辅导代写接单-ITS 70704

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 SCHOOL OF COMPUTER SCIENCE Master of Applied Computing (MAC) Assignment 2 (Weightage 15%)

April 2023 Semester

This paper consists of FOUR (4) pages, inclusive of this page.

 MODULE NAME MODULE CODE DUE DATE/TIME PLATFORM

: Data Visualization

: ITS 70704

: 28th April 2023 / 12:00 noon : MyTIMeS

  Student Name Student ID

Score out of 15

 Page 1 of 4

 

Module Learning Outcome (MLO)

MLO 2: Generate data visualization strategies as solutions to different use cases using scientific and critical thinking skills.

Assessment Criteria

Assignment 2 15% MLO 2 Formative Individual 3,4 4 Assignment

C1, C2, C3, C5

  Assessment Task

   Weightage

   MLO Assessed

   Formative/ Summative

   Assessment Instrument

   Topics

   Week

   MCQ2.0

         C1 = Knowledge & Understanding; C2 = Cognitive Skills; C3A = Practical Skills; C3B = Interpersonal Skills; C3C = Communication Skills; C3D = Digital Skills; C3E = Numeracy Skills; C3F = Leadership, Autonomy & Responsibility; C4A = Personal Skills; C4B = Entrepreneurial Skills; C5 = Ethics & Professionalism.

Assignment 2: Global Inflation Dataset - (1970~2022)

The global economy is highly complex, and understanding economic trends and patterns is crucial for making informed decisions about investments, policies, and more. One key factor that impacts the economy is inflation, which refers to the rate at which prices increase over time. The Global Energy, Food, Consumer, and Producer Price Inflation dataset provides a comprehensive collection of inflation rates across 206 countries from 1970 to 2022, covering four critical sectors of the economy.

Finally, the Global Producer Price Inflation dataset provides a detailed look at price changes at the producer level, providing insights into supply chain dynamics and trends. This data can be used to make informed decisions about investments in various sectors of the economy and to develop effective policies to manage producer price inflation.

In conclusion, the Global Energy, Food, Consumer, and Producer Price Inflation dataset provides a comprehensive resource for understanding economic trends and patterns across 206 countries. By examining this data, analysts can gain insights into the complex factors that impact the economy and make informed decisions about investments, policies, and more.

Based on the dataset Global Inflation Dataset - (1970~2022), produce at least THREE visualizations with proper justification as guided below. This dataset were collected from the official website of worldbank.org.

Below is the general guide of justification required for each visualizations;

1. Motivating curiosity.

2. People (stakeholder and audience).

3. Constraints (time, pressure, design and technology).

4. Deliverable (setting, medium, quantity and frequency).

5. Data transformation performed: cleaning, creating, and consolidating.

6. Data visualization: selection of graphical representation of information and data.

Deliverable

• Chart – Tableau file (twbx)

• Write-up - Word or PDF file

Page 2 of 4

 

Submission Requirements 1. Font type

: Times New Roman : 12

: 1.5

: Justify Text

: MS Word or PDF

: 5 — 10 pages (do not exceed the page limit)

 2. Font size

3. Line spacing

4. Alignment

5. Document type

6. Number of pages

7. Your full report should

consist of the following:

a) Cover page (Name, ID, Score)

b) Marking Rubric (attach as second page in the report)

c) Report of your answer script.

8. Start each chapter on a separate page.

9. All figures and tables are labelled properly.

10. File naming conventions: StudentName_AssignmentXX.pdf

Notes:

• Student is not allowed to transcribe directly (cut and paste) any material from another

source into their submission.

• Include in-text citation to support your answers and add the list of references at the

end of your report (APA format). The list of references is to be alphabetized by the

first author's last name, or (if no author is listed) the organization or title.

• The Turnitin similarity for this module is 20% overall and lesser than 1% from a

single source excluding program source code.

• Student is not allowed to use generative AI in this assignment.

Page 3 of 4

 

Marking Rubric

      Criteria Excellent Good Average Poor Your (8 - 10) (6 - 7) (4-5) (0-3) Score

  Motivating curiosity

   Comprehensive description and complete in all aspect

    Good description and cover most aspect

   Average description and cover some aspect

  Poor description and incomplete

      People

 Comprehensive description and complete in all aspect

  Good description and cover most aspect

 Average description and cover some aspect

Poor description and incomplete

    Constraints

   Comprehensive description and complete in all aspect

    Good description and cover most aspect

   Average description and cover some aspect

  Poor description and incomplete

      Deliverable

  Comprehensive description and complete in all aspect

   Good description and cover most aspect

  Average description and cover some aspect

 Poor description and incomplete

     Data Transformation

 Comprehensive description and complete in all aspect

  Good description and cover most aspect

 Average description and cover some aspect

Poor description and incomplete

    Data Visualization

   Comprehensive description and complete in all aspect

    Good description and cover most aspect

   Average description and cover some aspect

  Poor description and incomplete

     TOTAL

NOTE: Total marks will be adjusted to a maximum of 15% allocated for this assignment. COMMENTS:

     -END-

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