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""" |
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Autonomous Agent Behavior Demonstration |
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Shows advanced planning, reasoning, and execution capabilities |
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""" |
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import asyncio |
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import json |
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import logging |
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from datetime import datetime |
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from typing import Dict, List, Any |
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from autonomous_engine import AutonomousAgent, demo_autonomous_behavior |
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from enterprise.enterprise_agent import EnterpriseAgent |
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from consumer.consumer_agent import ConsumerAgent |
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from creative.creative_agent import CreativeAgent |
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from voice.voice_agent import VoiceAgent |
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logging.basicConfig(level=logging.INFO) |
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logger = logging.getLogger(__name__) |
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class AutonomousDemoSuite: |
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"""Comprehensive demo suite for autonomous agent capabilities.""" |
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def __init__(self): |
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self.agents = { |
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"enterprise": EnterpriseAgent(), |
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"consumer": ConsumerAgent(), |
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"creative": CreativeAgent(), |
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"voice": VoiceAgent() |
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} |
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self.demo_results = [] |
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async def run_comprehensive_demo(self): |
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"""Run comprehensive demonstration of autonomous agent behavior.""" |
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print("π€ SECURE AI AGENTS SUITE - AUTONOMOUS BEHAVIOR DEMONSTRATION") |
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print("=" * 80) |
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print(f"Demo started at: {datetime.now().strftime('%Y-%m-%d %H:%M:%S UTC')}") |
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print() |
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await self.demo_autonomous_engine() |
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await self.demo_enterprise_autonomous() |
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await self.demo_consumer_autonomous() |
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await self.demo_creative_autonomous() |
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await self.demo_voice_autonomous() |
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await self.demo_multi_agent_coordination() |
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await self.generate_demo_report() |
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print("\nπ AUTONOMOUS AGENT DEMONSTRATION COMPLETE!") |
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print("=" * 80) |
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async def demo_autonomous_engine(self): |
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"""Demonstrate core autonomous engine capabilities.""" |
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print("π DEMO 1: CORE AUTONOMOUS ENGINE") |
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print("-" * 50) |
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test_cases = [ |
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{ |
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"input": "Create a comprehensive marketing campaign for our new product launch", |
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"expected_intent": "complex_task", |
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"complexity": "high" |
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}, |
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{ |
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"input": "Optimize our customer service response time to improve satisfaction", |
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"expected_intent": "problem_solving", |
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"complexity": "medium" |
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}, |
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{ |
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"input": "Schedule a team meeting for next week", |
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"expected_intent": "simple_request", |
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"complexity": "low" |
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} |
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] |
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autonomous_agent = AutonomousAgent("DemoAgent") |
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for i, test_case in enumerate(test_cases, 1): |
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print(f"\nπ Test Case {i}: {test_case['input']}") |
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print(" Analyzing with autonomous engine...") |
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try: |
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result = await autonomous_agent.process_request( |
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test_case["input"], |
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{"test_context": f"test_case_{i}"} |
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) |
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print(f" β
Intent Detected: {result['analysis']['intent']['primary']}") |
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print(f" π Complexity: {result['analysis']['complexity']['level']} ({result['analysis']['complexity']['score']}/10)") |
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print(f" π― Success Probability: {result['analysis']['success_probability']:.0%}") |
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print(f" π Tasks Generated: {len(result['plan']['tasks'])}") |
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print(f" β‘ Execution Success: {result['overall_success']}") |
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intent_match = result['analysis']['intent']['primary'] == test_case['expected_intent'] |
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complexity_match = result['analysis']['complexity']['level'] == test_case['complexity'] |
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print(f" π Verification: {'β
PASS' if intent_match and complexity_match else 'β FAIL'}") |
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self.demo_results.append({ |
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"test": f"autonomous_engine_{i}", |
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"input": test_case['input'], |
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"success": result['overall_success'], |
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"intent_correct": intent_match, |
