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Practical training based on Smart Manufacturing Case

Recent Training Course Series

9.  Online Query of Training Schedule (Training Course Plan)

Each class plan should be posted as early as possible, website: Note that the domain name does not accept the points of industry 4.0 (.) Therefore, the bar (-) is used instead. You can go directly to the training part of industry 4.0 Metaverse site( Also see Training overview.

8.  PPT Summary of More Than 100 Training Courseware (Based on More Than 200 On-site Project Cases)

A summary of more than 100 training courseware PPT contents based on more than 200 Smart Manufacturing cases completed in Germany, the United States, South Korea and China. Each courseware can be used for 2 class hours, including the content of ppt on each page of this set of courseware.

7.  Practical Training of Smart Manufacturing Based on Project Cases - Become Highly Paid Experts and Improve Enterprise Profits

This is a technical paper on this training, which was written at the invitation of a magazine. It introduces more than 200 cases of Smart Manufacturing projects and millions of pages of technical resources involved in the training. This article also lists about 50 courses of Smart Manufacturing training. This training is of great value in becoming highly paid experts and improving enterprise profits!

6.  More Than 200 On-site Smart Manufacturing Projects Involved in Lectures in 2021

The main trainer has developed benchmarking projects in on-site Smart Manufacturing projects in the past 30 years, such as BYD lithium battery Smart Manufacturing project, benchmarking projects in the United States, Germany and South Korea, etc. Detailed explanation of the project. Explain each project several times.

5.  Million Pages of Technical Materials for Smart Manufacturing Training Reference

In the early stage, the team collected millions of pages of technical materials in major libraries in Germany, the United States, Canada and other countries. For example, in 2019, the team downloaded more than 200 technical books related to industry 4.0 (PDF version) at the University of Aachen, Germany. It was originally planned to use a large amount of these materials for the development of engineering technology websites (such as, which were used for training reference because of the strong market demand for Smart Manufacturing training.

4.  Smart Manufacturing Training is An Effective Way to Improve The Employment Rate of Graduates

This course focuses on students who are still studying in colleges or are about to graduate. We believe that the main reason for the low employment rate is that the professional scope of graduates is too narrow to meet the needs of enterprises. The key problem of Chinese schools for a long time is that the division of majors is too fine. It is difficult for graduates to quickly adapt to multi-disciplinary integration when they arrive at the scene. As the key of Smart Manufacturing, multi-disciplinary integration is precisely the urgent demand of manufacturing scene. The demand of manufacturing industry for multi-disciplinary integration such as process, product, equipment, model, software, automation and data acquisition is the most difficult part for fresh graduates to adapt to, because when graduates are in school, they either study this major or that major, but they are not competent for the overall integration of these majors. This makes it take a long time for graduates to be competent after entering the work, which increases the burden on enterprises and greatly reduces the demand for early graduates. The training of Smart Manufacturing provides students with learning ideas and important ways of multi-disciplinary integration. Just as the lecture focuses on a series of methods that have been explored by trainers for decades to quickly become multinational multi-disciplinary experts, and continue to improve on this basis! Based on multi-disciplinary integration, Smart Manufacturing has become a key measure to solve the problems of manufacturing industry. Therefore, people with Smart Manufacturing background can not only get employment, but also get high salary quickly. For example, the salary is about 50% higher than that of the existing level (usually 30-100%, which can be increased by ten times after becoming an expert)!

3.  Practical Training of Smart Manufacturing: Application of Artificial Intelligence in Smart Manufacturing

Taking industrial AI technology as the core, this course introduces AI and its technical basis, application scenarios and practical cases in manufacturing industry, looks forward to the future development trend, and helps students establish a three-dimensional and comprehensive industrial AI knowledge system, combined with their own background knowledge and work experience, Extract several typical cases from the existing application scenarios for in-depth analysis, and master the project ideas and application value; In particular, it enables students to have a real understanding of what Smart Manufacturing is, the main problems and solutions of Smart Manufacturing. For example, it can effectively avoid the failure of intelligent production line projects with investment of hundreds of millions of yuan because many enterprises do not know what Smart Manufacturing is, as well as the four key problems that must be solved to realize the success of Smart Manufacturing of Chinese enterprises! With the help of the training of practical projects, students can basically obtain the preliminary methods to solve the Smart Manufacturing problems of their own enterprises. Applicable objects: CEOs, CTOs, technicians, R & D personnel and production managers of manufacturing enterprises engaged in Smart Manufacturing decision-making and execution. Specifically, leaders in charge of Smart Manufacturing, decision makers of factory Smart Manufacturing, as well as experts and technicians engaged in Smart Manufacturing.
2.  Model Training: Rolling Process Model and Rolling Mill Technology Development

Model Training: Steel Rolling Process Modeling and Mill Development

The training consists of twenty modules. Each module has Lessons on fundamental topics, and a Lab for performing hands-on excises. The work on steel rolling process modeling and mill design requires large amount of hands-on calculation and data processing, so this type of Lab excises is necessary for high-quality training.
1.  Introduction to Mr. Benjamin Li Industry 4.0 Network

German Ph.D. of Engineering (Model / AI), with practical working experience in process, material, equipment, data acquisition, model and automation;

American software doctor (software architecture / Development), with practical working experience in software architecture, machine self-study and software development;

30 years of experience in Smart Manufacturing in Germany, the United States, China and South Korea; Self consultation and development of more than 100 projects, leading the team to develop more than 100 projects, a total of more than 200 projects; Familiar with Smart Manufacturing site;

He has given more than 30 training lectures.



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Contact us: Please contact Linkedin in, OR scan the figure below to add Wechat (e.g. myQQfriend); Tel: (+1) 858 898 1288; E-mail See Enrollment for Current Training Series.



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