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One big advantage of Embeddings and Textual Inversions are the file size in download and in local storage as well as the flexible usage. On the other hand side it is quite fast to train such a model relatively seen.
The embed turns a cat into a Mars style cat. Using keywords in the prompt such as "cat" and "Mars" will work best.
A bunch of models will work when using the CatOnMars Embedding. The images from the gallery give an impression of this statement. But I have to say, I prefer some special models, based on the fact, that they give me fast results.
I used 12 to 34 image of my own pictures for the training. The Embedding Learning Rate ranged from 0.05 to 0.0005. The maximal number of steps were 15000. 5 Prompts were used for the training. [name] and [filewords] were used in the Prompt template file. The later one is using the words from the image file name for the Prompt. 8 vectors per token were chosen.
Have a nice day! Have fun! Be inspired!
1. Quyền đối với các mô hình được đăng lại thuộc về người sáng tạo ban đầu.
2. Người sáng tạo gốc muốn xác nhận mô hình vui lòng liên hệ nhân viên SeaArt AI qua kênh chính thức. Nhấp để xác nhận
