#Decentralized #AI #EmreficiaIntelligence #Muslim #Адыгэ Şim vûtesû hâ gocâgâre. (At üstünde, it ısırmaz.)

Joined March 2012
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Biz aslında öğrenmeyi ve düşünmeyi reddeden, tembel zihinlerle savaşıyoruz.
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Emre Cir Cassian λ retweeted

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We can see that many new skills have been developed for the agents. A lot of developments have been made. The Singularity is beginning...
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I liked it. Made by claude code Qwen3.6-27B-Omnimerge-v4-MTP-Q4_K_L-GGUF PROMPT : create a p5js animation that interacts with mouse pointer movement and click, something with particles, stars, black holes and universe. keep it simple make a proper plan. follow atomic way.
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I need longer context for my Personal AI. I'm resisting not to buy a new GPU. Because Local AI has to run on my single RTX4090. It is the future... I am gonna solve this problem. Longer context length, useful parameter size or new techniques for my .single RTX4090 🚀
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What happens in the #AI #Economy? Basic Economy: Sellers 🔄 Buyers Who is the buyer? ➡️ Seller's worker AI gets cheap ➡️ Worker gets fired Worker can't buy ➡️ Seller can't sell Classic economy collapses ➡️ New world order emerges.
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Giving Claude Code to Hermes Agent as a skill seems like a more effective approach than asking Hermes to write code. Instead of me fighting with Hermes, Claude Code is fighting with Hermes. 😀 All experiments on 1x RTX 4090 🦾
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This is very important. I will try to implement this paper for fine tuning Qwen3.6 27B . Personal AI will shine ...
Introducing DiffusionBlocks: Block-wise Neural Network Training via Diffusion Interpretation pub.sakana.ai/diffusionblock… What if we didn’t have to hold an entire neural network in memory to train it? Standard neural net training optimizes all parameters jointly. As a result, the memory required during training grows linearly with the depth of the network. In our #ICLR2026 paper, we propose DiffusionBlocks, a principled framework to train networks one block at a time, drastically reducing memory requirements while matching end-to-end performance. With DiffusionBlocks, we split the network into blocks and train them one at a time, so you only need memory for a single block. How? We explicitly assign each block a role: to move the representation a little closer to the target than the block before it did. That role turns out to be precisely what a diffusion model does, step by step. Each block only needs to optimize its own objective and can be trained independently. We validated this across five different architectures: • ViT • DiT • Masked diffusion • Autoregressive transformers • Recurrent-depth transformers In each case, performance is competitive with end-to-end training while using a fraction of the memory. This perspective also extends naturally to recurrent-depth (Looped) transformers, which apply the same network iteratively and normally require expensive backpropagation through time (BPTT). Viewed through DiffusionBlocks, we can replace those multiple iterations with a single forward pass during training. Read our paper and code, to learn more. Paper: arxiv.org/abs/2506.14202 GitHub: github.com/SakanaAI/Diffusio… 🐟
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The AI cartel wants you to buy and burn more tokens.
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Bankalar bu geri zekalı asistanları her yere entegre ediyorlar. Ancak müşteri memnun mu, kullanıyor mu , işe yarıyor mu diye soran yok herhalde. Canım sıkıldı. Keyfim kaçtı...
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Agent memory is still an issue for Local AI. You have dance between context length and quantization quality . An also you have to build skills around your agent . Everyone needs to different kind of skills.
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Now using Turbovect LLM Wiki Reranker system i am building a knowledge base skill for my agent. If it will be successful I will share the architecture.
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Designing an agent memory architecture is always challenging, especially for local models. I’m doing this exclusively for local AI models because I believe the future lies in Personal/Local AI.
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Meet DiffusionGemma! An experimental open model that explores a fast approach to text generation, released under an Apache 2.0 license. Moving beyond sequential, token-by-token processes to generate entire blocks of text simultaneously. Here’s what’s new with DiffusionGemma: 👇
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I don’t care about Antrophic or OpenAI models. You can’t run them on your own computer. AI has to be open source. That’s why the open-source community needs to accelerate its research and development efforts. They may have the money, but we have plenty of smart people.
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It’s not about making more money, friends. The equation is changing, and so are the rules of the game. If we want to elevate human society to a higher level and achieve freedom, we must democratize artificial intelligence.
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Emre Cir Cassian λ retweeted
Concentration of power, capabilities and economic wealth is the biggest risk in AI. We need open science and open-source more than ever!
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No one realizes but we are rapidly heading toward the technological singularity. Thanks to AI agents, new technological advancements are happening every day. Even now, it’s impossible for a single person to keep up with all of this. Currently, we’re able to manage this tracking..
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process thanks to AI agents. However,soon enough,even with AI agents we won’t be able to keep up with these developments. It’s the complete exclusion of humans from the loop. We don't think much about the consequences of this situation. And no one can predict them with certainty.
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The IQ quantization method is quite interesting. Based on tests I conducted using Qwen 3.6 27B, I found that IQ4 models can achieve better scores than the Q4_K series in PPL tests, but they fail the instruction-following prompt tests. The system tends to ignore the prompt.
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Although the method seems reasonable, I wouldn’t choose it due to the loss of quality.
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