Amanote Research

Amanote Research

    RegisterSign In

A Temporal and Spatial Locality Theory for Characterizing Very Large Data Bases

doi 10.1109/hicss.1989.48040
Full Text
Open PDF
Abstract

Available in full text

Date

Unknown

Authors
A. MoultonS.E. Madnick
Publisher

IEEE Comput. Soc. Press


Related search

Data-Driven Spatial Locality

2018English

Visualizing Large Data Sets: Spatial and Temporal Soil Moisture Regime Dynamics

Vadose Zone Journal
Soil Science
2015English

The Performance of NoCs for Very Large Manycore Systems Under Locality-Based Traffic

International Journal of Computing and Digital Systems
Computer GraphicsHuman-Computer InteractionComputer NetworksCommunicationsInformation SystemsComputer-Aided DesignInnovationManagement of TechnologyArtificial Intelligence
2016English

Characterizing the Spatial Variations and Correlations of Large Rainstorms for Landslide Study

Hydrology and Earth System Sciences
EarthWater SciencePlanetary SciencesTechnology
2017English

Ranking Large Temporal Data

Proceedings of the VLDB Endowment
Computer Science
2012English

VIEW - A Distributed System for Graphical Analysis of Large Data Bases

1973English

Learning of OWL Class Descriptions on Very Large Knowledge Bases

Semantic Web and Information Systems
Computer NetworksInformation SystemsCommunications
2009English

Vertical Data Mining on Very Large Data Sets

English

Improved Searching for Spatial Features in Spatio-Temporal Data

2004English

Amanote Research

Note-taking for researchers

Follow Amanote

© 2025 Amaplex Software S.P.R.L. All rights reserved.

Privacy PolicyRefund Policy