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games.py
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games.py
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"""Games, or Adversarial Search (Chapter 5)"""
from collections import namedtuple
import random
from utils import argmax
infinity = float('inf')
GameState = namedtuple('GameState', 'to_move, utility, board, moves')
# ______________________________________________________________________________
# Minimax Search
def minimax_decision(state, game):
"""Given a state in a game, calculate the best move by searching
forward all the way to the terminal states. [Figure 5.3]"""
player = game.to_move(state)
def max_value(state):
if game.terminal_test(state):
return game.utility(state, player)
v = -infinity
for a in game.actions(state):
v = max(v, min_value(game.result(state, a)))
return v
def min_value(state):
if game.terminal_test(state):
return game.utility(state, player)
v = infinity
for a in game.actions(state):
v = min(v, max_value(game.result(state, a)))
return v
# Body of minimax_decision:
return argmax(game.actions(state),
key=lambda a: min_value(game.result(state, a)))
# ______________________________________________________________________________
def alphabeta_search(state, game):
"""Search game to determine best action; use alpha-beta pruning.
As in [Figure 5.7], this version searches all the way to the leaves."""
player = game.to_move(state)
# Functions used by alphabeta
def max_value(state, alpha, beta):
if game.terminal_test(state):
return game.utility(state, player)
v = -infinity
for a in game.actions(state):
v = max(v, min_value(game.result(state, a), alpha, beta))
if v >= beta:
return v
alpha = max(alpha, v)
return v
def min_value(state, alpha, beta):
if game.terminal_test(state):
return game.utility(state, player)
v = infinity
for a in game.actions(state):
v = min(v, max_value(game.result(state, a), alpha, beta))
if v <= alpha:
return v
beta = min(beta, v)
return v
# Body of alphabeta_cutoff_search:
best_score = -infinity
beta = infinity
best_action = None
for a in game.actions(state):
v = min_value(game.result(state, a), best_score, beta)
if v > best_score:
best_score = v
best_action = a
return best_action
def alphabeta_cutoff_search(state, game, d=4, cutoff_test=None, eval_fn=None):
"""Search game to determine best action; use alpha-beta pruning.
This version cuts off search and uses an evaluation function."""
player = game.to_move(state)
# Functions used by alphabeta
def max_value(state, alpha, beta, depth):
if cutoff_test(state, depth):
return eval_fn(state)
v = -infinity
for a in game.actions(state):
v = max(v, min_value(game.result(state, a),
alpha, beta, depth + 1))
if v >= beta:
return v
alpha = max(alpha, v)
return v
def min_value(state, alpha, beta, depth):
if cutoff_test(state, depth):
return eval_fn(state)
v = infinity
for a in game.actions(state):
v = min(v, max_value(game.result(state, a),
alpha, beta, depth + 1))
if v <= alpha:
return v
beta = min(beta, v)
return v
# Body of alphabeta_cutoff_search starts here:
# The default test cuts off at depth d or at a terminal state
cutoff_test = (cutoff_test or
(lambda state, depth: depth > d or
game.terminal_test(state)))
eval_fn = eval_fn or (lambda state: game.utility(state, player))
best_score = -infinity
beta = infinity
best_action = None
for a in game.actions(state):
v = min_value(game.result(state, a), best_score, beta, 1)
if v > best_score:
best_score = v
best_action = a
return best_action
# ______________________________________________________________________________
# Players for Games
def query_player(game, state):
"""Make a move by querying standard input."""
print("current state:")
game.display(state)
print("available moves: {}".format(game.actions(state)))
print("")
move_string = input('Your move? ')
try:
move = eval(move_string)
except NameError:
move = move_string
return move
def random_player(game, state):
"""A player that chooses a legal move at random."""
return random.choice(game.actions(state))
def alphabeta_player(game, state):
return alphabeta_search(state, game)
# ______________________________________________________________________________
# Some Sample Games
class Game:
"""A game is similar to a problem, but it has a utility for each
state and a terminal test instead of a path cost and a goal
test. To create a game, subclass this class and implement actions,
result, utility, and terminal_test. You may override display and
successors or you can inherit their default methods. You will also
need to set the .initial attribute to the initial state; this can
be done in the constructor."""
def actions(self, state):
"""Return a list of the allowable moves at this point."""
raise NotImplementedError
def result(self, state, move):
"""Return the state that results from making a move from a state."""
raise NotImplementedError
def utility(self, state, player):
"""Return the value of this final state to player."""
raise NotImplementedError
def terminal_test(self, state):
"""Return True if this is a final state for the game."""
return not self.actions(state)
def to_move(self, state):
"""Return the player whose move it is in this state."""
return state.to_move
def display(self, state):
"""Print or otherwise display the state."""
