Existing methods to predict software reliability using the Markov chain are based on assumed state-transition probabilities. A new prediction approach applied to a nuclear plant’s feed-water system yielded results that were 96.90 percent accurate relative to the system’s actual reliability. Across 38 operational datasets, the average accuracy was 99.67 percent.