Readme
This model doesn't have a readme.
A flux dev lora fine-tuned on bad 2004 digital photography
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 fofr/flux-2004 using Replicate’s API. Check out the model's schema for an overview of inputs and outputs.
const output = await replicate.run(
"fofr/flux-2004:6beb0fefabdbbcf9447b1835638084980b165ce568883b01a7d1c45f8a482fb8",
{
input: {
model: "dev",
prompt: "a bad portrait photo of a tiger sitting at a dinner table with food in a cramped japanese apartment",
go_fast: false,
lora_scale: 0.75,
megapixels: "1",
num_outputs: 4,
aspect_ratio: "3:2",
output_format: "webp",
guidance_scale: 3.5,
output_quality: 80,
prompt_strength: 0.8,
extra_lora_scale: 1,
num_inference_steps: 28
}
}
);
// To access the file URL:
console.log(output[0].url()); //=> "http://example.com"
// To write the file to disk:
fs.writeFile("my-image.png", output[0]);
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 fofr/flux-2004 using Replicate’s API. Check out the model's schema for an overview of inputs and outputs.
output = replicate.run(
"fofr/flux-2004:6beb0fefabdbbcf9447b1835638084980b165ce568883b01a7d1c45f8a482fb8",
input={
"model": "dev",
"prompt": "a bad portrait photo of a tiger sitting at a dinner table with food in a cramped japanese apartment",
"go_fast": False,
"lora_scale": 0.75,
"megapixels": "1",
"num_outputs": 4,
"aspect_ratio": "3:2",
"output_format": "webp",
"guidance_scale": 3.5,
"output_quality": 80,
"prompt_strength": 0.8,
"extra_lora_scale": 1,
"num_inference_steps": 28
}
)
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 fofr/flux-2004 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": "6beb0fefabdbbcf9447b1835638084980b165ce568883b01a7d1c45f8a482fb8",
"input": {
"model": "dev",
"prompt": "a bad portrait photo of a tiger sitting at a dinner table with food in a cramped japanese apartment",
"go_fast": false,
"lora_scale": 0.75,
"megapixels": "1",
"num_outputs": 4,
"aspect_ratio": "3:2",
"output_format": "webp",
"guidance_scale": 3.5,
"output_quality": 80,
"prompt_strength": 0.8,
"extra_lora_scale": 1,
"num_inference_steps": 28
}
}' \
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/fofr/flux-2004@sha256:6beb0fefabdbbcf9447b1835638084980b165ce568883b01a7d1c45f8a482fb8 \
-i 'model="dev"' \
-i 'prompt="a bad portrait photo of a tiger sitting at a dinner table with food in a cramped japanese apartment"' \
-i 'go_fast=false' \
-i 'lora_scale=0.75' \
-i 'megapixels="1"' \
-i 'num_outputs=4' \
-i 'aspect_ratio="3:2"' \
-i 'output_format="webp"' \
-i 'guidance_scale=3.5' \
-i 'output_quality=80' \
-i 'prompt_strength=0.8' \
-i 'extra_lora_scale=1' \
-i 'num_inference_steps=28'
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/fofr/flux-2004@sha256:6beb0fefabdbbcf9447b1835638084980b165ce568883b01a7d1c45f8a482fb8
curl -s -X POST \ -H "Content-Type: application/json" \ -d $'{ "input": { "model": "dev", "prompt": "a bad portrait photo of a tiger sitting at a dinner table with food in a cramped japanese apartment", "go_fast": false, "lora_scale": 0.75, "megapixels": "1", "num_outputs": 4, "aspect_ratio": "3:2", "output_format": "webp", "guidance_scale": 3.5, "output_quality": 80, "prompt_strength": 0.8, "extra_lora_scale": 1, "num_inference_steps": 28 } }' \ http://localhost:5000/predictions
To learn more, take a look at the Cog documentation.
Add a payment method to run this model.
Each run costs approximately $0.018. Alternatively, try out our featured models for free.
