Juggernaut Base Flux

Juggernaut Base Flux is a finetuned Flux Dev compatible model for high fidelity image generation. It improves detail and contrast while keeping LoRA and LoCON workflows intact. Use it as a drop in upgrade in existing pipelines that target Flux Dev style text to image generation.

Complete technical specification for integration
Ready-to-use code snippets for common workflows
API Options
Platform-level options for task execution and delivery.
taskType
stringrequiredvalue: imageInferenceIdentifier for the type of task being performed
taskUUID
stringrequiredUUID v4UUID v4 identifier for tracking tasks and matching async responses. Must be unique per task.
outputType
stringdefault: URLImage output type.
Allowed values3 values
outputFormat
stringdefault: JPGSpecifies the file format of the generated output. The available values depend on the task type and the specific model's capabilities.
- `JPG`: Best for photorealistic images with smaller file sizes (no transparency).
- `PNG`: Lossless compression, supports high quality and transparency (alpha channel).
- `WEBP`: Modern format providing superior compression and transparency support.
**Transparency**: If you are using features like background removal or LayerDiffuse that require transparency, you must select a format that supports an alpha channel (e.g., `PNG`, `WEBP`, `TIFF`). `JPG` does not support transparency.Allowed values3 values
outputQuality
integermin: 20max: 99default: 95Compression quality of the output. Higher values preserve quality but increase file size.
webhookURL
stringURISpecifies a webhook URL where JSON responses will be sent via HTTP POST when generation tasks complete. For batch requests with multiple results, each completed item triggers a separate webhook call as it becomes available.
Learn more1 resource
- WebhooksPLATFORM
- Webhooks
deliveryMethod
stringdefault: syncDetermines how the API delivers task results.
Allowed values2 values
- Returns complete results directly in the API response.
- Returns an immediate acknowledgment with the task UUID. Poll for results using getResponse.
Learn more1 resource
- Task PollingPLATFORM
uploadEndpoint
stringURISpecifies a URL where the generated content will be automatically uploaded using the HTTP PUT method. The raw binary data of the media file is sent directly as the request body. For secure uploads to cloud storage, use presigned URLs that include temporary authentication credentials.
Common use cases:
- Cloud storage: Upload directly to S3 buckets, Google Cloud Storage, or Azure Blob Storage using presigned URLs.
- CDN integration: Upload to content delivery networks for immediate distribution.
// S3 presigned URL for secure upload https://your-bucket.s3.amazonaws.com/generated/content.mp4?X-Amz-Signature=abc123&X-Amz-Expires=3600 // Google Cloud Storage presigned URL https://storage.googleapis.com/your-bucket/content.jpg?X-Goog-Signature=xyz789 // Custom storage endpoint https://storage.example.com/uploads/generated-image.jpgThe content data will be sent as the request body to the specified URL when generation is complete.
safety
objectContent safety checking configuration for image generation.
Properties1 property
safety»checkContentcheckContent
booleandefault: falseEnable or disable content safety checking.
ttl
integermin: 60Time-to-live (TTL) in seconds for generated content. Only applies when
outputTypeisURL.
includeCost
booleandefault: falseInclude task cost in the response.
numberResults
integermin: 1max: 20default: 1Number of results to generate. Each result uses a different seed, producing variations of the same parameters.
acceleratorOptions
objectAdvanced caching mechanisms to speed up generation.
Properties10 properties
acceleratorOptions»cacheEndStepcacheEndStep
integermin: 1Absolute step number to end caching. Must be greater than
cacheStartStepand less than or equal tosteps.
acceleratorOptions»cacheEndStepPercentagecacheEndStepPercentage
integermin: 1max: 100Percentage of steps to end caching. Alternative to
cacheEndStep. Must be greater thancacheStartStepPercentage.
acceleratorOptions»cacheMaxConsecutiveStepscacheMaxConsecutiveSteps
integermin: 1max: 5default: 3Limits the maximum number of consecutive steps that can use cached computations before forcing a fresh computation.
acceleratorOptions»cacheStartStepcacheStartStep
integermin: 0Absolute step number to start caching. Must be less than
cacheEndStep.
acceleratorOptions»cacheStartStepPercentagecacheStartStepPercentage
integermin: 0max: 99Percentage of steps to start caching. Alternative to
cacheStartStep. Must be less thancacheEndStepPercentage.
acceleratorOptions»teaCacheteaCache
booleandefault: falseTeaCache acceleration for transformer-based models. Estimates step differences to skip redundant computations.
