5 If you have a software with a size of 13,000 line of code and contains defects of 50 then calculating the density of defects per 1000 line of code :is (2 ????) defects/KLOC 2.6 defects/KLOC 8.3 defects/KLOC 6.2 defects/KLOC 3.8
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To do this, we divide the number of defects by the number of lines of code and then multiply by 1000. So, the calculation would be: Defects per 1000 lines of code = (Number of defects / Number of lines of code) * 1000 In this case, the number of defects is 50 Show more…
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