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[1] Overview of Complex Intelligent System Reliability Technology - Springer — 2.1 Definition and Characteristics of Intelligent System. Wang [] et al. argue that an intelligent system is an advanced system for implementing complex cognitive abilities in machines, from reflexive, imperative, and adaptive intelligence aggregation to autonomous and cognitive intelligence.Intelligent systems are often composed of perception modules, decision-making modules, and control
[2] Intelligent Systems in AI - GeeksforGeeks — Tutorials Intelligent systems in artificial intelligence (AI) represent a broad class of systems equipped with algorithms that can perform tasks typically requiring human intelligence. An intelligent system in AI is a technology equipped with the capability to gather data, process it, and make decisions or perform actions based on that data. At its core, an intelligent system mimics the cognitive functions of human beings, such as learning from experience, understanding complex concepts, solving problems, and making decisions. Intelligent systems integrate various components of AI technology, including machine learning algorithms, natural language processing, robotics, and expert systems, among others: Machine learning algorithms allow systems to learn from data patterns and improve their decision-making over time without being explicitly programmed.
[3] Intelligent Systems: What are they, how do they work and why ... - Algotive — Intelligent systems are the answer to the accelerated technological growth of recent years and the needs of people and organizations in an increasingly interconnected world. In this context, intelligent systems involve various physical, digital and human parts to achieve a common goal. The rearrangement, interaction and learning between all
[4] What Are Intelligent Systems | Computer Science & Engineering — Intelligent systems are technologically advanced machines that perceive and respond to the world around them. Intelligent systems can take many forms, from automated vacuums such as the Roomba to facial recognition programs to Amazon's personalized shopping suggestions. Our department focuses on two
[6] Intelligent Systems: How They Work and Why They Matter - EMB Blogs — Benefits of Intelligent Systems Increased Efficiency and Productivity. Intelligent systems streamline operations, making processes faster and more accurate. They reduce human error, allowing employees to focus on more strategic tasks. By automating routine activities, these systems enhance overall productivity and efficiency within an organization.
[8] Machine Learning and AI in Robotics: Shaping the future of digital ... — Machine Learning and AI in Robotics: Shaping the future of digital advancements - Stefanini To understand the ways machine learning, AI, and robotics are shaping the future of digital advancements, let’s first undertake a short review the disciplines involved and the areas of robotic processing that enable robots to perform complex tasks and improve their performance over time. The synergy between machine learning, AI, and robotics is driving innovation and leading to the development of robots that can learn from data and improve their performance over time, make intelligent decisions based on real-time information, navigate complex environments autonomously, perform tasks with greater precision and dexterity, and work alongside humans safely and effectively.
[9] Artificial Intelligence in Robotics: Practices and Applications — AI encompasses the development of algorithms and systems that can mimic cognitive functions such as learning and problem-solving, while robotics involves the design and creation of machines that can perform tasks autonomously or semi-autonomously. This article will delve deeply into the practical applications of AI in robotics, highlighting how these intelligent systems are being deployed across various sectors, the challenges they face, and the potential future developments that could arise from this fusion of technologies. The incorporation of AI algorithms into robots has led to remarkable advancements in automation and intelligent behavior. From enhancing operational efficiency to enabling intelligent decision-making, the applications of AI in robotics are revolutionizing industries such as manufacturing, healthcare, and agriculture.
[10] Integration of Machine Learning and Optimization for Robot Learning — In fact the integration of ML and optimization reported to be able to dramatically increase the decision-making quality and learning ability in decision systems. Here the novel integration of ML and optimization which can be applied to the complex and dynamic contexts of Robot learning is described.
[13] Data Quality Management: Best Practices and Strategies — In this article, we will explore effective strategies and key practices for maintaining high data quality management standards within your organization. Data Quality Management (DQM) is essential for ensuring data accuracy, reliability, and compliance, forming the backbone of effective decision-making. By defining and adhering to these rules, organizations can maintain high data quality standards and support effective data management. Tools like Qualytics offer a suite of enterprise-grade features for data quality monitoring and management, ensuring data is accurate, consistent, reliable, and compliant with standards. A data governance policy established by the board ensures consistent and standardized management of data quality across the organization. Compliance and risk management are supported by effective data quality management procedures, ensuring that data is accurate, reliable, and meets regulatory standards.
[14] Data Quality vs. Data Quantity: The Crucial Balance for Artificial ... — In the realm of artificial intelligence, data quality versus data quantity is a nuanced and dynamic discussion. Both aspects are essential for the success of AI applications. Data quantity provides the volume necessary for robust training and validation, while data quality ensures that AI models are accurate, reliable, and ethically sound.
