# Gallery Animemory Alpha is a bilingual model primarily focused on anime-style image generation. It utilizes a SDXL-type Unet structure and a self-developed bilingual T5-XXL text encoder, achieving good alignment between Chinese and English. We first developed our general model using billion-level data and then tuned the anime model through a series of post-training strategies and curated data. By open-sourcing the Alpha version, we hope to contribute to the development of the anime community, and we greatly value any feedback. # Key Features - Good bilingual prompt following, effectively transforming certain Chinese concepts into anime style. - The model is mainly にじげん(二次元) style, supporting common artistic styles and Chinese elements. - Competitive image quality, especially in generating detailed characters and landscapes. - Prediction mode is x-prediction, so the model tends to produce subjects with cleaner backgrounds; more detailed prompts can further refine your images. - Impressive creative ability, the more detailed the descriptions are, the more surprises it can produce. - Embracing open-source co-construction; we welcome anime fans to join our ecosystem and share your creative ideas through our workflow. - Better support for Chinese-style elements. - Compatible with both tag lists and natural language description-style prompts. # Model Info
Developed by animEEEmpire
Model Name AniMemory-alpha
Model type Diffusion-based text-to-image generative model
Download link Hugging Face
Parameter TextEncoder_1: 5.6B
TextEncoder_2: 950M
Unet: 3.1B
VAE: 271M
Context Length 227
Resolution Multi-resolution
# Key Problems and Notes - Primarily focuses on text-following ability and basic image quality; it is not a strongly artistic or stylized version, making it suitable for open-source co-construction. - Quantization and distillation are still in progress, leaving room for significant speed improvements and GPU memory savings. We are planning for this and looking forward to volunteers. - A relatively complete data filtering and cleaning process has been conducted, so it is not adept at pornographic generation; any attempts to force it may result in image crashes. - Simple descriptions tend to produce images with simple backgrounds and chibi-style illustrations; you can try to enhance the detail by providing comprehensive descriptions. - For close-up shots, please use descriptions like "detailed face", "close-up view" etc. to enhance the impact of the output. - Adding necessary quality descriptors can sometimes improve the overall quality. - The issue with small faces still exists in the Alpha version, but it has been slightly improved; feel free to try it out. - It is better to detail a single object rather than too many objects in one prompt. # Limitations - Although the model data has undergone extensive cleaning, there may still be potential gender, ethnic, or political biases. - The model's open-sourcing is dedicated to enriching the ecosystem of the anime community and benefiting anime fans. - The usage of the model shall not infringe upon the legal rights and interests of designers and creators. # Quick Start 1.Install the necessary requirements. - Recommended Python >= 3.10, PyTorch >= 2.3, CUDA >= 12.1. - It is recommended to use Anaconda to create a new environment (Python >= 3.10) `conda create -n animemory python=3.10 -y` to run the following example. - run `pip install git+https://github.com/huggingface/diffusers.git torch==2.3.1 transformers==4.43.0 accelerate==0.31.0 sentencepiece` 2.ComfyUI inference. Go to [ComfyUI-Animemory-Loader](https://github.com/animEEEmpire/ComfyUI-Animemory-Loader) for comfyui configuration. 3.Diffusers inference. ```python from diffusers import DiffusionPipeline import torch pipe = DiffusionPipeline.from_pretrained("animEEEmpire/AniMemory-alpha", trust_remote_code=True, torch_dtype=torch.bfloat16) pipe.to("cuda") prompt = "一只凶恶的狼,猩红的眼神,在午夜咆哮,月光皎洁" negative_prompt = "nsfw, worst quality, low quality, normal quality, low resolution, monochrome, blurry, wrong, Mutated hands and fingers, text, ugly faces, twisted, jpeg artifacts, watermark, low contrast, realistic" images = pipe(prompt=prompt, negative_prompt=negative_prompt, num_inference_steps=40, height=1024, width=1024, guidance_scale=7, num_images_per_prompt=1 )[0] images.save("output.png") ``` - Use `pipe.enable_sequential_cpu_offload()` to offload the model into CPU for less GPU memory cost (about 14.25 G, compared to 25.67 G if CPU offload is not enabled), but the inference time will increase significantly(5.18s v.s. 17.74s on A100 40G). 4.For faster inference, please refer to our future work. # License This repo is released under the Apache 2.0 License.