57,501 results on '"Rasheed, A"'
Search Results
2. Evaluating the effectiveness of commonly used antibiotics in Pakistan
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Sethi, Amna Amin, Farrukh, Amna, Rasheed, Aena, Adnan, Eesha, and Khan, Mohammad Abdullah
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- 2022
3. Antibacterial action of Silver Nanoparticles against Staphylococcus aureus Isolated from wound infection
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Raheem, Haider Qassim, Hussein, Ehasn F., Rasheed, Ahmed Hameed, and Imran, Najwan K.
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- 2022
- Full Text
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4. Martensitic transformation temperature modification of Fe-SMA for efficient medical implants
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Rasheed, Muhammad Muneeb, Saif, Ahmed, ur Rahman, Rana Atta, Nasir, Muhammad Ali, Mehmood, Shahid, Usman, Muhammad, and Rao, Abdul Moiz
- Published
- 2024
5. Study of the effects of heating on the physical, optical, and electrical properties of NiO thin films synthesized using a low-cost sol-gel method
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Khan, Muhammad Yasir, Akhtar, Muhammad Wasim, Khan, Muhammad Furqan Ali, Abbass, Zeeshan, ur-Rasheed, Fayyaz, Ali, Muhammad Saquib, Pirzada, Noman, and Shahbaz, Raja
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- 2024
6. Impact of changes to the New Zealand family category policy on immigrants
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Rasheed, Ali
- Published
- 2023
7. NUMOSIM: A Synthetic Mobility Dataset with Anomaly Detection Benchmarks
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Stanford, Chris, Adari, Suman, Liao, Xishun, He, Yueshuai, Jiang, Qinhua, Kuai, Chenchen, Ma, Jiaqi, Tung, Emmanuel, Qian, Yinlong, Zhao, Lingyi, Zhou, Zihao, Rasheed, Zeeshan, and Shafique, Khurram
- Subjects
Computer Science - Machine Learning - Abstract
Collecting real-world mobility data is challenging. It is often fraught with privacy concerns, logistical difficulties, and inherent biases. Moreover, accurately annotating anomalies in large-scale data is nearly impossible, as it demands meticulous effort to distinguish subtle and complex patterns. These challenges significantly impede progress in geospatial anomaly detection research by restricting access to reliable data and complicating the rigorous evaluation, comparison, and benchmarking of methodologies. To address these limitations, we introduce a synthetic mobility dataset, NUMOSIM, that provides a controlled, ethical, and diverse environment for benchmarking anomaly detection techniques. NUMOSIM simulates a wide array of realistic mobility scenarios, encompassing both typical and anomalous behaviours, generated through advanced deep learning models trained on real mobility data. This approach allows NUMOSIM to accurately replicate the complexities of real-world movement patterns while strategically injecting anomalies to challenge and evaluate detection algorithms based on how effectively they capture the interplay between demographic, geospatial, and temporal factors. Our goal is to advance geospatial mobility analysis by offering a realistic benchmark for improving anomaly detection and mobility modeling techniques. To support this, we provide open access to the NUMOSIM dataset, along with comprehensive documentation, evaluation metrics, and benchmark results.
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- 2024
8. AI based Multiagent Approach for Requirements Elicitation and Analysis
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Sami, Malik Abdul, Waseem, Muhammad, Zhang, Zheying, Rasheed, Zeeshan, Systä, Kari, and Abrahamsson, Pekka
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Computer Science - Software Engineering - Abstract
Requirements Engineering (RE) plays a pivotal role in software development, encompassing tasks such as requirements elicitation, analysis, specification, and change management. Despite its critical importance, RE faces challenges including communication complexities, early-stage uncertainties, and accurate resource estimation. This study empirically investigates the effectiveness of utilizing Large Language Models (LLMs) to automate requirements analysis tasks. We implemented a multi-agent system that deploys AI models as agents to generate user stories from initial requirements, assess and improve their quality, and prioritize them using a selected technique. In our implementation, we deployed four models, namely GPT-3.5, GPT-4 Omni, LLaMA3-70, and Mixtral-8B, and conducted experiments to analyze requirements on four real-world projects. We evaluated the results by analyzing the semantic similarity and API performance of different models, as well as their effectiveness and efficiency in requirements analysis, gathering users' feedback on their experiences. Preliminary results indicate notable variations in task completion among the models. Mixtral-8B provided the quickest responses, while GPT-3.5 performed exceptionally well when processing complex user stories with a higher similarity score, demonstrating its capability in deriving accurate user stories from project descriptions. Feedback and suggestions from the four project members further corroborate the effectiveness of LLMs in improving and streamlining RE phases.
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- 2024
9. Federated Fairness Analytics: Quantifying Fairness in Federated Learning
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Dilley, Oscar, Parra-Ullauri, Juan Marcelo, Hussain, Rasheed, and Simeonidou, Dimitra
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Computer Science - Machine Learning ,Computer Science - Artificial Intelligence ,Computer Science - Distributed, Parallel, and Cluster Computing ,Computer Science - Computer Science and Game Theory ,Computer Science - Neural and Evolutionary Computing - Abstract
Federated Learning (FL) is a privacy-enhancing technology for distributed ML. By training models locally and aggregating updates - a federation learns together, while bypassing centralised data collection. FL is increasingly popular in healthcare, finance and personal computing. However, it inherits fairness challenges from classical ML and introduces new ones, resulting from differences in data quality, client participation, communication constraints, aggregation methods and underlying hardware. Fairness remains an unresolved issue in FL and the community has identified an absence of succinct definitions and metrics to quantify fairness; to address this, we propose Federated Fairness Analytics - a methodology for measuring fairness. Our definition of fairness comprises four notions with novel, corresponding metrics. They are symptomatically defined and leverage techniques originating from XAI, cooperative game-theory and networking engineering. We tested a range of experimental settings, varying the FL approach, ML task and data settings. The results show that statistical heterogeneity and client participation affect fairness and fairness conscious approaches such as Ditto and q-FedAvg marginally improve fairness-performance trade-offs. Using our techniques, FL practitioners can uncover previously unobtainable insights into their system's fairness, at differing levels of granularity in order to address fairness challenges in FL. We have open-sourced our work at: https://github.com/oscardilley/federated-fairness.
