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Related Concept Videos

Distributed Loads01:19

Distributed Loads

950
Distributed loads are a common type of load that engineers and scientists encounter in various practical situations. Distributed loads often refer to a type of load spread over a surface or a structure and can be modeled as continuous force per unit area.
For example, consider a bookshelf filled with books stacked vertically adjacent to each other. The weight of the books is evenly distributed over the length of the shelf. As a result, the pressure at different locations on the surface of the...
950
Distributed Loads: Problem Solving01:21

Distributed Loads: Problem Solving

1.1K
Beams are structural elements commonly employed in engineering applications requiring different load-carrying capacities. The first step in analyzing a beam under a distributed load is to simplify the problem by dividing the load into smaller regions, which allows one to consider each region separately and calculate the magnitude of the equivalent resultant load acting on each portion of the beam. The magnitude of the equivalent resultant load for each region can be determined by calculating...
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Related Experiment Video

Updated: Jun 28, 2026

Estimate the Cognitive Load Using Electrocardiographic Measure: A Human-AI Collaborative Task
07:08

Estimate the Cognitive Load Using Electrocardiographic Measure: A Human-AI Collaborative Task

Published on: December 5, 2025

Smart load balancing in cloud computing: Integrating feature selection with advanced deep learning models.

Yousef Sanjalawe1, Salam Fraihat2, Salam Al-E'mari3

  • 1Information Technology Department, King Abdullah II School for Information Technology, The University of Jordan (JU), Amman, Jordan.

Plos One
|September 9, 2025
PubMed
Summary
This summary is machine-generated.

A new smart load balancing strategy, SLADRO, improves cloud resource management. It uses deep learning and optimization for better workload distribution, outperforming traditional methods in efficiency and utilization.

Related Experiment Videos

Last Updated: Jun 28, 2026

Estimate the Cognitive Load Using Electrocardiographic Measure: A Human-AI Collaborative Task
07:08

Estimate the Cognitive Load Using Electrocardiographic Measure: A Human-AI Collaborative Task

Published on: December 5, 2025

Area of Science:

  • Cloud Computing
  • Artificial Intelligence
  • Resource Management

Background:

  • Cloud computing's growth presents resource management challenges.
  • Traditional load balancing is insufficient for dynamic cloud environments.
  • Suboptimal utilization and high costs result from inadequate load balancing.

Purpose of the Study:

  • To introduce a novel smart load-balancing strategy for cloud environments.
  • To address the limitations of conventional methods in handling dynamic workloads.
  • To enhance resource utilization and reduce operational costs in cloud infrastructures.

Main Methods:

  • Proposed the Smart Load Adaptive Distribution with Reinforcement and Optimization (SLADRO) approach.
  • Integrated Convolutional Neural Networks (CNN) and Long Short-Term Memory (LSTM) for load prediction.
  • Utilized Orthogonal Arrays and Particle Swarm Optimization (OOA-PSO) for feature selection and Deep Reinforcement Learning (DRL) for task scheduling.

Main Results:

  • SLADRO significantly outperforms traditional load-balancing techniques.
  • Demonstrated notable improvements in throughput and makespan.
  • Achieved enhanced resource utilization and energy efficiency.

Conclusions:

  • SLADRO offers a scalable and adaptive solution for cloud load balancing.
  • The hybrid methodology effectively optimizes resource allocation.
  • Advanced techniques provide a comprehensive framework for efficient cloud resource management.