머신 러닝 I 강의 계획서

주차 Topic 내용
01주차 Understanding AI and ML (pdf) Course Orientation, ML Overview
02주차 Basic Math in ML (pdf) Probability, Linear Algebra, Derivative
03주차 Numpy Basics (ipynb) Numeric Operation in ML
04주차 Data Visualization Matplotlib Basic Visualiaztion
for ML using Matplotlib
05주차 Pandas Basics for ML Series, DataFrame,
Indexing, Selection,
Missing Data, Basic Operations
06주차 Pandas Applications and Regression Preview By exploiting Pandas,
◦ Data Handling
◦ Working with DB
◦ Regression Preview
07주차 Model Performance Evaluation Classificantion Metrics,
Regression Metrics,
Model Performance Evaluation Practice
08주차 Mid-term Exam (중간고사: 자료 없음)
09주차 Linear Regression Theory Concept of Dataset,
Regression Purpose,
Training, Prediction, Evaluation,
Gradient Descent
10주차 Linear Regression Practice Practice 1
◦ Codes: notebook 1
◦ Dataset: salary.csv
Practice 2
◦ Codes: notebook 2
◦ Dataset: kc_house.csv
11주차 Logistic Regression Theory Feature Space, Decision Boundaries,
Classification Methods, Loss Function,
Graident Descent
12주차 Logistic Regression Practice Practice 1
◦ Codes: notebook 1
◦ Dataset: social_network_ads.csv
Practice 2
◦ Codes: notebook 2
◦ Dataset: diabetes.csv
📘 Professor's Recommendation
13주차 Decision Trees Practice
◦ Codes: zip file
14주차 K-Nearest Neighbors (KNN) Practice
◦ Codes: zip file
15주차 Final Exam (기말고사: 자료 없음)

⬆️목차이동