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import openai |
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import chess |
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import chess.engine |
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import os |
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import csv |
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import random |
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import time |
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import platform |
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from nanogpt.nanogpt_module import NanoGptPlayer |
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from mamba_module import MambaPlayer |
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import gpt_query |
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from lczero.backends import Weights, Backend, GameState |
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import numpy as np |
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from typing import Optional, Tuple |
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from dataclasses import dataclass |
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@dataclass |
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class LegalMoveResponse: |
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move_san: Optional[str] = None |
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move_uci: Optional[chess.Move] = None |
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attempts: int = 0 |
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is_resignation: bool = False |
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is_illegal_move: bool = False |
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class Player: |
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def get_move(self, board: chess.Board, game_state: str, temperature: float) -> str: |
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raise NotImplementedError |
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def get_config(self) -> dict: |
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raise NotImplementedError |
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class GPTPlayer(Player): |
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def __init__(self, model: str): |
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with open("gpt_inputs/api_key.txt", "r") as f: |
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openai.api_key = f.read().strip() |
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self.model = model |
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def get_move( |
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self, board: chess.Board, game_state: str, temperature: float |
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) -> Optional[str]: |
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response = get_gpt_response(game_state, self.model, temperature) |
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return get_move_from_gpt_response(response) |
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def get_config(self) -> dict: |
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return {"model": self.model} |
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class LC0PLayer(Player): |
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def __init__(self, skill): |
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self.skill = skill |
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network_paths = ["./lc0/build/release/11258-32x4-se.pb.gz", "./lc0/build/release/11258-48x5-se.pb.gz", "./lc0/build/release/11258-80x7-se.pb.gz", "./lc0/build/release/11258-104x9-se.pb.gz", "./lc0/build/release/TK-6430 aka 128x10-BPR-64M-6430000.pb.gz", "./lc0/build/release/00af53b081e80147172e6f281c01daf5ca19ada173321438914c730370aa4267", "./lc0/build/release/b2ec465d0fb5b5eb39d2e1e3f74041a5d2fc92d413b71aa7ea0b6fb082ccba9c"] |
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print(f"\n\nLoading lc0 network: {network_paths[skill]}\n\n") |
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self.weights = Weights(network_paths[skill]) |
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self.backend = Backend(weights=self.weights) |
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self.gamestate = GameState() |
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def get_move(self, board: chess.Board, game_state: str, temperature: float): |
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self.gamestate = GameState(fen=board.fen()) |
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input_planes = self.gamestate.as_input(self.backend) |
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result = self.backend.evaluate(input_planes)[0] |
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moves = self.gamestate.moves() |
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policy_indices = self.gamestate.policy_indices() |
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move_probs = np.array(result.p_softmax(*policy_indices)) |
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best_move_idx = move_probs.argmax() |
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best_move = moves[best_move_idx] |
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return board.san(chess.Move.from_uci(best_move)) |
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def get_config(self) -> dict: |
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return {"network": self.weights, "skill_level": self.skill, "play_time": 0} |
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class StockfishPlayer(Player): |
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@staticmethod |
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def get_stockfish_path() -> str: |
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""" |
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Determines the operating system and returns the appropriate path for Stockfish. |
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Returns: |
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str: Path to the Stockfish executable based on the operating system. |
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""" |
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if platform.system() == 'Linux': |
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return "/usr/games/stockfish" |
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elif platform.system() == 'Darwin': |
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return "stockfish" |
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elif platform.system() == 'Windows': |
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return r"C:\Users\Haile\Downloads\stockfish\stockfish-windows-x86-64-avx2.exe" |
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else: |
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raise OSError("Unsupported operating system") |
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def __init__(self, skill_level: int, play_time: float): |
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self._skill_level = skill_level |
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self._play_time = play_time |
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stockfish_path = StockfishPlayer.get_stockfish_path() |
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self._engine = chess.engine.SimpleEngine.popen_uci(stockfish_path) |
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def get_move( |
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self, board: chess.Board, game_state: str, temperature: float |
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) -> Optional[str]: |
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if self._skill_level == -2: |
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legal_moves = list(board.legal_moves) |
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random_move = random.choice(legal_moves) |
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return board.san(random_move) |
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elif self._skill_level < 0: |
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self._engine.configure({"Skill Level": 0}) |
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result = self._engine.play( |
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board, chess.engine.Limit(time=1e-8, depth=1, nodes=1) |
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) |
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else: |
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self._engine.configure({"Skill Level": self._skill_level}) |
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result = self._engine.play(board, chess.engine.Limit(time=self._play_time)) |
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if result.move is None: |
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return None |
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return board.san(result.move) |
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def get_config(self) -> dict: |
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return {"skill_level": self._skill_level, "play_time": self._play_time} |
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def close(self): |
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self._engine.quit() |
