Reactive probabilistic programming

Guillaume Baudart, Louis Mandel, Eric Hamilton Atkinson, Benjamin Sherman, Marc Pouzet, Michael Carbin
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引用次数: 21

Abstract

Synchronous modeling is at the heart of programming languages like Lustre, Esterel, or Scade used routinely for implementing safety critical control software, e.g., fly-by-wire and engine control in planes. However, to date these languages have had limited modern support for modeling uncertainty --- probabilistic aspects of the software's environment or behavior --- even though modeling uncertainty is a primary activity when designing a control system. In this paper we present ProbZelus the first synchronous probabilistic programming language. ProbZelus conservatively provides the facilities of a synchronous language to write control software, with probabilistic constructs to model uncertainties and perform inference-in-the-loop. We present the design and implementation of the language. We propose a measure-theoretic semantics of probabilistic stream functions and a simple type discipline to separate deterministic and probabilistic expressions. We demonstrate a semantics-preserving compilation into a first-order functional language that lends itself to a simple presentation of inference algorithms for streaming models. We also redesign the delayed sampling inference algorithm to provide efficient streaming inference. Together with an evaluation on several reactive applications, our results demonstrate that ProbZelus enables the design of reactive probabilistic applications and efficient, bounded memory inference.
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反应性概率规划
同步建模是Lustre、Esterel或Scade等编程语言的核心,这些编程语言通常用于实现安全关键控制软件,例如飞机上的电传飞行和发动机控制。然而,到目前为止,这些语言对建模不确定性(软件环境或行为的概率方面)的现代支持有限,尽管建模不确定性是设计控制系统时的主要活动。本文提出了第一个同步概率编程语言ProbZelus。ProbZelus保守地提供了一种同步语言来编写控制软件,并使用概率结构来建模不确定性并执行循环推理。我们给出了该语言的设计和实现。我们提出了一个概率流函数的测度论语义和一个简单的类型规则来分离确定性表达式和概率表达式。我们演示了一种保留语义的编译成一阶函数式语言,这种语言可以简单地表示流模型的推理算法。我们还重新设计了延迟采样推理算法,以提供高效的流推理。结合对几个响应性应用程序的评估,我们的结果表明,ProbZelus能够设计响应性概率应用程序和高效的有限内存推理。
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