import numpy from typing import Dict from torch import LongTensor, FloatTensor import torch torch.set_grad_enabled(False) from .models.vqgan_detokenizer import VQGanDetokenizer from .models.dalle_bart_encoder_torch import DalleBartEncoderTorch from .models.dalle_bart_decoder_torch import DalleBartDecoderTorch from .load_params import ( load_vqgan_torch_params, convert_dalle_bart_torch_from_flax_params ) def encode_torch( text_tokens: LongTensor, config: dict, params: dict ) -> FloatTensor: print("loading torch encoder") encoder = DalleBartEncoderTorch( layer_count = config['encoder_layers'], embed_count = config['d_model'], attention_head_count = config['encoder_attention_heads'], text_vocab_count = config['encoder_vocab_size'], text_token_count = config['max_text_length'], glu_embed_count = config['encoder_ffn_dim'] ) encoder_params = convert_dalle_bart_torch_from_flax_params( params.pop('encoder'), layer_count=config['encoder_layers'], is_encoder=True ) encoder.load_state_dict(encoder_params, strict=False) del encoder_params if torch.cuda.is_available(): encoder = encoder.cuda() print("encoding text tokens") encoder_state = encoder(text_tokens) del encoder return encoder_state def decode_torch( text_tokens: LongTensor, encoder_state: FloatTensor, config: dict, seed: int, params: dict, image_token_count: int ) -> LongTensor: print("loading torch decoder") decoder = DalleBartDecoderTorch( image_vocab_size = config['image_vocab_size'], image_token_count = config['image_length'], sample_token_count = image_token_count, embed_count = config['d_model'], attention_head_count = config['decoder_attention_heads'], glu_embed_count = config['decoder_ffn_dim'], layer_count = config['decoder_layers'], batch_count = 2, start_token = config['decoder_start_token_id'], is_verbose = True ) decoder_params = convert_dalle_bart_torch_from_flax_params( params.pop('decoder'), layer_count=config['decoder_layers'], is_encoder=False ) decoder.load_state_dict(decoder_params, strict=False) del decoder_params if torch.cuda.is_available(): decoder = decoder.cuda() print("sampling image tokens") torch.manual_seed(seed) image_tokens = decoder.forward(text_tokens, encoder_state) return image_tokens def generate_image_tokens_torch( text_tokens: numpy.ndarray, seed: int, config: dict, params: dict, image_token_count: int ) -> LongTensor: text_tokens = torch.tensor(text_tokens).to(torch.long) if torch.cuda.is_available(): text_tokens = text_tokens.cuda() encoder_state = encode_torch( text_tokens, config, params ) image_tokens = decode_torch( text_tokens, encoder_state, config, seed, params, image_token_count ) return image_tokens def detokenize_torch(image_tokens: LongTensor, is_torch: bool) -> numpy.ndarray: print("detokenizing image") model_path = './pretrained/vqgan' params = load_vqgan_torch_params(model_path) detokenizer = VQGanDetokenizer() detokenizer.load_state_dict(params) if torch.cuda.is_available() and is_torch: detokenizer = detokenizer.cuda() image = detokenizer.forward(image_tokens).to(torch.uint8) del detokenizer, params return image.to('cpu').detach().numpy()