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Semiconductor Design and Verification

Streamline Architectural exploration, optimize post-processing of simulation and start verification early with MATLAB and Simulink

AI-Based Receivers: Transforming the Physical Layer for 6G

As 6G research advances, artificial intelligence is reshaping the physical layer of wireless systems. MathWorks provides tools that facilitate both MATLAB-based AI model development, and integration with other machine learning frameworks like PyTorch™. This gives engineers flexibility without compromising on performance or validation.

AI-native fully convolutional receiver replacing the traditional channel estimation, equalization and symbol demodulation to compensate for the effects of the propagation channel

Interested to learn more? Explore the examples:
AI-Native Fully Convolutional Receiver
Verify the Performance of 6G AI-Native Receiver Using MATLAB and PyTorch Coexecution

Two Paths, One Platform

MathWorks showcases this flexibility through two examples:

AI-native receiver examples from 6G Exploration Library for 5G Toolbox

Performance of fully convolutional receiver vs. traditional receiver for a high Doppler case

MATLAB: a Unified Environment for AI for Wireless Simulation

Whether you build your model in MATLAB or in PyTorch, MathWorks tools provide a consistent simulation environment:

  • Generate synthetic data for learning and inference
  • Capture real world data for AI training and validation using high end USRP radios and Wireless Testbench
  • Accelerate simulations using parallel processing and GPUs
  • Deploy AI networks across embedded platforms

With MATLAB and Simulink, you can design, simulate, test, verify, and deploy AI algorithms that enhance the performance and functionality of complex embedded systems

Supporting Diverse Workflows for 6G Innovation

From prototyping in MATLAB to validating external models, MathWorks provides a simulation framework that accelerates your path to 6G innovation.

  • Use MATLAB’s Deep Learning Toolbox to build and train models entirely within the MATLAB environment
  • Bring your own models from PyTorch or TensorFlow™ and run inference directly within MATLAB simulations using co-execution workflows
  • Explore more AI for 6G examples and AI for wireless examples offering a growing library of examples covering AI-based beamforming, channel estimation, signal classification, and more

Image from the CSI Feedback with Autoencoders example, where we use  neural networks to compress and recover channel state information between the UE and the gNB. The figure shows the preprocessing of the channel state information in the frequency domain before compressing using autoencoders

Conclusion

AI is redefining the physical layer design. MathWorks provides a unified simulation framework to build, test, and validate AI-driven algorithms—whether you create models in MATLAB or bring in PyTorch for co-execution. With AI shaping the future of connectivity, the question is: how will you use these tools to accelerate your 6G journey?

Interested to learn more? Explore the examples:
AI-Native Fully Convolutional Receiver
Verify the Performance of 6G AI-Native Receiver Using MATLAB and PyTorch Coexecution

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