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النماذج اللغوية الكبيرة واسترجاع المعلومات في البيئة الرقمية: دراسة تحليلية نظرية

This study explores the role of Large Language Models (LLMs) in information retrieval within the digital environment through a theoretical analysis of their concepts, operational mechanisms, and a comparison with traditional methods, alongside identifying key challenges and contemporary applications. The findings reveal that LLMs represent a qualitative shift in processing natural language due to their ability to understand context and generate precise responses. The study highlights their superiority in enhancing retrieval systems through integration with cognitive technologies such as Retrieval-Augmented Generation (RAG) and Knowledge Graphs (KGs), thereby improving the reliability and effectiveness of results, especially in specialized domains. Despite these capabilities, the study identifies technical and methodological challenges, including hallucination and limited interpretability. It emphasizes that LLMs do not replace traditional retrieval methods but complement them, depending on task nature and user behavior. The study recommends developing hybrid models, enhancing multimodal capabilities, and expanding real-world evaluations—particularly in low-resource languages and specialized fields. It concludes that integrating LLMs with structured knowledge representations offers a promising path toward building more accurate, equitable, and intelligent information retrieval systems.

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دور الحوسبة السحابية في التعليم

This study aimed to analyze the role of cloud computing in the education sector, as this technology brings positive transformations by making education more accessible, effective, and efficient. However, educational institutions face challenges related to security, privacy, cost, and technical infrastructure, highlighting the need for an analytical study to examine the benefits and challenges of implementing cloud computing in this sector. The study adopted a descriptive analytical approach by reviewing and analyzing intellectual production related to cloud computing in education without collecting field data. The research procedures involved gathering, classifying, and analyzing previous studies, scientific reports, and relevant statistics to derive key trends and insights. The findings revealed that cloud computing offers numerous benefits, including reducing operational costs, increasing flexibility and scalability, and enhancing data security. Additionally, cloud computing supports digital transformation in education, improves academic data management, and provides an integrated learning environment powered by artificial intelligence. However, institutions face challenges such as dependence on internet connectivity, privacy concerns, and the need to select appropriate cloud models. The study recommended a well-planned transition to cloud computing by carefully selecting suitable models, strengthening technical infrastructure, and ensuring data security. It also emphasized the importance of providing comprehensive training for teachers and students and conducting periodic assessments to measure the effectiveness of cloud computing in improving the educational process.

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Developing Cost-Effective AI Algorithms for Resource-Constrained Devices

Resource-restrained gadgets pose sizable challenges for deploying synthetic intelligence (AI) packages, which include restricted computational power, reminiscence, and electricity resources. This research pursuits to broaden value-effective AI algorithms that cope with these limitations whilst retaining high overall performance and accuracy. The examine leverages superior optimization strategies, such as version pruning, quantization, and dynamic strength control, to layout light-weight models appropriate for low-strength environments. Experiments conducted on gadgets like the Raspberry Pi 4 and NVIDIA Jetson Nano screen giant improvements in inference time, electricity efficiency, and accuracy compared to conventional processes. The proposed algorithms acquire up to 50% reduction in energy consumption and 20% improvement in accuracy at the same time as lowering typical computational charges. These findings reveal the feasibility of deploying green AI solutions on constrained hardware without compromising on functionality or nice. The practical implications of this paintings make bigger to various applications, along with real-time healthcare monitoring, clever agriculture, and commercial IoT systems. The have a look at concludes by means of highlighting areas for destiny studies, which includes improving algorithmic adaptability and expanding trying out to embody diverse eventualities. This work gives a sturdy basis for advancing the deployment of AI in resource-restricted settings, bridging the gap between technological innovation and practical implementation.

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تصميم بيئة تدريب إلكترونية قائمة على نظرية العقل وأثرها على تحسين مستوى الوظائف التنفيذية لدى الطلاب من ذوي اضطراب طيف التوحد

This study aimed to measure the effect of designing an electronic training environment based on the theory of mind on improving the level of executive functions for students with autism spectrum disorder by identifying the appropriate executive functions for them, identifying the appropriate educational design for that environment, and measuring its effect on improving the level of executive functions in those students. The study adopted the quasi-experimental approach with a single-group experimental design in the pre- and post-applications. The study population consisted of students with autism spectrum disorder enrolled in a development center in Riyadh. The study sample consisted of (5) students who were selected intentionally based on the convergence of their scores on the Binet Intelligence Scale and the Gilliam Autism Severity Scale so that they would be within the category of those with autism spectrum disorder to a mild degree and with normal intelligence scores between 85-115 on the Stanford-Binet scale, and their ages ranged between 8-14 years. The researcher used a scale for executive functions for children with autism spectrum disorder prepared by Mustafa Aref (2020) and standardized it in the Saudi environment. The study reached a number of results, the most prominent of which are: There is a very significant effect of using the electronic training environment based on the theory of mind on improving the level of all executive functions among these students, as there are statistically significant differences at the significance level (0.05) between the average ranks of the sample members in the pre- and post-application of the executive functions scale in favor of the post-application. Therefore, the study recommended expanding the scope of using electronic training environments based on the theory of mind in teaching students with autism spectrum disorder; given the proven positive effect on developing the level of their executive functions.

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الذكاء الاصطناعي في مجال التعليم

This research paper was titled: (Artificial Intelligence in Education), and through it, the researchers sought to explore the main role that artificial intelligence represents as a modern and advanced technical achievement in the fields of education and learning at its various stages. The paper was divided into six sections, the first of which represents the methodological framework of the research, the second on the concept of artificial intelligence in education and its importance, the third included applications of artificial intelligence in education, the fourth shed light on the use of artificial intelligence in education and the challenges, controls, effects and ethical concerns that accompany it, the fifth was devoted to future trends in artificial intelligence in education in the Kingdom, and the sixth contained the results, recommendations and references. The researchers concluded with a number of results, the most prominent of which are: the importance of combining artificial intelligence and teachers to achieve the best educational results, the positive impact that artificial intelligence-supported tools achieve in improving the quality of education, and the role of artificial intelligence in reducing routine burdens on teachers and enabling them to focus on aspects of creative teaching.

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