🖥️Welcome to try out the open-source GPT4V-Image-Captioner, developed by my friend and me. It offers a one-click installation and comes integrated with multiple features including image pre-compression, image tagging, and tag statistics. Recently, we also launched the webui plugin version of this tool, everyone is welcome to use it!
🌍欢迎加入QQ群"兔狲·AIGC梦工北厂",群号 :780132897 ;"兔狲·AIGC梦工南厂",群号 :835297318(入群答案:兔狲)。Telegram群聊“兔狲的SDXL百老汇”,链接:https://t.me/+KkflmfLTAdwzMzI1
📖HelloWorld 7.0 Update - June 13, 2024
One-sentence update summary: HelloWorld 7.0 is an iteratively optimized version, with the best body performance in the entire series, and further enhanced concept scope and detail richness.
Update details:
By adding negative training images, strengthening pose training, and optimizing the clip model, the accuracy of the model's limbs and hands has been improved compared to previous versions. The recommended negative prompt words are: "bad hand, bad anatomy, worst quality, ai generated images, low quality, average quality".
Extracted the fine-tuned LoRA from the official SPO model and incorporated it into HelloWorld 7.0. SPO is a further improvement of the DPO method. The SPO base model is used for better performance than the DPO XL base model and the original SDXL base model. The SPO LoRA can enhance image details & contrast and beautify images. Thanks to the technical team behind SPO.
Continued to expand the concept scope of the training set, but optimized and streamlined the training set (large training set fine-tuning is too expensive, and H800 is difficult to rent recently, can't afford the local training time). The current total training set is 20,821 images. The training set resolution distribution is as follows, and it is recommended to use several resolutions with a larger number of images for output:
(832, 1248) - Count: 7128 (896, 1152) - Count: 6250 (1248, 832) - Count: 2402 (1024, 1024) - Count: 1639 (1360, 768) - Count: 928 (1152, 896) - Count: 870 (768, 1360) - Count: 432 (960, 1088) - Count: 506 (992, 1056) - Count: 162 (1088, 960) - Count: 140 (704, 1472) - Count: 120 (1056, 992) - Count: 122 (1472, 704) - Count: 115 (1632, 640) - Count: 75 (640, 1632) - Count: 12Used GPT4O to re-label all datasets. This time, a structured labeling method was used, with the specific structure being: "one-sentence summary description + multiple image element tags + inspired by XXX + aesthetic quality description words", where the aesthetic quality description words are divided into five levels: worst quality, low quality, average quality, best quality, and masterpiece. A typical labeling example is as follows:
conceptual art featuring a human hand wrapped in red and beige ribbons, isolated against a plain, light background, realistic style, minimalist color scheme, smooth textures, elongated and surreal aesthetic, inspired by salvador dalí's surrealist works, masterpiece
The "High-Frequency Tagging Word List" and the "High-Frequency Art Style List" involved in the Inspired by XXX for the HelloWorld 7.0 version will only be provided to commercial licensing users. Partners who have purchased Helloworld XL series model authorization in the past, please contact me if there are any omissions to get it for free.
Players can refer to the High-Frequency Tagging Word List of HelloWorld 6.0. In addition, I have also provided 150+ high-quality HelloWorld 7.0 example images in the gallery, which can be used as a reference for everyone's output. Model making is not easy, thank you players for your understanding and tolerance!
📖HelloWorld 6.0 Update - April 20, 2024
LEOSAM HelloWorld 6.0 Top 250 High-Frequency Tagging Word List
Thank you for your patience. I have been job hunting recently, which caused some delays in the HelloWorld updates. Here are the main updates in version 6.0:
HelloWorld 6.0 is an iterative improvement based on version 5.0. Based on my own testing, the realism effect is not significantly different from version 5.0. The main advantage of version 6.0 lies in its broader coverage of concepts in the training set. According to feedback, enhancements have been made in various themes including surrealism, boudoir, group photos, masks, origami, 3D renders, cars, dragons, and maternity photography. Some examples are provided in the illustrations.
HelloWorld 6.0 intentionally includes some low-quality images in the training to enhance the model's response to negative prompts. It is recommended to use the following terms in negative prompts: "low quality, jpeg artifacts, blurry, poorly drawn, ugly, worst quality".
