Hugging Face (Twitter)
RT @HaixuanT: Worked 9 month on building AV1 codec for AI and robotics and this is what I learned for streaming, training, and storage!
Detailed report here:
RT @HaixuanT: Worked 9 month on building AV1 codec for AI and robotics and this is what I learned for streaming, training, and storage!
Detailed report here:
huggingface.co
AV1 for robotics AI streaming, training and storage.
A Blog post by haixuan tao on Hugging Face
Hugging Face (Twitter)
RT @victormustar: Another OpenAI release on Hugging Face 👀
https://huggingface.co/datasets/openai/healthbench
RT @victormustar: Another OpenAI release on Hugging Face 👀
https://huggingface.co/datasets/openai/healthbench
huggingface.co
openai/healthbench · Datasets at Hugging Face
We’re on a journey to advance and democratize artificial intelligence through open source and open science.
Hugging Face (Twitter)
RT @Thom_Wolf: Little know fact I realized talking with a researcher: the explosion of action-controlled World Models is also powered by strongly improved open-source video models.
Again open-source is enabling teams to explore, tweak and share mind blowing new use-cases far from original idea
RT @Thom_Wolf: Little know fact I realized talking with a researcher: the explosion of action-controlled World Models is also powered by strongly improved open-source video models.
Again open-source is enabling teams to explore, tweak and share mind blowing new use-cases far from original idea
Hugging Face (Twitter)
RT @NVIDIAAIDev: Ranked #1 on @Meta's Physical Reasoning Leaderboard on @huggingface for a reason. 👏 🔥 🏆
Cosmos Reason enables robots and AI agents to reason like humans by leveraging prior knowledge, physics, and common sense to intelligently interact with the real world.
This state-of-the-art reasoning VLM excels in physical AI applications like:
📊 Data curation and annotation
🤖 Robot planning and reasoning
▶️ Video analytics AI agents
See the leaderboard → nvda.ws/4mLUmjd
Check out Cosmos Reason → nvda.ws/425mMfF
RT @NVIDIAAIDev: Ranked #1 on @Meta's Physical Reasoning Leaderboard on @huggingface for a reason. 👏 🔥 🏆
Cosmos Reason enables robots and AI agents to reason like humans by leveraging prior knowledge, physics, and common sense to intelligently interact with the real world.
This state-of-the-art reasoning VLM excels in physical AI applications like:
📊 Data curation and annotation
🤖 Robot planning and reasoning
▶️ Video analytics AI agents
See the leaderboard → nvda.ws/4mLUmjd
Check out Cosmos Reason → nvda.ws/425mMfF
Hugging Face (Twitter)
RT @mervenoyann: MiniCPM-V 4.5 is very good! 🤗
it comes with hybrid thinking: it decides when to think on it's own 😍
it also can handle high res documents with odd aspect ratios, and super long videos efficiently 🙏🏻
see below hybrid results ⤵️ model is in comments!
RT @mervenoyann: MiniCPM-V 4.5 is very good! 🤗
it comes with hybrid thinking: it decides when to think on it's own 😍
it also can handle high res documents with odd aspect ratios, and super long videos efficiently 🙏🏻
see below hybrid results ⤵️ model is in comments!
Hugging Face (Twitter)
RT @elonmusk: It’s a good model, sir https://twitter.com/victormustar/status/1960613514562752685#m
RT @elonmusk: It’s a good model, sir https://twitter.com/victormustar/status/1960613514562752685#m
Hugging Face (Twitter)
RT @ArtificialAnlys: NVIDIA has released Nemotron Nano 9B V2, a small 9B reasoning model that scores 43 on the Artificial Analysis Intelligence Index, the highest yet for <10B models
Nemotron 9B V2 is the first Nemotron model pre-trained by @NVIDIA. Previous Nemotron models have been developed by post-training on Meta Llama models.
Architecture & Training: The model uses a hybrid Mamba-Transformer architecture. NVIDIA pre-trained a 12B parameter base model and applied post-training with a range of techniques including RLHF and GRPO. The final 9B size was pruned from this model and re-trained with the base model as a teacher.
