Revision 30120a183c81cc5d18af0a00ae35e3ec9e06063a authored by Artem Artemev on 25 November 2017, 12:33:07 UTC, committed by Mark van der Wilk on 25 November 2017, 12:33:07 UTC
* Add a bunch of test for Parameter and DataHolder. Minibatch seed can be changed after cleaning or in defer_build.

* Add dataholder tests.

* Add failure creation tests to data holders.

* Shape and dtype for dataholders work for external tensors.

* According fix in dataholder test.

* Change travis file.

* Experiments with travis.

* Improvements in Parameterized tests.

* Exclude external optimizer from coverage report.

* Improvements in optimizer tests.

* Indent functions in optimizer's tests.

* Increase coverage in Parameterized.

* Increase codecov for Parameterized.

* Developing test coverage further.

* Tests Parameterized feeds.

* Call parameter size in tests.

* 100% for ParamList.

* Minibatch tests.

* Increase coverage for Minibatch.

* Setup.py clean up. Stick to 1.4 tensorflow version. Remove backwards for py2.7.

* Increase coverage for Parameters.

* Increase coverage for Parameters build check.

* Core tests for TensorConverter.

* Code coverage targets.

* Change initialization policy at decors and trainers.

* Check initialization status of variable using tf.is_variable_initialized tensor.

* [#568] Improve initialization status checking performance.

* [#568, #561] Test for Dataset iterators is not possible.

* Increase coverage for Parameter.  method was added, therefore required some tests.  method inconsistently handled session inputs.

* Added more tests for Parameter object covering cases when tensor is trainable and parameter is not. Also added test for Parameter string conversion.
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test_autoflow.py
# Copyright 2017 the GPflow authors.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.from __future__ import print_function

import tensorflow as tf

import numpy as np
from numpy.testing import assert_almost_equal, assert_allclose

import gpflow
from gpflow.test_util import GPflowTestCase
from gpflow.core import AutoFlow


class DumbModel(gpflow.models.Model):
    def __init__(self):
        gpflow.models.Model.__init__(self)
        self.a = gpflow.Param(3.)

    @gpflow.params_as_tensors
    def _build_likelihood(self):
        return -tf.square(self.a)


class NoArgsModel(DumbModel):
    @gpflow.autoflow()
    @gpflow.params_as_tensors
    def function1(self):
        return self.a

    @gpflow.autoflow()
    @gpflow.params_as_tensors
    def function2(self):
        return self.a + 1.0

class TestNoArgs(GPflowTestCase):
    def test_autoflow_functioning(self):
        with self.test_context():
            m = NoArgsModel()
            m.compile()

            def get_keys():
                return [k for k in m.__dict__ if k.startswith(AutoFlow.__autoflow_prefix__)]

            names = [m.function1.__name__, m.function2.__name__]
            names = [AutoFlow.__autoflow_prefix__ + name for name in names]
            first_key = names[0]
            second_key = names[1]

            assert_allclose(m.function1(), 3.)
            assert_allclose(m.function2(), 4.)
            self.assertEqual(len(get_keys()), 2)

            AutoFlow.clear_autoflow(m, name=first_key)
            self.assertEqual(len(get_keys()), 1)
            assert_allclose(m.function1(), 3.)
            self.assertEqual(len(get_keys()), 2)

            AutoFlow.clear_autoflow(m, name=second_key)
            self.assertEqual(len(get_keys()), 1)
            assert_allclose(m.function2(), 4.)
            self.assertEqual(len(get_keys()), 2)

            AutoFlow.clear_autoflow(m, name=first_key)
            AutoFlow.clear_autoflow(m, name=second_key)
            self.assertEqual(len(get_keys()), 0)
            assert_allclose(m.function1(), 3.)
            assert_allclose(m.function2(), 4.)
            self.assertEqual(len(get_keys()), 2)

