2021 Fall
INDENG 235 001 - LEC 001
Applied Data Science with Venture Applications
Data-X
Ikhlaq Sidhu, Derek S Chan
Class #:28778
Units: 3
Instruction Mode:
In-Person Instruction
Time Conflict Enrollment Allowed
Offered through
Industrial Engineering and Operations Research
Current Enrollment
Total Open Seats:
6
Enrolled: 28
Waitlisted: 0
Capacity: 34
Waitlist Max: 23
No Reserved Seats
Hours & Workload
3 hours of instructor presentation of course materials per week, and 6 hours of outside work hours per week.
Other classes by Ikhlaq Sidhu
Other classes by Derek S Chan
Course Catalog Description
This is an advanced project course in data science that offers a "maker" and/or "innovation" viewpoint. The course is focused first on developing an open-ended-real world project relating to data science. Related concepts of computer science tools and theoretical concepts are covered to support the project. These concepts include filtering, prediction, classification, LTI systems, and spectral analysis. After reviewing each concept, we explore implementing it in Python using libraries for math array functions, manipulation of tables, data architectures, natural language, and ML frameworks.
Class Description
Today, the world is literally reinventing itself with Data and AI. However, learning a set of ‘related theories’ and being able to ‘make it work’ are not the same. And, in areas as important as Artificial Intelligence, Data Science, and Machine Learning, if we collectively cannot actually implement and create, then we'll reduce our competitive advantage, economic strength, and even national/global security.
The Data-X framework is designed to bridge the gap between theory and practice as well as academia and industry, by exposing students to state-of-the-art implementation techniques and mindsets.
This highly-applied course surveys a variety of key concepts and tools that are useful for designing and building data science, AI, and Machine Learning applications and systems. The course introduces modern, open source computer programming tools, libraries, and code samples that can be used to implement data applications. The mathematical concepts highlighted in this course include filtering, prediction, classification, decision-making, LTI systems, spectral analysis, and frameworks for learning from data. Each math concept is linked to implementation using Python libraries like NumPy for math array functions, Pandas for manipulation of tables, Scikit-learn for machine learning modeling, Tensorflow and Keras for deep learning, and many other topics related to NLP, Neural Networks, Recommender Systems etc.
See https://datax.berkeley.edu/ and https://scet.berkeley.edu/students/courses/data-x/ for more information for more information.
Students from all majors are welcome; however, due to the technical nature of this class, students must have the ability to write code in Python, and have taken a probability or statistics course.
Class Notes
This class is the same data-x class that was previously offered as INDENG 290.
This course counts towards the SCET Certificate in Technology and Entrepreneurship. Additional information: https://scet.berkeley.edu/certificate-in-entrepreneurship-and-technology/. Questions about SCET cour.. show more
This course counts towards the SCET Certificate in Technology and Entrepreneurship. Additional information: https://scet.berkeley.edu/certificate-in-entrepreneurship-and-technology/. Questions about SCET cour.. show more
This class is the same data-x class that was previously offered as INDENG 290.
This course counts towards the SCET Certificate in Technology and Entrepreneurship. Additional information: https://scet.berkeley.edu/certificate-in-entrepreneurship-and-technology/. Questions about SCET course enrollment or certificate can be directed to lee.2293@berkeley.edu. show less
This course counts towards the SCET Certificate in Technology and Entrepreneurship. Additional information: https://scet.berkeley.edu/certificate-in-entrepreneurship-and-technology/. Questions about SCET course enrollment or certificate can be directed to lee.2293@berkeley.edu. show less
Rules & Requirements
Repeat Rules
Course is not repeatable for credit.
Reserved Seats
Current Enrollment
No Reserved Seats
Textbooks & Materials
See class syllabus or https://calstudentstore.berkeley.edu/textbooks for the most current information.
Guide to Open, Free, & Affordable Course Materials
Associated Sections
None