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import os
from PIL import Image
import numpy
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from torch import LongTensor, FloatTensor
from math import sqrt
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import torch
import torch.backends.cudnn, torch.backends.cuda
import json
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import requests
from typing import Iterator
from .text_tokenizer import TextTokenizer
from .models import DalleBartEncoder, DalleBartDecoder, VQGanDetokenizer
torch.set_grad_enabled(False)
torch.set_num_threads(os.cpu_count())
torch.backends.cudnn.enabled = True
torch.backends.cudnn.allow_tf32 = True
torch.backends.cudnn.benchmark = True
torch.backends.cuda.matmul.allow_tf32 = True
torch.backends.cuda.matmul.allow_fp16_reduced_precision_reduction = True
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MIN_DALLE_REPO = 'https://huggingface.co/kuprel/min-dalle/resolve/main/'
IMAGE_TOKEN_COUNT = 256
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class MinDalle:
def __init__(
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self,
models_root: str = 'pretrained',
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dtype: torch.dtype = torch.float32,
device: str = None,
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is_mega: bool = True,
is_reusable: bool = True,
is_verbose = True
):
if device == None:
device = 'cuda' if torch.cuda.is_available() else 'cpu'
if is_verbose: print("using device", device)
self.device = device
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self.is_mega = is_mega
self.is_reusable = is_reusable
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self.dtype = dtype
self.is_verbose = is_verbose
self.text_token_count = 64
self.layer_count = 24 if is_mega else 12
self.attention_head_count = 32 if is_mega else 16
self.embed_count = 2048 if is_mega else 1024
self.glu_embed_count = 4096 if is_mega else 2730
self.text_vocab_count = 50272 if is_mega else 50264
self.image_vocab_count = 16415 if is_mega else 16384
model_name = 'dalle_bart_{}'.format('mega' if is_mega else 'mini')
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dalle_path = os.path.join(models_root, model_name)
vqgan_path = os.path.join(models_root, 'vqgan')
if not os.path.exists(dalle_path): os.makedirs(dalle_path)
if not os.path.exists(vqgan_path): os.makedirs(vqgan_path)
self.vocab_path = os.path.join(dalle_path, 'vocab.json')
self.merges_path = os.path.join(dalle_path, 'merges.txt')
self.encoder_params_path = os.path.join(dalle_path, 'encoder.pt')
self.decoder_params_path = os.path.join(dalle_path, 'decoder.pt')
self.detoker_params_path = os.path.join(vqgan_path, 'detoker.pt')
self.init_tokenizer()
if is_reusable:
self.init_encoder()
self.init_decoder()
self.init_detokenizer()
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def download_tokenizer(self):
if self.is_verbose: print("downloading tokenizer params")
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suffix = '' if self.is_mega else '_mini'
vocab = requests.get(MIN_DALLE_REPO + 'vocab{}.json'.format(suffix))
merges = requests.get(MIN_DALLE_REPO + 'merges{}.txt'.format(suffix))
with open(self.vocab_path, 'wb') as f: f.write(vocab.content)
with open(self.merges_path, 'wb') as f: f.write(merges.content)
def download_encoder(self):
if self.is_verbose: print("downloading encoder params")
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suffix = '' if self.is_mega else '_mini'
params = requests.get(MIN_DALLE_REPO + 'encoder{}.pt'.format(suffix))
with open(self.encoder_params_path, 'wb') as f: f.write(params.content)
def download_decoder(self):
if self.is_verbose: print("downloading decoder params")
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suffix = '' if self.is_mega else '_mini'
params = requests.get(MIN_DALLE_REPO + 'decoder{}.pt'.format(suffix))
with open(self.decoder_params_path, 'wb') as f: f.write(params.content)
def download_detokenizer(self):
if self.is_verbose: print("downloading detokenizer params")
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params = requests.get(MIN_DALLE_REPO + 'detoker.pt')
with open(self.detoker_params_path, 'wb') as f: f.write(params.content)
def init_tokenizer(self):
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is_downloaded = os.path.exists(self.vocab_path)
is_downloaded &= os.path.exists(self.merges_path)
if not is_downloaded: self.download_tokenizer()
if self.is_verbose: print("intializing TextTokenizer")
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with open(self.vocab_path, 'r', encoding='utf8') as f:
vocab = json.load(f)
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with open(self.merges_path, 'r', encoding='utf8') as f:
merges = f.read().split("\n")[1:-1]
self.tokenizer = TextTokenizer(vocab, merges)
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def init_encoder(self):
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is_downloaded = os.path.exists(self.encoder_params_path)
if not is_downloaded: self.download_encoder()
if self.is_verbose: print("initializing DalleBartEncoder")
self.encoder = DalleBartEncoder(
attention_head_count = self.attention_head_count,
embed_count = self.embed_count,
glu_embed_count = self.glu_embed_count,
text_token_count = self.text_token_count,
text_vocab_count = self.text_vocab_count,
layer_count = self.layer_count,
device=self.device
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).to(self.dtype).eval()
params = torch.load(self.encoder_params_path)
self.encoder.load_state_dict(params, strict=False)
del params
self.encoder = self.encoder.to(device=self.device)
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def init_decoder(self):
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is_downloaded = os.path.exists(self.decoder_params_path)
if not is_downloaded: self.download_decoder()
