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452.2
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153
PhysiQuanty
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PhysiQuanty
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sabowsla's profile picture
HAD653's profile picture
RogerioFreitas's profile picture
193 followers
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2,407 following
AI & ML interests
Theoretical Physics, Invariant Tokenization, Standard Model of Particle Physics Applied ML (coming soon)
Recent Activity
reacted
to
SeaWolf-AI
's
post
with π₯
about 5 hours ago
𧬠Darwin Family: Zero Gradient Steps, GPQA Diamond 88.89% How far can we push LLM reasoning *without* training? Our team at VIDRAFT submitted this paper to Daily Papers yesterday, and it's currently #3. Huge thanks to everyone who upvoted β sharing the core ideas below. π Paper: https://huggingface.co/papers/2605.14386 π arXiv: https://arxiv.org/abs/2605.14386 π Model: https://huggingface.co/FINAL-Bench/Darwin-28B-Opus --- TL;DR Darwin Family is a training-free evolutionary merging framework. By recombining the weight spaces of existing LLM checkpoints β with zero gradient-based training β it reaches frontier-level reasoning. - π Darwin-28B-Opus: GPQA Diamond 88.89% - πΈ Zero gradient steps β not a single B200 or H200 hour needed - 𧬠Consistent gains across 4B β 35B scale - π Cross-architecture breeding between Transformer and Mamba families - π Stable recursive multi-generation evolution #Three Core Mechanisms β 14-dim Adaptive Merge Genome β fine-grained recombination at both component level (Attention / FFN / MLP / LayerNorm / Embedding) and block level, expanding the prior evolutionary-merge search space. β‘ MRI-Trust Fusion β we diagnose each layer's reasoning contribution via an **MRI (Model Reasoning Importance)** signal and fuse it with evolutionary search through a **learnable trust parameter**. Trust the diagnostic too much and search collapses; ignore it and search becomes inefficient β Darwin learns the balance from data. β’ Architecture Mapper β weight-space breeding across heterogeneous families. Attention Γ SSM crossover actually works. Why It Matters > Diagnose latent capabilities already encoded in open checkpoints, > and recombine them β no gradients required. Replies and critiques welcome π
reacted
to
their
post
with π₯
about 20 hours ago
β Dating apps do not allow us to control the profiles suggested to us based on our mutual search criteria β 𧬠If you want to see if your soulmate has already existed, I have published a dataset of 59k anonymized public profiles https://huggingface.co/datasets/SpiceeChat/OkCupid-59k-Anonymized-Profiles Are you looking for a female ML engineer who is looking for a male ML engineer and you can't find it on the apps ? You need to look for her, but more importantly, she needs to look for you. Personally, I'm looking for a physicist I'm encountering the same problem. I can't find it My answer : Paradox of choice of dating apps solved by patent β‘ WO2026082672 β‘ https://patentscope.wipo.int/search/en/detail.jsf?docId=WO2026082672 J'ai du brevetΓ© pour te trouver et on se trouvera bientΓ΄t !
reacted
to
their
post
with π
about 20 hours ago
β Dating apps do not allow us to control the profiles suggested to us based on our mutual search criteria β 𧬠If you want to see if your soulmate has already existed, I have published a dataset of 59k anonymized public profiles https://huggingface.co/datasets/SpiceeChat/OkCupid-59k-Anonymized-Profiles Are you looking for a female ML engineer who is looking for a male ML engineer and you can't find it on the apps ? You need to look for her, but more importantly, she needs to look for you. Personally, I'm looking for a physicist I'm encountering the same problem. I can't find it My answer : Paradox of choice of dating apps solved by patent β‘ WO2026082672 β‘ https://patentscope.wipo.int/search/en/detail.jsf?docId=WO2026082672 J'ai du brevetΓ© pour te trouver et on se trouvera bientΓ΄t !
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