Assessing a Neuromorphic Platform for use in Scientific Stochastic Sampling

J. Aimone, R. Lehoucq, William M. Severa, J. D. Smith
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引用次数: 2

Abstract

Recent advances in neuromorphic algorithm development have shown that neural inspired architectures can efficiently solve scientific computing problems including graph decision problems and partial-integro differential equations (PIDEs). The latter requires the generation of a large number of samples from a stochastic process. While the Monte Carlo approximation of the solution of the PIDEs converges with an increasing number of sampled neuromorphic trajectories, the fidelity of samples from a given stochastic process using neuromorphic hardware requires verification. Such an exercise increases our trust in this emerging hardware and works toward unlocking its energy and scaling efficiency for scientific purposes such as synthetic data generation and stochastic simulation. In this paper, we focus our verification efforts on a one-dimensional Ornstein- Uhlenbeck stochastic differential equation. Using a discrete-time Markov chain approximation, we sample trajectories of the stochastic process across a variety of parameters on an Intel 8- Loihi chip Nahuku neuromorphic platform. Using relative entropy as a verification measure, we demonstrate that the random samples generated on Loihi are, in an average sense, acceptable. Finally, we demonstrate how Loihi's fidelity to the distribution changes as a function of the parameters of the Ornstein- Uhlenbeck equation, highlighting a trade-off between the lower-precision random number generation of the neuromorphic platform and our algorithm's ability to represent a discrete-time Markov chain.
评估用于科学随机抽样的神经形态平台
神经形态算法发展的最新进展表明,受神经启发的架构可以有效地解决包括图决策问题和偏积分微分方程(PIDEs)在内的科学计算问题。后者需要从随机过程中生成大量样本。虽然PIDEs的蒙特卡罗近似解随着采样神经形态轨迹数量的增加而收敛,但使用神经形态硬件的给定随机过程的样本保真度需要验证。这样的练习增加了我们对这种新兴硬件的信任,并致力于释放其能量和扩展效率,用于科学目的,如合成数据生成和随机模拟。在本文中,我们将重点放在一维Ornstein- Uhlenbeck随机微分方程的验证上。利用离散时间马尔可夫链近似,我们在Intel 8- Loihi芯片Nahuku神经形态平台上对随机过程的各种参数轨迹进行了采样。使用相对熵作为验证度量,我们证明了在Loihi上生成的随机样本在平均意义上是可接受的。最后,我们演示了Loihi对分布的保真度如何作为Ornstein- Uhlenbeck方程参数的函数而变化,突出了神经形态平台的低精度随机数生成与我们的算法表示离散时间马尔可夫链的能力之间的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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