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Reads and writes to global data in off-chip RAM can limit the performance achieved with HLS tools, as each access takes multiple cycles and usually blocks progress in the application state machine. This can be combated by using data prefetchers, which hide access time by predicting the next memory access and loading it into a cache before it's required. Unfortunately, current prefetchers are only...
Restricted Boltzmann Machines (RBMs) are widely used in modern machine learning tasks. Existing implementations are limited in network size and training throughput by available DSP resources. In this work we propose a new algorithm and architecture for FPGAs called dropout-RBM (dRBM) system. Compared to the state-of-art design methods on the same FPGA, dRBM with a dropout rate 0.5 doubles the maximum...
Field-programmable gate array (FPGA) optimized random number generators (RNGs) are more resource-efficient than software-optimized RNGs because they can take advantage of bitwise operations and FPGA-specific features. However, it is difficult to concisely describe FPGA-optimized RNGs, so they are not commonly used in real-world designs. This paper describes a type of FPGA RNG called a LUT-SR RNG,...
In many application domains, data are represented using large graphs involving millions of vertices and billions of edges. Graph exploration algorithms, such as breadth-first search (BFS), are largely dominated by memory latency and are challenging to process efficiently. In this paper, we present a reconfigurable hardware methodology for efficient parallel processing of large-scale graph exploration...
In many application domains, data are represented using large graphs involving millions of vertices and edges. Graph analysis algorithms, such as finding short paths and isomorphic subgraphs, are largely dominated by memory latency. Large cluster-based computing platforms can process graphs efficiently if the graph data can be partitioned, and on a smaller scale partitioning can be used to allocate...
There is a need for improved performance in financial computing, both to improve the quality of the results produced by existing methods, such as incorporating more realistic models of risk, and to increase the scope of applications, such as modelling corporation-wide exposure to risk without applying simplifying abstractions. However, increased performance comes at significant cost, both in terms...
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