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danielhanchenย 
posted an update 2 days ago
AxionLab-officialย 
posted an update 2 days ago
hypotheticalย 
posted an update 3 days ago
FlameF0Xย 
posted an update 4 days ago
evalstateย 
posted an update 3 days ago
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3163
Hugging Face MCP Server v0.3.17
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SEP-2640 "Skills Over MCP" support added (early access)
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ovi054ย 
posted an update 3 days ago
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2538
Qwen Image Edit 2511 Fast + LoRA โšก

ovi054/Qwen-Image-Edit-2511-LoRA

QIE-2511 is an image editing model with integrated LoRA capabilities. You can add any custom LoRA to generate and edit images within this Space.

๐Ÿ‘‰ Try it now: ovi054/Qwen-Image-Edit-2511-LoRA
RiverRiderย 
posted an update 1 day ago
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79
Words do not have determined meanings.

The vocabulary itself is reflexive. It is self-referential, looping back into its own structure rather than anchoring in fixed reality. What we treat as stable meaning is continually reconstituted in the act of using it. The observers own interpretations molding each word like clay with every utterance.ย 

All large language models to date treat words otherwise. At the moment of softmax crystallization they determine the meaning of every token. Probabilities collapse into a single output. Meaning is not found. It is fixed, token by token, in that final distribution.

SRT-Introspect is a demo for observing what Qwen actually thinks at the points of highest effort. It surfaces the internal representations during generation, making visible the reflexive vocabulary at work and the precise crystallization process: the weights, the assumptions, the decisions that resolve ambiguity into output. This includes accounting for anisotropy collapse in hidden states by centering representations around the layer-mean before analysis.

Feel free to comment your prompts

RiverRider/srt-introspect

Repo
https://github.com/space-bacon/SRT
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kanaria007ย 
posted an update 1 day ago
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85
โœ… Article highlight: *Revocable Releases, Subject Scopes, and Unlearning Verification for Learning Worlds* (art-60-173, v0.1)

TL;DR:
This article argues that once you release data, forgetting becomes a supply-chain problem.

A world can promise future exclusion, controlled-channel revocation, or bounded unlearning claimsโ€”but only if those claims are receipted. To say โ€œRelease R is revocable,โ€ โ€œSubject X was forgotten,โ€ or โ€œModel M unlearned X,โ€ you need pinned release contracts, precise subject scopes, scope-resolution receipts, and verification packs. Otherwise you are just telling a comforting story.

Read:
kanaria007/agi-structural-intelligence-protocols

Why it matters:
โ€ข turns โ€œforgettingโ€ into a governed lifecycle rather than a vague promise
โ€ข separates revocable releases from irreversible public redistribution
โ€ข makes โ€œSubject Xโ€ precise enough to be caseable and auditable
โ€ข forces unlearning claims to be tested, bounded, and published honestly

Whatโ€™s inside:
โ€ข *release contracts* with revocation tiers and downstream obligations
โ€ข *subject selector* + *scope resolution* artifacts for โ€œwhere X might existโ€
โ€ข *unlearning contracts* and *verification packs* for testable forgetting claims
โ€ข explicit irreversibility disclosures, so public claims do not promise impossible erasure
โ€ข bounded public claim shapes under publication policy

Key idea:
Do not say:

*โ€œwe forgot X.โ€*

Say:

*โ€œthis release had this revocation tier, this subject scope was resolved across corpora/releases/models, this unlearning execution and verification pack were run, and these are the limits of what we can and cannot guarantee.โ€*
Shrijanagainย 
posted an update 1 day ago
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87
Excited to launch SKT-ST-X-0-3B by SKT AI Labs! ๐Ÿš€๐Ÿ‡ฎ๐Ÿ‡ณ

โ€‹A powerful 3B Parameter Mixture of Experts (MoE) model optimized for high-performance reasoning with a small footprint.


โ€‹--> Quick Specs:
> Total Params: ~3B | Active Params: ~1.1B (2 experts/token)
> Pre-trained on 40B tokens (SKT-OMNI-CORPUS-2T)

1.Context: 8K tokens
2.Bilingual: English & Hindi ๐Ÿ‡ฌ๐Ÿ‡ง๐Ÿ‡ฎ๐Ÿ‡ณ
3. Base: Built on ST-X-0 with Mixtral stability


โ€‹Get 3B intelligence at 1B inference speeds. Fully open-source under Apache-2.0! ๐Ÿ‘‡

โ€‹๐Ÿ”— Try it on Hugging Face: sKT-Ai-Labs/SKT-ST-X-0-3B

โ€‹#AI #OpenSource #LLM #MixtureOfExperts #SKTAILabs #MachineLearning
pedrodev2026ย 
posted an update 2 days ago
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102
O NanoMathDataset รฉ um dataset de quase 4M linhas de contas de matemรกtica bรกsica, veja ele em: pedrodev2026/NanoMathDataset