# Copyright 2016 The TensorFlow Authors. All Rights Reserved. # # 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. # ============================================================================== """Builder for TensorFlow models specified using specs_ops. """ from __future__ import absolute_import from __future__ import division from __future__ import print_function from six import exec_ from tensorflow.contrib.specs.python import params_ops from tensorflow.contrib.specs.python import specs_lib from tensorflow.contrib.specs.python import specs_ops from tensorflow.python.util import tf_inspect def eval_params(params, environment=None): """Evaluates a parameter specification and returns the environment. Args: params: parameter assignments as a string environment: a dictionary of input bindings Returns: Environment with additional bindings created by executing `params` Raises: Exception: other exceptions raised during execution of `params` """ specs_lib.check_keywords(params) bindings = {} if environment: bindings.update(environment) exec_(params, vars(params_ops), bindings) # pylint: disable=exec-used return bindings def eval_spec(spec, environment=None): """Evaluates a spec and returns the environment. This function allows you to use a spec to obtain multiple bindings in an environment. That is useful if you use the spec language to specify multiple components of a larger network, for example: "left = Cr(64, [5,5]); right = Fc(64)" Usually, you will want to use `create_net` or `create_net_fun` below. Args: spec: specification as a string environment: a dictionary of input bindings Returns: Environment with additional bindings created by spec. Raises: Exception: other exceptions raised during execution of `spec` """ specs_lib.check_keywords(spec) bindings = {} if environment: bindings.update(environment) exec_(spec, vars(specs_ops), bindings) # pylint: disable=exec-used return bindings def create_net_fun(spec, environment=None): """Evaluates a spec and returns the binding of `net`. Specs are written in a DSL based on function composition. A spec like `net = Cr(64, [3, 3])` assigns an object that represents a single argument function capable of creating a network to the variable `net`. Args: spec: specification as a string, ending with a `net = ...` statement environment: a dictionary of input bindings Returns: A callable that instantiates the `net` binding. Raises: ValueError: spec failed to create a `net` Exception: other exceptions raised during execution of `spec` """ bindings = eval_spec(spec, environment) net = bindings.get("net", None) if net is None: raise ValueError("spec failed to create 'net': %s" % (spec,)) return net.funcall def create_net(spec, inputs, environment=None): """Evaluates a spec and creates a network instance given the inputs. Args: spec: specification as a string, ending with a `net = ...` statement inputs: input that `net` is applied to environment: a dictionary of input bindings Returns: A callable that instantiates the `net` binding. Raises: ValueError: spec failed to create a `net` Exception: other exceptions raised during execution of `spec` """ return create_net_fun(spec, environment)(inputs) class LocalImport(object): """A class that allows us to temporarily import something. Attributes: frame: the frame in which the context manager was invocked names: a dictionary containing the new bindings old: variable bindings that have been shadowed by the import """ def __init__(self, names): """Create a context manager that binds the names in values. Args: names: A dictionary or module containing the bindings. """ if not isinstance(names, dict): names = vars(names) self.names = names def __enter__(self): self.frame = tf_inspect.currentframe() bindings = self.frame.f_back.f_globals self.old = {k: bindings.get(k, None) for k in self.names.keys()} bindings.update(self.names) def __exit__(self, some_type, value, traceback): del some_type, value, traceback bindings = self.frame.f_back.f_globals bindings.update(self.old) for k, v in self.old.items(): if v is None: del bindings[k] del self.frame ops = LocalImport(specs_ops)