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- 2024
10. Guardians of Image Quality: Benchmarking Defenses Against Adversarial Attacks on Image Quality Metrics
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Gushchin, Alexander, Abud, Khaled, Bychkov, Georgii, Shumitskaya, Ekaterina, Chistyakova, Anna, Lavrushkin, Sergey, Rasheed, Bader, Malyshev, Kirill, Vatolin, Dmitriy, and Antsiferova, Anastasia
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Computer Science - Computer Vision and Pattern Recognition ,Electrical Engineering and Systems Science - Image and Video Processing - Abstract
In the field of Image Quality Assessment (IQA), the adversarial robustness of the metrics poses a critical concern. This paper presents a comprehensive benchmarking study of various defense mechanisms in response to the rise in adversarial attacks on IQA. We systematically evaluate 25 defense strategies, including adversarial purification, adversarial training, and certified robustness methods. We applied 14 adversarial attack algorithms of various types in both non-adaptive and adaptive settings and tested these defenses against them. We analyze the differences between defenses and their applicability to IQA tasks, considering that they should preserve IQA scores and image quality. The proposed benchmark aims to guide future developments and accepts submissions of new methods, with the latest results available online: https://videoprocessing.ai/benchmarks/iqa-defenses.html.
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- 2024
11. Design and simulation of an optical and and xor gate using micro ring resonator for photonic FPGA
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Ashwini, N., Roy, Ugra Mohan, and Rasheed, Abdul Imran
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- 2021
12. Effectiveness of oral nano-particle based Vitamin D solution in Pain Management: A prospective cross-sectional study
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Mugada, Vinod Kumar, Kolkota, Raj Kiran, Srinivas, Sai KMS, and Rasheed, Abdul
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- 2021
- Full Text
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13. MEV Ecosystem Evolution From Ethereum 1.0
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Rasheed, Chaurasia, Yash, Desai, Parth, and Gujar, Sujit
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Computer Science - Cryptography and Security - Abstract
Smart contracts led to the emergence of the decentralized finance (DeFi) marketplace within blockchain ecosystems, where diverse participants engage in financial activities. In traditional finance, there are possibilities to create values, e.g., arbitrage offers to create value from market inefficiencies or front-running offers to extract value for the participants having privileged roles. Such opportunities are readily available -- searching programmatically in DeFi. It is commonly known as Maximal Extractable Value (MEV) in the literature. In this survey, first, we show how lucrative such opportunities can be. Next, we discuss how protocol-following participants trying to capture such opportunities threaten to sabotage blockchain's performance and the core tenets of decentralization, transparency, and trustlessness that blockchains are based on. Then, we explain different attempts by the community in the past to address these issues and the problems introduced by these solutions. Finally, we review the current state of research trying to restore trustlessness and decentralization to provide all DeFi participants with a fair marketplace.
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- 2024
14. VideoGPT+: Integrating Image and Video Encoders for Enhanced Video Understanding
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Maaz, Muhammad, Rasheed, Hanoona, Khan, Salman, and Khan, Fahad
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Computer Science - Computer Vision and Pattern Recognition - Abstract
Building on the advances of language models, Large Multimodal Models (LMMs) have contributed significant improvements in video understanding. While the current video LMMs utilize advanced Large Language Models (LLMs), they rely on either image or video encoders to process visual inputs, each of which has its own limitations. Image encoders excel at capturing rich spatial details from frame sequences but lack explicit temporal context, which can be important in videos with intricate action sequences. On the other hand, video encoders provide temporal context but are often limited by computational constraints that lead to processing only sparse frames at lower resolutions, resulting in reduced contextual and spatial understanding. To this end, we introduce VideoGPT+, which combines the complementary benefits of the image encoder (for detailed spatial understanding) and the video encoder (for global temporal context modeling). The model processes videos by dividing them into smaller segments and applies an adaptive pooling strategy on features extracted by both image and video encoders. Our architecture showcases improved performance across multiple video benchmarks, including VCGBench, MVBench and Zero-shot question-answering. Further, we develop 112K video-instruction set using a novel semi-automatic annotation pipeline which further improves the model performance. Additionally, to comprehensively evaluate video LMMs, we present VCGBench-Diverse, covering 18 broad video categories such as lifestyle, sports, science, gaming, and surveillance videos. This benchmark with 4,354 question-answer pairs evaluates the generalization of existing LMMs on dense video captioning, spatial and temporal understanding, and complex reasoning, ensuring comprehensive assessment across diverse video types and dynamics. Code: https://github.com/mbzuai-oryx/VideoGPT-plus., Comment: Technical Report
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- 2024
15. A Tool for Test Case Scenarios Generation Using Large Language Models
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Sami, Abdul Malik, Rasheed, Zeeshan, Waseem, Muhammad, Zhang, Zheying, Tomas, Herda, and Abrahamsson, Pekka
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Computer Science - Software Engineering - Abstract
Large Language Models (LLMs) are widely used in Software Engineering (SE) for various tasks, including generating code, designing and documenting software, adding code comments, reviewing code, and writing test scripts. However, creating test scripts or automating test cases demands test suite documentation that comprehensively covers functional requirements. Such documentation must enable thorough testing within a constrained scope and timeframe, particularly as requirements and user demands evolve. This article centers on generating user requirements as epics and high-level user stories and crafting test case scenarios based on these stories. It introduces a web-based software tool that employs an LLM-based agent and prompt engineering to automate the generation of test case scenarios against user requirements., Comment: 6 pages, 2 figures, and 1 table
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- 2024
16. Experimenting with Multi-Agent Software Development: Towards a Unified Platform
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Sami, Malik Abdul, Waseem, Muhammad, Rasheed, Zeeshan, Saari, Mika, Systä, Kari, and Abrahamsson, Pekka
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Computer Science - Software Engineering - Abstract
Large language models are redefining software engineering by implementing AI-powered techniques throughout the whole software development process, including requirement gathering, software architecture, code generation, testing, and deployment. However, it is still difficult to develop a cohesive platform that consistently produces the best outcomes across all stages. The objective of this study is to develop a unified platform that utilizes multiple artificial intelligence agents to automate the process of transforming user requirements into well-organized deliverables. These deliverables include user stories, prioritization, and UML sequence diagrams, along with the modular approach to APIs, unit tests, and end-to-end tests. Additionally, the platform will organize tasks, perform security and compliance, and suggest design patterns and improvements for non-functional requirements. We allow users to control and manage each phase according to their preferences. In addition, the platform provides security and compliance checks following European standards and proposes design optimizations. We use multiple models, such as GPT-3.5, GPT-4, and Llama3 to enable to generation of modular code as per user choice. The research also highlights the limitations and future research discussions to overall improve the software development life cycle. The source code for our uniform platform is hosted on GitHub, enabling additional experimentation and supporting both research and practical uses. \end
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- 2024
17. Diagnostic Digital Twin for Anomaly Detection in Floating Offshore Wind Energy
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Stadtmann, Florian and Rasheed, Adil
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Computer Science - Machine Learning ,Computer Science - Artificial Intelligence ,Computer Science - Emerging Technologies ,Electrical Engineering and Systems Science - Signal Processing - Abstract
The demand for condition-based and predictive maintenance is rising across industries, especially for remote, high-value, and high-risk assets. In this article, the diagnostic digital twin concept is introduced, discussed, and implemented for a floating offshore turbine. A diagnostic digital twin is a virtual representation of an asset that combines real-time data and models to monitor damage, detect anomalies, and diagnose failures, thereby enabling condition-based and predictive maintenance. By applying diagnostic digital twins to offshore assets, unexpected failures can be alleviated, but the implementation can prove challenging. Here, a diagnostic digital twin is implemented for an operational floating offshore wind turbine. The asset is monitored through measurements. Unsupervised learning methods are employed to build a normal operation model, detect anomalies, and provide a fault diagnosis. Warnings and diagnoses are sent through text messages, and a more detailed diagnosis can be accessed in a virtual reality interface. The diagnostic digital twin successfully detected an anomaly with high confidence hours before a failure occurred. The paper concludes by discussing diagnostic digital twins in the broader context of offshore engineering. The presented approach can be generalized to other offshore assets to improve maintenance and increase the lifetime, efficiency, and sustainability of offshore assets.
