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25.3
Jeddah
Clear
C 29.2
C 25
Khlis
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C 29.3
C 22
Al Kamil
Clear
C 28.5
C 21.3

College of Computing and Information Technology at Al-Kamil

The College of Computing and Information Technology at Al-Kamil was established on 28/11/1432 AH to become one of the distinguished colleges at the University of Jeddah. With the blessed efforts of the university administration, the college's laboratories were equipped with the latest computer devices, and the college strives to achieve the vision of the University of Jeddah, the modern Saudi university. The college aims to qualify national cadres specialized in the technical field by providing graduates with digital skills and knowledge in a vibrant scientific environment that stimulates competition in the job market and the use of knowledge in serving and developing the community.

Total Number of Students
109
Number of Faculty Members
17
Number of Administrative Staff
8

    Academic Programs

    Bachelor’s Degree
    Bachelor of Science in Information Technology
    About the Programs
    Conditions for admission to the program
    Professional certificates
    Course description
    Employment ratio
    Study Plan
    Program performance indicators

    Research and Innovation

    Examining the factor’s influencing IoT-blockchain based secure transmission services
    29 Sep 2025
    This study proposes a blockchain-based framework to enhance data security in Internet of Things (IoT) systems. It integrates several node types—Transmission, Inspection, and Forwarding Nodes, plus a Blockchain Security Service—to protect sensor data end-to-end. Using both conceptual modeling and expert evaluation from 32 specialists, the results show strong security and reliability for blockchain components, though Inspection Nodes need improvement. Overall, the model strengthens trust, integrity, and performance in decentralized IoT environments.
    In-depth exploration of software defects and self-admitted technical debt through cutting-edge deep learning techniques
    11 Jun 2025
    This study introduces an innovative deep learning–based approach to detect and classify Self-Admitted Technical Debt (SATD) along with related software defects. The model was trained using data from open-source projects such as Apache, Mozilla Firefox, and Eclipse, applying several architectures including LSTM, GRU, BERT, and GPT-3. Results show that the GPT-3 model achieved the highest accuracy (0.984), outperforming other models. The research contributes to improving software quality by enhancing the detection and understanding of technical debt and software defects, thereby supporting sustainable software maintenance and development.
    Dynamic Neighborhood Selection for Context Aware Temporal Evolution Using Graph Neural Networks
    05 Dec 2024
    Graph neural networks (GNN) have seen significant growth recently for modeling temporal evolution in dynamic networks. Representation of complex networks in the form of graph data structures has enabled researchers to study how entities within these networks interact with each other. These interactions evolve over time. Developing a generic methodology for modeling this temporal evolution in complex networks for tracking evolving relationships has been a significant challenge. Most of the existing methods fail to extract contextual representations of historical neighborhood interactions for future link prediction. To address these challenges, this paper presents a novel method for modeling temporal evolution in complex networks using GNNs. A Context-Aware Graph Temporal Neural Network (CATGNN) method that uses dynamic neighborhood selection based on common neighbors for a given node is presented. The method uses dynamic neighborhood selection using contextual embeddings extracted from the historical interactions of the down-sampled set of neighbors of a central node based on a common neighborhood. Fixed-sized contextual memory modules are constructed for each node that store the historical interactions of its neighbors and are updated based on the recency and significance of interactions. The proposed method has been evaluated using six real-world datasets and has comparable performance against state-of-the-art methods, both in terms of accuracy and efficiency. It shows an improvement of 7.52 to 0.05% over the baselines in terms of average precision. The results demonstrate that the proposed CATGNN model can capture complex patterns of change that are difficult to identify using traditional techniques by propagating information over the graph structure. The model can be applied in various fields involving complex systems.
    Examining the factor’s influencing IoT-blockchain based secure transmission services
    29 Sep 2025
    In-depth exploration of software defects and self-admitted technical debt through cutting-edge deep learning techniques
    11 Jun 2025
    Dynamic Neighborhood Selection for Context Aware Temporal Evolution Using Graph Neural Networks
    05 Dec 2024

    We Are Proud Of

    The student Abdullah Anas Bamousa participated with a scientific poster in the International Conference on Innovation in Artificial Intelligence and the Internet of Things, presenting the use of Deep Reinforcement Learning techniques to enhance the performance of self-learning systems.
    We are proud of our talented student, Abdullah ِAnas Bamousa.