As data analytics is used by an increasing number of applications, data analytics engines are required to execute workloads with increased concurrency, i.e., an increasing number of clients submitting queries. Data management systems designed for data analytics - a market dominated by column-stores - however, were initially optimized for single query execution, minimizing its response time. Hence, they do not treat concurrency as a first class citizen. In this paper, we experiment with one open-source and two commercial column-stores using the TPC-H and SSB benchmarks in a setup with an increasing number of concurrent clients submitting queries, focusing on whether the tested systems can scale up in a single node instance. The tested system...
Today’s data deluge enables organizations to collect massive data, and analyze it with an ever-incre...
In modern economies, most important business decisions are based on detailed analysis of available d...
This paper develops analytical models to predict the throughput and the response time of a replicate...
Conventional data warehouses employ the query-at-a-time model, which maps each query to a distinct p...
With the rise of multi-core CPU platforms, their optimal utilization for in-memory OLAP workloads u...
BigData revolutionised the IT industry. It first interested the OLTP systems. Distributed Hash Table...
Abstract. The common “one size does not fit all ” paradigm isolates transactional and analytical wor...
PureDataTM System for Analytics also called as Netezza is a data warehouse server handling analytic ...
In an organizational context where data volume is continuously growing, Online Analytical Processing...
Today, an ever-increasing number of researchers, businesses, and data scientists collect and analyze...
Data warehouses are used to store large amounts of data. This data is often used for On-Line Analyti...
In the last two decades, relational databases for analytics have been specialized to address the nee...
Data warehouses are used to store large amounts of data. This data is often used for On-Line Analyt...
Analytical query processing in database systems aims at providing the requested infor-mation within ...
Data analytics frameworks enable users to process large datasets while hiding the complexity of scal...
Today’s data deluge enables organizations to collect massive data, and analyze it with an ever-incre...
In modern economies, most important business decisions are based on detailed analysis of available d...
This paper develops analytical models to predict the throughput and the response time of a replicate...
Conventional data warehouses employ the query-at-a-time model, which maps each query to a distinct p...
With the rise of multi-core CPU platforms, their optimal utilization for in-memory OLAP workloads u...
BigData revolutionised the IT industry. It first interested the OLTP systems. Distributed Hash Table...
Abstract. The common “one size does not fit all ” paradigm isolates transactional and analytical wor...
PureDataTM System for Analytics also called as Netezza is a data warehouse server handling analytic ...
In an organizational context where data volume is continuously growing, Online Analytical Processing...
Today, an ever-increasing number of researchers, businesses, and data scientists collect and analyze...
Data warehouses are used to store large amounts of data. This data is often used for On-Line Analyti...
In the last two decades, relational databases for analytics have been specialized to address the nee...
Data warehouses are used to store large amounts of data. This data is often used for On-Line Analyt...
Analytical query processing in database systems aims at providing the requested infor-mation within ...
Data analytics frameworks enable users to process large datasets while hiding the complexity of scal...
Today’s data deluge enables organizations to collect massive data, and analyze it with an ever-incre...
In modern economies, most important business decisions are based on detailed analysis of available d...
This paper develops analytical models to predict the throughput and the response time of a replicate...