"""Provide a text query describing what you are looking for and get back out images with links!""" """This has been duplicated to show the new duplication feature demo""" import argparse import logging import os import wandb import gradio as gr import zipfile import pickle from pathlib import Path from typing import List, Any, Dict from PIL import Image from pathlib import Path from transformers import AutoTokenizer from sentence_transformers import SentenceTransformer, util from multilingual_clip import pt_multilingual_clip import torch from pathlib import Path from typing import Callable, Dict, List, Tuple from PIL.Image import Image print(__file__) os.environ["CUDA_VISIBLE_DEVICES"] = "" # do not use GPU logging.basicConfig(level=logging.INFO) DEFAULT_APPLICATION_NAME = "fashion-aggregator" APP_DIR = Path(__file__).resolve().parent # what is the directory for this application? FAVICON = APP_DIR / "t-shirt_1f455.png" # path to a small image for display in browser tab and social media README = APP_DIR / "README.md" # path to an app readme file in HTML/markdown DEFAULT_PORT = 11700 EMBEDDINGS_DIR = "artifacts/img-embeddings" EMBEDDINGS_FILE = os.path.join(EMBEDDINGS_DIR, "embeddings.pkl") RAW_PHOTOS_DIR = "artifacts/raw-photos" # Download image embeddings and raw photos wandb.login(key="4b5a23a662b20fdd61f2aeb5032cf56fdce278a4") # os.getenv('wandb') api = wandb.Api() artifact_embeddings = api.artifact("ryparmar/fashion-aggregator/unimoda-images:v1") artifact_embeddings.download(EMBEDDINGS_DIR) artifact_raw_photos = api.artifact("ryparmar/fashion-aggregator/unimoda-raw-images:v1") artifact_raw_photos.download("artifacts") with zipfile.ZipFile("artifacts/unimoda.zip", 'r') as zip_ref: zip_ref.extractall(RAW_PHOTOS_DIR) class TextEncoder: """Encodes the given text""" def __init__(self, model_path="M-CLIP/XLM-Roberta-Large-Vit-B-32"): self.model = pt_multilingual_clip.MultilingualCLIP.from_pretrained(model_path) self.tokenizer = AutoTokenizer.from_pretrained(model_path) @torch.no_grad() def encode(self, query: str) -> torch.Tensor: """Predict/infer text embedding for a given query.""" query_emb = self.model.forward([query], self.tokenizer) return query_emb class ImageEnoder: """Encodes the given image""" def __init__(self, model_path="clip-ViT-B-32"): self.model = SentenceTransformer(model_path) @torch.no_grad() def encode(self, image: Image) -> torch.Tensor: """Predict/infer text embedding for a given query.""" image_emb = self.model.encode([image], convert_to_tensor=True, show_progress_bar=False) return image_emb class Retriever: """Retrieves relevant images for a given text embedding.""" def __init__(self, image_embeddings_path=None): self.text_encoder = TextEncoder() self.image_encoder = ImageEnoder() with open(image_embeddings_path, "rb") as file: self.image_names, self.image_embeddings = pickle.load(file) self.image_names = [ img_name.replace("fashion-aggregator/fashion_aggregator/data/photos/", "") for img_name in self.image_names ] print("Images:", len(self.image_names)) @torch.no_grad() def predict(self, text_query: str, k: int = 10) -> List[Any]: """Return top-k relevant items for a given embedding""" query_emb = self.text_encoder.encode(text_query) relevant_images = util.semantic_search(query_emb, self.image_embeddings, top_k=k)[0] return relevant_images @torch.no_grad() def search_images(self, text_query: str, k: int = 6) -> Dict[str, List[Any]]: """Return top-k relevant images for a given embedding""" images = self.predict(text_query, k) paths_and_scores = {"path": [], "score": []} for img in images: paths_and_scores["path"].append(os.path.join(RAW_PHOTOS_DIR, self.image_names[img["corpus_id"]])) paths_and_scores["score"].append(img["score"]) return paths_and_scores def main(args): predictor = PredictorBackend(url=args.model_url) frontend = make_frontend(predictor.run, flagging=args.flagging, gantry=args.gantry, app_name=args.application) frontend.launch( # server_name="0.0.0.0", # make server accessible, binding all interfaces # noqa: S104 # server_port=args.port, # set a port to bind to, failing if unavailable # share=False, # should we create a (temporary) public link on https://gradio.app? # favicon_path=FAVICON, # what icon should we display in the address bar? ) def make_frontend( fn: Callable[[Image], str], flagging: bool = False, gantry: bool = False, app_name: str = "fashion-aggregator", theme = "Nymbo/Alyx_Theme" ): """Creates a gradio.Interface frontend for text to image search function.""" allow_flagging = "never" # build a basic browser interface to a Python function frontend = gr.Interface( theme="Nymbo/Alyx_Theme", fn=fn, # which Python function are we interacting with? outputs=gr.Gallery(label="Relevant Items"), # what input widgets does it need? we configure an image widget inputs=gr.components.Textbox(label="Item Description"), title="Fashion Aggregator", # what should we display at the top of the page? thumbnail=FAVICON, # what should we display when the link is shared, e.g. on social media? description=__doc__, # what should we display just above the interface? cache_examples=False, # should we cache those inputs for faster inference? slows down start allow_flagging=allow_flagging, # should we show users the option to "flag" outputs? flagging_options=["incorrect", "offensive", "other"], # what options do users have for feedback? ) return frontend class PredictorBackend: """Interface to a backend that serves predictions. To communicate with a backend accessible via a URL, provide the url kwarg. Otherwise, runs a predictor locally. """ def __init__(self, url=None): if url is not None: self.url = url self._predict = self._predict_from_endpoint else: model = Retriever(image_embeddings_path=EMBEDDINGS_FILE) self._predict = model.predict self._search_images = model.search_images def run(self, text: str): pred, metrics = self._predict_with_metrics(text) self._log_inference(pred, metrics) return pred def _predict_with_metrics(self, text: str) -> Tuple[List[str], Dict[str, float]]: paths_and_scores = self._search_images(text) metrics = {"mean_score": sum(paths_and_scores["score"]) / len(paths_and_scores["score"])} return paths_and_scores["path"], metrics def _log_inference(self, pred, metrics): for key, value in metrics.items(): logging.info(f"METRIC {key} {value}") logging.info(f"PRED >begin\n{pred}\nPRED >end") def _make_parser(): parser = argparse.ArgumentParser(description=__doc__) parser.add_argument( "--model_url", default=None, type=str, help="Identifies a URL to which to send image data. Data is base64-encoded, converted to a utf-8 string, and then set via a POST request as JSON with the key 'image'. Default is None, which instead sends the data to a model running locally.", ) parser.add_argument( "--port", default=DEFAULT_PORT, type=int, help=f"Port on which to expose this server. Default is {DEFAULT_PORT}.", ) parser.add_argument( "--flagging", action="store_true", help="Pass this flag to allow users to 'flag' model behavior and provide feedback.", ) parser.add_argument( "--gantry", action="store_true", help="Pass --flagging and this flag to log user feedback to Gantry. Requires GANTRY_API_KEY to be defined as an environment variable.", ) parser.add_argument( "--application", default=DEFAULT_APPLICATION_NAME, type=str, help=f"Name of the Gantry application to which feedback should be logged, if --gantry and --flagging are passed. Default is {DEFAULT_APPLICATION_NAME}.", ) return parser if __name__ == "__main__": parser = _make_parser() args = parser.parse_args() main(args)