Matches in SemOpenAlex for { <https://semopenalex.org/work/W3135479435> ?p ?o ?g. }
- W3135479435 endingPage "554" @default.
- W3135479435 startingPage "554" @default.
- W3135479435 abstract "Data are presently being produced at an increased speed in different formats, which complicates the design, processing, and evaluation of the data. The MapReduce algorithm is a distributed file system that is used for big data parallel processing. Current implementations of MapReduce assist in data locality along with robustness. In this study, a linear weighted regression and energy-aware greedy scheduling (LWR-EGS) method were combined to handle big data. The LWR-EGS method initially selects tasks for an assignment and then selects the best available machine to identify an optimal solution. With this objective, first, the problem was modeled as an integer linear weighted regression program to choose tasks for the assignment. Then, the best available machines were selected to find the optimal solution. In this manner, the optimization of resources is said to have taken place. Then, an energy efficiency-aware greedy scheduling algorithm was presented to select a position for each task to minimize the total energy consumption of the MapReduce job for big data applications in heterogeneous environments without a significant performance loss. To evaluate the performance, the LWR-EGS method was compared with two related approaches via MapReduce. The experimental results showed that the LWR-EGS method effectively reduced the total energy consumption without producing large scheduling overheads. Moreover, the method also reduced the execution time when compared to state-of-the-art methods. The LWR-EGS method reduced the energy consumption, average processing time, and scheduling overhead by 16%, 20%, and 22%, respectively, compared to existing methods." @default.
- W3135479435 created "2021-03-15" @default.
- W3135479435 creator A5025377607 @default.
- W3135479435 creator A5032614464 @default.
- W3135479435 creator A5039341855 @default.
- W3135479435 creator A5050142015 @default.
- W3135479435 date "2021-02-26" @default.
- W3135479435 modified "2023-10-17" @default.
- W3135479435 title "Linear Weighted Regression and Energy-Aware Greedy Scheduling for Heterogeneous Big Data" @default.
- W3135479435 cites W2002603093 @default.
- W3135479435 cites W2076406848 @default.
- W3135479435 cites W2342594507 @default.
- W3135479435 cites W2487200295 @default.
- W3135479435 cites W2497069692 @default.
- W3135479435 cites W2566332247 @default.
- W3135479435 cites W2590290657 @default.
- W3135479435 cites W2645699068 @default.
- W3135479435 cites W2745031601 @default.
- W3135479435 cites W2745459583 @default.
- W3135479435 cites W2745600517 @default.
- W3135479435 cites W2748366205 @default.
- W3135479435 cites W2752849956 @default.
- W3135479435 cites W2765714237 @default.
- W3135479435 cites W2794245191 @default.
- W3135479435 cites W2803397358 @default.
- W3135479435 cites W2803398131 @default.
- W3135479435 cites W2804394481 @default.
- W3135479435 cites W2883054131 @default.
- W3135479435 cites W2886384632 @default.
- W3135479435 cites W2898002554 @default.
- W3135479435 cites W2898727344 @default.
- W3135479435 cites W2900651516 @default.
- W3135479435 cites W2916360189 @default.
- W3135479435 cites W2920834220 @default.
- W3135479435 cites W2991347854 @default.
- W3135479435 cites W3019994956 @default.
- W3135479435 doi "https://doi.org/10.3390/electronics10050554" @default.
- W3135479435 hasPublicationYear "2021" @default.
- W3135479435 type Work @default.
- W3135479435 sameAs 3135479435 @default.
- W3135479435 citedByCount "4" @default.
- W3135479435 countsByYear W31354794352022 @default.
- W3135479435 countsByYear W31354794352023 @default.
- W3135479435 crossrefType "journal-article" @default.
- W3135479435 hasAuthorship W3135479435A5025377607 @default.
- W3135479435 hasAuthorship W3135479435A5032614464 @default.
- W3135479435 hasAuthorship W3135479435A5039341855 @default.
- W3135479435 hasAuthorship W3135479435A5050142015 @default.
- W3135479435 hasBestOaLocation W31354794351 @default.
- W3135479435 hasConcept C104317684 @default.
- W3135479435 hasConcept C11413529 @default.
- W3135479435 hasConcept C119599485 @default.
- W3135479435 hasConcept C120314980 @default.
- W3135479435 hasConcept C124101348 @default.
- W3135479435 hasConcept C126255220 @default.
- W3135479435 hasConcept C127413603 @default.
- W3135479435 hasConcept C173608175 @default.
- W3135479435 hasConcept C185592680 @default.
- W3135479435 hasConcept C206729178 @default.
- W3135479435 hasConcept C2742236 @default.
- W3135479435 hasConcept C2780165032 @default.
- W3135479435 hasConcept C33923547 @default.
- W3135479435 hasConcept C41008148 @default.
- W3135479435 hasConcept C41045048 @default.
- W3135479435 hasConcept C51823790 @default.
- W3135479435 hasConcept C55493867 @default.
- W3135479435 hasConcept C63479239 @default.
- W3135479435 hasConcept C75684735 @default.
- W3135479435 hasConceptScore W3135479435C104317684 @default.
- W3135479435 hasConceptScore W3135479435C11413529 @default.
- W3135479435 hasConceptScore W3135479435C119599485 @default.
- W3135479435 hasConceptScore W3135479435C120314980 @default.
- W3135479435 hasConceptScore W3135479435C124101348 @default.
- W3135479435 hasConceptScore W3135479435C126255220 @default.
- W3135479435 hasConceptScore W3135479435C127413603 @default.
- W3135479435 hasConceptScore W3135479435C173608175 @default.
- W3135479435 hasConceptScore W3135479435C185592680 @default.
- W3135479435 hasConceptScore W3135479435C206729178 @default.
- W3135479435 hasConceptScore W3135479435C2742236 @default.
- W3135479435 hasConceptScore W3135479435C2780165032 @default.
- W3135479435 hasConceptScore W3135479435C33923547 @default.
- W3135479435 hasConceptScore W3135479435C41008148 @default.
- W3135479435 hasConceptScore W3135479435C41045048 @default.
- W3135479435 hasConceptScore W3135479435C51823790 @default.
- W3135479435 hasConceptScore W3135479435C55493867 @default.
- W3135479435 hasConceptScore W3135479435C63479239 @default.
- W3135479435 hasConceptScore W3135479435C75684735 @default.
- W3135479435 hasIssue "5" @default.
- W3135479435 hasLocation W31354794351 @default.
- W3135479435 hasLocation W31354794352 @default.
- W3135479435 hasOpenAccess W3135479435 @default.
- W3135479435 hasPrimaryLocation W31354794351 @default.
- W3135479435 hasRelatedWork W1882733036 @default.
- W3135479435 hasRelatedWork W1992741870 @default.
- W3135479435 hasRelatedWork W2109998134 @default.
- W3135479435 hasRelatedWork W2160425906 @default.
- W3135479435 hasRelatedWork W2500524618 @default.
- W3135479435 hasRelatedWork W2546696010 @default.