Deep Learning: A Critical Analysis of its Effects on Organizational Performance

M. Lourens, K. Pandey, Alok Upadhyay, M. Tewari, Shivakar Tiwari, Surendra Kumar Shukla
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Abstract

With an emphasis on the enterprises' net wealth as learnt in the school changes, our study's primary goal is to assess the idea of learning algorithms and how it influences performance. The following steps have to be taken in order to finish the study. Following are some characteristics of supervised learning: Machine learning: What's it? Where does it function? What methods are employed? What are the problems and downfalls? What effects may reinforce learning have on the effectiveness of your organization? vii) Deep learning examples; and (vi) neural network training. Information technology skills have been used in our research to better determine how DL value proposition impacts organization performance. The technique of investigation (giving guidance based on research findings, responding to the research question, participating in discussions, finally developing and analyzing, and making recommendations). It incorporates several technological advancements, including chatbots, self-learning robots, and machine learning. All of these developments have the potential to improve people's comprehension of and responses to their surroundings. The process of reacting to or disrupting their environments while aiding in the development and expansion of competitive and strategic assets has been the driving force behind the implementation of artificial intelligence and machine understanding scientific developments by organizations. DL outperforms the competitor when it comes to enhancing the efficacy of present processes and enhancing the impact of automation, economic, and innovative advances because of its capacity to detect, predict, and engage with humans.
深度学习:对组织绩效影响的批判性分析
我们的研究重点是企业在学校学习的净财富变化,我们的研究的主要目标是评估学习算法的思想以及它如何影响绩效。为了完成研究,必须采取以下步骤。以下是监督学习的一些特点:机器学习:什么是机器学习?它在哪里起作用?采用了什么方法?问题和缺点是什么?强化学习对组织的效率有什么影响?7)深度学习实例;(六)神经网络训练。在我们的研究中使用了信息技术技能来更好地确定DL价值主张如何影响组织绩效。调查技术(根据研究结果给予指导,回答研究问题,参与讨论,最后发展和分析,提出建议)。它融合了几项技术进步,包括聊天机器人、自主学习机器人和机器学习。所有这些发展都有可能提高人们对周围环境的理解和反应。在帮助发展和扩大竞争和战略资产的同时,对环境做出反应或破坏环境的过程一直是组织实施人工智能和机器理解科学发展背后的驱动力。DL在提高现有流程的效率和提高自动化、经济和创新进步的影响方面优于竞争对手,因为它具有检测、预测和与人类互动的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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