Performance Evaluation and Benchmarking -
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Présentation Performance Evaluation And Benchmarking Format Broché
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Résumé : This book constitutes the refereed proceedings of the 16th TPC Technology Conference on Performance Evaluation and Benchmarking, TPCTC 2024, held in Guangzhou, China, during August 30, 2024. The 7 full papers included in this book were carefully reviewed and selected from 12 submissions. The proceedings also include one invited talk and one paper based on a panel discussion with industry and academic leaders. The book focusses on providing vendors with a valuable tool to showcase the performance competitiveness of their current offerings while also aiding in the enhancement and tracking of products still in development.
Sommaire: .- PDSP-Bench: A Benchmarking System for Parallel and Distributed Stream Processing. .- A Survey of Stream Processing System Benchmarks. .- CrypQ: A Database Benchmark Based on Dynamic, Ever-Evolving Ethereum Data. .- Panel: Benchmarking Timeseries Databases: Current State and Future Perspectives. .- StarBench: A Fresh Approach On Star Schema Benchmarking. .- Web3Bench: A Web3 Based HTAP Benchmark. .- Invited Talk: Performance Evaluation of TimechoDB using TPCx-IoT. .- Benchmarking Machine Learning Pipelines in PostgreSQL with TPCx-AI. .- Evaluation Considerations of Synthetic Natural Language Datasets for Question Answering Applications.