Generative Machine Learning for Resource-Aware 5G and IoT Systems

N. Piatkowski, J. Mueller-Roemer, P. Hasse, A. Bachorek, Tim Werner, Pascal Birnstill, A. Morgenstern, L. Stobbe
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引用次数: 1

Abstract

Extrapolations predict that the sheer number of Internet-of-Things (IoT) devices will exceed 40 billion in the next five years. Hand-crafting specialized energy models and monitoring sub-systems for each type of device is error prone, costly, and sometimes infeasible. In order to detect abnormal or faulty behavior as well as inefficient resource usage autonomously, it is of tremendous importance to endow upcoming IoT and 5G devices with sufficient intelligence to deduce an energy model from their own resource usage data. Such models can in-turn be applied to predict upcoming resource consumption and to detect system behavior that deviates from normal states. To this end, we investigate a special class of undirected probabilistic graphical model, the so-called integer Markov random fields (IntMRF). On the one hand, this model learns a full generative probability distribution over all possible states of the system—allowing us to predict system states and to measure the probability of observed states. On the other hand, IntMRFs are themselves designed to consume as less resources as possible—e.g., faithful modelling of systems with an exponentially large number of states, by using only 8-bit unsigned integer arithmetic and less than 16KB memory. We explain how IntMRFs can be applied to model the resource consumption and the system behavior of an IoT device and a 5G core network component, both under various workloads. Our results suggest, that the machine learning model can represent important characteristics of our two test systems and deliver reasonable predictions of the power consumption.
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资源感知5G和物联网系统的生成机器学习
外推预测,物联网(IoT)设备的绝对数量将在未来五年内超过400亿。为每种类型的设备手工制作专门的能源模型和监控子系统是容易出错的,昂贵的,有时是不可行的。为了自主检测异常或故障行为以及资源使用效率低下,赋予即将到来的物联网和5G设备足够的智能,使其能够从自身的资源使用数据中推断出能源模型,这一点非常重要。这样的模型可以反过来应用于预测即将到来的资源消耗,并检测偏离正常状态的系统行为。为此,我们研究了一类特殊的无向概率图模型,即所谓的整数马尔科夫随机场(IntMRF)。一方面,该模型学习了系统所有可能状态的完整生成概率分布-允许我们预测系统状态并测量观察状态的概率。另一方面,intmrf本身被设计成消耗尽可能少的资源。,通过仅使用8位无符号整数算法和小于16KB的内存,忠实地建模具有指数级大量状态的系统。我们解释了如何将intmrf应用于各种工作负载下的物联网设备和5G核心网络组件的资源消耗和系统行为建模。我们的研究结果表明,机器学习模型可以代表我们两个测试系统的重要特征,并提供合理的功耗预测。
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