in the result set must have the following structure.
Task D.4 There are different data sources used to produce the dataset. Produce a report showing the total number of vaccines administered according to each data source (i.e., each unique URL). Order the result set by source name and URL. Each row in the result set must have the following structure.
Task D.5 How does various countries compare in the speed of their vaccine administration? Produce a report that lists all the observation dates in 2022 and, for each date, list the total number of people fully vaccinated in each one of the 4 countries used in this assignment.
[Date, Australia, United States, England, China]
Submission Format
You are required to submit the files with the exact names as below.
- sql
- db
- sql
In the previous sections of the assignment, the expected content of each of the files is explained in detail.
Referencing guidelines
Use RMIT Harvard referencing style for this assessment.
You must acknowledge all the courses of information you have used in your assessments.
Refer to the RMIT Easy Cite referencing tool to see examples and tips on how to reference in the appropriated style. You can also refer to the library referencing page for more tools such as EndNote, referencing tutorials and referencing guides for printing.
Academic integrity and plagiarism
Academic integrity is about honest presentation of your academic work. It means acknowledging the work of others while developing your own insights, knowledge, and ideas.
You should take extreme care that you have:
- Acknowledged words, data, diagrams, models, frameworks and/or ideas of others you have quoted (i.e., directly copied), summarised, paraphrased, discussed, or mentioned in your assessment through the appropriate referencing
- Provided a reference list of the publication details so your reader can locate the source if This includes material taken from Internet sites.
If you do not acknowledge the sources of your material, you may be accused of plagiarism because you have passed off the work and ideas of another person without appropriate referencing, as if they were your own.
RMIT University treats plagiarism as a very serious offence constituting misconduct. Plagiarism covers a variety of inappropriate behaviours, including:
- Failure to properly document a source
- Copyright material from the internet or databases
- Collusion between students
For further information on our policies and procedures, please refer to the University website.
Assessment declaration
When you submit work electronically, you agree to the assessment declaration.
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