課程資訊
課程名稱
研究資料基礎架構
Research Data Infrastructure 
開課學期
106-2 
授課對象
文學院  圖書資訊學研究所  
授課教師
鄭 瑋 
課號
LIS5089 
課程識別碼
126 U1520 
班次
 
學分
3.0 
全/半年
半年 
必/選修
選修 
上課時間
星期四2,3,4(9:10~12:10) 
上課地點
圖資編目室 
備註
碩士班與博士班學生均可選修。
限碩士班以上 或 限博士班
總人數上限:17人 
Ceiba 課程網頁
http://ceiba.ntu.edu.tw/1062LIS5089_S18 
課程簡介影片
 
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課程概述

According to Research Data Alliance (RDA), research data infrastructure (RDI) means resources, technologies, workforce, and services that can effectively and efficiently support research data activities in all disciplines. With the emergence of open science, there are some RDI sub-domains such as data storage, metadata standards, data curation, data sharing, have become notable research topics in LIS and IS communities.
This course aims to help graduate students take a deep dive into state-of-the-art topics on research data and its infrastructure. The course consists of four broad modules: e-Research (cyber-infrastructure), the life cycle of research data production (create, process, cleansing, analysis, store and archives), research data management, giving access to research data.
 

課程目標
At the conclusion of this class, the students will be able to
- Articulate concepts in a research data lifecycle, including data production, processing, archives, and giving access to others.
- Describe research data infrastructure challenges and opportunities in digital repositories and academic libraries
- Understand data curation profiling tools and relative assessments for scholars’ needs.
- Articulate the concept of open science by further describing data availability, data transparency, and citizen engagement.
 
課程要求
 
預期每週課後學習時數
 
Office Hours
另約時間 
指定閱讀
see syllabus 
參考書目
There is no required textbook for this course. Instead, there are about 3-6
materials each week, which may include books, academic articles, or technical
reports. For the full version of reference, please refer to attached reference
for each week. 
評量方式
(僅供參考)
 
No.
項目
百分比
說明
1. 
Overall Participation 
35% 
including weekly discussions, research notes and hand-on practices and essays 
2. 
Class discussion facilitation 
20% 
leading a reading discussion session with presentation or guides 
3. 
Term project- emerging RDI issues 
50% 
including literature maps, annotated bibliography, presentation, and write-ups 
 
課程進度
週次
日期
單元主題
第1週
3/01  Intro; course overview 
第2週
3/08  Infrastructure; Cyber-infrastructure; Data lifecycle 
第3週
3/15  Class activities: Data production (collecting, cleansing, processing, analyzing) and research process 
第4週
3/22  Data storage & preservation, repositories and archives; OAIS 
第5週
3/29  no class- iConference 
第6週
4/05  no class- Spring break  
第7週
4/12  Research data management (RDM): context, policies and impacts; Research Data Services (RDS) 
第8週
4/19  Data curation and curation profiling tools  
第9週
4/26  Data standards and metadata 
第10週
5/03  Data and scholarly communication: data publication; data citation 
第11週
5/10  Immersive Session: Interview “data” with faculty researcher (CSIE) 
第12週
5/17  Midterm checkpoint presentation 
第13週
5/24  Open science topics-I: Data availability (data sharing & reuse) and accessibility 
第14週
5/31  Open science topics-II: Data quality; transparency & reproducibility 
第15週
6/07  Open science topics-III: Citizen science and public libraries 
第16週
6/14  Student presentation- Emerging RDI issues 
第17週
6/21  Student presentation- Emerging RDI issues