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README.md
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ProteusV0.1 is currently my best model to date.
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ProteusV0.1 is built upon OpenDalleV1.1 as its fundamental foundation. It enhances the original model by improving prompt compliance and artistic abilities. To achieve this, it was fine-tuned using approximately 220,000 captions from copyright-free stock images (with some anime included), which were then normalized. Additionally, DPO (Direct Preference Optimization) was employed through a collection of 10,000 carefully selected high-quality, AI-generated image pairs. In order to maintain consistency throughout the process, only specific blocks within multiple LORAs were adjusted and than applied to the model using a SLERP like merging method, leaving the remaining parts unchanged during training. This approach helps minimize any loss of concepts that may occur when applying DPO. As a result, ProteusV0.1 demonstrates notable improvements in facial details and overall skin quality while maintaining comparable or marginally enhanced levels of surrealism, anime, and cartoon-like aesthetics.
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## Settings for ProteusV0.1
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Use these settings for the best results with ProteusV0.1:
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ProteusV0.1 is currently my best model to date.
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ProteusV0.1 serves as a sophisticated enhancement over OpenDalleV1.1, leveraging its core functionalities to deliver superior outcomes. Key areas of advancement include heightened responsiveness to prompts and augmented creative capacities. To attain these objectives, the model capitalizes on a vast pool of around 220,000 GPTV-captioned, non-copyrighted stock photographs, complemented by select anime imagery. Furthermore, Direct Preference Optimization (DPO) is implemented through meticulously curated sets of 10,000 top-notch, artificially generated picture pairings.
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In pursuit of optimal performance, numerous LORA (Low-Rank Adaptation) models are trained independently before being selectively incorporated into the principal model via dynamic application methods. These techniques involve targeting particular segments within the model while avoiding interference with other areas during the learning phase. Consequently, ProteusV0.1 exhibits marked improvements in portraying intricate facial characteristics and lifelike skin textures, all while sustaining commendable proficiency across various aesthetic domains, notably surrealism, anime, and cartoon-style visualizations.
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## Settings for ProteusV0.1
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Use these settings for the best results with ProteusV0.1:
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