Domore WithX

127 posts

Domore WithX

Domore WithX

@DomoreWithx

Not a crypto enthusiast

Katılım Kasım 2021
433 Takip Edilen20 Takipçiler
Domore WithX
Domore WithX@DomoreWithx·
@banditsbtc { "p":"X-20", "op":"mint ", "tick":"BTCB", "amt":"10000" }
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₿itcoin ₿andits
₿itcoin ₿andits@banditsbtc·
{ "p":"X-20", "op":"deploy", "tick":"BTCB", "max":"512000000", "lim":"10000" }
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Pietro Schirano
Pietro Schirano@skirano·
Just fine-tuned an SDXL model on a blocky, colorful oil painting style known as 'alla prima'. Used 50 carefully selected images. The results? So beautiful, it's messing with my brain. 🎨
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Rowan Cheung
Rowan Cheung@rowancheung·
Custom Instructions with GPT-4 unlocks some insane new capabilities. If you use ChatGPT, don't ignore this. Here are the 7 most insane example use cases I've seen so far (a thread):
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Bindu Reddy
Bindu Reddy@bindureddy·
Diffusion Models - The Magic Behind Stable Diffusion and MidJourney Watching an AI model generating a photorealistic image from a text prompt feels like magic. Image generation models like Stable Diffusion and MidJourney have made us all prompt artists. Here is how the magic happens. Stable Diffusion is a latent diffusion model. Deep learning-based diffusion models use neural networks to iteratively add and then remove noise from data, such as images, to generate new samples. Essentially you start with a clean, target image and add noise in a series of steps - you go from a complex high-dimensional space of an image vector to a "noisy" space. You then "reconstruct" the image using a neural network trained to go from the noisy vector back to the image. As the model removes noise iteratively, it learns the essential features of the image and learns how to "reconstruct" the image and this is where the generative aspect comes into play. The process of adding and removing noise allows for exploration of the data space and the noise acts like a form or regularization, preventing the model from overfitting and generalizing. Reconstructing or reversing the noise process helps the model generate similar data. Once trained, you can start with random noise and end up with a generated image that has the characteristics of the training set. Stabe Diffusion is a latent diffusion model. It largely operates in a low-dimension space by compressing the image into a much smaller lower-dimensional representation called the latent space. This makes for great efficiency and speed as you are dealing with a simplified version of the data You start with a text prompt that is converted into a high-dimensional encoding using a Transformer-based encoder. This encoder maps a sequence of input tokens to a sequence of latent text embeddings, which are then used to condition the latent space for image generation. These embeddings are then used to condition the latent space of the diffusion model in a process called latent space conditioning. Essentially the text embedding is used to modify or "condition" the initial random noise in the latent space and guides the diffusion model on what features to focus on and what the final image should be like. The diffusion process then iteratively refines this conditioned latent space, gradually transforming the random noise into a coherent image. This allows for customization based on the text prompt and efficiency as we are operating in a low-dimensional space This is of course an oversimplification of the process and there is a lot more detail to this process but hopefully should give a high-level understanding of the process by which text prompts get converted into beautiful images!
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Eyisha Zyer
Eyisha Zyer@eyishazyer·
ChatGPT isn’t the only AI-powered website Here are 12 AI websites that feel illegal to know about:
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Eyisha Zyer
Eyisha Zyer@eyishazyer·
AI Imagine what historical figures would look like if they were modern people. 1/ George Washington
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Eden Au
Eden Au@0xedenau·
Excuse me WHAT
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DeFi Cheetah - e/acc
DeFi Cheetah - e/acc@DeFi_Cheetah·
This 🧵 is about my analysis framework of DEXes: why I think @CurveFinance prevails over @Uniswap, and why Uni v3 is a wrong move! In short, 2 reasons: (i) pricing power & (ii) profitability
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Metav3rse
Metav3rse@themetav3rse·
These five AI-powered websites feel like a cheat code, and they will help you grow in 2023. 🧵
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borovik
borovik@3orovik·
Why DeGods is failing - they’re broke - lost 90% of DeGods mint funds by keeping all funds in SOL - collected y00ts mint funds via DUST (down 90%) - turned off royalties - premature / out of left field announcements short thread 🧵
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Kris Kay | 🎲 444 Capital
Kris Kay | 🎲 444 Capital@thekriskay·
The 2017/18 ‘ETH killers’ Everyone posts % down from ATH.. But how have they performed if you bought at 2017/18 ATH? 📊🤔 (about 5 years ago to today)
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Miles Deutscher
Miles Deutscher@milesdeutscher·
I just interviewed Jordi (@gametheorizing), safe to say my mind was blown. Over an alpha-packed 101 minutes, we discussed: • When #Bitcoin is likely to bottom • Jordi's top plays for next cycle • BTC vs ETH and MUCH more. 🧵: Here are the 10 most important takeaways. 👇
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Ran Neuner
Ran Neuner@cryptomanran·
Sam attacked LUNA. LUNA crushed 3AC. 3AC crushed Blockfi/Voyager. Sam attacked StEth StETH crushed Celsius Sam crushed Alameda. Alameda crushed FTT/FTX. Alameda crushed Voyager. Alameda crushed Blockfi. FTX/Alameda crushed Genesis. Genesis crushed DCG Genesis smashed Gemini
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Daniel Gross
Daniel Gross@danielgross·
Welcome to the future of smart agents! I hooked up ChatGPT to WhatsApp --
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Aleksandr Volodarsky
Aleksandr Volodarsky@volodarik·
ChatGPT has crossed 1M+ users in just 5 days. To compare, it took Netflix 41 months, FB - 10 months, and Instagram - 2.5 months. But many haven’t yet realized its full potential. Here are the 10 mindblowing things you can do using it right now:
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