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TensorFI: A Configurable Fault Injector for TensorFlow Applications

机译:TensorFI:Tensorflow应用程序的可配置故障注射器

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Machine Learning (ML) applications have emerged as the killer applications for next generation hardware and software platforms, and there is a lot of interest in software frameworks to build such applications. TensorFlow is a high-level dataflow framework for building ML applications and has become the most popular one in the recent past. ML applications are also being increasingly used in safety-critical systems such as self-driving cars and home robotics. Therefore, there is a compelling need to evaluate the resilience of ML applications built using frameworks such as TensorFlow. In this paper, we build a high-level fault injection framework for TensorFlow called TensorFI for evaluating the resilience of ML applications. TensorFI is flexible, easy to use, and portable. It also allows ML application programmers to explore the effects of different parameters and algorithms on error resilience.
机译:机器学习(ML)应用程序已成为下一代硬件和软件平台的杀手应用程序,并且对软件框架有很多兴趣以构建此类应用程序。 Tensorflow是一个高级数据流框架,用于构建ML应用程序,并成为最近的最受欢迎的应用程序。 ML应用程序也越来越多地用于安全关键系统,如自动驾驶汽车和家用机器人。因此,有一个令人信服的需要评估使用诸如TensorFlow等框架构建的ML应用的恢复性。在本文中,我们为TensorFlow构建了一个称为TensorFI的高级故障注射框架,用于评估ML应用的恢复力。 Tensorfi灵活,易于使用和便携式。它还允许ML应用程序员探索不同参数和算法对错误弹性的影响。

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