Black Forest Labs and Together AI are both managed inference APIs for AI image generation. Both let you call an HTTP endpoint and get an image back without managing GPU infrastructure. But the two platforms make different trade-offs in pricing, model availability, cold start performance, and developer experience. This comparison covers what actually matters for engineering teams making this decision in production.
The short version: Black Forest Labs is strongest for teams that need official flux pro or flux dev access with guaranteed model authenticity. Together AI is strongest for high-volume flux schnell workloads where price is the primary constraint. Read on for the specifics that affect whether either is right for your workload.
At a Glance
| Dimension | Black Forest Labs | Together AI |
|---|---|---|
| Type | Official model API | LLM and image inference platform |
| Starting price | $0.04/img (Flux Pro 1.1) | $0.0027/img (Flux Schnell) |
| Cold start | 3-8 seconds typical | 5-15 seconds typical |
| Model catalog | Flux Pro, Flux Dev, Flux Schnell (official) | Flux Schnell, SDXL, select image models (LLM primary) |
| ComfyUI support | Via API nodes in ComfyUI workflows | Not natively supported |
| Free tier | Pay-per-use only, no free tier | Free credits for new accounts |
Black Forest Labs Overview
Black Forest Labs is official flux api - source models, guaranteed fidelity. It is best suited for teams that need official flux pro or flux dev access with guaranteed model authenticity. The platform handles model hosting, GPU provisioning, and scaling transparently - you send a request with your prompt and parameters, get an image URL back. No containers to configure, no GPU instances to manage.
The main technical advantage of Black Forest Labs is 3-8 seconds typical cold start performance. For user-facing features where latency is directly visible, this difference translates to measurable product quality. Pricing is $0.04/img (Flux Pro 1.1), with volume discounts typically available for teams processing high image counts consistently. The platform supports Flux Pro, Flux Dev, Flux Schnell (official), covering most production image generation use cases.
The key limitation to be aware of: limited to flux models only - no sdxl, no other architectures. Teams hitting this constraint may find the alternatives covered below more suitable. Black Forest Labs bills Per image (Flux Pro: $0.04, Flux Schnell: $0.003), which means your cost scales directly with output volume rather than reserved capacity.
Together AI Overview
Together AI is cheapest flux schnell at $0.0027/img, llm+image platform. It is designed for high-volume flux schnell workloads where price is the primary constraint. Like Black Forest Labs, it abstracts GPU infrastructure behind an HTTP API - your application sends a request, receives generated images without any infrastructure overhead.
The main technical characteristic of Together AI is 5-15 seconds typical cold start behavior. Model coverage includes Flux Schnell, SDXL, select image models (LLM primary), which makes it a practical option for teams whose workloads require those specific models. Pricing is $0.0027/img (Flux Schnell), making it cheaper than Black Forest Labs for most standard workloads.
The main limitation: image generation is secondary to their llm focus - less image-specific features. Together AI bills Per image (Flux Schnell: $0.0027/img), so total spend depends on both volume and latency characteristics. The free tier is free credits for new accounts, which is useful for initial integration and testing before committing to production spend.
Pricing at Volume
Both platforms price per image or per second of compute for standard models. At low volume, the difference is small - both are affordable for under 1,000 images per month. At higher volumes, the gap compounds.
| Volume | Black Forest Labs | Together AI | Difference |
|---|---|---|---|
| 1,000 imgs/month | $40.0 | $2.7 | Minimal |
| 10,000 imgs/month | $400.0 | $27.0 | Growing |
| 50,000 imgs/month | $2000.0 | $135.0 | $1865 difference |
At 50,000 images per month, the cost difference between the cheapest Flux Schnell rates on each platform becomes significant for budget planning. Factor in cold start costs too: if your workload includes many uncached requests, platforms charging per second may accumulate cold start overhead that does not appear in per-image pricing comparisons. Use the GPU Cost Calculator at /tools/gpu-cost-calculator to model your specific numbers.
Cold Start Performance
Black Forest Labs achieves 3-8 seconds typical for model cold starts. Together AI typically takes 5-15 seconds typical. For a user-facing product where generation is triggered by a user action, cold start latency determines the visible wait time at the worst case - the first request after a model has been idle.
For batch processing or asynchronous workflows where the user is not waiting in real time, cold start matters less: a 45-second cold start on a batch job is an implementation detail, not a product quality issue. For products where users watch a spinner and wait for results, cold start latency directly affects perceived product quality. See /deploy/gpu-cold-start-benchmarks for measured benchmarks across providers including both.
