Large organizations have seamlessly incorporated data-driven decision making in their operations. However, as data volumes increase, expensive big data infrastructures are called to rescue. In this setting, analytics tasks become very costly in terms of query response time, resource consumption, and money in cloud deployments, especially when base data are stored across geographically distributed data centers. Therefore, we introduce an adaptive Machine Learning mechanism which is light-weight, stored client-side, can estimate the answers of a variety of aggregate queries and can avoid the big data backend. The estimations are performed in milliseconds are inexpensive and accurate as the mechanism learns from past analytical-query patterns....
Data-driven discovery has become critical to the mission of many enterprises and scientific research...
As the era of big data continues to evolve, the need for efficient and effective query processing in...
Real-time monitoring of cloud resources is crucial for a variety of tasks such as performance analys...
Large organizations have seamlessly incorporated data-driven decision making in their operations. Ho...
Large organizations have seamlessly incorporated data-driven decision making in their operations. Ho...
Large organizations have seamlessly incorporated data-driven decision making in their operations. Ho...
We study a novel solution to executing aggregation (and specifically COUNT) queries over large-scale...
We introduce a predictive modeling solution that provides high quality predictive analytics over agg...
We introduce a predictive modeling solution that provides high quality predictive analytics over agg...
We study a novel solution to executing aggregation (and specifically COUNT) queries over large-scal...
In the era of big data, the efficient processing of complex and resource-intensive queries has becom...
This paper introduces LMFAO (Layered Multiple Functional Aggregate Optimization), an in-memory optim...
Large analytics tasks are currently executed over Big Data Analytics Stacks (BDASs) which comprise a...
In recent years, cloud computing has become an alternative to on-premise solutions for enterprises t...
<p>Modern industrial, government, and academic organizations are collecting massive amounts of data ...
Data-driven discovery has become critical to the mission of many enterprises and scientific research...
As the era of big data continues to evolve, the need for efficient and effective query processing in...
Real-time monitoring of cloud resources is crucial for a variety of tasks such as performance analys...
Large organizations have seamlessly incorporated data-driven decision making in their operations. Ho...
Large organizations have seamlessly incorporated data-driven decision making in their operations. Ho...
Large organizations have seamlessly incorporated data-driven decision making in their operations. Ho...
We study a novel solution to executing aggregation (and specifically COUNT) queries over large-scale...
We introduce a predictive modeling solution that provides high quality predictive analytics over agg...
We introduce a predictive modeling solution that provides high quality predictive analytics over agg...
We study a novel solution to executing aggregation (and specifically COUNT) queries over large-scal...
In the era of big data, the efficient processing of complex and resource-intensive queries has becom...
This paper introduces LMFAO (Layered Multiple Functional Aggregate Optimization), an in-memory optim...
Large analytics tasks are currently executed over Big Data Analytics Stacks (BDASs) which comprise a...
In recent years, cloud computing has become an alternative to on-premise solutions for enterprises t...
<p>Modern industrial, government, and academic organizations are collecting massive amounts of data ...
Data-driven discovery has become critical to the mission of many enterprises and scientific research...
As the era of big data continues to evolve, the need for efficient and effective query processing in...
Real-time monitoring of cloud resources is crucial for a variety of tasks such as performance analys...