
Fill in the blanks in each of the following:
Each class declaration that begins with keyword must be stored in a file that has exactly the same name as the class and ends with the .java filename extension.

Each class declaration, which begins with “public” keyword should be stored in a file that has exactly the same name as that of the class and ends with .java filename extension.
Explanation of Solution
“public” keyword:
- “public” refers to a Java keyword that declares a member’s access as public.
- Access modifiers are used to set boundaries for member variables and member functions.
- Public members can be retrieved from anywhere in the program.
- That is, they are visible to all other classes.
- Other classes can modify public fields unless the field is declared as final.
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