COMP30027
Machine Learning
COMP30027 is rated by StudentVIP members:
Textbooks
We don't have any textbooks for this subject yet.
Why don't you be the first?
Sell your textbook for COMP30027Notes
View all COMP30027 notesโ Complete H1 Summary Notes โ COMP30027: Machine Learning
This note set covers the full subject of COMP30027 โ Machine Learning for the 2022 Semester 1 Curric...
67 pages, 9717 words
[H1] Machine Learning Notes
This Note for Machine Learning is used for revision purposes. It contains all lecture+tutorial topic...
35 pages, 4910 words
Tutors
Become a tutor for COMP30027Ben
$49 per hour
Completed a Mathematics and Statistics degree at Melbourne Uni with First Class Honours. Been tutori...
Stuart
$70 per hour
Maths Graduate with First Class Honours| 5 Years, 3000+ hours of tutoring experience| 99.80 ATAR| Fr...
Chiquitta
$45 per hour
๐๐ง๐ฅ๐ข๐ง๐ ๐๐ฎ๐ญ๐จ๐ซ๐ข๐ง๐ ๐ฏ๐ข๐ ๐๐๐๐ ๐ข๐ฌ ๐๐ฏ๐๐ข๐ฅ๐๐๐ฅ๐. Hi, I am a recent graduate of Bachelor of Science at the U...
Mah
$50 per hour
we offer expert tutoring across a diverse range of subjects and fields. Our team of experienced tuto...
Billie
$25 per hour
Awesome tutor || Homework helper || Cramming expert || PhD scholarship holder ** Learning is a...
Karl
$70 per hour
PhD student in Statistical Inference and Machine Learning, Master Degree in Electrical Engineering,...
Jack
$50 per hour
Dux and experienced tutor offering help to excel in your FINAL EXAMS. I offer packages to help you p...
Hoan
$45 per hour
As a University of Melbourne graduate in Data Science and Computer Science, currently working in cyb...
Chloe
$45 per hour
I'm in undergrad at Melbourne Uni studying Computer Science. I was previously in a Bachelor of Comme...
Seed
$90 per hour
I received my PhD at The University of Melbourne followed by M.Sc. and B.Sc. all in Mechanical Engin...
Reviews
I enjoyed this subject overall. The lecturer for the first half of the course, Chris, is just amazing, she just knows how to teach. The lectures covered the high level theory for different ML models, with 4 lectures dedicated to neural networks and large language models at the end. Tutorials were super useful and engaging (would recommend Jey) and the two assignments were not too heavy and very good practice. Overall I walked away feeling like I gained lot, from the theoretical properties of different models to the actual practice of implementing a ML model. I feel I can go on to use the skills I learnt for personal projects now (exactly what I'd want out of a subject as a data science major). The workload was also very manageable with 2 lectures a week.
Anonymous, Semester 1, 2024
As someone who has little statistics background, this course had a steep learning curve. That being said, the challenge was really enjoyable. Material is presented in an interesting and engaging way, both lecturers are great (though Ling moves really fast). Tutorials were genuinely helpful and interesting which is uncommon in CS i find. Best part of this subject is that all the content is taught at a high level. Algorithms are demonstrated (and examined) but this really just serves to deep your understanding of all the models and concepts. The final exam is mostly short and long answer questions. Assignments are code-based but no serious programming skill is necessary, again, they test more high level understanding. Very cool.
Anonymous, Semester 1, 2021
Overall content was interesting, but I wished more focus was put on the later topics. The subject started out a bit too slowly and reiterated some concepts from Elements of Data Processing in the first few weeks. The later weeks involved more interesting topics like hidden Markov models, mixture models and deep learning. Part of the second assignment involved a Kaggle in-class competition, which was quite a fun experience. I would recommend this subject as a starting point for those interested in machine learning or data science.
Anonymous, Semester 1, 2020
Subject content was alright overall with a strong focus on theory rather than maths. The lecturer Kris is great, absolutely loved her. The assignments werenโt too exciting, where the first one was building a Naive Bayes model from scratch and the second one was writing a report for a sentiment analysis task. If you really want to learn machine learning there are way better courses online (eg Andrew Ng). I wanted to give this subject a try but now that Iโve completed it I wish I took another subject instead.
Anonymous, Semester 2, 2020
Subject has no maths pre-req, but they did try to attempt to cover "Linear Statistical Models" in 1 lecture. The usual lecturer is great, given that the maths is not a pre-req (at least tries to make it interesting). However, he was sick for a vast majority of the time we took the subject so my experience may be a bit more biased to the worse side. A lot of content was attempted to be covered and felt a bit too ambitious given that the maths was not pre-req. First assignment is a joke if you have done maths, but the second is a lot more interesting. Quoting my tutor: "this subject is a money grabber because no one would take this subject if Probability was an actual pre-req". Next year, it will be run under a different lecturer who has taken a lot of the feedback into account. I can now say that I will highly recommend this subject next year !
Anonymous, Semester 1, 2019
Content's pretty interesting with some enjoyable projects. Jeremy who lectured before becoming ill mid semester was really good, and showed genuine enthusiasm in the content. From what I've seen with EoDP and now this subject, tutes and labs are hit or miss. I was lucky to get a good lab demonstrator who seemed interested in teaching though my tutor literally did the tutorial for us like it was high school or something. The focus of the subject is a bit obscured at times, as they included these large number of slides with mathematical formulas yet were never properly assessed as this is not a maths subject, which begs the question for their inclusion in the first place. The lecturer told us that they're like a necessary evil, where you need to know some basics of maths to understand some of the content which is fine, but including multiple slides explaining hyperplane optimisation with grandiose formulas only for us to never use it is a bit weird. Overall I enjoyed this subject even though the exam was VERY crammed for 2 hours. I look forward to using the skills I've learnt to work on personal data projects as really that's what you should be getting out of these subjects.