As data permeates all disciplines, the role of big data becomes increasingly important. Sensors, IoT devices, social networks, and online transactions are all generating data that can be monitored constantly to enable a business to identify opportunity to enhance customer service and increase revenue. This need for real-time processing of big data has led to the development of frameworks for distributed stream processing in clusters. It is important for such frameworks to be resilient against variable operating conditions such as server load variation, changes in data ingestion rates, and workload characteristics. In this thesis, we explore the effects of the batch size on the performance of streaming workloads by developing an adaptive bat...
Scalability in stream processing systems can be achieved by using a cluster of computing devices. Th...
Stream workflow is a network of big data streaming applications that acts as key enabler for real-ti...
In today's world, stream processing systems have become important, as applications like media broadc...
As data permeates all disciplines, the role of big data becomes increasingly important. Sensors, IoT...
Advances in real-world applications require high-throughput processing over large data streams. Micr...
Traditional databases and batch processing systems are not able to handle the loads experienced by m...
International audienceApplying real-time, cost-effective Complex Event processing (CEP) in the cloud...
More and more use cases require fast, accurate, and reliable processing of large volumes of data. To...
Batched stream processing is a new distributed data process-ing paradigm that models recurring batch...
With the upswing in the volume of data, information online, and magnanimous cloud applications, big ...
With the upswing in the volume of data, information online, and magnanimous cloud applications, big ...
Usually heuristic-based load balancing algorithms cannot provide satisfactory performance with burst...
In big data world, Hadoop and other batch-processing tools are widely used to analyze data and get r...
Distributed Stream Processing systems have become an essential part of big data processing platforms...
The increasing adoption of Internet of Thing (IoT) technology in many application domains generates ...
Scalability in stream processing systems can be achieved by using a cluster of computing devices. Th...
Stream workflow is a network of big data streaming applications that acts as key enabler for real-ti...
In today's world, stream processing systems have become important, as applications like media broadc...
As data permeates all disciplines, the role of big data becomes increasingly important. Sensors, IoT...
Advances in real-world applications require high-throughput processing over large data streams. Micr...
Traditional databases and batch processing systems are not able to handle the loads experienced by m...
International audienceApplying real-time, cost-effective Complex Event processing (CEP) in the cloud...
More and more use cases require fast, accurate, and reliable processing of large volumes of data. To...
Batched stream processing is a new distributed data process-ing paradigm that models recurring batch...
With the upswing in the volume of data, information online, and magnanimous cloud applications, big ...
With the upswing in the volume of data, information online, and magnanimous cloud applications, big ...
Usually heuristic-based load balancing algorithms cannot provide satisfactory performance with burst...
In big data world, Hadoop and other batch-processing tools are widely used to analyze data and get r...
Distributed Stream Processing systems have become an essential part of big data processing platforms...
The increasing adoption of Internet of Thing (IoT) technology in many application domains generates ...
Scalability in stream processing systems can be achieved by using a cluster of computing devices. Th...
Stream workflow is a network of big data streaming applications that acts as key enabler for real-ti...
In today's world, stream processing systems have become important, as applications like media broadc...