Aaron Meyer
Department of Bioengineering
AD
2.0
Overall Rating
Based on 2 Users
Easiness 3.0 / 5 How easy the class is, 1 being extremely difficult and 5 being easy peasy.
Clarity 2.5 / 5 How clear the class is, 1 being extremely unclear and 5 being very clear.
Workload 2.5 / 5 How much workload the class is, 1 being extremely heavy and 5 being extremely light.
Helpfulness 3.5 / 5 How helpful the class is, 1 being not helpful at all and 5 being extremely helpful.

TOP TAGS

There are no relevant tags for this professor yet.

GRADE DISTRIBUTIONS
44.0%
36.7%
29.3%
22.0%
14.7%
7.3%
0.0%
A+
A
A-
B+
B
B-
C+
C
C-
D+
D
D-
F

Grade distributions are collected using data from the UCLA Registrar’s Office.

60.0%
50.0%
40.0%
30.0%
20.0%
10.0%
0.0%
A+
A
A-
B+
B
B-
C+
C
C-
D+
D
D-
F

Grade distributions are collected using data from the UCLA Registrar’s Office.

ENROLLMENT DISTRIBUTIONS
Clear marks

Sorry, no enrollment data is available.

AD

Reviews (2)

1 of 1
1 of 1
Add your review...
Quarter: Winter 2023
Grade: N/A
June 29, 2023

Terrible class, and meyer was unfortunately very unclear and unhelpful. Seems like a nice enough guy, but just had no good structure or idea how to teach concepts effectively. The concepts were disjoint, random, and not useful to anything we have done or need to do later. Also why is it in python if we only have to learn C++, but we never learn how to do any of the code, he just gives us complex problems.

Helpful?

0 0 Please log in to provide feedback.
Quarter: Winter 2022
Grade: A-
COVID-19 This review was submitted during the COVID-19 pandemic. Your experience may vary.
Verified Reviewer This user is a verified UCLA student/alum.
March 22, 2022

This class is incredibly useful if you are interested in research, but also incredibly frustrating because of the homeworks.

The class follows a structure where a statistical concept or model will be introduced in lecture and then you will implement that model using python in the following week's homework. The implementation of the model is based on a bioengineering paper, so if the authors did linear regression, then you will perform the same linear regression with the author's data. In theory, this is a great way to show how statistics is used in research and teaches you exactly how you might come to a certain conclusion with data you collected. But in practice the homework questions are often vaguely worded, so you don't know exactly what is expected of you and you don't know what your results are supposed to look like. This led to the homeworks taking (me) upwards of 8 hours to complete. However, Meyer and the TAs are VERY helpful in clarifying what the questions are asking for and what you should be looking for in the final result. For the love of god, I cannot stress this enough: go to office hours every single week. Every 10 minutes spent in office hours saves you an hour of frustration. If you have any exposure to coding, then python is a very simple language to learn and not the main obstacle when it comes to doing the homework.

The grading scheme was:
Final Project (30%)
Midterm (30%)
Homework Assignments (20%)
Class Participation (20%)

Our year's midterm was hard (supposedly the hardest in the history of the class according to the TA), but it is about half easy-memorization questions and half hard-application-of-statistics-equations questions.

The final project is a group project where your group has to come up with a novel data analysis of some biology related data set (although it doesn't have to be biology related, a couple groups did analyses on video games such as pokemon and super smash bros). The difficulty of this depends a lot on what kind of model you decide to implement and the data that you are using. If the dataset is poorly formatted, then a lot of your time might get sucked into reformatting it. If your model is finicky, then you might not get any conclusive results (which is perfectly fine).

Class participation is mainly just general class participation and getting feedback on project proposals before submitting, so this should be a free 20%.

Helpful?

0 0 Please log in to provide feedback.
Quarter: Winter 2023
Grade: N/A
June 29, 2023

Terrible class, and meyer was unfortunately very unclear and unhelpful. Seems like a nice enough guy, but just had no good structure or idea how to teach concepts effectively. The concepts were disjoint, random, and not useful to anything we have done or need to do later. Also why is it in python if we only have to learn C++, but we never learn how to do any of the code, he just gives us complex problems.

Helpful?

0 0 Please log in to provide feedback.
COVID-19 This review was submitted during the COVID-19 pandemic. Your experience may vary.
Verified Reviewer This user is a verified UCLA student/alum.
Quarter: Winter 2022
Grade: A-
March 22, 2022

This class is incredibly useful if you are interested in research, but also incredibly frustrating because of the homeworks.

The class follows a structure where a statistical concept or model will be introduced in lecture and then you will implement that model using python in the following week's homework. The implementation of the model is based on a bioengineering paper, so if the authors did linear regression, then you will perform the same linear regression with the author's data. In theory, this is a great way to show how statistics is used in research and teaches you exactly how you might come to a certain conclusion with data you collected. But in practice the homework questions are often vaguely worded, so you don't know exactly what is expected of you and you don't know what your results are supposed to look like. This led to the homeworks taking (me) upwards of 8 hours to complete. However, Meyer and the TAs are VERY helpful in clarifying what the questions are asking for and what you should be looking for in the final result. For the love of god, I cannot stress this enough: go to office hours every single week. Every 10 minutes spent in office hours saves you an hour of frustration. If you have any exposure to coding, then python is a very simple language to learn and not the main obstacle when it comes to doing the homework.

The grading scheme was:
Final Project (30%)
Midterm (30%)
Homework Assignments (20%)
Class Participation (20%)

Our year's midterm was hard (supposedly the hardest in the history of the class according to the TA), but it is about half easy-memorization questions and half hard-application-of-statistics-equations questions.

The final project is a group project where your group has to come up with a novel data analysis of some biology related data set (although it doesn't have to be biology related, a couple groups did analyses on video games such as pokemon and super smash bros). The difficulty of this depends a lot on what kind of model you decide to implement and the data that you are using. If the dataset is poorly formatted, then a lot of your time might get sucked into reformatting it. If your model is finicky, then you might not get any conclusive results (which is perfectly fine).

Class participation is mainly just general class participation and getting feedback on project proposals before submitting, so this should be a free 20%.

Helpful?

0 0 Please log in to provide feedback.
1 of 1
2.0
Overall Rating
Based on 2 Users
Easiness 3.0 / 5 How easy the class is, 1 being extremely difficult and 5 being easy peasy.
Clarity 2.5 / 5 How clear the class is, 1 being extremely unclear and 5 being very clear.
Workload 2.5 / 5 How much workload the class is, 1 being extremely heavy and 5 being extremely light.
Helpfulness 3.5 / 5 How helpful the class is, 1 being not helpful at all and 5 being extremely helpful.

TOP TAGS

There are no relevant tags for this professor yet.

ADS

Adblock Detected

Bruinwalk is an entirely Daily Bruin-run service brought to you for free. We hate annoying ads just as much as you do, but they help keep our lights on. We promise to keep our ads as relevant for you as possible, so please consider disabling your ad-blocking software while using this site.

Thank you for supporting us!