
Concept explainers
a. Command used to copy a file from one location to another in operating system:
Explanation of Solution
The first way to copy a file from one location to another in windows
b. Command used to show the directory on a disk in operating system:
Explanation of Solution
To show the directory on the disk in windows
c. Command used to execute a program in operating system.
Explanation of Solution
To execute a program in windows
The other way to execute file is open the command line and enter the command

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Chapter 3 Solutions
Computer Science: An Overview (12th Edition)
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