american university
'We will go wherever they hide': Rooting out IS in Somalia
'We will go wherever they hide': Rooting out IS in Somalia A figure appears in the picture, moving through a valley. He has been to fetch water for his friends, says the drone operator. He is running and carrying something on his back, adds another soldier. The man on the screen is near a cave, which the army believes is a hideout for 50 to 60 IS fighters. The Puntland Defence Forces have about 500 soldiers stationed at this base in the north-east of Somalia. Ten years ago the barren and inhospitable landscape was home to only a few nomadic communities, but that changed when IS established a foothold here, shifting its focus to Africa as its fighters were driven out of their strongholds in Syria and Iraq.
- Asia > Middle East > Syria (0.26)
- Asia > Middle East > Iraq (0.24)
- North America > Central America (0.14)
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AraLingBench A Human-Annotated Benchmark for Evaluating Arabic Linguistic Capabilities of Large Language Models
Zbeeb, Mohammad, Hammoud, Hasan Abed Al Kader, Mukalled, Sina, Rizk, Nadine, Karnib, Fatima, Lakkis, Issam, Mohanna, Ammar, Ghanem, Bernard
The benchmark spans five core categories: grammar, morphology, spelling, reading comprehension, and syntax, through 150 expert-designed multiple choice questions that directly assess structural language understanding. Evaluating 35 Arabic and bilingual LLMs reveals that current models demonstrate strong surface level proficiency but struggle with deeper grammatical and syntactic reasoning. AraLingBench highlights a persistent gap between high scores on knowledge-based benchmarks and true linguistic mastery, showing that many models succeed through memorization or pattern recognition rather than authentic comprehension. By isolating and measuring fundamental linguistic skills, AraLingBench provides a diagnostic framework for developing Arabic LLMs. The full evaluation code is publicly available on GitHub.
- Europe (1.00)
- North America (0.68)
- Asia > Middle East > UAE (0.46)
- Research Report (0.51)
- Questionnaire & Opinion Survey (0.34)
Optimizing Deep Neural Networks using Safety-Guided Self Compression
Zbeeb, Mohammad, Salman, Mariam, Bazzi, Mohammad, Mohanna, Ammar
The deployment of deep neural networks on resource-constrained devices necessitates effective model com- pression strategies that judiciously balance the reduction of model size with the preservation of performance. This study introduces a novel safety-driven quantization framework that leverages preservation sets to systematically prune and quantize neural network weights, thereby optimizing model complexity without compromising accuracy. The proposed methodology is rigorously evaluated on both a convolutional neural network (CNN) and an attention-based language model, demonstrating its applicability across diverse architectural paradigms. Experimental results reveal that our framework achieves up to a 2.5% enhancement in test accuracy relative to the original unquantized models while maintaining 60% of the initial model size. In comparison to conventional quantization techniques, our approach not only augments generalization by eliminating parameter noise and retaining essential weights but also reduces variance, thereby ensuring the retention of critical model features. These findings underscore the efficacy of safety-driven quantization as a robust and reliable strategy for the efficient optimization of deep learn- ing models. The implementation and comprehensive experimental evaluations of our framework are publicly accessible at GitHub.
Masters in Artificial Intelligence in USA - AbGyan Overseas
MS in AI courses at American universities are very popular globally. This is why many aspiring AI experts go to the US for completing their training. Besides this, the country houses numerous AI startups which means there is no shortage of jobs for AI professionals in America. In short, it's worthwhile to study artificial intelligence in the country. With this in mind today we are sharing with you a guide regarding studying MS in Artificial Intelligence in USA. Here are all the things you must know if you plan to study Artificial Intelligence in USA.
FLoBC: A Decentralized Blockchain-Based Federated Learning Framework
Ghanem, Mohamed, Dawoud, Fadi, Gamal, Habiba, Soliman, Eslam, Sharara, Hossam, El-Batt, Tamer
The rapid expansion of data worldwide invites the need for more distributed solutions in order to apply machine learning on a much wider scale. The resultant distributed learning systems can have various degrees of centralization. In this work, we demonstrate our solution FLoBC for building a generic decentralized federated learning system using blockchain technology, accommodating any machine learning model that is compatible with gradient descent optimization. We present our system design comprising the two decentralized actors: trainer and validator, alongside our methodology for ensuring reliable and efficient operation of said system. Finally, we utilize FLoBC as an experimental sandbox to compare and contrast the effects of trainer-to-validator ratio, reward-penalty policy, and model synchronization schemes on the overall system performance, ultimately showing by example that a decentralized federated learning system is indeed a feasible alternative to more centralized architectures.
