The purpose of this class course is to understand the current status and state-of-the-art of social implementation of AI and data science technologies, and to examine the applicability and challenges of these technologies. In each class, lecturers from companies in various fields such as architecture, IT, finance, and materials will introduce case studies of technology and product development using data science and AI.
The goal is for students to gain a broad perspective of the real world by acquiring knowledge about the application of data science and AI technologies in a wide range of fields, and by explaining their considerations about social applications in their assigned reports.
This course aims to develop ability of each student to be more successful in the real world with the consideration of social implementation of data science and artificial intelligence.
✔ Applicable | How instructors' work experience benefits the course |
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This course will be taught by lecturers from Mizuho Financial Group Inc., Shimizu Corp., Idemitsu Kosan Global Corp., Resonac Corp. and Nissan Motor Corp. based on their practical experience. Please note that the companies giving the lectures are subject to change. |
Data Science, Artificial Intelligence, FinTech, Manufacturing, Construction, Machine Learning, Data Utilization, New Business Development, auto mobile, chemical manufacturer
✔ Specialist skills | Intercultural skills | Communication skills | ✔ Critical thinking skills | ✔ Practical and/or problem-solving skills |
This course is classified as a high-flex type, but can only be taken in designated classrooms in Ookayama and Suzukakedai.
Course schedule | Required learning | |
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Class 1 | Case Studies of Data Science and AI Implementations in the Enterprise | Understanding Data Science and AI Implementation Case Studies in Enterprises |
Class 2 | Data Science and AI Applications in Financial Enterprises | Understanding Data Science and AI Applications in Financial Companies |
Class 3 | Data Science and AI Applications in Construction Enterprise | Understand data science and AI applications in construction companies |
Class 4 | Data Science and AI Applications in Materials Companies | Understanding Data Science and AI Applications in Materials Companies |
Class 5 | Application of Data Science and AI in Chemical Company | Understanding Data Science and AI Applications in Chemical Companies |
Class 6 | Data Science and AI Applications in Automotive Companies | Understanding Data Science and AI Applications in Automotive Companies |
Class 7 | Case Studies of Data Science and AI Implementations in the Enterprise | Understanding Data Science and AI Implementation Case Studies in Enterprises |
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.
None required.
Materials will be provided on T2SCHOLA in advance.
No final exam will be given. The evaluation will be based on the reports of each assignment.
Only students of doctor curse are acceptable. Other students must take DSA.P432 " Applied Practical Data Science and AI 3B" instead of this course.
Asako Kanezaki, Katsumi Nitta, Norio Tomii
lecture_ap[at]dsai.titech.ac.jp
Contact by e-mail in advance to schedule an appointment.
・This class is a technical course that can be considered an entrepreneurship course. The GAs that this subject corresponds to are GA0M and GA1M (added March 29, 2024).
・This syllabus may be revised before the start of the third quarter.