            AutoFlow.clear_autoflow(m)
            self.assertEqual(len(get_keys()), 0)


class AddModel(DumbModel):
    @gpflow.autoflow((tf.float64,), (tf.float64,))
    @gpflow.params_as_tensors
    def add(self, x, y):
        return tf.add(x, y)


class TestShareArgs(GPflowTestCase):
    """
    This is designed to replicate bug #85, where having two models caused
    autoflow functions to fail because the tf_args were shared over the
    instances.
    """
    def setUp(self):
        with self.test_context():
            self.m1 = AddModel()
            self.m2 = AddModel()

    def test_share_args(self):
        with self.test_context():
            rng = np.random.RandomState(0)
            x = rng.randn(10, 20)
            y = rng.randn(10, 20)
            ans = x + y
            self.m1.add(x, y)
            self.m2.add(x, y)
            assert_almost_equal(self.m1.add(x, y), ans)
            assert_almost_equal(self.m2.add(x, y), ans)
            assert_almost_equal(self.m1.add(y, x), ans)


class IncrementModel(DumbModel):
    def __init__(self):
        DumbModel.__init__(self)
        self.b = gpflow.DataHolder(np.array([3.]))

    @gpflow.autoflow((tf.float64,))
    @gpflow.params_as_tensors
    def inc(self, x):
        return x + self.b


class TestDataHolder(GPflowTestCase):
    def test_add(self):
        with self.test_context():
            m = IncrementModel()
            x = np.random.randn(10, 20)
            m.compile()
            assert_almost_equal(x + m.a.read_value(), m.inc(x))


class TestGPmodel(GPflowTestCase):
    def prepare(self):
        rng = np.random.RandomState(0)
        X, Y = rng.randn(2, 10, 1)
        m = gpflow.models.SVGP(X, Y,
                               kern=gpflow.kernels.Matern32(1),
                               likelihood=gpflow.likelihoods.StudentT(),
                               Z=X[::2].copy())
        m.compile()
        xnew = np.random.randn(100, 1)
        ynew = np.random.randn(100, 1)
        return m, xnew, ynew

    def test_predict_f(self):
        with self.test_context():
            m, x, _y = self.prepare()
            _mu, _var = m.predict_f(x)

    def test_predict_y(self):
        with self.test_context():
            m, x, _y = self.prepare()
            _mu, _var = m.predict_y(x)

    def test_predict_density(self):
        with self.test_context():
            m, x, y = self.prepare()
            m.predict_density(x, y)

    def test_multiple_AFs(self):
        with self.test_context():
            m, _x, _y = self.prepare()
            m.compute_log_likelihood()
            m.compute_log_prior()
            m.compute_log_likelihood()


class TestFixAndPredict(GPflowTestCase):
    """
    Bug #54 says that if a model parameter is fixed  between calls to predict
    (an autoflow fn) then the second call fails. This test ensures replicates
    that and ensures that the bugfix remains in furure.
    """

    def prepare(self):
        rng = np.random.RandomState(0)
        X, Y = rng.randn(2, 10, 1)
        m = gpflow.models.SVGP(X, Y, kern=gpflow.kernels.Matern32(1),
                                  likelihood=gpflow.likelihoods.StudentT(),
                                  Z=X[::2].copy())
        xtest = np.random.randn(100, 1)
        ytest = np.random.randn(100, 1)
        return m, xtest, ytest

    def test(self):
        with self.test_context():
            m, x, y = self.prepare()
            m.compile()
            m.kern.variance.trainable = False
            _, _ = m.predict_f(m.X.read_value())


class TestSVGP(GPflowTestCase):
    """
    This replicates Alex's code from bug #99
    """
    def test(self):
        rng = np.random.RandomState(1)
        X = rng.randn(10, 1)
        Y = rng.randn(10, 1)
        Z = rng.randn(3, 1)
        model = gpflow.models.SVGP(
            X=X, Y=Y, kern=gpflow.kernels.RBF(1),
            likelihood=gpflow.likelihoods.Gaussian(), Z=Z)
        model.compile()
        model.compute_log_likelihood()


if __name__ == '__main__':
    tf.test.main()
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