
Palindrome testing with pointers
This Practice
bool isPalindrome(char* cstr) { char* front = cstr; char* back = cstr + strlen(cstr)−1; while (front < back) { // Complete code here } return true; } |
Here is a sample main function for quick and dirty testing:
int main() { char s1[50] = "neveroddoreven"; char s2[50] = "not a palindrome"; cout << isPalindrome(s1) << endl; // true cout << isPalindrome(s2) << endl; // false return 0; } |

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