Model Selection and Pipeline Support
Black Forest Labs supports Flux Pro, Flux Dev, Flux Schnell (official). Together AI offers Flux Schnell, SDXL, select image models (LLM primary). For most standard production use cases - Flux Schnell for speed, Flux Dev or SDXL for quality - both platforms cover the requirements. The catalog difference becomes relevant when you need a specific checkpoint, LoRA, or community-contributed model that is available on one platform but not the other.
ComfyUI support: Black Forest Labs - Via API nodes in ComfyUI workflows. Together AI - Not natively supported. For teams running multi-step pipelines (generate, then upscale, then remove background), ComfyUI compatibility determines whether you can run the full pipeline through one API call or need to chain multiple separate API calls yourself. See /learn/text-to-image-api-guide for an introduction to how inference APIs handle pipelines.
Integration and Developer Experience
Both Black Forest Labs and Together AI provide REST APIs with JSON request/response formats and official SDKs for common languages. Integration typically takes a few hours for a basic implementation. The main differences in developer experience are in documentation quality, error message clarity, async vs synchronous response handling, and webhook support for long-running inference jobs.
Both platforms support asynchronous request patterns - you submit a job, receive a request ID, poll for completion or receive a webhook callback. This is the correct pattern for production inference: synchronous HTTP requests with 10-45 second timeouts are fragile under load. For a detailed walkthrough of production API integration patterns, see /learn/text-to-image-api-guide.
When to Choose Black Forest Labs
Choose Black Forest Labs when: teams that need official flux pro or flux dev access with guaranteed model authenticity. The platform is particularly strong if cold start performance is a product constraint, or if flux pro, flux dev, flux schnell (official) covers your model requirements. If your team is evaluating inference APIs for the first time, Black Forest Labs's developer experience and documentation make it a reasonable starting point before committing to a specific provider.
Budget consideration: at $0.04/img (Flux Pro 1.1), Black Forest Labs is priced at a premium to Together AI for standard Flux Schnell workloads. If volume is high and price per image is the primary constraint, compare against Together AI ($0.0027/img) and the GPU rental break-even calculator at /tools/gpu-cost-calculator before committing.
When to Choose Together AI
Choose Together AI when: high-volume flux schnell workloads where price is the primary constraint. If your specific model requirements, pricing tier, or pipeline architecture align better with what Together AI offers - particularly flux schnell, sdxl, select image models (llm primary) - it is a practical production choice for AI image generation.
The main trade-off compared to Black Forest Labs: image generation is secondary to their llm focus - less image-specific features. Evaluate whether that constraint affects your specific use case before committing. Most teams find the right decision clear once they test both platforms with their actual workload - the pricing and latency differences become concrete when measured against real production traffic rather than benchmark scenarios.
If Neither Fits: Next Steps
If Black Forest Labs and Together AI both fall short of your requirements - whether because of pricing at scale, model availability, or pipeline architecture - there are two directions to consider. For teams that need lower per-image cost at high volume: GPU rental (RunPod, Vast.ai) can reduce per-image cost by 60-80% at sustained load, at the cost of managing GPU infrastructure yourself. For teams that need ComfyUI pipeline management without infrastructure overhead: Runflow runs ComfyUI workflows as managed REST endpoints with warm GPU pools and automated output quality validation. See /compare/comfyui-hosting-comfydeploy-viewcomfy-runflow-diy and /deploy/ai-image-infrastructure-without-kubernetes for both options in detail.
Before switching providers, it is worth testing both Black Forest Labs and Together AI with your actual workload rather than benchmarks alone. Cold start performance varies by model size, concurrency, and time of day. Pricing also differs in practice from list prices: some providers have volume tiers that are not published on the pricing page, and cold start billing can add significantly to per-request costs at low concurrency. Run 1,000 real requests through both platforms - not synthetic benchmarks - before committing to an architecture. The GPU Cost Calculator at /tools/gpu-cost-calculator and the inference cost guide at /learn/ai-inference-cost-explained can help you model total cost from those real measurements.
For a complete picture of all inference API options - not just Black Forest Labs and Together AI - see /compare/fal-ai-alternatives-2026 and /compare/replicate-alternatives-2026-honest-comparison. Both cover pricing, cold starts, and pipeline support across the full provider landscape, including options at lower price points that may fit your workload better than either platform reviewed here.