Probability spaces: axioms, sigma-algebras, monotone class theorems, construction of probability measures on measurable spaces. Random variables. Expectations (integral Lebesgue). Product spaces and Fubini theorem. L2 spaces of random variables.

Prerequisites: PSTAT 120A.

4

Units

Optional

Grading

1, 2

Passtime

None

Level Limit

Letters and science

College
Unlocks PSTAT 213B
These majors only stsap stats
HU R
Ruimeng Hu
4.5
6 reviews
AI predicted, based on past grading trends of the course and instructor, class info, and 127 other factors
Fall 2025 . Hu R
ILP 3105
T R
12:30 PM - 13:45 PM
Fall 2024 . Shkolnik A D
HSSB 1211
T R
11:00 AM - 12:15 PM
See All
PSTAT 210 Hu R Fall 2025 Total: 23
PSTAT 210 Shkolnik A D Fall 2024 Total: 12
6
4.5
PSTAT-213B . Hu R 17 Days Ago

The goat of numerical analysis

0 helpful 0 unhelpful
PSTAT-213B . Hu R 1 Year, 30 Days Ago

I'm definitely biased because I come from a math background, but 213B Hu was amazing! Her lectures were very insightful and she does a good job at communicating the motivation/intuition behind each concept. Her exams, while difficult, were curved very generously. You definitely need a good grasp of analysis to fully appreciate her teaching though.

0 helpful 0 unhelpful
PSTAT171 . Hu R 3 Years Ago

This class is honestly no joke. The material doesn't seem impossible but then you get the exam and ur like...lol. But Hu is super nice and cares about her student plus there was a fatty curve so overall it was chill. Hard class but curve is huge and the professor and TAs know what they're talking about

0 helpful 0 unhelpful
PSTAT171 . Hu R 3 Years Ago

The course has a reputation being difficult, but Ruimeng made it doable. She provided a lot of resources, ranging from review problems to annotated slides, to help you review for the exams. Her midterm was 5 multiple choices and her final was 10 ones. The homework were graded by two randomly chosen questions. Overall, it was a enjoyable course.

0 helpful 0 unhelpful
PSTAT171 . Hu R 5 Years Ago

Professor Hu is so passionate and excited about the material that sometimes she goes too fast during lecture, if you ask her she will always slow down. Material is unbelievably hard but going to office hours helps a lot. Do the weekly homework and understand the concepts thoroughly, memorizing does not help. I would definitely take her class again

0 helpful 0 unhelpful
PSTAT171 . Hu R 5 Years Ago

HW 25%, Midterm 25%, Final 25%. Professor Hu is very nice and a great prof, really doing her best. But the course is very formula-heavy and even with many examples it's unclear how to apply them in each situation. CLAS is necessary to pass (at least online), be ready for lots and lots of word problems

0 helpful 0 unhelpful
PSTAT 197A
0 / 60 Enrolled
Data Science Capstone Project Preparation
Sang-Yun Oh 2.2 Katie Coburn 3.1
T R
15:30 PM - 16:45 PM
PSTAT 199
0 / 10 Enrolled
Independent Studies in Statistics
T B A
PSTAT 207A
0 / 30 Enrolled
Statistical Theory
Sreenivasa Jammalamadaka 4.3
T R
14:00 PM - 15:15 PM
PSTAT 213A
0 / 30 Enrolled
Introduction To Probability Theory And Stochastic Processes
Raisa Feldman 2.8
T R
09:30 AM - 10:45 AM
PSTAT 220A
0 / 40 Enrolled
Advanced Statistical Methods
Alexander Franks 4.6
T R
11:00 AM - 12:15 PM
PSTAT 223A
0 / 20 Enrolled
STOCHASTIC CALCULUS AND APPLICATIONS
Jean-Pierre Fouque 4.0
T R
12:30 PM - 13:45 PM