The main body of the HelloWorld 6.0 training set employs GPT4v tagging. For images that GPT4v cannot tag, cogVQA guided by blip2-opt-6.7b is used for tagging. The tagging language style of these multimodal models differs significantly from the traditional WD1.4 tagger. To facilitate more accurate triggering of different concepts in the training set, I have compiled the top 250 high-frequency tagging words from the HelloWorld 6.0 training set. You can view these high-frequency words in this document.
Finally, although SD3 is about to be released, I will still update to HelloWorld XL 7.0, hoping to achieve greater enhancements in version 7.0!
📖2024.2.22 Introducing "HW5.0_Euler_a_Lightning"
This model is a run-accelerated version of the HelloWorld SDXL base model, incorporating both SDXL-Lightning technologies. Equipped with the Eular a sampler and CFG 1, it is capable of generating images in 6-8 steps, which is three times faster than the original SDXL version. Moreover, upon comparison, its imaging results are superior to those of LCM or Turbo versions.
The recommended parameters for generating images with this model are:
Sampler: Eular a (Important! The model is specifically adapted to Eular a, other samplers may not yield as good results)
CFG scale: 1
Sampling steps: 8 steps (6~8 steps are acceptable)
Hires algorithm: ESRGAN 4x / 8x_NMKD-Faces_160000_G
Hires Upscale factor: 1.5x
Hires steps: 8 steps
Hires Denoising strength: 0.3
📖2024.2.11 Introducing "HelloWorld 5.0 GPT4V"
HelloWorld 5.0 is the most substantial update in the history of the HelloWorld series, tagged with GPT-4v, and has undergone significant fine-tuning in fields such as science fiction, animals, architecture, and illustration.
Comparative tests show improvements in this version include:
1. More varied and dynamic character poses and image compositions, creating visually engaging pictures;
2. The film dataset has been extensively trained. While the film texture was weak from versions 2.0 to 4.0, many fans missed the leogirl style of version 1.0. Therefore, this update has specifically strengthened the film texture without compromising other photographic qualities. The film texture can be triggered by phrases such as film grain texture and analog photography aesthetic;
3. Enhanced expressiveness in themes like science fiction, thriller, and animals, with mechas and other subjects having a more designed feel. Animals like snow leopard, red panda, giant panda, tiger, the Pallas's cat, and domestic cats and dogs are more lifelike;
4. Thanks to GPT tagging, prompt adherence and conceptual accuracy have been further improved.
However, the drawbacks of this version include:
1. As this is a substantial fine-tuning update, the error rate for limbs and such may slightly increase, a normal phenomenon when moving out of a comfort zone into new areas of relative optimization. Previous versions underwent extensive limb testing for improvements, while the new version had limited time for such enhancements. Nevertheless, the accuracy of limbs in this version is at least higher than in version 1.0, and I will continue to make improvements in future updates.
2. Due to the reinforced film texture, even though GPT tagging is as accurate as possible, there can be an unavoidable default warm tone in images. However, you can use prompts like studio light or sharp focus to produce high-definition studio-quality images, and with proper use of prompts, the output can have better skin tones and visual appeal than previous versions.
3. This version includes more full-body character images to enhance the full-body effect, so the model may produce wider scenes than before if no specific character composition is directed. Currently, the facial details in 1024 resolution full-body shots might be less sharp compared to half-body or close-up shots. However, this can be improved by adetailer and a 1.5x Hires. fix at 0.3 intensity, or by using prompts like specifying composition to avoid generating full-body images.
4. Since a small number of high-quality illustration datasets have been added, there is a chance that prompts related to animated styles will produce animated images. If this concerns you, please adjust your prompts accordingly.
These are the main updates for this version. Training the SDXL base model is challenging, and when the training set approaches ten thousand images, the cost for tagging and training for each model exceeds 300 USD. I welcome everyone to use the model and appreciate any feedback you can provide! If you find this model satisfactory, I would be immensely grateful if you could help spread the word about it.
📖2024.1.31 Introducing "HelloWorld 4.0"
HelloWorld4.0 is a progressive transitional version from tagging with blip+clip to tagging with GPT4V. I initially trained a pure GPT4V tagging model, and then merged it with a large proportion of the HelloWorld3.2 version and 0.05 proportion of Juggernaut XL (to adjust the skin tone). The new version has shown improvements in prompt compliance and concept coverage compared to the 3.2 version.