acceleratorOptions»teaCacheDistanceteaCacheDistance
floatmin: 0max: 1step: 0.01default: 0.5Controls the aggressiveness of the TeaCache feature. Lower values prioritize quality, higher values prioritize speed.
acceleratorOptions»dbCachedbCache
booleandefault: falseDB Cache (CacheDiT) acceleration. Caches and reuses intermediate transformer block outputs to skip redundant computations.
acceleratorOptions»dbCacheThresholddbCacheThreshold
floatmin: 0max: 1step: 0.01default: 0.25Controls the sensitivity threshold for DB Cache. Lower values reuse cached blocks more aggressively, higher values prioritize quality.
acceleratorOptions»dbCacheSkipIntervaldbCacheSkipInterval
integermin: 1default: 5Controls how many steps to skip between cache refreshes. Higher values skip more steps for faster generation at the cost of quality.
Inputs
Input resources for the task (images, audio, etc). These must be nested inside the inputs object.
inputs object.Core Parameters
Primary parameters that define the task output.
model
stringrequiredvalue: rundiffusion:120@100Identifier of the model to use for generation.
Learn more3 resources
positivePrompt
stringrequiredmin: 2max: 3000Text prompt describing elements to include in the generated output.
Learn more1 resource
- PromptsLEARN
- Prompts
negativePrompt
stringmin: 2max: 3000Prompt to guide what to exclude from generation. Ignored when guidance is disabled (CFGScale ≤ 1).
Learn more1 resource
width
integerrequiredmin: 128max: 2048step: 64Width of the generated media in pixels.
Learn more2 resources
height
integerrequiredmin: 128max: 2048step: 64Height of the generated media in pixels.
Learn more2 resources
seed
integermin: 0max: 9223372036854776000Random seed for reproducible generation. When not provided, a random seed is generated in the unsigned 32-bit range.
Learn more1 resource
- SeedLEARN
- Seed
steps
integermin: 1max: 50Total number of denoising steps. Higher values generally produce more detailed results but take longer.
Learn more1 resource
- StepsLEARN
- Steps
scheduler
stringScheduler to use for the diffusion process.
Allowed values75 values
Learn more2 resources
CFGScale
floatmin: 0max: 20step: 0.01Guidance scale representing how closely the output will resemble the prompt. Higher values produce results more aligned with the prompt.
Learn more1 resource
- Cfg ScaleLEARN
- Cfg Scale
strength
floatmin: 0max: 1step: 0.01default: 0.8Strength of the transformation. Lower values result in more influence from the original input.
maskMargin
integermin: 32max: 128Extra context pixels around the masked region during inpainting. The model zooms into the masked area with these additional pixels for better integration.
Learn more1 resource
promptWeighting
stringDefines the syntax to be used for prompt weighting.
Prompt weighting allows you to adjust how strongly different parts of your prompt influence the generated image. Choose between
compelnotation with advanced weighting operations orsdEmbedsfor simple emphasis adjustments.View Compel syntax
Adds 0.2 seconds to image inference time and incurs additional costs.
When
compelsyntax is selected, you can use the following notation in prompts:Weighting
Syntax:
+-(word)0.9Increase or decrease the attention given to specific words or phrases.
Examples:
- Single words:
small+ dog, pixar style - Multiple words:
small dog, (pixar style)- - Multiple symbols for more effect:
small+++ dog, pixar style - Nested weighting:
(small+ dog)++, pixar style - Explicit weight percentage:
small dog, (pixar)1.2 style
Blend
Syntax:
.blend()Merge multiple conditioning prompts.
Example:
("small dog", "robot").blend(1, 0.8)Conjunction
Syntax:
.and()Break a prompt into multiple clauses and pass them separately.
Example:
("small dog", "pixar style").and()View sdEmbeds syntax
When
sdEmbedssyntax is selected, you can use the following notation in prompts:Weighting
Syntax:
(text)(text:number)[text]Use parentheses
()to increase attention, square brackets[]to decrease it. Add a number after the text to specify a custom multiplier.Examples:
- Single words:
(small) dog, pixar style - Multiple words:
small dog, [pixar style] - Higher emphasis:
(small:2.5) dog, pixar style - Combined emphasis:
(small dog:1.5), pixar style
Allowed values1 value
Learn more1 resource
- Single words:
outpaint
objectPixel extensions for each boundary direction of the source image. At least one direction is required.
Learn more1 resource
Properties4 properties
lora
array of objectsmin items: 1With LoRA (Low-Rank Adaptation), you can adapt a model to specific styles or features by emphasizing particular aspects of the data. This technique enhances the quality and relevance of generated content and can be especially useful when the output needs to adhere to a specific artistic style or follow particular guidelines.
