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player_interface.py
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player_interface.py
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# Copyright 2018 Google LLC
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Go player interfaces."""
from abc import ABC, abstractmethod
class PlayerInterface(ABC):
"""Interface for a basic Go player."""
@abstractmethod
def get_position(self):
"""Get the current position.
Returns:
A go.Position instance.
"""
@abstractmethod
def get_result_string(self):
"""Get the result as a string.
Returns:
The result as a string, e.g. B+R, W+1.5.
"""
@abstractmethod
def initialize_game(self, position=None):
"""Initializes a new game.
Args:
position: the board position to copy for the initial game state. If
None, an empty board state is used for the initial position.
"""
@abstractmethod
def suggest_move(self, position):
"""Suggests a move to play from the given position.
Args:
position: the current board position.
Returns:
The players's best guess as the best move to play.
"""
@abstractmethod
def play_move(self, c):
"""Play the given move.
Args:
c: the move to play as a Minigo coordinate (see coords.py).
Returns:
True if the move was successfully played.
False if the requested move is illegal.
"""
@abstractmethod
def should_resign(self):
"""Should the current player resign?
Returns:
True if the player thinks the current player is doing so badly they
had better just give up.
"""
@abstractmethod
def to_sgf(self, use_comments=True):
"""Format the game history as SGF.
Args:
use_comments: True to add debug info as a comment to the move nodes.
Returns:
A formatted SGF string
"""
@abstractmethod
def set_result(self, winner, was_resign):
"""Sets the game result.
Args:
winner: +1 for a black win, -1 a white win.
was_resign: True if the win was by resignation.
"""
class MCTSPlayerInterface(PlayerInterface):
"""Interface for a MCTS-based Go player."""
@abstractmethod
def get_root(self):
"""Get the current root node.
Returns:
The current MCTSNode root of the search tree.
"""
@abstractmethod
def tree_search(self, parallel_readouts=None):
"""Performs one tree search step.
Each tree search step may potentially expand multiple leaves of the
game tree, depending on parallel_readouts.
Args:
parallel_readouts: number of leaves to expand in parallel. If None,
the number of parallel readouts, the player is free to choose a
sensible default.
Returns:
A list of the newly expanded leaves.
"""
@abstractmethod
def get_num_readouts(self):
"""Get the number of readouts.
Returns:
The number of readouts.
"""
@abstractmethod
def set_num_readouts(self, readouts):
"""Set the number of readouts.
Args:
readouts: the number of readouts.
"""