min-dalle-test/README.md
2022-07-17 15:29:23 -04:00

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min(DALL·E)

Colab   Replicate   Discord

This is a fast, minimal port of Boris Dayma's DALL·E Mini (with mega weights). It has been stripped down for inference and converted to PyTorch. The only third party dependencies are numpy, requests, pillow and torch.

To generate a 4x4 grid of DALL·E Mega images it takes:

  • 89 sec with a T4 in Colab
  • 48 sec with a P100 in Colab
  • 13 sec with an A100 on Replicate

Here's a more detailed breakdown of performance on an A100. Credit to @technobird22 and his NeoGen discord bot for the graph.
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The flax model and code for converting it to torch can be found here.

Install

$ pip install min-dalle

Usage

Load the model parameters once and reuse the model to generate multiple images.

from min_dalle import MinDalle

model = MinDalle(
    models_root='./pretrained',
    dtype=torch.float32,
    device='cuda',
    is_mega=True, 
    is_reusable=True
)

The required models will be downloaded to models_root if they are not already there. Set the dtype to torch.float16 to save GPU memory. If you have an Ampere architecture GPU you can use torch.bfloat16. Set the device to either "cuda" or "cpu". Once everything has finished initializing, call generate_image with some text as many times as you want. Use a positive seed for reproducible results. Higher values for supercondition_factor result in better agreement with the text but a narrower variety of generated images. Every image token is sampled from the top_k most probable tokens. The largest logit is subtracted from the logits to avoid infs. The logits are then divided by the temperature. If is_seamless is true, the images grid will be tiled in token space not pixel space.

image = model.generate_image(
    text='Nuclear explosion broccoli',
    seed=-1,
    grid_size=4,
    is_seamless=False,
    temperature=1,
    top_k=256,
    supercondition_factor=32,
    is_verbose=False
)

display(image)
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Credit to @hardmaru for the example

Saving Individual Images

The images can also be generated as a FloatTensor in case you want to process them manually.

images = model.generate_images(
    text='Nuclear explosion broccoli',
    seed=-1,
    grid_size=3,
    is_seamless=False,
    temperature=1,
    top_k=256,
    supercondition_factor=16,
    is_verbose=False
)

To get an image into PIL format you will have to first move the images to the CPU and convert the tensor to a numpy array.

images = images.to('cpu').numpy()

Then image i can be coverted to a PIL.Image and saved

image = Image.fromarray(images[i])
image.save('image_{}.png'.format(i))

Progressive Outputs

If the model is being used interactively (e.g. in a notebook) generate_image_stream can be used to generate a stream of images as the model is decoding. The detokenizer adds a slight delay for each image. Set progressive_outputs to True to enable this. An example is implemented in the colab.

image_stream = model.generate_image_stream(
    text='Dali painting of WALL·E',
    seed=-1,
    grid_size=3,
    progressive_outputs=True,
    is_seamless=False,
    temperature=1,
    top_k=256,
    supercondition_factor=16,
    is_verbose=False
)

for image in image_stream:
    display(image)
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Command Line

Use image_from_text.py to generate images from the command line.

$ python image_from_text.py --text='artificial intelligence' --no-mega
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