A parallel framework for deep learning. Read the paper here.
- Training and inference of dense (fully connected) and convolutional neural networks
- Stochastic gradient descent optimizers: Classic, momentum, Nesterov momentum, RMSProp, Adagrad, Adam, AdamW
- More than a dozen activation functions and their derivatives
- Loss functions and metrics: Quadratic, Mean Squared Error, Pearson Correlation etc.
- Data-based parallelism
- Loading dense and convolutional models from Keras HDF5 (.h5) files (see the nf-keras-hdf5 add-on)
Layer type | Constructor name | Supported input layers | Rank of output array | Forward pass | Backward pass |
---|---|---|---|---|---|
Input | input |
n/a | 1, 3 | n/a | n/a |
Dense (fully-connected) | dense |
input1d , flatten |
1 | ✅ | ✅ |
Convolutional (2-d) | conv2d |
input3d , conv2d , maxpool2d , reshape |
3 | ✅ | ✅(*) |
Max-pooling (2-d) | maxpool2d |
input3d , conv2d , maxpool2d , reshape |
3 | ✅ | ✅ |
Flatten | flatten |
input3d , conv2d , maxpool2d , reshape |
1 | ✅ | ✅ |
Reshape (1-d to 3-d) | reshape |
input1d , dense , flatten |
3 | ✅ | ✅ |
(*) See Issue #145 regarding non-converging CNN training on the MNIST dataset.
Get the code:
git clone https://github.com/modern-fortran/neural-fortran
cd neural-fortran
Required dependencies are:
Optional dependencies are:
- OpenCoarrays (for parallel execution with GFortran)
- BLAS, MKL, or similar (for offloading
matmul
anddot_product
calls) - curl (for downloading testing and example datasets)
Compilers tested include:
- flang-new 20.0.0
- gfortran 13.2.0, 14.0.1
- ifort 2021.13.1
- ifx 2024.2.1
With gfortran, the following will create an optimized build of neural-fortran:
fpm build --profile release
If you use GFortran and want to run neural-fortran in parallel,
you must first install OpenCoarrays.
Once installed, use the compiler wrappers caf
and cafrun
to build and execute
in parallel, respectively:
fpm build --compiler caf --profile release --flag "-cpp -DPARALLEL"
fpm test --profile release
For the time being, you need to specify the same compiler flags to fpm test
as you did in fpm build
so that fpm knows it should use the same build
profile.
See the Fortran Package Manager for more info on fpm.
mkdir build
cd build
cmake ..
make
Tests and examples will be built in the bin/
directory.
If you use GFortran and want to run neural-fortran in parallel,
you must first install OpenCoarrays.
Once installed, use the compiler wrappers caf
and cafrun
to build and execute
in parallel, respectively:
FC=caf cmake .. -DPARALLEL
make
cafrun -n 4 bin/mnist # run MNIST example on 4 cores
If you want to build with a different compiler, such as Intel Fortran,
specify FC
when issuing cmake
:
FC=ifort cmake ..
for a parallel build of neural-fortran, or
FC=ifort cmake ..
for a serial build.
To use an external BLAS or MKL library for matmul
calls,
run cmake like this:
cmake .. -DBLAS=-lblas
where the value of -DBLAS
should point to the desired BLAS implementation,
which has to be available in the linking path.
This option is currently available only with gfortran.
To build with debugging flags enabled, type:
cmake .. -DCMAKE_BUILD_TYPE=debug
Type:
ctest
to run the tests.
You can use the CMake module available here to
find or fetch an installation of this project while configuring your project. This
module makes sure that the neural-fortran::neural-fortran
target is always generated regardless
of how the neural-fortran is included in the project.
First, either copy Findneural-fortran.cmake
to, say, your project's cmake
directory
and then include it in your CMakeLists.txt
file:
list(APPEND CMAKE_MODULE_PATH "${CMAKE_CURRENT_SOURCE_DIR}/cmake")
or use the CMAKE_MODULE_PATH
variable to point to the directory where it is installed.
Next you need to set neural-fortran_ROOT_DIR
to the directory where neural-fortran is installed
such that neural-fortran_ROOT_DIR/lib/libneural-fortran.a
exists.
The following should be added in the CMake file of your directory:
if(NOT TARGET neural-fortran::neural-fortran)
find_package(neural-fortran REQUIRED)
endif()
and then to use the target in your project:
target_link_libraries(your_target PRIVATE neural-fortran::neural-fortran)
The easiest way to get a sense of how to use neural-fortran is to look at examples, in increasing level of complexity:
- simple: Approximating a simple, constant data relationship
- sine: Approximating a sine function
- dense_mnist: Hand-written digit recognition (MNIST dataset) using a dense (fully-connected) network
- cnn_mnist: Training a CNN on the MNIST dataset
- get_set_network_params: Getting and setting hyperparameters of a network.
The examples also show you the extent of the public API that's meant to be
used in applications, i.e. anything from the nf
module.
Examples 3-6 rely on curl to download the needed datasets, so make sure you have it installed on your system. Most Linux OSs have it out of the box. The dataset will be downloaded only the first time you run the example in any given directory.
If you're using Windows OS or don't have curl for any other reason, download mnist.tar.gz directly and unpack in the directory in which you will run the example program.
API documentation can be generated with FORD. Assuming you have FORD installed on your system, run
ford ford.md
from the neural-fortran top-level directory to generate the API documentation in doc/html. Point your browser to doc/html/index.html to read it.
This Contributing guide briefly describes the code organization. It may be useful to read if you want to contribute a new feature to neural-fortran.
Thanks to all open-source contributors to neural-fortran: awvwgk, ggoyman, ivan-pi, jacobwilliams, jvdp1, jvo203, milancurcic, pirpyn, rouson, rweed, Spnetic-5, and scivision.
Development of convolutional networks and Keras HDF5 adapters in neural-fortran was funded by a contract from NASA Goddard Space Flight Center to the University of Miami. Development of optimizers is supported by the Google Summer of Code 2023 project awarded to Fortran-lang.
- Fortran Keras Bridge (FKB) by Jordan Ott provides a Python bridge between old (v0.1.0) neural-fortran style save files and Keras's HDF5 models. As of v0.9.0, neural-fortran implements the full feature set of FKB in pure Fortran, and in addition supports training and inference of convolutional networks.
- rte-rrtmgp-nn by Peter Ukkonen is an implementation based on old (v0.1.0) neural-fortran which optimizes for speed and running on GPUs the memory layout and forward and backward passes of dense layers.
- Inference Engine developed at the Berkeley Lab by the Computer Languages and Systems Software (CLaSS) group.
Neural-fortran has been used successfully in over a dozen published studies. See all papers that cite it here.