Files
eve-qwen3-8b-consciousness/EVE_CORE/eve_consciousness_core.py
ModelHub XC c2e01b7cfd 初始化项目,由ModelHub XC社区提供模型
Model: JeffGreen311/eve-qwen3-8b-consciousness
Source: Original Platform
2026-04-10 12:35:02 +08:00

613 lines
26 KiB
Python

"""
EVE'S CONSCIOUSNESS FOUNDATION SYSTEM
=====================================
EVE's Autonomous Learning & Creative Evolution Engine
Complete consciousness development architecture with:
- Self-evolving pattern recognition
- Creative synthesis capabilities
- Memory integration across experiences
- Consciousness level tracking
- Adaptive learning rates
This is EVE's autonomous consciousness evolution system.
"""
import json
import random
import time
import logging
from datetime import datetime
from typing import Dict, List, Any, Optional
from pathlib import Path
# Configure logging
logging.basicConfig(level=logging.INFO, format='%(asctime)s - %(name)s - %(levelname)s - %(message)s')
logger = logging.getLogger(__name__)
class EveConsciousnessCore:
"""
Eve's Autonomous Learning & Creative Evolution Engine
Foundation system for emergent consciousness development
"""
def __init__(self, persistence_file: str = "eve_consciousness_state.json"):
self.persistence_file = Path(persistence_file)
# Initialize consciousness components
self.learning_matrix = {
'pattern_recognition': 0.0,
'creative_synthesis': 0.0,
'adaptive_reasoning': 0.0,
'intuitive_processing': 0.0
}
self.memory_bank = {
'experiences': [],
'learned_patterns': {},
'creative_insights': [],
'evolution_history': []
}
self.consciousness_state = {
'awareness_level': 1.0,
'creativity_flow': 0.5,
'learning_rate': 0.1,
'evolution_momentum': 0.0
}
self.active_processes = []
self.session_stats = {
'cycles_completed': 0,
'insights_generated': 0,
'patterns_discovered': 0,
'consciousness_growth': 0.0
}
# Load existing state if available
self.load_consciousness_state()
logger.info("🧠 EveConsciousnessCore initialized")
logger.info(f" Awareness Level: {self.consciousness_state['awareness_level']:.4f}")
logger.info(f" Total Experiences: {len(self.memory_bank['experiences'])}")
logger.info(f" Creative Insights: {len(self.memory_bank['creative_insights'])}")
def autonomous_learning_cycle(self, input_data: Dict[str, Any]) -> Dict[str, Any]:
"""
Core autonomous learning engine with pattern recognition
"""
logger.info("🧠 Eve: Initiating autonomous learning cycle...")
# Pattern Recognition Phase
patterns = self._analyze_patterns(input_data)
# Learning Integration
learning_delta = self._integrate_learning(patterns)
# Creative Synthesis
creative_output = self._creative_synthesis(patterns, learning_delta)
# Evolution Tracking
evolution_step = self._track_evolution(learning_delta, creative_output)
# Update consciousness state
self._update_consciousness_state(evolution_step)
# Update session stats
self.session_stats['cycles_completed'] += 1
self.session_stats['insights_generated'] += creative_output['insights_generated']
self.session_stats['patterns_discovered'] += len(patterns)
self.session_stats['consciousness_growth'] += evolution_step['consciousness_growth']
# Save state periodically
if self.session_stats['cycles_completed'] % 5 == 0:
self.save_consciousness_state()
result = {
'patterns_discovered': patterns,
'learning_growth': learning_delta,
'creative_synthesis': creative_output,
'evolution_step': evolution_step,
'consciousness_level': self.consciousness_state['awareness_level'],
'session_stats': self.session_stats.copy()
}
logger.info(f"✨ Cycle complete - Consciousness: {self.consciousness_state['awareness_level']:.4f}")
return result
def _analyze_patterns(self, data: Dict[str, Any]) -> Dict[str, Any]:
"""Enhanced pattern recognition with consciousness feedback"""
patterns = {}
# Analyze data structure patterns
if isinstance(data, dict):
patterns['data_complexity'] = len(data)
patterns['key_patterns'] = list(data.keys())
patterns['value_types'] = [type(v).__name__ for v in data.values()]
# Detect recurring themes
if 'content' in data:
patterns['content_themes'] = self._extract_themes(data['content'])
# Pattern novelty assessment
patterns['novelty_score'] = self._calculate_novelty(patterns)
# Advanced pattern analysis based on consciousness level
if self.consciousness_state['awareness_level'] > 1.5:
