from transformers import FlaxAutoModelForSeq2SeqLM, AutoTokenizer, AutoModel import torch import numpy as np import random import json from fastapi import FastAPI from fastapi.responses import JSONResponse from pydantic import BaseModel # Lade RecipeBERT Modell bert_model_name = "alexdseo/RecipeBERT" bert_tokenizer = AutoTokenizer.from_pretrained(bert_model_name) bert_model = AutoModel.from_pretrained(bert_model_name) bert_model.eval() # Lade T5 Rezeptgenerierungsmodell MODEL_NAME_OR_PATH = "flax-community/t5-recipe-generation" t5_tokenizer = AutoTokenizer.from_pretrained(MODEL_NAME_OR_PATH, use_fast=True) t5_model = FlaxAutoModelForSeq2SeqLM.from_pretrained(MODEL_NAME_OR_PATH) # Token Mapping special_tokens = t5_tokenizer.all_special_tokens tokens_map = { "": "--", "
": "\n" } # --- Deine Helper-Funktionen (get_embedding, average_embedding, get_cosine_similarity, etc.) --- # Kopiere alle diese Funktionen von deinem aktuellen app.py hierher. # Ich kürze sie hier aus Platzgründen, aber sie müssen vollständig eingefügt werden. def get_embedding(text): inputs = bert_tokenizer(text, return_tensors="pt", truncation=True, padding=True) with torch.no_grad(): outputs = bert_model(**inputs) attention_mask = inputs['attention_mask'] token_embeddings = outputs.last_hidden_state input_mask_expanded = attention_mask.unsqueeze(-1).expand(token_embeddings.size()).float() sum_embeddings = torch.sum(token_embeddings * input_mask_expanded, 1) sum_mask = torch.clamp(input_mask_expanded.sum(1), min=1e-9) return (sum_embeddings / sum_mask).squeeze(0) def average_embedding(embedding_list): tensors = torch.stack([emb for _, emb in embedding_list]) return tensors.mean(dim=0) def get_cosine_similarity(vec1, vec2): if torch.is_tensor(vec1): vec1 = vec1.detach().numpy() if torch.is_tensor(vec2): vec2 = vec2.detach().numpy() vec1 = vec1.flatten() vec2 = vec2.flatten() dot_product = np.dot(vec1, vec2) norm_a = np.linalg.norm(vec1) norm_b = np.linalg.norm(vec2) if norm_a == 0 or norm_b == 0: return 0 return dot_product / (norm_a * norm_b) def get_combined_scores(query_vector, embedding_list, all_good_embeddings, avg_weight=0.6): results = [] for name, emb in embedding_list: avg_similarity = get_cosine_similarity(query_vector, emb) individual_similarities = [get_cosine_similarity(good_emb, emb) for _, good_emb in all_good_embeddings] avg_individual_similarity = sum(individual_similarities) / len(individual_similarities) combined_score = avg_weight * avg_similarity + (1 - avg_weight) * avg_individual_similarity results.append((name, emb, combined_score)) results.sort(key=lambda x: x[2], reverse=True) return results def find_best_ingredients(required_ingredients, available_ingredients, max_ingredients=6, avg_weight=0.6): required_ingredients = list(set(required_ingredients)) available_ingredients = list(set([i for i in available_ingredients if i not in required_ingredients])) if not required_ingredients and available_ingredients: random_ingredient = random.choice(available_ingredients) required_ingredients = [random_ingredient] available_ingredients = [i for i in available_ingredients if i != random_ingredient] if not required_ingredients or len(required_ingredients) >= max_ingredients: return required_ingredients[:max_ingredients] if not available_ingredients: return required_ingredients embed_required = [(e, get_embedding(e)) for e in required_ingredients] embed_available = [(e, get_embedding(e)) for e in available_ingredients] num_to_add = min(max_ingredients - len(required_ingredients), len(available_ingredients)) final_ingredients = embed_required.copy() for _ in range(num_to_add): avg = average_embedding(final_ingredients) candidates = get_combined_scores(avg, embed_available, final_ingredients, avg_weight) if not candidates: break best_name, best_embedding, _ = candidates[0] final_ingredients.append((best_name, best_embedding)) embed_available = [item for item in embed_available if item[0] != best_name] return [name for name, _ in final_ingredients] def skip_special_tokens(text, special_tokens): for token in special_tokens: text = text.replace(token, "") return text def target_postprocessing(texts, special_tokens): if not isinstance(texts, list): texts = [texts] new_texts = [] for text in texts: text = skip_special_tokens(text, special_tokens) for k, v in tokens_map.items(): text = text.replace(k, v) new_texts.append(text) return new_texts def