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- 2024
18. Mashee at SemEval-2024 Task 8: The Impact of Samples Quality on the Performance of In-Context Learning for Machine Text Classification
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Rasheed, Areeg Fahad and Zarkoosh, M.
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Computer Science - Computation and Language - Abstract
Within few-shot learning, in-context learning (ICL) has become a potential method for leveraging contextual information to improve model performance on small amounts of data or in resource-constrained environments where training models on large datasets is prohibitive. However, the quality of the selected sample in a few shots severely limits the usefulness of ICL. The primary goal of this paper is to enhance the performance of evaluation metrics for in-context learning by selecting high-quality samples in few-shot learning scenarios. We employ the chi-square test to identify high-quality samples and compare the results with those obtained using low-quality samples. Our findings demonstrate that utilizing high-quality samples leads to improved performance with respect to all evaluated metrics.
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- 2024
19. Hal: A Language-General Framework for Analysis of User-Specified Monotone Frameworks [DRAFT]
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Rasheed, Abdullah
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Computer Science - Programming Languages ,F.3.2 - Abstract
Writing dataflow analyzers requires both language and domain-specificity. That is to say, each programming language and each program property requires its own analyzer. To enable a streamlined, user-driven approach to dataflow analyzers, we introduce the theoretical framework for a user-specified dataflow analysis. This framework is constructed in such a way that the user has to specify as little as possible, while the analyzer infers and computes everything else, including interprocedural embellishments. This theoretical framework was also implemented in Java, where users can specify a program property alongside minimal extra information to induce a dataflow analysis. This framework (both theoretical and in implementation) is language-general, meaning that it is independent of syntax and semantics (as all necessary syntactic and semantic information is provided by the user, and this information is provided only once for a given language). In this paper, we introduce basic notions of intraprocedural and interprocedural dataflow analyses, the proposed "Implicit Monotone Framework," and a rigorous framework for partial functions as a property space., Comment: Undergraduate Senior Capstone Project
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- 2024
20. AI-powered Code Review with LLMs: Early Results
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Rasheed, Zeeshan, Sami, Malik Abdul, Waseem, Muhammad, Kemell, Kai-Kristian, Wang, Xiaofeng, Nguyen, Anh, Systä, Kari, and Abrahamsson, Pekka
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Computer Science - Software Engineering - Abstract
In this paper, we present a novel approach to improving software quality and efficiency through a Large Language Model (LLM)-based model designed to review code and identify potential issues. Our proposed LLM-based AI agent model is trained on large code repositories. This training includes code reviews, bug reports, and documentation of best practices. It aims to detect code smells, identify potential bugs, provide suggestions for improvement, and optimize the code. Unlike traditional static code analysis tools, our LLM-based AI agent has the ability to predict future potential risks in the code. This supports a dual goal of improving code quality and enhancing developer education by encouraging a deeper understanding of best practices and efficient coding techniques. Furthermore, we explore the model's effectiveness in suggesting improvements that significantly reduce post-release bugs and enhance code review processes, as evidenced by an analysis of developer sentiment toward LLM feedback. For future work, we aim to assess the accuracy and efficiency of LLM-generated documentation updates in comparison to manual methods. This will involve an empirical study focusing on manually conducted code reviews to identify code smells and bugs, alongside an evaluation of best practice documentation, augmented by insights from developer discussions and code reviews. Our goal is to not only refine the accuracy of our LLM-based tool but also to underscore its potential in streamlining the software development lifecycle through proactive code improvement and education., Comment: 8 pages
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- 2024
21. Prioritizing Software Requirements Using Large Language Models
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Sami, Malik Abdul, Rasheed, Zeeshan, Waseem, Muhammad, Zhang, Zheying, Herda, Tomas, and Abrahamsson, Pekka
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Computer Science - Software Engineering - Abstract
Large Language Models (LLMs) are revolutionizing Software Engineering (SE) by introducing innovative methods for tasks such as collecting requirements, designing software, generating code, and creating test cases, among others. This article focuses on requirements engineering, typically seen as the initial phase of software development that involves multiple system stakeholders. Despite its key role, the challenge of identifying requirements and satisfying all stakeholders within time and budget constraints remains significant. To address the challenges in requirements engineering, this study introduces a web-based software tool utilizing AI agents and prompt engineering to automate task prioritization and apply diverse prioritization techniques, aimed at enhancing project management within the agile framework. This approach seeks to transform the prioritization of agile requirements, tackling the substantial challenge of meeting stakeholder needs within set time and budget limits. Furthermore, the source code of our developed prototype is available on GitHub, allowing for further experimentation and prioritization of requirements, facilitating research and practical application.