The new GPT4V tagging training set has doubled from the 4000 images of the helloworld3 series to 8000 images, covering not only portraits but also animals, architecture, nature, food, illustrations, and more. However, the pure GPT4V version encountered an overfitting problem, which is preliminarily attributed to the doubling of the number of training images. One of the next steps in iterative optimization is to find out how to include as many non-portrait concepts as possible while ensuring sufficient training of portraits. At this stage, a fusion of the new and old versions has been used for fine-tuning to ensure a smooth transition between versions, so the expanded concept set and the advantages brought by GPT4V tagging are not very perceptible at the moment. These advantages will become increasingly apparent in the subsequent generations 5 and 6 of the model.
📖2024.1.5 Introducing "HelloWorld 3.2"
Version 3.2 is an iteration optimized with DPO technology, and compared to version 3.0, there are optimizations in skin tone and limb accuracy, but the improvements are not significant. That's why this version is marked as 3.2 rather than being labeled as 4.0.
📖2023.12.15 Introducing "HelloWorld 3.0"
The new version has expanded the training set, enhancing the model's ability to express in different artistic styles, including science fiction and art.
It has integrated a self-made quality enhancement LoCon (created using slider technology), to improve image texture and alleviate issues of distortion in fingers and limbs.
📖2023.11.17 Introducing "HelloWorld 2.0"
Thank you all for your patience. After overcoming various challenges, the HelloWorld 2.0 version is finally ready to be presented to you all in a state that I'm satisfied with. The main differences between HelloWorld 2.0 and 1.0 are as follows:
HelloWorld 2.0 no longer requires trigger words, and the results are comparable in quality to version 1.0 with trigger words.. The trigger word 'leogirl' in 1.0 was highly associated with East Asians. After the cancellation of the trigger words, while words like '1girl' will still likely generate East Asian portraits when race is not specified, you can now specify the race by using keywords like nationality, skin color, etc. For example, the trigger effects for words like 'Chinese', 'Russian', 'Iranian', 'Jamaican', 'Kenyan', 'dark-skinned', 'pale-skinned', etc., are listed below.

You can also get different styles of characters by writing the names of people from different countries and genders in the prompt, such as Han Meimei (China), Sophie Martin (France), Priya Patel (India), Fatima Al-Hassan (Arab), Wanjiru Mwangi (Kenya). The above prompts are just examples, there are many available prompts and ways to play, and you're welcome to explore and share them by yourself.

HelloWorld 2.0 has balanced the quality/color and offers more style options. The 1.0 version, when used with 'leogirl', would likely produce images with a strong film texture. HelloWorld 2.0 is no longer tied to a film texture and can be customized with some quality-related prompts. Some prompts that have been tested and work well include:
high-end fashion photoshoot, product introduction photo, popular Korean makeup, aegyo sal, Sharp High-Quality Photo, studio light, medium format photo, Mamiya photography, analog film, Medium Portrait with Soft Light, real-life image, refined editorial photograph, raw photo, real photo, Scanned Photo, film still
The color effects of these prompts are as follows:

The training set for HelloWorld 2.0 significantly increased the proportion of full-body photos to improve the effects of SDXL in generating full-body and distant view portraits. Although it has improved compared to version 1.0, it is still strongly recommended to use 'adetailer' in the process of generating full-body photos. Also, for users with enough video memory (24g), it is recommended to perform 1.5x high-resolution repair on the image, which can significantly improve facial details.
📖2023.8.29 Introducing "HelloWorld" SDXL Base Model
Special reminder: When using the HelloWorld 1.0 model, please remember to add the trigger word "leogirl".
Distinct from SD1.5 base model “MoonFilm”, “HelloWorld” is a brand new realistic SDXL base model series, . In order to allow more users to discover HelloWorld, I have retained the original Moonfilm's model link. It can be perceived as a spiritual continuation of Moonfilm on the SDXL new platform, but HelloWorld aims to achieve more than just the pursuit of realism and film-like quality in portraits. Thanks to the far superior amount of information and text understanding capabilities of SDXL compared to SD1.5, HelloWorld is a base model that seeks to realistically depict all things, or in other words, I hope to gradually build a virtual photography world using HelloWorld.