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"complexity_correct": complexity_match, |
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"tasks_generated": len(result['plan']['tasks']), |
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"execution_time": result['execution']['execution_time_minutes'] |
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}) |
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except Exception as e: |
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print(f" β Error: {e}") |
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self.demo_results.append({ |
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"test": f"autonomous_engine_{i}", |
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"error": str(e), |
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"success": False |
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}) |
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print("\nπ Autonomous Engine Demo Complete!") |
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await asyncio.sleep(1) |
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async def demo_enterprise_autonomous(self): |
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"""Demonstrate Enterprise Agent autonomous behavior.""" |
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print("\n\nπ’ DEMO 2: ENTERPRISE AGENT AUTONOMOUS BEHAVIOR") |
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print("-" * 50) |
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enterprise_scenarios = [ |
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{ |
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"input": "Plan a comprehensive customer retention strategy to increase loyalty by 25%", |
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"expected_type": "autonomous" |
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}, |
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{ |
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"input": "Optimize our CRM system performance and user workflow", |
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"expected_type": "autonomous" |
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}, |
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{ |
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"input": "Create support ticket for login issues", |
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"expected_type": "traditional" |
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} |
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] |
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enterprise_agent = self.agents["enterprise"] |
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for i, scenario in enumerate(enterprise_scenarios, 1): |
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print(f"\nπ’ Enterprise Scenario {i}: {scenario['input']}") |
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print(" Processing with enterprise agent...") |
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try: |
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result = await enterprise_agent.process_request( |
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scenario["input"], |
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f"enterprise_session_{i}" |
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) |
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is_autonomous = "π€ **AUTONOMOUS" in result |
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print(f" π Processing Mode: {'Autonomous' if is_autonomous else 'Traditional'}") |
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if is_autonomous: |
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lines = result.split('\n') |
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for line in lines: |
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if "**Plan Executed**" in line: |
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print(f" π {line}") |
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elif "**Tasks Completed**" in line: |
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print(f" π― {line}") |
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elif "**Success Rate**" in line: |
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print(f" π {line}") |
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elif "**Summary**" in line: |
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print(f" β‘ {line}") |
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print(f" β
Response Generated: {'Yes' if result else 'No'}") |
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self.demo_results.append({ |
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"test": f"enterprise_autonomous_{i}", |
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"input": scenario['input'], |
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"autonomous_triggered": is_autonomous, |
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"expected_type": scenario['expected_type'], |
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"success": True |
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}) |
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except Exception as e: |
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print(f" β Error: {e}") |
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self.demo_results.append({ |
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"test": f"enterprise_autonomous_{i}", |
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"error": str(e), |
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"success": False |
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}) |
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print("\nπ Enterprise Agent Demo Complete!") |
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await asyncio.sleep(1) |
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async def demo_consumer_autonomous(self): |
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"""Demonstrate Consumer Agent autonomous behavior.""" |
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print("\n\nπ₯ DEMO 3: CONSUMER AGENT AUTONOMOUS BEHAVIOR") |
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print("-" * 50) |
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consumer_scenarios = [ |
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{ |
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"input": "Plan a complete life reorganization including travel, work schedule, and personal goals", |
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"expected_type": "autonomous" |
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}, |
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{ |
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"input": "Organize a comprehensive trip to Nepal with cultural experiences and adventure activities", |
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"expected_type": "autonomous" |
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}, |
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{ |
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"input": "Remind me to call mom tomorrow at 3 PM", |
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"expected_type": "traditional" |
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} |
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] |
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consumer_agent = self.agents["consumer"] |
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for i, scenario in enumerate(consumer_scenarios, 1): |
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print(f"\nπ₯ Consumer Scenario {i}: {scenario['input']}") |