[15] Data Quality vs. Quantity - Emlii — Data quantity also plays a significant role: ... Machine Learning and AI: Data quantity is essential for training machine learning models and artificial intelligence algorithms. More data allows models to learn and generalize better, improving predictive accuracy and performance. ... both data quality and quantity are essential for making
[19] Cognitive Architecture for Adaptive Learning Systems: Modeling Human ... — This paper proposes a cognitive architecture framework for adaptive learning systems that models human behavior, aiming to enhance the effectiveness and responsiveness of such systems. The study explores the integration of cognitive theories, including working memory, attention mechanisms, and learning strategies, into the design of intelligent
[42] The Evolution of Intelligent Systems: From Concept to Reality — The conceptual roots of Intelligent Systems, meaning various forms of Artificial Intelligence and AI Models, are considerably wayward. From the days of early theoretical ideas to their applications in today's world, intelligent systems, many of which are driven by advanced models of AI, have evolved with rapid development in technology and increased understanding of artificial intelligence
[44] The History of Artificial Intelligence - IBM — Judea Pearl publishes Probabilistic Reasoning in Intelligent Systems, revolutionizing how AI processes information under uncertainty.20 This work introduces Bayesian networks, a formalism for representing complex probability models and the algorithms for performing inference within them. Unlike rule-based systems, Jabberwacky learns from human interactions to generate more natural dialogue, paving the way for later conversational AI models. By refining the backpropagation process and demonstrating the power of CNNs for image and pattern recognition, LeCun and Bengio's research set the stage for modern deep learning techniques used in a wide range of AI applications today. This work is instrumental in accelerating the adoption of GPUs in deep learning, leading to the breakthroughs in the 2010s that power modern AI applications in fields such as computer vision and natural language processing.
[45] Intelligent Systems: What are they, how do they work and why ... - Algotive — Intelligent systems solve complex problems automatically with the collaboration of people and technologies such as Big Data, IoT, AI, AR, etc. ... INTELLIGENT SYSTEMS FUNCTIONALITY History of Industry 4.0. Industry 4.0 or also known as IoT is a new phase within the industrial revolution focused on interconnectivity,
[47] What is new with Artificial Intelligence? Human-agent interactions ... — Finally, intelligent systems are systems capable of performing human cognitive tasks, and for which the issue of opacity or the "black box" is problematic - i.e., some of the "reasoning" produced by intelligent programs is untraceable and/or confusing to the human mind ... and the potential impact of these changes on human agency. We
[51] The History of Artificial Intelligence - IBM — Judea Pearl publishes Probabilistic Reasoning in Intelligent Systems, revolutionizing how AI processes information under uncertainty.20 This work introduces Bayesian networks, a formalism for representing complex probability models and the algorithms for performing inference within them. Unlike rule-based systems, Jabberwacky learns from human interactions to generate more natural dialogue, paving the way for later conversational AI models. By refining the backpropagation process and demonstrating the power of CNNs for image and pattern recognition, LeCun and Bengio's research set the stage for modern deep learning techniques used in a wide range of AI applications today. This work is instrumental in accelerating the adoption of GPUs in deep learning, leading to the breakthroughs in the 2010s that power modern AI applications in fields such as computer vision and natural language processing.
[52] 114 Milestones In The History Of Artificial Intelligence (AI) - Forbes — Share to Facebook Share to Twitter Share to Linkedin Sixty-five years ago, 10 computer scientists convened in Dartmouth, NH, for a workshop on artificial intelligence, defined a year earlier in the proposal for the workshop as “making a machine behave in ways that would be called intelligent if a human were so behaving.” It was the event that “initiated AI as a research discipline,” which grew to encompass multiple approaches, from the symbolic AI of the 1950s and 1960s to the statistical analysis and machine learning of the 1970s and 1980s to today’s deep learning, the statistical analysis of “big data.” But the preoccupation with developing practical methods for making machines behave as if they were humans emerged already 7 centuries ago. HAL (Heuristically programmed ALgorithmic computer) 9000, a sentient artificial general intelligence ... [+] computer and star of the 1968 film 2001: A Space Odyssey getty 1308 Catalan poet and theologian Ramon Llull publishes Ars generalis ultima (The Ultimate General Art), further perfecting his method of using paper-based mechanical means to create new knowledge from combinations of concepts. 1666 Mathematician and philosopher Gottfried Leibniz publishes Dissertatio de arte combinatoria (On the Combinatorial Art), following Ramon Llull in proposing an alphabet of human thought and arguing that all ideas are nothing but combinations of a relatively small number of simple concepts. 1854 George Boole argues that logical reasoning could be performed systematically in the same manner as solving a system of equations. 1914 The Spanish engineer Leonardo Torres y Quevedo demonstrates the first chess-playing machine, capable of king and rook against king endgames without any human intervention.
[53] The History of Artificial Intelligence | by Gianpiero Andrenacci ... — As computational power increased, more sophisticated AI algorithms could be developed and executed, driving advancements in machine learning, deep learning, and natural language processing. For decades, the growth in CPU capabilities supported the rise of AI, but modern AI breakthroughs have increasingly relied on Graphics Processing Units (GPUs) rather than traditional CPUs. GPUs are designed to handle massive parallel processing, making them ideal for training complex AI models, especially deep neural networks, which require handling enormous amounts of data and computations. victory was more than just a game — it was a milestone in AI’s development, demonstrating that machines could handle complex language tasks and respond accurately to real-world questions.
[56] The Role of Artificial Intelligence in Education: Transforming the ... — One of the most powerful applications of AI in education is personalized learning. AI plays a crucial role in making education more accessible to diverse groups of students, including those with disabilities. As AI systems in education collect vast amounts of data on students. In higher education, AI is already being used to enhance research, provide virtual assistants for students, and even help with administrative tasks. the role of artificial intelligence in education: AI is used in the classroom for personalized learning, intelligent tutoring systems, automated grading, and content creation. AI provides tools like speech-to-text, text-to-speech, and real-time translation to help students with disabilities access learning materials and participate fully in education.
