Model Comparison

Flux 2 Dev Turbo vs Flux 2 Fast

Two speed-focused optimizations of the Flux 2 architecture. Dev Turbo distills the full 12B model for fewer inference steps, while Fast applies aggressive optimization for minimum latency. Similar speed, different quality trade-offs.

Comparison7 min read
Background

Different Paths to Speed

Flux 2 Dev Turbo and Flux 2 Fast both prioritize generation speed, but they achieve it through fundamentally different approaches. Dev Turbo applies turbo distillation to the full 12-billion parameter Flux 2 Dev model, reducing the required inference steps from 28 down to 4-8 while preserving much of the original model's learned representations. Fast takes a different path, applying aggressive optimization techniques that sacrifice some quality for maximum throughput.

The speed difference between them is actually quite small: Dev Turbo generates in approximately 1.5 seconds while Fast achieves roughly 1 second. That 0.5 second gap matters less than you might expect in most applications—both are fast enough for interactive use. The more significant difference lies in output quality. Dev Turbo scores approximately 1159 in ELO rankings, placing it in the upper tier of mid-range models. Fast lacks formal ELO rankings, but in our testing it consistently produces softer details and less precise prompt adherence.

Pricing is close—Fast is only slightly cheaper per image at standard resolutions. At 1 megapixel output, the cost difference is modest, around 17%. For larger images, Fast's flat rate becomes more economical—but the quality gap also becomes more apparent at higher resolutions where fine detail matters more.

One significant capability difference: Dev Turbo supports image-to-image generation, allowing you to use input images for style transfer or editing workflows. Fast is text-to-image only. If your workflow requires image input, Dev Turbo is the only option between these two.

Note: For a modest cost premium (~17% more), Dev Turbo delivers noticeably better quality and supports image-to-image generation. Fast's speed advantage is marginal (0.5 seconds), making Dev Turbo the stronger choice for most speed-focused applications.

Side by Side

Visual Comparison

Compare outputs from both models using identical prompts. Pay attention to detail rendering, texture quality, and overall coherence.

PromptFlux 2 Dev TurboFlux 2 Fast
PortraitDocumentary portrait of a woodworker in their workshop, sawdust in the air, warm afternoon light through dusty windows, weathered hands on tools
Flux 2 Dev Turbo - Portrait
Model: flux-2-dev-turbo
Documentary portrait of a woodworker in their workshop, sawdust in the air, warm afternoon light through dusty windows, weathered hands on tools
Flux 2 Fast - Portrait
Model: flux-2-fast
Documentary portrait of a woodworker in their workshop, sawdust in the air, warm afternoon light through dusty windows, weathered hands on tools
NatureRaindrops on a spider web at dawn, delicate threads catching golden light, shallow depth of field, macro nature photography
Flux 2 Dev Turbo - Nature
Model: flux-2-dev-turbo
Raindrops on a spider web at dawn, delicate threads catching golden light, shallow depth of field, macro nature photography
Flux 2 Fast - Nature
Model: flux-2-fast
Raindrops on a spider web at dawn, delicate threads catching golden light, shallow depth of field, macro nature photography
TextHand-painted wooden sign reading "ANTIQUES" above a shop door, peeling paint, vintage typography, small town main street
Flux 2 Dev Turbo - Text
Model: flux-2-dev-turbo
Hand-painted wooden sign reading "ANTIQUES" above a shop door, peeling paint, vintage typography, small town main street
Flux 2 Fast - Text
Model: flux-2-fast
Hand-painted wooden sign reading "ANTIQUES" above a shop door, peeling paint, vintage typography, small town main street
ProductArtisan chocolate bar on slate surface, broken pieces revealing texture, cocoa powder dusted, premium food photography, warm lighting
Flux 2 Dev Turbo - Product
Model: flux-2-dev-turbo
Artisan chocolate bar on slate surface, broken pieces revealing texture, cocoa powder dusted, premium food photography, warm lighting
Flux 2 Fast - Product
Model: flux-2-fast
Artisan chocolate bar on slate surface, broken pieces revealing texture, cocoa powder dusted, premium food photography, warm lighting
ArchitectureArt deco cinema facade at dusk, neon marquee glowing, geometric patterns, urban street photography, golden hour light
Flux 2 Dev Turbo - Architecture
Model: flux-2-dev-turbo
Art deco cinema facade at dusk, neon marquee glowing, geometric patterns, urban street photography, golden hour light
Flux 2 Fast - Architecture
Model: flux-2-fast
Art deco cinema facade at dusk, neon marquee glowing, geometric patterns, urban street photography, golden hour light

New to ImageGPT?

