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Agile Development Methods in Software Engineering and Their Efficiency Analysis
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作者 shuntao tang Wei Chen 《计算机科学与技术汇刊(中英文版)》 2024年第1期8-11,共4页
This paper delves into Agile Development Methods in Software Engineering,contrasting them with the traditional Waterfall model and analyzing their efficiency.Agile methods,known for their adaptability and customer-cen... This paper delves into Agile Development Methods in Software Engineering,contrasting them with the traditional Waterfall model and analyzing their efficiency.Agile methods,known for their adaptability and customer-centric approach,have gained prominence in the fast-paced software development industry.These methods,including Scrum,Kanban,and Extreme Programming(XP),are characterized by iterative cycles,collaborative efforts,and a focus on rapid delivery and quality improvement.The paper compares these agile methodologies to the sequential and rigid Waterfall model,highlighting agile’s superior flexibility,adaptability,and responsiveness to changing requirements.It emphasizes the importance of customer involvement in agile processes,which leads to higher satisfaction and better alignment with user expectations.The analysis reveals that agile methods not only enhance the speed of delivery but also improve the overall quality of the software product.The paper concludes that agile methodologies are more effective in today's dynamic software development environment,providing a robust framework for managing complex projects and ensuring the delivery of high-quality,relevant software solutions. 展开更多
关键词 Agile Development Methods Software Engineering SCRUM KANBAN Extreme Programming
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Research on Image Recognition Using Deep Learning Techniques
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作者 shuntao tang Wei Chen 《控制工程期刊(中英文版)》 2024年第1期1-5,共5页
This study delves into the applications,challenges,and future directions of deep learning techniques in the field of image recognition.Deep learning,particularly Convolutional Neural Networks(CNNs),Recurrent Neural Ne... This study delves into the applications,challenges,and future directions of deep learning techniques in the field of image recognition.Deep learning,particularly Convolutional Neural Networks(CNNs),Recurrent Neural Networks(RNNs),and Generative Adversarial Networks(GANs),has become key to enhancing the precision and efficiency of image recognition.These models are capable of processing complex visual data,facilitating efficient feature extraction and image classification.However,acquiring and annotating high-quality,diverse datasets,addressing imbalances in datasets,and model training and optimization remain significant challenges in this domain.The paper proposes strategies for improving data augmentation,optimizing model architectures,and employing automated model optimization tools to address these challenges,while also emphasizing the importance of considering ethical issues in technological advancements.As technology continues to evolve,the application of deep learning in image recognition will further demonstrate its potent capability to solve complex problems,driving society towards more inclusive and diverse development. 展开更多
关键词 Deep Learning Techniques Image Recognition Convolutional Neural Networks Recurrent Neural Networks Generative Adversarial Networks
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Trends and Challenges in the Application of Artificial Intelligence in the Healthcare Sector
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作者 shuntao tang Wei Chen 《生物工程前沿(中英文版)》 2024年第1期1-4,共4页
The integration of Artificial Intelligence(AI)in healthcare is setting the stage for a transformative shift in how patient care is delivered,research is conducted,and operations are managed.Propelled by the exponentia... The integration of Artificial Intelligence(AI)in healthcare is setting the stage for a transformative shift in how patient care is delivered,research is conducted,and operations are managed.Propelled by the exponential growth of data,computational advancements,and AI innovations,this integration promises a new era of precision medicine with highly personalized and effective treatment strategies.However,the journey towards seamlessly embedding AI into healthcare systems is complex,marked by challenges such as ensuring data privacy and security,addressing ethical considerations,and overcoming barriers to technology integration and adoption.This paper delves into the current trends driving AI in healthcare,including machine learning,natural language processing,robotics,and the Internet of Medical Things,while also tackling the significant challenges these innovations present.It further explores strategies for navigating these obstacles,aiming to pave the way for the successful adoption of AI technologies that enhance healthcare delivery and patient outcomes.In doing so,this work underscores the critical role of collaborative efforts among stakeholders and the need for robust frameworks to ensure AI's ethical,secure,and effective integration into healthcare. 展开更多
关键词 Artificial Intelligence Healthcare Precision Medicine CHALLENGES STRATEGIES
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Optimization Techniques for GPU-Based Parallel Programming Models in High-Performance
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作者 shuntao tang Wei Chen 《信息工程期刊(中英文版)》 2024年第1期7-11,共5页
This study embarks on a comprehensive examination of optimization techniques within GPU-based parallel programming models,pivotal for advancing high-performance computing(HPC).Emphasizing the transition of GPUs from g... This study embarks on a comprehensive examination of optimization techniques within GPU-based parallel programming models,pivotal for advancing high-performance computing(HPC).Emphasizing the transition of GPUs from graphic-centric processors to versatile computing units,it delves into the nuanced optimization of memory access,thread management,algorithmic design,and data structures.These optimizations are critical for exploiting the parallel processing capabilities of GPUs,addressingboth the theoretical frameworks and practical implementations.By integrating advanced strategies such as memory coalescing,dynamic scheduling,and parallel algorithmic transformations,this research aims to significantly elevate computational efficiency and throughput.The findings underscore the potential of optimized GPU programming to revolutionize computational tasks across various domains,highlighting a pathway towards achieving unparalleled processing power and efficiency in HPC environments.The paper not only contributes to the academic discourse on GPU optimization but also provides actionable insights for developers,fostering advancements in computational sciences and technology. 展开更多
关键词 Optimization Techniques GPU-Based Parallel Programming Models High-Performance Computing
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