4 research outputs found
Superconducting Heater Cryotron-Based Reconfigurable Logic Towards Cryogenic IC Camouflaging
Superconducting electronics are among the most promising alternatives to
conventional CMOS technology thanks to the ultra-fast speed and ultra-high
energy efficiency of the superconducting devices. Having a cryogenic control
processor is also a crucial requirement for scaling the existing quantum
computers up to thousands of qubits. Despite showing outstanding speed and
energy efficiency, Josephson junction-based circuits suffer from several
challenges such as flux trapping leading to limited scalability, difficulty in
driving high impedances, and so on. Three-terminal cryotron devices have been
proposed to solve these issues which can drive high impedances (>100 k{\Omega})
and are free from any flux trapping issue. In this work, we develop a
reconfigurable logic circuit using a heater cryotron (hTron). In conventional
approaches, the number of devices to perform a logic operation typically
increases with the number of inputs. However, here, we demonstrate a single
hTron device-based logic circuit that can be reconfigured to perform 1-input
copy and NOT, 2-input AND and OR, and 3-input majority logic operations by
choosing suitable biasing conditions. Consequently, we can perform any
processing task with a much smaller number of devices. Also, since we can
perform different logic operations with the same circuit (same layout), we can
develop a camouflaged system where all the logic gates will have the same
layout. Therefore, this proposed circuit will ensure enhanced hardware security
against reverse engineering attacks.Comment: 12 pages, 5 figure
Machine Learning-powered Compact Modeling of Stochastic Electronic Devices using Mixture Density Networks
The relentless pursuit of miniaturization and performance enhancement in
electronic devices has led to a fundamental challenge in the field of circuit
design and simulation: how to accurately account for the inherent stochastic
nature of certain devices. While conventional deterministic models have served
as indispensable tools for circuit designers, they fall short when it comes to
capture the subtle yet critical variability exhibited by many electronic
components. In this paper, we present an innovative approach that transcends
the limitations of traditional modeling techniques by harnessing the power of
machine learning, specifically Mixture Density Networks (MDNs), to faithfully
represent and simulate the stochastic behavior of electronic devices. We
demonstrate our approach to model heater cryotrons, where the model is able to
capture the stochastic switching dynamics observed in the experiment. Our model
shows 0.82% mean absolute error for switching probability. This paper marks a
significant step forward in the quest for accurate and versatile compact
models, poised to drive innovation in the realm of electronic circuits
Multiplexed gradient descent: Fast online training of modern datasets on hardware neural networks without backpropagation
We present multiplexed gradient descent (MGD), a gradient descent framework
designed to easily train analog or digital neural networks in hardware. MGD
utilizes zero-order optimization techniques for online training of hardware
neural networks. We demonstrate its ability to train neural networks on modern
machine learning datasets, including CIFAR-10 and Fashion-MNIST, and compare
its performance to backpropagation. Assuming realistic timescales and hardware
parameters, our results indicate that these optimization techniques can train a
network on emerging hardware platforms orders of magnitude faster than the
wall-clock time of training via backpropagation on a standard GPU, even in the
presence of imperfect weight updates or device-to-device variations in the
hardware. We additionally describe how it can be applied to existing hardware
as part of chip-in-the-loop training, or integrated directly at the hardware
level. Crucially, the MGD framework is highly flexible, and its gradient
descent process can be optimized to compensate for specific hardware
limitations such as slow parameter-update speeds or limited input bandwidth
The thermally-coupled imager: A scalable readout architecture for superconducting nanowire single photon detectors
Although superconducting nanowire single-photon detectors (SNSPDs) are a
promising technology for quantum optics, metrology, and astronomy, they
currently lack a readout architecture that is scalable to the megapixel regime
and beyond. In this work, we have designed and demonstrated such an
architecture for SNSPDs, called the thermally-coupled imager (TCI). The TCI
uses a combination of time-of-flight delay lines and thermal coupling to create
a scalable architecture that can scale to large array sizes, allows neighboring
detectors to operate independently, and requires only four microwave readout
lines to operate no matter the size of the array. We give an overview of how
the architecture functions, and demonstrate a proof-of-concept
imaging array. The array was able to image a free-space focused spot at 373 nm,
count at 9.6 Mcps, and resolve photon location with greater than 99.83\%
distinguishability