ottertune/server/analysis/tests/test_ddpg.py

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#
# OtterTune - test_ddpg.py
#
# Copyright (c) 2017-18, Carnegie Mellon University Database Group
#
import random
import unittest
from sklearn import datasets
import numpy as np
import torch
from analysis.ddpg.ddpg import DDPG
# test ddpg model
class TestDDPG(unittest.TestCase):
@classmethod
def setUpClass(cls):
random.seed(0)
np.random.seed(0)
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torch.manual_seed(0)
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super(TestDDPG, cls).setUpClass()
boston = datasets.load_boston()
data = boston['data']
X_train = data[0:500]
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X_test = data[500:]
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y_train = boston['target'][0:500].reshape(500, 1)
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ddpg = DDPG(n_actions=1, n_states=13)
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for i in range(500):
knob_data = np.array([random.random()])
prev_metric_data = X_train[i - 1]
metric_data = X_train[i]
reward = y_train[i - 1]
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ddpg.add_sample(prev_metric_data, knob_data, reward, metric_data, False)
if len(ddpg.replay_memory) > 32:
ddpg.update()
cls.ypreds_round = ['%.4f' % ddpg.choose_action(x)[0] for x in X_test]
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def test_ddpg_ypreds(self):
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expected_ypreds = ['0.3169', '0.3240', '0.3934', '0.5787', '0.6988', '0.5163']
self.assertEqual(self.ypreds_round, expected_ypreds)