if self.is_verbose: print("initializing DalleBartDecoder")
self.decoder = DalleBartDecoder(
image_vocab_count = self.image_vocab_count,
attention_head_count = self.attention_head_count,
embed_count = self.embed_count,
glu_embed_count = self.glu_embed_count,
layer_count = self.layer_count,
device=self.device
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).to(self.dtype).eval()
params = torch.load(self.decoder_params_path)
self.decoder.load_state_dict(params, strict=False)
del params
self.decoder = self.decoder.to(device=self.device)
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def init_detokenizer(self):
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is_downloaded = os.path.exists(self.detoker_params_path)
if not is_downloaded: self.download_detokenizer()
if self.is_verbose: print("initializing VQGanDetokenizer")
self.detokenizer = VQGanDetokenizer().eval()
params = torch.load(self.detoker_params_path)
self.detokenizer.load_state_dict(params)
del params
self.detokenizer = self.detokenizer.to(device=self.device)
def image_grid_from_tokens(
self,
image_tokens: LongTensor,
is_seamless: bool,
is_verbose: bool = False
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) -> FloatTensor:
if not self.is_reusable: del self.decoder
torch.cuda.empty_cache()
if not self.is_reusable: self.init_detokenizer()
if is_verbose: print("detokenizing image")
images = self.detokenizer.forward(is_seamless, image_tokens)
if not self.is_reusable: del self.detokenizer
return images
def generate_image_stream(
self,
text: str,
seed: int,
grid_size: int,
progressive_outputs: bool = False,
is_seamless: bool = False,
temperature: float = 1,
top_k: int = 256,
supercondition_factor: int = 16,
is_verbose: bool = False
) -> Iterator[Image.Image]:
image_count = grid_size ** 2
if is_verbose: print("tokenizing text")
tokens = self.tokenizer.tokenize(text, is_verbose=is_verbose)
if len(tokens) > self.text_token_count:
tokens = tokens[:self.text_token_count]
if is_verbose: print("{} text tokens".format(len(tokens)), tokens)
text_tokens = numpy.ones((2, 64), dtype=numpy.int32)
text_tokens[0, :2] = [tokens[0], tokens[-1]]
text_tokens[1, :len(tokens)] = tokens
text_tokens = torch.tensor(
text_tokens,
dtype=torch.long,
device=self.device
)
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if not self.is_reusable: self.init_encoder()
if is_verbose: print("encoding text tokens")
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with torch.cuda.amp.autocast(dtype=self.dtype):
encoder_state = self.encoder.forward(text_tokens)
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if not self.is_reusable: del self.encoder
torch.cuda.empty_cache()
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if not self.is_reusable: self.init_decoder()
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with torch.cuda.amp.autocast(dtype=self.dtype):
expanded_indices = [0] * image_count + [1] * image_count
text_tokens = text_tokens[expanded_indices]
encoder_state = encoder_state[expanded_indices]
attention_mask = text_tokens.not_equal(1)
attention_state = torch.zeros(
size=(
self.layer_count,
image_count * 4,
IMAGE_TOKEN_COUNT,
self.embed_count
),
device=self.device
)
image_tokens = torch.full(
(IMAGE_TOKEN_COUNT + 1, image_count),
self.image_vocab_count,
dtype=torch.long,
device=self.device
)
if seed > 0: torch.manual_seed(seed)
token_indices = torch.arange(IMAGE_TOKEN_COUNT, device=self.device)
settings = torch.tensor(
[temperature, top_k, supercondition_factor],
dtype=torch.float32,
device=self.device
)
for i in range(IMAGE_TOKEN_COUNT):
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with torch.cuda.amp.autocast(dtype=self.dtype):
image_tokens[i + 1], attention_state = self.decoder.forward(
settings=settings,
attention_mask=attention_mask,
encoder_state=encoder_state,
attention_state=attention_state,
prev_tokens=image_tokens[i],
token_index=token_indices[[i]]
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)
with torch.cuda.amp.autocast(dtype=torch.float32):
if ((i + 1) % 32 == 0 and progressive_outputs) or i + 1 == 256:
image = self.image_grid_from_tokens(
image_tokens=image_tokens[1:].T,
is_seamless=is_seamless,
is_verbose=is_verbose
)
image = image.to(torch.uint8).to('cpu').numpy()
yield Image.fromarray(image)
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def generate_image(
self,
text: str,
seed: int = -1,
grid_size: int = 1,
temperature: float = 1,
top_k: int = 1024,
supercondition_factor: int = 16,
is_verbose: bool = False
) -> Image.Image:
image_stream = self.generate_image_stream(
text=text,
seed=seed,
grid_size=grid_size,
progressive_outputs=False,
temperature=temperature,
top_k=top_k,
supercondition_factor=supercondition_factor,
is_verbose=is_verbose
)
return next(image_stream)
# def images_from_image(image: Image.Image) -> FloatTensor:
# pass
# def generate_images_stream(
# self,
# text: str,
# seed: int,
# grid_size: int,
# progressive_outputs: bool = False,
# temperature: float = 1,
# top_k: int = 256,
# supercondition_factor: int = 16,
# is_verbose: bool = False
# ) -> Iterator[FloatTensor]:
# image_stream = self.generate_image_stream(
# text=text,
# seed=seed,
# image_count=grid_size ** 2,
# progressive_outputs=progressive_outputs,
# is_seamless=False,
# temperature=temperature,
# top_k=top_k,
# supercondition_factor=supercondition_factor,
# is_verbose=is_verbose
# )
# for image in image_stream:
# yield self.images_from_image(image)
# def generate_images(
# self,
# text: str,
# seed: int = -1,
# image_count: int = 1,
# temperature: float = 1,
# top_k: int = 1024,
# supercondition_factor: int = 16,
# is_verbose: bool = False
# ) -> FloatTensor:
# images_stream = self.generate_images_stream(
# text=text,
# seed=seed,
# image_count=image_count,
# temperature=temperature,
# progressive_outputs=False,
# top_k=top_k,
# supercondition_factor=supercondition_factor,
# is_verbose=is_verbose
# )
# return next(images_stream)