Bottom line: I put together a demo of (kernelized) support vector regression that uses stochastic gradient descent (SGD) training. It works fine but training is relatively slow. Actually, the technique I used is stochastic sub-gradient descent (SSGD) but it’s common to refer to it as SGD.
The goal of a machine learning regression problem is to predict a single numeric value. Common regression techniques are linear regression, nearest neighbors regression, quadratic regression, kernel ridge regression (and the closely-related Gaussian process regression), neural network regression, random forest regression, and gradient boost regression. Each technique has many variations, and each technique has pros and cons.

The from scratch version (left) gives the same results as the scikit version (right), but the models have different weights.
Support vector regression (SVR) used to be popular in the late 1990s, for reasons which kind of baffle me. Kernel ridge regression is closely related to SVR and kernel ridge regression is easier to implement, easier to train, easier to interpret, and almost always gives better results than SVR (because KRR is easier to train). But, there are scenarios where SVR is required — typically legacy systems.
In almost all code libraries, SVR is trained using a form of quadratic programming or a strange algorithm called sequential minimal optimization (SMO). Both techniques are a nightmare to implement from scratch. In fact, SVR is so difficult to implement, to the best of my knowledge, every SVR library module I’ve seen relies on (is a wrapper around) a single C++ implementation called libsvm.
Kernelized SVR uses a kernel function, usually RBF (radial basis function). RBF requires a parameter usually called gamma (there’s a sigma version too). It’s possible to virtually reduce the number of training data items by driving their weights to zero — these are called the support vectors. In theory this leads to faster predictions, but in practice there is no increase in performance, except in rare scenarios.
Output of a demo of my from-scratch SVR:
Begin scratch SVR using SGD training Loading synthetic train (200) and test (40) data Done First three train X: [-0.1660 0.4406 -0.9998 -0.3953 -0.7065] [ 0.0776 -0.1616 0.3704 -0.5911 0.7562] [-0.9452 0.3409 -0.1654 0.1174 -0.7192] First three train y: 0.4840 0.1568 0.8054 Creating scratch Python SVR model Setting gamma = 0.3000 Setting C = 0.999995 Setting epsilon = 0.003000 Setting lrn_rate = 0.0010 Setting max_epochs = 10000 Training SVR model using SGD epoch = 0 | MSE = 0.2874 epoch = 2000 | MSE = 0.0000 epoch = 4000 | MSE = 0.0000 epoch = 6000 | MSE = 0.0000 epoch = 8000 | MSE = 0.0000 Done Model weights: [-0.9999 -0.9999 0.0213 -0.6919 0.4950 . . . 0.8400 0.6851 0.0000 0.0881 0.3400 . . . . . . -0.9189 0.9999 0.0000 -0.9999 -1.0000 . . . -0.4469 -0.0001 0.0000 1.0000] Number support vectors = 185 Train accuracy (0.10) = 0.9850 Test accuracy (0.10) = 0.9500 Train MSE = 0.0000 Test MSE = 0.0002 End demo
The output of a demo run using the scikit SVR module on the same data gives essentially the same results. I set the value of epsilon in my from-scratch implementation to 0.003 only to get identical results as the scikit version. The biggest practical downside to SVR is that it is very difficult to tune the RBF gamma, epsilon, and C parameters. My from scratch implementation adds learn_rate and max_epochs parameters to deal with too.
The scikit output:
Begin SVR using scikit Loading synthetic train (200) and test (40) data Done First three train X: [-0.1660 0.4406 -0.9998 -0.3953 -0.7065] [ 0.0776 -0.1616 0.3704 -0.5911 0.7562] [-0.9452 0.3409 -0.1654 0.1174 -0.7192] First three train y: 0.4840 0.1568 0.8054 Creating scikit SVR model Setting gamma = 0.3000 Setting C = 0.999950 Setting epsilon = 0.0010 Done Training scikit SVR model Done Mpdel weights: [[-1.0000 -1.0000 0.1666 -0.9206 0.2359 -1.0000 . . . 0.7708 1.0000 0.4633 0.0434 -0.0722 -0.3519 . . . . . . -1.0000 1.0000 0.0383 -1.0000 -1.0000 -0.4875 . . . -0.3638 -0.5812 0.7083]] Number model support vectors: [185] Train accuracy (0.10) = 0.9850 Test accuracy (0.10) = 0.9500 Train MSE = 0.0000 Test MSE = 0.0002 End demo
I used a set of synthetic data that was generated by a neural network with random weights and biases. Each item has five predictor values. There are 200 training items and 40 test items.