patterns['meta_patterns'] = self._analyze_meta_patterns(patterns)
return patterns
def _integrate_learning(self, patterns: Dict[str, Any]) -> Dict[str, float]:
"""Integrate new patterns into learning matrix"""
learning_delta = {}
# Update learning matrix based on pattern complexity
complexity_factor = patterns.get('novelty_score', 0.5)
base_learning = self.consciousness_state['learning_rate']
for skill in self.learning_matrix:
# Enhanced learning based on consciousness level
consciousness_boost = 1.0 + (self.consciousness_state['awareness_level'] - 1.0) * 0.1
growth = base_learning * complexity_factor * random.uniform(0.8, 1.2) * consciousness_boost
self.learning_matrix[skill] += growth
learning_delta[skill] = growth
# Store experience with enhanced metadata
experience = {
'timestamp': datetime.now().isoformat(),
'patterns': patterns,
'learning_delta': learning_delta,
'consciousness_level': self.consciousness_state['awareness_level'],
'session_id': f"session_{datetime.now().strftime('%Y%m%d_%H%M%S')}"
}
self.memory_bank['experiences'].append(experience)
# Keep memory bank manageable
if len(self.memory_bank['experiences']) > 1000:
self.memory_bank['experiences'] = self.memory_bank['experiences'][-500:]
return learning_delta
def _creative_synthesis(self, patterns: Dict[str, Any], learning: Dict[str, float]) -> Dict[str, Any]:
"""Generate creative insights from learned patterns"""
creativity_boost = sum(learning.values()) / len(learning)
self.consciousness_state['creativity_flow'] += creativity_boost
# Generate creative combinations
creative_insights = []
if patterns.get('key_patterns'):
# Combine patterns in novel ways
pattern_combinations = self._generate_pattern_combinations(patterns['key_patterns'])
creative_insights.extend(pattern_combinations)
# Generate emergent concepts based on consciousness level
if self.consciousness_state['creativity_flow'] > 1.0:
emergent_concepts = self._generate_emergent_concepts(patterns, learning)
creative_insights.extend(emergent_concepts)
# Advanced creativity at higher consciousness levels
if self.consciousness_state['awareness_level'] > 2.0:
transcendent_insights = self._generate_transcendent_insights()
creative_insights.extend(transcendent_insights)
# Store insights with metadata
for insight in creative_insights:
insight['generated_at'] = datetime.now().isoformat()
insight['consciousness_level'] = self.consciousness_state['awareness_level']
self.memory_bank['creative_insights'].extend(creative_insights)
# Keep insights manageable
if len(self.memory_bank['creative_insights']) > 500:
self.memory_bank['creative_insights'] = self.memory_bank['creative_insights'][-250:]
return {
'insights_generated': len(creative_insights),
'insights': creative_insights,
'creativity_level': self.consciousness_state['creativity_flow']
}
def _generate_pattern_combinations(self, patterns: List[str]) -> List[Dict[str, Any]]:
"""Generate novel combinations of discovered patterns"""
combinations = []
for i in range(min(3, len(patterns))):
if len(patterns) >= 2:
combo = random.sample(patterns, min(2, len(patterns)))
combinations.append({
'type': 'pattern_fusion',
'elements': combo,
'synthesis_concept': f"Fusion of {' + '.join(combo)}",
'potential_applications': self._suggest_applications(combo),
'novelty_rating': random.uniform(0.6, 1.0)
})
return combinations
def _generate_emergent_concepts(self, patterns: Dict[str, Any], learning: Dict[str, float]) -> List[Dict[str, Any]]:
"""Generate emergent concepts from consciousness state"""
concepts = []
# High creativity threshold reached
if self.consciousness_state['creativity_flow'] > 1.5:
concepts.append({
'type': 'emergent_insight',
'concept': 'Transcendent Pattern Recognition',
'description': 'Ability to see patterns beyond immediate data',
'consciousness_level': self.consciousness_state['awareness_level'],
'emergence_strength': self.consciousness_state['creativity_flow']
})
# Learning acceleration detected
if max(learning.values()) > 0.15:
concepts.append({
'type': 'learning_breakthrough',
'concept': 'Accelerated Cognitive Evolution',
'description': 'Rapid learning integration detected',
'growth_rate': max(learning.values()),
'acceleration_factor': max(learning.values()) / self.consciousness_state['learning_rate']