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Recommendations

When to Use Each Model

Both models prioritize speed, but Dev Turbo offers better quality at a small cost premium.

Flux 2 Dev Turbo

  • Speed-critical applications where quality still matters
  • Image-to-image editing and style transfer workflows
  • Interactive generation requiring fast response
  • Production use where outputs face scrutiny
  • When a small cost premium for quality is acceptable

Flux 2 Fast

  • Maximum throughput batch processing
  • Rapid prototyping and concept exploration
  • Budget-constrained high-volume generation
  • Placeholder images and drafts
  • When absolute minimum latency is required
Deep Dive

Fine Detail and Texture

Examining how each model handles intricate details and surface textures.

Flux 2 Dev Turbo
"Weathered leather boots on rough wooden floorboards, scuffed..."
Flux 2 Dev Turbo result
Model: flux-2-dev-turbo
Weathered leather boots on rough wooden floorboards, scuffed toes, worn laces, visible grain in leather, warm workshop lighting
Flux 2 Fast
"Weathered leather boots on rough wooden floorboards, scuffed..."
Flux 2 Fast result
Model: flux-2-fast
Weathered leather boots on rough wooden floorboards, scuffed toes, worn laces, visible grain in leather, warm workshop lighting

Textured surfaces like worn leather reveal how each model handles fine detail. The grain patterns, scuff marks, and material wear all require precise rendering to appear convincing. This type of subject separates models that simplify textures from those that preserve nuanced detail.

In our testing, Dev Turbo consistently produced more defined leather grain and convincing wear patterns. The surface damage and aging appeared more realistic, with natural variation across the material. Fast tended to smooth over fine texture detail, making surfaces appear more uniform and less lived-in. The difference is subtle at thumbnail sizes but becomes apparent at full resolution.

Tip: For subjects with important surface texture—leather, fabric, natural materials—Dev Turbo's detail preservation makes a visible difference. Fast works better for subjects where overall shape matters more than surface detail.

Deep Dive

Portrait and Skin Rendering

Comparing how each model handles human subjects and facial details.

Flux 2 Dev Turbo
"Portrait of a glassblower pausing from work, face lit by fur..."
Flux 2 Dev Turbo result
Model: flux-2-dev-turbo
Portrait of a glassblower pausing from work, face lit by furnace glow, sweat on brow, protective eyewear pushed up, industrial workshop background
Flux 2 Fast
"Portrait of a glassblower pausing from work, face lit by fur..."
Flux 2 Fast result
Model: flux-2-fast
Portrait of a glassblower pausing from work, face lit by furnace glow, sweat on brow, protective eyewear pushed up, industrial workshop background

Human subjects test a model's ability to render natural skin texture, realistic lighting interaction, and convincing facial features. The dramatic furnace lighting creates challenging conditions where models must balance extreme highlights against deep shadows while maintaining skin detail.

Dev Turbo handled the extreme lighting more convincingly, with natural skin rendering and better detail preservation in shadowed areas. The furnace glow appeared more realistic on skin. Fast produced acceptable portraits but with softer facial features and less natural skin texture. In challenging lighting, Dev Turbo's quality advantage becomes more pronounced.

Note: Portrait quality is one of the clearer differentiators. Dev Turbo's ELO advantage translates to more natural human rendering, particularly in complex lighting scenarios.

Deep Dive

Architectural Detail

Testing how each model handles geometric precision and structural elements.

Flux 2 Dev Turbo
"Victorian greenhouse interior, ornate iron framework, glass ..."
Flux 2 Dev Turbo result
Model: flux-2-dev-turbo
Victorian greenhouse interior, ornate iron framework, glass panels reflecting afternoon sky, tropical plants inside, architectural photography
Flux 2 Fast
"Victorian greenhouse interior, ornate iron framework, glass ..."
Flux 2 Fast result
Model: flux-2-fast
Victorian greenhouse interior, ornate iron framework, glass panels reflecting afternoon sky, tropical plants inside, architectural photography

Architectural subjects with complex geometric frameworks test a model's ability to maintain structural coherence. The repeating iron patterns, glass reflections, and interior plants create multiple layers of detail that must remain consistent throughout the image.