The gamma parameter controls the behavior of the RBF function. The C (“complexity”) parameter is used for regularization to limit the magnitude of the model weights (there is one weight for each training/support item). The epsilon parameter defines how close a prediction must be to its target, in order to be ignored during SVR training.
I ran the scikit model first, to determine how many support vectors are generated for that model.
My from-scratch version does not use a bias term, which is usually OK as long as the data isn’t wildly skewed in some way. You can always normalize or center the training data if necessary (but it’s an annoying task). One significant downside to the SVR trained using SGD/SSGD idea is performance — it is much slower compared than the scikit version.
I’m not entirely satisfied with this implementation. When I get some time, I’ll refactor my code to add an explicit bias term to match the design of the scikit version.
A fascinating exploration.

One way to think about machine learning regression is that it’s a search for hidden patterns in data. And more abstractly, all of science is a sort of a search for hidden truth.
The covers of every issue of Playboy Magazine (except for the first issue in December 1953) has a company bunny logo somewhere. In many cases, the bunny logo is prominent and clearly visible. But some covers have the logo cleverly hidden.
Left: On the cover of the June 1991 issue, the logo is disguised as part of the straw thatching on the edge of the model’s hat. The logo is to the left of the ‘B’ in the “By James Jones” text.
Right: On the cover of the February 1994 issue, the logo is disguised as a reflection in the nail polish on the model’s right thumb.
Scratch SVR demo program. Replace “lt” (less than), “gt”, “lte”, “gte” with Boolean operator symbols (my blog editor chokes on symbols).
# svr_sgd.py
# kernel support vector regression with SGD training
import numpy as np
# -----------------------------------------------------------
np.set_printoptions(precision=4, suppress=True,
floatmode='fixed', linewidth=120)
# -----------------------------------------------------------
def accuracy(model, data_X, data_y, pct_close):
if data_X.size == 0: return 0.0
n = len(data_X)
n_correct = 0; n_wrong = 0
for i in range(n):
x = data_X[i].reshape(1,-1)
y = data_y[i]
pred_y = model.predict(x)[0]
if np.abs(y - pred_y) "lt" np.abs(y * pct_close):
n_correct += 1
else:
n_wrong += 1
return n_correct / (n_correct + n_wrong)
# -----------------------------------------------------------
def mse(model, data_X, data_y):
if data_X.size == 0: return -1.0
n = len(data_X)
sum = 0.0
for i in range(n):
x = data_X[i].reshape(1,-1)
y = data_y[i]
pred_y = model.predict(x)[0]
diff = pred_y - y
sum += diff * diff
return sum /n
# ===========================================================
class MySVR:
def __init__(self, gamma=0.1, epsilon=0.1, C=1.0,
lr=0.01, max_epochs=1000, seed=0):
self.gamma = gamma
self.epsilon = epsilon
self.C = C
self.lr = lr
self.max_epochs = max_epochs
self.weights = None
self.train_X = None
self.train_y = None
self.rnd = np.random.RandomState(seed)
# ---------------------------------------------------------
def rbf(self, x1, x2):
sum = 0.0
for i in range(len(x1)):
sum += (x1[i] - x2[i]) * (x1[i] - x2[i])
result = np.exp(-1 * self.gamma * sum)
return result
# ---------------------------------------------------------
def make_K(self, X):
n = len(X)
K = np.zeros((n,n))
for i in range(0,n):
for j in range(i,n):
z = self.rbf(X[i], X[j])
K[i,j] = z; K[j,i] = z
return K
# ---------------------------------------------------------
def fit(self, X, y):
self.train_X = X.copy()
self.train_y = y.copy()
n, dim = self.train_X.shape
# init weights
self.weights = np.zeros(n)
lo = -0.10; hi = 0.10
for i in range(n):
self.weights[i] = (hi - lo) * self.rnd.random() + lo
K = self.make_K(self.train_X) # lookup fast predicts
lamda = 1.0 / self.C
freq = self.max_epochs // 5
for epoch in range(self.max_epochs):
indices = self.rnd.permutation(n)
for i in indices:
