{ "epoch": 9, "optimizer_state_dict": { "state": { "0": { "step": "tensor(12520.)", "exp_avg": "tensor([[-6.3960e-05, -6.0342e-06, 2.5991e-05, ..., 7.9031e-06,\n -1.0817e-05, 1.0993e-06],\n [ 8.8662e-06, -1.3754e-05, -6.6039e-06, ..., -7.5104e-06,\n 6.7735e-06, 1.1299e-05],\n [ 2.0843e-05, -5.0735e-05, -6.4116e-05, ..., 4.3576e-05,\n 6.4431e-05, -3.8258e-05],\n ...,\n [-3.0679e-06, -6.5986e-05, -5.2217e-05, ..., 1.6762e-06,\n 6.4565e-05, -6.0786e-05],\n [-5.6052e-45, -5.6052e-45, 5.6052e-45, ..., -5.6052e-45,\n 5.6052e-45, -5.6052e-45],\n [ 1.9304e-05, 9.2353e-05, -7.0835e-05, ..., 7.7714e-05,\n 4.0903e-05, -2.3749e-05]], device='cuda:0')", "exp_avg_sq": "tensor([[1.4227e-08, 9.8451e-09, 5.8651e-09, ..., 7.5263e-09, 6.9033e-09,\n 6.9766e-09],\n [5.8534e-09, 5.5103e-09, 3.1861e-09, ..., 2.9842e-09, 3.1072e-09,\n 2.1654e-09],\n [1.4612e-08, 1.2444e-08, 1.6592e-08, ..., 1.1548e-08, 9.1652e-09,\n 8.7804e-09],\n ...,\n [1.3218e-08, 1.5949e-08, 2.4706e-08, ..., 1.1718e-08, 9.9901e-09,\n 1.0700e-08],\n [5.9810e-16, 3.1201e-15, 9.4819e-16, ..., 5.5587e-18, 2.9919e-15,\n 1.7631e-17],\n [1.3356e-08, 1.3326e-08, 1.5134e-08, ..., 1.3426e-08, 7.8721e-09,\n 6.7177e-09]], device='cuda:0')" }, "1": { "step": "tensor(12520.)", "exp_avg": "tensor([-9.0691e-04, 7.2409e-04, 3.0193e-03, ..., 1.0748e-03,\n 5.6052e-45, 3.6514e-03], device='cuda:0')", "exp_avg_sq": "tensor([1.4690e-05, 6.2727e-06, 2.1278e-05, ..., 2.5137e-05, 2.0251e-11,\n 2.1901e-05], device='cuda:0')" }, "2": { "step": "tensor(12520.)", "exp_avg": "tensor([[-2.7164e-05, -1.9900e-07, 9.5126e-07, ..., 9.4927e-06,\n 5.6052e-45, -9.6058e-07],\n [-2.7432e-05, 5.1023e-07, -2.3293e-06, ..., 2.8908e-07,\n -5.6052e-45, -2.5127e-06],\n [-3.1435e-07, -3.2044e-07, -1.2302e-07, ..., 2.4341e-06,\n -5.6052e-45, -1.9378e-07],\n ...,\n [ 5.8933e-07, 1.5870e-07, -7.7837e-07, ..., 9.6177e-07,\n 5.6052e-45, 2.0668e-06],\n [ 3.8947e-06, -6.5624e-09, -9.0244e-06, ..., -9.2989e-07,\n -5.6052e-45, 6.2904e-06],\n [-1.1632e-05, -7.0983e-06, 8.5217e-06, ..., 1.5592e-06,\n 5.6052e-45, 2.1561e-06]], device='cuda:0')", "exp_avg_sq": "tensor([[1.9624e-09, 2.2615e-10, 1.6196e-09, ..., 6.6825e-09, 4.7686e-16,\n 6.7964e-10],\n [2.0070e-09, 7.9523e-10, 4.2056e-10, ..., 2.2196e-10, 2.6458e-14,\n 4.2702e-09],\n [2.3410e-10, 3.6115e-10, 3.2898e-10, ..., 6.0066e-10, 1.8233e-13,\n 1.4097e-09],\n ...,\n [4.7294e-11, 4.8290e-11, 5.5586e-10, ..., 7.2295e-11, 1.8310e-14,\n 1.7603e-11],\n [5.4413e-10, 2.2035e-11, 1.9991e-10, ..., 3.0986e-10, 3.6935e-17,\n 4.8808e-10],\n [3.3296e-09, 3.1063e-10, 6.0098e-09, ..., 1.7746e-09, 3.2723e-15,\n 2.6791e-09]], device='cuda:0')" }, "3": { "step": "tensor(12520.)", "exp_avg": "tensor([-2.3097e-05, 9.5465e-05, -8.4887e-05, 1.8510e-04, 1.3161e-04,\n -2.0138e-05, -1.4139e-04, 3.0738e-05, -1.0147e-04, 1.1279e-04,\n 5.3551e-04, -5.0594e-05, 2.7870e-05, -2.8186e-05, -1.8885e-04,\n 1.8148e-04, -1.8156e-05, -1.8771e-05, 1.0264e-04, 4.3141e-05,\n 1.0310e-05, -9.1166e-05, 7.8901e-05, -3.3479e-06, 5.7091e-05,\n 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1.7505e-07, 3.5890e-07, 2.2420e-07,\n 2.3949e-07, 4.0970e-07, 3.1663e-07, 2.9832e-07, 3.6877e-07, 3.3916e-07,\n 2.4072e-07, 3.1500e-07, 2.7670e-07, 2.9994e-07, 2.0455e-07, 1.4815e-07,\n 2.6749e-07, 2.0407e-07, 2.9794e-07, 1.6954e-07, 2.6729e-07, 1.1179e-07,\n 2.4321e-07, 2.9745e-07, 2.0795e-07, 2.8625e-07, 3.4843e-07, 3.0315e-07,\n 3.7308e-07, 2.8408e-07, 2.0312e-07, 2.0092e-07, 2.3537e-07, 2.5766e-07,\n 2.0972e-07, 1.7113e-07, 2.6095e-07, 4.3421e-07, 2.0788e-07, 2.9926e-07,\n 2.1054e-07, 3.3935e-07, 1.9373e-07, 3.1144e-07, 1.0913e-07, 3.9414e-07,\n 3.6177e-07, 4.0089e-07, 4.9945e-07, 1.9958e-07, 3.4982e-07, 2.5925e-07,\n 3.0261e-07, 2.3794e-07, 1.6194e-07, 1.4839e-07, 3.0522e-07, 1.7743e-07,\n 2.0349e-07, 1.8151e-07, 7.4737e-08, 3.7157e-07, 1.5902e-07, 3.3497e-07,\n 2.8562e-07, 3.2404e-07, 2.5718e-07, 3.6781e-07, 2.0814e-07, 1.8925e-07,\n 3.3441e-07, 2.5547e-07, 5.9334e-07, 3.0809e-07, 3.7081e-07, 1.1751e-07,\n 4.0517e-07, 1.8862e-07, 2.1909e-07, 1.4162e-07, 1.1979e-07, 1.7339e-07,\n 2.1070e-07, 1.3662e-07, 1.5900e-07, 2.3966e-07, 3.8422e-07, 2.7259e-07,\n 2.4649e-07, 4.2156e-07, 3.7968e-07, 3.0587e-07, 1.6132e-07, 6.2563e-07,\n 2.5627e-07, 2.9693e-07, 3.4808e-07, 2.3952e-07, 2.3560e-07, 4.3328e-07,\n 3.5887e-07, 3.1825e-07, 1.2514e-07, 3.5611e-07, 1.9743e-07, 9.0684e-08,\n 3.1427e-07, 2.8987e-07, 1.5878e-07, 1.8582e-07, 2.4428e-07, 1.9156e-07,\n 2.1997e-07, 2.2396e-07, 2.8756e-07, 2.1900e-07, 4.5996e-07, 3.1181e-07,\n 3.7335e-07, 1.8851e-07, 3.9430e-07, 1.5814e-07, 7.1152e-08, 3.3474e-07,\n 2.2523e-07, 2.2151e-07, 3.3801e-07, 2.8776e-07, 2.3862e-07, 1.6238e-07,\n 1.5302e-07, 2.3336e-07, 1.9019e-07, 1.3591e-07, 3.5657e-07, 3.3209e-07,\n 3.1976e-07, 2.7448e-07, 2.9121e-07, 2.9496e-07, 3.1630e-07, 4.0501e-07,\n 3.6675e-07, 2.9018e-07, 4.0665e-07, 3.0313e-07, 4.4880e-07, 1.6705e-07,\n 1.4267e-07, 3.9530e-07, 4.0331e-07, 2.1055e-07, 3.1743e-07, 4.3339e-07,\n 1.8589e-07, 2.1722e-07, 1.3684e-07, 4.7503e-07, 1.2302e-07, 1.0313e-07,\n 2.4157e-07, 2.2642e-07, 6.4589e-10, 2.7511e-07, 1.5819e-07, 2.6258e-07,\n 2.6209e-07, 1.4568e-07, 2.8857e-07, 2.8944e-07, 2.2921e-07, 1.9293e-07,\n 1.8708e-07, 2.5509e-07, 3.2730e-07, 3.7669e-07, 4.1516e-07, 2.1599e-07,\n 3.2565e-07, 2.1794e-07, 2.0155e-07, 2.9262e-07, 3.0381e-07, 2.8204e-07,\n 2.9562e-07, 1.8101e-07, 3.2179e-07, 2.3236e-07, 2.7288e-07, 3.1693e-07,\n 1.4705e-07, 3.3113e-07, 2.3241e-07, 2.2905e-07, 1.1740e-07, 2.0800e-07,\n 3.1191e-07, 1.8555e-07, 1.7903e-07, 2.9601e-07, 2.2307e-07, 3.4995e-07,\n 3.1301e-07, 3.5587e-07, 3.8555e-07, 2.8922e-07, 2.2781e-07, 2.0783e-07,\n 3.7546e-07, 2.3805e-07, 3.5527e-07, 