Maximization vs Minimization in the Simplex Method
Publicado el June 27, 2026 · por Simplex Method Calculator Editorial Team
The simplex method solves both maximization and minimization linear programs. The mechanics are almost identical - only the optimality test and starting setup change slightly.
Maximization
In a maximization problem you increase the objective Z as much as the constraints allow. The entering variable is the column with the most positive Cj − Zj value, and the tableau is optimal when every Cj − Zj ≤ 0.
For example, Maximize Z = 3x₁ + 5x₂ subject to x₁ + 2x₂ ≤ 14 and x₁ + x₂ ≤ 8 gives the optimum x₁ = 2, x₂ = 6, Z = 36. Solve it on the maximization calculator.
Minimization
There are two common ways to minimize:
- Convert to maximization: minimizing Z is the same as maximizing −Z. Solve the maximization problem and negate the result.
- Work directly: choose the most negative Cj − Zj as the entering variable and stop when every Cj − Zj ≥ 0.
Minimization problems frequently use ≥ constraints (for example, “at least” requirements in the diet problem), which need surplus and artificial variables. The minimization calculator handles this automatically.
A Quick Tip
Whichever direction you need, write each constraint on its own line and keep the objective in the form like 3x1 + 5x2. The step-by-step calculator then shows every tableau, the pivot at each iteration, and the final optimal value - so you can learn the method while you solve real problems.