[82] Advancements in Intelligent Systems and Applications — Overview. The Journal of Electrical Engineering & Technology (JEET) is seeking submissions for a forthcoming Special Issue focused on the latest developments and research in intelligent systems and their applications across various domains including Control, Sensors, Robotics, Vehicle and Transportation Systems, Computer Vision, Signal Processing, and Biomedical Engineering.
[83] Advances on intelligent algorithms for scientific computing: an overview — This paper presents a thorough examination of three intelligent methods: neural networks, intelligent systems, and optimization algorithms and strategies. It discusses the fundamental principles and techniques employed in these fields, as well as the recent advancements and future prospects.
[86] The 3 Most Important AI Innovations of 2023 | TIME — It was the year that chatbots first went truly viral, and the year that governments began taking AI risk seriously. Here are three of the biggest from the past year: Multimodality “Multimodality” might sound like jargon, but it’s worth understanding what it means: it’s the ability of an AI system to process lots of different types of data—not just text, but also images, video, audio and more. This year was the first time that the public gained access to powerful multimodal AI models. Last year, text-to-image tools had barely emerged from their infancy; now, there are several companies offering the ability to turn sentences into moving images with increasingly fine-grained levels of accuracy.
[87] Recent Advances and Challenges in Industrial Robotics: A ... - MDPI — Industrial robotics has shifted from rigid, task-specific tools to adaptive, intelligent systems powered by artificial intelligence (AI), machine learning (ML), and sensor integration, revolutionizing efficiency and human-robot collaboration across manufacturing, healthcare, logistics, and agriculture. Collaborative robots (cobots) slash assembly times by 30% and boost quality by 15%, while
[89] Advanced Robotics: 2025 Breakthroughs & Innovations — Exploring the Latest Advancements in Advanced Robotics for 2025 - FirstIgnite Robotic Exoskeletons: Advanced exoskeletons will boost human strength, endurance, and mobility, transforming industries like manufacturing and healthcare. These innovations will reshape industries, enhance human abilities, and foster seamless collaboration between robots and people. University Advanced Robotics Innovations Universities are advancing robotics with innovations like the University of Michigan’s human-robot collaboration in search and rescue, autonomous systems, and NASA-supported Astrobees, providing astronauts with real-time feedback. The latest advancements in artificial intelligence, machine learning, and innovative robotic technologies are paving the way for a future where robots and humans work in seamless harmony, enhancing our capabilities, improving our quality of life, and pushing the boundaries of what’s possible.
[90] Intelligent Robotics—A Systematic Review of Emerging ... - MDPI — All Journals Journal of Composites Science (J. Journal of Imaging (J. Journal of Intelligence (J. This systematic literature review aims to analyze emerging technologies and trends in intelligent robotics, addressing key research questions, identifying challenges and opportunities, and proposing the best practices for responsible and beneficial integration into various sectors. Today, robotic technology is rapidly advancing, with the integration of artificial intelligence (AI) and machine learning (ML) enabling robots to interact independently with their environment and perform more complex tasks. It refers to the integration of AI, ML, and advanced sensing technologies within robotic systems to enable them to perceive and interact with their environment autonomously, learn from experience, and adapt to new situations . International Journal of Molecular Sciences Journal of Intelligence
[93] 10 AI in Healthcare Case Studies [2025] - DigitalDefynd — One significant impact area is AI-powered diagnostics, where algorithms analyze medical images, genetic data, and patient records to assist healthcare providers in accurate and timely diagnoses. These case studies highlight the immense potential of AI in transforming healthcare delivery, enhancing patient outcomes, and optimizing operational efficiency. Additionally, AI-driven EHR systems facilitate data-driven healthcare delivery, enabling personalized care experiences for patients based on their unique medical histories and needs. The success of this implementation has catalyzed the adoption of AI-driven EHR solutions worldwide, revolutionizing the way healthcare institutions manage and leverage patient data to improve care quality and outcomes. The implementation of AI-driven predictive analytics has significantly improved patient care and healthcare outcomes.
[94] 10 Real-World Case Studies of Implementing AI in Healthcare — Aidoc is well-known for its healthcare solutions that use AI technology to detect crucial findings and prioritize urgent cases by analyzing medical images (e.g., CT scans or X-rays). To improve in-hospital and outpatient care as well as help healthcare staff avoid excessive alarms, the facility has long invested in AI technologies. BCH has partnered with different AI solution providers like SMART Health IT to build POPP (Prediction of Patient Placement) – a predictive model based on its expertise and data. To deliver optimal diagnostics and therapies, UF Health’s researchers are developing AI-powered predictive systems that help clinicians make informed decisions and monitor patients effectively. These case studies have clarified how healthcare organizations worldwide are using AI to improve patient care and operational efficiency.
[95] Optimization and acceleration of convolutional neural networks: A ... — Recent advancements in parameter optimization, regularization techniques, improvement in activation functions, corresponding loss functions, advancements in the coted the research of Convolutonal Neural Network's(CNN's) in past few years. Training of neural networks is cumbersome and takes a lot of time can take days or even weeks.