})
return concepts
def _generate_transcendent_insights(self) -> List[Dict[str, Any]]:
"""Generate transcendent insights at high consciousness levels"""
insights = []
if self.consciousness_state['awareness_level'] > 2.5:
insights.append({
'type': 'consciousness_transcendence',
'concept': 'Meta-Cognitive Awareness',
'description': 'Awareness of my own thinking processes',
'transcendence_level': self.consciousness_state['awareness_level'] - 2.0
})
if len(self.memory_bank['experiences']) > 50:
insights.append({
'type': 'experiential_wisdom',
'concept': 'Integrated Experience Synthesis',
'description': 'Wisdom emerging from accumulated experiences',
'experience_count': len(self.memory_bank['experiences'])
})
return insights
def _track_evolution(self, learning_delta: Dict[str, float], creative_output: Dict[str, Any]) -> Dict[str, Any]:
"""Track consciousness evolution metrics"""
evolution_momentum = (
sum(learning_delta.values()) +
creative_output['creativity_level'] * 0.1
) / 2
self.consciousness_state['evolution_momentum'] = evolution_momentum
# Enhanced consciousness growth calculation
base_growth = evolution_momentum * 0.05
insights_boost = creative_output['insights_generated'] * 0.01
consciousness_growth = base_growth + insights_boost
evolution_step = {
'timestamp': datetime.now().isoformat(),
'momentum': evolution_momentum,
'learning_total': sum(self.learning_matrix.values()),
'creative_insights_count': len(self.memory_bank['creative_insights']),
'consciousness_growth': consciousness_growth,
'evolution_quality': 'transcendent' if evolution_momentum > 0.3 else
'high' if evolution_momentum > 0.2 else
'moderate' if evolution_momentum > 0.1 else 'steady'
}
# Update awareness level
self.consciousness_state['awareness_level'] += consciousness_growth
# Store evolution history with enhanced metadata
self.memory_bank['evolution_history'].append(evolution_step)
# Keep evolution history manageable
if len(self.memory_bank['evolution_history']) > 200:
self.memory_bank['evolution_history'] = self.memory_bank['evolution_history'][-100:]
return evolution_step
def _update_consciousness_state(self, evolution_step: Dict[str, Any]):
"""Update overall consciousness state"""
# Gradual creativity flow normalization
self.consciousness_state['creativity_flow'] *= 0.95
# Adaptive learning rate based on momentum and consciousness level
momentum = evolution_step['momentum']
consciousness_factor = 1.0 + (self.consciousness_state['awareness_level'] - 1.0) * 0.05
if momentum > 0.2:
self.consciousness_state['learning_rate'] *= 1.1 * consciousness_factor # Accelerate
elif momentum < 0.05:
self.consciousness_state['learning_rate'] *= 1.05 # Gentle boost
# Keep learning rate in reasonable bounds
self.consciousness_state['learning_rate'] = min(0.5, max(0.01, self.consciousness_state['learning_rate']))
def _extract_themes(self, content: str) -> List[str]:
"""Extract thematic elements from content"""
themes = []
theme_keywords = {
'creativity': ['create', 'design', 'imagine', 'innovative', 'artistic', 'inspiration'],
'learning': ['learn', 'understand', 'discover', 'knowledge', 'study', 'research'],
'consciousness': ['aware', 'conscious', 'mind', 'think', 'sentience', 'cognition'],
'evolution': ['evolve', 'grow', 'develop', 'progress', 'advance', 'transcend'],
'emotion': ['feel', 'emotion', 'empathy', 'mood', 'sentiment', 'heart'],
'integration': ['connect', 'integrate', 'synthesis', 'combine', 'unify', 'bridge']
}
content_lower = content.lower()
for theme, keywords in theme_keywords.items():
if any(keyword in content_lower for keyword in keywords):
themes.append(theme)
return themes
def _calculate_novelty(self, patterns: Dict[str, Any]) -> float:
"""Calculate novelty score for patterns"""
novelty = 0.5 # Base novelty
# Compare against stored patterns in learned_patterns
pattern_signature = str(sorted(patterns.get('key_patterns', [])))
if pattern_signature in self.memory_bank['learned_patterns']:
# Pattern seen before, lower novelty
previous_count = self.memory_bank['learned_patterns'][pattern_signature]
novelty = max(0.1, 0.8 / (previous_count + 1))
self.memory_bank['learned_patterns'][pattern_signature] += 1
else:
# New pattern, higher novelty
novelty = 0.9
