Litcius/Paper detail

Near-memory Computing on FPGAs with 3D-stacked Memories: Applications, Architectures, and Optimizations

Veronia Iskandar, Mohamed A. Abd El Ghany, Diana Göhringer

2022ACM Transactions on Reconfigurable Technology and Systems20 citationsDOIOpen Access PDF

Abstract

The near-memory computing (NMC) paradigm has transpired as a promising method for overcoming the memory wall challenges of future computing architectures. Modern systems integrating 3D-stacked DRAM memory can be leveraged to prevent unnecessary data movement between the main memory and the CPU. FPGA vendors have started introducing 3D memories to their products in an effort to remain competitive on bandwidth requirements of modern memory-intensive applications. Recent NMC proposals target various types of data processing workloads such as graph processing, MapReduce, sorting, machine learning, and database analytics. In this article, we conduct a literature survey on previous proposals of NMC systems on FPGAs integrated with 3D memories. By leveraging the high bandwidth offered from such memories together with specifically designed hardware, FPGA architectures have become a competitor to GPU solutions in terms of speed and energy efficiency. Various FPGA-based NMC designs have been proposed with software and hardware optimization methods to achieve high performance and energy efficiency. Our review investigates various aspects of NMC designs such as platforms, architectures, workloads, and tools. We identify the key challenges and open issues with future research directions.

Topics & Concepts

Computer scienceComputer architectureField-programmable gate arrayDramMemory bandwidthEmbedded systemEfficient energy useKey (lock)Memory hierarchyBandwidth (computing)Parallel computingOperating systemComputer hardwareCacheElectrical engineeringEngineeringComputer networkAdvanced Memory and Neural ComputingFerroelectric and Negative Capacitance DevicesParallel Computing and Optimization Techniques