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Comfy3D Update: (v0.1.5.alpha, dev branch) - Integrated TripoSG (Plus scribble model) - MV-Adapter for high quality texture gen coming next ‼️NeuralAI We are hiring skilled ML researchers & engineers (VAE, diffusion model, 3D/texture gen/editing) to join us on a mission to revolutionize 3D virtual production 🫰If you want to...

14,716 Aufrufe • vor 1 Jahr •via X (Twitter)

8 Kommentare

Profilbild von Mr. For Example
Mr. For Examplevor 1 Jahr

TripoSG Scribble Model also works

Profilbild von ksminnovation
ksminnovationvor 1 Jahr

AI is transforming healthcare! A KSM-led study shows AI can detect Celiac disease 4 years earlier @TalPatalon @MedPredict

Profilbild von Tripo
Tripovor 1 Jahr

@GoNeuralAI thanks for what you have built for the community!

Profilbild von Mr. For Example
Mr. For Examplevor 1 Jahr

@GoNeuralAI My pleasure🍻

Profilbild von pite-chen
pite-chenvor 1 Jahr

@GoNeuralAI nice

Profilbild von 0xNano
0xNanovor 1 Jahr

@GoNeuralAI 🔥🔥🔥

Profilbild von David
Davidvor 1 Jahr

@GoNeuralAI $NEURAL 🔥

Profilbild von Skiny3604
Skiny3604vor 1 Jahr

@GoNeuralAI Future of #ai #gaming $NEURAL 🔥🚀

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