Memristor-based, non-von-Neumann architectures performing tensor operations directly in memory are a promising approach to address the ever-increasing demand for energy efficient, high-throughput hardware accelerators for Machine Learning (ML) inference. A major challenge for the programmability and exploitation of such Computing-In-Memory (CIM) architectures consists in the efficient mapping of tensor operations from high-level ML frameworks to fixed-function hardware blocks implementing in-memory computations. We demonstrate the programmability of memristor-based accelerators with TC-CIM, a fully-automatic, end-to-end compilation flow from Tensor Comprehensions, a mathematical notation for tensor operations, to fixed-function memristor-b...
In recent years, the need for the efficient deployment of Neural Networks (NN) on edge devices has b...
This these presents a series of end-to-end benchmark frameworks, to evaluate the state-of-the-art co...
Deep Learning (DL) has created a growing demand for simpler ways to develop complex models and effic...
Memristor-based, non-von-Neumann architectures performing tensor operations directly in memory are a...
International audienceMemristor-based, non-von-Neumann architectures performing tensor operations di...
140 pagesTensor algebra lives at the heart of big data applications. Where classical machine learnin...
Tensors are higher-dimensional analogs of matrices, and represent a key data abstraction for many ap...
Memristive devices have shown great promise to facilitate the acceleration and improve the power eff...
Memristive devices have shown great promise to facilitate the acceleration and improve the power eff...
Popular Machine Learning (ML) and High Performance Computing (HPC) workloads contribute to a signifi...
Memristive devices arranged in cross-bar architectures have shown great promise to facilitate the ac...
General-purpose computing systems have benefited from technology scaling for several decades but are...
Modern neuromorphic deep learning techniques, as well as unsupervised techniques like the locally co...
Machine Learning (ML) frameworks are tools that facilitate the development and deployment of ML mode...
Deploying deep learning models on various devices has become an important topic. The wave of hardwar...
In recent years, the need for the efficient deployment of Neural Networks (NN) on edge devices has b...
This these presents a series of end-to-end benchmark frameworks, to evaluate the state-of-the-art co...
Deep Learning (DL) has created a growing demand for simpler ways to develop complex models and effic...
Memristor-based, non-von-Neumann architectures performing tensor operations directly in memory are a...
International audienceMemristor-based, non-von-Neumann architectures performing tensor operations di...
140 pagesTensor algebra lives at the heart of big data applications. Where classical machine learnin...
Tensors are higher-dimensional analogs of matrices, and represent a key data abstraction for many ap...
Memristive devices have shown great promise to facilitate the acceleration and improve the power eff...
Memristive devices have shown great promise to facilitate the acceleration and improve the power eff...
Popular Machine Learning (ML) and High Performance Computing (HPC) workloads contribute to a signifi...
Memristive devices arranged in cross-bar architectures have shown great promise to facilitate the ac...
General-purpose computing systems have benefited from technology scaling for several decades but are...
Modern neuromorphic deep learning techniques, as well as unsupervised techniques like the locally co...
Machine Learning (ML) frameworks are tools that facilitate the development and deployment of ML mode...
Deploying deep learning models on various devices has become an important topic. The wave of hardwar...
In recent years, the need for the efficient deployment of Neural Networks (NN) on edge devices has b...
This these presents a series of end-to-end benchmark frameworks, to evaluate the state-of-the-art co...
Deep Learning (DL) has created a growing demand for simpler ways to develop complex models and effic...