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2023 Faculty Courses School of Computing Major courses

Progressive Applied Artificial Intelligence and Data Science C 1

Academic unit or major
Major courses
Instructor(s)
Asako Kanezaki / Katsumi Nitta / Norio Tomii / Kei Miyazaki / Keiji Okumura / Jun Sakuma / Yoshihiro Miyake / Isao Ono / Takao Kobayashi / Naoki Nishimura / Shusaku Yoshizumi / Takayuki Takigawa / Fumio Kawamoto / Yoshiyuki Suimon / Kei Nakagawa
Class Format
Lecture (Livestream)
Media-enhanced courses
-
Day of week/Period
(Classrooms)
9-10 Tue
Class
1
Course Code
XCO.T689
Number of credits
100
Course offered
2023
Offered quarter
1Q
Syllabus updated
Jul 8, 2025
Language
Japanese

Syllabus

Course overview and goals

The goal of this course is to learn the forefront of social implementation in artificial intelligence and data science, and to consider the issues of social implementation of one's research.
The course is given by two classes (Class 1: given in Japanese, Class 2: given in English), and as shown in the lesson plan, overviews of the topic and recent trends are given by lecturers from companies.

Course description and aims

The purpose of this course is to deepen understanding of the social implementation of artificial intelligence and data science, and to enhance students' advanced abilities to play an active role in the real world.

Student learning outcomes

実務経験と講義内容との関連 (又は実践的教育内容)

Lectures of class 1 are given by scientists and engineers of Recruit Inc. and Nomura HD Inc., and lectures of class 2 are given by scientists and engineers of Nomura HD Inc. , Rakuten Group Inc. and Daiichi-Sankyo Inc., about application of AI and Data Science to solve practical problems.

Keywords

artificial intelligence, data science, machine learning, workshop, economic assessment

Competencies

  • Specialist skills
  • Intercultural skills
  • Communication skills
  • Critical thinking skills
  • Practical and/or problem-solving skills

Class flow

This course requires students to take an active role in their own learning. It is required to attend each class.

Course schedule/Objectives

Course schedule Objectives
Class 1 Business Application Workshop on Machine Learning and Data Utilization (1) Introduction of data science technology use cases and workshop using Google Colaboratory (1)
Class 2 Business Application Workshop on Machine Learning and Data Utilization (2) Introduction of data science technology use cases and workshop using Google Colaboratory (2)
Class 3 AI and Data Science in Finance(1) Understand the application of AI and data science in a Financial Company
Class 4 AI and Data Science in Finance(2) Understand the application of AI and data science in a Financial Company
Class 5 AI and Data Science in Finance(3) Understand the application of AI and data science in a Financial Company
Class 6 AI and Data Science in Finance(4) Understand the application of AI and data science in a Financial Company
Class 7 AI and Data Science in Finance(5) Understand the application of AI and data science in a Financial Company

Study advice (preparation and review)

To enhance effective learning, students are encouraged to spend approximately 100 minutes preparing for class and another 100 minutes reviewing class content afterwards (including assignments) for each class.
They should do so by referring to textbooks and other course material.

Textbook(s)

None

Reference books, course materials, etc.

Materials will be provided on T2SCHOLA in advance and shared in Zoom lecture

Evaluation methods and criteria

Based on quizzes evaluating students' understanding at the end of each class and a term-end report.

Related courses

  • XCO.T487 : Fundamentals of Data Science
  • XCO.T488 : Exercises in Fundamentals of Data Science
  • XCO.T489 : Fundamentals of Artificial Intelligence
  • XCO.T490 : Exercises in Fundamentals of Artificial Intelligence
  • XCO.T483 : Applied Artificial Intelligence and Data Science A
  • XCO.T486 : Applied Artificial Intelligence and Data Science D

Prerequisites

This course is intended for doctoral students. For other students, please take Applied AI and Data Science C (XCO.T485-1, XCO.T485-2).

Contact information (e-mail and phone) Notice : Please replace from ”[at]” to ”@”(half-width character).

Katsumi Nitta  nitta.k.aa[at]m.titech.ac.jp
Asako kanezaki  kanezaki[at]c.titech.ac.jp

Office hours

Contact by e-mail in advance to schedule an appointment.