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- 2024
22. Large Language Model Evaluation Via Multi AI Agents: Preliminary results
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Rasheed, Zeeshan, Waseem, Muhammad, Systä, Kari, and Abrahamsson, Pekka
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Computer Science - Software Engineering - Abstract
As Large Language Models (LLMs) have become integral to both research and daily operations, rigorous evaluation is crucial. This assessment is important not only for individual tasks but also for understanding their societal impact and potential risks. Despite extensive efforts to examine LLMs from various perspectives, there is a noticeable lack of multi-agent AI models specifically designed to evaluate the performance of different LLMs. To address this gap, we introduce a novel multi-agent AI model that aims to assess and compare the performance of various LLMs. Our model consists of eight distinct AI agents, each responsible for retrieving code based on a common description from different advanced language models, including GPT-3.5, GPT-3.5 Turbo, GPT-4, GPT-4 Turbo, Google Bard, LLAMA, and Hugging Face. Our developed model utilizes the API of each language model to retrieve code for a given high-level description. Additionally, we developed a verification agent, tasked with the critical role of evaluating the code generated by its counterparts. We integrate the HumanEval benchmark into our verification agent to assess the generated code's performance, providing insights into their respective capabilities and efficiencies. Our initial results indicate that the GPT-3.5 Turbo model's performance is comparatively better than the other models. This preliminary analysis serves as a benchmark, comparing their performances side by side. Our future goal is to enhance the evaluation process by incorporating the Massively Multitask Benchmark for Python (MBPP) benchmark, which is expected to further refine our assessment. Additionally, we plan to share our developed model with twenty practitioners from various backgrounds to test our model and collect their feedback for further improvement., Comment: 10 pages, 1 figure
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- 2024
23. Exploring Urban Mobility Trends using Cellular Network Data
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Yusuf, Oluwaleke, Rasheed, Adil, and Lindseth, Frank
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Physics - Physics and Society ,Computer Science - Social and Information Networks - Abstract
The growth of urban areas intensifies the need for sustainable, efficient transportation infrastructure and mobility systems, driving initiatives to enhance infrastructure and public transport while reducing congestion and emissions. By utilizing real-world mobility data, a data-driven approach can provide crucial insights for planning and decision-making. This study explores the efficacy of leveraging telecoms data from cellular network signals for studying crowd movement patterns, focusing on Trondheim, Norway. It examines routing reports to understand the spatiotemporal dynamics of various transportation routes and modes. A data preprocessing and feature engineering framework was developed to process raw routing reports for historical analysis. This enabled the examination of geospatial trends and temporal patterns, including a comparative analysis of various transportation modes, along with public transit usage. Specific routes and areas were analyzed in-depth to compare their mobility patterns with the broader city context. The study highlights the potential of cellular network data as a resource for shaping urban transportation and mobility systems. By identifying deficiencies and potential improvements, city planners and stakeholders can foster more sustainable and effective transportation solutions.
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- 2024
24. Unveiling Urban Mobility Patterns: A Data-Driven Analysis of Public Transit
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Yusuf, Oluwaleke, Rasheed, Adil, and Lindseth, Frank
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Physics - Physics and Society - Abstract
The expansion of urban centers necessitates enhanced efficiency and sustainability in their transportation infrastructure and mobility systems. The big data obtainable from various transportation modes potentially offers critical insights for urban planning. This study presents analysis of detailed historical public transit data, enriched with relevant temporal and geospatial metadata, as a precursor to injecting dynamism into digital twins of mobility systems via ML/DL-based predictive modeling. A data preprocessing framework was implemented to refine the raw data for effective historical analysis and predictive modeling. This paper examines public transit data for patterns and trends -- incorporating factors such as time, geospatial elements, external influences, and operational aspects. From a technical standpoint, this research helps to assess the quality of the available transit data and identify important information for use in digital twins. Such digital twins foster educated decisions for efficient, sustainable urban mobility systems by anticipating infrastructure demand, identifying service gaps, and understanding mobility dynamics.
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- 2024
25. Privacy Re-identification Attacks on Tabular GANs
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Alshantti, Abdallah, Rasheed, Adil, and Westad, Frank
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Computer Science - Cryptography and Security ,Computer Science - Machine Learning - Abstract
Generative models are subject to overfitting and thus may potentially leak sensitive information from the training data. In this work. we investigate the privacy risks that can potentially arise from the use of generative adversarial networks (GANs) for creating tabular synthetic datasets. For the purpose, we analyse the effects of re-identification attacks on synthetic data, i.e., attacks which aim at selecting samples that are predicted to correspond to memorised training samples based on their proximity to the nearest synthetic records. We thus consider multiple settings where different attackers might have different access levels or knowledge of the generative model and predictive, and assess which information is potentially most useful for launching more successful re-identification attacks. In doing so we also consider the situation for which re-identification attacks are formulated as reconstruction attacks, i.e., the situation where an attacker uses evolutionary multi-objective optimisation for perturbing synthetic samples closer to the training space. The results indicate that attackers can indeed pose major privacy risks by selecting synthetic samples that are likely representative of memorised training samples. In addition, we notice that privacy threats considerably increase when the attacker either has knowledge or has black-box access to the generative models. We also find that reconstruction attacks through multi-objective optimisation even increase the risk of identifying confidential samples.
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- 2024
26. Variational Autoencoders for exteroceptive perception in reinforcement learning-based collision avoidance
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Larsen, Thomas Nakken, Barlaug, Eirik Runde, and Rasheed, Adil
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Computer Science - Machine Learning ,Computer Science - Robotics - Abstract
Modern control systems are increasingly turning to machine learning algorithms to augment their performance and adaptability. Within this context, Deep Reinforcement Learning (DRL) has emerged as a promising control framework, particularly in the domain of marine transportation. Its potential for autonomous marine applications lies in its ability to seamlessly combine path-following and collision avoidance with an arbitrary number of obstacles. However, current DRL algorithms require disproportionally large computational resources to find near-optimal policies compared to the posed control problem when the searchable parameter space becomes large. To combat this, our work delves into the application of Variational AutoEncoders (VAEs) to acquire a generalized, low-dimensional latent encoding of a high-fidelity range-finding sensor, which serves as the exteroceptive input to a DRL agent. The agent's performance, encompassing path-following and collision avoidance, is systematically tested and evaluated within a stochastic simulation environment, presenting a comprehensive exploration of our proposed approach in maritime control systems.
