Basics in distributed data storage, retrieval, processing and cloud computing. Overview of methods for analyzing big data from both high dimensional statistics and machine learning - topics chosen from penalized regression, classification/clustering, dimension reduction, random projections, kernel methods, network clustering, graph analytics, supervised and unsupervised learning among others.

Prerequisites: PSTAT 131 or PSTAT 231 or Computer Science 165B; and Computer Science 9 (preferred) or Computer Science 16. A minimum letter grade of C or better must be earned in each course.

4

Units

Optional

Grading

1, 2

Passtime

None

Level Limit

Letters and science

College
These majors only finms stsds actsc stsap stats
ICHIBA T
Tomoyuki Ichiba
3.7
17 reviews
AI predicted, based on past grading trends of the course and instructor, class info, and 127 other factors
PHELP1526
T
12:00 PM - 12:50 PM
25 / 25 Full

PHELP1526
T
13:00 PM - 13:50 PM
25 / 25 Full

PHELP1525
T
16:00 PM - 16:50 PM
25 / 25 Full

PHELP1513
T
17:00 PM - 17:50 PM
25 / 25 Full

PHELP1526
T
14:00 PM - 14:50 PM
25 / 25 Full

PHELP1525
T
15:00 PM - 15:50 PM
25 / 25 Full

Winter 2024 . Oh Sang-Yun
NH 1006
T R
15:30 PM - 16:45 PM
Spring 2025 . Oh Sang-Yun
NH 1006
T R
15:30 PM - 16:45 PM
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PSTAT 135 Oh Sang-Yun Spring 2025 Total: 96
PSTAT 135 Oh Sang-Yun Winter 2024 Total: 100
See All
17
3.7
PSTAT160A . Ichiba T 4 Months Ago

Boring lectures, hard exams, learn nothing from this course

0 helpful 0 unhelpful
PSTAT-213A . Ichiba T 1 Year, 2 Months Ago

[Fall 2024] 213A with Ichiba was a fine class, though I wish he did a better job at motivating the topics. He speaks softly which made it difficult to hear. Notwithstanding, his lectures were very clear and he was very kind. His exams were easy and straightforward, giving us a ton of leeway. He often gave good hints for homework, though not always.

0 helpful 0 unhelpful
PSTAT174 . Ichiba T 2 Years Ago

Professor Ichiba is very organized, grading criteria is very clear, and Final was a project instead of a test. This class was challenging but all the work was doable. His lectures sadly are very boring and you don't necessarily need to attend class as it's all posted online. He clearly is a very intelligent guy.

0 helpful 0 unhelpful
PSTAT8 . Ichiba T 3 Years Ago

Really accommodating and helpful

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PSTAT8 . Ichiba T 3 Years Ago

He's nice and willing to help, and accessible outside class. As a person, I'd rate him as a 5. Not sure if it's because he's filling in for another prof, but the class itself sucks. Lectures are vague, and the exams, homework, and section problems are all completely different. Also, the grading criteria is terrible and unclear. overall not very fun

0 helpful 0 unhelpful
PSTAT8 . Ichiba T 3 Years Ago

One of the most patient and caring professors I've had. Accommodated my disability wonderfully and was very helpful when I was struggling to absorb all the material. Provides HW solutions to help us out, which was a godsend for the final -- final was basically HW and lecture problems but slightly different. Glad he's the head of the dept now.

1 helpful 0 unhelpful
See all 17 reviews
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