Multiple LoRA models can be used simultaneously to achieve different adaptation goals.
Examples1 example
"lora": [ { "model": "<lora-model-air>", "weight": 0.8 } ]Learn more1 resource
- LorasLEARN
Properties3 properties
lora»modelmodel
stringrequiredLoRA model identifier.
lora»weightweight
floatmin: -4max: 4step: 0.01default: 1Strength of the LoRA influence. A value of 0 means no influence. Higher values increase the influence, and negative values can be used to steer away from the LoRA's style.
lora»transformertransformer
stringdefault: bothTransformer stages to apply LoRA. Some video models use separate high-noise and low-noise processing stages, and LoRAs can be selectively applied to optimize their effectiveness.
Allowed values3 values
- Apply LoRA only to the high-noise processing stage (coarse structure and early generation steps).
- Apply LoRA only to the low-noise processing stage (fine details and later generation steps).
- Apply LoRA to both stages for full coverage.
- Loras
controlNet
array of objectsmin items: 1With ControlNet, you can provide a guide image to help the model generate images that align with the desired structure. This guide image can be generated with our ControlNet preprocessing tool, extracting guidance information from an input image. The guide image can be in the form of an edge map, a pose, a depth estimation or any other type of control image that guides the generation process via the ControlNet model.
Multiple ControlNet models can be used at the same time to provide different types of guidance information to the model.
Examples1 example
"controlNet": [ { "model": "<controlnet-model-air>", "guideImage": "c64351d5-4c59-42f7-95e1-eace013eddab", "weight": 0.7, "startStep": 0, "endStep": 20, "controlMode": "controlnet" } ]Learn more2 resources
Properties8 properties
controlNet»modelmodel
stringrequiredControlNet model identifier.
controlNet»weightweight
floatmin: -4max: 4step: 0.01default: 1Strength of the ControlNet influence. A value of 0 means no influence. Higher values increase the influence, and negative values can be used to steer away from the guide image.
controlNet»guideImageguideImage
stringrequiredReference image for ControlNet guidance (UUID, URL, Data URI, or Base64).
controlNet»controlModecontrolMode
stringdefault: balancedControlNet guidance mode.
Allowed values3 values
- Equal weight between ControlNet and prompt.
- Prioritize ControlNet guidance.
- Prioritize prompt guidance.
controlNet»endStependStep
integermin: 1Absolute step number to end ControlNet influence. Must be greater than
startStepand less than or equal tosteps.
controlNet»endStepPercentageendStepPercentage
integermin: 1max: 100Percentage of steps to end ControlNet influence. Must be greater than
startStepPercentage.
controlNet»startStepstartStep
integermin: 0Absolute step number to start ControlNet influence. Must be less than
endStep.
controlNet»startStepPercentagestartStepPercentage
integermin: 0max: 99Percentage of steps to start ControlNet influence. Must be less than
endStepPercentage.
ipAdapters
array of objectsmin items: 1IP-Adapters enable image-prompted generation, allowing you to use reference images to guide the style and content of your generations. Multiple IP Adapters can be used simultaneously.
Examples1 example
"ipAdapters": [ { "model": "<ip-adapter-model-air>", "guideImages": ["c64351d5-4c59-42f7-95e1-eace013eddab"], "weight": 0.75 }, { "model": "<ip-adapter-model-air>", "guideImages": ["d7e8f9a0-2b5c-4e7f-a1d3-9c8b7a6e5d4f"], "weight": 0.5 } ]Learn more1 resource
- Ip AdaptersLEARN
Properties3 properties
ipAdapters»modelmodel
stringrequiredWe make use of the AIR system to identify IP-Adapter models. This identifier is a unique string that represents a specific model.
Supported models list
AIR ID Model Name runware:55@1 IP Adapter SDXL runware:55@2 IP Adapter SDXL Plus runware:55@3 IP Adapter SDXL Plus Face runware:55@4 IP Adapter SDXL Vit-H runware:55@5 IP Adapter SD 1.5 runware:55@6 IP Adapter SD 1.5 Plus runware:55@7 IP Adapter SD 1.5 Light runware:55@8 IP Adapter SD 1.5 Plus Face runware:55@10 IP Adapter SD 1.5 Vit-G
ipAdapters»weightweight
floatmin: -4max: 4step: 0.01default: 1Strength of the IP-Adapter influence. A value of 0 means no influence. Higher values increase the influence, and negative values can be used to steer away from the reference.
ipAdapters»guideImagesguideImages
array of stringsrequiredmin items: 1Images to guide the IP-Adapter (UUID, URL, Data URI, or Base64).
