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Google just released PaliGemma 2 Mix: new versatile instruction vision language models 🔥 > Three new models: 3B, 10B, 28B with res 224, 448 💙 > Can do vision language tasks with open-ended prompts, understand documents, and segment or detect anything 🤯

83,712 görüntüleme • 1 yıl önce •via X (Twitter)

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merve profil fotoğrafı
merve1 yıl önce

All models and the demo are here 🤝 Read our blog to learn more 📚

merve profil fotoğrafı
merve1 yıl önce

@onuralpszr this might interest you!

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Quantify Funds1 yıl önce

Watch this space for the reveal 👀 BIG NEWS: Our family of ETFs is expanding with 10 new single stock offerings. Read the pre-effective prospectus @ #STKd #QuantifyFunds #QuantifyChaos #Nasdaq #ETFs

ondevice profil fotoğrafı
ondevice1 yıl önce

love how, usually when we come across something from google, we usually see demos rather than just academic benchmarks thanks team! love this @DynamicWebPaige @OfficialLoganK @AarushSelvan

lambda profil fotoğrafı
lambda1 yıl önce

openAI should take notes. Even google is open sourcing

merve profil fotoğrafı
merve1 yıl önce

google has been open sourcing since early times and for a long while actually

nonc3ai profil fotoğrafı
nonc3ai1 yıl önce

Great news, 3B should be small enough to run on a phone, right?

merve profil fotoğrafı
merve1 yıl önce

if you quantize, yes ☺️

Arpit Sharma profil fotoğrafı
Arpit Sharma1 yıl önce

AI that sees, understands, and segments. Impressive!

Matthew Rogers profil fotoğrafı
Matthew Rogers1 yıl önce

I want to scan my mail, lets go!

Furkan Gözükara profil fotoğrafı
Furkan Gözükara1 yıl önce

Why res is still to low?

Benzer Videolar

We benchmarked leading multimodal foundation models (GPT-4o, Claude 3.5 Sonnet, Gemini, Llama, etc.) on standard computer vision tasks—from segmentation to surface normal estimation—using standard datasets like COCO and ImageNet. These models have made remarkable progress; however, it is unclear exactly where they stand in terms of understanding vision in detail. Especially when it comes to tasks beyond question-answering. How well do they understand an object's segments or geometry? Our analyses yield an assessment that is quantitatively and qualitatively detailed and is compatible with evaluations developed in the field of computer vision over the past decades. Observed trends: 🔹 The foundation models consistently underperform task-specific SOTA models across all tasks. However, they are respectable generalists, which is remarkable as they are presumably trained primarily on image-text-based tasks. 🔹 They perform semantic tasks notably better than geometric ones. 🔹 GPT-4o performs the best among non-reasoning models, getting the top position in 4 out of 6 tasks. 🔹 Reasoning models, e.g., o3, show improvements in geometric tasks. 🔹 The 'image generation' models, e.g., GPT-40 Image Generation, which have been natively trained multimodally, exhibit quirks. E.g., hallucinated objects, misalignment between the input and output, etc. 🔹 While the prompting techniques affect performance, better models exhibit less sensitivity to variations in prompts. We control for the variance introduced by the prompting methods in our experiments. 🌐 Detailed analyses, visualizations: ⌨️ code: 🧵 1/n

Amir Zamir

73,074 görüntüleme • 1 yıl önce