Litcius/Paper detail

RRAM for Compute-in-Memory: From Inference to Training

Shimeng Yu, Wonbo Shim, Xiaochen Peng, Yandong Luo

2021IEEE Transactions on Circuits and Systems I Regular Papers129 citationsDOI

Abstract

To efficiently deploy machine learning applications to the edge, compute-in-memory (CIM) based hardware accelerator is a promising solution with improved throughput and energy efficiency. Instant-on inference is further enabled by emerging non-volatile memory technologies such as resistive random access memory (RRAM). This paper reviews the recent progresses of the RRAM based CIM accelerator design. First, the multilevel states RRAM characteristics are measured from a test vehicle to examine the key device properties for inference. Second, a benchmark is performed to study the scalability of the RRAM CIM inference engine and the feasibility towards monolithic 3D integration that stacks RRAM arrays on top of advanced logic process node. Third, grand challenges associated with in-situ training are presented. To support accurate and fast in-situ training and enable subsequent inference in an integrated platform, a hybrid precision synapse that combines RRAM with volatile memory (e.g. capacitor) is designed and evaluated at system-level. Prospects and future research needs are discussed.

Topics & Concepts

Resistive random-access memoryInferenceScalabilityBenchmark (surveying)Computer scienceComputer architectureThroughputInference engineComputer engineeringArtificial intelligenceEngineeringElectrical engineeringOperating systemWirelessGeographyVoltageGeodesyAdvanced Memory and Neural ComputingFerroelectric and Negative Capacitance DevicesSemiconductor materials and devices