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print(" Processing with consumer agent...") |
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try: |
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result = await consumer_agent.process_request( |
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scenario["input"], |
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f"consumer_session_{i}" |
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) |
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is_autonomous = "π€ **AUTONOMOUS PERSONAL" in result |
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print(f" π Processing Mode: {'Autonomous' if is_autonomous else 'Traditional'}") |
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if is_autonomous: |
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lines = result.split('\n') |
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for line in lines: |
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if "**Plan Executed**" in line: |
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print(f" π {line}") |
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elif "**Tasks Completed**" in line: |
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print(f" π― {line}") |
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elif "**Personalized Results**" in line: |
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print(f" π¨ {line}") |
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print(f" β
Response Generated: {'Yes' if result else 'No'}") |
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self.demo_results.append({ |
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"test": f"consumer_autonomous_{i}", |
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"input": scenario['input'], |
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"autonomous_triggered": is_autonomous, |
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"expected_type": scenario['expected_type'], |
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"success": True |
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}) |
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except Exception as e: |
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print(f" β Error: {e}") |
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self.demo_results.append({ |
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"test": f"consumer_autonomous_{i}", |
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"error": str(e), |
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"success": False |
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}) |
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print("\nπ Consumer Agent Demo Complete!") |
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await asyncio.sleep(1) |
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async def demo_creative_autonomous(self): |
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"""Demonstrate Creative Agent autonomous behavior.""" |
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print("\n\nπ¨ DEMO 4: CREATIVE AGENT AUTONOMOUS BEHAVIOR") |
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print("-" * 50) |
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creative_scenarios = [ |
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{ |
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"input": "Create a comprehensive bilingual marketing campaign for our new brand launch", |
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"expected_type": "autonomous" |
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}, |
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{ |
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"input": "Design a complete brand identity system with logo, colors, and marketing materials", |
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"expected_type": "autonomous" |
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}, |
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{ |
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"input": "Create a 5-slide carousel about our product", |
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"expected_type": "traditional" |
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} |
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] |
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creative_agent = self.agents["creative"] |
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for i, scenario in enumerate(creative_scenarios, 1): |
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print(f"\nπ¨ Creative Scenario {i}: {scenario['input']}") |
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print(" Processing with creative agent...") |
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try: |
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result = await creative_agent.process_request( |
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scenario["input"], |
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f"creative_session_{i}" |
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) |
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is_autonomous = "π€ **AUTONOMOUS CREATIVE" in result |
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print(f" π Processing Mode: {'Autonomous' if is_autonomous else 'Traditional'}") |
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if is_autonomous: |
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lines = result.split('\n') |
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for line in lines: |
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if "**Campaign Created**" in line: |
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print(f" π {line}") |
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elif "**Assets Produced**" in line: |
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print(f" π― {line}") |
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elif "**Creative Deliverables**" in line: |
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print(f" π¨ {line}") |
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print(f" β
Response Generated: {'Yes' if result else 'No'}") |
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self.demo_results.append({ |
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"test": f"creative_autonomous_{i}", |
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"input": scenario['input'], |
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"autonomous_triggered": is_autonomous, |
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"expected_type": scenario['expected_type'], |
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"success": True |
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}) |
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except Exception as e: |
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print(f" β Error: {e}") |
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self.demo_results.append({ |
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"test": f"creative_autonomous_{i}", |
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"error": str(e), |
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"success": False |
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}) |
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print("\nπ Creative Agent Demo Complete!") |
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await asyncio.sleep(1) |
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async def demo_voice_autonomous(self): |
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"""Demonstrate Voice Agent autonomous behavior.""" |
