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Self-Adaptation Resource Allocation for Continuous Offloading Tasks in Pervasive Computing.

Aiman EhsanKhurram Zeeshan HaiderShahla FaisalFaisal Maqbool ZahidIsaac Mwangi Wangari
Published in: Computational and mathematical methods in medicine (2022)
Advancement in technology has led to an increase in data. Consequently, techniques such as deep learning and artificial intelligence which are used in deciphering data are increasingly becoming popular. Further, advancement in technology does increase user expectations on devices, including consumer interfaces such as mobile apps, virtual environments, or popular software systems. As a result, power from the battery is consumed fast as it is used in providing high definition display as well as in charging the sensors of the devices. Low latency requires more power consumption in certain conditions. Cloud computing improves the computational difficulties of smart devices with offloading. By optimizing the device's parameters to make it easier to find optimal decisions for offloading tasks, using a metaheuristic algorithm to transfer the data or offload the task, cloud computing makes it easier. In cloud servers, we offload the tasks and limit their resources by simulating them in a virtual environment. Then we check resource parameters and compare them using metaheuristic algorithms. When comparing the default algorithm FCFS to ACO or PSO, we find that PSO has less battery or makespan time compared to FCFS or ACO. The energy consumption of devices is reduced if their resources are offloaded, so we compare the results of metaheuristic algorithms to find less battery usage or makespan time, resulting in the PSO increasing battery life or making the system more efficient.
Keyphrases
  • deep learning
  • artificial intelligence
  • machine learning
  • big data
  • electronic health record
  • working memory
  • convolutional neural network
  • data analysis
  • solid state
  • healthcare
  • social media