Small-model frontier: with only 9B parameters, Nemotron Nano 9B V2 is placed ahead of Llama 4 Maverick on our leaderboard, equal to Solar Pro 2 with reasoning and trails just behind gpt-oss-20B (high).
Along with this model, NVIDIA rele...
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RT @ArtificialAnlys: NVIDIA has released Nemotron Nano 9B V2, a small 9B reasoning model that scores 43 on the Artificial Analysis Intelligence Index, the highest yet for <10B models
Nemotron 9B V2 is the first Nemotron model pre-trained by @NVIDIA. Previous Nemotron models have been developed by post-training on Meta Llama models.
Architecture & Training: The model uses a hybrid Mamba-Transformer architecture. NVIDIA pre-trained a 12B parameter base model and applied post-training with a range of techniques including RLHF and GRPO. The final 9B size was pruned from this model and re-trained with the base model as a teacher.
Small-model frontier: with only 9B parameters, Nemotron Nano 9B V2 is placed ahead of Llama 4 Maverick on our leaderboard, equal to Solar Pro 2 with reasoning and trails just behind gpt-oss-20B (high).
Along with this model, NVIDIA rele...
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Hugging Face (Twitter)
RT @rohanpaul_ai: 🖼️ MiniCPM-V 4.5 just dropped on @huggingface
Apache 2 with free commercial use.
With only 8B parameters, it surpasses many SOTA models like GPT-4o-latest, Gemini-2.0 Pro, Qwen2.5-VL 72B for vision-language capabilities, making it the most performant MLLM under 30B parameters.
- combines strong vision, fast video handling, and tough OCR, so the headline is real capability with small compute.
- High resolution images up to 1.8M pixels pass through an LLaVA-UHD style path that uses 4x fewer visual tokens, which is why reading small text and dense PDFs holds up.
- The model pairs Qwen3-8B as the language core with a SigLIP2-400M vision tower, giving it a compact but capable backbone.
- On public leaderboards it posts 77.0 on OpenCompass, hits 2500 on MME, and leads document tasks like OCRBench 89.0, with strong video numbers on Video-MME, LVBench, and MLVU.
- A new unified 3D-Resampler packs 6 consecutive 448x448 frames into 64...
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RT @rohanpaul_ai: 🖼️ MiniCPM-V 4.5 just dropped on @huggingface
Apache 2 with free commercial use.
With only 8B parameters, it surpasses many SOTA models like GPT-4o-latest, Gemini-2.0 Pro, Qwen2.5-VL 72B for vision-language capabilities, making it the most performant MLLM under 30B parameters.
- combines strong vision, fast video handling, and tough OCR, so the headline is real capability with small compute.
- High resolution images up to 1.8M pixels pass through an LLaVA-UHD style path that uses 4x fewer visual tokens, which is why reading small text and dense PDFs holds up.
- The model pairs Qwen3-8B as the language core with a SigLIP2-400M vision tower, giving it a compact but capable backbone.
- On public leaderboards it posts 77.0 on OpenCompass, hits 2500 on MME, and leads document tasks like OCRBench 89.0, with strong video numbers on Video-MME, LVBench, and MLVU.
- A new unified 3D-Resampler packs 6 consecutive 448x448 frames into 64...
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Hugging Face (Twitter)
RT @ramin_m_h: Over 1 million Liquid foundation models downloaded through @huggingface! The community realized how far we can push with tiny models when they are designed from first principles. Proud of my team at @LiquidAI_!
Liquid Discord community: discord.com/invite/liquid-ai
Play with our models in Apollo: https://apps.apple.com/us/app/apollo-powered-by-liquid/id6448019325
Build with Liquid models in LEAP: leap.liquid.ai/
RT @ramin_m_h: Over 1 million Liquid foundation models downloaded through @huggingface! The community realized how far we can push with tiny models when they are designed from first principles. Proud of my team at @LiquidAI_!
