L4CasADi enables the seamless integration of PyTorch-learned models with CasADi for efficient and potentially hardware-accelerated numerical optimization. The only requirement on the PyTorch model is to be traceable and differentiable.
arXiv: Learning for CasADi: Data-driven Models in Numerical Optimization
Talk: Youtube
After feedback from first use-cases L4CasADi v2 is designed with efficiency and simplicity in mind.
This leads to the following breaking changes:
batched=True
,
L4CasADi will understand the first input dimension as batch dimension. Thus, first and second-order derivatives
across elements of this dimension are assumed to be sparse-zero. To make use of this, instead of having multiple calls to a L4CasADi function in
your CasADi program, batch all inputs together and have a single L4CasADi call. An example of this can be seen when
comparing the non-batched NeRF example with the
batched NeRF example which is faster by
a factor of 5-10x.model_expects_batch_dim
is removed.generate_jac_jac=True
.[//]: # (L4CasADi v2 can use the new torch compile functionality starting from PyTorch 2.4. By passing scripting=False
. This
will lead to a longer compile time on first L4CasADi function call but will lead to a overall faster
execution. However, currently this functionality is experimental and not fully stable across all models. In the long
term there is a good chance this will become the default over scripting once the functionality is stabilized by the
Torch developers.)
If you use this framework please cite the following two paper
@article{salzmann2023neural,
title={Real-time Neural-MPC: Deep Learning Model Predictive Control for Quadrotors and Agile Robotic Platforms},
author={Salzmann, Tim and Kaufmann, Elia and Arrizabalaga, Jon and Pavone, Marco and Scaramuzza, Davide and Ryll, Markus},
journal={IEEE Robotics and Automation Letters},
doi={10.1109/LRA.2023.3246839},
year={2023}
}
@inproceedings{{salzmann2024l4casadi,
title={Learning for CasADi: Data-driven Models in Numerical Optimization},
author={Salzmann, Tim and Arrizabalaga, Jon and Andersson, Joel and Pavone, Marco and Ryll, Markus},
booktitle={Learning for Dynamics and Control Conference (L4DC)},
year={2024}
}
If your project is using L4CasADi and you would like to be featured here, please reach out.
Independently if you install from source or via pip you will need to meet the following requirements:
>=2.0
) installation in your python environment.\
python -c "import torch; print(torch.__version__)"
Ensure Torch CPU-version is installed\
pip install torch>=2.0 --index-url https://download.pytorch.org/whl/cpu
Ensure all build dependencies are installed
setuptools>=68.1
scikit-build>=0.17
cmake>=3.27
ninja>=1.11
Run\
pip install l4casadi --no-build-isolation
Clone the repository\
git clone https://github.com/Tim-Salzmann/l4casadi.git
All build dependencies installed via\
pip install -r requirements_build.txt
Build from source\
pip install . --no-build-isolation
The --no-build-isolation
flag is required for L4CasADi to find and link against the installed PyTorch.
CUDA installation requires nvcc to be installed which is part of the CUDA toolkit and can be installed on Linux via
sudo apt-get -y install cuda-toolkit-XX-X
(where XX-X
is your installed Cuda version - e.g. 12-3
).
Once the CUDA toolkit is installed nvcc is commonly found at /usr/local/cuda/bin/nvcc
.
Make sure nvcc -V
can be executed and run pip install l4casadi --no-build-isolation
or CUDACXX=<PATH_TO_NVCC> pip install . --no-build-isolation
to build from source.
If nvcc
is not automatically part of your path you can specify the nvcc
path for L4CasADi.
E.g. CUDACXX=<PATH_TO_NVCC> pip install l4casadi --no-build-isolation
.
Defining an L4CasADi model in Python given a pre-defined PyTorch model is as easy as
import l4casadi as l4c
l4c_model = l4c.L4CasADi(pyTorch_model, device='cpu')
where the architecture of the PyTorch model is unrestricted and large models can be accelerated with dedicated hardware.
L4CasADi supports updating the PyTorch model online in the CasADi graph. To use this feature, pass mutable=True
when
initializing a L4CasADi. To update the model, call the update
function on the L4CasADi
object.
You can optionally pass an updated model as parameter. If no model is passed, the reference passed at
initialization is assumed to be updated and will be used for the update.
While L4CasADi was designed with efficiency in mind by internally leveraging torch's C++ interface, this can still
result in overhead, which can be disproportionate for small, simple models. Thus, L4CasADi additionally provides a
NaiveL4CasADiModule
which directly recreates the PyTorch computational graph using CasADi operations and copies the
weights --- leading to a pure C computational graph without context switches to torch. However, this approach is
limited to a small predefined subset of PyTorch operations --- only MultiLayerPerceptron
models and CPU inference are supported.
The torch framework overhead dominates for networks smaller than three hidden layers, each with 64 neurons (or equivalent). For models smaller than this size we recommend using the NaiveL4CasADiModule. For larger models, the overhead becomes negligible and L4CasADi should be used.
Real-time L4Casadi (former Approximated
approach in ML-CasADi) is the underlying framework powering
Real-time Neural-MPC. It replaces complex models with local Taylor approximations.
For certain optimization procedures (such as MPC with multiple shooting nodes) this can lead to improved optimization times.
However, Real-time L4Casadi
, comes with many restrictions (only Python, no C(++) code generation, ...) and is therefore not
a one-to-one replacement for L4Casadi
. Rather it is a complementary framework for certain special use cases.
More information here.
Please note that only casadi.MX
symbolic variables are supported as input.
Multi-input multi-output functions can be realized by concatenating the symbolic inputs when passing to the model and splitting them inside the PyTorch function.
To use GPU (CUDA) simply pass device="cuda"
to the L4CasADi
constructor.
Further examples:
To use this framework with Acados:
LD_LIBRARY_PATH
is set correctly (DYLD_LIBRARY_PATH
on MacOS).ACADOS_SOURCE_DIR
is set correctly.An example of how a PyTorch model can be used as dynamics model in the Acados framework for Model Predictive Control can be found in examples/acados.py
To use L4CasADi with Acados you will have to set model_external_shared_lib_dir
and model_external_shared_lib_name
in the AcadosOcp.solver_options
accordingly.
ocp.solver_options.model_external_shared_lib_dir = l4c_model.shared_lib_dir
ocp.solver_options.model_external_shared_lib_name = l4c_model.name
Note that PyTorch builds the graph on first execution. Thus, the first call(s) to the CasADi function will be slow. You can warm up to the execution graph by calling the generated CasADi function one or multiple times before using it.