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An IoT-Cloud Based Solution for Real-Time and Batch Processing of Big Data: Application in Healthcare

机译:大数据实时批量处理的基于物联网云的解决方案:在医疗保健中的应用

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With the large use of Internet of Things (IoT) today, everything around us seems to generate data. The ever increasing number of connected things or objects (IoT) is coupled with a growing volume of data generated at a continually increasing rate. Especially where data is big or there is a need to process it, cloud infrastructures, with their scalability and easy access, are becoming the solution of choice for storage and processing. In the context of healthcare applications, where medical sensors collect health data from patients and send it to the cloud, two issues frequently appear in relation to “Big Data”. The first issue is related to real-time analysis introduced by the increasing velocity at which data is generated especially from connected devices (IoT). This data should be analyzed continuously in real-time in order to take appropriate actions regarding the patient's care plan. Moreover, medical data accumulated from different patients over time constitutes an important training dataset that can be used to train machine learning models in order to perform smarter disease prediction and treatment. This gives rise to another issue regarding long-term batch processing of often huge volumes of stored data. To deal with these issues, we propose an IoT-Cloud based framework for real-time and batch processing of Big Data in the healthcare domain. We implement the proposed solution on Amazon Cloud operator known as Amazon Web Services (AWS) and use a Raspberry pi as an IoT device to generate data in real time. We test the solution with the specific application of ECG monitoring and abnormality reporting. We analyze the performance of the implemented system in terms of response time by varying the velocity and volume of the analyzed data. We also discuss how the cloud resources should be provisioned in order to guarantee processing performance for both long-term and real-time scenarios. To ensure a good tradeoff between cost and processing performance, resources provision should be adapted to the exact needs and characteristics of the considered application.
机译:随着当今物联网(IoT)的大量使用,我们周围的一切似乎都在生成数据。不断增加的互联事物或对象(IoT)以及不断增长的速率生成的数据量越来越大。尤其是在数据量大或需要处理数据的地方,具有可伸缩性和易于访问性的云基础架构正成为存储和处理的首选解决方案。在医疗保健应用中,医疗传感器从患者那里收集健康数据并将其发送到云中,与“大数据”相关的两个问题经常出现。第一个问题与实时分析有关,尤其是从连接的设备(IoT)生成数据的速度越来越快。为了对患者的护理计划采取适当的措施,应该对这些数据进行实时的连续分析。此外,随着时间的推移从不同患者身上积累的医学数据构成了重要的训练数据集,可用于训练机器学习模型以执行更智能的疾病预测和治疗。这引起了关于经常批量处理经常存储的大量数据的另一个问题。为了解决这些问题,我们提出了一种基于IoT-Cloud的框架,用于在医疗保健领域对大数据进行实时和批处理。我们在称为Amazon Web Services(AWS)的Amazon Cloud运营商上实施建议的解决方案,并使用Raspberry pi作为IoT设备实时生成数据。我们使用ECG监测和异常报告的特定应用测试该解决方案。我们通过改变分析数据的速度和数量,根据响应时间来分析实施系统的性能。我们还将讨论应如何配置云资源,以保证长期和实时方案的处理性能。为了确保在成本和处理性能之间取得良好的折衷,应根据所考虑的应用程序的确切需求和特征来调整资源供应。

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