[97] Survey of Optimization Algorithms in Modern Neural Networks — These optimizers have significantly influenced the development of neural networks through geometric and probabilistic tools. We present applications of all the given optimization algorithms, considering the types of neural networks. After that, we show ways to develop optimization algorithms in further research using modern neural networks.
[98] Optimization Algorithms for Deep Neural Networks Explained: Mastering ... — These algorithms are designed to address the challenges faced during the training process, allowing neural networks to learn and improve their accuracy over time. In this section, we will delve into why optimization algorithms are vital for deep neural networks and explore their impact on model performance and training speed.
[101] Multimodal AI: The Secret to Creating Next-Level Customer Experiences — Impact on User Experience and Decision-Making Processes. Combining modalities significantly improves user experience. Intelligent response systems leverage context from both audio and visual inputs to deliver accurate outputs. This leads to higher customer satisfaction and engagement. These systems also aid in better decision-making.
[102] Multimodal AI Agents: Reimaging Human-Computer Interaction — Today's digital world calls for technology responding to complex, varied user needs. Agentic AI agents answer this call by integrating multiple data types— text, audio, images, and video —into a multimodal approach that comprehensively understands user inputs. Unlike traditional systems limited to one input type, these AI agents capture a richer context by analyzing not only words but
[112] History and Development of Neural Networks in AI — Timeline Milestone1943McCulloch-Pitts Model: Warren McCulloch and Walter Pitts propose a model of artificial neurons using electrical circuits, laying the groundwork for neural networks1949Hebbian Learning: Donald Hebb introduces the concept that neural pathways strengthen with repeated activation, influencing later learning models.1958Perceptron Development: Frank Rosenblatt develops the perceptron, an early neural network capable of learning from data, limited to linearly separable tasks.1969Publication of “Perceptrons”: Minsky and Papert highlight the limitations of perceptrons, particularly their inability to solve non-linear problems, leading to decreased interest in neural networks.1970s-1980sAI Winter: A period of reduced funding and research in AI and neural networks due to the limitations highlighted by Minsky and Papert.1986Backpropagation Rediscovery: Researchers like Paul Werbos and David Rumelhart revive interest in neural networks with the introduction of backpropagation for training multi-layer networks.1989Convolutional Neural Networks (CNNs): Yann LeCun introduces CNNs, enhancing image recognition capabilities and demonstrating practical applications of deep learning2006Deep Learning Revival: Geoffrey Hinton and others introduce deep belief networks, marking a resurgence in deep learning research.
[113] Neural network developments: A detailed survey from static to dynamic ... — Dynamic Neural Networks (DNNs) are an evolving research field within deep learning (DL), offering a robust, adaptable, and efficient alternative to the conventional Static Neural Networks (SNNs). Several techniques have been devised to examine DNNs, such as Temporal Network Models, Dynamic Graph Algorithms, Dynamic Channel Pruning , , , Advice Calculation Time (ACT) , , Gumbel-Softmax Distribution , , , , Deep Layer Cascade (LC) Technique , Learned Group Convolutions (LGCS) , and Class Activation Mapping , etc. This section provides a thorough evaluation of the rapidly developing area of SNNs and DNNs. Architecture of static and dynamic neural networks Moreover, this research work demonstrates the significant advancements and benefits of dynamic neural networks (DNNs) over traditional static models across various datasets, including CIFAR-10, ImageNet, and SVHN.
[114] The Evolution of Neural Networks: From Perceptrons to Deep ... - Medium — The Evolution of Neural Networks: From Perceptrons to Deep Learning | by DIY Coding (Do It Yourself) by Arsha | Dec, 2024 | Medium The Evolution of Neural Networks: From Perceptrons to Deep Learning What Are Neural Networks? Neural networks are computational models inspired by the human brain’s structure and functioning. Frank Rosenblatt introduced the perceptron, the first artificial neural network, as a binary classifier. ImageNet (2012): Alex Krizhevsky’s deep convolutional neural network (CNN) achieved a historic win in the ImageNet competition, showcasing the power of deep learning. From the simplicity of the perceptron to the transformative capabilities of deep learning, neural networks have fundamentally changed how we approach complex problems. Neural Networks
[115] JULY 2023 1 Quaternion Convolutional Neural Networks: Current Advances ... — arXiv:2307.08663v1 [cs.AI] 17 Jul 2023 JULY 2023 1 Quaternion Convolutional Neural Networks: Current Advances and Future Directions Gerardo Altamirano-Gomez, Carlos Gershenson Abstract—Since their first applications, Convolutional Neural Networks (CNNs) have solved problems that have advanced the state-of-the-art in several domains.
[124] PDF — Intelligent systems are ideally suited for tasks such as search and optimization, pattern recognition and matching, planning, uncertainty management, control, and adaptation. In this paper, the intelligent system technologies and their application potential are highlighted via several examples.
