Revision 9d238398ce11b8beaad3811e67bfa7de006d79d5 authored by st-- on 20 June 2018, 14:59:06 UTC, committed by James Hensman on 20 June 2018, 14:59:06 UTC
* added notebook

* added vanilla conv net accuracy

* Tidy up notebook

* ran notebook

* ran notebook #2

* add untested notebooks to test_notebooks

* fix bug in natural_gradients notebook

* add nb_niter and nb_range to only run a small number of iterations in continuous integration notebook tests

* make advanced_usage.ipynb use nb_iter()

* don't add natural_gradients.ipynb and upper_bound.ipynb notebook tests in this PR

* make advanced_usage run faster in CI

* clean up advanced_usage

* Update test_notebooks.py

* fix notebook_niter

* missing input_dim for CI

* update notebook

* another reset_default_graph_and_session call
1 parent 3a16991
Raw File
test_util.py
# Copyright 2017 Artem Artemev @awav
#
# 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.


# pragma: no cover
# pylint: skip-file


import functools
import contextlib
import tensorflow as tf
import pytest
import os


@pytest.fixture
def session_tf():
    """
    Session creation pytest fixture.

    ```
    def test_simple(session_tf):
        tensor = tf.constant(1.0)
        result = session_tf.run(tensor)
        # ...
    ```

    In example above the test_simple is wrapped within graph and session created
    at `session_tf()` fixture. Session and graph are created per each pytest
    function where `session_tf` argument is used.
    """
    with session_context() as session:
        yield session


def cache_tensor(method):
    """
    Caches result for wrapped function wrt default TensorFlow graph.
    Whenever function is called under another default graph, execution will be
    performed. It does make sense cache tensors: build once, use multiple times
    per TensorFlow graph.

    Example:
    ```
    @cache_tensor
    def create_const():
        return tf.constant(1.0, name='wow')

    > const1 = create_const()
    > const2 = create_const()
    > const1 == const2
    True
    ```
    """
    cache = {}
    @functools.wraps(method)
    def wrapper(*args, **kwargs):
        graph = tf.get_default_graph()
        if graph not in cache:
            cache[graph] = method(*args, **kwargs)
        return cache[graph]
    return wrapper


class session_context(contextlib.ContextDecorator):
    def __init__(self, graph=None, close_on_exit=True, **kwargs):
        self.graph = graph
        self.close_on_exit = close_on_exit
        self.session = None
        self.session_args = kwargs

    def __enter__(self):
        graph = tf.Graph() if self.graph is None else self.graph
        session = tf.Session(graph=graph, **self.session_args)
        self.session = session
        session.__enter__()
        return session

    def __exit__(self, *exc):
        session = self.session
        session.__exit__(*exc)
        if self.close_on_exit:
            session.close()
        return False


class GPflowTestCase(tf.test.TestCase):
    """
    Wrapper for TensorFlow TestCase to avoid massive duplication of resetting
    Tensorflow Graph.
    """

    _multiprocess_can_split_ = True

    def __init__(self, *args, **kwargs):
        super().__init__(*args, **kwargs)
        self.test_graph = tf.Graph()

    @contextlib.contextmanager
    def test_context(self, graph=None):
        graph = self.test_graph if graph is None else graph
        with graph.as_default(), self.test_session(graph=graph) as session:
            yield session


def is_continuous_integration():
    ci = os.environ.get('CI', '').lower()
    return (ci == 'true') or (ci == '1')


def notebook_niter(n, test_n=2):
    return test_n if is_continuous_integration() else n

def notebook_range(n, test_n=2):
    return range(notebook_niter(n, test_n))

def notebook_list(lst, test_n=2):
    return lst[:test_n] if is_continuous_integration() else lst
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