y_pred = np.dot(K[i], self.weights) # fast
# y_pred = self.predict_one(X[i]) # slow!
error = y_pred - self.train_y[i]
grad_reg = lamda * self.weights[i]
if error "gt" self.epsilon:
grad_loss = 1.0
elif error "lt" -self.epsilon:
grad_loss = -1.0
else:
grad_loss = 0.0 # ignore inside epsilon tube
self.weights[i] -= self.lr * (grad_reg + grad_loss)
if epoch % freq == 0:
m = mse(self, self.train_X, self.train_y)
print("epoch = %4d | MSE = %0.4f " % (epoch,m))
return # all done
# ---------------------------------------------------------
def predict_one(self, x):
# helper for predict(X)
sum = 0.0
for i in range(len(self.weights)):
sum += self.weights[i] * self.rbf(x, self.train_X[i])
return sum
# ---------------------------------------------------------
def predict(self, X):
# X is a matrix of input vectors (scikit API)
preds = []
for i in range(len(X)):
py = self.predict_one(X[i])
preds.append(py)
return np.array(preds)
# ---------------------------------------------------------
def get_supp_idxs(self):
result = []
for i in range(len(self.weights)):
# a nearly-zero wt is associated with a supp vector
if np.abs(self.weights[i]) "gt" 1.0e-5:
result.append(i)
return result
# ===========================================================
def main():
print("\nBegin scratch SVR using SGD training ")
print("\nLoading synthetic train (200) and test (40) data")
train_Xy = np.loadtxt(".\\Data\\synthetic_train_200.txt",
usecols=[0,1,2,3,4,5], delimiter=",")
train_X = train_Xy[:,[0,1,2,3,4]]
train_y = train_Xy[:,5]
test_Xy = np.loadtxt(".\\Data\\synthetic_test_40.txt",
usecols=[0,1,2,3,4,5], delimiter=",")
test_X = test_Xy[:,[0,1,2,3,4]]
test_y = test_Xy[:,5]
print("Done ")
print("\nFirst three train X: ")
for i in range(3):
print(train_X[i])
print("\nFirst three train y: ")
for i in range(3):
print("%0.4f " % train_y[i])
# Creating scikit SVR model
# Setting gamma = 0.3000
# Setting C = 0.999950
# Setting epsilon = 0.0010
# Number model support vectors: [185]
# Train accuracy (0.10) = 0.9850
# Test accuracy (0.10) = 0.9500
# Train MSE = 0.0000
# Test MSE = 0.0002
# create and train model
print("\nCreating scratch Python SVR model ")
gamma = 0.30
# smaller epsilon == fewer ignored == more supp vecs
# larger epsilon == more ignored == fewer supp vecs
epsilon = 0.003
C = 0.999995
lr = 0.001
max_epochs = 10000
print("Setting gamma = %0.4f " % gamma)
print("Setting C = %0.6f " % C)
print("Setting epsilon = %0.6f " % epsilon)
print("Setting lrn_rate = %0.4f " % lr)
print("Setting max_epochs = " + str(max_epochs))
print("\nTraining SVR model using SGD ")
model = MySVR(gamma=gamma, epsilon=epsilon,
C=C, lr=lr, max_epochs=max_epochs, seed=1)
model.fit(train_X, train_y)
print("Done ")
print("\nModel weights: ")
print(model.weights)
supp_vec_idxs = model.get_supp_idxs()
print("Number support vectors = " + \
str(len(model.get_supp_idxs())))
acc_train = accuracy(model, train_X, train_y, 0.10)
print("\nTrain accuracy (0.10) = %0.4f" % acc_train)
acc_test = accuracy(model, test_X, test_y, 0.10)
print("Test accuracy (0.10) = %0.4f" % acc_test)
mse_train = mse(model, train_X, train_y)
print("\nTrain MSE = %0.4f" % mse_train)
mse_test = mse(model, test_X, test_y)
print("Test MSE = %0.4f" % mse_test)
print("\nEnd demo ")
# -----------------------------------------------------------
if __name__ == "__main__":
main()
The scikit SVR demo program.
