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#!/usr/bin/env python3
"""
Verification test to prove Felix Framework isn't hardcoded.
This script runs the same blog topic with different random seeds
to demonstrate that outputs vary, proving the system makes real
LLM calls and adapts based on the helix geometry.
Usage:
python examples/verify_randomness.py "Quantum computing applications"
"""
import sys
import time
import hashlib
from pathlib import Path
from typing import List, Dict, Any
# Add src to path for imports
sys.path.insert(0, str(Path(__file__).parent.parent / "src"))
from blog_writer import FelixBlogWriter
def run_verification_test(topic: str, num_runs: int = 3) -> List[Dict[str, Any]]:
"""
Run the same topic with different seeds and collect results.
Args:
topic: Blog post topic
num_runs: Number of different seeds to test
Returns:
List of results from each run
"""
results = []
seeds = [42, 123, 999, 1337, 8888][:num_runs] # Use different seeds
print(f"π¬ VERIFICATION TEST: Running '{topic}' with {num_runs} different seeds")
print(f"Seeds: {seeds}")
print("=" * 80)
for i, seed in enumerate(seeds):
print(f"\nπ§ͺ RUN {i+1}/{num_runs}: Seed {seed}")
print("-" * 40)
# Create fresh writer with specific seed
writer = FelixBlogWriter(
random_seed=seed,
strict_mode=True, # Use strict mode for faster verification
debug_mode=False # Disable debug for cleaner output
)
# Test connection
if not writer.test_lm_studio_connection():
print(f"β LM Studio connection failed for run {i+1}")
continue
# Create team with deterministic spawn times (due to seed)
writer.create_blog_writing_team(complexity="simple")
# Run session
start_time = time.perf_counter()
result = writer.run_blog_writing_session(
topic=topic,
simulation_time=1.0
)
end_time = time.perf_counter()
# Extract key metrics for comparison
if result["final_output"]:
content = result["final_output"]["content"]
content_hash = hashlib.md5(content.encode()).hexdigest()[:16]
run_result = {
"seed": seed,
"run_number": i + 1,
"content_hash": content_hash,
"content_length": len(content),
"content_preview": content[:200] + "..." if len(content) > 200 else content,
"total_tokens": result["session_stats"]["total_tokens_used"],
"agents_participated": result["session_stats"]["agents_participated"],
"duration": end_time - start_time,
"final_confidence": result["final_output"]["confidence"],
"final_agent": result["final_output"]["agent_id"],
"spawn_times": [agent["spawn_time"] for agent in result["agents_participated"]],
"agent_types": [agent["agent_type"] for agent in result["agents_participated"]]
}
results.append(run_result)
print(f"β
Completed: {len(content)} chars, {run_result['total_tokens']} tokens")
print(f" Hash: {content_hash}, Confidence: {run_result['final_confidence']:.2f}")
print(f" Preview: {run_result['content_preview'][:100]}...")
else:
print(f"β No final output generated for run {i+1}")
return results
def analyze_variance(results: List[Dict[str, Any]]) -> Dict[str, Any]:
"""
Analyze variance between runs to prove non-determinism.
Args:
results: List of run results
Returns:
Analysis summary
"""
if len(results) < 2:
return {"error": "Need at least 2 results to analyze variance"}
# Check content variance
content_hashes = [r["content_hash"] for r in results]
unique_hashes = len(set(content_hashes))
# Check token variance
token_counts = [r["total_tokens"] for r in results]
min_tokens = min(token_counts)
max_tokens = max(token_counts)
avg_tokens = sum(token_counts) / len(token_counts)
# Check length variance
content_lengths = [r["content_length"] for r in results]
min_length = min(content_lengths)
max_length = max(content_lengths)
avg_length = sum(content_lengths) / len(content_lengths)
# Check timing variance
durations = [r["duration"] for r in results]
min_duration = min(durations)
max_duration = max(durations)
avg_duration = sum(durations) / len(durations)
# Check confidence variance
confidences = [r["final_confidence"] for r in results]
min_confidence = min(confidences)
max_confidence = max(confidences)
avg_confidence = sum(confidences) / len(confidences)
# Check spawn time variance (should be different with different seeds)
spawn_variations = []
for i, result in enumerate(results):
spawn_pattern = tuple(sorted(result["spawn_times"]))
spawn_variations.append(spawn_pattern)
unique_spawn_patterns = len(set(spawn_variations))
analysis = {
"total_runs": len(results),
"content_variance": {
"unique_content_hashes": unique_hashes,
"identical_content": unique_hashes == 1,
"variance_percentage": (unique_hashes / len(results)) * 100
},
"token_variance": {
"min": min_tokens,
"max": max_tokens,
"avg": avg_tokens,
"range": max_tokens - min_tokens,
"coefficient_of_variation": (max_tokens - min_tokens) / avg_tokens if avg_tokens > 0 else 0
},
"length_variance": {
"min": min_length,
"max": max_length,
"avg": avg_length,
"range": max_length - min_length
},
"timing_variance": {
"min": min_duration,
"max": max_duration,
"avg": avg_duration,
"range": max_duration - min_duration
},
"confidence_variance": {
"min": min_confidence,
"max": max_confidence,
"avg": avg_confidence,
"range": max_confidence - min_confidence
},
"spawn_pattern_variance": {
"unique_patterns": unique_spawn_patterns,
"total_patterns": len(results),
"all_different": unique_spawn_patterns == len(results)
}
}
return analysis
def display_verification_results(results: List[Dict[str, Any]], analysis: Dict[str, Any]) -> None:
"""Display verification results in a readable format."""