3.5037e-07, 2.8838e-07, 2.6903e-07,\n 9.8683e-08, 2.0528e-07, 2.8616e-07, 2.7834e-07, 4.4921e-07, 3.2371e-07,\n 2.9430e-07, 3.0961e-07, 1.9665e-07, 4.7703e-07, 1.3199e-07, 1.4511e-07,\n 1.6614e-07, 3.3142e-07, 2.3435e-07, 1.3907e-07, 3.2215e-07, 2.1930e-07,\n 2.4806e-07, 2.3886e-07, 2.7431e-07, 3.8069e-07, 1.5978e-07, 2.5274e-07,\n 2.3241e-07, 3.9467e-07, 3.3011e-07, 2.9075e-07, 3.8669e-07, 1.6693e-07,\n 1.0705e-07, 3.2581e-07, 2.2301e-07, 2.4748e-07, 3.3591e-07, 2.5318e-07,\n 1.7251e-07, 2.2753e-07, 3.6364e-07, 3.8079e-07, 2.1385e-07, 1.7824e-07,\n 2.1364e-07, 4.4789e-07, 1.8411e-07, 3.2213e-07, 2.4491e-07, 1.7791e-07,\n 1.3328e-07, 2.6314e-07, 3.6003e-07, 3.1611e-07, 1.6867e-07, 3.3040e-07,\n 1.0868e-07, 2.9242e-07, 2.3903e-07, 1.7826e-07, 4.1388e-07, 1.8012e-07,\n 1.6430e-07, 3.0997e-07, 2.7268e-07, 1.8449e-07, 4.0652e-07, 2.5353e-07,\n 3.5883e-07, 3.4857e-07, 2.4792e-07, 1.9784e-07, 3.7018e-07, 2.7227e-07,\n 3.7122e-07, 1.7250e-07, 9.2883e-08, 2.7772e-07, 2.9366e-07, 2.6413e-07,\n 2.6411e-07, 9.2334e-08, 1.7285e-07, 1.8836e-07, 1.3916e-07, 1.0605e-07,\n 1.9253e-07, 2.9649e-07, 2.1877e-07, 2.1372e-07, 2.4435e-07, 2.7261e-07,\n 3.4448e-07, 1.5889e-07, 2.6325e-07, 3.0022e-07, 2.6954e-07, 2.2011e-07,\n 2.7123e-07, 1.1561e-07, 2.6991e-07, 3.4243e-07, 3.4209e-07, 2.0396e-07,\n 2.4188e-08, 3.6758e-07, 1.5635e-07, 3.6905e-07, 2.6259e-07, 3.8687e-07,\n 4.7996e-07, 1.8078e-07, 2.1399e-07, 2.5266e-07, 1.4999e-07, 2.1441e-07,\n 1.4788e-07, 2.1741e-07, 9.1990e-08, 2.6614e-07, 3.7700e-07, 3.6182e-07,\n 3.6236e-07, 2.6526e-07, 3.3645e-07, 1.1933e-07, 2.2411e-07, 3.3755e-07,\n 2.1433e-07, 2.4179e-07, 3.1439e-07, 3.4441e-07, 1.0257e-07, 1.6522e-07,\n 1.9009e-07, 2.2387e-07, 2.0718e-07, 2.9718e-07, 4.3104e-07, 1.5074e-07,\n 3.9462e-07, 1.9716e-07, 4.2145e-07, 2.9546e-07, 2.5878e-07, 4.3282e-07,\n 2.6977e-07, 3.2924e-07, 3.1842e-07, 2.2467e-07, 2.6467e-07, 3.6254e-07,\n 3.0816e-07, 1.7705e-07, 3.1104e-07, 2.2346e-07, 2.1714e-07, 1.9056e-07,\n 1.3208e-07, 2.5582e-07, 2.1585e-07, 1.4291e-07, 4.6411e-07, 2.5803e-07,\n 1.5700e-07, 2.7100e-07, 1.7117e-07, 3.7821e-07, 3.3190e-07, 2.8111e-07,\n 1.8160e-07, 2.7962e-07, 1.7832e-07, 1.5373e-07, 2.8135e-07, 1.4392e-07,\n 1.2374e-07, 1.5946e-07, 3.9163e-07, 2.9864e-07, 1.5609e-07, 1.6107e-07,\n 3.6032e-07, 2.3995e-07, 1.0812e-07, 3.3769e-07, 2.4657e-07, 3.6158e-07,\n 3.8523e-07, 1.2528e-07, 2.2048e-07, 3.0105e-07, 4.2159e-07, 3.1306e-07,\n 1.5309e-07, 2.6877e-07, 1.0997e-07, 2.1401e-07, 2.8960e-07, 2.2950e-07,\n 2.6709e-07, 3.3779e-07, 4.1425e-07, 9.7348e-08, 1.9150e-07, 3.3333e-07,\n 1.7449e-07, 2.9185e-07, 4.2516e-07, 1.4202e-07, 2.8163e-07, 2.7556e-07,\n 2.6623e-07, 1.8766e-07, 2.1143e-07, 3.4654e-07, 1.7227e-07, 2.8115e-07,\n 4.5815e-07, 2.0989e-07, 1.9896e-07, 2.8303e-07, 3.1401e-07, 3.3674e-07,\n 9.0994e-08, 3.1324e-07, 3.4415e-07, 3.7619e-07, 3.6785e-07, 3.0748e-07,\n 2.2138e-07, 3.8593e-07, 2.5920e-07, 1.2004e-07, 2.4800e-07, 4.2623e-07,\n 1.6435e-07, 2.9217e-07, 4.2009e-07, 2.9591e-07, 2.2528e-07, 3.0166e-07,\n 2.8132e-07, 2.9005e-07, 1.2789e-07, 2.5149e-07, 1.3761e-07, 8.1217e-08,\n 1.5388e-07, 2.6906e-07], device='cuda:0')" }, "4": { "step": "tensor(12520.)", "exp_avg": "tensor([[-6.2645e-06, 2.7620e-05, -6.3752e-06, ..., -2.2096e-07,\n 1.1970e-05, 8.1451e-06],\n [-5.5997e-06, -2.0422e-05, 5.4662e-06, ..., -2.0322e-06,\n 3.8756e-06, -6.0927e-06],\n [-1.9815e-06, -3.1985e-05, 1.1588e-05, ..., 5.0815e-07,\n -2.6333e-05, 1.2598e-06],\n ...,\n [-3.2060e-05, -3.0144e-06, 4.5311e-06, ..., -1.0798e-06,\n -5.0732e-05, -9.6518e-06],\n [ 7.6311e-06, -1.6229e-06, -7.7973e-06, ..., -1.1816e-06,\n -6.2412e-05, 9.8432e-06],\n [-1.5716e-05, -9.9179e-05, -1.7823e-05, ..., -3.2049e-06,\n 6.9133e-06, -3.0023e-06]], device='cuda:0')", "exp_avg_sq": "tensor([[2.4652e-09, 7.9788e-10, 8.8448e-10, ..., 5.6255e-11, 3.4621e-10,\n 2.6910e-09],\n [4.6996e-09, 2.7530e-09, 3.1170e-09, ..., 6.2600e-11, 5.3921e-10,\n 4.2599e-09],\n [3.0225e-09, 2.1399e-09, 1.4565e-09, ..., 1.4477e-10, 1.0545e-09,\n 2.2051e-09],\n ...,\n [1.8733e-08, 1.7064e-09, 4.4232e-09, ..., 8.1151e-11, 2.0680e-09,\n 4.5656e-09],\n [4.0706e-09, 1.4898e-09, 3.2587e-09, ..., 7.6016e-11, 3.5762e-09,\n 5.8001e-09],\n [5.5760e-09, 3.0821e-09, 5.4045e-09, ..., 1.3457e-10, 5.7061e-10,\n 6.1333e-09]], device='cuda:0')" }, "5": { "step": "tensor(11268.)", "exp_avg": "tensor([[-1.8525e-06, 2.0083e-07, 3.1452e-07, ..., 7.3335e-07,\n 0.0000e+00, 5.2947e-07],\n [ 1.7694e-06, -9.4981e-08, 5.4940e-07, ..., -9.8179e-07,\n 0.0000e+00, 4.1946e-08],\n [ 1.5789e-07, -1.6118e-07, 1.0848e-06, ..., 3.7259e-06,\n 0.0000e+00, 2.9067e-06],\n ...,\n [-4.1457e-06, -1.7088e-07, -2.2955e-07, ..., 3.0773e-07,\n 0.0000e+00, 9.7976e-07],\n [-3.9881e-08, -1.9297e-07, -3.0809e-07, ..., -6.9249e-07,\n 0.0000e+00, 6.4987e-08],\n [ 3.2264e-07, 1.2982e-07, 1.1459e-07, ..., -1.1472e-06,\n 0.0000e+00, -1.5853e-06]], device='cuda:0')", "exp_avg_sq": "tensor([[2.7611e-11, 3.6099e-12, 1.5492e-11, ..., 2.4540e-12, 0.0000e+00,\n 6.1661e-12],\n [1.3127e-11, 5.1008e-12, 1.4483e-11, ..., 2.0982e-11, 0.0000e+00,\n 8.0593e-12],\n [1.1453e-11, 8.4014e-12, 8.0252e-12, ..., 5.5600e-11, 0.0000e+00,\n 6.6102e-11],\n ...,\n [3.4881e-11, 7.9718e-12, 7.6355e-12, ..., 1.5760e-12, 0.0000e+00,\n 3.5873e-12],\n [9.0826e-13, 1.3714e-12, 4.4607e-11, ..., 6.1792e-11, 0.0000e+00,\n 1.2949e-11],\n [2.1942e-12, 9.8990e-12, 7.6443e-12, ..., 2.1875e-10, 0.0000e+00,\n 2.6375e-11]], device='cuda:0')" }, "6": { "step": "tensor(11268.)", "exp_avg": "tensor([ 8.4450e-06, -1.1573e-05, 2.1310e-05, ..., -5.5773e-06,\n 2.5801e-06, 1.5663e-05], device='cuda:0')", "exp_avg_sq": "tensor([2.8729e-09, 2.0459e-09, 2.6377e-09, ..., 1.2660e-09, 