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Modeller
🏆 En İyi 10 Model 🆓 Ücretsiz Modeller 📋 Tüm Modeller ⚙️ Kilo Code
Kaynaklar
💬 Prompt Kütüphanesi 📖 YZ Sözlüğü 🔗 Faydalı Bağlantılar

YZ Sözlüğü

Yapay Zekanın tam sözlüğü

162
kategoriler
2.032
alt kategoriler
23.060
terimler
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terimler

Custom Embedding

Numerical vector file trained via Textual Inversion, capturing the semantic characteristics of a specific visual concept, which can be used in the prompt to influence image generation.

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LyCORIS Weights

Generalized fine-tuning weight format extending LoRA, capable of applying low-rank modifications to any part of the model (including U-Net layers), offering superior flexibility for adaptation.

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Concept Fine-tuning

Training process that adjusts the entire diffusion model on a targeted dataset so that it masters a specific subject, style, or object, at the cost of greater loss of generalization.

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Semantic-Preservation Regularization

Technique used during fine-tuning (notably with DreamBooth) to prevent overfitting and loss of the model's ability to generate other concepts, by using varied regularization images.

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Fine-tuning Checkpoint

Complete model file (often several gigabytes) resulting from concept fine-tuning, containing all modified weights of the diffusion network, replacing or combining with the base model.

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Control Adapter (ControlNet)

Conditioning system that adds a trainable auxiliary neural network to precisely control image generation from spatial inputs such as sketches, poses, or depth maps.

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Class-Guided Diffusion Fine-tuning

Variant of fine-tuning where the model is conditioned not only by text but also by class labels, enabling more granular control over the attributes of generated objects.

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Custom Diffusion Model

Diffusion model that has been specifically adapted, via techniques such as DreamBooth or LoRA, to excel in generating a unique style, character, or visual universe.

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Diffusion Learning on Style

Application of fine-tuning where the objective is to teach the diffusion model a particular artistic style (e.g., watercolor, cyberpunk) by training it exclusively on representative images of that style.

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Fine-tuning Weight Fusion

Mathematical process of combining multiple sets of fine-tuning weights (e.g., multiple LoRAs) to create a hybrid effect, adjusting their respective influence ratios.

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Reference Prompt for Fine-tuning

Descriptive text used during fine-tuning training to associate training images with a textual concept, serving as a bridge between visual data and the model's embedding space.

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Weight Quantization for Fine-tuning

Technique for reducing the numerical precision of a fine-tuning model's weights (e.g., from FP32 to FP16 or INT8) to decrease file size and memory usage, often at the cost of slight quality loss.

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Low-Shot Fine-tuning

Fine-tuning challenge that consists of adapting a model with a very limited number of training examples, requiring techniques like DreamBooth or Textual Inversion to be effective.

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Catastrophic Forgetting Degradation

Phenomenon where a diffusion model, after intensive fine-tuning on a concept, forgets how to generate other concepts it previously mastered, reducing its versatility.

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