作者
Timon Gehr, Sasa Misailovic, Petar Tsankov, Laurent Vanbever, Pascal Wiesmann, Martin Vechev
发表日期
2018/6/11
期刊
ACM SIGPLAN Notices
卷号
53
期号
4
页码范围
586-602
出版商
ACM
简介
Network operators often need to ensure that important probabilistic properties are met, such as that the probability of network congestion is below a certain threshold. Ensuring such properties is challenging and requires both a suitable language for probabilistic networks and an automated procedure for answering probabilistic inference queries.
We present Bayonet, a novel approach that consists of: (i) a probabilistic network programming language and (ii) a system that performs probabilistic inference on Bayonet programs. The key insight behind Bayonet is to phrase the problem of probabilistic network reasoning as inference in existing probabilistic languages. As a result, Bayonet directly leverages existing probabilistic inference systems and offers a flexible and expressive interface to operators.
We present a detailed evaluation of Bayonet on common network scenarios, such as network congestion, reliability …
引用总数
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T Gehr, S Misailovic, P Tsankov, L Vanbever… - ACM SIGPLAN Notices, 2018