
a.
Data compression:
Data compression is a method in which the data present in the memory is compressed without losing any content.
The compression factor can be calculated using the following formula
Explanation of Solution
b.
Explanation:
The uncompressed size of the image is 7.14KB.
The compressed size of the given image is 1.96KB.
The compression factor can be calculated using the following formula,
Substitute “1.96KB” for “compressed_size” and “7
Explanation of Solution
c.
Explanation:
The uncompressed size of the image is 7.14KB.
The compressed size of the given image is 1.49KB.
The compression factor can be calculated using the following formula,
Substitute “1.49KB” for “compressed_size” and “7
Explanation of Solution
d.
Explanation:
The uncompressed size of the image is 7.14KB.
The compressed size of the given image is 1.11KB.
The compression factor can be calculated using the following formula,
Substitute “1.11KB” for “compressed_size” and “7
Explanation of Solution
e.
Explanation:
The uncompressed size of the image is 7.14KB.
The compressed size of the given image is 0.639KB.
The compression factor can be calculated using the following formula,
Substitute “0.639KB” for “compressed_size” and “7
Explanation of Solution
f.
Explanation:
The uncompressed size of the image is 7.14KB.
The compressed size of the given image is 0.556KB.
The compression factor can be calculated using the following formula,
Substitute “0.556KB” for “compressed_size” and “7

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The Essentials of Computer Organization and Architecture
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