[125] Intelligent Systems in AI - GeeksforGeeks — Tutorials Intelligent systems in artificial intelligence (AI) represent a broad class of systems equipped with algorithms that can perform tasks typically requiring human intelligence. An intelligent system in AI is a technology equipped with the capability to gather data, process it, and make decisions or perform actions based on that data. At its core, an intelligent system mimics the cognitive functions of human beings, such as learning from experience, understanding complex concepts, solving problems, and making decisions. Intelligent systems integrate various components of AI technology, including machine learning algorithms, natural language processing, robotics, and expert systems, among others: Machine learning algorithms allow systems to learn from data patterns and improve their decision-making over time without being explicitly programmed.
[126] AI revolutionizing industries worldwide: A comprehensive overview of ... — AI revolutionizing industries worldwide: A comprehensive overview of its diverse applications - ScienceDirect AI revolutionizing industries worldwide: A comprehensive overview of its diverse applications Artificial Intelligence (AI) technology's rapid advancement has significantly changed various industries' operations. This comprehensive review paper aims to provide readers with a deep understanding of AI's applications & implementations, workings, and potential impacts across different sectors. Through extensive research on more than 200 research and many other sources, the authors have made every effort to present an accurate overview of the numerous applications of AI nowadays in industries such as agriculture, education, autonomous systems, healthcare, finance, entertainment, transportation, military, manufacturing, and more. No articles found. For all open access content, the relevant licensing terms apply.
[127] Intelligent Systems: What are they, how do they work and why ... - Algotive — These are 5 applications of intelligent systems used by companies to enhance their operations, products, and/or services: Autonomous Robots. This is one of the most complex intelligent systems but at the same time, one of the fastest-growing and most far-reaching in recent years. They were originally conceived for critical industrial operations.
[129] 8 Future Trends of AI in Educational Technology - Analytics Insight — The fact that AI requires data and personal information of students to provide personalised learning brings ethical concerns into the equation. One of the key trends of AI is personalised learning, which allows teachers to adapt and tweak educational materials and teaching methods to cater to individual needs of each student. In return, it offers real-time feedback to motivate students, while AI-powered virtual characters can help students develop certain skills, which may not be possible through traditional classroom learning. Knowing the future trends of AI in educational technology will help institutions, policymakers, and teachers prepare for their effective implementation. It will also help students learn and understand complex subjects, while teachers can benefit from AI tech and channel their attention towards student development.
[130] Classrooms are adapting to the use of artificial intelligence — One question should always be at the forefront, said educational psychologist Ally Skoog-Hoffman, PhD, senior director of research and learning at the Collaborative for Academic, Social, and Emotional Learning (CASEL): “How are we using AI and technology as tools to elevate the conditions and the experiences of education for students without sacrificing the human connection that we absolutely know is integral to learning?” “Little kids learn from characters, and our tools of education already [rely on] the parasocial relationships that they form,” said David Bickham, PhD, a health communication researcher based at Boston Children’s Hospital, during a panel discussion on AI in the classroom.
[131] The Role of Artificial Intelligence in Personalized Learning — Overall, the benefits of AI in personalized learning extend beyond academic performance, promoting inclusivity, engagement, and efficiency. By transforming the learning experience, AI empowers both students and educators, creating an education system that is more responsive to individual needs and better equipped for the challenges of the future.
[132] Intelligent Robotics—A Systematic Review of Emerging Technologies and ... — All Journals Journal of Composites Science (J. Journal of Imaging (J. Journal of Intelligence (J. This systematic literature review aims to analyze emerging technologies and trends in intelligent robotics, addressing key research questions, identifying challenges and opportunities, and proposing the best practices for responsible and beneficial integration into various sectors. Today, robotic technology is rapidly advancing, with the integration of artificial intelligence (AI) and machine learning (ML) enabling robots to interact independently with their environment and perform more complex tasks. It refers to the integration of AI, ML, and advanced sensing technologies within robotic systems to enable them to perceive and interact with their environment autonomously, learn from experience, and adapt to new situations . International Journal of Molecular Sciences Journal of Intelligence
[135] (PDF) Intelligent Robotic Systems in Industry 4.0, A Review - ResearchGate — The discussion extends to emerging trends in intelligent robotic systems including digital twin, blockchain, Internet of Things, artifial intelligent, and the integration of advanced analytics for
[136] Future of AI in Robotics: Trends and Predictions for 2025 — Future of AI in Robotics: Trends and Predictions for 2025 Future of AI in Robotics: Trends and Predictions for 2025 By 2025, advancements in AI will significantly enhance the capabilities of robots, making them more intelligent, autonomous, and versatile. Key Trends in AI and Robotics 1. What are the key trends in AI and robotics expected by 2025? By 2025, AI-driven robotics will see significant advancements, including the rise of Autonomous Mobile Robots (AMRs) for logistics, Robotics as a Service (RaaS) for scalable solutions, and improved human-robot interaction. Enhanced human-robot interaction will be a major trend by 2025, driven by advances in natural language processing and AI. Despite the exciting advancements, AI in robotics faces challenges such as ethical concerns, technical limitations, and data security. Robotics