validate_recipe_ingredients(recipe_ingredients, expected_ingredients, tolerance=0): recipe_count = len([ing for ing in recipe_ingredients if ing and ing.strip()]) expected_count = len(expected_ingredients) return abs(recipe_count - expected_count) == tolerance def generate_recipe_with_t5(ingredients_list, max_retries=5): original_ingredients = ingredients_list.copy() for attempt in range(max_retries): try: if attempt > 0: current_ingredients = original_ingredients.copy() random.shuffle(current_ingredients) else: current_ingredients = ingredients_list ingredients_string = ", ".join(current_ingredients) prefix = "items: " generation_kwargs = { "max_length": 512, "min_length": 64, "do_sample": True, "top_k": 60, "top_p": 0.95 } inputs = t5_tokenizer( prefix + ingredients_string, max_length=256, padding="max_length", truncation=True, return_tensors="jax" ) output_ids = t5_model.generate( input_ids=inputs.input_ids, attention_mask=inputs.attention_mask, **generation_kwargs ) generated = output_ids.sequences generated_text = target_postprocessing(t5_tokenizer.batch_decode(generated, skip_special_tokens=False), special_tokens)[0] recipe = {} sections = generated_text.split("\n") for section in sections: section = section.strip() if section.startswith("title:"): recipe["title"] = section.replace("title:", "").strip().capitalize() elif section.startswith("ingredients:"): ingredients_text = section.replace("ingredients:", "").strip() recipe["ingredients"] = [item.strip().capitalize() for item in ingredients_text.split("--") if item.strip()] elif section.startswith("directions:"): directions_text = section.replace("directions:", "").strip() recipe["directions"] = [step.strip().capitalize() for step in directions_text.split("--") if step.strip()] if "title" not in recipe: recipe["title"] = f"Rezept mit {', '.join(current_ingredients[:3])}" if "ingredients" not in recipe: recipe["ingredients"] = current_ingredients if "directions" not in recipe: recipe["directions"] = ["Keine Anweisungen generiert"] if validate_recipe_ingredients(recipe["ingredients"], original_ingredients): return recipe else: if attempt == max_retries - 1: return recipe except Exception as e: if attempt == max_retries - 1: return { "title": f"Rezept mit {original_ingredients[0] if original_ingredients else 'Zutaten'}", "ingredients": original_ingredients, "directions": ["Fehler beim Generieren der Rezeptanweisungen"] } return { "title": f"Rezept mit {original_ingredients[0] if original_ingredients else 'Zutaten'}", "ingredients": original_ingredients, "directions": ["Fehler beim Generieren der Rezeptanweisungen"] } # Kernlogik, die von der FastAPI-Route aufgerufen wird def process_recipe_request_logic(required_ingredients, available_ingredients, max_ingredients, max_retries): """ Kernlogik zur Verarbeitung einer Rezeptgenerierungsanfrage. """ if not required_ingredients and not available_ingredients: return {"error": "Keine Zutaten angegeben"} try: optimized_ingredients = find_best_ingredients( required_ingredients, available_ingredients, max_ingredients ) recipe = generate_recipe_with_t5(optimized_ingredients, max_retries) result = { 'title': recipe['title'], 'ingredients': recipe['ingredients'], 'directions': recipe['directions'], 'used_ingredients': optimized_ingredients } return result except Exception as e: return {"error": f"Fehler bei der Rezeptgenerierung: {str(e)}"} # --- FastAPI-Implementierung --- app = FastAPI() # Deine FastAPI-Instanz class RecipeRequest(BaseModel): required_ingredients: list[str] = [] available_ingredients: list[str] = [] max_ingredients: int = 7 max_retries: int = 5 # Abwärtskompatibilität: Falls 'ingredients' als Top-Level-Feld gesendet wird ingredients: list[str] = [] @app.post("/generate_recipe") # Der API-Endpunkt für Flutter async def generate_recipe_api(request_data: RecipeRequest): """ Standard-REST-API-Endpunkt für die Flutter-App. Nimmt direkt JSON-Daten an und gibt direkt JSON zurück. """ final_required_ingredients = request_data.required_ingredients if not final_required_ingredients and request_data.ingredients: final_required_ingredients = request_data.ingredients result_dict = process_recipe_request_logic( final_required_ingredients, request_data.available_ingredients, request_data.max_ingredients, request_data.max_retries ) return JSONResponse(content=result_dict) print("INFO: FastAPI application script finished execution and defined 'app' variable.")