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- 2024
27. Nonlinear Model Predictive Control for Enhanced Navigation of Autonomous Surface Vessels
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Menges, Daniel, Tengesdal, Trym, and Rasheed, Adil
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Electrical Engineering and Systems Science - Systems and Control - Abstract
This article proposes an approach for collision avoidance, path following, and anti-grounding of autonomous surface vessels under consideration of environmental forces based on Nonlinear Model Predictive Control (NMPC). Artificial Potential Fields (APFs) set the foundation for the cost function of the optimal control problem in terms of collision avoidance and anti-grounding. Depending on the risk of a collision given by the resulting force of the APFs, the controller optimizes regarding an adapted heading and travel speed by additionally following a desired path. For this purpose, nonlinear vessel dynamics are used for the NMPC. To extend the situational awareness concerning environmental disturbances impacted by wind, waves, and sea currents, a nonlinear disturbance observer is coupled to the entire NMPC scheme, allowing for the correction of an incorrect vessel motion due to external forces. In addition, the most essential rules according to the Convention on the International Regulations for Preventing Collisions at Sea (COLREGs) are considered. The results of the simulations show that the proposed framework can control an autonomous surface vessel under various challenging scenarios, including environmental disturbances, to avoid collisions and follow desired paths.
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- 2024
28. Computationally and Memory-Efficient Robust Predictive Analytics Using Big Data
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Menges, Daniel and Rasheed, Adil
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Computer Science - Machine Learning ,Computer Science - Artificial Intelligence ,Electrical Engineering and Systems Science - Image and Video Processing - Abstract
In the current data-intensive era, big data has become a significant asset for Artificial Intelligence (AI), serving as a foundation for developing data-driven models and providing insight into various unknown fields. This study navigates through the challenges of data uncertainties, storage limitations, and predictive data-driven modeling using big data. We utilize Robust Principal Component Analysis (RPCA) for effective noise reduction and outlier elimination, and Optimal Sensor Placement (OSP) for efficient data compression and storage. The proposed OSP technique enables data compression without substantial information loss while simultaneously reducing storage needs. While RPCA offers an enhanced alternative to traditional Principal Component Analysis (PCA) for high-dimensional data management, the scope of this work extends its utilization, focusing on robust, data-driven modeling applicable to huge data sets in real-time. For that purpose, Long Short-Term Memory (LSTM) networks, a type of recurrent neural network, are applied to model and predict data based on a low-dimensional subset obtained from OSP, leading to a crucial acceleration of the training phase. LSTMs are feasible for capturing long-term dependencies in time series data, making them particularly suited for predicting the future states of physical systems on historical data. All the presented algorithms are not only theorized but also simulated and validated using real thermal imaging data mapping a ship's engine.
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- 2024
- Full Text
- View/download PDF
29. System for systematic literature review using multiple AI agents: Concept and an empirical evaluation
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Sami, Abdul Malik, Rasheed, Zeeshan, Kemell, Kai-Kristian, Waseem, Muhammad, Kilamo, Terhi, Saari, Mika, Duc, Anh Nguyen, Systä, Kari, and Abrahamsson, Pekka
- Subjects
Computer Science - Software Engineering - Abstract
Systematic Literature Reviews (SLRs) have become the foundation of evidence-based studies, enabling researchers to identify, classify, and combine existing studies based on specific research questions. Conducting an SLR is largely a manual process. Over the previous years, researchers have made significant progress in automating certain phases of the SLR process, aiming to reduce the effort and time needed to carry out high-quality SLRs. However, there is still a lack of AI agent-based models that automate the entire SLR process. To this end, we introduce a novel multi-AI agent model designed to fully automate the process of conducting an SLR. By utilizing the capabilities of Large Language Models (LLMs), our proposed model streamlines the review process, enhancing efficiency and accuracy. The model operates through a user-friendly interface where researchers input their topic, and in response, the model generates a search string used to retrieve relevant academic papers. Subsequently, an inclusive and exclusive filtering process is applied, focusing on titles relevant to the specific research area. The model then autonomously summarizes the abstracts of these papers, retaining only those directly related to the field of study. In the final phase, the model conducts a thorough analysis of the selected papers concerning predefined research questions. We also evaluated the proposed model by sharing it with ten competent software engineering researchers for testing and analysis. The researchers expressed strong satisfaction with the proposed model and provided feedback for further improvement. The code for this project can be found on the GitHub repository at https://github.com/GPT-Laboratory/SLR-automation., Comment: 12 Pages, 7 Figures
- Published
- 2024
30. Knowledge Graphs as Context Sources for LLM-Based Explanations of Learning Recommendations
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Abu-Rasheed, Hasan, Weber, Christian, and Fathi, Madjid
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Computer Science - Artificial Intelligence - Abstract
In the era of personalized education, the provision of comprehensible explanations for learning recommendations is of a great value to enhance the learner's understanding and engagement with the recommended learning content. Large language models (LLMs) and generative AI in general have recently opened new doors for generating human-like explanations, for and along learning recommendations. However, their precision is still far away from acceptable in a sensitive field like education. To harness the abilities of LLMs, while still ensuring a high level of precision towards the intent of the learners, this paper proposes an approach to utilize knowledge graphs (KG) as a source of factual context, for LLM prompts, reducing the risk of model hallucinations, and safeguarding against wrong or imprecise information, while maintaining an application-intended learning context. We utilize the semantic relations in the knowledge graph to offer curated knowledge about learning recommendations. With domain-experts in the loop, we design the explanation as a textual template, which is filled and completed by the LLM. Domain experts were integrated in the prompt engineering phase as part of a study, to ensure that explanations include information that is relevant to the learner. We evaluate our approach quantitatively using Rouge-N and Rouge-L measures, as well as qualitatively with experts and learners. Our results show an enhanced recall and precision of the generated explanations compared to those generated solely by the GPT model, with a greatly reduced risk of generating imprecise information in the final learning explanation.
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- 2024
31. PALO: A Polyglot Large Multimodal Model for 5B People
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Maaz, Muhammad, Rasheed, Hanoona, Shaker, Abdelrahman, Khan, Salman, Cholakal, Hisham, Anwer, Rao M., Baldwin, Tim, Felsberg, Michael, and Khan, Fahad S.