Liquid Discord community: discord.com/invite/liquid-ai
Play with our models in Apollo: https://apps.apple.com/us/app/apollo-powered-by-liquid/id6448019325
Build with Liquid models in LEAP: leap.liquid.ai/
Hugging Face (Twitter)
RT @dylan_ebert_: These are the current best Generative 3D
Render:
#1 - CSM
#2 - TRELLIS (open-source)
#3 - Zaohaowu3D
Topology:
#1 - Hunyuan3D-2
#2 - TRELLIS (open-source)
#3 - Hunyuan3D-2.1
as voted/submitted openly on 3D Arena
RT @dylan_ebert_: These are the current best Generative 3D
Render:
#1 - CSM
#2 - TRELLIS (open-source)
#3 - Zaohaowu3D
Topology:
#1 - Hunyuan3D-2
#2 - TRELLIS (open-source)
#3 - Hunyuan3D-2.1
as voted/submitted openly on 3D Arena
Hugging Face (Twitter)
RT @Xianbao_QIAN: 500+ hours of real world manipulation data, covering residential, kitchen, retail and office settings. A important step towards generalized manipulation models!
Great work Galaxea team!
https://huggingface.co/datasets/OpenGalaxea/Galaxea-Open-World-Dataset
RT @Xianbao_QIAN: 500+ hours of real world manipulation data, covering residential, kitchen, retail and office settings. A important step towards generalized manipulation models!
Great work Galaxea team!
https://huggingface.co/datasets/OpenGalaxea/Galaxea-Open-World-Dataset
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Hugging Face (Twitter)
RT @DataChaz: This is wild.
A real-time webcam demo using SmolVLM from @huggingface and llama.cpp! 🤯
Running fully local on a MacBook M3.
RT @DataChaz: This is wild.
A real-time webcam demo using SmolVLM from @huggingface and llama.cpp! 🤯
Running fully local on a MacBook M3.
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Hugging Face (Twitter)
RT @Tu7uruu: Just dropped on HF! HunyuanVideo-Foley from Tencent AI Lab an end-to-end Text-Video-to-Audio (TV2A) model that turns silent videos into lifelike soundscapes
> 100k-hour curated TV2A dataset via automated pipeline
> Modality-balanced MMDiT: dual-stream audio-video fusion + text cross-attention
> REPA loss: aligns internal states with self-supervised audio features → higher fidelity & stability
> DAC-VAE audio codec: 48kHz, continuous latents, strong reconstruction across speech/music/sfx
> SOTA on Kling-Audio-Eval, VGGSound, and MovieGen-Audio-Bench (audio quality, semantic + temporal alignment)
RT @Tu7uruu: Just dropped on HF! HunyuanVideo-Foley from Tencent AI Lab an end-to-end Text-Video-to-Audio (TV2A) model that turns silent videos into lifelike soundscapes
> 100k-hour curated TV2A dataset via automated pipeline
> Modality-balanced MMDiT: dual-stream audio-video fusion + text cross-attention
> REPA loss: aligns internal states with self-supervised audio features → higher fidelity & stability
> DAC-VAE audio codec: 48kHz, continuous latents, strong reconstruction across speech/music/sfx
> SOTA on Kling-Audio-Eval, VGGSound, and MovieGen-Audio-Bench (audio quality, semantic + temporal alignment)
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Hugging Face (Twitter)
RT @TencentHunyuan: Today we're announcing the open-source release of HunyuanVideo-Foley, our new end-to-end Text-Video-to-Audio (TV2A) framework for generating high-fidelity audio.🚀
This tool empowers creators in video production, filmmaking, and game development to generate professional-grade audio that precisely aligns with visual dynamics and semantic context, addressing key challenges in V2A generation.🔊
Key Innovations:
🔹Exceptional Generalization: Trained on a massive 100k-hour multimodal dataset, the model generates contextually-aware soundscapes for a wide range of scenes, from natural landscapes to animated shorts.
