
Concept explainers
a.
Explanation of Solution
Given:
Given that the disk drive has the following features:
Number of surfaces = 5
Tracks per surface = 1024
Sectors per track = 256
Bytes per sector = 512 bytes
Seek time = 8ms
Rotational speed = 7500rpm
To find: Capacity of the drive
Solution:
The capacity of the drive is manipulated by multiplying number of surfaces, tracks per surface, sectors per track and bytes per sector.
b.
Explanation of Solution
Given:
Given that the disk drive has the following features:
Number of surfaces = 5
Tracks per surface = 1024
Sectors per track = 256
Bytes per sector = 512 bytes
Seek time = 8ms
Rotational speed = 7500rpm
To find: Access time
Solution:
The summation of rotational delay and seek time is called access time.
Rotational delay =
c.
Explanation of Solution
Faster disk:
“No”, this disk not faster than the disk that was specified in Exercise 28 because, the access time “11ms” in “Exercise 28” is fast...

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Chapter 7 Solutions
Essentials of Computer Organization and Architecture
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