With MATLAB and Simulink, you can design, simulate, test, verify, and deploy AI algorithms that enhance the performance and functionality of complex embedded systems.
Generate portable, optimized C/C++ code from trained machine learning and deep learning models with MATLAB Coder and Simulink Coder. Some examples are:


Generate optimized CUDA® code for trained deep learning networks with GPU Coder for deployment to desktops, servers, and embedded GPUs. Some use cases are:
Prototype and implement deep learning networks on FPGAs and SoCs with Deep Learning HDL Toolbox. Generate custom deep learning processor IP cores and bitstreams with HDL Coder.


Generate optimized code for NPUs like Qualcomm Hexagon and Infineon PPU in AURIX TC4x.
Compress deep neural networks with quantization, projection, or pruning to reduce memory footprint and increase inference performance.


AI verification applies rigorous methods like the W-shaped process to ensure intended behaviors and prevent unintended ones.
If you have an inquiry, contact us
Contact Us