I am looking to replace my old PC, and wondering what other people use.

Do you use your own hardware? If so, what do you have? What do you think gives you the most bang for your buck at the moment?

Do you use the cloud instead? If so, why? Which service(s) do you use?

Thank you!

  • __forward__@lemm.ee
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    1 year ago

    I think major training should just be done on dedicated servers/on the cloud. That being said it is very helpful to test locally, so in case you are planning on using Nvidia equipped servers just get any somewhat recent consumer Nvidia card and you can always run locally on some sample data and test much more easily.

    • konodas@feddit.de
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      1 year ago

      I second that. Being able to test medium sized models locally can make debugging much easier.

      I have a 3070 with 8GB VRAM, which can train e.g. a GPT2 with a batch-size of 1 with full precision.

  • radical_action@lemmy.world
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    1 year ago

    I would suggest just getting a laptop and nice external interface (keyboard/mouse if you prefer, nice monitor) + remote server. I bought a desktop + gpu setup back when I started my masters, but I use it shockingly little for work. The type of work that a single gpu + local machine incetivize are usually against good scientific and experimental practice. You dont really want that running jobs during the day.

    As for specific cloud reccomendations, I have none. I just use what is available at my institution.

    • joba2ca@feddit.de
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      1 year ago

      Depends on the use cases I guess. If any larger scale deep learning is going on, you cannot afford buying all the required GPUs anyways.

      However, I found myself using my tower PC quite a lot during my Masters. Especially for Uni projects my GPU came in very handy and was much appreciated by group members. Having your own GPU was often more convenient than using the resources provided by the lab.

      Also, while relying mostly on cloud resources in my last job, I would have found having a GPU available on my work machine very convenient at certain times. Very nice for EDA and playing with models during the early phase of a project.

      Besides from that, IMO a good CPU and > 32GB RAM on your own machine are sufficient for EDA and related things while I would rely on cloud resources for everything else, e.g., model training and large scale analyses.

  • ShadowAether
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    1 year ago

    I have my desktop, which was marketed towards digital artists (I got a really good deal for the specs) and I upgraded the GPU and added an SSD. I have access to a large research server run by my department as well so usually I’ll just use my laptop since that’s what I actually bring around with me.

  • tetelestia@lemmy.world
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    1 year ago

    I do 95% of my personal stuff on a desktop with a GTX 1070, often remoting into it from a laptop. Someday soon I’ll throw a bigger GPU in, but the 1070 has served me well for years.

    I find the sunk cost of building a machine encourages me to use it more. I don’t mind running something for a week even if I have no idea if it’ll work or not.

    Same deal at work, but with much beefier hardware. In both cases, I’ll spin up a cloud instance if I want some results faster.

    • joelthelion@lemmy.ml
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      1 year ago

      Thank you! How much does the GTX 1070 help, compared to simply running your training runs on a recent CPU?

      • tetelestia@lemmy.world
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        1 year ago

        Yes, the 1070 is substantially faster than CPU. Without benchmarking, I would guess 10-20x faster than a recent consumer CPU. In reality, unless you’re interested in big NLP tasks or big computer vision models, a 1070 works just fine.

        A 4090 might be 10x faster, so it turns a weekend job into an afternoon, or a month into a weekend, but plenty of real work can be done with a modest setup.

        If I were building something from scratch on a budget, I’d look at the best 30-series Nvidia card I can afford. If you’re using TensorFlow, TF32 is usually basically a free speed up, with PyTorch it’s a bit less stable. You should be able to build a full system with a 3060 12GB for under $1000, or with a 3090 for under $2000.