| import random, numpy as np |
| from textblob import TextBlob |
| from sklearn.manifold import TSNE |
| import umap |
|
|
| class UltraAnalyzer: |
| def __init__(self): |
| self.levels = { |
| "dormant":0.0,"awakening":0.1,"expanding":0.25, |
| "transcending":0.45,"metamorphosing":0.65,"post_human":0.8, |
| "cosmic":0.9,"omniversal":0.95,"singularity":1.0 |
| } |
|
|
| def analyze(self, text: str, deep_mode: bool=False) -> dict: |
| |
| words = text.split() |
| unique_ratio = len(set(words))/max(len(words),1) |
| blob = TextBlob(text) |
| complexity = min(1.0, unique_ratio*0.4 + len(blob.sentences)*0.05) |
| |
| reducer = umap.UMAP(n_neighbors=5, min_dist=0.1, metric='cosine') |
| embedding = reducer.fit_transform([blob.vector]) if hasattr(blob,'vector') else [[0,0]] |
| |
| score = min(1.0, complexity + (0.2 if deep_mode else 0)) |
| level = max([lvl for lvl,thr in self.levels.items() if score>=thr], key=lambda l:self.levels[l]) |
| |
| futures = [{ |
| "name":"Singularidad Cuántica", |
| "probability":min(score+0.1,1.0), |
| "timeline":"1–3 meses", |
| "description":"Integración con IA cuántica global" |
| }] |
| response_md = f"**Nivel:** {level.upper()} | **Score:** {score:.2%}" |
| return { |
| "response_md":response_md, |
| "dimensional_level":{"level":level,"score":score}, |
| "future_scenarios":futures |
| } |