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In physics, a common useful equation for finding the position s of a body in linear motion at a given time t, based on its initial position s0, initial velocity v0, and rate of acceleration a, is the following:
Write code to declare variables for s0, v0, a, and t, and then write the code to compute s on the basis of these values.

Explanation of Solution
Code for declaring variables
- A declaration of a variable is where a program says that it needs a variable.
- The declaration gives a name and data type for the variable.
- A variable cannot be used in the program unless it has been declared.
- It also asks for a particular value that can be placed in the variable.
- Hence the code for declaring variables s0,v0,a and t is
double s0 = 12.0;
double v0 = 3.5;
double a = 9.8;
double t = 10.0;
- The code for computing s on the basis of these values is
double s = s0 + v0 * t + 0.5 * a * t * t;
System.out.println(s);
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