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The question and data depend on your ID and major. Any similarity will be reported to the Office of Academic Integrity. Your lab assignment is unique to you.

Write Name

1

2 Observe

Write ID

Select Major

Step 3: Fill your name, ID, and select your major.

GEN101: Introductory Artificial Intelligence
Lab 1: Data Cleaning,
Visualization & Normalization
Guidelines
Step 1: Study ALL Topics Covered So Far
• Topic 2: What is AI?
• Topic 3: Working with Data
Advise: Redo all data cleaning activities
done in class
Step 2: On Wednesday April 21st at 06:00 pm in the Labs Folder
Download the Excel File
GEN101 – Lab 1.xls
Step 3: Fill your name, ID, and select your major.
Write Name
1
Write ID
1
Select Major
1
2
2
Observe
Observe
The question and data
depend on your ID and
major. Any similarity will be
reported to the Office of
Academic Integrity. Your lab
assignment is unique to
you.
Step 4: Solve the Problem
Follow the post-it note
instructions and fill all the
white cells (boxes). If it is
empty and white, you are
expected to fill it. Use Excel
to make the calculations.
Save your work!
Fill
Fill
Step 4: Solve the Problem
Fill
Follow the post-it note
instructions and fill all the
white cells (boxes). If it is
empty and white, you are
expected to fill it. Use Excel
to make the calculations.
Save your work!
Fill
Fill
Step 4: Solve the Problem
No cells should be left
empty! You may fill the
Fill
cell with “0” instead.
Fill
Fill
Step 5: Submit Your Excel File Uncompressed before 11:59pm on Saturday
Step 6: Wait for Grades
• Grades are final
• This lab assignment is individual. No cooperation is allowed with
anyone
• Late assignments receive a -50% penalty
• Assignments are not accepted after the last day of classes and will
receive NO credit
• Anti-cheating measures are embedded within the Excel. Cheating will
be reported
• Respondus Lockdown and Monitor will not be used for this lab
Name
Course Code
GEN101
Course Name
Introductory Artificial Intelligence
Lab No
Welcome to Lab 1. Please fo
below to start working on y
1
Lab Title
Data Cleaning, Visualization and Normalization
Instructors
Prof. Mohammed Ghazal
Eng. Maha Yaghi
Eng. Malaz Osman
Eng. Marah AlHalabi
Eng. Tasnim Basmaji
Eng. Yasmin Abu-Haeyeh
1. Insert your name and student ID u
2. Select your major from the drop
This will generate a unique set of da
3. Follow the data cleaning steps wi
your question.
For a successful completion of the a
bordered White cells.
Note that any similarity detecte
Office of Academic Intergrity (OAI).
ID
Major
Select Your Major
o Lab 1. Please follow the instructions
art working on your lab assignment.
and student ID under Name and ID.
major from the drop-down list.
ate a unique set of data for you only.
data cleaning steps with the same order to answer
ul completion of the assignment, you need to fill all
any similarity detected will be reported to the
emic Intergrity (OAI).
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Step 1: Clean
your data
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Oman
Canada
Bahrain
UK
USA
Step 2:
your data using
Histograms and a
scatterplot
Step 2: Visualize
your data using
Histograms and a
scatterplot
Xmin ( )
Xmin ( )
Xmax ( )
Mean ( )
Step 3:
data using
and z-
Standard Deviation
( )
Step 3: Normalize your
data using linear scaling
and z-score
Xmin ( )
Xmax ( )
Mean ( )
Normalization – Z-Score
Normalization – Linear Scaling
Standard
Deviation ( )

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