Resistive random access memory (RRAM) based computing-in-memory (CIM) is attractive for edge artificial intelligence (AI) applications, thanks to its excellent energy efficiency, compactness and high parallelism in matrix vector multiplication (MatVec) operations. However, existing RRAM-based CIM designs often require complex programming scheme to precisely control the RRAM cells to reach the desired resistance states so that the neural network classification accuracy is maintained. This leads to large area and energy overhead as well as low RRAM area utilization. Hence, compact RRAMbased CIM with simple pulse-based programming scheme is thus more desirable. To achieve this, we propose a chip-in-the-loop training approach to compensate for...
This work addresses the reliability of RRAM, with a focus on conductance variation and its impact on...
In-memory computing (IMC) is attracting interest for accelerating data-intensive computing tasks, su...
Abstract Analog hardware-based training provides a promising solution to developing state-of-the-art...
Computation-In-Memory (CIM) employing Resistive-RAM(RRAM)-based crossbar arrays is a promising solut...
The ever-increasing energy demands of traditional computing platforms (CPU, GPU) for large-scale dep...
Resistive switching memory (RRAM) is a promising technology for embedded memory and its application ...
International audienceResistive random access memories (RRAM) are novel nonvolatile memory technolog...
In this work we devise and train a RRAM-based low-precision neural network with binary weights and 4...
Realizing increasingly complex artificial intelligence (AI) functionalities directly on edge devices...
In-memory computing (IMC) refers to non-von Neumann architectures where data are processed in situ w...
Computation-In Memory (CIM) using RRAM crossbar array is a promising solution to realize energy-eff...
In-memory computing architectures based on Resistive random access memory technologies (RRAM) are a ...
The Internet data has reached exa-scale (1018 bytes), which has introduced emerging need to re-exami...
Resistive switching random access memory (RRAM) shows its potential to be a promising candidate as t...
Computation-In Memory (CIM) using RRAM crossbar array is a promising solution to realize energy-effi...
This work addresses the reliability of RRAM, with a focus on conductance variation and its impact on...
In-memory computing (IMC) is attracting interest for accelerating data-intensive computing tasks, su...
Abstract Analog hardware-based training provides a promising solution to developing state-of-the-art...
Computation-In-Memory (CIM) employing Resistive-RAM(RRAM)-based crossbar arrays is a promising solut...
The ever-increasing energy demands of traditional computing platforms (CPU, GPU) for large-scale dep...
Resistive switching memory (RRAM) is a promising technology for embedded memory and its application ...
International audienceResistive random access memories (RRAM) are novel nonvolatile memory technolog...
In this work we devise and train a RRAM-based low-precision neural network with binary weights and 4...
Realizing increasingly complex artificial intelligence (AI) functionalities directly on edge devices...
In-memory computing (IMC) refers to non-von Neumann architectures where data are processed in situ w...
Computation-In Memory (CIM) using RRAM crossbar array is a promising solution to realize energy-eff...
In-memory computing architectures based on Resistive random access memory technologies (RRAM) are a ...
The Internet data has reached exa-scale (1018 bytes), which has introduced emerging need to re-exami...
Resistive switching random access memory (RRAM) shows its potential to be a promising candidate as t...
Computation-In Memory (CIM) using RRAM crossbar array is a promising solution to realize energy-effi...
This work addresses the reliability of RRAM, with a focus on conductance variation and its impact on...
In-memory computing (IMC) is attracting interest for accelerating data-intensive computing tasks, su...
Abstract Analog hardware-based training provides a promising solution to developing state-of-the-art...