- Ip Adapters
trueCFGScale
floatTrue Classifier-Free Guidance scale. Higher values increase prompt adherence at the cost of quality.
Features
Standalone addons and post-processing features.
ultralytics
objectConfiguration object for Ultralytics face enhancement during generation. This feature uses face detection and inpainting to improve facial details in the same generation step, without requiring post-processing.
Face enhancement is available for Stable Diffusion 1.X, SDXL, and FLUX models. The system automatically detects faces and applies targeted refinement to improve quality while maintaining consistency with the overall generation.
Properties9 properties
ultralytics»CFGScaleCFGScale
floatmin: 0max: 50step: 0.1default: 8Face refinement guidance scale.
ultralytics»confidenceconfidence
floatmin: 0max: 1step: 0.01default: 0.9Confidence threshold for detection.
ultralytics»inpaintSizeinpaintSize
integermin: 128max: 2048default: 1024Image size (in pixels) to use for each inpainting region. YOLO detects faces, crops the region, and scales it to this size before running diffusion. Set so most faces land in the 2–4× range of their original pixel size. Going beyond 8× may degrade identity resemblance.
ultralytics»maskBlurmaskBlur
integermin: 0max: 100default: 5Mask feathering amount. Higher values create softer transitions between the enhanced face region and surrounding areas.
ultralytics»maskPaddingmaskPadding
integermin: 0max: 20default: 5Padding around detected face in pixels. Expands the refinement area to include surrounding context like hair and neck.
ultralytics»negativePromptnegativePrompt
stringNegative prompt for detection.
ultralytics»positivePromptpositivePrompt
stringPositive prompt for detection.
ultralytics»stepssteps
integermin: 1max: 100default: 20Number of face refinement steps.
ultralytics»strengthstrength
floatmax: 1step: 0.01default: 0.3Refinement strength. Lower values preserve more of the original, higher values allow more aggressive reconstruction.
hiresFix
boolean | objectTwo-stage generation for improved resolution and detail. The model generates at a lower resolution first, then upscales and refines the result in a second pass. Can be enabled with
truefor default settings, or configured as an object for fine-grained control over the upscaling model, steps, and strength.When using the object form, the
modelparameter is required. Available upscaling models:Model Name Upscale Factor runware:504@1RealESRGAN_x4plus 4x runware:realesrgan@anime-6bRealESRGAN_x4plus_anime_6B 4x runware:esrgan@animesharp4x-AnimeSharp 4x runware:esrgan@ultrasharp4x-UltraSharp 4x "hiresFix": true"hiresFix": { "model": "runware:esrgan@ultrasharp", "steps": 15, "strength": 0.6 }Allowed values1 value
layerDiffuse
booleandefault: falseEnables LayerDiffuse technology, which allows for the direct generation of images with transparency (alpha channels).
When enabled, this feature applies the necessary LwwwwwwoRA and VAE components to produce high-quality transparent images without requiring post-processing background removal.
This is particularly useful for creating product images, overlays, composites, and other content that requires transparency. The output must be in a format that supports transparency, such as PNG.
Note: This feature is only available for the FLUX model architecture. It automatically applies the equivalent of:
"lora": [{ "model": "runware:120@2" }], "vae": "runware:120@4"Examples1 example
"outputFormat": "png", "advancedFeatures": { "layerDiffuse": true }Learn more1 resource
pulid
objectPuLID (Pure and Lightning ID Customization) enables fast and high-quality identity customization for text-to-image generation. This object allows you to configure settings for transferring facial characteristics from a reference image to generated images with high fidelity.
CFGstartStepandCFGstartStepPercentageare mutually exclusive, they both control when CFG guidance begins, but as an absolute step number or a percentage respectively. Use one or the other, not both.Examples1 example
"puLID": { "images": ["59a2edc2-45e6-429f-be5f-7ded59b92046"], "idWeight": 1, "trueCFGScale": 1.5, "CFGStartStep": 3 }Properties5 properties
pulid»CFGstartStepCFGstartStep
integermin: 0Absolute step number to start identity influence. Must be less than
steps.
pulid»CFGstartStepPercentageCFGstartStepPercentage
integermin: 0max: 99Percentage of steps to start identity influence.
pulid»idWeightidWeight
floatmin: 0max: 3step: 0.01default: 1Identity preservation strength. Higher values create closer resemblance to the reference face.
pulid»imagesimages
array of stringsrequireditems: 1Reference images for identity customization (UUID, URL, Data URI, or Base64).
pulid»trueCFGScaletrueCFGScale
floatmin: 0max: 10step: 0.1Guidance scale for identity embedding.