print(state)
def __repr__(self):
return '<{}>'.format(self.__class__.__name__)
def play_game(self, *players):
"""Play an n-person, move-alternating game."""
state = self.initial
while True:
for player in players:
move = player(self, state)
state = self.result(state, move)
if self.terminal_test(state):
self.display(state)
return self.utility(state, self.to_move(self.initial))
class Fig52Game(Game):
"""The game represented in [Figure 5.2]. Serves as a simple test case."""
succs = dict(A=dict(a1='B', a2='C', a3='D'),
B=dict(b1='B1', b2='B2', b3='B3'),
C=dict(c1='C1', c2='C2', c3='C3'),
D=dict(d1='D1', d2='D2', d3='D3'))
utils = dict(B1=3, B2=12, B3=8, C1=2, C2=4, C3=6, D1=14, D2=5, D3=2)
initial = 'A'
def actions(self, state):
return list(self.succs.get(state, {}).keys())
def result(self, state, move):
return self.succs[state][move]
def utility(self, state, player):
if player == 'MAX':
return self.utils[state]
else:
return -self.utils[state]
def terminal_test(self, state):
return state not in ('A', 'B', 'C', 'D')
def to_move(self, state):
return 'MIN' if state in 'BCD' else 'MAX'
class Fig52Extended(Game):
"""Similar to Fig52Game but bigger. Useful for visualisation"""
succs = {i:dict(l=i*3+1, m=i*3+2, r=i*3+3) for i in range(13)}
utils = dict()
def actions(self, state):
return sorted(list(self.succs.get(state, {}).keys()))
def result(self, state, move):
return self.succs[state][move]
def utility(self, state, player):
if player == 'MAX':
return self.utils[state]
else:
return -self.utils[state]
def terminal_test(self, state):
return state not in range(13)
def to_move(self, state):
return 'MIN' if state in {1, 2, 3} else 'MAX'
class TicTacToe(Game):
"""Play TicTacToe on an h x v board, with Max (first player) playing 'X'.
A state has the player to move, a cached utility, a list of moves in
the form of a list of (x, y) positions, and a board, in the form of
a dict of {(x, y): Player} entries, where Player is 'X' or 'O'."""
def __init__(self, h=3, v=3, k=3):
self.h = h
self.v = v
self.k = k
moves = [(x, y) for x in range(1, h + 1)
for y in range(1, v + 1)]
self.initial = GameState(to_move='X', utility=0, board={}, moves=moves)
def actions(self, state):
"""Legal moves are any square not yet taken."""
return state.moves
def result(self, state, move):
if move not in state.moves:
return state # Illegal move has no effect
board = state.board.copy()
board[move] = state.to_move
moves = list(state.moves)
moves.remove(move)
return GameState(to_move=('O' if state.to_move == 'X' else 'X'),
utility=self.compute_utility(board, move, state.to_move),
board=board, moves=moves)
def utility(self, state, player):
"""Return the value to player; 1 for win, -1 for loss, 0 otherwise."""
return state.utility if player == 'X' else -state.utility
def terminal_test(self, state):
"""A state is terminal if it is won or there are no empty squares."""
return state.utility != 0 or len(state.moves) == 0
def display(self, state):
board = state.board
for x in range(1, self.h + 1):
for y in range(1, self.v + 1):
print(board.get((x, y), '.'), end=' ')
print()
def compute_utility(self, board, move, player):
"""If 'X' wins with this move, return 1; if 'O' wins return -1; else return 0."""
if (self.k_in_row(board, move, player, (0, 1)) or
self.k_in_row(board, move, player, (1, 0)) or
self.k_in_row(board, move, player, (1, -1)) or
self.k_in_row(board, move, player, (1, 1))):
return +1 if player == 'X' else -1
else:
return 0
def k_in_row(self, board, move, player, delta_x_y):
"""Return true if there is a line through move on board for player."""
(delta_x, delta_y) = delta_x_y
x, y = move
n = 0 # n is number of moves in row
while board.get((x, y)) == player:
n += 1
x, y = x + delta_x, y + delta_y
x, y = move
while board.get((x, y)) == player:
n += 1
x, y = x - delta_x, y - delta_y
n -= 1 # Because we counted move itself twice
return n >= self.k
class ConnectFour(TicTacToe):
"""A TicTacToe-like game in which you can only make a move on the bottom
row, or in a square directly above an occupied square. Traditionally
played on a 7x6 board and requiring 4 in a row."""
def __init__(self, h=7, v=6, k=4):
TicTacToe.__init__(self, h, v, k)
def actions(self, state):
return [(x, y) for (x, y) in state.moves
if y == 1 or (x, y - 1) in state.board]