By signing in, you agree to our
terms of service and privacy policy
{
"completed_at": "2024-08-15T14:42:02.703852Z",
"created_at": "2024-08-15T14:41:23.418000Z",
"data_removed": false,
"error": null,
"id": "4tfnjfvqv9rm20chasy8fvh2tc",
"input": {
"prompt": "a bad portrait photo of a tiger sitting at a dinner table with food in a cramped japanese apartment",
"lora_scale": 0.75,
"num_outputs": 4,
"aspect_ratio": "3:2",
"output_format": "webp",
"guidance_scale": 3.5,
"output_quality": 80,
"num_inference_steps": 28
},
"logs": "Using seed: 32529\nPrompt: a bad portrait photo of a tiger sitting at a dinner table with food in a cramped japanese apartment\ntxt2img mode\nUsing dev model\nLoading LoRA weights from https://replicate.delivery/yhqm/jyal01UbYD7mFhuUnzxoeurdjqtr7j8bv7hUtEEQ7f5YexlmA/trained_model.tar\nLoRA weights loaded successfully\n 0%| | 0/28 [00:00<?, ?it/s]\n 4%|▎ | 1/28 [00:00<00:26, 1.00it/s]\n 7%|▋ | 2/28 [00:01<00:22, 1.14it/s]\n 11%|█ | 3/28 [00:02<00:23, 1.07it/s]\n 14%|█▍ | 4/28 [00:03<00:23, 1.04it/s]\n 18%|█▊ | 5/28 [00:04<00:22, 1.03it/s]\n 21%|██▏ | 6/28 [00:05<00:21, 1.01it/s]\n 25%|██▌ | 7/28 [00:06<00:20, 1.01it/s]\n 29%|██▊ | 8/28 [00:07<00:19, 1.00it/s]\n 32%|███▏ | 9/28 [00:08<00:18, 1.00it/s]\n 36%|███▌ | 10/28 [00:09<00:18, 1.00s/it]\n 39%|███▉ | 11/28 [00:10<00:17, 1.00s/it]\n 43%|████▎ | 12/28 [00:11<00:16, 1.00s/it]\n 46%|████▋ | 13/28 [00:12<00:15, 1.01s/it]\n 50%|█████ | 14/28 [00:13<00:14, 1.01s/it]\n 54%|█████▎ | 15/28 [00:14<00:13, 1.00s/it]\n 57%|█████▋ | 16/28 [00:15<00:12, 1.00s/it]\n 61%|██████ | 17/28 [00:16<00:11, 1.00s/it]\n 64%|██████▍ | 18/28 [00:17<00:10, 1.00s/it]\n 68%|██████▊ | 19/28 [00:18<00:09, 1.00s/it]\n 71%|███████▏ | 20/28 [00:19<00:08, 1.00s/it]\n 75%|███████▌ | 21/28 [00:20<00:07, 1.00s/it]\n 79%|███████▊ | 22/28 [00:21<00:06, 1.00s/it]\n 82%|████████▏ | 23/28 [00:22<00:05, 1.00s/it]\n 86%|████████▌ | 24/28 [00:23<00:04, 1.00s/it]\n 89%|████████▉ | 25/28 [00:24<00:03, 1.00s/it]\n 93%|█████████▎| 26/28 [00:25<00:02, 1.00s/it]\n 96%|█████████▋| 27/28 [00:26<00:01, 1.00s/it]\n100%|██████████| 28/28 [00:27<00:00, 1.00s/it]\n100%|██████████| 28/28 [00:27<00:00, 1.00it/s]",
"metrics": {
"predict_time": 37.204666862,
"total_time": 39.285852
},
"output": [
"https://replicate.delivery/yhqm/Z8UCFfzDm0yxDS0tZ7RJhN9WrEdYHKZIDT32iAyRUwEdLeSTA/out-0.webp",
"https://replicate.delivery/yhqm/GbVGbDeUVERGT69i5Yc6T2hUPpkepQURvmCU6VwxoHb6W8STA/out-1.webp",
"https://replicate.delivery/yhqm/33Smm0HDx3Z4JBjjfaDrO0Q0kTQTwD81hLUePr9mA496W8STA/out-2.webp",
"https://replicate.delivery/yhqm/Umt3TIPcLUorCN7TCywiH1oFE0OezlJhT5nMnQ4uOmQdLeSTA/out-3.webp"
],
"started_at": "2024-08-15T14:41:25.499186Z",
"status": "succeeded",
"urls": {
"get": "https://api.replicate.com/v1/predictions/4tfnjfvqv9rm20chasy8fvh2tc",
"cancel": "https://api.replicate.com/v1/predictions/4tfnjfvqv9rm20chasy8fvh2tc/cancel"
},
"version": "6beb0fefabdbbcf9447b1835638084980b165ce568883b01a7d1c45f8a482fb8"
}
Using seed: 32529
Prompt: a bad portrait photo of a tiger sitting at a dinner table with food in a cramped japanese apartment
txt2img mode
Using dev model
Loading LoRA weights from https://replicate.delivery/yhqm/jyal01UbYD7mFhuUnzxoeurdjqtr7j8bv7hUtEEQ7f5YexlmA/trained_model.tar
LoRA weights loaded successfully
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This model costs approximately $0.018 to run on Replicate, or 55 runs per $1, but this varies depending on your inputs. It is also open source and you can run it on your own computer with Docker.
This model runs on Nvidia H100 GPU hardware. Predictions typically complete within 12 seconds.
This model doesn't have a readme.
This model is warm. You'll get a fast response if the model is warm and already running, and a slower response if the model is cold and starting up.
Choose a file from your machine
Hint: you can also drag files onto the input
Choose a file from your machine
Hint: you can also drag files onto the input
Using seed: 32529
Prompt: a bad portrait photo of a tiger sitting at a dinner table with food in a cramped japanese apartment
txt2img mode
Using dev model
Loading LoRA weights from https://replicate.delivery/yhqm/jyal01UbYD7mFhuUnzxoeurdjqtr7j8bv7hUtEEQ7f5YexlmA/trained_model.tar
LoRA weights loaded successfully
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