Use Keras models in C++ with ease
Would you like to build/train a model using Keras/Python? And would you like to run the prediction (forward pass) on your model in C++ without linking your application against TensorFlow? Then frugally-deep is exactly for you.
frugally-deep
- is a small header-only library written in modern and pure C++.
- is very easy to integrate and use.
- depends only on FunctionalPlus, Eigen and json - also header-only libraries.
- supports inference (
model.predict
) not only for sequential models but also for computational graphs with a more complex topology, created with the functional API. - re-implements a (small) subset of TensorFlow, i.e., the operations needed to support prediction.
- results in a much smaller binary size than linking against TensorFlow.
- works out-of-the-box also when compiled into a 32-bit executable. (Of course, 64 bit is fine too.)
- avoids temporarily allocating (potentially large chunks of) additional RAM during convolutions (by not materializing the im2col input matrix).
- utterly ignores even the most powerful GPU in your system and uses only one CPU core per prediction. ;-)
- but is quite fast on one CPU core, and you can run multiple predictions in parallel, thus utilizing as many CPUs as you like to improve the overall prediction throughput of your application/pipeline.
Add
,Concatenate
,Subtract
,Multiply
,Average
,Maximum
,Minimum
,Dot
AveragePooling1D/2D/3D
,GlobalAveragePooling1D/2D/3D
TimeDistributed
Conv1D/2D
,SeparableConv2D
,DepthwiseConv2D
Cropping1D/2D/3D
,ZeroPadding1D/2D/3D
,CenterCrop
BatchNormalization
,Dense
,Flatten
,Normalization
Dropout
,AlphaDropout
,GaussianDropout
,GaussianNoise
SpatialDropout1D
,SpatialDropout2D
,SpatialDropout3D
ActivityRegularization
,LayerNormalization
,UnitNormalization
RandomContrast
,RandomFlip
,RandomHeight
RandomRotation
,RandomTranslation
,RandomWidth
,RandomZoom
MaxPooling1D/2D/3D
,GlobalMaxPooling1D/2D/3D
ELU
,LeakyReLU
,ReLU
,SeLU
,PReLU
Sigmoid
,Softmax
,Softplus
,Tanh
Exponential
,GELU
,Softsign
,Rescaling
UpSampling1D/2D
,Resizing
Reshape
,Permute
,RepeatVector
Embedding
,CategoryEncoding
Attention
,AdditiveAttention
,MultiHeadAttention
- multiple inputs and outputs
- nested models
- residual connections
- shared layers
- variable input shapes
- arbitrary complex model architectures / computational graphs
- custom layers (by passing custom factory functions to
load_model
)
Conv2DTranspose
(why),
Lambda
(why),
Conv3D
, ConvLSTM1D
, ConvLSTM2D
, Discretization
,
GRUCell
, Hashing
,
IntegerLookup
,
LocallyConnected1D
, LocallyConnected2D
,
LSTMCell
, Masking
,
RepeatVector
, RNN
, SimpleRNN
,
SimpleRNNCell
, StackedRNNCells
, StringLookup
, TextVectorization
,
Bidirectional
, GRU
, LSTM
, CuDNNGRU
, CuDNNLSTM
,
ThresholdedReLU
, Upsampling3D
, temporal
models
-
Use Keras/Python to build (
model.compile(...)
), train (model.fit(...)
) and test (model.evaluate(...)
) your model as usual. Then save it to a single file usingmodel.save('....keras')
. Theimage_data_format
in your model must bechannels_last
, which is the default when using the TensorFlow backend. Models created with a differentimage_data_format
and other backends are not supported. -
Now convert it to the frugally-deep file format with
keras_export/convert_model.py
-
Finally load it in C++ (
fdeep::load_model(...)
) and usemodel.predict(...)
to invoke a forward pass with your data.
The following minimal example shows the full workflow:
# create_model.py
import numpy as np
from tensorflow.keras.layers import Input, Dense
from tensorflow.keras.models import Model
inputs = Input(shape=(4,))
x = Dense(5, activation='relu')(inputs)
predictions = Dense(3, activation='softmax')(x)
model = Model(inputs=inputs, outputs=predictions)
model.compile(loss='categorical_crossentropy', optimizer='nadam')
model.fit(
np.asarray([[1, 2, 3, 4], [2, 3, 4, 5]]),
np.asarray([[1, 0, 0], [0, 0, 1]]), epochs=10)
model.save('keras_model.keras')
python3 keras_export/convert_model.py keras_model.keras fdeep_model.json
// main.cpp
#include <fdeep/fdeep.hpp>
int main()
{
const auto model = fdeep::load_model("fdeep_model.json");
const auto result = model.predict(
{fdeep::tensor(fdeep::tensor_shape(static_cast<std::size_t>(4)),
std::vector<float>{1, 2, 3, 4})});
std::cout << fdeep::show_tensors(result) << std::endl;
}
When using convert_model.py
a test case (input and corresponding output values) is generated automatically and saved along with your model. fdeep::load_model
runs this test to make sure the results of a forward pass in frugally-deep are the same as in Keras.
For more integration examples please have a look at the FAQ.
- A C++14-compatible compiler: Compilers from these versions on are fine: GCC 4.9, Clang 3.7 (libc++ 3.7) and Visual C++ 2015
- Python 3.7 or higher
- TensorFlow 2.17 (These are the tested versions, but somewhat older ones might work too.)
Guides for different ways to install frugally-deep can be found in INSTALL.md
.
See FAQ.md
The API of this library still might change in the future. If you have any suggestions, find errors, or want to give general feedback/criticism, I'd love to hear from you. Of course, contributions are also very welcome.
Distributed under the MIT License.
(See accompanying file LICENSE
or at
https://opensource.org/licenses/MIT)