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Computer Science - Computation and Language ,Computer Science - Computer Vision and Pattern Recognition - Abstract
In pursuit of more inclusive Vision-Language Models (VLMs), this study introduces a Large Multilingual Multimodal Model called PALO. PALO offers visual reasoning capabilities in 10 major languages, including English, Chinese, Hindi, Spanish, French, Arabic, Bengali, Russian, Urdu, and Japanese, that span a total of ~5B people (65% of the world population). Our approach involves a semi-automated translation approach to adapt the multimodal instruction dataset from English to the target languages using a fine-tuned Large Language Model, thereby ensuring high linguistic fidelity while allowing scalability due to minimal manual effort. The incorporation of diverse instruction sets helps us boost overall performance across multiple languages especially those that are underrepresented like Hindi, Arabic, Bengali, and Urdu. The resulting models are trained across three scales (1.7B, 7B and 13B parameters) to show the generalization and scalability where we observe substantial improvements compared to strong baselines. We also propose the first multilingual multimodal benchmark for the forthcoming approaches to evaluate their vision-language reasoning capabilities across languages. Code: https://github.com/mbzuai-oryx/PALO., Comment: Technical Report of PALO
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- 2024
32. Digital Twin for Wind Energy: Latest updates from the NorthWind project
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Rasheed, Adil, Stadtmann, Florian, Fonn, Eivind, Tabib, Mandar, Tsiolakis, Vasileios, Panjwani, Balram, Johannessen, Kjetil Andre, Kvamsdal, Trond, San, Omer, Tande, John Olav, Barstad, Idar, Christiansen, Tore, Rishoff, Elling, Frøyd, Lars, and Rasmussen, Tore
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Computer Science - Computers and Society - Abstract
NorthWind, a collaborative research initiative supported by the Research Council of Norway, industry stakeholders, and research partners, aims to advance cutting-edge research and innovation in wind energy. The core mission is to reduce wind power costs and foster sustainable growth, with a key focus on the development of digital twins. A digital twin is a virtual representation of physical assets or processes that uses data and simulators to enable real-time forecasting, optimization, monitoring, control and informed decision-making. Recently, a hierarchical scale ranging from 0 to 5 (0 - Standalone, 1 - Descriptive, 2 - Diagnostic, 3 - Predictive, 4 - Prescriptive, 5 - Autonomous has been introduced within the NorthWind project to assess the capabilities of digital twins. This paper elaborates on our progress in constructing digital twins for wind farms and their components across various capability levels.
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- 2024
33. Insights into the mechanics of pure and bacteria-laden sessile whole blood droplet evaporation
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Roy, Durbar, M, Sophia, Dewangan, Kush K, Rasheed, Abdur, Jain, Siddhant, Singh, Anmol, Chakravortty, Dipshikha, and Basu, Saptarshi
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Physics - Fluid Dynamics - Abstract
We study the mechanics of sessile blood drop evaporation using optical diagnostics, theoretical analysis, and micro/nano-characterization. The transient evaporation process has three major phases (A, B, and C) based on the evaporation rate. Phase A is the fastest, where edge evaporation dominates and forms a gelated three-phase contact line. Gelation results from sol-gel phase transition that occurs due to the accumulation of red blood cells, as they get transported due to outward capillary flow generated during drop evaporation. The intermediate phase B consists of a gelation front propagating radially inwards due to the combined effect of outward capillary flow and drop height reduction evaporating in pinned mode, forming a wet gel phase. We unearthed that the gelation of the entire droplet occurs in Phase B, and the gel formed contains trace amounts of water that are detectable in our experiments. Phase C is the final slowest stage of evaporation, where the wet gel transforms into a dry gel and leads to desiccation induced stress, forming diverse crack patterns in the dried blood drop precipitate. We observe radial and orthoradial cracks in the precipitate's thicker region, mud-flat cracks in the drop center, and the outer contact line where thickness and curvature are relatively small. We also study the evaporation of bacteria-laden droplets to simulate bacterial infection in human blood and show that the drop evaporation rate and final dried residue pattern do not change appreciably within the parameter variation of the bacterial concentration typically found in bacterial infection of living organisms.
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- 2024
34. Simultaneous real and momentum space electron diffraction from a fullerene molecule
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R., Aiswarya, Shaik, Rasheed, Jose, Jobin, Varma, Hari R., and Chakraborty, Himadri S.
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Physics - Atomic and Molecular Clusters ,Physics - Atomic Physics - Abstract
Plane-wave electrons undergo momentum transfer as they scatter off a target in overlapping spherical waves. The transferred momentum leads to target structural information to be encoded in angle and energy differential scattering. For symmetric, periodic or structured targets this can engender diffraction in the electron intensity both in real (angular) and in momentum space. With the example of elastic scattering from C60 we show this simultaneous manifestation of diffraction signatures. The simulated angle-momentum diffractograms can be imaged in experiments with a two-dimensional detector and an energy-tunable electron gun. The result may inspire invention of technology to extend scopes of electron diffraction from molecules and nanostructures, open a direction of electron crystallography using the momentum-differential diffraction, and motivate an approach to control the time delay between the pump laser-pulse and the probe electron-pulse by tuning the electron impact-speed in ultrafast electron diffraction experiments., Comment: 6 pages, 5 figures
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- 2024
35. CodePori: Large Scale Model for Autonomous Software Development by Using Multi-Agents
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Rasheed, Zeeshan, Waseem, Muhammad, Saari, Mika, Systä, Kari, and Abrahamsson, Pekka
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Computer Science - Software Engineering - Abstract
Large Language Models (LLMs) and Generative Pre-trained Transformers (GPTs) are reshaping the field of Software Engineering (SE). Existing LLM-based multi-agent systems have successfully resolved simple dialogue tasks. However, the potential of LLMs for more complex tasks, such as automated code generation for large and complex projects, have been explored in only a few existing works. This paper introduces CodePori, a novel model designed to automate code generation for extensive and complex software projects based on natural language prompts. We employ LLM-based multi-AI agents to handle creative and challenging tasks in autonomous software development. Each agent engages with a specific task, including system design, code development, code review, code verification, and test engineering. We show in the paper that CodePori is able to generate running code for large-scale projects, completing the entire software development process in minutes rather than hours, and at a cost of a few dollars. It identifies and mitigates potential security vulnerabilities and corrects errors while maintaining a solid code performance level. We also conducted an evaluation of CodePori against existing solutions using HumanEval and the Massively Multitask Benchmark for Python (MBPP) benchmark. The results indicate that CodePori improves upon the benchmarks in terms of code accuracy, efficiency, and overall performance. For example, CodePori improves the pass@1 metric on HumanEval to 87.5% and on MBPP to 86.5%, representing a clear improvement over the existing models. We also assessed CodePori's performance through practitioner evaluations, with 91% expressing satisfaction with the model's performance., Comment: 10 pages and 3 figures
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- 2024
36. Can Large Language Models Serve as Data Analysts? A Multi-Agent Assisted Approach for Qualitative Data Analysis