The realistic base model of SD1.5 has developed to a quite mature stage, and it is unlikely to have a significant performance improvement. Unless there is a breakthrough technology for SD1.5 platform, the Moonfilm & MoonMix series will basically stop updating. I will devote my main energy to the development of the HelloWorld SDXL large model. The 1.0 version is now available for download, and the 2.0 version is being developed urgently and is expected to be updated in early September.
As a brand new SDXL model, there are three differences between HelloWorld and traditional SD1.5 models:
Unlike SD1.5 base models, which typically do not include trigger words, please remember to use the trigger word "leogirl" when using HelloWorld 1.0. This ensures that the SDXL model triggers the training set effect more stably.
The HelloWorld model supports direct output at a resolution of 1024*1024 pixels, eliminating the need for high-resolution magnification. The quality of close-up portrait directly output is not inferior to the SD1.5 version, but there are still flaws when outputting distant portraits directly. Therefore, it is suggested to use ADetailer plugin, which can effectively correct the problems of distant faces.
SDXL now allows for easier output using simple natural language prompts. It is recommended to try more natural language prompts, which will result in better outcomes when outputting AI realistic photos.
After multiple rounds of testing, the suggested drawing parameter settings are:
Steps ≥ 25
Sampler: DPM++ 2M Karras
CFG scale: 10
Size ≥ 1024x1024
ADetailer: open
Everyone is welcome to try HelloWorld and provide plenty of feedback. Your valuable opinions are very important for the next step of model improvement!
Copyright Statement:
The HelloWorld series of models (hereinafter "the Model") has been crafted by myself (hereinafter "the Owner") with the assistance of the LiblibAI platform. Republishing the Model on platforms excluding LiblibAI and Civitai is unauthorized by the Owner.
The Owner permits the use of images generated by the Model for non-commercial educational or informative purposes at no cost, on the condition that:
- Users adhere to applicable laws and do not violate the rights of the Model or any third-party.
- Attribution for the images must be clearly stated as "created by LEOSAM's HelloWorld base model".
For any form of commercial utilization, a prior commercial license agreement with the Owner is required. For inquiries related to commercial licensing and model personalization, please reach out to the Owner via the contact information available on the Owner's homepage.
The development and free distribution of the SDXL model represent significant endeavors. The Owner pledges ongoing complimentary updates to the HelloWorld model for individual enthusiasts as a token of appreciation for the community's contributions to open-source development. Collaborative commercial engagements are vital for the Model's advancement and refinement. The Owner appreciates every user for their understanding and support.
Unauthorized use may breach applicable laws and carry legal repercussions. The Owner retains exclusive rights to interpret this statement, which is governed by prevailing laws and regulations.
Description
HelloWorld 7.0 Update - June 13, 2024
One-sentence update summary: HelloWorld 7.0 is an iteratively optimized version, with the best body performance in the entire series, and further enhanced concept scope and detail richness.
Update details:
By adding negative training images, strengthening pose training, and optimizing the clip model, the accuracy of the model's limbs and hands has been improved compared to previous versions. The recommended negative prompt words are: "bad hand, bad anatomy, worst quality, ai generated images, low quality, average quality".
Extracted the fine-tuned LoRA from the official SPO model and incorporated it into HelloWorld 7.0. SPO is a further improvement of the DPO method. The SPO base model is used for better performance than the DPO XL base model and the original SDXL base model. The SPO LoRA can enhance image details & contrast and beautify images. Thanks to the technical team behind SPO.
