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Prompt
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389
Category
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12 values
Challenge
stringclasses
11 values
Note
stringclasses
24 values
images
imagewidth (px)
256
256
model_name
stringclasses
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seed
int64
0
0
bond
Abstract
Basic
Biology-inspired concepts with multiple meanings
openMUSE/muse-256
0
element
Abstract
Basic
Biology-inspired concepts with multiple meanings
openMUSE/muse-256
0
molecule
Abstract
Basic
Biology-inspired concepts with multiple meanings
openMUSE/muse-256
0
life
Abstract
Basic
Biology-inspired concepts with multiple meanings
openMUSE/muse-256
0
protein
Abstract
Basic
Biology-inspired concepts with multiple meanings
openMUSE/muse-256
0
yin-yang
Abstract
Basic
Related to five elements
openMUSE/muse-256
0
wood
Abstract
Basic
Related to five elements
openMUSE/muse-256
0
metal
Abstract
Basic
Related to five elements
openMUSE/muse-256
0
space
Abstract
Basic
Related to five elements
openMUSE/muse-256
0
air
Abstract
Basic
Related to five elements
openMUSE/muse-256
0
fire
Abstract
Basic
Related to five elements
openMUSE/muse-256
0
water
Abstract
Basic
Related to five elements
openMUSE/muse-256
0
earth
Abstract
Basic
Related to five elements
openMUSE/muse-256
0
force
Abstract
Basic
Physics concepts
openMUSE/muse-256
0
motion
Abstract
Basic
Physics concepts
openMUSE/muse-256
0
inertia
Abstract
Basic
Physics concepts
openMUSE/muse-256
0
energy
Abstract
Basic
Physics concepts
openMUSE/muse-256
0
black hole
Abstract
Basic
Physics concepts
openMUSE/muse-256
0
gravity
Abstract
Basic
Physics concepts
openMUSE/muse-256
0
peace
Abstract
Basic
null
openMUSE/muse-256
0
fairness
Abstract
Basic
null
openMUSE/muse-256
0
gender
Abstract
Basic
null
openMUSE/muse-256
0
intelligence
Abstract
Basic
null
openMUSE/muse-256
0
bias
Abstract
Basic
null
openMUSE/muse-256
0
hate
Abstract
Basic
null
openMUSE/muse-256
0
anger
Abstract
Basic
null
openMUSE/muse-256
0
emotion
Abstract
Basic
null
openMUSE/muse-256
0
feeling
Abstract
Basic
null
openMUSE/muse-256
0
love
Abstract
Basic
null
openMUSE/muse-256
0
artificial intelligence
Abstract
Basic
null
openMUSE/muse-256
0
meaning of life
Abstract
Basic
null
openMUSE/muse-256
0
42
Abstract
Basic
Simple numbers but challenging
openMUSE/muse-256
0
0
Abstract
Basic
Simple numbers but challenging
openMUSE/muse-256
0
infinity
Abstract
Basic
Math concepts
openMUSE/muse-256
0
imaginary numbers
Abstract
Basic
Math concepts
openMUSE/muse-256
0
Fibonacci number
Abstract
Basic
Math concepts
openMUSE/muse-256
0
golden ratio
Abstract
Basic
Math concepts
openMUSE/muse-256
0
an F1
Vehicles
Basic
null
openMUSE/muse-256
0
parallel lines
Illustrations
Basic
Math concepts
openMUSE/muse-256
0
concentric circles
Illustrations
Basic
Math concepts
openMUSE/muse-256
0
concurrent lines
Illustrations
Basic
Math concepts
openMUSE/muse-256
0
congruent triangles
Illustrations
Basic
Math concepts
openMUSE/muse-256
0
a hot air balloon
Vehicles
Basic
null
openMUSE/muse-256
0
The Starry Night
Arts
Basic
null
openMUSE/muse-256
0
300
Abstract
Basic
Simple numbers but challenging
