Hiroshima University Syllabus

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Japanese
Academic Year 2024Year School/Graduate School School of Informatics and Data Science
Lecture Code KA236001 Subject Classification Specialized Education
Subject Name 情報科学演習II
Subject Name
(Katakana)
ジョウホウカガクエンシュウ2
Subject Name in
English
Informatics and Data Science Exercise II
Instructor HIRAKAWA MAKOTO,KITASUKA TERUAKI
Instructor
(Katakana)
ヒラカワ マコト,キタスカ テルアキ
Campus Higashi-Hiroshima Semester/Term 3rd-Year,  First Semester,  2Term
Days, Periods, and Classrooms (2T) Thur1-3:East Library 3F Seminar Rm A,East Library 3F Seminar Rm B,East Library 3F Seminar Rm C,East Library 3F Seminar Rm D,ENG 111
Lesson Style Seminar Lesson Style
(More Details)
 
Hands-on practice 
Credits 1.0 Class Hours/Week   Language of Instruction B : Japanese/English
Course Level 3 : Undergraduate High-Intermediate
Course Area(Area) 25 : Science and Technology
Course Area(Discipline) 02 : Information Science
Eligible Students Dept. Info.
Keywords Dijkstra's Algorithm, data analysis 
Special Subject for Teacher Education   Special Subject  
Class Status
within Educational
Program
(Applicable only to targeted subjects for undergraduate students)
 
Criterion referenced
Evaluation
(Applicable only to targeted subjects for undergraduate students)
Computer Science Program
(Abilities and Skills)
・A. Information infrastructure development technology, information processing technology, technology that analyzes data and creates new added value.
・B. Ability to identify new problems independently and solve them through quantitative and logical thinking based on data, multifaceted perspectives, and advanced information processing and analysis.
・D3. Knowledge of hardware and software and programming ability to process data efficiently.

Data Science Program
(Knowledge and Understanding)
・D1. Knowledge and ability to understand the theoretical framework of statistics and data analysis and to analyze qualitative/quantitative information of big data accurately and efficiently.
(Abilities and Skills)
・A. Information infrastructure development technology, information processing technology, technology that analyzes data and creates new added value.
・B. Ability to identify new problems independently and solve them through quantitative and logical thinking based on data, multifaceted perspectives, and advanced information processing and analysis.

Intelligence Science Program
(Abilities and Skills)
・A. Information infrastructure development technology, information processing technology, technology that analyzes data and creates new added value.
・B. Ability to identify new problems independently and solve them through quantitative and logical thinking based on data, multifaceted perspectives, and advanced information processing and analysis.
・D2. Information processing ability and data analysis ability to contribute to the application and development of artificial intelligence and IoT. 
Class Objectives
/Class Outline
In this class, students engage in exercises on specialized and practical content based on the knowledge that has been widely learned in previous lectures of the Faculty of Information Science. Students learn the ability to find solutions for given exercises and problems, to deal with them, and to summarize the results as reports in this class. Exercises will be conducted on the theme of "algorithms and data structures II" and "data analysis using R packages". All students engage in both themes through this class.  
 
Class Schedule week 1. guidance for the two themes, distribution for materials and notes.

2-4. algorithms and data structures II (Kitasuka)
week 2 Measure the difference in search time between hashes and lists. Handle graphs in programs.
week 3 Solving the single starting point shortest path problem with the Dijkstra algorithm.
week 4 Estimate and measure execution time.
All of these are done in Python on Colaboratory.

5-7. data analysis using R packages (Hirakawa)
week 5 Data handling using tidyverse package
week 6 Data visualization using ggplot2 package
week 7 Exercises in psychological data analysis

week 8. Preparation and writing of final reports

Assign final report tasks for each theme. 
Text/Reference
Books,etc.
Algorithms and data structures II: Text will be distributed.
Data analysis using R packages: Materials will be distributed. 
PC or AV used in
Class,etc.
 
(More Details) handouts, PC 
Learning techniques to be incorporated  
Suggestions on
Preparation and
Review
Algorithms and data structures II: Please do each assignments by the deadline.
Data analysis using R packages: Please do each assignments by the deadline. 
Requirements  
Grading Method Comprehensively evaluate final reports and regular examinations.
Each of the two final reports must be at least 60% in order to receive credit. 
Practical Experience  
Summary of Practical Experience and Class Contents based on it  
Message  
Other   
Please fill in the class improvement questionnaire which is carried out on all classes.
Instructors will reflect on your feedback and utilize the information for improving their teaching. 
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