\u3cp\u3eCurrent Approximate Query Processing (AQP) engines are far from silver-bullet solutions, as they adopt several static design decisions that target specific workloads and deployment scenarios. Offline AQP engines target deployments with large storage budget, and offer substantial performance improvement for predictable workloads, but fail when new query types appear, i.e., due to shifting user interests. To the other extreme, online AQP engines assume that query workloads are unpredictable, and therefore build all samples at query time, without reusing samples (or parts of them) across queries. Clearly, both extremes miss out on different opportunities for optimizing performance and cost. In this paper, we present Taster, a self-tun...
The term "online" has become an all-too-common addendum to database system names of the da...
Summarization: Methods for Approximate Query Processing (AQP) are essential for dealing with massive...
In the era of big data, the volume of collected data grows faster than the growth of computational p...
Current Approximate Query Processing (AQP) engines are far from silver-bullet solutions, as they ado...
Current Approximate Query Processing (AQP) engines are far from silver-bullet solutions, as they ado...
Current Approximate Query Processing (AQP) engines are far from silver-bullet solutions, as they ado...
Current Approximate Query Processing (AQP) engines are far from silver-bullet solutions, as they ado...
Current Approximate Query Processing (AQP) engines are far from silver-bullet solutions, as they ado...
Abstract Online analytical processing (OLAP) is a core functionality in database systems. The perfor...
Traditional query processors generate full, accurate query results, either in batch or in pipelined ...
In the era of big data, computing exact answers to analytical queries becomes prohibitively expensiv...
Approximate query processing (AQP) is the best approach for data analysis scenarios where a cost eff...
In decision support applications, the ability to provide fast approximate answers to aggregation que...
The constant flux of data and queries alike has been pushing the boundaries of data analysis systems...
Database systems have long been designed to take one of the two major approaches to process a datase...
The term "online" has become an all-too-common addendum to database system names of the da...
Summarization: Methods for Approximate Query Processing (AQP) are essential for dealing with massive...
In the era of big data, the volume of collected data grows faster than the growth of computational p...
Current Approximate Query Processing (AQP) engines are far from silver-bullet solutions, as they ado...
Current Approximate Query Processing (AQP) engines are far from silver-bullet solutions, as they ado...
Current Approximate Query Processing (AQP) engines are far from silver-bullet solutions, as they ado...
Current Approximate Query Processing (AQP) engines are far from silver-bullet solutions, as they ado...
Current Approximate Query Processing (AQP) engines are far from silver-bullet solutions, as they ado...
Abstract Online analytical processing (OLAP) is a core functionality in database systems. The perfor...
Traditional query processors generate full, accurate query results, either in batch or in pipelined ...
In the era of big data, computing exact answers to analytical queries becomes prohibitively expensiv...
Approximate query processing (AQP) is the best approach for data analysis scenarios where a cost eff...
In decision support applications, the ability to provide fast approximate answers to aggregation que...
The constant flux of data and queries alike has been pushing the boundaries of data analysis systems...
Database systems have long been designed to take one of the two major approaches to process a datase...
The term "online" has become an all-too-common addendum to database system names of the da...
Summarization: Methods for Approximate Query Processing (AQP) are essential for dealing with massive...
In the era of big data, the volume of collected data grows faster than the growth of computational p...