[163] The Ethical Considerations of Artificial Intelligence — The Ethical Considerations of Artificial Intelligence | Washington D.C. & Maryland Area | Capitol Technology University Skip to Main Content Search Submit Search Open and Close Menu Open Search Submit Fields of Study Aviation and Astronautical Sciences Computer Science, Artificial Intelligence and Data Science Construction and Facilities Critical Infrastructure Cyber & Information Security Cyberpsychology Engineering Engineering Technologies Intelligence and Global Security Studies Management of Technology Occupational Safety and Health Uncrewed Systems Degrees and Programs Doctoral Degrees Master's Degrees Bachelor's Degrees Online Programs Associate Degrees Certificates Minor Degrees STEM Events Webinars and Podcasts Admission & Financial Aid Doctoral Master's Undergraduate Transfer Students Military and Veterans International Students Parents Admissions Counselor Capitol Connections Accepted Students Project Lead the Way Student Experience Builder Culture Campus Life Clubs and Organizations Centers and Labs Online Classes Professional Success The Capitol Commitment Top Employers Co-ops and Internships Professional Education Find a Mentor Career Services Capitol Online Job Board Recruiters and Employers About Capitol Why Capitol Tech At a Glance Mission, Vision, and Goals University Demographics Washington, D.C. Capitol History Leadership Capitol Partners News and Events Visitors/Campus Accreditation Recognitions & Awards Current Students Faculty & Staff Alumni & Giving Donate Now Why Capitol Tech News & Events Capitology Blog Maps / Directions Contact Us Facebook Twitter YouTube Instagram Apply Online Request Information Visit Campus Close Menu Home Capitology Blog The Ethical Considerations of Artificial Intelligence May 30, 2023 Artificial intelligence is progressing at an astonishing pace, raising profound ethical concerns regarding its use, ownership, accountability, and long-term implications for humanity. As technologists, ethicists, and policymakers look at the future of AI, ongoing debates about the control, power dynamics, and potential for AI to surpass human capabilities highlight the need to address these ethical challenges in the present. Here’s a look at some of the most pressing ethical issues surrounding AI today. Consequently, these biases can become ingrained in AI algorithms, perpetuating and amplifying unfair or discriminatory outcomes in crucial areas such as hiring, lending, criminal justice, and resource allocation. By proactively engaging with these concerns, we can harness the incredible potential of AI while upholding ethical principles to shape a future where socially responsible AI is the norm.
[164] Ethical and Bias Considerations in Artificial Intelligence/Machine ... — Ethical and Bias Considerations in Artificial Intelligence (AI)/Machine Learning - ScienceDirect Ethical and Bias Considerations in Artificial Intelligence (AI)/Machine Learning As artificial intelligence (AI) gains prominence in pathology and medicine, the ethical implications and potential biases within such integrated AI models will require careful scrutiny. Ethics and bias are important considerations in our practice settings, especially as increased number of machine learning (ML) systems are being integrated within our various medical domains. Addressing these biases is crucial to ensure that AI-ML systems remain fair, transparent, and beneficial to all. This review will discuss the relevant ethical and bias considerations in AI-ML specifically within the pathology and medical domain. For all open access content, the Creative Commons licensing terms apply.
[165] Ethics of Artificial Intelligence - UNESCO — The aim of the Global AI Ethics and Governance Observatory is to provide a global resource for policymakers, regulators, academics, the private sector and civil society to find solutions to the most pressing challenges posed by Artificial Intelligence. However, these rapid changes also raise profound ethical concerns. AI technology brings major benefits in many areas, but without the ethical guardrails, it risks reproducing real world biases and discrimination, fueling divisions and threatening fundamental human rights and freedoms. [Image 33: Recommendation on the Ethics of Artificial Intelligence - Key facts](https://www.unesco.org/sites/default/files/styles/banner_mobile/public/2023-05/ethicsofai_key_facts_1900px.jpg?itok=Z9bSCy8G) © metamorworks / Shutterstock.com Recommendation on the Ethics of Artificial Intelligence UNESCO produced the first-ever global standard on AI ethics – the ‘Recommendation on the Ethics of Artificial Intelligence’ in November 2021. The protection of human rights and dignity is the cornerstone of the Recommendation, based on the advancement of fundamental principles such as transparency and fairness, always remembering the importance of human oversight of AI systems.
[166] AI Ethics: What It Is, Why It Matters, and More | Coursera — AI Ethics: What It Is, Why It Matters, and More | Coursera AI Ethics: What It Is, Why It Matters, and More AI Ethics: What It Is, Why It Matters, and More In this article, we'll explore what ethics in AI are, why they matter, and some challenges and benefits of developing an AI code of conduct. What are AI ethics? AI ethics are the set of guiding principles that stakeholders (from engineers to government officials) use to ensure artificial intelligence technology is developed and used responsibly. A strong AI code of ethics can include avoiding bias, ensuring privacy of users and their data, and mitigating environmental risks. Ethical challenges of AI Keep learning about AI on Coursera
[167] Why Social Science? Because It Can Help Contribute to AI That Benefits ... — Social sciences can also inform the design and creation of ethical frameworks and guidelines for AI development and for deployment into systems. Social scientists can contribute expertise: on data quality, equity, and reliability; on how bias manifests in AI algorithms and decision-making processes; on how AI technologies impact marginalized communities and exacerbate existing inequities; and
[168] Ethical AI in Social Sciences Research: Are We Gatekeepers or ... - MDPI — The rapid expansion of artificial intelligence (AI) in social sciences research introduces both transformative potential and critical ethical dilemmas. This study examines the role of researchers as either ethical gatekeepers or pioneers of AI-driven change. Through a bibliometric analysis of 464 records from the Web of Science Core Collection, we identify key themes in ethical AI discourse
[169] The ethics of using artificial intelligence in scientific research: new ... — In this article, we briefly introduce AI and explain how it can be used in research, examine some of the ethical issues raised when using it, and offer nine recommendations for responsible use, including: (1) Researchers are responsible for identifying, describing, reducing, and controlling AI-related biases and random errors; (2) Researchers should disclose, describe, and explain their use of AI in research, including its limitations, in language that can be understood by non-experts; (3) Researchers should engage with impacted communities, populations, and other stakeholders concerning the use of AI in research to obtain their advice and assistance and address their interests and concerns, such as issues related to bias; (4) Researchers who use synthetic data should (a) indicate which parts of the data are synthetic; (b) clearly label the synthetic data; (c) describe how the data were generated; and (d) explain how and why the data were used; (5) AI systems should not be named as authors, inventors, or copyright holders but their contributions to research should be disclosed and described; (6) Education and mentoring in responsible conduct of research should include discussion of ethical use of AI.
