Edge Computing Project Ideas List Part- 2We have already discussed edge computing and its various features in the previous tutorial. Let's extend the ideas discussed in the Edge Computing project list idea part 1. Scheduling for Deep Reinforcement Learning-Based Offloading in Vehicle Edge ComputingDescription of the project: A new computing paradigm called vehicular cloud services (VEC) has the potential to greatly improve the capabilities of vehicle terminals (VTs) to handle resource-demanding in-car applications with minimal latency and maximum energy efficiency. Due to the variety of task characteristics, the dynamic nature of the wireless environment, and the frequent handover events brought on by vehicle movements, and an ideal scheduling strategy should consider both the location (local computation or unloading) and the timing (order and time of execution) of each task. In this article, we look into a crucial compute offloading scheduling challenge in a typical VEC situation, where a VT moving down an expressway wants to plan its tasks that are waiting in line to reduce the long-term cost by balancing task delay and energy usage. Implementation of this project:
Utilizing mobile-edge cloud computing for intelligent job prediction and processor offloadingDescription of the project: The forefront and focus of mobile-edge distributed technology research right now is edge computing. Edge computing fixes traditional cloud computing's high connection latency issue and offers mobile devices high-reliability, high-bandwidth computing services. However, the offloading technique of straightforward edge devices is no longer relevant to MEC architecture due to mobile consumers' growing needs and services. Implementation of this project:
Deep reinforcement learning-based task offloading research in a mobile edge environmentDescription of the project: Users' demand for fast networks is rising due to the quick development of Internet technologies and mobile terminals. To lessen network latency and boost user service quality, mobile edge computing suggests a distributed caching technique to deal with the effects of high data traffic on communication networks. A deep learning approach is suggested in this research to address the task offloading issue faced by multi-service nodes. Implementation of this project: Experiments are performed using Google Cluster Trace data collection and the simulation software iFogSim. The final results demonstrate that the task offloading approach based on the DDQN algorithm positively impacts energy consumption and cost, validating the potential for applying the deep learning algorithm in edge devices. Multilevel vehicular edge-cloud computing networks with advanced deep learning-based computational offloadingDescription of the project: Recently, the focus has shifted from vehicle cloud computing (VCC) to vehicular edge computing due to the promise of low latency communication and effective bandwidth use (VEC). An improved computational offload algorithm for multilayer automotive edge-cloud computing networks is presented in this paper. Implementation of this project:
In Wireless Metro Area Networks, Optimal Cloudlet Location and User to Cloudlet AllocationDescription of the project: While portable mobile devices have a limited computational capacity, mobile apps are getting more and more computation-intensive. Offloading an application's work to neighboring cloudlets, which are made up of groups of computers, is an effective approach to speed up the time it takes for an application to finish running on a mobile device. The placement of cloudlets in a given network to enhance the performance of mobile applications has received very little attention. However, a sizable body of research on mobile cloudlet offloading technology exists. Implementation of this project:
Joint Management and Cloud Unloading for Mobile Applications at the Optimal LevelDescription of the project: Supporting computationally taxing apps on resource-constrained mobile devices requires cloud offloading. In this article, we offer the idea of the wireless aware joint schedule and compute loading (JSCO) for inter systems, in which the best choice is made about which components should be offloaded and their scheduling order. The JSCO technique moves away from a compiler-predetermined scheduled order for the components in favor of a more wireless-aware scheduling order, giving the solution additional degrees of freedom. Implementation of this project:
Mobile Cloud Computing: Distributed Mega Pricing for Effective Application OffloadingDescription of the project: To encourage fair and high-quality cloud services, we suggest three different price structures: a multi-dimensional price corresponding to multi-dimensional resource allocation, a penalty price, and a benefit discount factor that encourages more even resource provisioning across various cloud dimensions. Implementation of this project:
An Edge NOde Resource Management FrameworkDescription of the project: As more and more devices are connected to the Internet, current computing methods that use the cloud as a host computer will become unworkable. This highlights the importance of fog computing, which combines cloud computing with edge computing on network nodes like routers, base stations, and switches. However, controlling edge nodes will be a barrier that must be overcome to realize fog computing. Implementation of this project:
Increasing the Reliability of Cloud Services by Using a Proactive Fault-Tolerance ApproachDescription of the project: The widespread usage of cloud computing services for hosting commercial and industrial applications has made cloud service dependability a major concern for both consumers and cloud service providers. The issue of coordination between many virtual machines (VMs) that work together to finish a concurrent application is rarely considered by existing solutions. Challenges faced in this project:
