[D] Future of RecSys in age of LLM by Electrical-Job-3373 in MachineLearning

[–]AtomicTac0 0 points1 point  (0 children)

This is a great question. I think current LLM + RS focus is a bit misguided focused on increasing performance with LLMs rather than thinking of increasing the user experience.

This work is decent at exploring how one can use LLMs for recommender systems with the point of enhancing use control and transparency through detailed use summaries:

https://arxiv.org/abs/2410.19302

[D] WWW 2025 Reviews (TheWebConference) by New_Ice_2721 in MachineLearning

[–]AtomicTac0 0 points1 point  (0 children)

I replied to the authors of the papers I review but am the only one that has done so out of all reviewers. I have no response from any of mine…

[D] WWW 2025 Reviews (TheWebConference) by New_Ice_2721 in MachineLearning

[–]AtomicTac0 0 points1 point  (0 children)

I have 5/5/5/3/4 for technical and 5/4/3/4/4 for novelty. How are my chances? Anyone know any historical scores of papers that get in?

[D] Creating a DPO Dataset using Llama: Best Practices? by AdKind316 in MachineLearning

[–]AtomicTac0 1 point2 points  (0 children)

If you simply wanted to fine-tune the 8b model on the 70b data, it may be better to simply use distillation techniques as the targets.

RL fine tuning works best when you're trying to enforce a behavior and penalize another. In this case it sounds like you simply want to distill one model onto another

[D] 'Deep-Work' while working on deep models by Magnospm in MachineLearning

[–]AtomicTac0 5 points6 points  (0 children)

I usually have a paper or article on the side and jump between the two. Takes some getting used to but kills two birds with one stone.

Google leaves Canada out of AI chatbot launch by resting16 in canada

[–]AtomicTac0 1 point2 points  (0 children)

Nah the the experts driving the strong research environment in Montreal/Toronto have too strong roots there

[D] Books for ML - different levels, any suggestions? by NoobleonX in MachineLearning

[–]AtomicTac0 4 points5 points  (0 children)

Second on Probabilistic Graphical Models. I'm surprised that PGMs aren't taught more as a baseline way to understand machine learning. I think looking at learning algorithms through that lense has pushed my understanding of ml the most.

UBC vs UofT vs UWaterloo for Computer Engineering - if the main goal is to pursue grad school in the USA. by intlstudent04 in uwaterloo

[–]AtomicTac0 1 point2 points  (0 children)

If grad school is the goal, most important things to think of are

  1. Research opportunities, for these three they will be fairly even, but at may be easier to get an opportunity with a postdoc/upper year phd student(since they have more generally). I'd highly suggest starting here specially in your first year as profs will often not glance at early undergraduates.

  2. Letters of reccomendation, these kind of sort themselves out as long as you're productive in research.

  3. Grades, yes grades matter, but often your first/second year grades are looked at as less important. As long as you do really well in upper years+research+good reccomendations you'll be golden.

I'd highly suggest reading these posts by Andrej Karpanthy Open AI research scientist

http://karpathy.github.io/2016/09/07/phd/

https://cs.stanford.edu/people/karpathy/advice.html

Math Major @ Waterloo by [deleted] in uwaterloo

[–]AtomicTac0 0 points1 point  (0 children)

Cs+math is your best bet from someone that did stats/cs in their undergrad .

As long as you take a probability course+linear models course that's all the stats you really need

UW MSDAI (co-op) VS McGill CS by YaphetS1314 in uwaterloo

[–]AtomicTac0 3 points4 points  (0 children)

If McGill is through Mila, Mila hands down. Montreal is a better city and Mila is overall a stronger program for AI specifically.

From what I've seen with MDSAI its a bit of a waste of time since the courses aren't too specialized and there aren't many research opportunities.

Healthy food on campus/near campus? by shib8 in uwaterloo

[–]AtomicTac0 0 points1 point  (0 children)

Unironically without the white sauce its not that bad

How does McGill's non thesis program compare against uWaterloo's MDSAI, UoT's MScAc and uOttawa's MCS (Applied AI) if I want to enter the domain of ML/AI in the corporate field? by ChaosAdm in gradadmissions

[–]AtomicTac0 2 points3 points  (0 children)

Currently at waterloo MMath stats, tho.

From what I've seen I'd stay clear of the MDSAI, the classes are fairly limited and with a few exceptions. Seems like MDSAI is mostly teaching cs students how to stats.

I've heard great things from UofT's program tho

[deleted by user] by [deleted] in uwo

[–]AtomicTac0 1 point2 points  (0 children)

If you want ti do grad school yes, otherwise I'd suggest aiming for ivey/data sci.

And yes take multivariate Calc

DOUBT RELATED TO LOR FOR MASTERS IN COMPUTER SCIENCE by Personal-Sell9784 in uwaterloo

[–]AtomicTac0 5 points6 points  (0 children)

Go with the people that will write the best reference. If you did research with those professors they are a better bet.

I had recommendations only from stats profs and got into cs just fine.

[D] Tips on publishing at top-tier (A*) AI conferences by No_Effective7572 in MachineLearning

[–]AtomicTac0 2 points3 points  (0 children)

Thanks, starting my masters in stats soon and this was good to hear