AbstractReal-time data stream processing technologies play an important role in enabling time-critical decision making in many applications. This paper aims at evaluating the performance of platforms that are capable of processing streaming data. Candidate technologies include Storm, Samza, and Spark Streaming. To form the recommendation, a prototype pipeline is designed and implemented in each of the platforms using data collected from sensors used in monitoring heavy-haul railway systems. Through the testing and evaluation of each candidate platform, using both quantitative and qualitative metrics, the paper describes the findings, where Storm is found to be the most appropriate candidate
The amount of data in our world has been rapidly keep growing from time to time. In the era of big ...
Batch processing technologies (Such as MapReduce, Hive, Pig) have matured and been widely used in th...
Parallel and distributed computing is becoming essential to process in real time the increasingly ma...
AbstractReal-time data stream processing technologies play an important role in enabling time-critic...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
The ‘Big Data’ of yesterday is the ‘data’ of today. As technology progresses, new challenges arise a...
Systems enabling the continuous processing of large data streams have recently attracted the attenti...
The amount of data in our world has been rapidly keep growing from time to time. In the era of big ...
In recent years, big data systems have become an active area of research and development. Stream pro...
Yesterday’s “Big Data” is today’s “data.” As technology advances, new difficulties and new solutions...
Nowadays, streaming data overflows from various sources and technologies such as Internet of Things ...
Applications characterized by the continuous processing of large data streams have recently attracte...
Yesterday’s “Big Data” is today’s “data.” As technology advances, new difficulties and new solutions...
Real time data, which we call data streams, are readings from instruments, environmental, bodily or ...
In recent years, Big Data has become a prominent paradigm in the field of distributed systems. These...
The amount of data in our world has been rapidly keep growing from time to time. In the era of big ...
Batch processing technologies (Such as MapReduce, Hive, Pig) have matured and been widely used in th...
Parallel and distributed computing is becoming essential to process in real time the increasingly ma...
AbstractReal-time data stream processing technologies play an important role in enabling time-critic...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
The ‘Big Data’ of yesterday is the ‘data’ of today. As technology progresses, new challenges arise a...
Systems enabling the continuous processing of large data streams have recently attracted the attenti...
The amount of data in our world has been rapidly keep growing from time to time. In the era of big ...
In recent years, big data systems have become an active area of research and development. Stream pro...
Yesterday’s “Big Data” is today’s “data.” As technology advances, new difficulties and new solutions...
Nowadays, streaming data overflows from various sources and technologies such as Internet of Things ...
Applications characterized by the continuous processing of large data streams have recently attracte...
Yesterday’s “Big Data” is today’s “data.” As technology advances, new difficulties and new solutions...
Real time data, which we call data streams, are readings from instruments, environmental, bodily or ...
In recent years, Big Data has become a prominent paradigm in the field of distributed systems. These...
The amount of data in our world has been rapidly keep growing from time to time. In the era of big ...
Batch processing technologies (Such as MapReduce, Hive, Pig) have matured and been widely used in th...
Parallel and distributed computing is becoming essential to process in real time the increasingly ma...