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jagilley /controlnet-pose:9a5c1140
Input
Run this model in Node.js with one line of code:
npm install replicate
REPLICATE_API_TOKEN
environment variable:export REPLICATE_API_TOKEN=<paste-your-token-here>
Find your API token in your account settings.
import Replicate from "replicate";
const replicate = new Replicate({
auth: process.env.REPLICATE_API_TOKEN,
});
Run jagilley/controlnet-pose using Replicate’s API. Check out the model's schema for an overview of inputs and outputs.
const output = await replicate.run(
"jagilley/controlnet-pose:9a5c1140b0d6afb96a8603b8da7d590ebea5c0ee63a5090e10dd89d172f57e8a",
{
input: {
eta: 0,
scale: 9,
a_prompt: "best quality, extremely detailed",
n_prompt: "longbody, lowres, bad anatomy, bad hands, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality",
ddim_steps: 20,
num_samples: "1",
image_resolution: "512",
detect_resolution: 512
}
}
);
console.log(output);
To learn more, take a look at the guide on getting started with Node.js.
pip install replicate
REPLICATE_API_TOKEN
environment variable:export REPLICATE_API_TOKEN=<paste-your-token-here>
Find your API token in your account settings.
import replicate
Run jagilley/controlnet-pose using Replicate’s API. Check out the model's schema for an overview of inputs and outputs.
output = replicate.run(
"jagilley/controlnet-pose:9a5c1140b0d6afb96a8603b8da7d590ebea5c0ee63a5090e10dd89d172f57e8a",
input={
"eta": 0,
"scale": 9,
"a_prompt": "best quality, extremely detailed",
"n_prompt": "longbody, lowres, bad anatomy, bad hands, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality",
"ddim_steps": 20,
"num_samples": "1",
"image_resolution": "512",
"detect_resolution": 512
}
)
print(output)
To learn more, take a look at the guide on getting started with Python.
REPLICATE_API_TOKEN
environment variable:export REPLICATE_API_TOKEN=<paste-your-token-here>
Find your API token in your account settings.
Run jagilley/controlnet-pose using Replicate’s API. Check out the model's schema for an overview of inputs and outputs.
curl -s -X POST \
-H "Authorization: Bearer $REPLICATE_API_TOKEN" \
-H "Content-Type: application/json" \
-H "Prefer: wait" \
-d $'{
"version": "9a5c1140b0d6afb96a8603b8da7d590ebea5c0ee63a5090e10dd89d172f57e8a",
"input": {
"eta": 0,
"scale": 9,
"a_prompt": "best quality, extremely detailed",
"n_prompt": "longbody, lowres, bad anatomy, bad hands, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality",
"ddim_steps": 20,
"num_samples": "1",
"image_resolution": "512",
"detect_resolution": 512
}
}' \
https://api.replicate.com/v1/predictions
To learn more, take a look at Replicate’s HTTP API reference docs.
brew install cog
If you don’t have Homebrew, there are other installation options available.
Run this to download the model and run it in your local environment:
cog predict r8.im/jagilley/controlnet-pose@sha256:9a5c1140b0d6afb96a8603b8da7d590ebea5c0ee63a5090e10dd89d172f57e8a \
-i 'eta=0' \
-i 'scale=9' \
-i 'a_prompt="best quality, extremely detailed"' \
-i 'n_prompt="longbody, lowres, bad anatomy, bad hands, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality"' \
-i 'ddim_steps=20' \
-i 'num_samples="1"' \
-i 'image_resolution="512"' \
-i 'detect_resolution=512'
To learn more, take a look at the Cog documentation.
Run this to download the model and run it in your local environment:
docker run -d -p 5000:5000 --gpus=all r8.im/jagilley/controlnet-pose@sha256:9a5c1140b0d6afb96a8603b8da7d590ebea5c0ee63a5090e10dd89d172f57e8a
curl -s -X POST \ -H "Content-Type: application/json" \ -d $'{ "input": { "eta": 0, "scale": 9, "a_prompt": "best quality, extremely detailed", "n_prompt": "longbody, lowres, bad anatomy, bad hands, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality", "ddim_steps": 20, "num_samples": "1", "image_resolution": "512", "detect_resolution": 512 } }' \ http://localhost:5000/predictions
To learn more, take a look at the Cog documentation.
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Output
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