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The Weibull shape factor, often denoted by the parameter ( k ), is a key component of the Weibull distribution, which is used to model reliability and life data. This factor influences the distribution's shape: if ( k < 1 ), the failure rate decreases over time, indicating that early failures are more likely; if ( k = 1 ), the distribution represents a constant failure rate, typical of exponential decay; and if ( k > 1 ), the failure rate increases over time, suggesting wear-out failures are more common. Thus, the Weibull shape factor is crucial for understanding and predicting the behavior of systems over time.

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3d ago

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