Continued to expand the concept scope of the training set, but optimized and streamlined the training set (large training set fine-tuning is too expensive, and H800 is difficult to rent recently, can't afford the local training time). The current total training set is 20,821 images. The training set resolution distribution is as follows, and it is recommended to use several resolutions with a larger number of images for output:
(832, 1248) - Count: 7128 (896, 1152) - Count: 6250 (1248, 832) - Count: 2402 (1024, 1024) - Count: 1639 (1360, 768) - Count: 928 (1152, 896) - Count: 870 (768, 1360) - Count: 432 (960, 1088) - Count: 506 (992, 1056) - Count: 162 (1088, 960) - Count: 140 (704, 1472) - Count: 120 (1056, 992) - Count: 122 (1472, 704) - Count: 115 (1632, 640) - Count: 75 (640, 1632) - Count: 12Used GPT4O to re-label all datasets. This time, a structured labeling method was used, with the specific structure being: "one-sentence summary description + multiple image element tags + inspired by XXX + aesthetic quality description words", where the aesthetic quality description words are divided into five levels: worst quality, low quality, average quality, best quality, and masterpiece. A typical labeling example is as follows:
conceptual art featuring a human hand wrapped in red and beige ribbons, isolated against a plain, light background, realistic style, minimalist color scheme, smooth textures, elongated and surreal aesthetic, inspired by salvador dalí's surrealist works, masterpiece
The "High-Frequency Tagging Word List" and the "High-Frequency Art Style List" involved in the Inspired by XXX for the HelloWorld 7.0 version will only be provided to commercial licensing users. Partners who have purchased Helloworld XL series model authorization in the past, please contact me if there are any omissions to get it for free.
Players can refer to the High-Frequency Tagging Word List of HelloWorld 6.0. In addition, I have also provided 150+ high-quality HelloWorld 7.0 example images in the gallery, which can be used as a reference for everyone's output. Model making is not easy, thank you players for your understanding and tolerance!
FAQ
Comments (66)
is this the real SD3 we were waiting for?
Literally outperformed Stability. Exactly my thought!
i really love your work buddy 👍👍 everytime 100x improvment then before and hope that you will greatly finetune the base model and give another masterpiece on sd3 wish u good luck....
Any chance of sharing the model on HuggingFace? This will allow me to use it in a simple way with the Diffusers python lib.
来了来了
这才是SD社区之光!感谢作者的付出!
Question about training data.
For version 7 you mention, "The current total training set is 20,821 images"
Was v7 trained directly from sdxl base, with those images?
i don't think so, he specifically says "iterative" which he also said for previous versions that were trained from the prior version. safe bet v7 was trained from v6
aw, fair point.
would love to know the details on initial training
I am waiting for lighting version!!!
anyway to get rid of the strong yellow (analog photo like) color tone?
非常好的模型。谢谢。
V7建议的设置是什么?CFG步数取样什么的。
接下来的更新计划是什么?V8,V7lightning,SD3?
The quality of your models never disappoints. Thanks for this obvious labor of love.
It seems you have created another amazing Model well done
you've done it yet again! i was already a huge fan of your previous ones, and you just keep coming up with such amazing models. 10/10
Lil question: each time I publish my non-commercial works with HelloWorld 1.5 model, I have to type out that I used your model? thanks :)
This would interest me as well
@rob52840 I think it's only for educational/informative purposes, for hobby purposes i'd say no need, but leo should clarify
@angelika33 Whether for commercial or non-commercial purposes, if you use this model to post images on websites such as Instagram, you should declare the model used. This is based on three considerations:
It is a sign of respect for the work of the model's author.
It ensures that derivative works based on your image creations will not be used commercially without authorization.
As an open-source model that took a significant amount of time and money to train, I need it to be known and used by more people. For me, choosing open-source instead of paid purchase means that the more people who know and recognize this model, the more spiritual income I receive.
V7 seems to have a bias towards photorealistic/3d images. This isn't a bad thing, it's just that I've noticed that without different prompting (which may be what's causing it) it's harder (but not impossible) to do flat/cartoon/anime type images there compared with V6.
v7 is really steerable and has cool dynamic abilities. Nice work!!
For friends who do not want unstable colors and skin tones to appear in the picture, they can enter "film" in negative prompt words.
This model is really good, but it can't draw nice looking large breasts.. sadly.
How do you guys use the restart sampling with comfyui?
KSamplerWithRestarts - https://github.com/ssitu/ComfyUI_restart_sampling
Question for the author but also for everyone else. Comparing your 2 latest model for sd1.5 and sdxl, whats the difference? I just started using sdxl and it seems that sdxl seems to be able to show more fine detail such as soft fine hair on skin especially in light. But I am not sure if its unique to sdxl or just a certain sdxl model that i was using. I assume sdxl is better since it is double the reselution of sd1.5. But i tihink sd1.5 can do the same using upscale unless I am mistaken. I hope someone can confirm in general the difference between sd1.5 and sdxl and with "LEOSAM"'s models. [It takes me 3 to 6 days to download a 6GB file so it makes me extra curious when downloading such a file.]
