AMR-aware in situ indexing and scalable querying
نویسندگان
چکیده
Spring Simulation Multi-Conference 2016 April 3-6, Pasadena, CA, USA c ©2016 Society for Modeling & Simulation International (SCS) ABSTRACT Query-driven analytics on scientific datasets is one of fundamental approaches for scientific discoveries. Existing studies have explored query-driven analytics on uniform resolution meshes. However, querying on adaptive mesh refinement (AMR) data has not been explored yet. As many simulations have been lately transitioning to AMR, new methods for efficient query-driven analysis on AMR data are needed.
منابع مشابه
Towards a Microblogs Data Management System (Invited Industrial Paper)
This paper advocates for the need to build a Microblogs Data Management System (MDMS) as an end-toend data management system to support indexing, querying, and analyzing microblogs, e.g., tweets, comments, or check-in’s. We identify a set of characteristics for microblogging environments that are distinguishing from any other data management environment. Then, we propose a system architecture f...
متن کاملScalable Run-time Data Indexing and Querying for Scientific Simulations
Scientific simulations running at scale on highend computing systems are generating tremendous amounts of raw data, which has to be carefully analyzed before scientists can derive insights from simulations and better understand the phenomena being modeled. Query-driven data analysis is an important technique used by scientists to gain insights from data, especially to capture intermittent trans...
متن کاملSummarized Trace Indexing and Querying for Scalable Back-in-Time Debugging
Back-in-time debuggers offer an interactive exploration interface to execution traces. However, maintaining a good level of interactivity with large execution traces is challenging. Current approaches either maintain execution traces in memory, which limits scalability, or perform exhaustive on-disk indexing, which is not efficient enough. We present a novel scalable disk-based approach that su...
متن کاملScalable ordered indexing of streaming data
In order to efficiently answer continuous queries requiring range search in large stream windows, data stream management systems (DSMSs) need ordered indexes. Conventional DBMS indexing methods are not specifically designed for data streaming applications with extremely high insert and delete rates for windows over streams. This motivates a scalability investigation for various ordered main mem...
متن کاملBitMat – Scalable Indexing and Querying of Large RDF Graphs
The growing size of Semantic Web data expressed in the form of Resource Description Framework (RDF) has made it necessary to develop effective ways of storing this data to save space and to query it in a scalable manner. SPARQL – the query language for RDF data – closely follows SQL syntax. As a natural consequence most of the RDF storage and querying engines are based on modern database storag...
متن کامل