Consider the linear programs
\begin{array}{|ccc|} \hline Primal: & A\vec{x} \leq \vec{b} \hspace{.5cm} & \max \vec{c}^T\vec{x} \\ \hline \end{array} \begin{array}{|ccc|} \hline Dual: & \vec{c} \leq \vec{y}^TA \hspace{.5cm} & \min \vec{y}^T\vec{b} \\ \hline \end{array}
The weak duality theorem states that if $\vec{x}$ and $\vec{y}$ satisfy the constraints then $\vec{c}^T\vec{x} \leq \vec{y}^T\vec{b}$. It has a short and slick proof using linear algebra: $\vec{c}^T\vec{x} \leq \vec{y}^T A \vec{x} \leq \vec{y}^T\vec{b}$.
The strong duality theorem states that if the $\vec{x}$ is an optimal solution for the primal then there is $\vec{y}$ which is a solution for the dual and $\vec{c}^T\vec{x} = \vec{y}^T\vec{b}$.
Is there a similarly short and slick proof for the strong duality theorem?