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class HumanPlayer(Player): |
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def get_move(self, board: chess.Board, game_state: str, temperature: float) -> str: |
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print(board) |
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while True: |
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move = input("Enter your move (SAN format): ") |
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try: |
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move_uci = board.parse_san(move) |
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if move_uci in board.legal_moves: |
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return move |
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except: |
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print("Illegal move, try again.") |
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def get_config(self) -> dict: |
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return {"player": "human"} |
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def get_gpt_response(game_state: str, model: str, temperature: float) -> Optional[str]: |
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if model == "gpt-4": |
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time.sleep(0.4) |
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response = gpt_query.get_gpt_response(game_state, model, temperature) |
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return response |
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def get_move_from_gpt_response(response: Optional[str]) -> Optional[str]: |
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if response is None: |
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return None |
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moves = response.split() |
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first_move = moves[0] if moves else None |
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return first_move |
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def record_results( |
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board: chess.Board, |
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player_one: Player, |
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player_two: Player, |
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game_state: str, |
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player_one_illegal_moves: int, |
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player_two_illegal_moves: int, |
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player_one_legal_moves: int, |
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player_two_legal_moves: int, |
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total_time: float, |
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player_one_resignation: bool, |
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player_two_resignation: bool, |
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player_one_failed_to_find_legal_move: bool, |
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player_two_failed_to_find_legal_move: bool, |
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total_moves: int, |
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illegal_moves: int, |
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): |
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unique_game_id = generate_unique_game_id() |
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( |
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player_one_title, |
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player_two_title, |
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player_one_time, |
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player_two_time, |
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) = get_player_titles_and_time(player_one, player_two) |
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if player_one_resignation or player_one_failed_to_find_legal_move: |
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result = "0-1" |
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player_one_score = 0 |
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player_two_score = 1 |
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elif player_two_resignation or player_two_failed_to_find_legal_move: |
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result = "1-0" |
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player_one_score = 1 |
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player_two_score = 0 |
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else: |
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result = board.result() |
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if "-" in result: |
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player_one_score = result.split("-")[0] |
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player_two_score = result.split("-")[1] |
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elif result == "*": |
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player_one_score = 0 |
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player_two_score = 1 |
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else: |
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player_one_score = -1e10 |
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player_two_score = -1e10 |
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info_dict = { |
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"game_id": unique_game_id, |
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"transcript": game_state, |
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"result": result, |
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"player_one": player_one_title, |
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"player_two": player_two_title, |
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"player_one_time": player_one_time, |
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"player_two_time": player_two_time, |
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"player_one_score": player_one_score, |
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"player_two_score": player_two_score, |
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"player_one_illegal_moves": player_one_illegal_moves, |
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"player_two_illegal_moves": player_two_illegal_moves, |
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"player_one_legal_moves": player_one_legal_moves, |
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"player_two_legal_moves": player_two_legal_moves, |
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"player_one_resignation": player_one_resignation, |
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"player_two_resignation": player_two_resignation, |
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"player_one_failed_to_find_legal_move": player_one_failed_to_find_legal_move, |
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"player_two_failed_to_find_legal_move": player_two_failed_to_find_legal_move, |
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"game_title": f"{player_one_title} vs. {player_two_title}", |
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"number_of_moves": board.fullmove_number, |
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"time_taken": total_time, |
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"total_moves": total_moves, |
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"illegal_moves": illegal_moves, |
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} |
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if RUN_FOR_ANALYSIS: |
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csv_file_path = f"logs/{player_one_recording_name}_vs_{player_two_recording_name}" |
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csv_file_path = csv_file_path.replace(".", "_") |
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csv_file_path += ".csv" |
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else: |
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csv_file_path = recording_file |
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write_headers = not os.path.exists(csv_file_path) |
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os.makedirs(os.path.dirname(csv_file_path), exist_ok=True) |
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with open(csv_file_path, "a", newline="") as csv_file: |
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writer = csv.DictWriter(csv_file, fieldnames=info_dict.keys()) |
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if write_headers: |
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writer.writeheader() |
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writer.writerow(info_dict) |
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with open("game.txt", "w") as f: |
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f.write(game_state) |
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def generate_unique_game_id() -> str: |
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timestamp = int(time.time()) |
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random_num = random.randint(1000, 9999) |
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return f"{timestamp}-{random_num}" |
