# Public domain. import sys import random import signatures import doublescalarmult def multiscalarmult(scalars,points): result = signatures.groupelt(0) for sp in zip(scalars,points): result = result + sp[1] * sp[0] return result def verifybatch(smvector): results = [] randomizers = [random.randrange(2**signatures.b) for i in range(len(smvector))] points = [signatures.B] scalars = [0] for i in range(len(smvector)): sm = smvector[i] R,S,A,M = sm[0],sm[1],sm[2],sm[3] h = signatures.inthash(str(R) + str(A) + M) points.append(signatures.groupelt(R)) scalars.append(randomizers[i]) points.append(signatures.groupelt(A)) scalars.append((h * randomizers[i]) % signatures.l) scalars[0] = (scalars[0] - S * randomizers[i]) % signatures.l if multiscalarmult(scalars,points).x == 0: return [True] * len(smvector) for sm in smvector: R,S,A,M = sm[0],sm[1],sm[2],sm[3] h = signatures.inthash(str(R) + str(A) + M) checkR = doublescalarmult.doublescalarmult(S,signatures.B,(-h) % signatures.l,signatures.groupelt(A)) results.append(R == checkR.x) return results signatures.benchmark(verifybatch,int(sys.argv[1]))