課程資訊
課程名稱
電子化企業
E-business 
開課學期
109-2 
授課對象
管理學院  資訊管理學系  
授課教師
陳靜枝 
課號
IM5029 
課程識別碼
725 U3370 
班次
 
學分
3.0 
全/半年
半年 
必/選修
選修 
上課時間
星期二7,8,9(14:20~17:20) 
上課地點
管一401 
備註
與陳文賢合授
限學士班三年級以上
總人數上限:20人 
Ceiba 課程網頁
http://ceiba.ntu.edu.tw/1092IM5029_EB_2021 
課程簡介影片
 
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課程概述

Under the influences of globalization and digitalization, E-Business is the most important topic that all the companies are learning and constructing. This class is designed to introduce students to the important topics in E-Business. The course is divided into two sessions: big data analytics and MRP/ERP. In the first half session of the class, important topics of big data analytics such as Association rules, Cluster analysis, KNN, Naïve Bayes, Decision trees, SVM, AI, and Deep Learning, etc. will be introduced and thoroughly discussed. The students will learn not only the theories and techniques used to solve related problems, but also the real-world applications that adopt these concepts. In the second half session of the class, the course will include the introduction and classification of the production and manufacturing industries, the overview of manufacturing resource planning, demand management, Bill of Material, shop floor control, and IT technology used in production industry. A business visiting tour is included in the lecture to show the students the problems and solutions existing in the current IT industry. 

課程目標
This class is designed to introduce students to the important topics in E-Business. The students will learn not only the theories and techniques used to solve related problems, but also the real-world applications that adopt these concepts. A business tour is included in the lecture to show the students the problems and solutions existing in the current industries. 
課程要求
A list of different business cases related to big data analytics is given at the first half of the class.
Homework: Homework will be assigned through the semester. No late homework will be accepted. Students must turn in their own homework. However, students may work together in preparing their homework. It is strongly advised that students understand and do all phases of their homework assignments and not rely on the expertise of others.
Case Report: Form a team with 2 students. Each team will select one case related to big data analytics and will prepare a report regarding the selected case. Each team will prepare a 10~15 minutes presentation. Turn in the digital report through NTU COOL on 4/20.
Project: In the second half session of the class, the instructor will assign a case to all teams of the students. Form each team with 3-5 persons. Each team will prepare a 30 minutes presentation and a less than 20 pages report to show how they solve the problem related to this case. Turn in the digital report through NTU COOL on 6/15.
Final Exam: Final exam will be take-home and open-book. No discussion is allowed among students when answering the exam questions. Cheating will result in severe penalty. Each student will send the answer of the final exam through NTU COOL on 6/22. 
預期每週課後學習時數
 
Office Hours
 
指定閱讀
 
參考書目
Manufacturing Resource Planning with and introduction to ERP, SCM, and CRM by
Khalid Sheikh
ENTERPRISE RESOURCES PLANNING AND BEYOND—INTEGRATING YOUR ENTIRE ORGANIZATION
BY G. A. LANGENWALTER
INTEGRATING ERP, CRM, SUPPLY CHAIN MANAGEMENT, AND SMART MATERIALS BY D. N.
CHORAFAS
陳文賢, “大話數據科學”, 北京清華大學出版社,2020年7月。
 
評量方式
(僅供參考)
 
No.
項目
百分比
說明
1. 
Case Report 
20% 
Form a team with 3-5 students. Each team will select one case related to big data analytics and will prepare a report regarding the selected case. Turn in the digital report through email to the instructor. 
2. 
Project Presentation 
25% 
In the second half session of the class, the instructor will assign a case to all teams of the students. Form each team with 3-5 persons. Each team will prepare a 30 minutes presentation and a less than 10 pages report to show how they solve the problem related to this case. The report will be due the day of presentation. 
3. 
Final Exam 
25% 
Final exam will be take-home and open-book. No discussion is allowed among students when answering the exam questions. Cheating will result in severe penalty. Each student will send the answer of the final exam through email to the instructor. 
4. 
1st Homework 
20% 
Homework will be assigned regarding the big data analytics through the first half of semester and will be due in the following class. No late homework will be accepted.  
5. 
2nd Homework 
10% 
Homework will be assigned regarding MRP/ERP through the second half of semester and will be due in the following class. No late homework will be accepted.  
 
課程進度
週次
日期
單元主題
第1週
2121/02/23  Introduction
Big Data and Data Science (大數據與數據科學) 
第2週
2121/03/02  Association rules and Cluster analysis (關聯分析與聚類分析) Case: Titanic, Iris 
第3週
2121/03/09  Model evaluation and KNN (模型評估與近鄰法) Case: Boston House price 
第4週
2121/03/16  Business Visiting Tour 
第5週
2021/03/23  Naïve Bayes and Decision trees (貝式分類與決策樹) Case: US president vote 
第6週
2021/03/30  SVM and Ensemble learning (支持向量機與集成學習) Case: Customer churn, DNA 
第7週
2021/04/06  Day off (Spring Break) 
第8週
2021/04/13  AI and Deep Learning (人工智慧與深度學習) Case: Universities, Speed Dating 
第9週
2021/04/20  Midterm case report 
第10週
2021/04/27  Industrial and Manufacturing Typologies and Their Characteristics 
第11週
2021/05/04  Bill of Material (BOM) and Inventory Management 
第12週
2021/05/11  Shop Floor Control 
第13週
2021/05/18  SOM (Sales Order Management) and POM (Purchase Order Management) 
第14週
2021/05/25  An overview of Manufacturing Resource Planning (MRP II) 
第15週
2021/06/01  Advanced Topics of Manufacturing Resource Planning 
第16週
2021/06/08  An Introduction to Enterprise Resource Planning 
第17週
2021/06/15  Project Presentation 
第18週
2021/06/22  Turn in the Final Exam