1.7396e-09,\n 1.8250e-09], device='cuda:0')" }, "7": { "step": "tensor(11268.)", "exp_avg": "tensor([[ 4.5972e-07, 3.1196e-08, 5.7611e-07, ..., 8.5632e-08,\n 2.1753e-08, -4.2801e-07],\n [ 1.6404e-06, 2.7880e-07, -6.3306e-07, ..., 6.9177e-07,\n 3.6146e-07, -1.0307e-06],\n [ 4.5100e-07, 5.2791e-07, -1.6244e-07, ..., -1.9920e-07,\n 9.6318e-07, -1.0921e-06],\n ...,\n [-7.4474e-08, -2.5112e-06, 1.7036e-07, ..., -5.1389e-08,\n -3.4643e-07, 4.7856e-07],\n [ 4.3694e-07, -1.3849e-06, -3.8582e-07, ..., -1.0422e-07,\n 5.3094e-08, -2.7910e-07],\n [-5.7219e-08, 5.0992e-07, 3.4745e-08, ..., 7.7025e-07,\n -2.7766e-08, -1.0441e-06]], device='cuda:0')", "exp_avg_sq": "tensor([[5.2503e-12, 2.0841e-12, 2.7646e-12, ..., 1.8498e-12, 2.7767e-12,\n 2.9103e-12],\n [7.1288e-12, 3.6513e-12, 3.8564e-12, ..., 4.4297e-12, 5.1838e-12,\n 6.0143e-12],\n [6.6456e-12, 4.2578e-12, 3.7655e-12, ..., 3.2873e-12, 4.3643e-12,\n 7.3331e-12],\n ...,\n [5.9260e-12, 7.8217e-12, 6.7143e-12, ..., 4.9780e-12, 7.2787e-12,\n 5.6242e-12],\n [5.6961e-12, 3.5072e-12, 4.5105e-12, ..., 2.6611e-12, 4.2406e-12,\n 6.4120e-12],\n [8.5862e-12, 3.6779e-12, 5.7739e-12, ..., 3.1581e-11, 5.1929e-12,\n 3.1326e-12]], device='cuda:0')" }, "32": { "step": "tensor(11268.)", "exp_avg": "tensor([5.6052e-45], device='cuda:0')", "exp_avg_sq": "tensor([4.5374e-10], device='cuda:0')" }, "33": { "step": "tensor(11268.)", "exp_avg": "tensor([-5.6052e-45, 5.6052e-45, -5.6052e-45], device='cuda:0')", "exp_avg_sq": "tensor([4.1304e-12, 2.0078e-11, 6.1141e-12], device='cuda:0')" }, "34": { "step": "tensor(11268.)", "exp_avg": "tensor([-5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45],\n device='cuda:0')", "exp_avg_sq": "tensor([2.4649e-08, 2.2347e-10, 3.0183e-10, 3.1322e-10, 3.5911e-10, 4.1252e-10,\n 3.2797e-10, 2.4288e-10, 3.0678e-10, 2.7262e-10], device='cuda:0')" }, "36": { "step": "tensor(11268.)", "exp_avg": "tensor([[ 5.6052e-45, 5.6052e-45, 5.6052e-45, ..., 5.6052e-45,\n 0.0000e+00, 5.6052e-45],\n [ 5.6052e-45, -5.6052e-45, 5.6052e-45, ..., 5.6052e-45,\n 0.0000e+00, -5.6052e-45],\n [ 5.6052e-45, 5.6052e-45, 5.6052e-45, ..., 5.6052e-45,\n 0.0000e+00, 5.6052e-45],\n ...,\n [ 5.6052e-45, 5.6052e-45, 5.6052e-45, ..., 5.6052e-45,\n 0.0000e+00, 5.6052e-45],\n [ 5.6052e-45, 5.6052e-45, -5.6052e-45, ..., 5.6052e-45,\n 0.0000e+00, 5.6052e-45],\n [-5.6052e-45, 5.6052e-45, -5.6052e-45, ..., 5.6052e-45,\n 0.0000e+00, 5.6052e-45]], device='cuda:0')", "exp_avg_sq": "tensor([[3.8067e-17, 1.7153e-17, 2.5486e-17, ..., 1.1141e-16, 0.0000e+00,\n 3.7600e-17],\n [6.8525e-18, 1.6567e-17, 4.9828e-17, ..., 5.5088e-17, 0.0000e+00,\n 2.2115e-17],\n [6.1496e-15, 1.4550e-15, 8.0845e-14, ..., 2.5919e-14, 0.0000e+00,\n 7.2322e-14],\n ...,\n [1.7139e-15, 7.1278e-17, 1.3499e-14, ..., 7.5328e-15, 0.0000e+00,\n 2.0268e-14],\n [4.6196e-17, 1.6623e-17, 4.8855e-18, ..., 1.8139e-16, 0.0000e+00,\n 9.3531e-17],\n [1.5585e-18, 2.9243e-17, 3.8203e-18, ..., 9.7949e-18, 0.0000e+00,\n 3.9900e-17]], device='cuda:0')" }, "37": { "step": "tensor(11268.)", "exp_avg": "tensor([ 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 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7.9951e-16, 5.2272e-15, 4.2257e-17, 2.2060e-15, 1.0616e-14, 2.1544e-13,\n 1.5012e-14, 1.2699e-15, 2.5436e-19, 6.1730e-15, 5.6367e-15, 1.1489e-13,\n 9.5783e-16, 3.8587e-15, 1.8567e-15, 8.2341e-15, 6.5675e-15, 6.1851e-15,\n 9.1247e-16, 3.1165e-14, 3.7633e-14, 1.8773e-14, 4.1426e-14, 5.5167e-15,\n 2.8459e-15, 7.7618e-18, 6.5322e-15, 2.0749e-15, 7.1503e-16, 2.6115e-15,\n 4.2895e-15, 2.7359e-17, 4.6596e-14, 1.1949e-14, 2.0194e-15, 7.2043e-18,\n 6.9617e-16, 4.9106e-15, 3.7680e-14, 7.1836e-14, 2.9661e-14, 2.3196e-15,\n 3.0788e-14, 1.3530e-14, 9.0382e-15, 4.0221e-15, 3.7420e-15, 1.6316e-16,\n 8.0276e-16, 5.7792e-14, 3.3770e-14, 3.9143e-14, 9.5567e-15, 2.1369e-16,\n 9.7510e-14, 4.1525e-15, 8.8275e-15, 1.1524e-15, 9.2456e-15, 3.5167e-15,\n 4.8509e-15, 3.1635e-13, 2.1365e-16, 4.1961e-15, 4.1801e-15, 1.2086e-13,\n 6.7483e-14, 7.3396e-15, 1.5462e-14, 4.1012e-15, 1.7197e-15, 2.2589e-14,\n 1.1603e-14, 1.5134e-14, 1.6699e-15, 6.5712e-14, 2.6431e-16, 9.0672e-16,\n 2.9748e-13, 9.0782e-15, 2.6697e-16, 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1.8734e-16, 5.5284e-15, 3.2587e-14, 3.6043e-17, 8.3133e-15, 1.4193e-13,\n 6.1072e-15, 8.2739e-15, 2.1225e-14, 4.3891e-15, 1.7124e-15, 1.0957e-14,\n 4.3003e-15, 7.7113e-15, 3.6258e-15, 2.1638e-14, 5.2819e-15, 3.4504e-15,\n 1.2517e-14, 2.8603e-15, 3.3005e-15, 4.7209e-15, 2.7842e-14, 2.9940e-16,\n 1.0925e-13, 2.1956e-15, 3.5961e-15, 1.4457e-14, 6.4765e-15, 5.1526e-16,\n 1.5431e-14, 1.4876e-13, 5.8184e-14, 1.8268e-13, 2.8620e-15, 1.5188e-14,\n 9.0186e-15, 4.2205e-14, 3.3383e-16, 9.0653e-17], device='cuda:0')" }, "39": { "step": "tensor(11268.)", "exp_avg": "tensor([ 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 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8.2893e-14, 1.4741e-14, 4.0722e-15, 7.6887e-18,\n 8.9701e-16, 8.2245e-15, 4.2952e-14, 6.8075e-14, 6.1317e-14, 4.2915e-15,\n 5.8528e-14, 2.6968e-14, 1.6523e-14, 4.5581e-15, 8.0665e-15, 3.9300e-16,\n 1.6469e-15, 7.5726e-14, 3.4086e-14, 4.7739e-14, 1.9722e-14, 3.7571e-16,\n 6.7503e-14, 6.8223e-15, 1.1958e-14, 2.0580e-15, 1.4780e-14, 6.5223e-15,\n 7.0887e-15, 3.3093e-13, 4.7863e-16, 1.1197e-14, 3.7104e-15, 1.0915e-13,\n 1.0472e-13, 1.5193e-14, 3.4298e-14, 4.2535e-15, 2.0393e-15, 3.1299e-14,\n 1.4219e-14, 1.8227e-14, 2.9983e-15, 5.6726e-14, 3.5792e-16, 1.5369e-15,\n 2.9401e-13, 2.6493e-14, 5.8427e-16, 6.7892e-15, 2.0184e-14, 6.4888e-15,\n 1.1644e-13, 2.2739e-13, 6.5108e-15, 1.8804e-14, 1.5648e-15, 4.4721e-16,\n 3.0549e-15, 1.2460e-14, 1.1651e-14, 2.4019e-14, 1.5490e-15, 5.2865e-14,\n 