Smart City Gnosys

Smart city article details

Title Gpthingsim: A Iot Simulator Based Gpt Models Over An Edge-Cloud Environments
ID_Doc 28224
Authors Khalfi M.F.; Tabbiche M.N.
Year 2025
Published International Journal of Networked and Distributed Computing, 13, 1
DOI http://dx.doi.org/10.1007/s44227-024-00045-w
Abstract The Internet of Things encapsulates a vision of a world in which billions of objects, called connected devices, are endowed with intelligence, communication capabilities, and integrated sensing and actuation capabilities. They often outsource their storage and computing needs to more powerful resources in the cloud. In Edge computing, it is the device itself that collects and processes data and must make real-time decisions. A model that combines the edge and the cloud allows for instant processing of large amounts of data, making devices increasingly intelligent. One fundamental aspect of Artificial Intelligence, particularly Machine Learning (ML), is that it requires a substantial amount of data to learn. The GPT model can be adapted to operate within a cloud environment, which enables instant processing of large quantities of data. In this article, our approach relies on a hybrid of Cloud computing and Edge computing, merging the best features of both approaches by using Edge for real-time processing and the cloud for storage and large-scale data analysis. We will explore the possibilities of integrating the GPT model into IoT devices. This extension allows devices to offer processing capabilities at the local level, which can be extremely beneficial for many applications. We propose a platform for simulating connected objects augmented by the LSTM neural network model to predict the energy consumption of IoT devices in a smart city scenario. © The Author(s) 2024.
Author Keywords Artificial Intelligence; ChatGPT; Cloud computing; Edge computing; Energy consumption; Fog computing; GPT-4; Internet of Things; IoT; IoT devices; IoT simulator; LSTM; Mobility; Smart City


Similar Articles


Id Similarity Authors Title Published
21815 View0.892Murthy V.S.N.; Kumari R.; Goyal M.; Dubey P.; Meenakshi; Manikandan S.; Ramesh P.Edge-Ai In Iot: Leveraging Cloud Computing And Big Data For Intelligent Decision-MakingJournal of Information Systems Engineering and Management, 10 (2025)
14842 View0.881Grzesik P.; Mrozek D.Combining Machine Learning And Edge Computing: Opportunities, Challenges, Platforms, Frameworks, And Use CasesElectronics (Switzerland), 13, 3 (2024)
60277 View0.878Fan X.; Xiang C.; Gong L.; He X.; Chen C.; Huang X.Urbanedge: Deep Learning Empowered Edge Computing For Urban Iot Time Series PredictionACM International Conference Proceeding Series (2019)
32524 View0.877Vigenesh M.; Katyal A.; Hemalatha S.; Ahluwalia G.; Kukreja M.; Mathurkar P.Intelligent Resource Scheduling For Edge-Integrated Iot Using Deep Learning2024 IEEE 4th International Conference on ICT in Business Industry and Government, ICTBIG 2024 (2024)
1456 View0.874Asaad R.R.; Hani A.A.; Sallow A.B.; Abdulrahman S.M.; Ahmad H.B.; Subhi R.M.A Development Of Edge Computing Method In Integration With Iot System For Optimizing And To Produce Energy Efficiency System2024 4th International Conference on Advance Computing and Innovative Technologies in Engineering, ICACITE 2024 (2024)
21828 View0.874Belcastro L.; Marozzo F.; Orsino A.; Talia D.; Trunfio P.Edge-Cloud Continuum Solutions For Urban Mobility Prediction And PlanningIEEE Access, 11 (2023)
55982 View0.873Hasan M.M.; Sultana T.; Hossain M.D.; Mandal A.K.; Ngo T.-T.; Lee G.-W.; Huh E.-N.The Journey To Cloud As A Continuum: Opportunities, Challenges, And Research DirectionsICT Express (2025)
8433 View0.872Udayakumar R.; Mahesh B.; Sathiyakala R.; Thandapani K.; Choubey A.; Khurramov A.; Alzubaidi L.H.; Sravanthi J.An Integrated Deep Learning And Edge Computing Framework For Intelligent Energy Management In Iot-Based Smart CitiesInternational Conference for Technological Engineering and its Applications in Sustainable Development, ICTEASD 2023 (2023)
14476 View0.867Lilhore U.K.; Simaiya S.; Sharma Y.K.; Rai A.K.; Padmaja S.M.; Nabilal K.V.; Kumar V.; Alroobaea R.; Alsufyani H.Cloud-Edge Hybrid Deep Learning Framework For Scalable Iot Resource OptimizationJournal of Cloud Computing, 14, 1 (2025)
44395 View0.867Ojeda J.; Amaxilatis D.; Tsironis N.; Sarantakos T.; Fonseca J.; Adhane G.; Famitafreshi G.; Roy S.; Chari S.K.; Ghafouri N.; Ramantas K.; Verikoukis C.Real-Time Machine Learning-Based Iot Data Analysis In The Edge Cloud Continuum Using Ac3IEEE International Workshop on Computer Aided Modeling and Design of Communication Links and Networks, CAMAD (2024)