""" Quick test: single run, N=3000, 200k Adam steps, aggressive L-BFGS. Uses PYTHONUNBUFFERED for output. """ import sys import jax import jax.numpy as jnp import numpy as np from scipy.optimize import minimize as scipy_minimize import optax def compute_c1_numpy(f_values, n_points): dx = 0.5 / n_points f_nn = np.maximum(f_values, 0.0) autoconv = np.convolve(f_nn, f_nn, mode='full') * dx integral_sq = (np.sum(f_nn) * dx) ** 2 if integral_sq < 1e-12: return 1e10 return np.max(autoconv) / integral_sq def run(): N = 3000 dx = 0.5 / N @jax.jit def obj_smooth(params, temp): f = jnp.exp(jnp.clip(params, -8, 4)) padded = jnp.zeros(2 * N) padded = padded.at[:N].set(f) fft_f = jnp.fft.rfft(padded) conv = jnp.fft.irfft(fft_f * fft_f, n=2 * N) * dx integral_sq = (jnp.sum(f) * dx) ** 2 smooth_max = jax.nn.logsumexp(temp * conv) / temp return smooth_max / integral_sq @jax.jit def obj_hard(params): f = jnp.exp(jnp.clip(params, -8, 4)) padded = jnp.zeros(2 * N) padded = padded.at[:N].set(f) fft_f = jnp.fft.rfft(padded) conv = jnp.fft.irfft(fft_f * fft_f, n=2 * N) * dx integral_sq = (jnp.sum(f) * dx) ** 2 return jnp.max(conv) / integral_sq grad_fn = jax.jit(jax.grad(obj_smooth)) best_c1_overall = float('inf') best_f_overall = None for seed in range(3): np.random.seed(seed) init_f = np.abs(np.random.randn(N)) * 0.3 + 0.2 params = jnp.array(np.log(np.maximum(init_f, 1e-6))) adam_steps = 200000 lr_schedule = optax.warmup_cosine_decay_schedule( init_value=0.0, peak_value=0.008, warmup_steps=3000, decay_steps=adam_steps - 3000, end_value=1e-7, ) optimizer = optax.adam(learning_rate=lr_schedule) opt_state = optimizer.init(params) best_c1 = float('inf') best_params = params for step in range(adam_steps): loss, grads = jax.value_and_grad(obj_smooth)(params, 300.0) updates, opt_state = optimizer.update(grads, opt_state, params) params = optax.apply_updates(params, updates) if step % 25000 == 0 or step == adam_steps - 1: hc = float(obj_hard(params)) sys.stdout.write(f"[{seed}] Step {step:7d} | C1={hc:.8f}\n") sys.stdout.flush() if hc < best_c1: best_c1 = hc best_params = params # L-BFGS polish params_np = np.array(best_params, dtype=np.float64) for temp_lbfgs in [500, 1000, 2000, 5000, 10000, 50000]: def scipy_obj(p): p_jax = jnp.array(p) val = float(obj_smooth(p_jax, float(temp_lbfgs))) g = np.array(grad_fn(p_jax, float(temp_lbfgs)), dtype=np.float64) return val, g result = scipy_minimize( scipy_obj, params_np, method='L-BFGS-B', jac=True, options={'maxiter': 10000, 'ftol': 1e-15, 'gtol': 1e-14, 'maxcor': 50}, ) params_np = result.x f_final = np.exp(np.clip(params_np, -8, 4)) c1_final = compute_c1_numpy(f_final, N) sys.stdout.write(f"[{seed}] Final: C1={c1_final:.10f}\n") sys.stdout.flush() if c1_final < best_c1_overall: best_c1_overall = c1_final best_f_overall = f_final sys.stdout.write(f"Best C1: {best_c1_overall:.10f}\n") sys.stdout.flush() return best_f_overall, best_c1_overall, best_c1_overall, N