main.py 1.1 KB
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# Linear Regression

import os
# os.environ['DEVICE_ID'] = '0'
import numpy as np

import mindspore as ms
from mindspore import nn
from mindspore import context

context.set_context(mode=context.GRAPH_MODE, device_target="Ascend")

x = np.arange(-5, 5, 0.3)[:32].reshape((32, 1))
y = -5 * x +  0.1 * np.random.normal(loc=0.0, scale=20.0, size=x.shape)

net = nn.Dense(1, 1)
loss_fn = nn.loss.MSELoss()
opt = nn.optim.SGD(net.trainable_params(), learning_rate=0.01)
with_loss = nn.WithLossCell(net, loss_fn)
train_step = nn.TrainOneStepCell(with_loss, opt).set_train()

for epoch in range(20):
    loss = train_step(ms.Tensor(x, ms.float32), ms.Tensor(y, ms.float32))
    print('epoch: {0}, loss is {1}'.format(epoch, loss))

wb = [x.default_input.asnumpy() for x in net.trainable_params()]
w, b = np.squeeze(wb[0]), np.squeeze(wb[1])
print('The true linear function is y = -5 * x + 0.1')
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# uncomment it in MindSpore0.3.0 or later.
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dyonghan 已提交
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# print('The trained linear model is y = {0} * x + {1}'.format(w, b))

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for i in range(-10, 11, 5):
    print('x = {0}, predicted y = {1}'.format(i, net(ms.Tensor([[i]], ms.float32))))