Lecture, four hours; discussion, two hours; outside study, six hours. Requisite: course 143 or 180 or equivalent. With unprecedented rate at which data is being collected today in almost all fields of human endeavor, there is emerging economic and scientific need to extract useful information from it. Data analytics is process of automatic discovery of patterns, changes, associations, and anomalies in massive databases, and is highly inter-disciplinary field representing confluence of several disciplines, including database systems, data warehousing, data mining, machine learning, statistics, algorithms, data visualization, and cloud computing. Survey of main topics in big data analytics and latest advances, as well as wide spectrum of applications such as bioinformatics, E-commerce, environmental study, financial market study, multimedia data processing, network monitoring, social media analysis. Letter grading.

Review Summary

Clarity
6.7 / 10
Organization
8.3 / 10
Time
10-15 hrs/week
Overall
6.7 / 10

Reviews

    Quarter Taken: Fall 2023 In-Person
    Grade: B+

    Teacher and TAs were nice and understanding. Class was generously curved. Content was interesting. Group project was alright, however, was not relevant to the class assignments, material, and exams.

Course

Instructor
Wei Wang
Previously taught
24F 23F 21F 20S

Grading Information

  • Has a group project

  • Attendance not required

  • 1 midterm

  • Finals week final

  • 0% recommend the textbook

Previous Grades

Grade distributions not available.