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
π
In a Training Loop
61.2
TFLOPS
Simon Schwaiger
PRO
SimonSchwaiger
2
22
Follow
LuMu12's profile picture
WilfriedWoeber's profile picture
DavidSeyserHF's profile picture
3 followers
Β·
14 following
https://simonschwaiger.github.io
SimonSchwaiger
simon-schwaiger-90354519a
AI & ML interests
Researcher @ UAS Technikum Wien and CS PhD Student @ Graz University of Technology, working on semantic mapping and in the wild open-language robot control.
Recent Activity
reacted
to
SeaWolf-AI
's
post
with π₯
about 10 hours ago
π΅ VKUE β 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 β sweep 34B params/token and an 8 GB card dies at 1β2 tok/s. So we ran ONE 34.7B reasoning model β Ourbox-35B-JGOS, a sparse Mixture-of-Experts β as the identical weights across the whole hardware spectrum. All measured: β’ B200: 18,057 tok/s (aggregate) β’ 1Γ A10G: 126 tok/s β’ 8 GB laptop (RTX 5060): 20 tok/s β’ 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 β ~11Γ 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 β 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 β 3.7Γ from sparsity alone, ~2Γ 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. π Article: https://huggingface.co/blog/FINAL-Bench/vkue π΅ GPU vs CPU demo: https://final-bench-ourbox-35b-vkue-demo.hf.space/ π΅ CPU-only demo: https://final-bench-ourbox-35b-vkue-cpu.hf.space π VKUE leaderboard: https://huggingface.co/spaces/FINAL-Bench/VKUE π€ Model: https://huggingface.co/FINAL-Bench/Ourbox-35B-JGOS-GGUF β‘ 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.
liked
a model
1 day ago
DavidSeyserHF/Tiamat-50M-base
liked
a dataset
3 days ago
sezenkarakus/image-description-dataset-v2
View all activity
Organizations
None yet
SimonSchwaiger
's models
1
Sort:Β Recently updated
SimonSchwaiger/resireg_mini
0.3B
β’
Updated
21 days ago
β’
761
β’
7