API
If you're looking for an API, you can choose from your desired programming language.
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import requests
import base64
# Use this function to convert an image file from the filesystem to base64
def image_file_to_base64(image_path):
with open(image_path, 'rb') as f:
image_data = f.read()
return base64.b64encode(image_data).decode('utf-8')
# Use this function to fetch an image from a URL and convert it to base64
def image_url_to_base64(image_url):
response = requests.get(image_url)
image_data = response.content
return base64.b64encode(image_data).decode('utf-8')
# Use this function to convert a list of image URLs to base64
def image_urls_to_base64(image_urls):
return [image_url_to_base64(url) for url in image_urls]
api_key = "YOUR_API_KEY"
url = "https://api.segmind.com/v1/nerijs-lego-minifig-xl"
# Request payload
data = {
"prompt": "lego minifig of a dog",
"negative_prompt": "boring, poorly drawn, bad artist, (worst quality:1.4), simple background, uninspired, (bad quality:1.4), monochrome, low background contrast, background noise, duplicate, crowded, (nipples:1.2), big breasts",
"scheduler": "UniPC",
"num_inference_steps": 25,
"guidance_scale": 8,
"samples": 1,
"seed": 3426017487,
"img_width": 1024,
"img_height": 1024,
"base64": False,
"lora_scale": 1
}
headers = {'x-api-key': api_key}
response = requests.post(url, json=data, headers=headers)
print(response.content) # The response is the generated image
Attributes
Prompt to render
Prompts to exclude, eg. 'bad anatomy, bad hands, missing fingers'
Type of scheduler.
Allowed values:
Number of denoising steps.
min : 20,
max : 100
Scale for classifier-free guidance
min : 0.1,
max : 25
Number of samples to generate.
min : 1,
max : 4
Seed for image generation.
Width of the image.
Allowed values:
Height of the Image
Allowed values:
Base64 encoding of the output image.
Scale of the lora
To keep track of your credit usage, you can inspect the response headers of each API call. The x-remaining-credits property will indicate the number of remaining credits in your account. Ensure you monitor this value to avoid any disruptions in your API usage.
LEGO Minifig XL
LEGO Minifig XL is designed to generate LEGO images. Whether you're a LEGO enthusiast, a creative professional, or just someone who loves the iconic building blocks, this model is your gateway to a universe of LEGO creativity. Trained exclusively on LEGO images, LEGO Minifig XL excels in creating detailed and accurate representations of LEGO minifigures and items
Advantages
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Specialized in LEGO Imagery: Expertly generates images of LEGO minifigures and items.
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Versatile Applications: Capable of creating LEGO representations of a wide range of subjects, from animals to inanimate objects.
Use Cases
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Creative Projects:Ideal for LEGO enthusiasts and creators looking to visualize unique LEGO designs.
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Marketing and Advertising: Create eye-catching LEGO-themed visuals for marketing campaigns.
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Design Prototyping: Visualize and prototype new LEGO set ideas or minifigure designs.
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Educational Tools: Useful in educational settings for engaging children in creative and imaginative play.
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