To solve this issue, we first suggest an initial virtual cluster allocation mechanism based on the characteristics of the VMs, which will help to cut down on the data center's overall network resource and energy usage. Then, we model CPU temperature (PM) to prepare for a degrading system. We move virtual machines (VMs) from an identified degrading PM to certain ideal PMs. The final step is to describe and solve the choice of the best target PMs using an enhanced particle swarm optimization method. In terms of overall transmission overhead, total network resource usage, and execution time while running several simultaneous applications, we compare our technique to five comparable alternatives. Results from experiments show how efficient and successful our strategy is. Task assignment for mobile edge computing that considers user mobilityDescription of the project: To provide ubiquitous processing and storage solutions for mobile and large data applications, Mobile Computing (MEC) has developed as a potential computing paradigm. Numerous small-cell base stations (SBS) are placed in MEC (MEN) to create a mobile edge network. Implementation of this project:
Deadline-Aware Portable Edge Computing Systems Task SchedulingDescription of the project: A novel computing strategy called mobile edge computing (MEC) allows computation work performed by mobile devices (MDs) to be either unloaded to MEC servers or performed locally. Since calculation jobs must be completed by certain dates and MDs never have enough battery power, it's critical to plan how to allocate each task's energy efficiently. In contrast to other studies, we investigate a more complicated scenario where many moving MDs share diverse MEC servers and define the challenge of lowest energy usage in deadline-aware MEC systems. Since this issue is demonstrated to be NP-hard, two approximation techniques are suggested that focus on one and multiple MD cases. Theoretical studies and simulations are used to change how well certain algorithms function. A Privacy-Preserving Data Gathering Scheme for IoT Applications Assisted by Mobile Edge ComputingDescription of the project: As 5G and Internet of Things technologies advance quickly, many mobile devices with particular sensing capabilities have access to the network and significant volumes of data. Low latency and quick data access are requirements for IoT applications that the typical cloud computing architecture cannot meet. These issues may be resolved, and the system's execution efficiency can be increased with the help of mobile edge computing (MEC). Implementation of this project:
Maximum Processing Capacity in Power-Constrained Edge Computing for IoT NetworksDescription of the project: Next-generation networks benefit greatly from mobile edge computing (MEC). It seeks to provide low-latency computing services and increase the Internet of Things (IoT) processing capacity. For MEC IoT networks with limited power and unpredictable jobs, we examine a resource allocation mechanism in this research to optimize available processing capacity (APC). The APC describes a serviced IoT device's computational power and speed, which is first specified. The link between task partition and resource allocation is then examined to obtain its expression. Implementation of this project:
Edge computing events scheduling online using the repeating strategy gameDescription of the project: An edge service provider's (ESP) primary duty is to dynamically assign resources to tasks already taking place at the edges in response to requests. This role is difficult, though, because it requires making decisions at the moment without knowing when someone else will arrive, relying on requests to complete tasks, and managing resources. Implementation of this project:
Offloading of Multiple Users and Multiple Tasks in Green Virtual Network Cloud Computing.Description of the project: By using the resources that are already present at the network edge, Mobile Edge Cloud Computational (MECC) has emerged as an appealing method for increasing the storage and computing capabilities of Mobile Devices (MDs). In this study, we consider computing offloading at the portable edge cloud, comprising a collection of Wireless Devices (WDs), each containing a device for capturing solar energy from the ambient. Additionally, several MDs want to offload their work to the portable edge cloud simultaneously. Implementation of this project:
Resource Allocation and Task Offloading in Multi-Server Portable Computing NetworksDescription of the project: A new concept called mobile-edge computing (MEC) enables sophisticated services and applications to be offered close to the end consumers by capillary dispersing cloud computational power to the edge of the cellular access network. Implementation of this project:
Challenges faced in this project:
To address this issue, we suggest splitting the original issue into two separate issues: a task offloading problem that optimizes the proper functioning corresponding to the RA problem and a capital allocation problem with a fixed task offloading choice. We use convex and semi-optimization methods to tackle the RA issue. We provide a unique heuristic approach for the TO issue that yields a suboptimal result in polynomial time. Simulation results demonstrate that our methodology performs almost as well as the ideal solution and that, compared to conventional methods, it greatly increases the customers' offloading utility. |