- Information Technology > Security & Privacy (0.46)
- Education (0.46)
American University: Using Statistics to Aid in the Fight Against Misinformation
An American University math professor and his team created a statistical model that can be used to detect misinformation in social posts. The model also avoids the problem of black boxes that occur in machine learning. With the use of algorithms and computer models, machine learning is increasingly playing a role in helping to stop the spread of misinformation, but a main challenge for scientists is the black box of unknowability, where researchers don't understand how the machine arrives at the same decision as human trainers. Using a Twitter dataset with misinformation tweets about COVID-19, Zois Boukouvalas, assistant professor in AU's Department of Mathematics and Statistics in the College of Arts and Sciences, shows how statistical models can detect misinformation in social media during events like a pandemic or a natural disaster. In newly published research, Boukouvalas and his colleagues, including AU student Caitlin Moroney and Computer Science Prof. Nathalie Japkowicz, also show how the model's decisions align with those made by humans.
- North America > United States > Maryland > Baltimore County (0.05)
- North America > United States > Maryland > Baltimore (0.05)
What Is AI Called In Your Mother Tongue?
Over the last few years, the conversation around emerging technologies like AI and machine learning has increased massively. However, this conversation is limited only to the research and developers' community. The general public, which is at the receiving end, is largely left out of such conversations. This is mainly because there has been very little effort to give cultural and linguistic context to such technologies. To give an example, most of us might be unaware of what AI is called in our local tongue or worse; there might not be any local term to refer to AI to begin with.
- Asia > India > Tamil Nadu (0.06)
- Oceania > New Zealand (0.05)
Unleashing Early Maturity Academic Innovations
The Arab region consists of many teaching-intensive universities that are intrinsically committed to holistic educational excellence. According to a recent UNESCO report,5 the higher education sector in the Arab region is undergoing a need for massive expansion given exponentially growing populations, record-breaking youth cohorts, coupled with a strong recognition of the economic and social value of higher education. Such an enormous need for growth poses a significant challenge for publicly funded universities yet offers many opportunities for private universities to meet the ever-increasing demands of advanced education.2 As is the case with many similar universities worldwide, not being dedicated research institutions often results in limited availability of research funds, resources, and hence innovation throughput. The examples given in this paper are those of universities in the region that were initially focused on consolidating their teaching, except for one which started first as research-intensive. However, it was not long before a shift in policy included research excellence in undergraduate education by harnessing the most valuable resource of any university: the aspiring students themselves.
- North America > Canada > Alberta (0.14)
- Africa > Middle East > Egypt > Cairo Governorate > Cairo (0.06)
- Asia > Middle East > Lebanon > Beirut Governorate > Beirut (0.05)
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Networking Research for the Arab World
The Arab region, composed of 22 countries spanning Asia and Africa, opens ample room for communications and networking innovations and services and contributes to the critical mass of the global networking innovation. While the Arab world is considered an emerging market for communications and networking services, the rate of adoption is outpacing the global average. In fact, as of 2019, the mobile Internet penetration stands at 67.2% in the Arab world, as opposed to a global average of 56.5%.12 Furthermore, multiple countries in the region are either building new infrastructure or developing existing infrastructure at an unprecedented pace. Examples include, Neom city in Saudi Arabia, the new administrative capital in Egypt, as well as the Smart Dubai 2021 project in the United Arab Emirates (UAE), among others. This provides a unique opportunity to fuse multiple advanced networking technologies as an integral part of the infrastructure design phase and not just as an afterthought.
- Asia > Middle East > UAE > Dubai Emirate > Dubai (0.25)
- Africa > Middle East > Egypt > Cairo Governorate > Cairo (0.07)
- Asia > Middle East > Lebanon > Beirut Governorate > Beirut (0.05)
- (14 more...)
- Research Report > Promising Solution (0.46)
- Overview (0.46)
- Telecommunications (1.00)
- Information Technology (1.00)
- Energy (1.00)
- Health & Medicine (0.70)
- Information Technology > Communications > Networks (1.00)
- Information Technology > Communications > Mobile (1.00)
- Information Technology > Artificial Intelligence > Machine Learning (1.00)
College Students Use Artificial Intelligence-Powered Note Taker
Tens of thousands of students at universities across the country are using Otter.ai to stay on top of classes, reading lists, group assignments, research interviews, and exam preparation. A dozen students will be profiled on Otter's blog over the coming months, and their insights have been compiled into a helpful article by college student Sydney Kuntz of American University. "Otter is more than speech recognition. It is a new medium which captures what is said in a form that can be reviewed, freeing students to ask questions, develop ideas and participate in discussions," said Sydney Kuntz, Otter user and journalism student at American University. "Using Otter, I can record directly or upload audio/video files to transcribe. I can also add photos of whiteboards or slides from class presentations, during or after recording. And with features like keywords and highlighting, even hour-long lectures are very easy to navigate and search."