Image description:

Shopping for a laptop as a Linux user:

Screenshot from the Simpsons where Otto is talking to Marge and Homer standing next to a window in their house with a caption “Oh wow, windows!.. I don’t think I can afford this place.”

  • TimeSquirrel@kbin.social
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    8 months ago

    Friend: “What’s your system specs?”

    Me: “12-core Ryzen CPU, 64GB RAM, 3080ti GPU”

    F: “Nice. What games do you play?”

    M: “Games…? Is that what else people do with these things?”

    • dan@upvote.au
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      8 months ago

      These days it’s not uncommon to have a powerful GPU just for AI acceleration.

      • Aux@lemmy.world
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        8 months ago

        Or for photo editing. Or video editing. Or CAD work. Or a lot more stuff.

        • dan@upvote.au
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          8 months ago

          Are modern iGPUs not powerful enough for these tasks? The UHD 770 is pretty powerful, especially for video encoding/decoding (it can transcode 8+ 4K streams simultaneously)

          • I Cast Fist@programming.dev
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            8 months ago

            For photo editing, I suspect it should be more than enough. For video editing, a beefy graphics card can make the render/encode significantly faster, though as I don’t dabble with that, I can’t tell how much of a speed improvement it’d be from an integrated intel vs. anything equivalent or stronger than a GTX1650

          • Aux@lemmy.world
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            8 months ago

            iGPUs are pretty useless for the most part.

            1. Shared memory. Regular DDR is high latency high throuput. GDDR is low latency low throuput. Not only you’re sharing memory with other apps, you’re also penalising yourself in terms of performance.
            2. iGPUs are very slow at computation. Yes, they have codecs built-in, but if you want to run custom math they are not much better than running it on CPU.
            3. CUDA is not available. OpenCL is, but some apps are locked to CUDA.
            4. Old GTX 1080 is 5.5 times faster than brand new Iris Xe at computation. RTX 4080 is like 3x times faster than GTX 1080. That’s an order of magnitude difference between modern GPU and modern iGPU.