论文标题

云,数字技术的开发和芯片技术的引入

Development of cloud, digital technologies and the introduction of chip technologies

论文作者

Baghirzade, Ali R.

论文摘要

最近,通过人工智能(AI)的快速进步,几乎没有其他任何研究领域吸引了机器学习(ML)。该出版物简要介绍了机器学习,问题和新兴研究问题的实际概念和方法,以及参与者的概述,应用领域的概述以及研究的社会经济框架条件。 在专家界,ML被用作现代人工智能技术的关键技术,这就是为什么AI和ML经常互换使用的原因,尤其是在经济背景下。机器学习,尤其是深度学习(DL)为自动语言处理,图像分析,医学诊断,过程管理和客户管理开辟了全新的可能性。本文的重要方面之一是碎片化。由于数字化的快速发展,随着数字技术的发展,应用程序的数量将继续增加。将来,机器将越来越多地提供对决策重要的结果。为此,重要的是要确保从技术方面的自动决策过程的安全性,可靠性和足够的可追溯性。同时,有必要确保ML申请与法律问题兼容,例如算法决策的责任和责任,并且在技术上可行。它的制定和监管实施是一个重要而复杂的问题,需要跨学科的方法。最后但并非最不重要的一点是,公众接受对于在应用程序中持续扩散机器学习过程至关重要。这需要广泛的公众讨论和各种社会群体的参与。

Hardly any other area of research has recently attracted as much attention as machine learning (ML) through the rapid advances in artificial intelligence (AI). This publication provides a short introduction to practical concepts and methods of machine learning, problems and emerging research questions, as well as an overview of the participants, an overview of the application areas and the socio-economic framework conditions of the research. In expert circles, ML is used as a key technology for modern artificial intelligence techniques, which is why AI and ML are often used interchangeably, especially in an economic context. Machine learning and, in particular, deep learning (DL) opens up entirely new possibilities in automatic language processing, image analysis, medical diagnostics, process management and customer management. One of the important aspects in this article is chipization. Due to the rapid development of digitalization, the number of applications will continue to grow as digital technologies advance. In the future, machines will more and more provide results that are important for decision making. To this end, it is important to ensure the safety, reliability and sufficient traceability of automated decision-making processes from the technological side. At the same time, it is necessary to ensure that ML applications are compatible with legal issues such as responsibility and liability for algorithmic decisions, as well as technically feasible. Its formulation and regulatory implementation is an important and complex issue that requires an interdisciplinary approach. Last but not least, public acceptance is critical to the continued diffusion of machine learning processes in applications. This requires widespread public discussion and the involvement of various social groups.

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