# min(DALL·E) [![Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/kuprel/min-dalle/blob/main/min_dalle.ipynb)   [![Replicate](https://replicate.com/kuprel/min-dalle/badge)](https://replicate.com/kuprel/min-dalle)   [![Discord](https://img.shields.io/discord/823813159592001537?color=5865F2&logo=discord&logoColor=white)](https://discord.com/channels/823813159592001537/912729332311556136) This is a fast, minimal port of Boris Dayma's [DALL·E Mini](https://github.com/borisdayma/dalle-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](https://github.com/technobird22) and his [NeoGen](https://github.com/technobird22/NeoGen) discord bot for the graph.
min-dalle
The flax model and code for converting it to torch can be found [here](https://github.com/kuprel/min-dalle-flax). ## Install ```bash $ pip install min-dalle ``` ## Usage Load the model parameters once and reuse the model to generate multiple images. ```python 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. ```python 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) ``` min-dalle Credit to [@hardmaru](https://twitter.com/hardmaru) for the [example](https://twitter.com/hardmaru/status/1544354119527596034) ### Saving Individual Images The images can also be generated as a `FloatTensor` in case you want to process them manually. ```python 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. ```python images = images.to('cpu').numpy() ``` Then image $i$ can be coverted to a PIL.Image and saved ```python 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. ```python 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) ``` min-dalle ### Command Line Use `image_from_text.py` to generate images from the command line. ```bash $ python image_from_text.py --text='artificial intelligence' --no-mega ``` min-dalle