VisiPrint system generates realistic 3D-print previews from two images
Designers, makers, and others often use 3D printing to rapidly prototype a range of functional objects, from movie props to medical devices. Accurate print previews are essential so users know a fabricated object will perform as expected. But previews generated by most 3D-printing software focus on function rather than aesthetics. A printed object may end up with a different color, texture, or shading than the user expected, resulting in multiple reprints that waste time, effort, and material.
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Tested how OpenCode Works with SelfHosted LLMS: Qwen 3.5 & 3.6, Gemma 4, Nemotron 3, GLM-4.7 Flash...
I have run two tests on each LLM with OpenCode to check their basic readiness and convenience: - Create IndexNow CLI in Golang (Easy Task) and - Create Migration Map for a website following SiteStructure Strategy. (Complex Task) Tested Qwen 3.5, 3.6, Gemma 4, Nemotron 3, GLM-4.7 Flash and several other LLMs. Context size used: 25k-50k - varies between tasks and models. The result is in the table below, hope you find it useful. https://preview.redd.it/gdrou1bmdjtg1.png?width=686 format=png auto=webp s=026c50e383957c2c526676c10a3c5f12ad705e8e The speed of most of these selfhosted LLMs - on RTX 4080 (16GB VRAM) is below (to give you idea how fast/slow each model is). Used llama-server with default memory and layers params. Finetuning these might help you to improve speed a bit. Or maybe a bit
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