JavaOnRaspberryPi
StreamDiffusion
JavaOnRaspberryPi | StreamDiffusion | |
---|---|---|
3 | 4 | |
72 | 9,149 | |
- | - | |
5.6 | 9.6 | |
2 months ago | about 2 months ago | |
Java | Python | |
Apache License 2.0 | Apache License 2.0 |
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JavaOnRaspberryPi
- FLaNK Weekly 31 December 2023
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Java Quick Start, a new Section Added to Foojay.io
Some Raspberry Pi's "infiltrated" into the example code. That's because this quick start tutorial is part of my book "Getting Started with Java on the Raspberry Pi", but has been slightly modified to better fit Foojay.io.
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The state of JVM desktop frameworks: TornadoFX
Here's a sample of the former and the latter for the same application.
StreamDiffusion
- FLaNK Weekly 31 December 2023
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StreamDiffusion: Over 100fps Stable Diffusion on a 4090
Everyone does warmup before you measure. But measuring isn't always done right because we actually measure the GPU time only but some people naively use CPU time which is problematic because the process is asynchrenous. They have a few timing scripts though and I'm away from my GPU. There are some interesting things but they look like they know how to time. But it can also get confusing because is it considering batches or not. Some works do batch some do single. Only problem is when it isn't communicated correctly or left ambiguous.
Their paper is ambiguous unfortunately. Abstract, intro, and conclusion suggests single image by motivating with sequential generation (specifically mentioning metaverse). Experiment section says
> We note that we evaluate the throughput mainly via the average inference time per image through processing 100 images.
That implies batch along with their name Stream Batch...
Looking at the code I'm a bit confused. I'm away from my GPU so can't run. Maybe someone can let me know? This block[0] measures correctly but is using a downloaded image? Then just opens the image in the preprocess? (multi looks identical) This block[1] is using CPU? But running CPU. (there's another like this)
So I'm quite a bit confused tbh.
[0] https://github.com/cumulo-autumn/StreamDiffusion/blob/03e2a7...
[1] https://github.com/cumulo-autumn/StreamDiffusion/blob/03e2a7...
- StreamDiffusion: A Pipeline-Level Solution for Real-Time Interactive Generation
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