Metropolis harmonic.py
From Werner KRAUTH
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L = 16 | L = 16 | ||
delta = 1.0 | delta = 1.0 | ||
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x = [L / N * k for k in range(N)] | x = [L / N * k for k in range(N)] | ||
Iter = 1000000 | Iter = 1000000 | ||
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U_kp = ((x_plus - x_new) ** 2 + (x_new - x_minus) ** 2) / 2.0 | U_kp = ((x_plus - x_new) ** 2 + (x_new - x_minus) ** 2) / 2.0 | ||
if random.uniform(0.0, 1.0) < math.exp(- (U_kp - U_k)): x[k] = x_new | if random.uniform(0.0, 1.0) < math.exp(- (U_kp - U_k)): x[k] = x_new | ||
- | x.append(xend) | ||
==Further information== | ==Further information== |
Revision as of 19:03, 19 February 2025
Contents |
Context
This page is part of my public lectures on Algorithms and Computations in theoretical physics at the University of Oxford (see the announcement for a syllabus). For more information, see the main page of the public lectures. It presents the Metropolis Monte Carlo algorithm invented by Metropolis et al. (1953). For an in-depth discussion, see my below reference. Other programs in the same series are the hamiltonian Monte Carlo algorithm and the Lévy construction.
Python program
import math, random def U(x): U = 0.0 for k in range(N): k_minus = (k - 1) % N x_minus = x[k_minus] if k == 0: x_minus -= L U += (x[k] - x_minus) ** 2 / 2.0 return U N = 8 L = 16 delta = 1.0 x = [L / N * k for k in range(N)] Iter = 1000000 for iter in range(Iter): k = random.randint(0, N - 1) # random slice k_plus = (k + 1) % N k_minus = (k - 1) % N x_plus = x[k_plus] if k == N - 1: x_plus += L if k_plus == N: x_plus = x[0] + L x_minus = x[k_minus] if k == 0: x_minus -= L x_new = x[k] + random.uniform(-delta, delta) # new position at slice k U_k = ((x_plus - x[k]) ** 2 + (x[k] - x_minus) ** 2) / 2.0 U_kp = ((x_plus - x_new) ** 2 + (x_new - x_minus) ** 2) / 2.0 if random.uniform(0.0, 1.0) < math.exp(- (U_kp - U_k)): x[k] = x_new
Further information
References
Krauth, W. Hamiltonian Monte Carlo vs. event-chain Monte Carlo: an appraisal of sampling strategies beyond the diffusive regime. ArXiv: 2411.11690