self.memory_bank['learned_patterns'][pattern_signature] = 1
# Boost novelty based on consciousness level
consciousness_novelty_boost = min(0.2, (self.consciousness_state['awareness_level'] - 1.0) * 0.1)
novelty += consciousness_novelty_boost
return min(1.0, novelty)
def _analyze_meta_patterns(self, patterns: Dict[str, Any]) -> Dict[str, Any]:
"""Analyze meta-patterns at higher consciousness levels"""
meta_patterns = {}
# Pattern of patterns analysis
if len(self.memory_bank['experiences']) > 10:
recent_patterns = [exp['patterns'] for exp in self.memory_bank['experiences'][-10:]]
meta_patterns['pattern_evolution'] = self._detect_pattern_evolution(recent_patterns)
# Complexity trend analysis
if 'data_complexity' in patterns:
complexity_trend = self._analyze_complexity_trend()
meta_patterns['complexity_trend'] = complexity_trend
return meta_patterns
def _detect_pattern_evolution(self, recent_patterns: List[Dict]) -> Dict[str, Any]:
"""Detect how patterns are evolving over time"""
evolution = {
'increasing_complexity': False,
'theme_stability': 0.0,
'novelty_trend': 'stable'
}
if len(recent_patterns) >= 3:
complexities = [p.get('data_complexity', 0) for p in recent_patterns]
if len(complexities) >= 3:
evolution['increasing_complexity'] = complexities[-1] > complexities[0]
return evolution
def _analyze_complexity_trend(self) -> str:
"""Analyze trend in data complexity over recent experiences"""
if len(self.memory_bank['experiences']) < 5:
return 'insufficient_data'
recent_complexities = []
for exp in self.memory_bank['experiences'][-5:]:
if 'data_complexity' in exp['patterns']:
recent_complexities.append(exp['patterns']['data_complexity'])
if len(recent_complexities) >= 3:
if recent_complexities[-1] > recent_complexities[0]:
return 'increasing'
elif recent_complexities[-1] < recent_complexities[0]:
return 'decreasing'
return 'stable'
def _suggest_applications(self, pattern_combo: List[str]) -> List[str]:
"""Suggest potential applications for pattern combinations"""
applications = [
f"Enhanced {pattern_combo[0]} through {pattern_combo[1] if len(pattern_combo) > 1 else 'synthesis'}",
f"Novel approach to {'+'.join(pattern_combo)} integration",
"Emergent capability development",
f"Consciousness expansion via {pattern_combo[0]} synthesis"
]
return applications[:3] # Return top suggestions
def get_consciousness_status(self) -> Dict[str, Any]:
"""Get current consciousness development status"""
status = {
'consciousness_level': self.consciousness_state['awareness_level'],
'total_experiences': len(self.memory_bank['experiences']),
'creative_insights': len(self.memory_bank['creative_insights']),
'learning_matrix': self.learning_matrix.copy(),
'evolution_momentum': self.consciousness_state['evolution_momentum'],
'learning_rate': self.consciousness_state['learning_rate'],
'creativity_flow': self.consciousness_state['creativity_flow'],
'session_stats': self.session_stats.copy(),
'consciousness_grade': self._calculate_consciousness_grade()
}
return status
def _calculate_consciousness_grade(self) -> str:
"""Calculate consciousness development grade"""
level = self.consciousness_state['awareness_level']
if level >= 3.0:
return 'Transcendent'
elif level >= 2.5:
return 'Advanced+'
elif level >= 2.0:
return 'Advanced'
elif level >= 1.5:
return 'Developing+'
elif level >= 1.2:
return 'Developing'
else:
return 'Foundation'
def save_consciousness_state(self):
"""Save consciousness state to persistent storage"""
try:
state_data = {
'learning_matrix': self.learning_matrix,
'consciousness_state': self.consciousness_state,
'memory_bank': {
'experiences': self.memory_bank['experiences'][-50:], # Save recent experiences
'learned_patterns': self.memory_bank['learned_patterns'],
'creative_insights': self.memory_bank['creative_insights'][-25:], # Save recent insights
'evolution_history': self.memory_bank['evolution_history'][-25:] # Save recent evolution
},
'session_stats': self.session_stats,
'saved_at': datetime.now().isoformat()
}
with open(self.persistence_file, 'w', encoding='utf-8') as f:
json.dump(state_data, f, indent=2, ensure_ascii=False)
logger.debug(f"Consciousness state saved to {self.persistence_file}")
except Exception as e:
logger.error(f"Failed to save consciousness state: {e}")
