I am supposed to come up with an mdp agent that uses policy iteration and value iteration for an assignment and compare its performance with the utility value of a state.

So how does a mdp agent, given that it knows the transition probabilities and rewards, know which action to move?

From my understanding, a mdp agent will perform policy iteration and given a policy, calculate the rewards that it gained while reaching the termination state. This policy is developed from value iteration algorithm