A systematic mapping study of 87 papers derives an architecture-based taxonomy for Workflow as a Service brokers and identifies future research directions.
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4 Pith papers cite this work. Polarity classification is still indexing.
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The OSS Challenge provides benchmarks showing spatiotemporal video models excel at open suturing skill classification and OSATS scoring but struggle with keypoint tracking under occlusion.
TRUST-TAEA is a trustworthiness-guided two-archive evolutionary algorithm using variable-grouping sparse search that outperforms or matches existing methods on large-scale multi-objective benchmarks and a microgrid dispatch problem.
A vision-based system uses deep neural networks for pixel-level risk assessment and risk-map algorithms to identify stable safe landing zones for UAV emergency descents in dynamic urban settings.
citing papers explorer
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Workflow as a Service Broker in Cloud Environment: A Systematic Mapping Study
A systematic mapping study of 87 papers derives an architecture-based taxonomy for Workflow as a Service brokers and identifies future research directions.
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OSS: Open Suturing Skills Vision-Based Assessment Challenge 2024-2025
The OSS Challenge provides benchmarks showing spatiotemporal video models excel at open suturing skill classification and OSATS scoring but struggle with keypoint tracking under occlusion.
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TRUST-TAEA: A trustworthiness-guided two-archive evolutionary algorithm with variable-grouping sparse search for large-scale multi-objective optimization
TRUST-TAEA is a trustworthiness-guided two-archive evolutionary algorithm using variable-grouping sparse search that outperforms or matches existing methods on large-scale multi-objective benchmarks and a microgrid dispatch problem.
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Vision-Based Risk Aware Emergency Landing for UAVs in Complex Urban Environments
A vision-based system uses deep neural networks for pixel-level risk assessment and risk-map algorithms to identify stable safe landing zones for UAV emergency descents in dynamic urban settings.