5.5015e-16, 1.1172e-15, 3.9455e-14, 1.6704e-14, 1.6285e-14, 8.9957e-14,\n 1.4693e-15, 6.6824e-14, 6.8855e-16, 3.2606e-15, 5.4023e-16, 5.8005e-14,\n 2.6327e-16, 4.6268e-15, 7.3734e-14, 3.8475e-14, 2.1500e-15, 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3.7460e-16, 2.3735e-14, ..., 1.3488e-14, 0.0000e+00,\n 1.2141e-14],\n [7.7572e-18, 1.7120e-17, 2.8716e-16, ..., 2.4899e-17, 0.0000e+00,\n 1.3751e-16],\n [1.4298e-17, 1.8727e-16, 1.2743e-15, ..., 1.4906e-16, 0.0000e+00,\n 1.2532e-15]], device='cuda:0')" }, "41": { "step": "tensor(11268.)", "exp_avg": "tensor([ 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 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5.7919e-14, 4.4626e-14,\n 1.6331e-16, 5.3547e-15, 1.6431e-16, 5.4033e-16, 2.4894e-14, 1.5102e-14,\n 2.3882e-15, 1.1468e-15, 4.9915e-15, 6.9343e-16, 2.4302e-14, 1.3124e-14,\n 3.4953e-14, 4.0768e-14, 1.4929e-14, 1.8953e-14, 1.0859e-14, 1.1394e-13,\n 1.0749e-13, 4.9827e-15, 4.8385e-13, 3.7130e-15, 6.2632e-15, 8.3331e-16,\n 1.6321e-14, 1.1423e-15, 1.2555e-14, 4.3924e-15, 3.4059e-14, 1.0641e-15,\n 2.0345e-16, 2.4134e-13, 9.5718e-17, 9.1456e-15, 2.3116e-14, 2.2571e-14,\n 4.5785e-16, 1.4209e-14, 2.2460e-14, 2.3802e-15, 7.9168e-14, 5.2026e-15,\n 3.3812e-15, 5.4728e-14, 2.6167e-15, 4.7797e-15, 9.7998e-14, 1.0755e-13,\n 1.9456e-14, 2.4476e-14, 1.1750e-15, 1.4712e-14, 1.8045e-14, 8.6582e-14,\n 7.7119e-16, 2.4474e-14, 5.7945e-15, 1.2996e-14, 4.8676e-15, 5.0789e-15,\n 9.6839e-15, 1.3596e-13, 4.3025e-14, 1.1113e-13, 2.6762e-14, 4.1902e-15,\n 4.7477e-15, 1.4556e-16, 1.1858e-14, 1.9019e-15, 1.6973e-15, 3.2214e-14,\n 7.9529e-15, 1.6008e-15, 1.7996e-13, 2.0660e-14, 6.6256e-15, 1.3284e-16,\n 6.0693e-16, 1.0772e-14, 1.9320e-14, 6.0839e-15, 1.7616e-13, 6.9310e-16,\n 1.6628e-13, 1.1510e-13, 1.7820e-14, 3.3223e-15, 5.3499e-15, 3.8657e-15,\n 3.4383e-16, 8.6125e-14, 1.1522e-15, 1.4429e-14, 1.2351e-14, 2.8312e-15,\n 1.2383e-14, 5.3344e-14, 1.6396e-14, 1.2877e-15, 6.2289e-14, 5.3684e-15,\n 5.9515e-15, 2.0442e-14, 2.4870e-15, 1.3704e-14, 3.3680e-15, 5.2845e-14,\n 1.3833e-13, 2.0152e-14, 1.6598e-14, 1.2038e-15, 4.7986e-15, 1.8841e-13,\n 1.4681e-15, 1.2612e-14, 4.6593e-15, 1.4016e-14, 4.7119e-16, 5.0424e-15,\n 1.8606e-13, 8.8661e-15, 6.4000e-16, 1.6090e-14, 1.2474e-14, 1.4845e-15,\n 5.0322e-14, 8.9860e-14, 2.4147e-15, 5.6877e-15, 6.4036e-14, 5.3083e-16,\n 3.2841e-15, 1.6618e-14, 4.2403e-15, 5.5542e-14, 1.4860e-15, 3.6323e-14,\n 3.8305e-15, 8.5756e-17, 4.8387e-14, 1.1995e-14, 4.4635e-15, 4.7759e-14,\n 1.6141e-14, 6.1128e-14, 2.0181e-16, 9.5804e-15, 2.3039e-15, 5.0961e-14,\n 1.7736e-16, 7.8483e-14, 1.0608e-14, 4.7326e-14, 4.7014e-15, 1.6805e-14,\n 5.0852e-16, 3.8005e-17, 4.1446e-15, 1.8409e-14, 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-5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45], device='cuda:0')", "exp_avg_sq": "tensor([3.2221e-17, 2.3780e-16, 2.2105e-13, 4.4502e-18, 5.7181e-14, 3.8518e-14,\n 8.5349e-15, 9.1733e-15, 2.1897e-13, 5.0435e-15, 5.1417e-15, 1.6252e-14,\n 2.1843e-16, 3.5596e-15, 1.0637e-15, 3.0561e-15, 1.4958e-14, 3.8395e-15,\n 6.3977e-16, 4.3558e-16, 1.0857e-14, 1.7651e-15, 2.7146e-14, 1.6526e-15,\n 2.9408e-14, 3.7856e-14, 7.7684e-15, 7.3837e-15, 7.4168e-15, 6.0152e-14,\n 3.4436e-15, 8.1554e-15, 3.3546e-13, 2.7615e-15, 1.6998e-15, 2.9954e-16,\n 1.7507e-14, 1.1380e-15, 9.9424e-15, 5.3986e-15, 7.2674e-15, 2.8193e-16,\n 1.3108e-16, 2.9988e-14, 9.7396e-18, 1.2368e-14, 3.4146e-15, 1.0136e-14,\n 2.1498e-15, 3.3743e-15, 3.7161e-14, 1.6617e-15, 9.6183e-15, 2.3121e-15,\n 4.3459e-15, 1.1476e-13, 7.9065e-16, 5.3319e-15, 7.0912e-15, 1.5180e-13,\n 1.0942e-14, 1.1974e-14, 1.2795e-15, 1.2299e-14, 1.3653e-14, 4.1547e-14,\n 1.6777e-16, 2.3135e-14, 1.5251e-15, 5.0312e-15, 6.3649e-15, 2.5431e-14,\n 4.9046e-16, 4.7807e-14, 7.5061e-14, 3.6039e-14, 2.3256e-15, 2.3971e-15,\n 6.7792e-16, 1.1010e-16, 1.0003e-14, 6.9985e-16, 1.5180e-15, 8.1027e-16,\n 1.8185e-14, 1.3120e-16, 3.0670e-14, 1.3191e-14, 3.7638e-15, 1.7384e-17,\n 6.3621e-18, 7.0876e-15, 2.0757e-14, 1.1330e-14, 2.7984e-14, 1.2147e-15,\n 6.7419e-14, 3.7497e-14, 2.2319e-15, 4.8152e-15, 8.1164e-15, 2.7867e-15,\n 5.9513e-15, 8.7768e-14, 1.0010e-14, 6.8157e-15, 1.1766e-14, 1.1253e-15,\n 5.0218e-15, 2.0101e-15, 6.8028e-16, 5.4253e-15, 4.8569e-15, 4.5639e-15,\n 6.9823e-16, 2.0864e-14, 2.5707e-15, 1.3948e-13, 1.5823e-15, 5.5167e-14,\n 7.8781e-14, 7.5435e-15, 7.3501e-14, 2.0559e-15, 4.5517e-15, 1.2382e-13,\n 2.7912e-15, 1.8520e-15, 3.6641e-15, 9.9568e-15, 4.3837e-16, 3.8521e-15,\n 4.6215e-13, 1.2873e-14, 4.6035e-16, 1.7221e-14, 1.6966e-14, 9.8406e-15,\n 1.0068e-13, 1.8308e-14, 7.3890e-15, 1.9142e-15, 1.8010e-14, 2.1470e-16,\n 1.5325e-16, 2.7532e-14, 9.3528e-15, 1.0999e-14, 3.1553e-16, 2.6652e-15,\n 7.8695e-15, 1.5046e-17, 1.1709e-14, 3.4353e-15, 6.5927e-16, 6.6015e-14,\n 3.7573e-15, 1.5267e-14, 3.2925e-17, 2.5951e-15, 6.9435e-16, 5.8913e-14,\n 5.5021e-16, 3.1213e-14, 1.1712e-13, 1.1651e-14, 3.0052e-15, 1.6543e-14,\n 4.9977e-16, 9.0270e-17, 1.2791e-14, 6.5730e-14, 8.1586e-14, 5.7642e-15,\n 1.3801e-14, 2.5489e-16, 1.7707e-14, 4.8065e-15, 1.7173e-15, 1.8022e-15,\n 1.9385e-15, 1.9680e-14, 1.1710e-16, 6.0444e-16, 4.8995e-15, 3.9662e-13,\n 2.7069e-15, 1.0599e-16, 5.5688e-16, 3.7629e-15, 6.9629e-14, 4.1602e-16,\n 2.6357e-14, 7.7124e-15, 6.5353e-15, 8.6329e-15, 4.4826e-16, 1.2106e-14,\n 8.2894e-15, 1.3775e-14, 1.7414e-14, 2.2226e-16, 5.2368e-14, 9.3278e-17,\n 9.4145e-15, 8.0152e-17, 4.6441e-15, 2.3519e-14, 2.5581e-15, 5.9930e-15,\n 1.4540e-14, 4.3575e-15, 6.9603e-14, 6.9764e-14, 1.2537e-13, 3.0654e-14,\n 3.4575e-15, 2.6722e-15, 1.1362e-13, 1.1116e-15, 8.0064e-15, 1.9330e-13,\n 1.0896e-15, 1.5530e-14, 2.0358e-13, 1.9662e-15, 7.9374e-15, 