XL isn't just more pixels.. with diligence, you can get comparable resolution and clarity with your method in 1.5, but think of XL like getting a nicer camera with better lenses. you can get gud with an older cheaper camera and make great art, but there's going to be a 'lack' of fidelity, depth, saturation, prompt understanding etc. it's worth it if you can get through a long download if you have the machine for it
@Narz Ill do more test once the download completes. I am sure its somehow better as you suggested. The reason for the uncertainty is that in some sdxl generations its actually worst in quality (faces, etc), without any edits upscale, etc. but these might be accidents.
Top!
Polyhedron_all SDXL 1.0 / skin, hands, eyes (m/f) - v1.0 | Stable Diffusion LoRA | Civitai I found Lora, which can effectively enhance the skin texture and quality of this model. The stable effect cue words are:Detailed skin: 1.5, Best shadow, rich skin highlights and shadows, (RAW photo, best quality), finely detailed, masterpiece, ultra-detailed, (exquisite skin texture), sharp focus, 8k ultra-high definition,
lora Weight 0.8
https://flowgpt.com/p/stable-prompt-1 I recently discovered a design prompt word-based robot using GPT that is very useful.
This model can dream!
非常好的模型。谢谢。
如果能出Lightning版本就好了
THE BEST MODEL OF ALL TIME
This is the best SDXL checkpoint model; I really love it. Will the author consider releasing an inpainting version?
The model is extremely good, but I always get wasched out and bleak colors when I use tiled upscale. Any idea why that's the case and how to fix it?
Me too. Also I'm going to stop using it due to the restrictive licensing.
The previews look amazing as far as artsy stuff goes, but for photorealism anything I see looks washed out and airbrushed. I couldn't get anything decent to come out in that regard either.
This model is a masterpiece. LEOSAM, I respect you.
用哪些提示词能呈现比较好的效果呢,能给个示例吗
https://flowgpt.com/p/stable-prompt-1 I recently discovered a design prompt word-based robot using GPT that is very useful.
S
I wonder what will be your next work
This model peaked at v5...its still the best version, imo. absolutely incredible.
Film Grain 1.0 is the best SD1.5, trust me
i can tell by your detailed description that you are a true artist, live long and prosper
good
i love it! i always appreciate your work! flux plz!
Regarding: "The Owner permits the use of images generated by the Model for non-commercial educational or informative purposes at no cost", all text to image AI generations are ruled to be in the public domain; you cannot restrict use of generated images.
I thought that was only for local installations? Can't web-based tools restrict use? Also - do you have a citation for this? (I just want it so I can reassure myself)
@nanu_nanu_grafx "Under current copyright law, AI-generated images are generally considered to be in the public domain, as AI systems are not considered human authors and cannot hold copyright."
@nanu_nanu_grafx https://www.google.com/search?q=AI+images+public+domain+law
@sswam That's not a citation - it's just a Google search. I could have done that myself. You're the one making the assertion, so it would be great if you could share a citation to the actual source that makes you believe what you stated. I'm not trying to be a jerk - I agree with you. But the onus is always on the one asserting the claim to provide sufficient evidence to back it up.
Still da goat! :)
Hi, Can anyone explain to me how I can use thisin comfyui? I download it and set up everything but the pictures made are absolutely garbage xD Or do I need to add more accurate nodes?
check it in Forge. If you don´t handle comfy like a pro, all pics are garbage compared to Forge, Fooocus, Automatic and so on
Still one of the GOATs ;)
Just popped back into it after a long time away. Yep it is real one of the best.
what's "Restart" sampler and where I can find and install it? I use comfy only.
A wonderful model! Great photo view and variety at the same time.
My favorite model, rich colors, great compositions!
尤其是出艺术感的内容 QWEN ZIMAGE都赶不上 如有有ZIMAGE或QWEN版本就好了
其他都挺好的,就是手部老是画不好,是不是我的prompt有问题?
Details
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leosamsHelloworldXL_helloworldXL70.safetensors
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leosamsHelloworldXL_helloworldXL70.safetensors
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leosamsHelloworldXL_helloworldXL70.safetensors
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leosamsHelloworldXL_helloworldXL70.safetensors
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