AI-Guided Codesign Framework for Novel Material and Device Design applied to MTJ-based True Random Number Generators
- URL: http://arxiv.org/abs/2411.01008v1
- Date: Fri, 01 Nov 2024 20:16:55 GMT
- Title: AI-Guided Codesign Framework for Novel Material and Device Design applied to MTJ-based True Random Number Generators
- Authors: Karan P. Patel, Andrew Maicke, Jared Arzate, Jaesuk Kwon, J. Darby Smith, James B. Aimone, Jean Anne C. Incorvia, Suma G. Cardwell, Catherine D. Schuman,
- Abstract summary: We leverage reinforcement learning and evolutionary optimization to vary key device and material properties of various device models for operation.
Our AI guided codesign methods generated different candidate devices capable of generating samples for a desired probability distribution.
- Score: 0.8281068183088186
- License:
- Abstract: Novel devices and novel computing paradigms are key for energy efficient, performant future computing systems. However, designing devices for new applications is often time consuming and tedious. Here, we investigate the design and optimization of spin orbit torque and spin transfer torque magnetic tunnel junction models as the probabilistic devices for true random number generation. We leverage reinforcement learning and evolutionary optimization to vary key device and material properties of the various device models for stochastic operation. Our AI guided codesign methods generated different candidate devices capable of generating stochastic samples for a desired probability distribution, while also minimizing energy usage for the devices.
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