9.0728e-15,\n 2.0246e-14, 8.4919e-15, 8.6440e-15, 4.9153e-15, 1.8549e-14, 4.6651e-15,\n 1.1298e-14, 2.1960e-14, 1.8951e-15, 1.4055e-15, 1.0752e-14, 4.4425e-16,\n 1.6073e-13, 5.8103e-15, 9.0563e-16, 3.8933e-14, 8.9763e-15, 9.2670e-17,\n 1.8807e-14, 4.6141e-15, 2.2445e-13, 2.5750e-13, 2.0312e-15, 4.4503e-15,\n 2.6517e-15, 6.0416e-14, 1.2384e-15, 2.6802e-16], device='cuda:0')" }, "47": { "step": "tensor(11268.)", "exp_avg": "tensor([ 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n 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-5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45], device='cuda:0')", "exp_avg_sq": "tensor([8.1858e-17, 1.6639e-16, 2.7344e-13, 4.0303e-17, 8.0904e-14, 5.0434e-14,\n 1.4054e-14, 9.6806e-15, 2.6930e-13, 6.0823e-15, 8.4453e-15, 2.3687e-14,\n 4.9485e-16, 7.1055e-15, 2.0272e-15, 2.6819e-15, 2.1727e-14, 6.0245e-15,\n 9.6759e-16, 5.8194e-16, 2.0680e-14, 1.7442e-15, 2.4594e-14, 3.4882e-15,\n 2.7245e-14, 7.8035e-14, 1.1899e-14, 1.0575e-14, 6.1116e-15, 8.8312e-14,\n 3.1024e-15, 1.1024e-14, 4.4564e-13, 4.7860e-15, 3.3271e-15, 4.3636e-16,\n 2.4975e-14, 1.1739e-15, 2.0284e-14, 6.8328e-15, 1.2723e-14, 7.8369e-16,\n 2.3770e-16, 4.7221e-14, 2.5042e-17, 1.2960e-14, 7.3817e-15, 1.2047e-14,\n 2.4212e-15, 7.7067e-15, 6.3008e-14, 2.7911e-15, 2.0380e-14, 4.1406e-15,\n 3.5066e-15, 1.0424e-13, 1.1721e-15, 8.0569e-15, 1.1376e-14, 2.1048e-13,\n 1.7826e-14, 1.6967e-14, 1.5520e-15, 3.3078e-14, 1.9758e-14, 6.1289e-14,\n 3.7028e-16, 3.4984e-14, 3.1772e-15, 1.0662e-14, 1.1249e-14, 3.1870e-14,\n 8.9313e-16, 7.8399e-14, 8.4882e-14, 6.2899e-14, 5.4898e-15, 5.8575e-15,\n 1.7541e-15, 1.7928e-16, 2.1756e-14, 1.4455e-15, 2.4436e-15, 1.8492e-15,\n 1.6146e-14, 3.9640e-16, 6.4260e-14, 1.1268e-14, 6.0600e-15, 2.4191e-17,\n 6.2853e-17, 9.8151e-15, 2.8063e-14, 2.0515e-14, 5.8271e-14, 2.9494e-15,\n 9.3787e-14, 6.0913e-14, 3.0223e-15, 5.1438e-15, 1.2453e-14, 4.5029e-15,\n 8.5421e-15, 9.5424e-14, 1.6047e-14, 1.2753e-14, 2.3025e-14, 2.0861e-15,\n 1.2557e-14, 2.4618e-15, 6.7453e-16, 5.1971e-15, 3.7260e-15, 7.7115e-15,\n 1.9785e-15, 2.1205e-14, 3.5544e-15, 9.9211e-14, 1.9108e-15, 6.7231e-14,\n 1.2303e-13, 1.1390e-14, 7.9602e-14, 3.1206e-15, 5.6612e-15, 1.5170e-13,\n 7.2157e-15, 4.9385e-15, 5.4610e-15, 1.5062e-14, 7.3519e-16, 7.7652e-15,\n 3.2715e-13, 2.8498e-14, 7.3461e-16, 1.8604e-14, 1.3507e-14, 1.0996e-14,\n 1.0254e-13, 4.8244e-14, 1.0600e-14, 2.4725e-15, 2.7765e-14, 4.6268e-16,\n 2.1681e-16, 2.4749e-14, 1.2235e-14, 1.9781e-14, 6.9202e-16, 5.8674e-15,\n 8.1988e-15, 5.8142e-19, 2.3760e-14, 5.3514e-15, 1.3173e-15, 1.1447e-13,\n 7.3570e-15, 2.9697e-14, 4.4526e-17, 4.8173e-15, 1.3454e-15, 7.8570e-14,\n 6.9072e-16, 3.9804e-14, 1.3756e-13, 2.2732e-14, 3.3569e-15, 1.8760e-14,\n 7.5448e-16, 1.0051e-16, 1.5081e-14, 4.4393e-14, 8.9906e-14, 1.2726e-14,\n 1.2458e-14, 3.7392e-16, 3.7139e-14, 9.5609e-15, 1.7711e-15, 1.5703e-15,\n 3.1307e-15, 2.0974e-14, 1.5723e-16, 9.6011e-16, 4.3199e-15, 3.8847e-13,\n 5.5342e-15, 2.1953e-16, 1.2891e-15, 4.4739e-15, 5.7559e-14, 8.5342e-16,\n 4.2175e-14, 1.7165e-14, 7.6742e-15, 1.1292e-14, 1.0010e-15, 2.1668e-14,\n 1.5842e-14, 2.9142e-14, 2.2335e-14, 7.2067e-16, 1.2137e-13, 2.9658e-16,\n 1.3719e-14, 5.9972e-17, 9.7136e-15, 3.6628e-14, 2.1907e-15, 8.4198e-15,\n 2.6353e-14, 7.4431e-15, 8.7313e-14, 1.1890e-13, 2.2969e-13, 2.7633e-14,\n 5.4240e-15, 4.6003e-15, 1.4608e-13, 1.3887e-15, 1.2949e-14, 2.1346e-13,\n 1.6872e-15, 1.9151e-14, 2.0396e-13, 1.9906e-15, 6.0261e-15, 2.2228e-14,\n 3.5790e-14, 1.1408e-14, 1.4117e-14, 1.0162e-14, 1.6229e-14, 8.1271e-15,\n 2.2605e-14, 3.0292e-14, 3.4933e-15, 2.7743e-15, 1.2864e-14, 6.5563e-16,\n 1.2506e-13, 9.9274e-15, 1.6017e-15, 7.4896e-14, 1.9336e-14, 2.3273e-16,\n 2.6912e-14, 9.7578e-15, 2.4297e-13, 1.7713e-13, 4.4225e-15, 9.5167e-15,\n 3.5463e-15, 6.8024e-14, 1.8365e-15, 6.0661e-16], device='cuda:0')" }, "48": { "step": 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4.0726e-17],\n [1.1707e-18, 6.9542e-19, 2.5897e-16, ..., 2.1996e-17, 0.0000e+00,\n 1.7356e-16]], device='cuda:0')" }, "49": { "step": "tensor(11268.)", "exp_avg": "tensor([ 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 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5.0532e-11, 1.4660e-12, 8.0680e-12, 1.8885e-13,\n 8.3608e-13, 3.2911e-11, 1.4984e-14, 1.6554e-12, 7.0559e-12, 4.8729e-12,\n 9.5765e-13, 9.2834e-12, 1.7130e-11, 5.7221e-12, 1.8691e-11, 1.5239e-12,\n 1.9374e-12, 4.2922e-11, 1.4852e-13, 6.5507e-12, 3.4238e-11, 4.2493e-11,\n 5.4331e-12, 4.8454e-12, 1.9277e-13, 3.3510e-11, 1.5998e-12, 4.4522e-11,\n 5.4091e-14, 1.1303e-11, 6.3632e-12, 6.3911e-12, 1.3135e-11, 2.1166e-11,\n 5.6491e-12, 1.5607e-11, 6.8964e-12, 2.6405e-11, 1.5133e-11, 5.9661e-12,\n 9.1863e-13, 3.5415e-14, 3.1450e-11, 2.2760e-12, 1.8144e-12, 1.2206e-11,\n 2.8732e-12, 4.2165e-13, 6.8155e-11, 2.0992e-12, 2.4031e-12, 1.0226e-13,\n 2.5338e-14, 2.5834e-12, 9.6755e-12, 2.1273e-12, 5.9385e-11, 1.8328e-12,\n 3.5148e-11, 4.8572e-11, 7.0016e-12, 4.2317e-12, 4.2796e-12, 1.8152e-12,\n 8.0959e-13, 1.4026e-11, 8.1052e-12, 5.7312e-12, 8.2805e-12, 6.3858e-13,\n 5.3826e-12, 6.4865e-12, 3.0654e-12, 7.6821e-13, 3.7586e-11, 9.4421e-13,\n 1.1766e-12, 3.7463e-11, 1.2125e-12, 7.7899e-12, 1.4163e-12, 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3.6235e-15, 1.0647e-14,\n 1.7002e-14, 8.7719e-15, 1.3310e-14, 2.6390e-14, 9.0026e-15, 4.6925e-14,\n 6.3866e-14, 7.3817e-14, 4.1449e-13, 1.2142e-15, 1.9512e-14, 4.2063e-16,\n 3.5068e-14, 1.9142e-15, 1.3818e-13, 4.3924e-15, 2.1632e-14, 6.6947e-16,\n 2.4540e-15, 8.9225e-14, 4.1435e-17, 4.0651e-15, 1.9237e-14, 1.4448e-14,\n 3.4017e-15, 2.6034e-14, 4.7031e-14, 1.3200e-14, 4.8777e-14, 4.1095e-15,\n 5.2877e-15, 1.0790e-13, 