Demand-based Data Stream Gathering, Processing, and Transmission: Efficient Solutions for Real-Time Data Analytics in the Internet of Things - Jonas Traub - Livros - Books on Demand - 9783752671254 - 9 de abril de 2021
Caso a capa e o título não sejam correspondentes, considere o título como correto

Demand-based Data Stream Gathering, Processing, and Transmission: Efficient Solutions for Real-Time Data Analytics in the Internet of Things

Jonas Traub

Preço
CA$ 31,79

Item sob encomenda (no estoque do fornecedor)

Data prevista de entrega 8 - 18 de ago
Adicione à sua lista de desejos do iMusic

Demand-based Data Stream Gathering, Processing, and Transmission: Efficient Solutions for Real-Time Data Analytics in the Internet of Things

This book presents an end-to-end architecture for demand-based data stream gathering, processing, and transmission. The Internet of Things (IoT) consists of billions of devices which form a cloud of network connected sensor nodes. These sensor nodes supply a vast number of data streams with massive amounts of sensor data. Real-time sensor data enables diverse applications including traffic-aware navigation, machine monitoring, and home automation. Current stream processing pipelines are demand-oblivious, which means that they gather, transmit, and process as much data as possible. In contrast, a demand-based processing pipeline uses requirement specifications of data consumers, such as failure tolerances and latency limitations, to save resources. Our solution unifies the way applications express their data demands, i.e., their requirements with respect to their input streams. This unification allows for multiplexing the data demands of all concurrently running applications. On sensor nodes, we schedule sensor reads based on the data demands of all applications, which saves up to 87% in sensor reads and data transfers in our experiments with real-world sensor data. Our demand-based control layer optimizes the data acquisition from thousands of sensors. We introduce time coherence as a fundamental data characteristic. Time coherence is the delay between the first and the last sensor read that contribute values to a tuple. A large scale parameter exploration shows that our solution scales to large numbers of sensors and operates reliably under varying latency and coherence constraints. On stream analysis systems, we tackle the problem of efficient window aggregation. We contribute a general aggregation technique, which adapts to four key workload characteristics: Stream (dis)order, aggregation types, window types, and window measures. Our experiments show that our solution outperforms alternative solutions by an order of magnitude in throughput, which prevents expensi


208 pages

Mídia Livros     Paperback Book   (Livro de capa flexível e brochura)
Lançado 9 de abril de 2021
ISBN13 9783752671254
Editoras Books on Demand
Páginas 208
Dimensões 189 × 246 × 11 mm   ·   381 g
Idioma English  

Ver tudo de Jonas Traub ( por exemplo Paperback Book )