Neural networks cannot typically be trained locally in edge‐computing systems due to severe energy constraints. It has, therefore, become commonplace to train them “ex situ” and transfer the resulting model to a dedicated inference hardware. Resistive memory arrays are of particular interest for realizing such inference hardware, because they offer an extremely low‐power implementation of the dot‐product operation. However, the transfer of high‐precision software parameters to the imprecise and random conductance states of resistive memories poses significant challenges. Here, it is proposed that Bayesian neural networks can be more suitable for model transfer, because, such as device conductance states, their parameters are described by ra...
Bayesian statistical inference provides a principled framework for linking mechanistic models of neu...
Machine learning has been getting attention in recent years as a tool to process big data generated ...
Directed acyclic graphs or Bayesian networks that are popular in many AI-related sectors for probabi...
International audienceNovel computing architectures based on resistive switching memories (also know...
Abstract Safety-critical sensory applications, like medical diagnosis, demand accurate decisions fro...
Brain-inspired, inherently parallel computation has been proven to excel at tasks where the intrinsi...
Conductance variations of resistive random-access memory (RRAM) are significant challenges that hind...
A physical implementation of a non-volatile resistive switching device (ReRAM) and linking its conce...
International audience—Cognitive tasks are essential for the modern applications of electronics, and...
In-memory computing using resistive memory devices is a promising non-von Neumann approach for makin...
In recent years, a considerable research effort has shown the energy benefits of implementing neural...
Bayesian reasoning is a machine learning approach that provides explainable outputs and excels in sm...
Non-volatile analog memory devices such as phase-change memory (PCM) enable designing dedicated conn...
Hardware implementation of neuromorphic computing is attractive as a computing paradigm beyond the c...
Current large-scale implementations of deep learning and data mining require thousands of processors...
Bayesian statistical inference provides a principled framework for linking mechanistic models of neu...
Machine learning has been getting attention in recent years as a tool to process big data generated ...
Directed acyclic graphs or Bayesian networks that are popular in many AI-related sectors for probabi...
International audienceNovel computing architectures based on resistive switching memories (also know...
Abstract Safety-critical sensory applications, like medical diagnosis, demand accurate decisions fro...
Brain-inspired, inherently parallel computation has been proven to excel at tasks where the intrinsi...
Conductance variations of resistive random-access memory (RRAM) are significant challenges that hind...
A physical implementation of a non-volatile resistive switching device (ReRAM) and linking its conce...
International audience—Cognitive tasks are essential for the modern applications of electronics, and...
In-memory computing using resistive memory devices is a promising non-von Neumann approach for makin...
In recent years, a considerable research effort has shown the energy benefits of implementing neural...
Bayesian reasoning is a machine learning approach that provides explainable outputs and excels in sm...
Non-volatile analog memory devices such as phase-change memory (PCM) enable designing dedicated conn...
Hardware implementation of neuromorphic computing is attractive as a computing paradigm beyond the c...
Current large-scale implementations of deep learning and data mining require thousands of processors...
Bayesian statistical inference provides a principled framework for linking mechanistic models of neu...
Machine learning has been getting attention in recent years as a tool to process big data generated ...
Directed acyclic graphs or Bayesian networks that are popular in many AI-related sectors for probabi...