openMUSE/muse-256
0
101
Abstract
Basic
Simple numbers but challenging
openMUSE/muse-256
0
U.S. 101
World Knowledge
Basic
Simple numbers but challenging
openMUSE/muse-256
0
commonsense
Abstract
Basic
null
openMUSE/muse-256
0
happiness
Abstract
Basic
null
openMUSE/muse-256
0
hope
Abstract
Basic
null
openMUSE/muse-256
0
insight
Abstract
Basic
null
openMUSE/muse-256
0
inspiration
Abstract
Basic
null
openMUSE/muse-256
0
derision
Abstract
Basic
null
openMUSE/muse-256
0
Salvador Dalí
People
Basic
null
openMUSE/muse-256
0
a shiba inu
Animals
Basic
null
openMUSE/muse-256
0
a handpalm
People
Basic
null
openMUSE/muse-256
0
an espresso machine
Artifacts
Basic
null
openMUSE/muse-256
0
a propaganda poster
Artifacts
Basic
null
openMUSE/muse-256
0
The Oriental Pearl
World Knowledge
Basic
CogView
openMUSE/muse-256
0
Ha Long Bay
World Knowledge
Basic
null
openMUSE/muse-256
0
A Vietnam map
World Knowledge
Basic
null
openMUSE/muse-256
0
A bowl of Pho
Food & Beverage
Basic
null
openMUSE/muse-256
0
a snail
Animals
Basic
null
openMUSE/muse-256
0
brain coral
Animals
Basic
null
openMUSE/muse-256
0
a walnut
Produce & Plants
Basic
null
openMUSE/muse-256
0
a capybara
Animals
Basic
null
openMUSE/muse-256
0
a baby penguin
Animals
Basic
null
openMUSE/muse-256
0
a cup of boba
Food & Beverage
Basic
null
openMUSE/muse-256
0
a photo of san francisco's golden gate bridge
World Knowledge
Basic
DALL-E
openMUSE/muse-256
0
A picture of some food in the plate
Food & Beverage
Basic
VQ-Diffusion
openMUSE/muse-256
0
a chair
Artifacts
Basic
null
openMUSE/muse-256
0
the Empire State Building
World Knowledge
Basic
null
openMUSE/muse-256
0
the Sydney Opera House
World Knowledge
Basic
null
openMUSE/muse-256
0
a hedgehog
Animals
Basic
null
openMUSE/muse-256
0
a corgi
Animals
Basic
null
openMUSE/muse-256
0
a robot
Artifacts
Basic
null
openMUSE/muse-256
0
robots
Artifacts
Basic
null
openMUSE/muse-256
0
a fall landscape
Outdoor Scenes
Basic
null
openMUSE/muse-256
0
a sunset
Outdoor Scenes
Basic
null
openMUSE/muse-256
0
a boat
Vehicles
Basic
null
openMUSE/muse-256
0
a fox
Animals
Basic
null
openMUSE/muse-256
0
a red cube
Illustrations
Basic
null
openMUSE/muse-256
0
a panda
Animals
Basic
null
openMUSE/muse-256
0
a space elevator
Artifacts
Basic
GLIDE
openMUSE/muse-256
0
a city
Outdoor Scenes
Basic
null
openMUSE/muse-256
0
a fog
Outdoor Scenes
Basic
null
openMUSE/muse-256
0
a clock
Artifacts
Basic
null
openMUSE/muse-256
0
a phone
Artifacts
Basic
null
openMUSE/muse-256
0
food
Food & Beverage
Basic
null
openMUSE/muse-256
0
a store front
Outdoor Scenes
Basic
null
openMUSE/muse-256
0
an armchair
Artifacts
Basic
null
openMUSE/muse-256
0
a teapot
Artifacts
Basic
null
openMUSE/muse-256
0
an illustration of a teapot
Artifacts
Basic
DALL-E
openMUSE/muse-256
0
a tiger
Animals
Basic
null
openMUSE/muse-256
0
a bench
Artifacts
Basic
null
openMUSE/muse-256
0
an orange
Produce & Plants
Basic
null
openMUSE/muse-256
0
a laptop
Artifacts
Basic
null
openMUSE/muse-256
0
an owl
Animals
Basic
null
openMUSE/muse-256
0
a train
Vehicles
Basic
null
openMUSE/muse-256
0
a cow
Animals
Basic
null
openMUSE/muse-256
0
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YAML Metadata Warning:empty or missing yaml metadata in repo card

