
What will the following
#include <iostream>
#include <memory>
using namespace std;
class First
{
protected:
int a;
public:
First (int x = 1) { a = x: }
virtual void twist() { a *= 2; }
int getVal() { twist(); return a; }
};
class Second : public First
{
private:
int b:
public:
Second(Int y = 5) { b = y: }
virtual void twist() { b *= 10; }
};
int main()
{
shared_ptr<First> objectl = make_shared<First>();
shared_ptr<Second> object2 =make_shared<Second>();
cout << objectl->getVal() << endl:
cout << object2->getVal() << endl:
return 0;
}

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