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engine.py
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136 lines (108 loc) · 3.33 KB
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import search
import chess
import chess.pgn
import sys
import traceback
CACHE_SIZE = 200000
MINTIME = 0.1
TIMEDIV = 25.0
NODES = 800
C = 3.0
logfile = open("a0lite.log", "w")
LOG = True
def log(msg):
if LOG:
logfile.write(str(msg))
logfile.write("\n")
logfile.flush()
def send(str):
log(">{}".format(str))
sys.stdout.write(str)
sys.stdout.write("\n")
sys.stdout.flush()
def process_position(tokens):
board = chess.Board()
offset = 0
if tokens[1] == 'startpos':
offset = 2
elif tokens[1] == 'fen':
fen = " ".join(tokens[2:8])
board = chess.Board(fen=fen)
offset = 8
if offset >= len(tokens):
return board
if tokens[offset] == 'moves':
for i in range(offset+1, len(tokens)):
board.push_uci(tokens[i])
return board
def load_network():
log("Loading network")
#net = search.EPDLRUNet(search.BadGyalNet(cuda=True), CACHE_SIZE)
net = search.EPDLRUNet(search.MeanGirlNet(cuda=False), CACHE_SIZE)
return net
def main():
send("A0 Lite")
board = chess.Board()
nn = None
while True:
line = sys.stdin.readline()
line = line.rstrip()
log("<{}".format(line))
tokens = line.split()
if len(tokens) == 0:
continue
if tokens[0] == "uci":
send('id name A0 Lite')
send('id author Dietrich Kappe')
send('uciok')
elif tokens[0] == "quit":
exit(0)
elif tokens[0] == "isready":
if nn == None:
nn = load_network()
send("readyok")
elif tokens[0] == "ucinewgame":
board = chess.Board()
elif tokens[0] == 'position':
board = process_position(tokens)
elif tokens[0] == 'go':
my_nodes = NODES
my_time = None
if (len(tokens) == 3) and (tokens[1] == 'nodes'):
my_nodes = int(tokens[2])
if (len(tokens) == 3) and (tokens[1] == 'movetime'):
my_time = int(tokens[2])/1000.0
if my_time < MINTIME:
my_time = MINTIME
if (len(tokens) == 9) and (tokens[1] == 'wtime'):
wtime = int(tokens[2])
btime = int(tokens[4])
winc = int(tokens[6])
binc = int(tokens[8])
if (wtime > 5*winc):
wtime += 5*winc
else:
wtime += winc
if (btime > 5*binc):
btime += 5*binc
else:
btime += binc
if board.turn:
my_time = wtime/(TIMEDIV*1000.0)
else:
my_time = btime/(TIMEDIV*1000.0)
if my_time < MINTIME:
my_time = MINTIME
if nn == None:
nn = load_network()
if my_time != None:
best, score = search.UCT_search(board, 1000000, net=nn, C=C, max_time=my_time, send=send)
else:
best, score = search.UCT_search(board, my_nodes, net=nn, C=C, send=send)
send("bestmove {}".format(best))
try:
main()
except:
exc_type, exc_value, exc_tb = sys.exc_info()
log(traceback.format_exception(exc_type, exc_value, exc_tb))
logfile.close()