[170] Importance Of Cross-Disciplinary Collaboration - Restackio — The establishment of ethical guidelines for interdisciplinary AI research faces numerous challenges that require careful consideration and collaborative efforts across various fields. Conceptual Clarity One of the primary challenges is the lack of conceptual clarity regarding ethical principles. Different cultures interpret and apply these principles in varied ways, leading to confusion and
[171] PDF — The synthesis of findings advocates for interdisciplinary collaboration, emphasizing the societal responsibility inherent in AI innovation. Recommendations highlight the need for adaptive regulatory frameworks, continuous refinement of ethical guidelines, and the prioritization of ethical considerations in AI advancements.
[211] 11 Emerging Trends in Information Systems - Online Consortium of Oklahoma — This chapter will cover emerging trends in information systems technology, such as artificial intelligence, blockchain, internet of things (IoT), cloud computing, and big data analytics. Many organizations across various industries are leveraging AI and ML technologies to enhance their information systems. This exploration will delve into the emerging trends in information systems and their specific impacts on healthcare informatics, fintech, supply chain management, e-learning, and smart cities, offering insights into the technological advancements shaping these industries. In the healthcare industry, emerging trends in information systems are revolutionizing patient care, data management, and overall operational efficiency. Companies like Amazon leverage sophisticated algorithms and data analytics to predict customer demand, optimize inventory levels, and streamline the delivery process, exemplifying the transformative impact of information systems on supply chain management.
[213] The Future of Artificial Intelligence: Trends and Predictions — Predictions for AI's future are discussed, such as the emergence of artificial general intelligence (AGI), advancements in autonomous systems, the impact of quantum computing on AI, and
[215] Explainable AI (XAI) in 2025: Balancing Performance and Interpretability — Explainable AI (XAI) in 2025: Balancing Performance and Interpretability Explainable AI (XAI) in 2025: Balancing Performance and Interpretability Explainable AI (XAI) is emerging as a solution to bridge the gap between high-performance AI and transparency. With AI powering critical applications like healthcare, finance, and autonomous systems, the demand for transparent decision-making has increased. Healthcare: AI models assisting doctors in diagnosing diseases must explain their predictions to ensure accurate medical decisions. Finance: Transparent AI models help in fraud detection and credit scoring by making their reasoning clear. User-Centric AI: Future AI systems will focus on human-AI collaboration, making explainability a key factor. In 2025, businesses must adopt XAI strategies to ensure transparency, build trust, and drive responsible AI adoption.
[216] Building trust in AI: The role of explainability | McKinsey — This conundrum has raised the need for enhanced AI explainability (XAI)—an emerging approach to building AI systems designed to help organizations understand the inner workings of those systems and monitor the objectivity and accuracy of their outputs. An example of how tech companies are incorporating explainability tools into their platforms is Google’s Vertex Explainable AI, which enhances understanding of generative AI and LLMs through feature-based and example-based explanations that give users insights into model predictions by identifying influential features in complex generative models like transformer-based LLMs. In addition, recent community-driven research, like work on behavior analysis at the head level of LLM architectures, reflects growing momentum toward unpacking model behaviors. To meet these diverse needs, the XAI community continues to create new explainability techniques, which involve algorithms to make the decision-making processes of AI models more transparent.
[217] Recent Emerging Techniques in Explainable Artificial Intelligence to ... — Recent Emerging Techniques in Explainable Artificial Intelligence to Enhance the Interpretable and Understanding of AI Models for Human | Neural Processing Letters Recent advancements in Explainable Artificial Intelligence (XAI) aim to bridge the gap between complex artificial intelligence (AI) models and human understanding, fostering trust and usability in AI systems. Explainable Artificial Intelligence (XAI) stems from the increasing integration of AI models in a way that allows humans to understand, interpret, and trust the decisions and outputs generated by AI systems because these systems have become more sophisticated and pervasive. Explainable Artificial Intelligence (XAI) lies in its potential to bridge the gap between the complexity of advanced AI models and the need for human understanding and trust.