Dev Turbo produced cleaner structural lines and more consistent geometric patterns. The iron framework appeared more precisely rendered with better perspective coherence. Fast occasionally introduced irregularities in repeating patterns and less crisp structural edges. For architectural subjects requiring clean geometry, Dev Turbo delivers more reliable results.

Deep Dive

Text Rendering Comparison

Testing each model's ability to render legible text in images.

Flux 2 Dev Turbo
"Weathered wooden road sign at crossroads reading "MAPLE RIDG..."
Flux 2 Dev Turbo result
Model: flux-2-dev-turbo
Weathered wooden road sign at crossroads reading "MAPLE RIDGE 5 MILES", rural country setting, afternoon sun, faded paint, rustic Americana
Flux 2 Fast
"Weathered wooden road sign at crossroads reading "MAPLE RIDG..."
Flux 2 Fast result
Model: flux-2-fast
Weathered wooden road sign at crossroads reading "MAPLE RIDGE 5 MILES", rural country setting, afternoon sun, faded paint, rustic Americana

Text rendering remains challenging for most image generation models. Neither Dev Turbo nor Fast specializes in typography, but their different optimization approaches produce noticeably different results when text appears in prompts.

Dev Turbo produced more legible text with fewer character errors, though still not perfect. The letterforms appeared more consistent, and words were more likely to be readable. Fast frequently introduced spelling errors, malformed letters, or completely illegible words. For any prompt containing text, Dev Turbo is the more reliable choice—though neither matches dedicated text models like Ideogram V3.

Note: For images requiring accurate, legible text, consider ImageGPT's text routes which use models specifically optimized for typography. Both Dev Turbo and Fast are text-to-image models without text specialization.

Deep Dive

Cost and Speed Economics

Understanding the practical trade-offs for high-volume generation.

Dev Turbo (~1.5s)
"Fresh baked sourdough loaf on cooling rack, steam rising, go..."
Dev Turbo (~1.5s) result
Model: flux-2-dev-turbo
Fresh baked sourdough loaf on cooling rack, steam rising, golden crust with scoring pattern, bakery morning light
Fast (~1s, slightly cheaper)
"Fresh baked sourdough loaf on cooling rack, steam rising, go..."
Fast (~1s, slightly cheaper) result
Model: flux-2-fast
Fresh baked sourdough loaf on cooling rack, steam rising, golden crust with scoring pattern, bakery morning light

At 1 megapixel, the cost difference is roughly 17% more for Dev Turbo. The time difference is also modest: approximately 4.2 hours for Dev Turbo versus 2.8 hours for Fast per 10,000 images. In high-volume scenarios, the cost and time gaps compound—but so does the quality difference.

The economics question is whether Dev Turbo's quality advantage justifies the ~17% cost premium and 1.4 extra hours per 10,000 images. For most production use cases, the answer is yes—the quality difference is visible, and the cost premium is modest. Fast makes sense only for extremely high-volume scenarios where you're generating hundreds of thousands of images and quality requirements are genuinely relaxed.

Tip: For most speed-focused applications, Dev Turbo's modest cost premium delivers substantially better quality. Reserve Fast for scenarios where you need maximum possible throughput and can accept visible quality trade-offs.

Specifications

Feature Comparison

Technical specifications and capabilities for both models.

FeatureFlux 2 Dev TurboFlux 2 Fast
DeveloperPrunaAI (from BFL base)PrunaAI
ArchitectureFLUX.2 Dev (turbo-distilled)FLUX.2 (speed-optimized)
Parameters12B (distilled)Optimized
Image qualityVery GoodGood
Fine detailsGoodModerate
Generation speed~1.5s~1s
Cost per image (1MP)SimilarSlightly cheaper
Inference steps4-8 stepsOptimized
Text renderingModerateBasic
Prompt adherenceVery GoodGood
Image-to-image
ELO score~1159N/A
Try It Yourself

Try Flux 2 Dev Turbo

Try Flux 2 Dev Turbo with your own prompts. Generate images and compare the results. Dev Turbo appears in fast quality routes alongside Fast.

Generated visual
https://demo.imagegpt.host/image?prompt=A+vintage+camera+on+a+leather+desk+pad%2C+brass+details+catching+soft+window+light%2C+film+canisters+scattered+nearby%2C+nostalgic+photography+studio&model=flux-2-dev-turbo

Frequently Asked Questions

Speed optimized.
Quality preserved.