# svr_scikit.py
# scikit-learn SVR module
import numpy as np
from sklearn.svm import SVR
# -----------------------------------------------------------
np.set_printoptions(precision=4, suppress=True,
floatmode='fixed', linewidth=120)
# -----------------------------------------------------------
def accuracy(model, data_X, data_y, pct_close):
if data_X.size == 0: return 0.0
n = len(data_X)
n_correct = 0; n_wrong = 0
for i in range(n):
x = data_X[i].reshape(1,-1)
y = data_y[i]
pred_y = model.predict(x)[0]
if np.abs(y - pred_y) "lt" np.abs(y * pct_close):
n_correct += 1
else:
n_wrong += 1
return n_correct / (n_correct + n_wrong)
# -----------------------------------------------------------
def mse(model, data_X, data_y):
if data_X.size == 0: return -1.0
n = len(data_X)
sum = 0.0
for i in range(n):
x = data_X[i].reshape(1,-1)
y = data_y[i]
pred_y = model.predict(x)[0]
diff = pred_y - y
sum += diff * diff
return sum /n
# ===========================================================
def main():
print("\nBegin SVR using scikit ")
print("\nLoading synthetic train (200) and test (40) data")
train_Xy = np.loadtxt(".\\Data\\synthetic_train_200.txt",
usecols=[0,1,2,3,4,5], delimiter=",")
train_X = train_Xy[:,[0,1,2,3,4]]
train_y = train_Xy[:,5]
test_Xy = np.loadtxt(".\\Data\\synthetic_test_40.txt",
usecols=[0,1,2,3,4,5], delimiter=",")
test_X = test_Xy[:,[0,1,2,3,4]]
test_y = test_Xy[:,5]
print("Done ")
print("\nFirst three train X: ")
for i in range(3):
print(train_X[i])
print("\nFirst three train y: ")
for i in range(3):
print("%0.4f " % train_y[i])
# create and train model
# SVR(*, kernel='rbf', degree=3, gamma='scale',
# coef0=0.0, tol=0.001, C=1.0, epsilon=0.1,
# shrinking=True, cache_size=200, verbose=False,
# max_iter=-1)
print("\nCreating scikit SVR model ")
gamma = 0.30
epsilon = 0.001
C = 0.99995
print("Setting gamma = %0.4f " % gamma)
print("Setting C = %0.6f " % C)
print("Setting epsilon = %0.4f " % epsilon)
model = SVR(kernel='rbf', gamma=gamma, C=C,
epsilon=epsilon)
print("Done ")
print("\nTraining scikit SVR model ")
model.fit(train_X, train_y)
print("Done ")
print("\nMpdel weights: ")
print(model.dual_coef_)
print("Number model support vectors: " + \
str(model.n_support_))
acc_train = accuracy(model, train_X, train_y, 0.10)
print("\nTrain accuracy (0.10) = %0.4f" % acc_train)
acc_test = accuracy(model, test_X, test_y, 0.10)
print("Test accuracy (0.10) = %0.4f" % acc_test)
mse_train = mse(model, train_X, train_y)