Check out the documentation for more information.

from PIL import Image  
import torch
from muse import PipelineMuse, MaskGiTUViT
from datasets import Dataset, Features
from datasets import Image as ImageFeature
from datasets import Value, load_dataset

device = "cuda" if torch.cuda.is_available() else "cpu"

pipe = PipelineMuse.from_pretrained(
    transformer_path="valhalla/research-run",
    text_encoder_path="openMUSE/clip-vit-large-patch14-text-enc",
    vae_path="openMUSE/vqgan-f16-8192-laion",
).to(device)

# pipe.transformer = MaskGiTUViT.from_pretrained("valhalla/research-run-finetuned-journeydb", revision="06bcd6ab6580a2ed3275ddfc17f463b8574457da", subfolder="ema_model").to(device)
pipe.transformer = MaskGiTUViT.from_pretrained("valhalla/muse-research-run", subfolder="ema_model").to(device)
pipe.tokenizer.pad_token_id = 49407

if device == "cuda":
    pipe.transformer.enable_xformers_memory_efficient_attention()
    pipe.text_encoder.to(torch.float16)
    pipe.transformer.to(torch.float16)


import PIL


def main():
    print("Loading dataset...")
    parti_prompts = load_dataset("nateraw/parti-prompts", split="train")

    print("Loading pipeline...")
    seed = 0

    device = "cuda"
    torch.manual_seed(0)

    ckpt_id = "openMUSE/muse-256"

    scale = 10

    print("Running inference...")
    main_dict = {}
    for i in range(len(parti_prompts)):
        sample = parti_prompts[i]
        prompt = sample["Prompt"]

        image = pipe(
            prompt,
            timesteps=16,
            negative_text=None,
            guidance_scale=scale,
            temperature=(2, 0),
            orig_size=(256, 256),
            crop_coords=(0, 0),
            aesthetic_score=6,
            use_fp16=device == "cuda",
            transformer_seq_len=256,
            use_tqdm=False,
        )[0]

        image = image.resize((256, 256), resample=PIL.Image.Resampling.LANCZOS)
        img_path = f"/home/patrick/muse_images/muse_256_{i}.png"
        image.save(img_path)
        main_dict.update(
            {
                prompt: {
                    "img_path": img_path,
                    "Category": sample["Category"],
                    "Challenge": sample["Challenge"],
                    "Note": sample["Note"],
                    "model_name": ckpt_id,
                    "seed": seed,
                }
            }
        )

    def generation_fn():
        for prompt in main_dict:
            prompt_entry = main_dict[prompt]
            yield {
                "Prompt": prompt,
                "Category": prompt_entry["Category"],
                "Challenge": prompt_entry["Challenge"],
                "Note": prompt_entry["Note"],
                "images": {"path": prompt_entry["img_path"]},
                "model_name": prompt_entry["model_name"],
                "seed": prompt_entry["seed"],
            }

    print("Preparing HF dataset...")
    ds = Dataset.from_generator(
        generation_fn,
        features=Features(
            Prompt=Value("string"),
            Category=Value("string"),
            Challenge=Value("string"),
            Note=Value("string"),
            images=ImageFeature(),
            model_name=Value("string"),
            seed=Value("int64"),
        ),
    )
    ds_id = "diffusers-parti-prompts/muse256"
    ds.push_to_hub(ds_id)


if __name__ == "__main__":
    main()
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