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1.
The massive number of Internet of Things (IoT) devices connected to the Internet is continuously increasing. The operations of these devices rely on consuming huge amounts of energy. Power limitation is a major issue hindering the operation of IoT applications and services. To improve operational visibility, Low-power devices which constitute IoT networks, drive the need for sustainable sources of energy to carry out their tasks for a prolonged period of time. Moreover, the means to ensure energy sustainability and QoS must consider the stochastic nature of the energy supplies and dynamic IoT environments. Artificial Intelligence (AI) enhanced protocols and algorithms are capable of predicting and forecasting demand as well as providing leverage at different stages of energy use to supply. AI will improve the efficiency of energy infrastructure and decrease waste in distributed energy systems, ensuring their long-term viability. In this paper, we conduct a survey to explore enhanced AI-based solutions to achieve energy sustainability in IoT applications. AI is relevant through the integration of various Machine Learning (ML) and Swarm Intelligence (SI) techniques in the design of existing protocols. ML mechanisms used in the literature include variously supervised and unsupervised learning methods as well as reinforcement learning (RL) solutions. The survey constitutes a complete guideline for readers who wish to get acquainted with recent development and research advances in AI-based energy sustainability in IoT Networks. The survey also explores the different open issues and challenges.  相似文献   
2.
刘韵 《体育科学》2021,(1):21-28
在“数字体育”背景下,运动员数据处理成为现代体育发展的关键。运动员个人数据的数据主体和数据控制者之间的权利义务分配是运动员数据处理的基础。数据主体权利的扩张和数据控制者义务的强化是《中华人民共和国民法典》和《通用数据保护条例》所遵循的基本价值导向。运动员数据处理的具体建构还应在体育领域行业化和特殊化基础上,遵循合法公平透明原则、目的限制原则、数据最小化原则、准确性原则、存储有限化原则、完整和保密原则,以此厘清运动员和数据控制者在运动员数据处理中的权利义务关系,保障运动员的数据权益。  相似文献   
3.
孙宁 《档案管理》2020,(3):12-13
在大数据视域下,以档案管理理论和信息系统安全理论为基础,参考国家相关法规及标准,结合档案管理工作实务,研究当下档案管理工作中的风险,在此基础上初步构建起档案安全管理体系,并对可引入该体系的实用技术进行分析。  相似文献   
4.
近年来,为应对学术出版数字化变革引发的学术资源垄断和用户需求变化,国外的高校图书馆已经投入到学术出版数字化活动中去,并积累了丰富的技术经验,成为了关键参与者。本文以《图书馆出版名录》为参考进行数据统计分析,分别从内容收集、内容存储、开放存取和出版平台等方面展示国外高校图书馆学术出版数字化转型路径,并提出我国高校图书馆可以从利用高校资源、谋求合作伙伴、支持开放存取、合理选择保存系统和出版平台等方面进行学术出版数字化实践。  相似文献   
5.
ABSTRACT

New data-driven technologies appear to promise a new era of accuracy and objectivity in scientifically-informed educational policy and governance. The data-scientific objectivity sought by education policy, however, is the result of practices of standardization and quantification deployed to settle controversies about the definition and measurement of human qualities by rendering them as categories and numbers. Focusing on the emerging policy agenda of ‘social and emotional learning and skills,’ this paper examines the practices of ‘objectivity-making’ underpinning this new field. Objectivity-making depends on three translations of (1) scientific expertise into standardized and enumerable definitions, (2) standardization into measurement technologies, and (3) the data produced through measurement technologies into objective policy-relevant knowledge, which consolidates a market in SEL technologies. The paper sheds light on knowledge-making practices in the era of big data and policy science, and their enduring reliance on the precarious construction of objectivity as a key legitimator of policy-relevant scientific knowledge and ‘evidence-based’ education governance.  相似文献   
6.
Internet of things (IoT) coupled with mobile cloud computing has made a paradigm shift in the service sector. IoT-assisted mobile cloud based e-healthcare services are making giant strides and are likely to change the conventional ways of healthcare service delivery. Though numerous approaches for preventing unauthorized access to information exchanged between a mobile phone and cloud platform do exist, but there is no security mechanism to prevent unauthorized access by the cloud administrators. With an aim to ensure security of client data such as Electronic Patient Records (EPR), we propose a novel high-capacity and reversible data hiding approach for securely embedding EPR within the medical images using Optimal Pixel Repetition (OPR). OPR converts every pixel of the input image to a 2 × 2 block to facilitate reversibility by ensuring all the pixels in a 2 × 2 block to have different values. Since a 2 × 2 block is comprised of 4-pixel elements, which could be arranged in sixteen possible ways; we generate a lookup table corresponding to sixteen possible positions of pixels. EPR hiding in each block is achieved by permuting the pixels of a block according to the four-bit word of secret data, resulting in a histogram invariant stego image. The histogram invariance improves the robustness of the proposed scheme to statistical attacks. A stego image is said to hide embedded data securely, when it provides better imperceptivity for an appreciably high payload. Thus, while using information embedding approach for securing client data on a mobile-cloud platform, high imperceptivity is a desirable feature. Experimental results show that average PSNR obtained is 42 dB for payload 1.25 bpp by our scheme, showing its effectiveness for preventing unauthorized access to client’s sensitive data.  相似文献   
7.
从高职数据库类课程开设的现状入手,分析课程在教学中存在的问题和时代对于新技能的追求。根据毕业生信息反馈中分析企业对课程的要求,通过整合教学内容,在不同专业中调整应用教学不同的课程内容体系,采用不同教学方法,为高职开设数据库类课程的专业设置课程体系提供思路。  相似文献   
8.
Data-driven innovation (DDI) gains its prominence due to its potential to transform innovation in the age of AI. Digital giants Amazon, Alibaba, Google, Apple, and Facebook, enjoy sustainable competitive advantages from DDI. However, little is known about algorithmic biases that may present in the DDI process, and result in unjust, unfair, or prejudicial data product developments. Thus, this guest editorial aims to explore the sources of algorithmic biases across the DDI process using a systematic literature review, thematic analysis and a case study on the Robo-Debt scheme in Australia. The findings show that there are three major sources of algorithmic bias: data bias, method bias and societal bias. Theoretically, the findings of our study illuminate the role of the dynamic managerial capability to address various biases. Practically, we provide guidelines on addressing algorithmic biases focusing on data, method and managerial capabilities.  相似文献   
9.
施振佺 《科技管理研究》2020,40(11):148-154
通过研究科技成果转化的模式和现状,分析基于大数据的科技创新成果转化平台的结构、要素、特征,研究提出通过科技创新成果精准转化模式来提高高校和科研院所科技创新成果的转化效率。  相似文献   
10.
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