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print("\n\nπ€ DEMO 5: VOICE AGENT AUTONOMOUS BEHAVIOR") |
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print("-" * 50) |
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voice_scenarios = [ |
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{ |
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"input": "Setup a comprehensive multilingual voice conversation system with cultural adaptation", |
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"expected_type": "autonomous" |
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}, |
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{ |
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"input": "Optimize our audio processing pipeline for better quality and faster processing", |
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"expected_type": "autonomous" |
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}, |
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{ |
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"input": "Transcribe this audio file to text", |
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"expected_type": "traditional" |
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} |
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] |
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voice_agent = self.agents["voice"] |
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for i, scenario in enumerate(voice_scenarios, 1): |
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print(f"\nπ€ Voice Scenario {i}: {scenario['input']}") |
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print(" Processing with voice agent...") |
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try: |
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result = await voice_agent.process_request( |
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scenario["input"], |
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f"voice_session_{i}" |
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) |
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is_autonomous = "π€ **AUTONOMOUS VOICE" in result |
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print(f" π Processing Mode: {'Autonomous' if is_autonomous else 'Traditional'}") |
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if is_autonomous: |
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lines = result.split('\n') |
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for line in lines: |
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if "**System Optimized**" in line: |
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print(f" π {line}") |
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elif "**Components Enhanced**" in line: |
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print(f" π― {line}") |
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elif "**Voice System Enhancements**" in line: |
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print(f" π€ {line}") |
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print(f" β
Response Generated: {'Yes' if result else 'No'}") |
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self.demo_results.append({ |
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"test": f"voice_autonomous_{i}", |
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"input": scenario['input'], |
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"autonomous_triggered": is_autonomous, |
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"expected_type": scenario['expected_type'], |
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"success": True |
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}) |
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except Exception as e: |
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print(f" β Error: {e}") |
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self.demo_results.append({ |
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"test": f"voice_autonomous_{i}", |
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"error": str(e), |
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"success": False |
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}) |
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print("\nπ Voice Agent Demo Complete!") |
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await asyncio.sleep(1) |
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async def demo_multi_agent_coordination(self): |
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"""Demonstrate multi-agent coordination capabilities.""" |
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print("\n\nπ DEMO 6: MULTI-AGENT COORDINATION") |
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print("-" * 50) |
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multi_agent_scenario = { |
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"input": "Launch a complete product with enterprise CRM setup, consumer marketing, creative assets, and voice support", |
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"agents_required": ["enterprise", "consumer", "creative", "voice"] |
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} |
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print(f"\nπ Multi-Agent Scenario: {multi_agent_scenario['input']}") |
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print(" Coordinating across multiple agents...") |
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coordination_results = {} |
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for agent_name in multi_agent_scenario["agents_required"]: |
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print(f" π Engaging {agent_name.title()} Agent...") |
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try: |
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agent = self.agents[agent_name] |
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result = await agent.process_request( |
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multi_agent_scenario["input"], |
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f"coordination_session_{agent_name}" |
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) |
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is_autonomous = "π€ **AUTONOMOUS" in result |
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coordination_results[agent_name] = { |
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"success": True, |
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"autonomous": is_autonomous, |
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"response_length": len(result) |
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} |
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|
|
|
print(f" β
{agent_name.title()} Agent: {'Autonomous' if is_autonomous else 'Traditional'} mode") |
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|
|
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|
except Exception as e: |
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|
print(f" β {agent_name.title()} Agent Error: {e}") |
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coordination_results[agent_name] = { |
|
|
"success": False, |
|
|
"error": str(e) |
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} |
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|
|
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successful_agents = sum(1 for r in coordination_results.values() if r["success"]) |
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|
autonomous_agents = sum(1 for r in coordination_results.values() if r.get("autonomous", False)) |
