₹20,000.00Original price was: ₹20,000.00.₹12,000.00Current price is: ₹12,000.00.
Source : Verilog HDL
Base Paper Abstract:
In this brief an approach is proposed to achieve energy savings from reduced voltage operation. The solution detects timing-errors by integrating Algorithm Based Fault Tolerance (ABFT) into a digital architecture. The approach has been studied with a systolic array matrix multiplier operating at reduced voltages, detecting errors on-the-fly to avoid energy demanding memory round-trips. The analysis of the solution has been done using analog-digital co-simulation to extract the transient behavior under different voltages and clock frequencies. HSPICE simulations using 90nm CMOS transistor models, and experiments by reducing operation voltage of an FPGA device were carried out. HSPICE simulations, showed possibility of 10x increase in energy-efficiency by approaching near-threshold region.
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₹10,000.00Original price was: ₹10,000.00.₹6,000.00Current price is: ₹6,000.00.
Source Code : VHDL
Abstract:
Iterative methods are basic building blocks of communication systems and often represent a dominating part of the system, and therefore, they necessitate careful design and implementation for optimal performance. In this brief, we propose a novel field programmable gate arrays design of matrix–vector multiplier that can be used to efficiently implement widely adopted iterative methods. The proposed design exploits the sparse structure of the matrix as well as the fact that spreading code matrices have equal magnitude entries. Implementation details and timing analysis results are promising and are shown to satisfy most modern communication system requirements.
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₹20,000.00Original price was: ₹20,000.00.₹16,000.00Current price is: ₹16,000.00.
Source : Verilog HDL
Base Paper Abstract:
In this brief, we present a new algorithm and architecture for continuous-flow matrix transposition using registers. The algorithm supports P-parallel matrix transposition. The hardware architecture reaches the theoretical minimums in terms of latency and memory. It is composed of a group of identical cascaded basic swap circuits, whose stages are determined by the corresponding algorithm, and can be controlled via a set of counters. Compared with the state-of-the-art architecture, the proposed architecture supports matrices whose rows and columns are integer multiples of P. Here P can be arbitrary, including but not limited to power-of-two integers. Moreover, our results provide additional insight into continuous-flow non-square matrix transposition.
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₹20,000.00Original price was: ₹20,000.00.₹14,000.00Current price is: ₹14,000.00.
Source : Verilog HDL
Abstract:
This article presents a reconfigurable accelerator for Recurrent Neural networks with fine-grained Column Wise matrix–vector multiplication (RENOWN). We propose a novel latency-hiding architecture for recurrent neural network (RNN) acceleration using column-wise matrix–vector multiplication (MVM) instead of the state-of-the-art row-wise operation. This hardware (HW) architecture can eliminate data dependencies to improve the throughput of RNN inference systems. Besides, we introduce a configurable checkerboard tiling strategy which allows large weight matrices, while incorporating various configurations of element-based parallelism (EP) and vector-based parallelism (VP). These optimizations improve the exploitation of parallelism to increase HW utilization and enhance system throughput. Evaluation results show that our design can achieve over 29.6 tera operations per second (TOPS) which would be among the highest for field-programmable gate array (FPGA)-based RNN designs. Compared to state-of-the-art accelerators on FPGAs, our design achieves 3.7–14.8 times better performance and has the highest HW utilization.
List of the following materials will be included with the Downloaded Backup:
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