# FLUX.2 [pro] > Generate production-grade images from a text prompt with maximum fidelity and top prompt adherence, no tuning knobs required. ## Overview - **Endpoint**: `https://queue.modelrunner.run/black-forest-labs/flux-2/pro` - **Model ID**: `black-forest-labs/flux-2/pro` - **Category**: text-to-image - **Kind**: inference - **Tags**: flux, flux-2, black-forest-labs, text-to-image, image-generation, pro ## Pricing - **up to 1 megapixels**: $0.03 - **up to 2 megapixels**: $0.045 - **up to 3 megapixels**: $0.06 - **up to 4 megapixels**: $0.075 - **up to 5 megapixels**: $0.09 ## Request Lifecycle This model runs on the ModelRunner **asynchronous queue API** — a single POST does not return the output. Every call requires an `Authorization: Key $MODEL_RUNNER_KEY` header. Run three steps: 1. **Submit** — `POST https://queue.modelrunner.run/black-forest-labs/flux-2/pro` with a JSON body. The response carries request handles only (no output yet): ```json { "status": "IN_QUEUE", "request_id": "<21-char id>", "status_url": "https://queue.modelrunner.run/black-forest-labs/flux-2/pro/requests//status", "response_url": "https://queue.modelrunner.run/black-forest-labs/flux-2/pro/requests/", "cancel_url": "https://queue.modelrunner.run/black-forest-labs/flux-2/pro/requests//cancel" } ``` 2. **Poll status** — `GET ` until `status` is `COMPLETED`. Possible values are `IN_QUEUE`, `IN_PROGRESS`, `COMPLETED`, `FAILED`, `CANCELLED`. A `FAILED` request responds with HTTP 400 and an `error` field. 3. **Read result** — `GET `. Returns the finished request, including the generated `output`: ```json { "id": "", "status": "COMPLETED", "output": ..., "input": ... } ``` The JavaScript and Python SDKs below perform steps 2–3 for you. In any language without an SDK (Swift, Go, Kotlin, etc.) you must implement the polling loop and the final result fetch yourself — see the cURL example for the full flow. ### Input Schema - **`seed`** (`integer | null`, _optional_): The same seed and the same prompt given to the same version of the model will output the same image every time. - **`prompt`** (`string`, _required_): The text prompt describing the image to generate. - **`image_size`** (`ImageSize | ImageSizeEnum`, _optional_): The size of the generated image. Use a preset string (e.g. 'landscape_16_9') or a custom {width, height} object. - Default: `"landscape_4_3"` - Options: `"square_hd"`, `"square"`, `"portrait_4_3"`, `"portrait_16_9"`, `"landscape_4_3"`, `"landscape_16_9"` - **`output_format`** (`OutputFormatEnum`, _optional_): The format of the generated image. - Default: `"jpeg"` - Options: `"jpeg"`, `"png"` - **`safety_tolerance`** (`SafetyToleranceEnum`, _optional_): The safety tolerance level for the generated image. 1 being the most strict and 5 being the most permissive. - Default: `"2"` - Options: `"1"`, `"2"`, `"3"`, `"4"`, `"5"` - **`enable_safety_checker`** (`boolean`, _optional_): If set to true, the safety checker will be enabled. - Default: `true` ### Output Schema _No `Output` schema properties are available._ ## Default Example **Input** ```json { "prompt": "A photorealistic close-up of a hummingbird hovering beside a dewy red hibiscus flower at dawn, iridescent feathers catching the light, soft green bokeh background", "image_size": "landscape_4_3", "output_format": "jpeg", "safety_tolerance": "2", "enable_safety_checker": true } ``` **Output** ```json [ "https://media.modelrunner.ai/1eNEGUAjnIIjXQb2aY94s.jpeg" ] ``` ## Usage Examples ### cURL The queue API is asynchronous: submit the request, poll `status_url` until it is `COMPLETED`, then read the result from `response_url`. Requires `jq`. ```bash # 1. Submit the request (returns request handles, not the output) SUBMIT=$(curl --silent --request POST \ --url https://queue.modelrunner.run/black-forest-labs/flux-2/pro \ --header "Authorization: Key $MODEL_RUNNER_KEY" \ --header "Content-Type: application/json" \ --data '{ "prompt": "A photorealistic close-up of a hummingbird hovering beside a dewy red hibiscus flower at dawn, iridescent feathers catching the light, soft green bokeh background", "image_size": "landscape_4_3", "output_format": "jpeg", "safety_tolerance": "2", "enable_safety_checker": true }') STATUS_URL=$(echo "$SUBMIT" | jq -r '.status_url') RESPONSE_URL=$(echo "$SUBMIT" | jq -r '.response_url') # 2. Poll until the request leaves the queue / in-progress state while true; do STATUS=$(curl --silent --url "$STATUS_URL" \ --header "Authorization: Key $MODEL_RUNNER_KEY" | jq -r '.status') echo "Status: $STATUS" case "$STATUS" in COMPLETED) break ;; FAILED|CANCELLED) echo "Request $STATUS"; exit 1 ;; esac sleep 1 done # 3. Read the finished request, including the generated output curl --silent --url "$RESPONSE_URL" \ --header "Authorization: Key $MODEL_RUNNER_KEY" ``` ### JavaScript ```javascript import { modelrunner } from "@modelrunner/client"; const result = await modelrunner.subscribe("black-forest-labs/flux-2/pro", { input: { "prompt": "A photorealistic close-up of a hummingbird hovering beside a dewy red hibiscus flower at dawn, iridescent feathers catching the light, soft green bokeh background", "image_size": "landscape_4_3", "output_format": "jpeg", "safety_tolerance": "2", "enable_safety_checker": true } }); console.log(result.data); ``` ### Python ```python import asyncio import modelrunner_ai async def main(): response = await modelrunner_ai.submit_async( "black-forest-labs/flux-2/pro", arguments={ "prompt": "A photorealistic close-up of a hummingbird hovering beside a dewy red hibiscus flower at dawn, iridescent feathers catching the light, soft green bokeh background", "image_size": "landscape_4_3", "output_format": "jpeg", "safety_tolerance": "2", "enable_safety_checker": true } ) result = await response.get() print(result["output"]) asyncio.run(main()) ``` ## Additional Resources - [Playground](https://modelrunner.ai/models/black-forest-labs/flux-2/pro) - [OpenAPI Schema](https://modelrunner.ai/models/black-forest-labs/flux-2/pro/openapi.json) - [LLM Instructions](https://modelrunner.ai/models/black-forest-labs/flux-2/pro/llms.txt)