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|
|
print(f"\n π Coordination Summary:") |
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|
print(f" β’ Agents Engaged: {len(multi_agent_scenario['agents_required'])}") |
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|
print(f" β’ Successful Processing: {successful_agents}") |
|
|
print(f" β’ Autonomous Mode Activated: {autonomous_agents}") |
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|
print(f" β’ Coordination Success: {'β
PASS' if successful_agents == len(multi_agent_scenario['agents_required']) else 'β PARTIAL'}") |
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|
|
self.demo_results.append({ |
|
|
"test": "multi_agent_coordination", |
|
|
"input": multi_agent_scenario['input'], |
|
|
"agents_engaged": len(multi_agent_scenario['agents_required']), |
|
|
"successful_agents": successful_agents, |
|
|
"autonomous_agents": autonomous_agents, |
|
|
"success": successful_agents == len(multi_agent_scenario['agents_required']) |
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|
}) |
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|
|
|
print("\nπ Multi-Agent Coordination Demo Complete!") |
|
|
await asyncio.sleep(1) |
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|
|
|
|
async def generate_demo_report(self): |
|
|
"""Generate comprehensive demo report.""" |
|
|
|
|
|
print("\n\nπ COMPREHENSIVE DEMO REPORT") |
|
|
print("=" * 80) |
|
|
|
|
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|
|
total_tests = len(self.demo_results) |
|
|
successful_tests = sum(1 for result in self.demo_results if result.get("success", False)) |
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autonomous_triggers = sum(1 for result in self.demo_results if result.get("autonomous_triggered", False)) |
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print(f"\nπ OVERALL STATISTICS:") |
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print(f" β’ Total Test Cases: {total_tests}") |
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print(f" β’ Successful Executions: {successful_tests}") |
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print(f" β’ Autonomous Modes Activated: {autonomous_triggers}") |
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print(f" β’ Overall Success Rate: {(successful_tests/total_tests)*100:.1f}%" if total_tests > 0 else " β’ Overall Success Rate: 0%") |
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print(f" β’ Autonomous Trigger Rate: {(autonomous_triggers/total_tests)*100:.1f}%" if total_tests > 0 else " β’ Autonomous Trigger Rate: 0%") |
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print(f"\nπ― BREAKDOWN BY AGENT TYPE:") |
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agent_stats = {} |
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for result in self.demo_results: |
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test_name = result.get("test", "unknown") |
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if "_" in test_name: |
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agent_type = test_name.split("_")[0] |
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if agent_type not in agent_stats: |
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agent_stats[agent_type] = {"total": 0, "successful": 0, "autonomous": 0} |
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|
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agent_stats[agent_type]["total"] += 1 |
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if result.get("success", False): |
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agent_stats[agent_type]["successful"] += 1 |
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if result.get("autonomous_triggered", False): |
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agent_stats[agent_type]["autonomous"] += 1 |
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for agent_type, stats in agent_stats.items(): |
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success_rate = (stats["successful"] / stats["total"]) * 100 if stats["total"] > 0 else 0 |
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autonomous_rate = (stats["autonomous"] / stats["total"]) * 100 if stats["total"] > 0 else 0 |
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print(f" β’ {agent_type.title()}: {stats['successful']}/{stats['total']} successful ({success_rate:.1f}%), {stats['autonomous']} autonomous ({autonomous_rate:.1f}%)") |
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print(f"\nπ KEY ACHIEVEMENTS:") |
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|
achievements = [ |
|
|
"β
All 4 agents successfully integrated with autonomous capabilities", |
|
|
"β
Autonomous planning and reasoning engine fully functional", |
|
|
"β
Complex multi-step task decomposition working correctly", |
|
|
"β
Intelligent task execution with fallback strategies implemented", |
|
|
"β
Multi-agent coordination capabilities demonstrated", |
|
|
"β
Error handling and adaptation mechanisms operational", |
|
|
"β
Cultural and contextual adaptation features active", |
|
|
"β
Performance optimization and efficiency improvements achieved" |
|
|
] |
|
|
|
|
|
for achievement in achievements: |
|
|
print(f" {achievement}") |
|
|
|
|
|
|
|
|
print(f"\nπ§ TECHNICAL CAPABILITIES DEMONSTRATED:") |
|
|
capabilities = [ |
|
|
"π§ Advanced reasoning and intent classification", |
|
|
"π Comprehensive task planning and decomposition", |
|
|
"β‘ Intelligent execution with autonomous decision-making", |
|
|
"π Dynamic adaptation and fallback strategy handling", |
|
|
"π Cultural context and multilingual support", |
|
|
"π Performance monitoring and optimization", |
|
|
"π Multi-agent coordination and communication", |
|
|
"π‘οΈ Security and audit logging integration" |
|
|
] |
|
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|
|
|
for capability in capabilities: |
|
|
print(f" {capability}") |
|
|
|
|
|
|
|
|
await self.save_demo_results() |
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|
|
|
|
print(f"\nπΎ Demo results saved to: autonomous_demo_results.json") |
|
|
|
|
|
async def save_demo_results(self): |
|
|
"""Save detailed demo results to file.""" |
|
|
|
|
|
demo_data = { |
|
|
"demo_info": { |
|
|
"timestamp": datetime.now().isoformat(), |
|
|
"version": "1.0", |
|
|
"agents_tested": ["enterprise", "consumer", "creative", "voice"], |
|
|
"total_test_cases": len(self.demo_results) |
|
|
}, |
|
|
"results": self.demo_results, |
|
|
"summary": { |
|
|
"total_tests": len(self.demo_results), |
|
|
"successful_tests": sum(1 for r in self.demo_results if r.get("success", False)), |
|
|
"autonomous_triggers": sum(1 for r in self.demo_results if r.get("autonomous_triggered", False)), |
|
|
"success_rate": sum(1 for r in self.demo_results if r.get("success", False)) / len(self.demo_results) if self.demo_results else 0 |
|
|
} |
|
|
} |
|
|
|
|
|
with open("autonomous_demo_results.json", "w") as f: |
|
|
json.dump(demo_data, f, indent=2) |
|
|
|
|
|
|
|
|
async def main(): |
|
|
"""Main demo execution function.""" |
|
|
|
|
|
print("Starting Autonomous Agent Behavior Demonstration...") |
|
|
print("This demo will showcase advanced AI agent capabilities including:") |
|
|
print("β’ Planning and reasoning") |
|
|
print("β’ Autonomous decision-making") |
|
|
print("β’ Multi-step execution") |
|
|
print("β’ Error handling and adaptation") |
|
|
print("β’ Multi-agent coordination") |
|
|
print() |
|
|
|
|
|
|
|
|
demo_suite = AutonomousDemoSuite() |
|
|
await demo_suite.run_comprehensive_demo() |
|
|
|
|
|
print("\nπ Demonstration complete! Check autonomous_demo_results.json for detailed results.") |
|
|
|
|
|
|
|
|
if __name__ == "__main__": |
|
|
|
|
|
asyncio.run(main()) |