Course title
データサイエンス演習   [Exercise for Data Science]
Course category   Requirement   Credit 1 
Department   Year   Semester 3rd 
Course type 3rd  Course code WISE4003
Instructor(s)
近藤 敏之, 王 鐸   [KONDO Toshiyuki, WANG Duo]
Facility affiliation Faculty of Engineering Office   Email address

Course description
Classcode: jo2xgdx

This is an exercise class linked with Outline of Data Science. The Python programming language is used to carry out practical exercises relating to processing, analysis, and visualization of the data which forms the foundation of data science. In addition, students learn and develop an understanding of basic methods of machine learning (e.g., support vector machines, neural networks).
Expected Learning
- Learn the fundamentals of python.
- Ability to process and analyze data using Python, NumPy, SciPy, and Pandas.
- Ability to visualize data using matplotlib.
- Ability to practically implement basic machine learning methods using scikit-learn.
Course schedule
1st session) Orientation, setup of programming exercise environment
2nd session) Fundamentals of Python (variables, data types, control structures)
3rd session) Fundamentals of NumPy (arrays, matrix operations)
4th session) Fundamentals of Pandas (DataFrame construction, data visualization)
5th session) Data visualization (matplotlib)
6th session) Supervised learning using scikit-learn (support vector machines)
7th session) Fundamentals of deep learning
8th session) Summary
Prerequisites
Must take “Outline of Data Science” course before or in the same semester. Good to have programming experience
Required Text(s) and Materials
Handed out as appropriate.
References
Books on Python programming
Assessment/Grading
In-class activities (contribution, mini-quiz): 20%
Exercise assignments to check level of understanding (40%)
Final assignment (40%)
Message from instructor(s)
It is hoped that students will master the practical techniques of data science, and use those skills in their own research.
Course keywords
Python, NumPy, SciPy, Pandas, scikit-learn
Office hours
Questions will be received at any time by email.
Remarks 1
Remarks 2
Related URL
Lecture Language
English
Language Subject
Last update
10/19/2022 12:42:48 AM