Use of this neural network implies your obligation not to use it to create visual materials without the permission of the persons depicted in them. Illegal distribution of such materials violates human rights to privacy.
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Remove clothes from photos using a neural network directly in Telegram!
The Fast Nuds Bot service is a Telegram bot that allows users to undress girls in photographs online using the Stable Diffusion neural network. It offers a fast and extraordinary way to create nude images with just a few clicks.
The bot management interface is integrated into Telegram, which ensures accessibility from any device that supports the messenger. To start the process, the user uploads a photo to the bot, and it automatically performs processing.
Fast Nuds Bot offers a variety of plans, from limited number of treatments to unlimited access. Payment methods include bank cards, SBP transfers, as well as cryptocurrency, which makes the purchasing process convenient for a wide range of users.
Additionally, the bot offers a referral program that allows users to earn a percentage of the purchases of friends who use the bot. However, to use this service, the user must be over 18 years of age.
Overall, Fast Nuds Bot is a convenient and functional service for those who want to create nude images online using a neural network.
2. The main parts of the body should not be blocked by arms, legs, hair, etc... All this should not block the girl’s body.
3. Avoid photos where clothing blends into the background or is close to skin color.
4. It's better to upload good or average quality images. The lighter the photo, the better the result.
5. Choose photos with tight-fitting clothes: tops, underwear, T-shirts, dresses, etc. In wide clothes, the neural network will work worse, but it will cope.
Ready! You've completed the full training!
Ps 🍆 We recently added “undressing guys” - the instructions are exactly the same!
The Fast Nuds Bot neural network was first published on 2024-04-27 21:44:09 and manually edited on 2024-10-24 14:47:32.