I am working on an `Agent`

class in Python 2.7.11 that uses a Markov Decision Process (MDP) to search for an optimal policy **π** in a `GridWorld`

. I am implementing a basic value iteration for 100 iterations of all `GridWorld`

states using the following Bellman Equation:

is the probability function of successfully transitioning to successor state*T(s,a,s')***s'**from current state**s**by taking action**a**.is the reward for transitioning from*R(s,a,s')***s**to**s'**.(gamma) is the discount factor where*γ***0 ≤ γ ≤ 1**.is a recursive call to repeat the calculation once*V*_{k}(s')**s'**has been reached.is representative of how after enough*V*_{k+1}(s)**k**iterations have occured, the**V**iteration value will converge and become equivalent to_{k}**V**_{k+1}

This equation is derived from taking the maximum of a **Q** value function, which is what I am using within my program:

When constructing my `Agent`

, it is passed an MDP, which is an abstract class containing the following methods:

```
# Returns all states in the GridWorld
def getStates()
# Returns all legal actions the agent can take given the current state
def getPossibleActions(state)
# Returns all possible successor states to transition to from the current state
# given an action, and the probability of reaching each with that action
def getTransitionStatesAndProbs(state, action)
# Returns the reward of going from the current state to the successor state
def getReward(state, action, nextState)
```

My `Agent`

is also passed a discount factor, and a number of iterations. I am also making use of a `dictionary`

to keep track of my values. Here is my code:

```
class IterationAgent:
def __init__(self, mdp, discount = 0.9, iterations = 100):
self.mdp = mdp
self.discount = discount
self.iterations = iterations
self.values = util.Counter() # A Counter is a dictionary with default 0
for transition in range(0, self.iterations, 1):
states = self.mdp.getStates()
valuesCopy = self.values.copy()
for state in states:
legalMoves = self.mdp.getPossibleActions(state)
convergedValue = 0
for move in legalMoves:
value = self.computeQValueFromValues(state, move)
if convergedValue <= value or convergedValue == 0:
convergedValue = value
valuesCopy.update({state: convergedValue})
self.values = valuesCopy
def computeQValueFromValues(self, state, action):
successors = self.mdp.getTransitionStatesAndProbs(state, action)
reward = self.mdp.getReward(state, action, successors)
qValue = 0
for successor, probability in successors:
# The Q value equation: Q*(a,s) = T(s,a,s')[R(s,a,s') + gamma(V*(s'))]
qValue += probability * (reward + (self.discount * self.values[successor]))
return qValue
```

This implementation is correct, though I am unsure why I need `valuesCopy`

to accomplish a successful update to my `self.values`

dictionary. I have tried the following to omit the copying, but it **does not work** since it returns slightly incorrect values:

```
for i in range(0, self.iterations, 1):
states = self.mdp.getStates()
for state in states:
legalMoves = self.mdp.getPossibleActions(state)
convergedValue = 0
for move in legalMoves:
value = self.computeQValueFromValues(state, move)
if convergedValue <= value or convergedValue == 0:
convergedValue = value
self.values.update({state: convergedValue})
```

My question is why is including a copy of my `self.values`

dictionary necessary to update my values correctly when `valuesCopy = self.values.copy()`

makes a copy of the dictionary anyways every iteration? Shouldn't updating the values in the original result in the same update?

`util.Counter()`

? – styvane Apr 2 '16 at 7:38`Counter`

is a class that extends`dictionary`

and defaults all key values to 0. There doesn't appear to be any`update()`

method in its definition – Jodo1992 Apr 2 '16 at 7:41