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roanakb

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What Neptune.ai Got Right (and How to Keep It)

trainy.ai
2 points·by roanakb·5 months ago·0 comments

Show HN: Pluto – open-source Experiment Tracker for Neptune users

github.com
2 points·by roanakb·5 months ago·0 comments

GPU utilization can be a misleading metric

trainy.ai
144 points·by roanakb·2 years ago·36 comments

Show HN: GPU Health Controller

trainy.ai
2 points·by roanakb·2 years ago·0 comments

GPT-4 can catch edge cases in your code using unit tests

docs.sweep.dev
3 points·by roanakb·3 years ago·0 comments

Monitor and Optimize your large-scale model training

trainy.ai
13 points·by roanakb·3 years ago·2 comments

comments

roanakb
·2 years ago·discuss
Unfortunately, SM efficiency is not accessible via nvidia-smi. The best methods to track it would be to:

1. Profile your model with Pytorch Profiler 2. Export metrics with Nvidia DCGM
roanakb
·2 years ago·discuss
oh this looks great, thank you for bringing this up! I'll have to give it a try, but seems like the FSDP limitation on torch.compile might carry over?
roanakb
·2 years ago·discuss
Yup, you'll see 100% utilization on a kernel over a time period if it's considered active, which includes just having a single thread executing [1]. SM occupancy is great but can be a little difficult to interpret since you're not simply trying to maximize it, unlike SM efficiency.

[1]: https://pytorch.org/blog/pytorch-profiler-1.9-released/#gpu-...
roanakb
·2 years ago·discuss
Nice, seems like ML Productivity Goodput is a pretty well thought-out metric to understand the overall efficiency of your cluster. I'll consider adding this into our cluster management platform. Only potential drawbacks I'd guess are it being somewhat difficult to compute since it relies on metrics like MFUs, and not something we can observe layer-by-layer to understand inefficient kernels, but I'll take a deeper look. Thanks!
roanakb
·2 years ago·discuss
Agreed, roofline plots would be quite powerful in this context. From a quick search, seems like the only way to create a roofline plot for your model would be to use Nsight [1]? Would be interested to know if there are any simpler tools, since one of the big benefits of SM efficiency is how easily the metric is accessed.

[1]: https://www.nvidia.com/en-us/on-demand/session/gtcspring21-s...
roanakb
·2 years ago·discuss
Yup, similar to SM efficiency in that sense too. If you aren't seeing >80%, there is certainly time left on the table. But getting a high SM efficiency value doesn't guarantee you're making good use of the hardware as well. (still a better proxy than GPU util though)
roanakb
·2 years ago·discuss
this is a good one for debugging rdma: https://docs.redhat.com/en/documentation/red_hat_enterprise_...
roanakb
·2 years ago·discuss
Looks great, you guys made it really easy to integrate!
roanakb
·3 years ago·discuss
Thanks! Let me know if there are any features you'd like to see added.
roanakb
·3 years ago·discuss
Looks really cool! Nice work.