# 🚀 Quick Start Guide ## Get Started in 3 Steps ### 1. Install Dependencies ```bash pip install -r requirements.txt ``` ### 2. Load the Model ```python from transformers import AutoModelForCausalLM, AutoTokenizer model = AutoModelForCausalLM.from_pretrained("9x25dillon/LFM2-8B-A1B-Dimensional-Entanglement") tokenizer = AutoTokenizer.from_pretrained("9x25dillon/LFM2-8B-A1B-Dimensional-Entanglement") ``` ### 3. Generate with Dimensional Awareness ```python prompt = "Explain how consciousness emerges from quantum processes" inputs = tokenizer(prompt, return_tensors="pt") outputs = model.generate(**inputs, max_length=512, temperature=0.7) response = tokenizer.decode(outputs[0], skip_special_tokens=True) print(response) ``` ## 🌌 Advanced Usage ### Explore Dimensional Entanglements ```python import sqlite3 # Connect to the dimensional database conn = sqlite3.connect("dimensional_entanglement.db") # Find high-strength entanglements cursor = conn.cursor() cursor.execute(""" SELECT n1.metadata, n2.metadata, e.strength FROM entanglements e JOIN dimensional_nodes n1 ON e.node_i = n1.node_id JOIN dimensional_nodes n2 ON e.node_j = n2.node_id ORDER BY e.strength DESC LIMIT 5 """) for concept1, concept2, strength in cursor.fetchall(): print(f"{concept1} ↔ {concept2} (strength: {strength:.3f})") ``` ### Generate Training Data ```python from dimensional_entanglement_database import DimensionalDatabase, TrainingDataGenerator # Load database and generate new training examples db = DimensionalDatabase("dimensional_entanglement.db") generator = TrainingDataGenerator(db) examples = generator.generate_training_data(num_examples=100) ``` ## 📊 What You Get - **25 dimensional nodes** across 5 domains - **124 entanglement relationships** - **Cross-dimensional reasoning** capabilities - **Holographic memory** integration - **Emergent pattern recognition** ## 🔗 Repository Structure ``` ├── README.md # Complete documentation ├── dimensional_entanglement_database.py # Core framework ├── luimennua.md # Theoretical foundation (3,725 lines) ├── luimennua_llm_bridge.py # Holographic memory bridge ├── dimensional_entanglement.db # SQLite knowledge base ├── training_data_emergent.jsonl # Generated training data ├── config_dimensional_entanglement.json # Model configuration ├── example_usage.py # Usage examples └── requirements.txt # Dependencies ``` ## 🎯 Next Steps 1. **Explore the database**: Query entanglements and discover cross-domain connections 2. **Generate more data**: Add your own concepts and create training examples 3. **Fine-tune**: Use the training data to enhance your own models 4. **Research**: Apply to your specific domain (physics, biology, AI, etc.) ## 🌟 Key Features - **Quantum-inspired learning**: Based on entanglement and superposition principles - **Multi-dimensional reasoning**: Concepts connected across domains - **Emergent intelligence**: Learns patterns that emerge from interactions - **Holographic processing**: Each part contains information about the whole --- *Ready to explore the dimensional entanglement framework? Start with the examples in `example_usage.py`!*