CivArchive
    Dual-Checkpoint TIPO-Enhanced SDXL Image Generation - v1.0
    NSFW
    Preview 85476471
    Preview 85476018
    Preview 85475050
    Preview 85475075
    Preview 85476591
    Preview 85475712
    Preview 85475313
    Preview 85475523
    Preview 85475116
    Preview 85475729
    Preview 85475399
    Preview 85475484
    Preview 85475769
    Preview 85475897
    Preview 85475974
    Preview 85476000
    Preview 85476171
    Preview 85476204
    Preview 85476398
    Preview 85476552

    Dual-Checkpoint TIPO-Enhanced SDXL Image Generation (this eats VRAM for Breakfast)

    Overview

    This comprehensive ComfyUI workflow is designed for professional image generation that leverages the power of dual SDXL-based checkpoints to achieve unprecedented artistic flexibility. The workflow combines the strengths of multiple specialized models to create high-quality outputs with automated parameter variation and professional-grade refinements.

    Key Features & Benefits

    Dual Checkpoint System: Mix specialized models (e.g., IllustriousXL + Realistic SDXL) for unique artistic styles
    🤖 TIPO Prompt Enhancement: Automatic prompt optimization using KBlueLeaf's TIPO-500M model
    🎲 Automated Randomization: Dynamic aspect ratios, CFG, and LoRA selection for infinite variety
    🔧 Professional Detailing: Multi-stage face, hand, and hair enhancement
    📐 ControlNet Integration: Adaptable line art and pose control
    🚀 Ultimate SD Upscale: High-resolution output with tile-based refinement

    Workflow Structure & Dependencies

    Required Custom Nodes

    Install these custom nodes via ComfyUI Manager:

    • z-tipo-extension: For TIPO prompt enhancement

    • comfyui-prompt-control: A1111-style prompt scheduling

    • ComfyUI-Impact-Pack: FaceDetailer and detection systems

    • ComfyUI_UltimateSDUpscale: Professional upscaling

    • ComfyUI_Fill-Nodes: Random number generation

    • comfyui_controlnet_aux: ControlNet preprocessing

    • ComfyUI-Easy-Use: Workflow automation helpers

    Essential Models

    Primary Models:

    • SDXL-based checkpoint (IllustriousXL recommended)

    • Secondary SDXL checkpoint for high-res fix

    • TIPO-500M model for prompt enhancement

    Supporting Models:

    • SAM models for segmentation

    • YOLO detection models (face, hand, hair)

    • 4x upscaling models (UltraSharp recommended)

    • ControlNet models (LineArt, Pose)

    Artistic Freedom Through Dual Checkpoints

    The Approach

    By utilizing two different SDXL-based models in sequence, you can:

    1. Initial Generation: Use a specialized checkpoint (e.g., IllustriousXL) for its extensive knowledge of anime artists and character consistency

    2. High-Resolution Refinement: Apply a second checkpoint (e.g., realistic SDXL) to enhance details, lighting, and overall realism

    Why This Matters

    IllustriousXL brings unparalleled anime artist knowledge and character consistency:

    • Trained on vast anime datasets with superior character anatomy

    • Eliminates common hand/foot artifacts present in other models

    • Extensive pose and composition capabilities

    Realistic SDXL Models provide:

    • Advanced lighting and texture understanding

    • Photorealistic detail enhancement

    • Improved background and environmental elements

    • A lot more Artist knowledge

    The Combination results in:

    • Anime characters with realistic lighting and textures

    • Consistent character features with enhanced detail quality

    • Artistic styles impossible with single-model approaches

    Technical Implementation

    TIPO Integration

    TIPO (Text to Image with text Presampling for Prompt Optimization) automatically enhances your prompts:

    Input: "1girl, outdoors, sunset" TIPO Output: "1girl, outdoors, sunset, masterpiece, best quality, amazing quality, very aesthetic, ultra-detailed, highly detailed, realistic, beautiful lighting, golden hour, warm colors, detailed background" 

    Configuration:

    • Model: KBlueLeaf/TIPO-500M-ft

    • Operation: short_to_tag_to_long

    • Temperature: 1.0, Top-p: 0.95

    Prompt Control Features

    The workflow utilizes advanced prompt control enabling:

    • A1111-style syntax: (emphasis:1.2), [negative], {choices|alternatives}

    • LoRA scheduling: <lora:style:0.8:0.6> with dynamic weights

    • Prompt filtering: Conditional elements based on generation parameters

    • Regional prompting: Area-specific styling and control

    Automation & Randomization

    Dynamic Parameter Control:

    • Aspect Ratios: Randomly selected from portrait, landscape, and square formats

    • CFG Scale: Range-based randomization (3.0-8.0) for varied artistic interpretation

    • LoRA Selection: Automated loading from categorized folders with weight randomization

    • Seed Management: Increment mode for easy iteration and comparison

    Professional Enhancement Pipeline

    Multi-Stage Detailing

    1. Face Enhancement: Primary face detection and refinement using specialized models

    2. Hand Detailing: Targeted hand improvement with dedicated YOLO models

    3. Hair Refinement: Advanced hair texture and detail enhancement

    4. Final Polish: Comprehensive detail pass with adjustable parameters

    Ultimate SD Upscale Integration

    Professional Upscaling Features:

    • Tile-based Processing: Handles large images without memory issues

    • Seamless Blending: Eliminates tile boundaries through advanced algorithms

    • Multiple Passes: Iterative refinement for maximum quality

    • Configurable Denoise: Balance between detail addition and original preservation

    Setup Instructions

    1. Installation

    # Install ComfyUI Manager cd ComfyUI/custom_nodes git clone https://github.com/ltdrdata/ComfyUI-Manager.git  # Restart ComfyUI and use Manager to install required nodes 

    2. Model Preparation

    Download Required Models:

    • Place SDXL checkpoints in models/checkpoints/

    • Download TIPO-500M from HuggingFace (should be done by the TIPO node)

    • Install detection models via ComfyUI Manager

    • Configure upscaling models in models/upscale_models/

    3. Workflow Loading

    1. Download the provided workflow JSON

    2. Import via ComfyUI interface or drag-and-drop

    3. Install missing nodes when prompted

    4. Configure model paths and preferences

    Usage Guidelines:

    Basic Operation

    1. Set Primary Checkpoint: Choose your main artistic model (IllustriousXL recommended)

    2. Configure Secondary Checkpoint: Select refinement model for high-fix pass

    3. Input Base Prompt: Simple description that TIPO will enhance

    4. Adjust Parameters: Set quality preferences and generation count

    5. Queue Generation: Let automation handle the rest

    Advanced Configuration

    For Maximum Artistic Control:

    • Modify LoRA categories and weights

    • Adjust detailing passes and strengths

    • Configure ControlNet inputs for pose/composition control

    • Fine-tune upscaling parameters for output quality (make sure you can divide the resolution with 64)

    Best Practices

    • Start Simple: Begin with basic settings before adding complexity

    • Test Incrementally: Enable features one at a time to isolate issues

    • Monitor Resources: Watch GPU memory usage during long generations

    • Save Configurations: Use ComfyUI's workflow saving for reproducible results

    Description

    FAQ

    Workflows
    Illustrious

    Details

    Downloads
    319
    Platform
    CivitAI
    Platform Status
    Available
    Created
    6/30/2025
    Updated
    5/13/2026
    Deleted
    -

    Files

    dualCheckpointTIPO_v10.zip

    Mirrors

    CivitAI (1 mirrors)