Hi! I'm making a chess engine and as i'd like to implement iterative deepening, i need to find the principal variation (the sequence of moves the engine thinks are optimal). But, i've not found any pseudocode examples in the web in python and since my alphabeta function is recursive, i'm really having a hard time understanding it.
Could you please give me some hints or a pseudocode example how can this be done? Thank you very much.
Here's my alpha beta function, which just returns the valuation of the move, not the move itself:
def alphaBeta(self, board, rules, alpha, beta, ply, player): """ Implements a minimax algorithm with alpha-beta pruning. """ if not ply: return self.positionEvaluation(board, rules, player) move_list = board.generateMoves(rules, player) if not len(move_list): return self.mateCheck(rules, board, player, ply) for move in move_list: board.makeMove(move, player) current_eval = -self.alphaBeta(board, rules, -beta, -alpha, ply - 1, board.getOtherPlayer(player)) board.unmakeMove(move, player) if current_eval >= beta: return beta elif current_eval > alpha: alpha = current_eval return alpha