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计算机科学与技术汇刊

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ISSN Print:2327-090X

ISSN Online:2327-0918

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Paper Infomation

Research Needs and Applications of Machine Learning — Predicting Logistics Stress by Machine Learning

Full Text(PDF, 165KB)

Author: Bin Yan

Abstract: Machine learning is the use of computers to learn the intrinsic laws and information contained in data through algorithms to gain new experience and knowledge, in order to improve the intelligence of computers, so that they can make decisions similar to those made by humans when faced with problems. With the development of various industries, the amount of data has increased and the efficiency of data processing and analysis has become more demanding, a series of machine learning algorithms have emerged. Machine learning algorithms are essentially steps and processes that apply a large number of statistical principles to solve optimisation problems. Appropriate machine learning algorithms can be used to solve practical problems more efficiently for a wide range of model requirements. This paper presents the interim state of a dynamic disruption management software solution for logistics, using machine learning methods to study the extent to which stress is predicted based on physiological and subjective parameters, to prevent physical and mental stress on workers in the logistics industry, to maintain their health, to make them more optimistic and better able to adapt to their work, and to facilitate more accurate deployment of human resources by companies according to the real-time requirements of the logistics industry.

Keywords: Machine Learning, Pressure, Logistics, Rest Regulation, Sensor Technology

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