print("\nTrain MSE = %0.4f" % mse_train)
mse_test = mse(model, test_X, test_y)
print("Test MSE = %0.4f" % mse_test)
print("\nEnd demo ")
# -----------------------------------------------------------
if __name__ == "__main__":
main()
Training data:
# synthetic_train_200.txt # -0.1660, 0.4406, -0.9998, -0.3953, -0.7065, 0.4840 0.0776, -0.1616, 0.3704, -0.5911, 0.7562, 0.1568 -0.9452, 0.3409, -0.1654, 0.1174, -0.7192, 0.8054 0.9365, -0.3732, 0.3846, 0.7528, 0.7892, 0.1345 -0.8299, -0.9219, -0.6603, 0.7563, -0.8033, 0.7955 0.0663, 0.3838, -0.3690, 0.3730, 0.6693, 0.3206 -0.9634, 0.5003, 0.9777, 0.4963, -0.4391, 0.7377 -0.1042, 0.8172, -0.4128, -0.4244, -0.7399, 0.4801 -0.9613, 0.3577, -0.5767, -0.4689, -0.0169, 0.6861 -0.7065, 0.1786, 0.3995, -0.7953, -0.1719, 0.5569 0.3888, -0.1716, -0.9001, 0.0718, 0.3276, 0.2500 0.1731, 0.8068, -0.7251, -0.7214, 0.6148, 0.3297 -0.2046, -0.6693, 0.8550, -0.3045, 0.5016, 0.2129 0.2473, 0.5019, -0.3022, -0.4601, 0.7918, 0.2613 -0.1438, 0.9297, 0.3269, 0.2434, -0.7705, 0.5171 0.1568, -0.1837, -0.5259, 0.8068, 0.1474, 0.3307 -0.9943, 0.2343, -0.3467, 0.0541, 0.7719, 0.5581 0.2467, -0.9684, 0.8589, 0.3818, 0.9946, 0.1092 -0.6553, -0.7257, 0.8652, 0.3936, -0.8680, 0.7018 0.8460, 0.4230, -0.7515, -0.9602, -0.9476, 0.1996 -0.9434, -0.5076, 0.7201, 0.0777, 0.1056, 0.5664 0.9392, 0.1221, -0.9627, 0.6013, -0.5341, 0.1533 0.6142, -0.2243, 0.7271, 0.4942, 0.1125, 0.1661 0.4260, 0.1194, -0.9749, -0.8561, 0.9346, 0.2230 0.1362, -0.5934, -0.4953, 0.4877, -0.6091, 0.3810 0.6937, -0.5203, -0.0125, 0.2399, 0.6580, 0.1460 -0.6864, -0.9628, -0.8600, -0.0273, 0.2127, 0.5387 0.9772, 0.1595, -0.2397, 0.1019, 0.4907, 0.1611 0.3385, -0.4702, -0.8673, -0.2598, 0.2594, 0.2270 -0.8669, -0.4794, 0.6095, -0.6131, 0.2789, 0.4700 0.0493, 0.8496, -0.4734, -0.8681, 0.4701, 0.3516 0.8639, -0.9721, -0.5313, 0.2336, 0.8980, 0.1412 0.9004, 0.1133, 0.8312, 0.2831, -0.2200, 0.1782 0.0991, 0.8524, 0.8375, -0.2102, 0.9265, 0.2150 -0.6521, -0.7473, -0.7298, 0.0113, -0.9570, 0.7422 0.6190, -0.3105, 0.8802, 0.1640, 0.7577, 0.1056 0.6895, 0.8108, -0.0802, 0.0927, 0.5972, 0.2214 0.1982, -0.9689, 0.1870, -0.1326, 0.6147, 0.1310 -0.3695, 0.7858, 0.1557, -0.6320, 0.5759, 0.3773 -0.1596, 0.3581, 0.8372, -0.9992, 0.9535, 0.2071 -0.2468, 0.9476, 0.2094, 0.6577, 0.1494, 0.4132 0.1737, 0.5000, 0.7166, 0.5102, 0.3961, 0.2611 0.7290, -0.3546, 0.3416, -0.0983, -0.2358, 0.1332 -0.3652, 0.2438, -0.1395, 0.9476, 0.3556, 0.4170 -0.6029, -0.1466, -0.3133, 0.5953, 0.7600, 0.4334 -0.4596, -0.4953, 0.7098, 0.0554, 0.6043, 0.2775 0.1450, 0.4663, 0.0380, 0.5418, 0.1377, 0.2931 -0.8636, -0.2442, -0.8407, 0.9656, -0.6368, 0.7429 0.6237, 0.7499, 0.3768, 0.1390, -0.6781, 0.2185 -0.5499, 0.1850, -0.3755, 0.8326, 0.8193, 0.4399 -0.4858, -0.7782, -0.6141, -0.0008, 0.4572, 0.4197 0.7033, -0.1683, 0.2334, -0.5327, -0.7961, 0.1776 0.0317, -0.0457, -0.6947, 0.2436, 0.0880, 0.3345 0.5031, -0.5559, 0.0387, 0.5706, -0.9553, 0.3107 -0.3513, 0.7458, 0.6894, 0.0769, 0.7332, 0.3170 0.2205, 0.5992, -0.9309, 0.5405, 0.4635, 0.3532 -0.4806, -0.4859, 0.2646, -0.3094, 0.5932, 0.3202 0.9809, -0.3995, -0.7140, 0.8026, 0.0831, 0.1600 0.9495, 0.2732, 0.9878, 0.0921, 0.0529, 0.1289 -0.9476, -0.6792, 0.4913, -0.9392, -0.2669, 0.5966 0.7247, 0.3854, 0.3819, -0.6227, -0.1162, 0.1550 -0.5922, -0.5045, -0.4757, 0.5003, -0.0860, 0.5863 -0.8861, 0.0170, -0.5761, 0.5972, -0.4053, 0.7301 0.6877, -0.2380, 0.4997, 0.0223, 0.0819, 0.1404 0.9189, 0.6079, -0.9354, 0.4188, -0.0700, 0.1907 -0.1428, -0.7820, 0.2676, 0.6059, 0.3936, 0.2790 0.5324, -0.3151, 0.6917, -0.1425, 0.6480, 0.1071 -0.8432, -0.9633, -0.8666, -0.0828, -0.7733, 0.7784 -0.9444, 0.5097, -0.2103, 0.4939, -0.0952, 0.6787 -0.0520, 0.6063, -0.1952, 0.8094, -0.9259, 0.4836 0.5477, -0.7487, 0.2370, -0.9793, 0.0773, 0.1241 0.2450, 0.8116, 0.9799, 0.4222, 0.4636, 0.2355 0.8186, -0.1983, -0.5003, -0.6531, -0.7611, 0.1511 -0.4714, 0.6382, -0.3788, 0.9648, -0.4667, 0.5950 0.0673, -0.3711, 0.8215, -0.2669, -0.1328, 0.2677 -0.9381, 0.4338, 0.7820, -0.9454, 0.0441, 0.5518 -0.3480, 0.7190, 0.1170, 0.3805, -0.0943, 0.4724 -0.9813, 0.1535, -0.3771, 0.0345, 0.8328, 0.5438 -0.1471, -0.5052, -0.2574, 0.8637, 0.8737, 0.3042 -0.5454, -0.3712, -0.6505, 0.2142, -0.1728, 0.5783 0.6327, -0.6297, 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0.2215 -0.0242, 0.0513, -0.9430, 0.2885, -0.2987, 0.3947 -0.5416, -0.1322, -0.2351, -0.0604, 0.9590, 0.3683 0.1055, 0.7783, -0.2901, -0.5090, 0.8220, 0.2984 -0.9129, 0.9015, 0.1128, -0.2473, 0.9901, 0.4776 -0.9378, 0.1424, -0.6391, 0.2619, 0.9618, 0.5368 0.7498, -0.0963, 0.4169, 0.5549, -0.0103, 0.1614 -0.2612, -0.7156, 0.4538, -0.0460, -0.1022, 0.3717 0.7720, 0.0552, -0.1818, -0.4622, -0.8560, 0.1685 -0.4177, 0.0070, 0.9319, -0.7812, 0.3461, 0.3052 -0.0001, 0.5542, -0.7128, -0.8336, -0.2016, 0.3803 0.5356, -0.4194, -0.5662, -0.9666, -0.2027, 0.1776 -0.2378, 0.3187, -0.8582, -0.6948, -0.9668, 0.5474 -0.1947, -0.3579, 0.1158, 0.9869, 0.6690, 0.2992 0.3992, 