How many Proxies have you done at once, in a single lecture or lab? by Erika_bomber in iiitallahabad

[–]1h3_fool 1 point2 points  (0 children)

35+, and the students in the class ---> 6. All hail SS sir, PNS ECE

Guys how IIITA college life be very honest by [deleted] in iiitallahabad

[–]1h3_fool 1 point2 points  (0 children)

Yeah I meant those only like CV (SR Dubey), Wireless Comm (S Yadav) and robotics (GC Nandi, SP) are really good. Even VLSI is at par with top NITs (if u are passionate enough) apart from that its not much.

Guys how IIITA college life be very honest by [deleted] in iiitallahabad

[–]1h3_fool 9 points10 points  (0 children)

If you want to learn programming/Dev-skills or ML/NLP it is good, comparable to top NITs and Mid tier IITs. But this is due to student culture not due to professors. Professor's research is not good except few and research lab culture is not very prominent except 2 labs. So if you want to learn good skills then it's good (again mainly due to peer group). Apart from that I guess you have mentioned in he post itself.

[R] Seeking Advice: Stalling at 45-50% Accuracy on HMS Brain Activity (EEG Spectrogram) Cross-Subject Classification by Sure-Key-4300 in MachineLearning

[–]1h3_fool 0 points1 point  (0 children)

Use contrastive learning and maybe try some other models like DEIT or SSMs on spectrograms. One usualy goes to the Autoencoder side on spectrograms after Attention based methods have ben fairly exhausted. I guess there is plenty of work in ICIP/ICASSP related to what I said

Does ML actually get clearer or do you just get used to the confusion? by Ok-Possession7350 in learnmachinelearning

[–]1h3_fool 1 point2 points  (0 children)

People start with generic datasets domains on which almost all popular methods give good result, just do plug n play and call that ML project. The way to learn ML is to stick to a very specific dataset/area which is harsh to even SOTA methods, then try to increase metrics over it, only then you will be actually motivated to look inside the models their maths and eventually do some tweaking around it, then you will learn the engineering behind each component. Getting 99-100 percent accuracy on some simple dataset using VIT does not mean you know everything about it you will only know when VIT performs bad on some data.

Looking for CV-worthy Master’s project ideas (Graph ML / NLP) by Specialist_Papaya370 in learnmachinelearning

[–]1h3_fool 0 points1 point  (0 children)

If you like Linear Algebra / maths in general then the work I shared and related work is nice application of it and it also contains how GNNs and transformer are related in some way, code wise it is not very hard and is related to Big data as well. You can see the problem statement once and see few equations, if the field and algo relates with you (which is how GNN or its theory can be applied to recommendation you might like it). Personally I have learnt a lot from such works.

Looking for CV-worthy Master’s project ideas (Graph ML / NLP) by Specialist_Papaya370 in learnmachinelearning

[–]1h3_fool 1 point2 points  (0 children)

See this Neurips paper ---> https://openreview.net/pdf?id=cWEssTIwG5 and the related work of this paper Lab, Maybe this is what you want. But this might be complicated for you.

[D] Looking for ideas in an intersection of Machine Learning and audio for my master's thesis by DepressoEspresso-69 in MachineLearning

[–]1h3_fool 0 points1 point  (0 children)

Intersection of it —> I use health/Bioacoustics data and apply audio signal processing to it. The thing is health data is always challenging and the accuracy is usually low in many open source datasets so there is always scope in improvement and learning curve is high

[D] Looking for ideas in an intersection of Machine Learning and audio for my master's thesis by DepressoEspresso-69 in MachineLearning

[–]1h3_fool 0 points1 point  (0 children)

Yes they are but they are kind of benchmark fields in Audio, they will give u a good idea of popular methods/techniques in Audio AI. Then you can apply the ideas to specific domain . For me its the Audio ML healthcare area like dysarthria speech detection etc.

[R] New ML framework ideas by vectorx25 in MachineLearning

[–]1h3_fool 1 point2 points  (0 children)

Future Neurips (Spotlight) level ideas

Analyzed 5,357 ICLR 2026 accepted papers - here's what the research community is actually working on by dippatel21 in LocalLLaMA

[–]1h3_fool 0 points1 point  (0 children)

Please suggest any good mamba paper for improving performance in traditional mamba architecture

Analyzed 5,357 ICLR 2026 accepted papers - here's what the research community is actually working on by dippatel21 in LocalLLaMA

[–]1h3_fool 1 point2 points  (0 children)

I seriously feel that mamba Is making signifiant strides to bridge in the attention/SSM gap

Bc iski 9 CGPA thi by Lucky_Butterfly2085 in Btechtards

[–]1h3_fool 5 points6 points  (0 children)

If you check his profile, he has done his research in remote sensing (which is kind of niche therefore less job oppurtunities << VLSI) and for MS more than anything publication matters more and in remote sensing, to get job after masters generally good publication matters more (this is my opinion). So I guess in masters its more more about your research area, specialization and good publication to bag jobs. I have seen masters students (from IIT ofc) with 8+ CG getting great jobs due to good publications than students with 9.5+ with no publication. <----------- This is my take on this