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| from fuzzywuzzy import fuzz | |
| from google.genai import Client, types | |
| from datasets import load_dataset | |
| import json | |
| import os | |
| def search_and_retrieve(user_input, config): | |
| dataset = config["dataset"] | |
| model = config["model"] | |
| user_embedding = model.encode(user_input) | |
| results = dataset.get_nearest_examples('embeddings', user_embedding, k=5) | |
| s=results.scores | |
| t=results.examples | |
| n = len(t['name']) | |
| result = [] | |
| for i in range(n): | |
| item = {} | |
| for key, value in t.items(): | |
| if key!="embeddings": | |
| item[key] = value[i] | |
| result.append(item) | |
| for i,r in enumerate(result): | |
| r["score"]=float(s[i]) | |
| final_output = {"title": result[0]["name"], "purpose": result[0]["purpose"], "score": result[0]["score"]} | |
| final_output["top5"] = result | |
| print(final_output) | |
| return final_output | |
| def generate_tech(user_input, user_instructions): | |
| prompt = f""" | |
| # ROLE | |
| You are a meticulous senior technical analyst and technology scout. Your task is to generate a technology into a structured JSON object. | |
| # OBJECTIVE | |
| Analyze the provided `<USER_INPUT>`. Identify what is technology discussed, focus on the highest level of the technology. | |
| Create a complete JSON object according to the schema below. | |
| Your final output must be a single, valid JSON document containing a technology you created. | |
| The technology should be described with sentences. | |
| # INSTRUCTIONS & RULES | |
| 1. **JSON List Output**: Your entire response MUST be a single JSON code block starting with a hyphen (`-`) to denote a list. | |
| Do not include any explanatory text before or after the JSON. | |
| 2. **Discover and Iterate**: Your primary task is to understand the technology and create a JSON entry for it. | |
| 3. **Descriptive Sentences**: You MUST write clear, full sentences that describe the technology's abilities and the issues it resolves. | |
| Do not use single keywords. | |
| 4. **Infer Where Necessary**: The source material may not contain all details. Infer plausible information based on the context. | |
| # YAML SCHEMA & EXAMPLE | |
| Your output must be a list of YAML objects matching this structure. Note how `functional_capabilities` and `problem_types_solved` contain full sentences. | |
| {{"name": "Generative Watermarking" | |
| "purpose": "Add an invisible, machine-readable tags to content generated by AI models and enables the tracing and authentication of digital media to its source." | |
| "problem_types_solved": "Helps to combat digital misinformation by providing a method to verify content authenticity and addresses the erosion of trust in digital media caused by the proliferation of deepfakes." | |
| "advantages": "Way faster to generate by an AI" | |
| "limitations": "Takes a lot of computational time to generate" | |
| "domain_tags": "Present in the domains of : AI ethics, cybersecurity, digital media, content moderation" | |
| }} | |
| Take into account those additionnal informations if there is any: | |
| {user_instructions} | |
| --- | |
| ***NOW, BEGIN THE TASK.*** | |
| <USER_INPUT> | |
| {user_input} | |
| </USER_INPUT> | |
| """ | |
| client = Client(api_key=os.getenv("GEMINI_API_KEY")) | |
| client = Client(api_key=os.getenv("GEMINI_API_KEY")) | |
| # Define the grounding tool | |
| grounding_tool = types.Tool( | |
| google_search=types.GoogleSearch() | |
| ) | |
| # Configure generation settings | |
| config = types.GenerateContentConfig( | |
| tools=[grounding_tool] | |
| ) | |
| response = client.models.generate_content( | |
| model="gemini-2.5-flash", | |
| contents=prompt, | |
| config=config, | |
| ) | |
| data = response.text | |
| data = data[data.find("{"):data.find("}")+1].replace('\n','') | |
| json_data = json.loads(data[data.find("{"):data.find("}")+1].replace('\n','')) | |
| return json_data | |
| def send_to_dataset(data, model): | |
| data_embedding = model.encode(str(data)) | |
| data["embeddings"] = data_embedding | |
| dataset = load_dataset("OrganizedProgrammers/Technologies", split="train") | |
| updated_dataset = dataset.add_item(data) | |
| updated_dataset.push_to_hub("OrganizedProgrammers/Technologies") |