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def get_player_titles_and_time( |
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player_one: Player, player_two: Player |
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) -> Tuple[str, str, Optional[float], Optional[float]]: |
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player_one_config = player_one.get_config() |
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player_two_config = player_two.get_config() |
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if "model" in player_one_config: |
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player_one_title = player_one_config["model"] |
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player_one_time = None |
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else: |
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player_one_title = f"Stockfish {player_one_config['skill_level']}" |
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player_one_time = player_one_config["play_time"] |
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if "model" in player_two_config: |
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player_two_title = player_two_config["model"] |
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player_two_time = None |
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else: |
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player_two_title = f"Stockfish {player_two_config['skill_level']}" |
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player_two_time = player_two_config["play_time"] |
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return (player_one_title, player_two_title, player_one_time, player_two_time) |
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used_openings = [] |
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def initialize_game_with_opening( |
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game_state: str, board: chess.Board |
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) -> Tuple[str, chess.Board]: |
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global used_openings |
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with open("openings.csv", "r") as file: |
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lines = file.readlines()[1:] |
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moves_string = random.choice(lines) |
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while moves_string in used_openings: |
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moves_string = random.choice(lines) |
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used_openings.append(moves_string) |
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if move_num_in_gamestate: |
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game_state = moves_string.rstrip() + " " |
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else: |
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game_state = ' '.join(['.' + m.split(".")[-1] if "." in m else m for m in moves_string.split()]) |
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game_state = game_state.rstrip() + " " |
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tokens = moves_string.split() |
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for token in tokens: |
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if "." in token: |
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move = token.split(".")[-1] |
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else: |
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move = token |
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board.push_san(move) |
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return game_state.rstrip(), board |
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def get_legal_move( |
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player: Player, |
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board: chess.Board, |
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game_state: str, |
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player_one: bool, |
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max_attempts: int = 5, |
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) -> LegalMoveResponse: |
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"""Request a move from the player and ensure it's legal.""" |
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move_san = None |
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move_uci = None |
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for attempt in range(max_attempts): |
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move_san = player.get_move( |
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board, game_state, min(((attempt / max_attempts) * 1) + 0.001, 0.75) |
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) |
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if move_san is not None: |
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if move_san == "1-0" or move_san == "0-1" or move_san == "1/2-1/2": |
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print(f"{move_san}, player has resigned") |
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return LegalMoveResponse( |
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move_san=None, |
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move_uci=None, |
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attempts=attempt, |
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is_resignation=True, |
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) |
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try: |
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move_uci = board.parse_san(move_san) |
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except Exception as e: |
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print(f"Error parsing move {move_san}: {e}") |
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if player.get_config()["model"] == "gpt-3.5-turbo-instruct": |
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with open("gpt-3.5-turbo-instruct-illegal-moves.txt", "a") as f: |
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f.write(f"{game_state}\n{move_san}\n") |
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continue |
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if move_uci in board.legal_moves: |
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if player_one == False: |
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if not move_san.startswith(" "): |
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move_san = " " + move_san |
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else: |
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if move_san.startswith(" "): |
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move_san = move_san[1:] |
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return LegalMoveResponse(move_san, move_uci, attempt) |
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print(f"Illegal move: {move_san}") |
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print(f"{player} provided illegal moves for {max_attempts} attempts.") |
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return LegalMoveResponse( |
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move_san=None, move_uci=None, attempts=max_attempts, is_illegal_move=True |
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) |
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def play_turn( |
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player: Player, board: chess.Board, game_state: str, player_one: bool |
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) -> Tuple[str, bool, bool, int]: |
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result = get_legal_move(player, board, game_state, player_one, 5) |
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illegal_moves = result.attempts |
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move_san = result.move_san |
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move_uci = result.move_uci |
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resignation = result.is_resignation |
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failed_to_find_legal_move = result.is_illegal_move |
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if resignation: |
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print(f"{player} resigned with result: {board.result()}") |
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elif failed_to_find_legal_move: |
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print(f"Game over: 5 consecutive illegal moves from {player}") |
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elif move_san is None or move_uci is None: |
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print(f"Game over: {player} failed to find a legal move") |
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else: |
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board.push(move_uci) |
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game_state += move_san |
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print(move_san, end=" ") |
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return game_state, resignation, failed_to_find_legal_move, illegal_moves |
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def play_game( |
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player_one: Player, |
