/RU_courses_archive

Archive of courses' homework, exercise and project in Rutgers

Primary LanguageJupyter NotebookOtherNOASSERTION

RU_courses_archive

work space of courses' homework, exercise and project

Fall 2018

here is some basic information about the courses, you can check my blog for more detail.

ECE424: introduction to information & network security

instructor: Wade Trappe

no syllabus, topic depends on the instructor.

ECE445: machine learning for engineers

instructor: Waheed U. Bajwa

syllabus here

ECE503: programming finanace

instructor: Shiyu Zhou

syllabus here

Spring 2019

here is some basic information about the courses, you can check my blog for more detail.

ECE568: Software Engineering of Web Applications

instructor: Shiyu Zhou

syllabus here

CS512: Introduction to Data Structures and Algorithms

instructor: Antonio Miranda

Introduction here

CS520: Introduction To Artificial Intelligence

instructor: Wes Cowan

syllabus here

Fall 2019

CS536: Machine Learning

instructor: Casimir Kulikowski

Knowledgeable and experienced professor. Student need to take small quizzes every class. Professor focus more on metaphysical topics. If you want to learn something practical about machine learning, maybe other instructors are better.

CS541: Advanced Data Management

instructor: Dong Deng

course homepage

Seminar type course. Cover some interesting topics about database and data processing. Good for students who want to learn some pragmatic and novel algorithms. Nice professor ( now is my doctoral advisor :) .

Spring 2020

CS672: Data Science for Smart Cities

instructor: Desheng Zhang

syllabus here

Seminar type course. Inspire students to think more. Connect data science with cities. Good for senior undergraduate students and graduate students who have some data science background.

ECE579: Introduction to Deep Learning

instructor: Bo Yuan

Very good for DL beginners. Nice organization and assignments.

Warning

For Rutgers students, you MUST strictly adhere to Rutgers University's Principles of Academic Integrity when learning anything from GitHub.

License

All the codes are licensed under Anti-996-License-1.0

All the contents except codes are licensed under CC BY-NC-SA 3.0