Qwen-Image-2512 LoRA Trainer lets you train custom LoRA models 10x faster with style, character, and object training. From concept to model in minutes, not hours—upload a ZIP file containing images to start. Ready-to-use REST inference API, best performance, no cold starts, affordable pricing.
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$1ต่อครั้ง
Qwen Image 2512 LoRA Trainer is a high-performance custom model training service for the Qwen Image 2512 text-to-image generation model. It allows you to train lightweight LoRA (Low-Rank Adaptation) adapters for personalized styles, characters, and concepts — with exceptional bilingual text rendering preserved throughout.
The trainer is designed around Qwen Image's 20B MMDiT architecture and produces specialized LoRA adapters optimized for the model's unique capabilities:
Base LoRA adapter Trains on the core Qwen Image representation to capture your target style, character, or object, while keeping the base model frozen and stable.
Text-rendering preservation The training process is optimized to maintain Qwen Image's superior Chinese and English text rendering capabilities even after fine-tuning.
Bilingual prompt compatibility Trained LoRAs work seamlessly with both Chinese and English prompts, preserving the model's multilingual strengths.
This architecture ensures that your LoRA:
Data Upload Prepare and upload a ZIP file containing your training images. Include 10-20 high-quality images for best results.
Configure Trigger Word Set a unique trigger word (e.g., "p3r5on") that will activate your trained style or character in prompts.
Adjust Training Parameters
| Parameter | Default | Description |
|---|---|---|
| data | — | ZIP file containing training images (required) |
| trigger_word | — | Unique word to activate your trained concept |
| steps | 1000 | Total training iterations |
| learning_rate | 0.0004 | Training speed (lower = more stable, higher = faster) |
| lora_rank | 16 | Adapter capacity (higher = more detail, larger file) |
| Training Steps | Price (USD) |
|---|---|
| 1,000 | $1.00 |
| 2,000 | $2.00 |
| 5,000 | $5.00 |
| 10,000 | $10.00 |
Z-Image LoRA Trainer — High-performance LoRA trainer for Z-Image models with Turbo-compatible optimization.
Wan 2.2 Image LoRA Trainer — LoRA trainer for the Wan 2.2 image model, ideal for custom styles that integrate into the Wan video/image ecosystem.
Flux Dev LoRA Trainer — LoRA trainer tailored for the Flux Dev model, focusing on high-fidelity creative visuals.
Grab a WaveSpeedAI API key, then call POST https://api.wavespeed.ai/api/v3/wavespeed-ai/qwen-image-2512-lora-trainer with your input as JSON. The endpoint returns a prediction id; poll the prediction endpoint until status flips to completed, then read the output URL from data.outputs[0]. Examples for Qwen Image 2512 Lora Trainer below.
# Submit the prediction
curl -X POST "https://api.wavespeed.ai/api/v3/wavespeed-ai/qwen-image-2512-lora-trainer" \
-H "Content-Type: application/json" \
-H "Authorization: Bearer $WAVESPEED_API_KEY" \
-d '{
"trigger_word": "p3r5on",
"steps": 1000,
"learning_rate": 0.0004,
"lora_rank": 16
}'
# Response includes a prediction id. Poll for the result:
curl -X GET "https://api.wavespeed.ai/api/v3/predictions/{request_id}/result" \
-H "Authorization: Bearer $WAVESPEED_API_KEY"
# When status is "completed", read the output from data.outputs[0].// npm install wavespeed
const WaveSpeed = require('wavespeed');
const client = new WaveSpeed(); // reads WAVESPEED_API_KEY from env
const result = await client.run("wavespeed-ai/qwen-image-2512-lora-trainer", {
"trigger_word": "p3r5on",
"steps": 1000,
"learning_rate": 0.0004,
"lora_rank": 16
});
console.log(result.outputs[0]); // → URL of the generated output# pip install wavespeed
import wavespeed
output = wavespeed.run(
"wavespeed-ai/qwen-image-2512-lora-trainer",
{
"trigger_word": "p3r5on",
"steps": 1000,
"learning_rate": 0.0004,
"lora_rank": 16
}
)
print(output["outputs"][0]) # → URL of the generated outputQwen Image 2512 Lora Trainer is a WaveSpeedAI model for AI inference, exposed as a REST API on WaveSpeedAI. Qwen-Image-2512 LoRA Trainer lets you train custom LoRA models 10x faster with style, character, and object training. From concept to model in minutes, not hours—upload a ZIP file containing images to start. Ready-to-use REST inference API, best performance, no cold starts, affordable pricing. You can call it programmatically or try it from the playground above.
POST your input parameters to the model's REST endpoint (shown in the API tab of this playground) with your WaveSpeedAI API key in the Authorization header. Submission returns a prediction ID; poll the prediction endpoint until status flips to "completed", then read the output URL from the result. The playground generates a ready-to-paste code sample in Python, JavaScript, or cURL for whatever inputs you've set. Full request/response shape is documented at https://wavespeed.ai/docs/docs-api/wavespeed-ai/qwen-image-2512-lora-trainer.
Qwen Image 2512 Lora Trainer starts at $1.00 per run. That figure is the base price — the final charge scales with the parameters you set in the form (output size, length, count, references, or whatever knobs this model exposes), so a higher-quality or larger output costs more than a minimal one. The exact cost for your current input is shown live next to the Generate button before you submit, and the actual per-call charge is recorded on the prediction afterwards.
Key inputs: `data`, `learning_rate`, `lora_rank`, `steps`, `trigger_word`. The full JSON schema (types, defaults, allowed values) is rendered above the Generate button and mirrored in the API reference at https://wavespeed.ai/docs/docs-api/wavespeed-ai/qwen-image-2512-lora-trainer.
Average end-to-end generation time on WaveSpeedAI is around 1051 seconds per request — measured across recent runs. Queue time scales with global demand; live status is visible in the prediction record.
Commercial usage rights depend on the model's license, set by its provider (WaveSpeedAI). The license summary appears on the model card above; see WaveSpeedAI's Terms of Service for platform-level conditions.