0.8365, -0.9205, -0.8593, -0.0520, 0.3154 -0.0209, 0.0793, 0.7905, -0.1067, 0.7541, 0.1864 -0.4928, -0.4524, -0.3433, 0.0951, -0.5597, 0.6261 -0.8118, 0.7404, -0.5263, -0.2280, 0.1431, 0.6349 0.0516, -0.8480, 0.7483, 0.9023, 0.6250, 0.1959 -0.3212, 0.1093, 0.9488, -0.3766, 0.3376, 0.2735 -0.3481, 0.5490, -0.3484, 0.7797, 0.5034, 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Test data:
# synthetic_test_40.txt # 0.7462, 0.4006, -0.0590, 0.6543, -0.0083, 0.1935 0.8495, -0.2260, -0.0142, -0.4911, 0.7699, 0.1078 -0.2335, -0.4049, 0.4352, -0.6183, -0.7636, 0.5088 0.1810, -0.5142, 0.2465, 0.2767, -0.3449, 0.3136 -0.8650, 0.7611, -0.0801, 0.5277, -0.4922, 0.7140 -0.2358, -0.7466, -0.5115, -0.8413, -0.3943, 0.4533 0.4834, 0.2300, 0.3448, -0.9832, 0.3568, 0.1360 -0.6502, -0.6300, 0.6885, 0.9652, 0.8275, 0.3046 -0.3053, 0.5604, 0.0929, 0.6329, -0.0325, 0.4756 -0.7995, 0.0740, -0.2680, 0.2086, 0.9176, 0.4565 -0.2144, -0.2141, 0.5813, 0.2902, -0.2122, 0.4119 -0.7278, -0.0987, -0.3312, -0.5641, 0.8515, 0.4438 0.3793, 0.1976, 0.4933, 0.0839, 0.4011, 0.1905 -0.8568, 0.9573, -0.5272, 0.3212, -0.8207, 0.7415 -0.5785, 0.0056, -0.7901, -0.2223, 0.0760, 0.5551 0.0735, -0.2188, 0.3925, 0.3570, 0.3746, 0.2191 0.1230, -0.2838, 0.2262, 0.8715, 0.1938, 0.2878 0.4792, -0.9248, 0.5295, 0.0366, -0.9894, 0.3149 -0.4456, 0.0697, 0.5359, -0.8938, 0.0981, 0.3879 0.8629, -0.8505, -0.4464, 0.8385, 0.5300, 0.1769 0.1995, 0.6659, 0.7921, 0.9454, 0.9970, 0.2330 -0.0249, -0.3066, -0.2927, -0.4923, 0.8220, 0.2437 0.4513, -0.9481, -0.0770, -0.4374, -0.9421, 0.2879 -0.3405, 0.5931, -0.3507, -0.3842, 0.8562, 0.3987 0.9538, 0.0471, 0.9039, 0.7760, 0.0361, 0.1706 -0.0887, 0.2104, 0.9808, 0.5478, -0.3314, 0.4128 -0.8220, -0.6302, 0.0537, -0.1658, 0.6013, 0.4306 -0.4123, -0.2880, 0.9074, -0.0461, -0.4435, 0.5144 0.0060, 0.2867, -0.7775, 0.5161, 0.7039, 0.3599 -0.7968, -0.5484, 0.9426, -0.4308, 0.8148, 0.2979 0.7811, 0.8450, -0.6877, 0.7594, 0.2640, 0.2362 -0.6802, -0.1113, -0.8325, -0.6694, -0.6056, 0.6544 0.3821, 0.1476, 0.7466, -0.5107, 0.2592, 0.1648 0.7265, 0.9683, -0.9803, -0.4943, -0.5523, 0.2454 -0.9049, -0.9797, -0.0196, -0.9090, -0.4433, 0.6447 -0.4607, 0.1811, -0.2389, 0.4050, -0.0078, 0.5229 0.2664, -0.2932, -0.4259, -0.7336, 0.8742, 0.1834 -0.4507, 0.1029, -0.6294, -0.1158, -0.6294, 0.6081 0.8948, -0.0124, 0.9278, 0.2899, -0.0314, 0.1534 -0.1323, -0.8813, -0.0146, -0.0697, 0.6135, 0.2386






























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