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Rasheed, Zeeshan, Waseem, Muhammad, Ahmad, Aakash, Kemell, Kai-Kristian, Xiaofeng, Wang, Duc, Anh Nguyen, and Abrahamsson, Pekka
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Computer Science - Software Engineering - Abstract
Recent advancements in Large Language Models (LLMs) have enabled collaborative human-bot interactions in Software Engineering (SE), similar to many other professions. However, the potential benefits and implications of incorporating LLMs into qualitative data analysis in SE have not been completely explored. For instance, conducting qualitative data analysis manually can be a time-consuming, effort-intensive, and error-prone task for researchers. LLM-based solutions, such as generative AI models trained on massive datasets, can be utilized to automate tasks in software development as well as in qualitative data analysis. To this end, we utilized LLMs to automate and expedite the qualitative data analysis processes. We employed a multi-agent model, where each agent was tasked with executing distinct, individual research related activities. Our proposed model interpreted large quantities of textual documents and interview transcripts to perform several common tasks used in qualitative analysis. The results show that this technical assistant speeds up significantly the data analysis process, enabling researchers to manage larger datasets much more effectively. Furthermore, this approach introduces a new dimension of scalability and accuracy in qualitative research, potentially transforming data interpretation methodologies in SE., Comment: 9 pages and 2 figures
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- 2024
37. Experimental Interface for Multimodal and Large Language Model Based Explanations of Educational Recommender Systems
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Abu-Rasheed, Hasan, Weber, Christian, and Fathi, Madjid
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Computer Science - Human-Computer Interaction - Abstract
In the age of artificial intelligence (AI), providing learners with suitable and sufficient explanations of AI-based recommendation algorithm's output becomes essential to enable them to make an informed decision about it. However, the rapid development of AI approaches for educational recommendations and their explainability is not accompanied by an equal level of evidence-based experimentation to evaluate the learning effect of those explanations. To address this issue, we propose an experimental web-based tool for evaluating multimodal and large language model (LLM) based explainability approaches. Our tool provides a comprehensive set of modular, interactive, and customizable explainability elements, which researchers and educators can utilize to study the role of individual and hybrid explainability methods. We design a two-stage evaluation of the proposed tool, with learners and with educators. Our preliminary results from the first stage show high acceptance of the tool's components, user-friendliness, and an induced motivation to use the explanations for exploring more information about the recommendation.
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- 2024
38. Building Contextual Knowledge Graphs for Personalized Learning Recommendations using Text Mining and Semantic Graph Completion
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Abu-Rasheed, Hasan, Dornhöfer, Mareike, Weber, Christian, Kismihók, Gábor, Buchmann, Ulrike, and Fathi, Madjid
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Computer Science - Information Retrieval - Abstract
Modelling learning objects (LO) within their context enables the learner to advance from a basic, remembering-level, learning objective to a higher-order one, i.e., a level with an application- and analysis objective. While hierarchical data models are commonly used in digital learning platforms, using graph-based models enables representing the context of LOs in those platforms. This leads to a foundation for personalized recommendations of learning paths. In this paper, the transformation of hierarchical data models into knowledge graph (KG) models of LOs using text mining is introduced and evaluated. We utilize custom text mining pipelines to mine semantic relations between elements of an expert-curated hierarchical model. We evaluate the KG structure and relation extraction using graph quality-control metrics and the comparison of algorithmic semantic-similarities to expert-defined ones. The results show that the relations in the KG are semantically comparable to those defined by domain experts, and that the proposed KG improves representing and linking the contexts of LOs through increasing graph communities and betweenness centrality.
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- 2024
- Full Text
- View/download PDF
39. Supporting Student Decisions on Learning Recommendations: An LLM-Based Chatbot with Knowledge Graph Contextualization for Conversational Explainability and Mentoring
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Abu-Rasheed, Hasan, Abdulsalam, Mohamad Hussam, Weber, Christian, and Fathi, Madjid
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Computer Science - Artificial Intelligence ,Computer Science - Computation and Language ,Computer Science - Human-Computer Interaction - Abstract
Student commitment towards a learning recommendation is not separable from their understanding of the reasons it was recommended to them; and their ability to modify it based on that understanding. Among explainability approaches, chatbots offer the potential to engage the student in a conversation, similar to a discussion with a peer or a mentor. The capabilities of chatbots, however, are still not sufficient to replace a human mentor, despite the advancements of generative AI (GenAI) and large language models (LLM). Therefore, we propose an approach to utilize chatbots as mediators of the conversation and sources of limited and controlled generation of explanations, to harvest the potential of LLMs while reducing their potential risks at the same time. The proposed LLM-based chatbot supports students in understanding learning-paths recommendations. We use a knowledge graph (KG) as a human-curated source of information, to regulate the LLM's output through defining its prompt's context. A group chat approach is developed to connect students with human mentors, either on demand or in cases that exceed the chatbot's pre-defined tasks. We evaluate the chatbot with a user study, to provide a proof-of-concept and highlight the potential requirements and limitations of utilizing chatbots in conversational explainability.
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- 2024
40. Digital Twin of Autonomous Surface Vessels for Safe Maritime Navigation Enabled through Predictive Modeling and Reinforcement Learning
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Menges, Daniel, Von Brandis, Andreas, and Rasheed, Adil
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Computer Science - Robotics ,Electrical Engineering and Systems Science - Systems and Control - Abstract
Autonomous surface vessels (ASVs) play an increasingly important role in the safety and sustainability of open sea operations. Since most maritime accidents are related to human failure, intelligent algorithms for autonomous collision avoidance and path following can drastically reduce the risk in the maritime sector. A DT is a virtual representative of a real physical system and can enhance the situational awareness (SITAW) of such an ASV to generate optimal decisions. This work builds on an existing DT framework for ASVs and demonstrates foundations for enabling predictive, prescriptive, and autonomous capabilities. In this context, sophisticated target tracking approaches are crucial for estimating and predicting the position and motion of other dynamic objects. The applied tracking method is enabled by real-time automatic identification system (AIS) data and synthetic light detection and ranging (Lidar) measurements. To guarantee safety during autonomous operations, we applied a predictive safety filter, based on the concept of nonlinear model predictive control (NMPC). The approaches are implemented into a DT built with the Unity game engine. As a result, this work demonstrates the potential of a DT capable of making predictions, playing through various what-if scenarios, and providing optimal control decisions according to its enhanced SITAW.
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- 2024
41. EWS time delay in low energy e C60 elastic scattering
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R., Aiswarya, Shaik, Rasheed, Jose, Jobin, Varma, Hari R., and Chakraborty, Himadri S.
