# Description The process began with utilizing average weighted grade data from a table to determine the recovery rate and processing costs. These values were then applied in the cut-off grade calculation: Cut-Off Grade = Processing Cost / ((Net Price) * Recovery). The average weighted grade and net price were sourced directly from the table. Finally, Python was employed to create graphs illustrating the cut-off grade, recovery rate, and processing cost trends. Cut-Off Grade = Processing Cost / ((Net Price) * Recovery) Recovery = Rmax​ * (1 − e^(−k*G)) Processing Cost = a + b*G # Processing Cost Formulas 1. Fixed + Grade-Dependent Cost Model processing cost = C0​ + C1/G​​ 2. Regression from Real Cost Data (Realist) Linear: C = a + bG Inverse or Logarithmic: C = a + b/G or C = a*log⁡(G) + b 3. Tabulated Cost Based on Grade Table equivalent for the given grade # Recovery Formulas 1. Empirical Linear Model recovery = a + b × grade 2. Exponential or Logistic Model (Realist) recovery = Rmax​ x (1−e^(−k⋅G)) 3. Stepwise or Tabulated Recovery Table equivalent for the given grade