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104 lines
3.8 KiB
Python
104 lines
3.8 KiB
Python
import torch
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import pytest
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from warnings import warn
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from pathlib import Path
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from refiners.foundationals.clip.text_encoder import CLIPTextEncoderL
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from refiners.fluxion.utils import load_from_safetensors
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import transformers # type: ignore
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long_prompt = """
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Above these apparent hieroglyphics was a figure of evidently pictorial intent,
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though its impressionistic execution forbade a very clear idea of its nature.
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It seemed to be a sort of monster, or symbol representing a monster, of a form
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which only a diseased fancy could conceive. If I say that my somewhat extravagant
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imagination yielded simultaneous pictures of an octopus, a dragon, and a human
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caricature, I shall not be unfaithful to the spirit of the thing. A pulpy,
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tentacled head surmounted a grotesque and scaly body with rudimentary wings;
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but it was the general outline of the whole which made it most shockingly frightful.
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Behind the figure was a vague suggestion of a Cyclopean architectural background.
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"""
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PROMPTS = [
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"", # empty
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"a cute cat", # padded
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long_prompt, # truncated
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"64k", # FG-362 - encoded as 3 tokens
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]
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@pytest.fixture(scope="module")
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def our_encoder(test_weights_path: Path, test_device: torch.device) -> CLIPTextEncoderL:
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weights = test_weights_path / "CLIPTextEncoderL.safetensors"
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if not weights.is_file():
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warn(f"could not find weights at {weights}, skipping")
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pytest.skip(allow_module_level=True)
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encoder = CLIPTextEncoderL(device=test_device)
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tensors = load_from_safetensors(weights)
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encoder.load_state_dict(tensors)
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return encoder
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@pytest.fixture(scope="module")
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def runwayml_weights_path(test_weights_path: Path):
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r = test_weights_path / "runwayml" / "stable-diffusion-v1-5"
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if not r.is_dir():
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warn(f"could not find RunwayML weights at {r}, skipping")
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pytest.skip(allow_module_level=True)
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return r
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@pytest.fixture(scope="module")
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def ref_tokenizer(runwayml_weights_path: Path) -> transformers.CLIPTokenizer:
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return transformers.CLIPTokenizer.from_pretrained(runwayml_weights_path, subfolder="tokenizer") # type: ignore
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@pytest.fixture(scope="module")
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def ref_encoder(runwayml_weights_path: Path, test_device: torch.device) -> transformers.CLIPTextModel:
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return transformers.CLIPTextModel.from_pretrained(runwayml_weights_path, subfolder="text_encoder").to(test_device) # type: ignore
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def test_basics(ref_tokenizer: transformers.CLIPTokenizer, our_encoder: CLIPTextEncoderL):
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assert ref_tokenizer.model_max_length == 77 # type: ignore
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assert our_encoder.positional_embedding_dim == 77
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@pytest.fixture(params=PROMPTS)
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def prompt(request: pytest.FixtureRequest):
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return request.param
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def test_encoder(
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prompt: str,
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ref_tokenizer: transformers.CLIPTokenizer,
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ref_encoder: transformers.CLIPTextModel,
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our_encoder: CLIPTextEncoderL,
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test_device: torch.device,
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):
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ref_tokens = ref_tokenizer( # type: ignore
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prompt,
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padding="max_length",
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max_length=ref_tokenizer.model_max_length, # type: ignore
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truncation=True,
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return_tensors="pt",
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).input_ids
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assert isinstance(ref_tokens, torch.Tensor)
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our_tokens = our_encoder.tokenizer(prompt, sequence_length=our_encoder.positional_embedding_dim)
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assert torch.equal(our_tokens, ref_tokens)
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with torch.no_grad():
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ref_embeddings = ref_encoder(ref_tokens.to(test_device))[0]
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our_embeddings = our_encoder(our_tokens.to(test_device))
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assert ref_embeddings.shape == (1, 77, 768)
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assert our_embeddings.shape == (1, 77, 768)
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# FG-336 - Not strictly equal because we do not use the same implementation
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# of self-attention. We use `scaled_dot_product_attention` which can have
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# numerical differences depending on the backend.
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# Also we use FP16 weights.
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assert (our_embeddings - ref_embeddings).abs().max() < 0.01
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