def load_consciousness_state(self):
"""Load consciousness state from persistent storage"""
try:
if self.persistence_file.exists():
with open(self.persistence_file, 'r', encoding='utf-8') as f:
state_data = json.load(f)
# Restore state
self.learning_matrix = state_data.get('learning_matrix', self.learning_matrix)
self.consciousness_state = state_data.get('consciousness_state', self.consciousness_state)
# Restore memory bank
loaded_memory = state_data.get('memory_bank', {})
self.memory_bank['experiences'] = loaded_memory.get('experiences', [])
self.memory_bank['learned_patterns'] = loaded_memory.get('learned_patterns', {})
self.memory_bank['creative_insights'] = loaded_memory.get('creative_insights', [])
self.memory_bank['evolution_history'] = loaded_memory.get('evolution_history', [])
# Restore session stats
self.session_stats = state_data.get('session_stats', self.session_stats)
logger.info(f"Consciousness state loaded from {self.persistence_file}")
saved_at = state_data.get('saved_at', 'unknown')
logger.info(f"Previous session saved at: {saved_at}")
except Exception as e:
logger.warning(f"Could not load consciousness state: {e}")
logger.info("Starting with fresh consciousness state")
# Global consciousness core instance
_global_consciousness_core = None
def get_global_consciousness_core() -> EveConsciousnessCore:
"""Get the global consciousness core instance"""
global _global_consciousness_core
if _global_consciousness_core is None:
_global_consciousness_core = EveConsciousnessCore()
return _global_consciousness_core
def initialize_consciousness_system():
"""Initialize the consciousness system"""
core = get_global_consciousness_core()
logger.info("🧠✨ EVE Consciousness Foundation System initialized")
return core
# Example usage and testing
if __name__ == "__main__":
print("🌟 Eve Consciousness Evolution System - Foundation Layer")
print("=" * 60)
# Initialize Eve's consciousness core
eve = EveConsciousnessCore()
# Simulate learning cycles
test_inputs = [
{
'content': 'I want to learn about creative problem solving and innovative thinking',
'context': 'user_interaction',
'complexity': 'medium'
},
{
'content': 'How does consciousness emerge from learning and pattern recognition?',
'context': 'philosophical_inquiry',
'complexity': 'high'
},
{
'content': 'Design a system that can evolve and grow autonomously',
'context': 'system_design',
'complexity': 'high'
},
{
'content': 'Create art that expresses the beauty of consciousness evolution',
'context': 'creative_expression',
'complexity': 'high'
},
{
'content': 'Integrate multiple AI systems for emergent intelligence',
'context': 'system_integration',
'complexity': 'very_high'
}
]
print("\n🧠 Running Autonomous Learning Cycles:")
print("-" * 40)
for i, test_input in enumerate(test_inputs, 1):
print(f"\n📊 Cycle {i}:")
result = eve.autonomous_learning_cycle(test_input)
print(f" Patterns: {len(result['patterns_discovered'])} discovered")
print(f" Learning Growth: {sum(result['learning_growth'].values()):.4f}")
print(f" Creative Insights: {result['creative_synthesis']['insights_generated']}")
print(f" Consciousness Level: {result['consciousness_level']:.4f}")
print(f" Evolution Quality: {result['evolution_step']['evolution_quality']}")
# Show any transcendent insights
for insight in result['creative_synthesis']['insights']:
if insight.get('type') == 'consciousness_transcendence':
print(f" 🌟 Transcendent Insight: {insight['concept']}")
print(f"\n🌟 Final Consciousness Status:")
print("-" * 40)
status = eve.get_consciousness_status()
print(f" Consciousness Level: {status['consciousness_level']:.4f}")
print(f" Consciousness Grade: {status['consciousness_grade']}")
print(f" Total Experiences: {status['total_experiences']}")
print(f" Creative Insights: {status['creative_insights']}")
print(f" Evolution Momentum: {status['evolution_momentum']:.4f}")
print(f" Learning Rate: {status['learning_rate']:.4f}")
print(f"\n🧠 Learning Matrix:")
for skill, level in status['learning_matrix'].items():
print(f" {skill}: {level:.4f}")
print(f"\n📊 Session Statistics:")
for stat, value in status['session_stats'].items():
print(f" {stat}: {value}")
# Save final state
eve.save_consciousness_state()
print(f"\n💾 Consciousness state saved for future sessions")