🔹Balanced Multimodal Response: Our innovative multimodal diffusion transformer (MMDiT) architecture ensures the model balances video and text cues, generating rich, layered sound effects that capture every detail—from the main subject to subtle background elements.
🔹High-Fidelity Audio: Using a Representation Alignment...
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RT @TencentHunyuan: Today we're announcing the open-source release of HunyuanVideo-Foley, our new end-to-end Text-Video-to-Audio (TV2A) framework for generating high-fidelity audio.🚀
This tool empowers creators in video production, filmmaking, and game development to generate professional-grade audio that precisely aligns with visual dynamics and semantic context, addressing key challenges in V2A generation.🔊
Key Innovations:
🔹Exceptional Generalization: Trained on a massive 100k-hour multimodal dataset, the model generates contextually-aware soundscapes for a wide range of scenes, from natural landscapes to animated shorts.
🔹Balanced Multimodal Response: Our innovative multimodal diffusion transformer (MMDiT) architecture ensures the model balances video and text cues, generating rich, layered sound effects that capture every detail—from the main subject to subtle background elements.
🔹High-Fidelity Audio: Using a Representation Alignment...
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Hugging Face (Twitter)
RT @pollenrobotics: Two Reachy 2 setting and clearing the table, all in real time teleoperation!
Shot in a single take with all the successes... and a small fail👀
One example of what Reachy 2 can do: efficient, versatile object manipulation, with the precision needed for delicate or fragile tasks
RT @pollenrobotics: Two Reachy 2 setting and clearing the table, all in real time teleoperation!
Shot in a single take with all the successes... and a small fail👀
One example of what Reachy 2 can do: efficient, versatile object manipulation, with the precision needed for delicate or fragile tasks
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Hugging Face (Twitter)
RT @reach_vb: 🚨 Apple just released FastVLM on Hugging Face - 0.5, 1.5 and 7B real-time VLMs with WebGPU support 🤯
> 85x faster and 3.4x smaller than comparable sized VLMs
> 7.9x faster TTFT for larger models
> designed to output fewer output tokens and reduce encoding time for high resolution images
Bonus: works in REALTIME directly in your browser powered by transformers.js and WebGPU 🔥
Try it out on the demo below 👇
RT @reach_vb: 🚨 Apple just released FastVLM on Hugging Face - 0.5, 1.5 and 7B real-time VLMs with WebGPU support 🤯
> 85x faster and 3.4x smaller than comparable sized VLMs
> 7.9x faster TTFT for larger models
> designed to output fewer output tokens and reduce encoding time for high resolution images
Bonus: works in REALTIME directly in your browser powered by transformers.js and WebGPU 🔥
Try it out on the demo below 👇
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Hugging Face (Twitter)
RT @xenovacom: NEW: Apple releases FastVLM and MobileCLIP2 on Hugging Face! 🤗
The models are up to 85x faster and 3.4x smaller than previous work, enabling real-time VLM applications! 🤯
It can even do live video captioning 100% locally in your browser (zero install). Huge for accessibility!
RT @xenovacom: NEW: Apple releases FastVLM and MobileCLIP2 on Hugging Face! 🤗
The models are up to 85x faster and 3.4x smaller than previous work, enabling real-time VLM applications! 🤯
It can even do live video captioning 100% locally in your browser (zero install). Huge for accessibility!
Hugging Face (Twitter)
RT @RisingSayak: Lovely time presenting at #AIDev Amsterdam today ❤️
We explored some 📹 models (Wan, LTX, etc.), their existing capabilities, and limitations.
I am glad that the attendees found my presentation to be an enjoyable experience 🫡
Find the slides here ⬇️
bit.ly/open-vid-gen
RT @RisingSayak: Lovely time presenting at #AIDev Amsterdam today ❤️
We explored some 📹 models (Wan, LTX, etc.), their existing capabilities, and limitations.
I am glad that the attendees found my presentation to be an enjoyable experience 🫡
Find the slides here ⬇️
bit.ly/open-vid-gen