6.8194e-16, 1.6696e-14, 8.7767e-14, 1.1088e-13,\n 1.4360e-14, 1.1941e-14, 6.1398e-16, 8.8449e-14, 4.8028e-15, 1.1438e-13,\n 1.8384e-16, 2.9105e-14, 1.7730e-14, 1.7184e-14, 3.6616e-14, 5.7287e-14,\n 1.3561e-14, 4.2172e-14, 2.0171e-14, 6.7424e-14, 4.1020e-14, 1.6767e-14,\n 2.7007e-15, 1.0652e-16, 8.2815e-14, 6.2717e-15, 5.3213e-15, 3.3885e-14,\n 6.9593e-15, 1.4408e-15, 1.8103e-13, 5.7175e-15, 7.8887e-15, 1.2081e-16,\n 1.0556e-16, 7.0599e-15, 2.5661e-14, 6.1505e-15, 1.5272e-13, 4.4895e-15,\n 9.0875e-14, 1.2470e-13, 1.6526e-14, 1.3845e-14, 1.2400e-14, 5.6630e-15,\n 2.5456e-15, 3.8437e-14, 2.3362e-14, 1.5184e-14, 2.3161e-14, 2.4824e-15,\n 1.3503e-14, 1.7209e-14, 9.0586e-15, 2.1674e-15, 9.8422e-14, 2.2708e-15,\n 3.5653e-15, 1.0424e-13, 4.1090e-15, 2.0438e-14, 5.4788e-15, 7.0667e-15,\n 2.1977e-13, 1.9510e-14, 7.8055e-14, 5.3797e-15, 1.2535e-15, 2.4247e-13,\n 3.0464e-14, 2.0201e-15, 1.1802e-15, 3.7769e-14, 2.6220e-17, 8.6423e-15,\n 1.2439e-13, 7.8605e-14, 4.8596e-16, 8.6190e-15, 2.2642e-14, 6.2897e-15,\n 7.1699e-14, 5.3172e-14, 9.4249e-15, 8.9476e-15, 3.5783e-14, 6.4368e-16,\n 3.3266e-15, 4.5405e-15, 2.6092e-15, 4.5339e-14, 2.9314e-15, 4.6406e-15,\n 6.5842e-15, 6.7999e-15, 1.8060e-14, 1.2404e-14, 6.2464e-15, 6.3027e-14,\n 1.5201e-15, 1.9760e-13, 7.5966e-17, 4.3822e-15, 1.8717e-15, 6.0197e-15,\n 2.8033e-16, 1.0996e-14, 5.7294e-14, 3.6597e-14, 2.2991e-15, 1.2608e-14,\n 1.9122e-16, 2.3541e-15, 7.9142e-16, 1.7557e-14, 1.3386e-14, 1.7594e-14,\n 9.1923e-15, 2.4230e-15, 6.7554e-14, 4.1789e-14, 2.0684e-15, 1.8825e-16,\n 1.1562e-14, 3.2297e-14, 1.0999e-16, 6.8538e-15, 5.5994e-15, 9.0526e-14,\n 1.7395e-15, 6.9443e-16, 5.6429e-15, 2.2741e-15, 1.0691e-14, 5.9086e-16,\n 1.9020e-14, 7.4463e-15, 4.4230e-14, 6.8853e-15, 3.2918e-15, 1.8939e-14,\n 8.8149e-14, 1.0601e-14, 1.4218e-14, 1.1883e-15, 1.4972e-13, 4.6770e-16,\n 1.7809e-14, 3.5999e-17, 2.2824e-14, 2.0302e-14, 2.4885e-15, 1.5281e-14,\n 1.2895e-13, 5.9094e-15, 1.0369e-14, 1.1379e-13, 4.1966e-13, 6.3487e-15,\n 4.5560e-15, 3.8610e-15, 2.2251e-13, 4.5176e-16, 3.6409e-15, 4.2719e-13,\n 7.6927e-16, 3.2542e-14, 1.5262e-13, 2.2156e-15, 4.8735e-15, 6.8892e-14,\n 1.7903e-14, 5.3348e-15, 9.1449e-14, 1.9333e-14, 8.9982e-16, 7.4665e-15,\n 3.2703e-14, 3.0842e-14, 5.1475e-15, 6.7264e-15, 3.4670e-15, 2.1725e-15,\n 1.9687e-14, 1.5335e-14, 2.6593e-15, 1.9081e-13, 2.6676e-14, 1.1402e-15,\n 2.1925e-14, 8.8225e-14, 1.0990e-13, 9.9626e-14, 3.1576e-15, 1.0534e-14,\n 3.7910e-15, 4.0610e-14, 4.9390e-16, 1.7100e-16], device='cuda:0')" }, "52": { "step": "tensor(11268.)", "exp_avg": "tensor([[-5.6052e-45, -5.6052e-45, 5.6052e-45, ..., 5.6052e-45,\n -5.6052e-45, 5.6052e-45],\n [ 5.6052e-45, -5.6052e-45, 5.6052e-45, ..., 5.6052e-45,\n -5.6052e-45, 5.6052e-45],\n [ 5.6052e-45, -5.6052e-45, 5.6052e-45, ..., 5.6052e-45,\n -5.6052e-45, 5.6052e-45],\n ...,\n [ 5.6052e-45, 5.6052e-45, 5.6052e-45, ..., 5.6052e-45,\n 5.6052e-45, 5.6052e-45],\n [ 5.6052e-45, 5.6052e-45, 5.6052e-45, ..., 5.6052e-45,\n 5.6052e-45, 5.6052e-45],\n [-5.6052e-45, -5.6052e-45, -5.6052e-45, ..., -5.6052e-45,\n -5.6052e-45, -5.6052e-45]], device='cuda:0')", "exp_avg_sq": "tensor([[1.9088e-17, 1.4973e-17, 2.7805e-17, ..., 1.8096e-18, 8.5794e-19,\n 1.3632e-16],\n [4.3612e-18, 1.2880e-17, 4.2723e-17, ..., 1.6876e-16, 1.0080e-17,\n 2.2346e-17],\n [2.6576e-17, 9.5552e-19, 1.4119e-17, ..., 8.1545e-17, 8.4221e-19,\n 1.1857e-18],\n ...,\n [3.7001e-14, 6.0222e-13, 8.1862e-13, ..., 1.4011e-12, 7.1514e-13,\n 3.5374e-13],\n [1.1024e-14, 1.8264e-13, 2.4941e-13, ..., 4.0306e-13, 2.2700e-13,\n 1.1772e-13],\n [4.5320e-15, 5.3266e-14, 7.9200e-14, ..., 1.3029e-13, 5.6265e-14,\n 2.7879e-14]], device='cuda:0')" }, "53": { "step": "tensor(11268.)", "exp_avg": "tensor([-5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 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5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45], device='cuda:0')", "exp_avg_sq": "tensor([1.5030e-16, 1.2033e-16, 3.6158e-16, 4.3927e-17, 1.7953e-16, 2.8655e-16,\n 8.1683e-17, 3.4874e-16, 8.5335e-16, 2.8842e-15, 1.0427e-16, 4.3297e-17,\n 1.2022e-15, 3.2846e-16, 2.2252e-15, 1.3137e-18, 2.2382e-16, 5.0257e-17,\n 5.9053e-16, 1.6287e-15, 1.3915e-16, 3.6341e-19, 6.2304e-18, 3.4628e-17,\n 2.1056e-16, 1.4621e-16, 3.1464e-16, 4.4039e-16, 4.0741e-17, 3.3485e-16,\n 9.2019e-16, 1.0668e-16, 6.3573e-16, 1.0061e-15, 2.2585e-15, 1.3883e-15,\n 3.5670e-16, 3.7955e-16, 6.9729e-16, 1.5652e-16, 2.7827e-17, 4.8357e-16,\n 5.0564e-16, 2.4417e-18, 3.0529e-15, 1.4523e-15, 1.3821e-17, 4.3511e-18,\n 1.6472e-16, 5.1954e-16, 5.6672e-16, 3.5148e-16, 4.0218e-16, 1.8270e-16,\n 1.6649e-15, 6.2191e-16, 9.2419e-17, 1.7225e-15, 1.3198e-17, 3.2820e-16,\n 4.8614e-16, 1.2252e-16, 1.0234e-17, 3.1667e-15, 7.9721e-17, 1.9019e-15,\n 1.1794e-17, 1.9913e-15, 3.6852e-16, 3.7442e-15, 4.4203e-15, 1.0713e-16,\n 1.0662e-15, 2.9442e-15, 2.0987e-15, 1.9514e-16, 5.1911e-15, 1.9877e-15,\n 7.2849e-15, 1.9621e-17, 2.0797e-16, 6.2376e-16, 2.4694e-16, 8.3332e-16,\n 2.6343e-15, 9.6957e-17, 1.9619e-16, 6.3558e-16, 7.5790e-15, 1.8197e-16,\n 1.4372e-15, 1.0229e-17, 5.9640e-15, 5.7337e-15, 9.8354e-16, 8.2919e-16,\n 6.5541e-18, 1.0609e-15, 1.0897e-15, 8.2907e-16, 2.4169e-15, 5.8989e-18,\n 3.1290e-17, 1.2344e-17, 6.3702e-18, 1.0085e-16, 2.5662e-17, 1.4676e-16,\n 5.9641e-16, 1.8918e-15, 2.9047e-16, 1.5169e-16, 8.6972e-17, 4.7852e-16,\n 1.3167e-16, 1.8321e-15, 6.8405e-16, 1.3351e-15, 2.0841e-15, 7.0428e-16,\n 2.8270e-17, 6.6832e-18, 1.3307e-15, 1.7973e-16, 1.2319e-16, 7.0940e-17,\n 2.3100e-15, 3.7267e-16, 5.7320e-17, 2.1158e-15, 9.0282e-17, 2.5541e-16,\n 3.6162e-16, 1.4009e-15, 2.6499e-15, 2.4433e-17, 1.0154e-16, 2.0166e-16,\n 1.4468e-16, 3.7966e-18, 5.9881e-16, 