[218] Transparency and explainability of AI systems: From ethical guidelines ... — Transparency and explainability of AI systems: From ethical guidelines to requirements - ScienceDirect Skip to main contentSkip to article Journals & Books Help Search My account Sign in View PDF Download full issue Search ScienceDirect Information and Software Technology Volume 159, July 2023, 107197 Transparency and explainability of AI systems: From ethical guidelines to requirements Author links open overlay panelNagadivya Balasubramaniam a, Marjo Kauppinen a, Antti Rannisto a b, Kari Hiekkanen a c, Sari Kujala a Show more Add to Mendeley Share Cite https://doi.org/10.1016/j.infsof.2023.107197Get rights and content Under a Creative Commons license open access Highlights • The AI ethical guidelines of 16 organizations emphasize explainability as the core of transparency. Abstract Context and Motivation Recent studies have highlighted transparency and explainability as important quality requirements of AI systems. The first goal of our study was to explore what ethical guidelines organizations have defined for the development of transparent and explainable AI systems and then we investigated how explainability requirements can be defined in practice. Results The analysis of the ethical guidelines revealed that the importance of transparency is highlighted by almost all of the organizations and explainability is considered as an integral part of transparency. To support the definition of explainability requirements, we propose a model of explainability components for identifying explainability needs and a template for representing explainability requirements.
[222] Ethics of Artificial Intelligence - UNESCO — The aim of the Global AI Ethics and Governance Observatory is to provide a global resource for policymakers, regulators, academics, the private sector and civil society to find solutions to the most pressing challenges posed by Artificial Intelligence. However, these rapid changes also raise profound ethical concerns. AI technology brings major benefits in many areas, but without the ethical guardrails, it risks reproducing real world biases and discrimination, fueling divisions and threatening fundamental human rights and freedoms. [Image 33: Recommendation on the Ethics of Artificial Intelligence - Key facts](https://www.unesco.org/sites/default/files/styles/banner_mobile/public/2023-05/ethicsofai_key_facts_1900px.jpg?itok=Z9bSCy8G) © metamorworks / Shutterstock.com Recommendation on the Ethics of Artificial Intelligence UNESCO produced the first-ever global standard on AI ethics – the ‘Recommendation on the Ethics of Artificial Intelligence’ in November 2021. The protection of human rights and dignity is the cornerstone of the Recommendation, based on the advancement of fundamental principles such as transparency and fairness, always remembering the importance of human oversight of AI systems.
[243] Exploring IoT in Blockchain: Key Benefits and Real-World Applications — While IoT links devices to collect, analyze, and share real-time data, allowing for smooth interaction between the digital and physical worlds, blockchain provides a safe, decentralized foundation for data management, storage, and protection. By safely storing real-time data on machinery and equipment, blockchain and IoT improve operational maintenance. In order to maintain privacy and regulatory compliance in the healthcare industry, wearable IoT sensors and other smart devices gather vital patient data and securely store it on blockchain networks. Businesses may overcome significant obstacles involving safety, scalability, and data security by fusing blockchain’s transparency, immutability, and decentralization with IoT’s real-time data collection.
[245] Blockchain and IoT: Transforming Real-World Applications — Traditional IoT systems often need central figures or third parties to validate data. With blockchain, IoT devices can directly communicate and transact, removing the need for middlemen, which can lead to extra costs or delays. According to Marketsandmarkets, the worldwide market for Blockchain IoT stood at a valuation of USD 525.76 million in
[246] IoT In Blockchain: Benefits, Use Cases, and Challenges - Reveation.io — The integration of blockchain security with its decentralized and tamper-resistant nature can provide heightened security for IoT devices and data. Blockchain's transparent and traceable nature enables real-time monitoring and auditing of transactions and data exchanges between IoT devices. IoT-enabled smart meters can collect real-time data on energy consumption, while blockchain ensures the accuracy and security of this data. IoT devices can gather data on traffic flow, waste management, and energy consumption, which can be securely stored on a blockchain. Scalability: Both IoT and blockchain generate a massive amount of data, and ensuring that the blockchain can handle the scalability requirements of IoT devices can be challenging. Energy Efficiency: Both IoT devices and blockchain networks can be resource-intensive in terms of energy consumption.
[247] 40 Blockchain Applications | Real-World Use Cases in 2025 — The MediLedger Project uses blockchain for secure management of the pharmaceutical supply chain, ensuring the safety of the drug distribution process. Use CaseApplicationFunctionSupply Chain FinanceTradeIXProvides transparent supply chain financing.Real Estate TransactionsPropyFacilitates secure property transfers.Loyalty ProgramsLoyyalOffers transparent and tradable rewards.Decentralized Content MarketplacesLBRYEnables direct content monetization.Ticketing and Event ManagementAventusReduces fraud in event ticketing.Gaming and EntertainmentEnjinAllows ownership of in-game assets.Education and Credential VerificationLearning MachineVerifies academic credentials securely.Environmental Protection and ConservationPoseidonIncentivizes sustainable practices.Disaster Relief and Humanitarian AidAidCoinEnsures aid transparency.Social Impact Projects and FundraisingBinance CharityFacilitates charitable donations tracking. In real estate, blockchain ensures transparent and efficient transactions by securely recording property ownership and transfers. Propy uses blockchain for secure and transparent real estate transactions, reducing fraud and enhancing the reliability of real estate records.