Lamb (Kindred)

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Model description

This LoRA is dedicated to capturing the appearance, style, and essence of Lamb, the graceful hunter and one half of Kindred from League of Legends.

Unlike a pure style LoRA, this model was trained on both the UNet (visuals) and the Text Encoder (concepts). This allows it to understand the core attributes of Lamb as a character, providing greater consistency in generating her signature features, from her mask to her ethereal presence. It is well-suited for creating detailed character portraits, action scenes, and artistic illustrations.

--- Usage Instructions ---

Activation: To generate Lamb, use the primary trigger word lamb (kindred). Reinforce the character's appearance with descriptive tags for best results.

  • Primary Trigger: lamb (kindred)

  • Essential Tags: white hair, lamb mask, wolf mask, animal ears, hooves, glowing, holding bow

  • Negative Prompts: Consider adding human ears if you find the model generates both sets.

Recommended Settings:

  • LoRA Weight: 0.7 to 1.0. A weight of 0.8 is a good starting point.

  • Model: Any SDXL-based model. Results will vary depending on the base model's style (e.g., anime, semi-realistic).

  • Sampling:

    • Sampler: Euler Ancestral CFG ++

    • Steps: 20

    • CFG Scale: 1.4

--- Character & Style Description ---

This LoRA aims to reproduce Lamb's iconic design with high fidelity:

  • Signature Masks: Reliably generates both the lamb mask she wears and the wolf mask that represents her partner, Wolf.

  • Ethereal Presence: Captures her otherworldly and ghostly nature, often complemented by a soft glow.

  • Core Anatomy: Consistently renders her white hair, lamb-like ears, and hooved feet.

  • Weapon of Choice: The LoRA is proficient at generating Lamb with her spirit bow in various poses.

The overall artistic style is illustrative and clean, blending well with popular anime-style SDXL models to create vibrant and high-quality images of the Eternal Hunter.

--- Training Details ---

This LoRA was trained using a custom TOML configuration with the following key parameters:

  • Base Model: NoobAI Vpred 1.0

  • Resolution: 1024x1024 (with bucketing enabled from 256 to 4096px)

  • Network Rank (Dimension): 64

  • Network Alpha: 32

    • Note: A higher dimension than alpha was chosen intentionally. This scales down the weight adjustments, which can help in learning finer details and preventing the LoRA from becoming "over-baked."
  • UNet & Text Encoder Training: Both were trained (network_train_unet_only = false) for comprehensive character concept learning.

  • Optimizer: AdamW8bit

  • Learning Rate: 2e-4 (2×10−4)

  • LR Scheduler: cosine_with_restarts (3 cycles)

  • Advanced Noise Scheduling: min_snr_gamma = 5 and zero_terminal_snr = true were used to improve image composition and training stability.

  • Precision: Full fp16 for efficient training.

  • Batch Size: 1

  • Max Training Epochs: 30

Images made by this model

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