We present the design and development of a data stream system that captures data uncertainty from data collection to query processing to final result generation. Our system focuses on data that is naturally modeled as continuous random variables such as many types of sensor data. To provide an end-to-end solution, our system employs probabilistic modeling and inference to generate uncertainty description for raw data, and then a suite of statistical techniques to capture changes of uncertainty as data propagates through query operators. To cope with high-volume streams, we explore advanced approximation techniques for both space and time efficiency. We are currently working with a group of scientists to evaluate our system using traces coll...
Join processing in the streaming environment has many practical applications such as data cleaning a...
Pervasive applications, such as natural habitat monitoring and location-based services, have attract...
Similarity join processing in the streaming environment has many practical applications such as sens...
We present the design and development of a data stream system that captures data uncertainty from da...
We present the design and development of a data stream system that captures data uncertainty from da...
We present the design and development of a data stream system that captures data uncertainty from da...
Many real applications consume data that is intrinsically uncertain and error-prone. An uncertain da...
Query processing in the streaming and uncertain environment is crucial in many real applications suc...
In systems that monitor continuously-changing entities like temperature values and locations of movi...
Sensors are often employed to monitor continuously changing entities like locations of moving object...
LNCS v. 5786 is Proceedings of the 1st International Workshop, QuaCon 2009Invited PaperThe managemen...
Uncertain data has arisen in a growing number of applications such as sensor networks, RFID systems,...
The datasets in this release support the results presented in the paper P. Jamshidi, G. Casale, "A...
Data readings collected from sensors are often imprecise. The uncertainty in the data can arise from...
In this paper, we introduce a relatively simple data-driven method for the representation of the unc...
Join processing in the streaming environment has many practical applications such as data cleaning a...
Pervasive applications, such as natural habitat monitoring and location-based services, have attract...
Similarity join processing in the streaming environment has many practical applications such as sens...
We present the design and development of a data stream system that captures data uncertainty from da...
We present the design and development of a data stream system that captures data uncertainty from da...
We present the design and development of a data stream system that captures data uncertainty from da...
Many real applications consume data that is intrinsically uncertain and error-prone. An uncertain da...
Query processing in the streaming and uncertain environment is crucial in many real applications suc...
In systems that monitor continuously-changing entities like temperature values and locations of movi...
Sensors are often employed to monitor continuously changing entities like locations of moving object...
LNCS v. 5786 is Proceedings of the 1st International Workshop, QuaCon 2009Invited PaperThe managemen...
Uncertain data has arisen in a growing number of applications such as sensor networks, RFID systems,...
The datasets in this release support the results presented in the paper P. Jamshidi, G. Casale, "A...
Data readings collected from sensors are often imprecise. The uncertainty in the data can arise from...
In this paper, we introduce a relatively simple data-driven method for the representation of the unc...
Join processing in the streaming environment has many practical applications such as data cleaning a...
Pervasive applications, such as natural habitat monitoring and location-based services, have attract...
Similarity join processing in the streaming environment has many practical applications such as sens...