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player_two: Player, |
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max_games: int = 10, |
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random_opening_seed: bool = False, |
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): |
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for z in range(max_games): |
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print(f"\nGame {z} of {max_games}\n") |
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with open("gpt_inputs/prompt.txt", "r") as f: |
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game_state = f.read() |
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board = chess.Board() |
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if random_opening_seed: |
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game_state, board = initialize_game_with_opening(game_state, board) |
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player_one_illegal_moves = 0 |
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player_two_illegal_moves = 0 |
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player_one_legal_moves = 0 |
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player_two_legal_moves = 0 |
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player_one_resignation = False |
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player_two_resignation = False |
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player_one_failed_to_find_legal_move = False |
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player_two_failed_to_find_legal_move = False |
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start_time = time.time() |
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total_moves = 0 |
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illegal_moves = 0 |
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print_for_human = isinstance(player_one, HumanPlayer) or isinstance(player_two, HumanPlayer) |
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while not board.is_game_over(): |
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if print_for_human: |
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print(board) |
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with open("game.txt", "w") as f: |
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f.write(game_state) |
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current_move_num = f"{board.fullmove_number if move_num_in_gamestate else ''}." |
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total_moves += 1 |
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player_one_legal_moves += 1 |
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player_two_legal_moves += 1 |
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if board.fullmove_number != 1: |
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game_state += " " |
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game_state += current_move_num |
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( |
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game_state, |
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player_one_resignation, |
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player_one_failed_to_find_legal_move, |
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illegal_moves_one, |
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) = play_turn(player_one, board, game_state, player_one=True) |
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player_one_illegal_moves += illegal_moves_one |
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if illegal_moves_one != 0: |
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player_one_legal_moves -= 1 |
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if ( |
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board.is_game_over() |
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or player_one_resignation |
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or player_one_failed_to_find_legal_move |
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): |
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break |
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( |
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game_state, |
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player_two_resignation, |
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player_two_failed_to_find_legal_move, |
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illegal_moves_two, |
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) = play_turn(player_two, board, game_state, player_one=False) |
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player_two_illegal_moves += illegal_moves_two |
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if illegal_moves_two != 0: |
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player_two_legal_moves -= 1 |
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if ( |
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board.is_game_over() |
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or player_two_resignation |
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or player_two_failed_to_find_legal_move |
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): |
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break |
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print("\n", end="") |
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|
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if total_moves > MAX_MOVES: |
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break |
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end_time = time.time() |
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total_time = end_time - start_time |
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print(f"\nGame over. Total time: {total_time} seconds") |
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print(f"Result: {board.result()}") |
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print(board) |
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print() |
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record_results( |
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board, |
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player_one, |
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player_two, |
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game_state, |
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player_one_illegal_moves, |
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player_two_illegal_moves, |
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player_one_legal_moves, |
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player_two_legal_moves, |
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total_time, |
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player_one_resignation, |
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player_two_resignation, |
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player_one_failed_to_find_legal_move, |
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player_two_failed_to_find_legal_move, |
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total_moves, |
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illegal_moves, |
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) |
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if isinstance(player_one, StockfishPlayer): |
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player_one.close() |
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if isinstance(player_two, StockfishPlayer): |
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player_two.close() |
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RUN_FOR_ANALYSIS = True |
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MAX_MOVES = 999 |
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recording_file = "logs/determine.csv" |
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|
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player_ones = ["50M/ckpt_2955050b.pt"] |
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player_two_recording_name = "lc0_sweep" |
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move_num_in_gamestate = False |
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if __name__ == "__main__": |
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for nanogpt_player in player_ones: |
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for i in range(1): |
|
num_games = 300 |
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player_one_recording_name = nanogpt_player |
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player_one = MambaPlayer(model_name=player_one_recording_name, move_num_in_gamestate=move_num_in_gamestate) |
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|
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player_two = LC0PLayer(skill=i) |
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print(f"\n\nSTARTING GAMES AGAINST LC0 LEVEL {i}\n\n") |
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|
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play_game(player_one, player_two, num_games, random_opening_seed=True) |
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|
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print("\n\n\n********\nDONE!\n********\n\n\n") |
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