
Architecture Tuned Model
by ModelsLabdvArch is a custom trained model that uses three separate trigger words:
dvArchModern
dvArchGothic
dvArchVictorian
Each of the trigger words will create buildings in that style of architecture. You can also use the three trigger words together to generate whole cities in a mix of buildings in those styles.
dvArchInterior is a custom trained model that uses three separate trigger words:
dvArchInteriorModern
dvArchInteriorGothic
dvArchInteriorVictorian
Each of the trigger words will create interior rooms in that style of building. Use "bedroom" "living room" "bathroom" etc to specify type of room.
architecture-tuned-modelInput
Per image generation will cost 0.0047$
For premium plan image generation will cost 0.00$ i.e Free.
Output
Unknown content type
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About Architecture Tuned Model
dvArch is a custom trained model that uses three separate trigger words: dvArchModern dvArchGothic dvArchVictorian Each of the trigger words will create buildings in that style of architecture. You can also use the three trigger words together to generate whole cities in a mix of buildings in those styles. dvArchInterior is a custom trained model that uses three separate trigger words: dvArchInteriorModern dvArchInteriorGothic dvArchInteriorVictorian Each of the trigger words will creat
Technical Specifications
- Model ID
- architecture-tuned-model
- Provider
- Modelslab
- Task
- AI Generation
- Price
- $0.0047 per API call
Quick Start
Integrate Architecture Tuned Model into your application with a single API call. Get your API key from the pricing page to get started.
import requestsimport jsonurl = "https://modelslab.com/api/v6/images/text2img"headers = {"Content-Type": "application/json"}data = {"model_id": "architecture-tuned-model","prompt": "your prompt here","key": "YOUR_API_KEY"}try:response = requests.post(url, headers=headers, json=data)response.raise_for_status() # Raises an HTTPError for bad responses (4XX or 5XX)result = response.json()print("API Response:")print(json.dumps(result, indent=2))except requests.exceptions.HTTPError as http_err:print(f"HTTP error occurred: {http_err} - {response.text}")except Exception as err:print(f"Other error occurred: {err}")
Pricing
Architecture Tuned Model API costs $0.0047 per API call. Pay only for what you use with no minimum commitments. View pricing plans
Architecture Tuned Model FAQ
dvArch is a custom trained model that uses three separate trigger words: dvArchModern dvArchGothic dvArchVictorian Each of the trigger words will create buildings in that style of architecture. You can also use the three trigger words together to generate whole cities in a mix of buildings in th
You can integrate Architecture Tuned Model into your application with a single API call. Sign up on ModelsLab to get your API key, then use the model ID "architecture-tuned-model" in your API requests. We provide SDKs for Python, JavaScript, and cURL examples in the API documentation.
Architecture Tuned Model costs $0.0047 per API call. ModelsLab uses pay-per-use pricing with no minimum commitments. A free tier is available to get started.
The model ID for Architecture Tuned Model is "architecture-tuned-model". Use this ID in your API requests to specify this model.
Yes, ModelsLab offers a free tier that lets you try Architecture Tuned Model and other AI models. Sign up to get free API credits and start building immediately.



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