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π
In a Training Loop
66657.2
TFLOPS
VIDRAFT_LAB
SeaWolf-AI
111
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groxaxo's profile picture
RuneXX's profile picture
Simon-XU's profile picture
206 followers
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217 following
https://www.vidraft.net
AI & ML interests
Contact: arxivgpt@gmail.com
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about 22 hours ago
π Adding a GPU without building one AI is usually framed as "how smart is the model / how many GPUs did you buy." The real bottleneck is elsewhere β how efficiently you use the GPUs you already have. Training happens once; inference runs the entire time users use your product. So a service's economics come down to cost per token. Inference acceleration uses software to pull several times more out of the same GPU β the effect of plugging in one more "virtual GPU." VIDRAFT's VKAE, measured (B200, same-harness, no quality loss): Qwen3.5-35B-A3B (MoE): 25.7 β 601 tok/s (23.4Γ) Darwin-36B-Opus (in-house MoE): 25.0 β 280.8 (11.2Γ) 10,000+ tok/s peak aggregate under concurrency The key: it's reproducible β model + serving shipped as one container. docker pull vidraft/qwen35-vkae:601 Don't take our word for it β run it yourself. The mechanism will be released as a paper. π Leaderboard & demo π https://huggingface.co/spaces/VIDraft/vkae Articles π https://huggingface.co/blog/FINAL-Bench/vkae-leaderboard
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with β€οΈ
about 22 hours ago
π We ran genuine quantum key-recovery on 'real IBM quantum hardware' β and pushed the frontier well past the largest hardware demos we're aware of (which sat at N=4). Using Simon's algorithm on `ibm_kingston`, we recovered the secret key of two symmetric-cipher structures: β’ EvenβMansour β N=5 β N=10 β’ 3-round Feistel (DES-family) β block 6 β 8 Each verified against an 'independent control key', using error mitigation only (no QEC). π§ Honest scope: this is not a quantum speedup (the effective difficulty tracks the classical birthday bound ~2^{n/2}), not a break of real AES/RSA, and not 16-round DES (ours is 3-round). The recovery method is reserved for a forthcoming paper; formal record status is pending peer review. π Write-up: https://huggingface.co/blog/FINAL-Bench/quantum πΉοΈ Try it live in your browser: https://vidraft-quantumos.hf.space/crypto π Leaderboard: https://huggingface.co/spaces/FINAL-Bench/quantum-bench-leaderboard #quantum #cryptography #quantumcomputing
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1 day ago
FINAL-Bench/JGOS-398B-fp8:
fp8 of DARWIN 398b BF16?
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Organizations
SeaWolf-AI
's models
3
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SeaWolf-AI/Darwin-Qwen3.5-27B-x-Qwen3.5-27B-Claude-4-08162
28B
β’
Updated
Apr 12
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SeaWolf-AI/Darwin-Darwin-4B-Opus-x-gemma-4-E4B-it-The-D-08412
8B
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Updated
Apr 10
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3
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7
SeaWolf-AI/Darwin-gemma-4-E4B-it-x-Gemma-4-E4B-Claude-4-08292
Updated
Apr 8
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7