1.6655e-16, 4.8718e-17, 2.1894e-18,\n 4.8273e-16, 7.6731e-16, 1.1443e-15, 5.0164e-16, 8.8946e-17, 3.6526e-16,\n 8.5643e-18, 1.2143e-15, 1.2618e-17, 3.6602e-17, 1.8230e-15, 8.9932e-16,\n 2.9312e-18, 1.8087e-18, 1.2083e-16, 8.0881e-16, 3.6040e-15, 2.2355e-16,\n 2.1654e-16, 1.1455e-16, 3.1717e-16, 3.7409e-16, 3.0559e-16, 5.9733e-16,\n 6.9244e-18, 7.4796e-17, 8.5160e-16, 1.7150e-16, 2.1619e-16, 1.2649e-15,\n 7.9487e-19, 9.1414e-16, 1.1979e-15, 1.0900e-15, 9.2516e-18, 6.0697e-17,\n 6.9439e-17, 4.4130e-16, 1.1301e-18, 2.8590e-17, 2.0601e-16, 2.4062e-15,\n 2.2992e-16, 3.7554e-17, 1.0109e-15, 1.1461e-16, 9.8784e-17, 8.2893e-16,\n 5.8375e-16, 6.9525e-16, 3.7795e-16, 1.0749e-15, 1.2974e-18, 7.8222e-17,\n 5.8334e-16, 6.6346e-16, 1.1030e-17, 1.7091e-15, 8.1652e-17, 9.8791e-16,\n 5.3649e-17, 4.2069e-17, 1.6441e-17, 3.2359e-16, 2.0820e-15, 6.6790e-17,\n 3.4020e-16, 5.4958e-16, 1.3166e-15, 1.3994e-16, 7.2739e-18, 1.5676e-16,\n 9.1442e-17, 8.8781e-17, 4.4403e-17, 9.9208e-17, 2.5303e-17, 6.8817e-15,\n 1.8271e-15, 1.1357e-15, 3.4298e-18, 3.7691e-17, 3.7616e-16, 1.2152e-15,\n 3.6036e-15, 1.1500e-15, 4.0552e-17, 2.2085e-16, 1.2777e-15, 1.1181e-17,\n 7.3198e-16, 5.5802e-16, 1.5095e-15, 3.2981e-16, 2.3810e-16, 4.9127e-17,\n 9.8406e-17, 4.3789e-17, 1.1635e-15, 2.9990e-16, 2.8872e-16, 2.0398e-15,\n 3.5957e-16, 3.4429e-18, 7.8661e-16, 7.9789e-16, 3.3263e-15, 6.8238e-16,\n 9.7932e-16, 5.3557e-16, 8.3972e-19, 4.2418e-16, 2.2978e-30, 5.6272e-32,\n 3.5795e-31, 6.5112e-32, 3.6775e-31, 1.0948e-31, 5.9114e-31, 1.4252e-32,\n 3.2284e-31, 5.0209e-31, 4.6983e-31, 1.2069e-32, 3.0504e-34, 2.5644e-32,\n 1.4422e-31, 1.0778e-32, 2.5042e-31, 1.9182e-32, 2.2839e-31, 5.4957e-32,\n 3.5313e-33, 1.7712e-31, 1.0017e-32, 2.0640e-31, 2.9222e-33, 1.7662e-31,\n 3.9021e-31, 1.6875e-32, 1.0185e-30, 3.4740e-31, 5.6510e-32, 8.1403e-32,\n 1.0426e-31, 6.2391e-31, 5.8241e-32, 4.8005e-32, 1.9514e-32, 1.0576e-31,\n 2.8486e-31, 5.6322e-32, 9.9889e-33, 1.1582e-31, 2.3294e-32, 5.1514e-32,\n 4.8687e-32, 4.3910e-31, 1.7973e-31, 6.0212e-32, 6.4553e-32, 4.0085e-32,\n 8.0251e-32, 2.6591e-31, 2.6820e-31, 3.3614e-31, 1.3690e-31, 3.1483e-32,\n 2.7990e-31, 4.8179e-31, 6.6033e-31, 2.8822e-31, 2.3279e-31, 1.6134e-31,\n 1.1100e-32, 9.9905e-32, 7.5284e-34, 3.8992e-31, 1.0324e-30, 3.2184e-31,\n 8.6953e-33, 5.1672e-32, 3.1419e-31, 1.0506e-31, 1.7039e-31, 1.0248e-32,\n 8.7771e-32, 4.7469e-32, 1.6700e-31, 4.7043e-31, 1.6206e-30, 5.9368e-31,\n 6.4312e-32, 4.8721e-31, 5.9019e-32, 7.8748e-31, 9.6346e-32, 8.8921e-32,\n 7.9163e-31, 2.7524e-31, 1.4262e-31, 1.8249e-32, 3.1875e-32, 1.7352e-31,\n 1.8200e-31, 3.8298e-32, 1.4797e-31, 1.0522e-32, 1.3969e-32, 4.5730e-31,\n 2.4023e-32, 1.3766e-31, 2.0612e-31, 1.4378e-32, 1.2560e-31, 1.1868e-31,\n 4.7636e-32, 6.5361e-32, 4.0790e-32, 6.8090e-31, 2.7658e-31, 4.9247e-32,\n 3.7666e-32, 2.0032e-31, 2.1691e-31, 4.0737e-31, 1.7157e-31, 8.0285e-31,\n 2.2048e-31, 2.9869e-31, 6.9457e-31, 8.5282e-31, 5.1603e-31, 2.7181e-31,\n 3.2067e-31, 1.5703e-31, 3.5956e-32, 3.2210e-32, 1.7887e-30, 2.1014e-33,\n 3.3977e-31, 2.0228e-32, 7.9469e-32, 9.6858e-32, 2.4937e-31, 8.0578e-32,\n 2.1133e-32, 2.3733e-35, 5.4267e-33, 3.1921e-32, 7.1651e-32, 1.8620e-31,\n 1.7708e-32, 4.2068e-31, 1.6117e-30, 1.8194e-31, 5.2056e-31, 6.9364e-32,\n 2.8462e-31, 7.8503e-31, 3.6172e-31, 2.4241e-32, 2.6104e-32, 1.0572e-30,\n 1.8203e-31, 2.0464e-31, 9.4908e-33, 1.3021e-31, 4.5077e-31, 1.4760e-31,\n 7.7344e-34, 2.0358e-31, 5.9918e-32, 5.8322e-32, 3.3106e-31, 3.0603e-32,\n 2.1393e-32, 1.8568e-31, 1.2279e-31, 7.8630e-33, 7.2293e-32, 8.4171e-31,\n 4.9711e-32, 1.7274e-30, 8.7889e-31, 1.2384e-32, 2.8634e-31, 9.0804e-31,\n 8.9851e-31, 3.3965e-32, 4.2621e-32, 7.4448e-32, 5.2262e-32, 2.2482e-31,\n 4.4529e-33, 2.2671e-31, 1.1597e-31, 2.9173e-32, 1.0585e-31, 1.9580e-33,\n 3.6657e-31, 2.2449e-33, 4.5086e-31, 2.5167e-31, 2.7764e-31, 6.3070e-31,\n 5.7491e-31, 2.0839e-32, 1.1747e-30, 1.0670e-31, 2.7191e-31, 5.8718e-32,\n 1.7371e-33, 9.8444e-32, 1.3547e-31, 2.2597e-31, 2.6092e-32, 8.0985e-32,\n 5.3230e-33, 1.2284e-31, 1.8476e-31, 8.0932e-33, 3.6226e-31, 6.8792e-33,\n 2.0772e-31, 7.7433e-32, 3.9628e-31, 1.8137e-31, 1.0331e-32, 8.2072e-32,\n 1.9596e-31, 5.3454e-32, 5.9271e-32, 1.0799e-31, 2.1131e-31, 1.2406e-31,\n 1.6344e-31, 4.7275e-33, 2.1180e-31, 2.2774e-31, 6.0832e-31, 6.1756e-31,\n 1.5357e-32, 1.1305e-31, 1.6125e-32, 1.0779e-31, 2.3072e-33, 2.9735e-32,\n 3.5686e-32, 1.9041e-31, 6.5518e-33, 9.6570e-33, 4.2447e-32, 4.7439e-31,\n 3.3868e-32, 9.7281e-32, 2.5881e-32, 3.2417e-31, 6.6878e-31, 6.9631e-35,\n 6.3654e-31, 4.4801e-31, 6.1304e-31, 2.8852e-33, 1.0090e-31, 6.9146e-31,\n 3.0461e-32, 1.3644e-32, 8.7774e-13, 1.3257e-12, 1.3948e-14, 1.1140e-11,\n 3.0310e-12, 7.6036e-13, 1.9167e-12, 5.4003e-12, 1.0748e-13, 1.3425e-12,\n 8.8795e-12, 2.1071e-14, 6.2435e-13, 2.2625e-12, 1.1229e-11, 2.5434e-13,\n 3.3244e-12, 1.1169e-11, 7.6740e-13, 1.2850e-12, 3.5772e-12, 6.3275e-15,\n 4.7045e-12, 1.4372e-11, 9.0587e-13, 1.5664e-11, 3.3139e-13, 2.5054e-12,\n 2.0597e-12, 9.4364e-12, 2.0146e-12, 2.1854e-14, 3.5533e-13, 2.3128e-14,\n 4.3272e-12, 6.0001e-12, 6.0114e-12, 9.2311e-13, 1.7581e-13, 5.8776e-12,\n 1.1147e-11, 5.5990e-12, 6.6264e-12, 5.1708e-12, 2.2461e-12, 1.4722e-14,\n 4.0249e-12, 1.1462e-12, 5.4942e-12, 3.9154e-12, 2.1914e-11, 4.2620e-12,\n 7.2631e-13, 3.3762e-14, 1.8755e-12, 1.8706e-12, 1.2011e-11, 1.0250e-12,\n 2.8729e-12, 2.9027e-12, 2.9765e-12, 1.1425e-12, 1.0990e-12, 8.0734e-13,\n 3.1215e-13, 2.5147e-14, 6.5295e-12, 2.4350e-12, 3.3112e-12, 4.2946e-12,\n 3.1049e-13, 1.0072e-13, 6.1339e-14, 1.4566e-11, 4.7155e-13, 1.9892e-11,\n 3.8108e-12, 1.1045e-11, 5.0680e-12, 5.1284e-13, 3.2115e-12, 3.7494e-11,\n 1.3118e-12, 8.2886e-12, 3.0112e-13, 1.1266e-11, 