Approximate Query Processing for Big Data in Heterogeneous Databases
Manoj Muniswamaiah, Tilak Agerwala, Charles C. Tappert
Abstract
Big Data analytics is used in decision making. It involves heavy computation to obtain exact answers. To alleviate this problem, approximate query processing (AQP) was adopted, which provides approximate results with error bounds. The AQP models which have been proposed are supported only by a single database. In an organization, big data is stored in multiple databases that have different data models. This research aims to provide AQP as a middleware solution using query optimization for heterogeneous databases.
Topics & Concepts
Computer scienceDatabaseQuery optimizationBig dataInformation retrievalData miningData Management and AlgorithmsAdvanced Database Systems and QueriesAlgorithms and Data Compression