原版本:import gin.tf.external_configurables
会报错:
AttributeError: module 'tensorflow._api.v1.keras.optimizers' has no attribute 'Ftrl'
我删去了gin.tf.external_configurables 的两行话之后就没问题了。调整版本在此。
安装方法:
git clone https://github.com/Li-Shu14/gin-config.git
cd gin-config
python -m setup install
Gin provides a lightweight configuration framework for Python, based on
dependency injection. Functions or classes can be decorated with
@gin.configurable
, allowing default parameter values to be supplied from a
config file (or passed via the command line) using a simple but powerful syntax.
This removes the need to define and maintain configuration objects (e.g.
protos), or write boilerplate parameter plumbing and factory code, while often
dramatically expanding a project's flexibility and configurability.
Gin is particularly well suited for machine learning experiments (e.g. using TensorFlow), which tend to have many parameters, often nested in complex ways.
Authors: Dan Holtmann-Rice, Sergio Guadarrama, Nathan Silberman Contributors: Oscar Ramirez, Marek Fiser
This is not an official Google product.
[TOC]
This section provides a high-level overview of Gin's main features, ordered roughly from "basic" to "advanced". More details on these and other features can be found in the user guide.
Install Gin with pip:
pip install gin-config
Install Gin from source:
git clone https://github.com/google/gin-config
cd gin-config
python -m setup.py install
Import Gin (without TensorFlow functionality):
import gin
Import additional TensorFlow-specific functionality via the TF module:
import gin.tf
At its most basic, Gin can be seen as a way of providing or changing default
values for function or constructor parameters. To make a function's parameters
"configurable", Gin provides the gin.configurable
decorator:
@gin.configurable
def dnn(inputs,
num_outputs,
layer_sizes=(512, 512),
activation_fn=tf.nn.relu):
...
This decorator registers the dnn
function with Gin, and automatically makes
all of its parameters configurable. To set ("bind") a value for the
layer_sizes
parameter above within a ".gin" configuration file:
# Inside "config.gin"
dnn.layer_sizes = (1024, 512, 128)
Bindings have syntax function_name.parameter_name = value
. All Python literal
values are supported as value
(numbers, strings, lists, tuples, dicts). Once
the config file has been parsed by Gin, any future calls to dnn
will use the
Gin-specified value for layer_sizes
(unless a value is explicitly provided by
the caller).
Classes can also be marked as configurable, in which case the configuration applies to constructor parameters:
@gin.configurable
class DNN(object):
# Constructor parameters become configurable.
def __init__(self,
num_outputs,
layer_sizes=(512, 512),
activation_fn=tf.nn.relu):
...
def __call__(inputs):
...
Within a config file, the class name is used when binding values to constructor parameters:
# Inside "config.gin"
DNN.layer_sizes = (1024, 512, 128)
Finally, after defining or importing all configurable classes or functions,
parse your config file to bind your configurations (to also permit multiple
config files and command line overrides, see
gin.parse_config_files_and_bindings
):
gin.parse_config_file('config.gin')
Note that no other changes are required to the Python code, beyond adding the
gin.configurable
decorator and a call to one of Gin's parsing functions.
In addition to accepting Python literal values, Gin also supports passing other
Gin-configurable functions or classes. In the example above, we might want to
change the activation_fn
parameter. If we have registered, say tf.nn.tanh
with Gin (see registering external functions), we can
pass it to activation_fn
by referring to it as @tanh
(or @tf.nn.tanh
):
# Inside "config.gin"
dnn.activation_fn = @tf.nn.tanh
Gin refers to @name
constructs as configurable references. Configurable
references work for classes as well:
def train_fn(..., optimizer_cls, learning_rate):
optimizer = optimizer_cls(learning_rate)
...
Then, within a config file:
# Inside "config.gin"
train_fn.optimizer_cls = @tf.train.GradientDesecentOptimizer
...
Sometimes it is necessary to pass the result of calling a specific function or
class constructor. Gin supports "evaluating" configurable references via the
@name()
syntax. For example, say we wanted to use the class form of DNN
from
above (which implements __call__
to "behave" like a function) in the following
Python code:
def build_model(inputs, network_fn, ...):
logits = network_fn(inputs)
...
We could pass an instance of the DNN
class to the network_fn
parameter:
# Inside "config.gin"
build_model.network_fn = @DNN()
To use evaluated references, all of the referenced function or class's
parameters must be provided via Gin. The call to the function or constructor
takes place just before the call to the function to which the result is
passed, In the above example, this would be just before build_model
is called.
The result is not cached, so a new DNN
instance will be constructed for each
call to build_model
.
What happens if we want to configure the same function in different ways? For
instance, imagine we're building a GAN, where we might have a "generator"
network and a "discriminator" network. We'd like to use the dnn
function above
to construct both, but with different parameters:
def build_model(inputs, generator_network_fn, discriminator_network_fn, ...):
...
To handle this case, Gin provides "scopes", which provide a name for a specific
set of bindings for a given function or class. In both bindings and references,
the "scope name" precedes the function name, separated by a "/
" (i.e.,
scope_name/function_name
):
# Inside "config.gin"
build_model.generator_network_fn = @generator/dnn
build_model.discriminator_network_fn = @discriminator/dnn
generator/dnn.layer_sizes = (128, 256)
generator/dnn.num_outputs = 784
discriminator/dnn.layer_sizes = (512, 256)
discriminator/dnn.num_outputs = 1
dnn.activation_fn = @tf.nn.tanh
In this example, the generator network has increasing layer widths and 784 outputs, while the discriminator network has decreasing layer widths and 1 output.