4.0708e-12, 2.5800e-13,\n 7.2271e-14, 4.5091e-12, 6.5587e-12, 3.0592e-12, 2.2141e-14, 6.2799e-12,\n 1.6082e-11, 7.9256e-13, 3.3866e-13, 6.5728e-12, 6.1881e-13, 6.2210e-13,\n 8.3281e-13, 3.9140e-12, 1.0479e-13, 5.1375e-13, 1.3881e-12, 1.3860e-11,\n 8.3876e-12, 1.1941e-12, 1.2706e-13, 1.4892e-12, 6.7140e-13, 2.2397e-12,\n 4.1851e-12, 2.3187e-13, 3.2135e-12, 4.4724e-12, 1.1827e-12, 5.5869e-13,\n 7.8950e-12, 1.5476e-13, 5.5090e-13, 3.0284e-11, 5.5404e-12, 1.9130e-11,\n 6.9026e-12, 2.2893e-12, 1.7021e-13, 2.7997e-13, 3.4591e-12, 3.8778e-12,\n 2.1636e-12, 3.0590e-12, 7.6568e-13, 1.2954e-14, 3.3105e-12, 1.2383e-12,\n 1.7781e-12, 8.1996e-12, 9.2527e-13, 1.8089e-13, 1.4636e-15, 6.7807e-12,\n 2.9350e-12, 6.8403e-14, 2.0160e-12, 1.6296e-12, 4.2521e-13, 1.4501e-11,\n 6.1924e-13, 1.1190e-14, 1.9146e-12, 2.1659e-11, 1.1248e-12, 9.1855e-13,\n 8.5893e-12, 2.5763e-13, 9.7622e-14, 1.6231e-12, 1.4121e-15, 2.7524e-12,\n 6.9283e-12, 9.7786e-12, 2.8271e-13, 1.8488e-12, 2.5766e-12, 4.6350e-12,\n 2.1998e-12, 1.0678e-12, 1.7747e-13, 1.1593e-11, 7.1484e-13, 1.4957e-11,\n 9.4621e-12, 7.1391e-13, 2.4101e-12, 6.2597e-13, 3.8636e-14, 7.9300e-13,\n 6.4669e-12, 2.4944e-14, 4.4979e-12, 1.2853e-11, 3.3945e-14, 3.0572e-12,\n 8.4930e-12, 7.9902e-12, 2.1601e-12, 1.2484e-12, 9.7515e-14, 8.2193e-12,\n 1.4984e-13, 2.7828e-12, 1.2613e-11, 1.3055e-11, 2.2725e-12, 3.8277e-12,\n 6.8286e-12, 1.6506e-11, 1.5939e-13, 7.3215e-12, 9.0980e-13, 4.5850e-13,\n 1.6999e-11, 1.1662e-12, 5.3875e-13, 2.0797e-12, 6.7420e-13, 1.2232e-12,\n 1.9007e-12, 6.2310e-13, 3.5893e-12, 2.6925e-12, 8.6406e-12, 6.6996e-13,\n 9.9942e-14, 2.7192e-11, 8.5598e-13, 1.6101e-11, 3.2666e-14, 1.7603e-12,\n 1.3775e-12, 6.1187e-12, 6.9856e-12, 4.1244e-12, 8.9290e-12, 3.1637e-13,\n 5.6616e-12, 7.5024e-13, 3.4891e-11, 2.2587e-13, 8.2396e-13, 3.4299e-12,\n 3.5050e-12, 2.0482e-12, 7.1594e-12, 2.5906e-12, 7.2651e-13, 6.4472e-13,\n 4.3733e-12, 2.6201e-14, 6.3702e-12, 2.4042e-13, 5.9099e-16, 1.1925e-12,\n 6.0651e-12, 8.0081e-14, 1.6027e-12, 1.5621e-13, 2.1099e-13, 1.4163e-12,\n 5.0702e-12, 3.6620e-12, 2.7557e-12, 1.1961e-11, 3.6146e-12, 1.0546e-12],\n device='cuda:0')" }, "54": { "step": "tensor(11268.)", "exp_avg": "tensor([[ 5.6052e-45, 5.6052e-45, -5.6052e-45, ..., 5.6052e-45,\n -5.6052e-45, -5.6052e-45],\n [ 5.6052e-45, 5.6052e-45, -5.6052e-45, ..., 5.6052e-45,\n -5.6052e-45, -5.6052e-45],\n [ 5.6052e-45, 5.6052e-45, -5.6052e-45, ..., 5.6052e-45,\n -5.6052e-45, -5.6052e-45],\n ...,\n [ 5.6052e-45, 5.6052e-45, -5.6052e-45, ..., 5.6052e-45,\n -5.6052e-45, -5.6052e-45],\n [-5.6052e-45, 5.6052e-45, 5.6052e-45, ..., 5.6052e-45,\n 5.6052e-45, 5.6052e-45],\n [ 5.6052e-45, 5.6052e-45, -5.6052e-45, ..., 5.6052e-45,\n -5.6052e-45, -5.6052e-45]], device='cuda:0')", "exp_avg_sq": "tensor([[2.4202e-13, 7.9313e-15, 5.5237e-15, ..., 1.8325e-14, 9.7267e-14,\n 1.2686e-13],\n [1.2758e-13, 5.8437e-15, 4.1798e-15, ..., 1.5476e-14, 5.5270e-14,\n 7.2375e-14],\n [2.3338e-12, 5.2914e-14, 4.6270e-14, ..., 7.6578e-14, 9.3305e-13,\n 1.1718e-12],\n ...,\n [7.3406e-13, 1.8380e-14, 1.3340e-14, ..., 3.3773e-14, 2.9351e-13,\n 3.8971e-13],\n [1.8208e-14, 1.3790e-15, 4.2671e-16, ..., 6.9496e-15, 7.1599e-15,\n 6.6839e-15],\n [4.1155e-14, 3.3339e-15, 2.5957e-15, ..., 1.1174e-14, 2.0243e-14,\n 2.1292e-14]], device='cuda:0')" }, "55": { "step": "tensor(11268.)", "exp_avg": "tensor([-5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n -5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, -5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45,\n -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45, -5.6052e-45,\n -5.6052e-45, 5.6052e-45, -5.6052e-45, -5.6052e-45, 5.6052e-45,\n 5.6052e-45, 5.6052e-45, 5.6052e-45, -5.6052e-45, 5.6052e-45,\n -5.6052e-45], device='cuda:0')", "exp_avg_sq": "tensor([4.3318e-12, 2.3206e-12, 4.1229e-11, 2.2206e-11, 1.6645e-11, 2.2722e-14,\n 5.5336e-12, 5.7436e-12, 9.9233e-12, 9.9039e-13, 1.8312e-11, 2.4101e-13,\n 1.4516e-11, 8.5051e-15, 1.4284e-11, 3.4878e-14, 7.6588e-13, 6.7675e-12,\n 6.3327e-12, 1.0849e-11, 1.5537e-11, 2.3745e-12, 1.8168e-11, 8.1935e-12,\n 4.5757e-11, 1.2360e-11, 9.8480e-12, 2.2967e-12, 9.1834e-12, 2.2124e-11,\n 1.1586e-11, 4.0399e-11, 4.4965e-12, 5.2049e-13, 1.8659e-12, 2.0023e-12,\n 5.1360e-12, 1.7012e-11, 1.0540e-11, 2.1692e-12, 5.8748e-12, 1.6471e-11,\n 1.7322e-13, 6.3939e-12, 1.1392e-11, 4.0098e-12, 4.2003e-12, 1.3249e-11,\n 4.9506e-11, 2.4688e-12, 1.8801e-11, 9.5968e-12, 4.6835e-12, 3.9734e-12,\n 1.0325e-13, 3.6310e-11, 6.8560e-13, 1.5249e-11, 3.7122e-12, 3.5800e-11,\n 2.0334e-11, 1.3861e-11, 4.3827e-13, 7.3843e-12, 3.1731e-12, 3.4936e-12,\n 3.8417e-12, 3.6398e-11, 3.6439e-13, 1.7270e-11, 1.3060e-13, 1.3989e-11,\n 2.3152e-13, 1.4337e-11, 8.7260e-14, 3.8302e-12, 3.1931e-11, 1.8267e-12,\n 1.3503e-11, 2.5649e-11, 1.1872e-11, 8.3936e-12, 9.6752e-12, 1.3345e-11,\n 1.2086e-11, 1.7045e-11, 5.8510e-12, 8.2138e-12, 1.0020e-11, 5.4994e-13,\n 2.8696e-12, 3.6047e-12, 6.3750e-11, 1.7385e-12, 8.5605e-12, 8.9480e-15,\n 4.5897e-13, 1.4582e-13, 3.2263e-14, 9.9206e-13, 6.3726e-11, 4.5354e-13,\n 6.0353e-12, 5.2973e-11, 4.1712e-12, 1.1056e-12, 1.7367e-12, 4.4622e-13,\n 1.2199e-11, 2.9011e-11, 1.6446e-13, 8.5281e-12, 3.3974e-12, 3.3232e-12,\n 1.0839e-11, 2.5581e-12, 6.3458e-13, 3.5879e-13, 8.2584e-12, 6.4379e-12,\n 1.2670e-13, 9.0529e-12, 6.4039e-13, 6.4557e-11, 2.6482e-11, 6.6465e-11,\n 2.4763e-11, 1.5572e-12, 1.3769e-12, 3.8532e-12, 2.9918e-11, 4.9015e-13,\n 3.0761e-12, 1.3805e-11, 4.8348e-14, 1.9384e-13, 8.5922e-12, 2.0220e-11,\n 9.8950e-12, 2.3853e-12, 4.4393e-12, 1.1657e-11, 6.0657e-12, 5.6236e-12,\n 6.1005e-12, 1.3501e-11, 5.0354e-12, 7.6882e-12, 5.4425e-12, 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