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New Moondream 2B release! ✨ New features: - Long-form captioning - Open vocab tagging - Better counting, object detection, text understanding - Faster HF transformers inference

51,735 Aufrufe • vor 1 Jahr •via X (Twitter)

12 Kommentare

Profilbild von vik
vikvor 1 Jahr

Release notes Demo

Profilbild von AssemblyAI
AssemblyAIvor 1 Jahr

Announcing: Our most advanced speech-to-text model goes beyond accuracy to capture the real-world complexity of human conversation and deliver reliable, source-of-truth audio data. Explore Universal-2 updates 👇

Profilbild von Shannon Sands
Shannon Sandsvor 1 Jahr

wen bolting on a diffusion model to an output head and generating ghibli

Profilbild von vik
vikvor 1 Jahr

investigating

Profilbild von snow
snowvor 1 Jahr

this is a really awesome release video btw, i love this format, pretty clean. gonna fit all the new features into moondream-zig :)

Profilbild von vik
vikvor 1 Jahr

possible to integrate xnnpack with zig code? they have good quant matmuls

Profilbild von bellicose_bestie
bellicose_bestievor 1 Jahr

MLX???

Profilbild von vik
vikvor 1 Jahr

soon!

Profilbild von Solsticio
Solsticiovor 1 Jahr

How good is this for OCR?

Profilbild von vik
vikvor 1 Jahr

It was a big focus for this release, but we're only 10% of the way through OCR pretraining. I'd say it's decent but expect a ton more improvement coming soon!

Profilbild von Pratyush 🖇️ life/acc
Pratyush 🖇️ life/accvor 1 Jahr

But can it ghiblify images? 😜

Profilbild von vik
vikvor 1 Jahr

watch this space

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