Any parameters set on the "root" (unscoped) function name are inherited by
scoped variants (unless explicitly overridden), so in the above example both the
generator and the discriminator use the tf.nn.tanh
activation function.
The greatest degree of flexibility and configurability in a project is achieved
by writing small modular functions and "wiring them up" hierarchically via
(possibly scoped) references. For example, this code sketches a generic training
setup that could be used with the tf.estimator.Estimator
API:
@gin.configurable
def build_model_fn(network_fn, loss_fn, optimize_loss_fn):
def model_fn(features, labels):
logits = network_fn(features)
loss = loss_fn(labels, logits)
train_op = optimize_loss_fn(loss)
...
return model_fn
@gin.configurable
def optimize_loss(loss, optimizer_cls, learning_rate):
optimizer = optimizer_cls(learning_rate)
return optimizer.minimize(loss)
@gin.configurable
def input_fn(file_pattern, batch_size, ...):
...
@gin.configurable
def run_training(train_input_fn, eval_input_fn, estimator, steps=1000):
estimator.train(train_input_fn, steps=steps)
estimator.evaluate(eval_input_fn)
...
In conjunction with suitable external configurables to register TensorFlow
functions/classes (e.g., Estimator
and various optimizers), this could be
configured as follows:
# Inside "config.gin"
run_training.train_input_fn = @train/input_fn
run_training.eval_input_fn = @eval/input_fn
input_fn.batch_size = 64 # Shared by both train and eval...
train/input_fn.file_pattern = ...
eval/input_fn.file_pattern = ...
run_training.estimator = @tf.estimator.Estimator()
tf.estimator.Estimator.model_fn = @build_model_fn()
build_model_fn.network_fn = @dnn
dnn.layer_sizes = (1024, 512, 256)
build_model_fn.loss_fn = @tf.losses.sparse_softmax_cross_entropy
build_model_fn.optimize_loss_fn = @optimize_loss
optimize_loss.optimizer_cls = @tf.train.MomentumOptimizer
MomentumOptimizer.momentum = 0.9
optimize_loss.learning_rate = 0.01
Note that it is straightforward to switch between different network functions, optimizers, datasets, loss functions, etc. via different config files.
Additional features described in more detail in the user guide include:
- Automatic logging of all configured parameter values (the "operative config"), including TensorBoard integration.
- "Macros", to specify a value used in multiple places within a config, as well as Python-defined constants.
- Module imports and config file inclusion.
- Disambiguation of configurable names via modules.
At a high level, we recommend using the minimal feature set required to achieve your project's desired degree of configurability. Many projects may only require the features outlined in sections 2 or 3 above. Extreme configurability comes at some cost to understandability, and the tradeoff should be carefully evaluated for a given project.
Gin is still in alpha development and some corner-case behaviors may be changed in backwards-incompatible ways. We recommend the following best practices:
- Minimize use of evaluated configurable references (
@name()
), especially when combined with macros (where the fact that the value is not cached may be surprising to new users). - Avoid nesting of scopes (i.e.,
scope1/scope2/function_name
). While supported there is some ongoing debate around ordering and behavior. - When passing an unscoped reference (
@name
) as a parameter of a scoped function (some_scope/fn.param
), the unscoped reference gets called in the scope of the function it is passed to... but don't rely on this behavior. - Wherever possible, prefer to use a function or class's name as its configurable name, instead of overriding it. In case of naming collisions, use module names (which are encouraged to be renamed to match common usage) for disambiguation.
- In fact, to aid readability for complex config files, we gently suggest always including module names to help make it easier to find corresponding definitions in Python code.
- When doing "full hierarchical configuration" (section 4 above), structure the code to minimize the number of "top-level" functions that are configured without themselves being passed as parameters. In other words, the configuration tree should have only one root.
In short, use Gin responsibly :)
A quick reference for syntax unique to Gin (which otherwise supports
non-control-flow Python syntax, including literal values and line
continuations). Note that where function and class names are used, these may
include a dotted module name prefix (some.module.function_name
).
Syntax | Description |
---|---|
@gin.configurable |
Decorator in Python code that registers a function with Gin, automatically making its parameters configurable. |
name.param = value |
Basic syntax of a Gin binding. Once this is parsed, when the
function or class named name is called, it will receive
value as the value for parameter , unless a
value is explicitly supplied by the caller. Any Python literal may be
supplied as value . |
@some_name |
A reference to another function or class named
some_name . This may be given as the value of a binding, to
supply function- or class-valued parameters. |
@some_name() |
An evaluated reference. Instead of supplying the function
or class directly, the result of calling some_name is
passed instead. Note that the result is not cached; it is recomputed
each time it is required. |
scope/name.param = value |
A scoped binding. The binding is only active when name
is called within scope scope . |
@scope/some_name |
A scoped reference. When this is called, the call will be within
scope scope , applying any relevant scoped bindings. |
MACRO_NAME = value |
A macro. This provides a shorthand name for the expression on the right hand side. |
%MACRO_NAME |
A reference to the macro MACRO_NAME . This has the
effect of textually replacing %MACRO_NAME with whatever
expression it was associated with. Note in particular that the result
of evaluated references are not cached. |