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Mathematics - Numerical Analysis ,Quantum Physics - Abstract
Time delay in a projectile-target scattering is a fundamental tool in understanding their interactions by probing the temporal domain. The present study focuses on computing and analyzing the Eisenbud-Wigner-Smith (EWS) time delay in low energy elastic e C60 scattering. The investigation is carried out in the framework of a non-relativistic partial wave analysis (PWA) technique. The projectile-target interaction is described in (1) Density Functional Theory (DFT) and (2) Annular Square Well (ASW) static model, and their final results are compared in details. The impact of polarization on resonant and non-resonant time delay is also investigated.
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- 2024
42. Data Integration Framework for Virtual Reality Enabled Digital Twins
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Stadtmann, Florian, Mahalingam, Hary Pirajan, and Rasheed, Adil
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Electrical Engineering and Systems Science - Signal Processing - Abstract
Digital twins are becoming increasingly popular across many industries for real-time data streaming, processing, and visualization. They allow stakeholders to monitor, diagnose, and optimize assets. Emerging technologies used for immersive visualization, such as virtual reality, open many new possibilities for intuitive access and monitoring of remote assets through digital twins. This is specifically relevant for floating wind farms, where access is often limited. However, the integration of data from multiple sources and access through different devices including virtual reality headsets can be challenging. In this work, a data integration framework for static and real-time data from various sources on the assets and their environment is presented that allows collecting and processing of data in Python and deploying the data in real-time through Unity on different devices, including virtual reality headsets. The integration of data from terrain, weather, and asset geometry is explained in detail. A real-time data stream from the asset to the clients is implemented and reviewed, and instructions are given on the code required to connect Python scripts to any Unity application across devices. The data integration framework is implemented for a digital twin of a floating wind turbine and an onshore wind farm, and the potential for future research is discussed.
- Published
- 2024
43. A quadratic regression model to quantify certain latest corona treatment drug molecules based on coindices of M-polynomial
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Zaman, Shahid, Rasheed, Sadaf, and Alamer, Ahmed
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- 2024
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44. Sameness and/or Otherness: What Matters More for Narcissist CEOs in the Context of Non-market Strategy?
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Al-Shammari, Marwan, Banerjee, Soumendra Nath, Rasheed, Abdul, Al-Shammari, Hussam, and Swimberghe, Krist
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- 2024
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45. Synthesis of NiO Nanoparticles Using Laser Ablation in Liquid for Photodetector Application
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Hmmoodi, Ahmed M., Nayef, Uday M., and Rasheed, Mohammed
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- 2024
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46. Designing NiCoS/CNTs composites for highly efficient bifunctional electrocatalyst in water splitting
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Yousaf, Sheraz, Abdou, Safaa N., Rasheed, Tabinda, Ibrahim, Mohamed M., Shakir, Imran, El-Bahy, Salah M., Ahmad, Iqbal, Shahid, Muhammad, and Warsi, Muhammad Farooq
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- 2024
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47. Tuberculosis in otherwise healthy adults with inherited TNF deficiency
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Arias, Andrés A., Neehus, Anna-Lena, Ogishi, Masato, Meynier, Vincent, Krebs, Adam, Lazarov, Tomi, Lee, Angela M., Arango-Franco, Carlos A., Yang, Rui, Orrego, Julio, Corcini Berndt, Melissa, Rojas, Julian, Li, Hailun, Rinchai, Darawan, Erazo-Borrás, Lucia, Han, Ji Eun, Pillay, Bethany, Ponsin, Khoren, Chaldebas, Matthieu, Philippot, Quentin, Bohlen, Jonathan, Rosain, Jérémie, Le Voyer, Tom, Janotte, Till, Amarajeeva, Krishnajina, Soudée, Camille, Brollo, Marion, Wiegmann, Katja, Marquant, Quentin, Seeleuthner, Yoann, Lee, Danyel, Lainé, Candice, Kloos, Doreen, Bailey, Rasheed, Bastard, Paul, Keating, Narelle, Rapaport, Franck, Khan, Taushif, Moncada-Vélez, Marcela, Carmona, María Camila, Obando, Catalina, Alvarez, Jesús, Cataño, Juan Carlos, Martínez-Rosado, Larry Luber, Sanchez, Juan P., Tejada-Giraldo, Manuela, L’Honneur, Anne-Sophie, Agudelo, María L., Perez-Zapata, Lizet J., Arboleda, Diana M., Alzate, Juan Fernando, Cabarcas, Felipe, Zuluaga, Alejandra, Pelham, Simon J., Ensser, Armin, Schmidt, Monika, Velásquez-Lopera, Margarita M., Jouanguy, Emmanuelle, Puel, Anne, Krönke, Martin, Ghirardello, Stefano, Borghesi, Alessandro, Pahari, Susanta, Boisson, Bertrand, Pittaluga, Stefania, Ma, Cindy S., Emile, Jean-François, Notarangelo, Luigi D., Tangye, Stuart G., Marr, Nico, Lachmann, Nico, Salvator, Hélène, Schlesinger, Larry S., Zhang, Peng, Glickman, Michael S., Nathan, Carl F., Geissmann, Frédéric, Abel, Laurent, Franco, José Luis, Bustamante, Jacinta, Casanova, Jean-Laurent, and Boisson-Dupuis, Stéphanie
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- 2024
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48. Psychological Factors Related to Treatment Outcomes in Head and Neck Cancer
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Mäkitie, Antti A., Alabi, Rasheed Omobolaji, Pulkki-Råback, Laura, Almangush, Alhadi, Beitler, Jonathan J., Saba, Nabil F., Strojan, Primož, Takes, Robert, Guntinas-Lichius, Orlando, and Ferlito, Alfio
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- 2024
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49. Influence of salt types and honey addition on physicochemical properties, cholesterol oxidation products, microbial profile and sensory attributes of sun-dried beef jerky
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Sulaimon, Rasheed O. and Adeyemi, Kazeem D.
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- 2024
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50. Growth in children with nephrotic syndrome: a post hoc analysis of the NEPTUNE study
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Maniar, Aesha, Gipson, Debbie S., Brady, Tammy, Srivastava, Tarak, Selewski, David T., Greenbaum, Larry A., Dell, Katherine M., Kaskel, Frederick, Massengill, Susan, Tran, Cheryl, Trachtman, Howard, Lafayette, Richard, Almaani, Salem, Hingorani, Sangeeta, Wang, Chia-shi, Reidy, Kimberly, Cara-Fuentes, Gabriel, Gbadegesin, Rasheed, Myers, Kevin, and Sethna, Christine B.
- Published
- 2024
- Full Text
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