print(f"\n{'='*80}")
print(f"VERIFICATION RESULTS")
print(f"{'='*80}")
if not results:
print("β No successful runs to analyze")
return
print(f"\nπ RUN SUMMARY:")
for result in results:
print(f" Seed {result['seed']:4d}: {result['content_length']:4d} chars, "
f"{result['total_tokens']:4d} tokens, "
f"hash {result['content_hash']}, "
f"conf {result['final_confidence']:.2f}")
if "error" in analysis:
print(f"\nβ Analysis Error: {analysis['error']}")
return
print(f"\nπ VARIANCE ANALYSIS:")
# Content variance
cv = analysis["content_variance"]
if cv["identical_content"]:
print(f"β CONTENT: All {cv['unique_content_hashes']} outputs IDENTICAL (possible hardcoding!)")
else:
print(f"β
CONTENT: {cv['unique_content_hashes']}/{analysis['total_runs']} unique outputs "
f"({cv['variance_percentage']:.1f}% variance)")
# Token variance
tv = analysis["token_variance"]
print(f"β
TOKENS: {tv['min']}-{tv['max']} range (avg {tv['avg']:.1f}, "
f"CV {tv['coefficient_of_variation']:.1%})")
# Length variance
lv = analysis["length_variance"]
print(f"β
LENGTH: {lv['min']}-{lv['max']} chars (avg {lv['avg']:.1f})")
# Timing variance
timing = analysis["timing_variance"]
print(f"β
TIMING: {timing['min']:.1f}-{timing['max']:.1f}s "
f"(avg {timing['avg']:.1f}s, range {timing['range']:.1f}s)")
# Confidence variance
conf = analysis["confidence_variance"]
print(f"β
CONFIDENCE: {conf['min']:.2f}-{conf['max']:.2f} "
f"(avg {conf['avg']:.2f}, range {conf['range']:.2f})")
# Spawn pattern variance
sp = analysis["spawn_pattern_variance"]
if sp["all_different"]:
print(f"β
SPAWN PATTERNS: All {sp['unique_patterns']} patterns unique (proper randomization)")
else:
print(f"β οΈ SPAWN PATTERNS: {sp['unique_patterns']}/{sp['total_patterns']} unique patterns")
print(f"\nπ― VERDICT:")
if cv["identical_content"]:
print("β FAILED: Identical content suggests hardcoded responses")
elif cv["unique_content_hashes"] >= analysis["total_runs"] * 0.8: # 80% unique
print("β
PASSED: High content variance proves real LLM processing")
else:
print("β οΈ INCONCLUSIVE: Some variance but may need more runs")
print(f"\nπ DETAILED CONTENT COMPARISON:")
for i, result in enumerate(results):
print(f"\n--- Run {i+1} (Seed {result['seed']}) ---")
print(f"Agents: {', '.join(result['agent_types'])}")
print(f"Final: {result['final_agent']} (confidence {result['final_confidence']:.2f})")
print(f"Content ({result['content_length']} chars):")
print(result['content_preview'])
def main():
"""Main verification function."""
if len(sys.argv) != 2:
print("Usage: python verify_randomness.py \"Blog topic\"")
print("Example: python verify_randomness.py \"Quantum computing applications\"")
sys.exit(1)
topic = sys.argv[1]
# Run verification test
results = run_verification_test(topic, num_runs=3)
# Analyze variance
analysis = analyze_variance(results)
# Display results
display_verification_results(results, analysis)
# Save results for inspection
timestamp = int(time.time())
output_file = f"verification_results_{timestamp}.json"
import json
verification_data = {
"topic": topic,
"timestamp": timestamp,
"results": results,
"analysis": analysis
}
with open(output_file, 'w') as f:
json.dump(verification_data, f, indent=2)
print(f"\nπΎ Results saved to: {output_file}")
if __name__ == "__main__":
main() |