Hugging Face
Models
Datasets
Spaces
Buckets
new
Docs
Enterprise
Pricing
Website
Tasks
HuggingChat
Collections
Languages
Organizations
Community
Blog
Posts
Daily Papers
Hardware
Learn
Discord
Forum
GitHub
Solutions
Team & Enterprise
Hugging Face PRO
Enterprise Support
Inference Providers
Inference Endpoints
Storage Buckets
Log In
Sign Up
1251.4
TFLOPS
openfree
openfree
82
11
473
Follow
sincere32's profile picture
dhruv3006's profile picture
stefan-it's profile picture
1,126 followers
ยท
308 following
https://www.vidraft.net
AI & ML interests
Contact: arxivgpt@gmail.com
Recent Activity
liked
a Space
about 12 hours ago
FINAL-Bench/VKUE
liked
a model
about 12 hours ago
FINAL-Bench/Ourbox-35B-JGOS-GGUF
reacted
to
SeaWolf-AI
's
post
with ๐ฅ
about 12 hours ago
๐ต VKUE โ No GPU? Runs anyway. "Frontier models need a datacenter GPU" rests on a hidden assumption: that the model reads ALL its parameters every token. Decode is memory-bandwidth bound โ sweep 34B params/token and an 8 GB card dies at 1โ2 tok/s. So we ran ONE 34.7B reasoning model โ Ourbox-35B-JGOS, a sparse Mixture-of-Experts โ as the identical weights across the whole hardware spectrum. All measured: โข B200: 18,057 tok/s (aggregate) โข 1ร A10G: 126 tok/s โข 8 GB laptop (RTX 5060): 20 tok/s โข GPU-less CPU: 17 tok/s Why it works: Ourbox holds 34.7B params but only ~3B are active per token (256 experts, top-8). Since decode is bandwidth-bound, a dense 34B moves ~16.7 GB/token while Ourbox moves ~1.45 GB โ ~11ร less traffic. Put the experts in system RAM, keep attention/router/shared on the GPU, and a 34.7B reasoner runs on an 8 GB laptop โ or no GPU at all. Sparsity alone, proven (same laptop, same quant, ~same footprint): Ourbox-35B (A3B) 20.01 tok/s vs Qwen2.5-32B (dense) 5.36 โ 3.7ร from sparsity alone, ~2ร the best dense-32B on any 8 GB machine. Not a toy: GPQA Diamond 86.4% (maj@8). Try it live (same prompt, GPU vs GPU-less CPU, live tok/s). Honest scope: one machine's measurements; the CPU path proves it RUNS without a GPU, not that it beats one. ๐ Article: https://huggingface.co/blog/FINAL-Bench/vkue ๐ต GPU vs CPU demo: https://final-bench-ourbox-35b-vkue-demo.hf.space/ ๐ต CPU-only demo: https://final-bench-ourbox-35b-vkue-cpu.hf.space ๐ VKUE leaderboard: https://huggingface.co/spaces/FINAL-Bench/VKUE ๐ค Model: https://huggingface.co/FINAL-Bench/Ourbox-35B-JGOS-GGUF โก VKAE (speed): https://huggingface.co/spaces/VIDraft/vkae VKUE is the "runs anywhere" side of our serving line; VKAE the "fast on datacenter GPUs" side. VKAE is fast; VKUE is everywhere.
View all activity
Organizations
openfree
's Spaces
220
Sort:ย Recently updated
Runtime error
Agents
Video Background Removal
๐
remove background from images
Build error
Agents
Sticker Generator
๐จ
Generate colorful children's stickers using AI
Paused
Agents
Train FLUX LoRA with Ease
๐ง
Train LoRA with ease
Runtime error
Agents
Vidslice
๐
Previous
1
...
8
9
10
Next