Stack-2-9-finetuned / stack /training /pattern_miner.py
walidsobhie-code
Add tools, fix web search, update model
35697c2
#!/usr/bin/env python3
"""
Stack 2.9 Pattern Miner
Extracts patterns from successful solutions and feedback for self-evolution.
"""
import json
import hashlib
import re
from pathlib import Path
from typing import Dict, List, Any, Optional, Tuple
from dataclasses import dataclass, asdict
from datetime import datetime
from collections import defaultdict
import logging
logging.basicConfig(level=logging.INFO)
logger = logging.getLogger(__name__)
@dataclass
class Pattern:
"""A learned pattern from solutions."""
id: str
pattern_type: str # "code_structure", "algorithm", "error_recovery", etc.
description: str
code_snippet: str
success_count: int
failure_count: int
success_rate: float
tags: List[str]
created_at: str
last_used: str
@dataclass
class Feedback:
"""Feedback from a solution attempt."""
id: str
problem_type: str
solution: str
success: bool
error_message: Optional[str]
execution_time: float
timestamp: str
model_version: Optional[str] = None
class PatternMiner:
"""Extracts patterns from code solutions."""
# Pattern type keywords
PATTERN_TYPES = {
"recursion": [r"def\s+(\w+)\s*\([^)]*\):\s*.*\1\(", r"return\s+(\w+)\s*\([^)]*\)\s*\1\("],
"iteration": [r"for\s+", r"while\s+"],
"list_comprehension": [r"\[.*for.*in.*\]"],
"dictionary": [r"\{\w+:", r"dict\(", r"defaultdict\("],
"set_operations": [r"set\(", r"\&\s*", r"\|\s*", r"\-\s*"],
"sorting": [r"sorted\(", r"\.sort\("],
"searching": [r"\.index\(", r"\.find\(", r"in\s+"],
"file_io": [r"open\(", r"read\(", r"write\("],
"error_handling": [r"try:", r"except", r"finally:"],
"class_definition": [r"class\s+\w+", r"def\s+__init__"],
"function_composition": [r"\.map\(", r"\.filter\(", r"\.reduce\("],
}
def __init__(self, storage_dir: Path = None):
self.storage_dir = storage_dir or Path(__file__).parent / "patterns"
self.storage_dir.mkdir(parents=True, exist_ok=True)
self.patterns_file = self.storage_dir / "patterns.json"
self.feedback_file = self.storage_dir / "feedback.json"
self.patterns = self._load_patterns()
self.feedback = self._load_feedback()
def _load_patterns(self) -> List[Pattern]:
"""Load stored patterns."""
if not self.patterns_file.exists():
return []
with open(self.patterns_file, 'r') as f:
data = json.load(f)
return [Pattern(**p) for p in data]
def _load_feedback(self) -> List[Feedback]:
"""Load stored feedback."""
if not self.feedback_file.exists():
return []
with open(self.feedback_file, 'r') as f:
data = json.load(f)
return [Feedback(**fb) for fb in data]
def _save_patterns(self):
"""Save patterns to storage."""
with open(self.patterns_file, 'w') as f:
json.dump([asdict(p) for p in self.patterns], f, indent=2)
def _save_feedback(self):
"""Save feedback to storage."""
with open(self.feedback_file, 'w') as f:
json.dump([asdict(fb) for fb in self.feedback], f, indent=2)
def store_feedback(
self,
problem_type: str,
solution: str,
success: bool,
error_message: Optional[str] = None,
execution_time: float = 0.0,
model_version: Optional[str] = None
) -> Feedback:
"""Store feedback from a solution attempt."""
fb = Feedback(
id=hashlib.sha256(f"{datetime.now().isoformat()}{solution}".encode()).hexdigest()[:16],
problem_type=problem_type,
solution=solution,
success=success,
error_message=error_message,
execution_time=execution_time,
timestamp=datetime.now().isoformat(),
model_version=model_version
)
self.feedback.append(fb)
self._save_feedback()
# Extract patterns if successful
if success:
self._extract_patterns_from_solution(solution, problem_type)
return fb
def _extract_patterns_from_solution(self, solution: str, problem_type: str):
"""Extract patterns from a successful solution."""
# Identify pattern types
for ptype, regexes in self.PATTERN_TYPES.items():
for regex in regexes:
if re.search(regex, solution):
self._add_pattern(ptype, solution, problem_type)
break
# Extract code structure patterns
self._extract_structure_patterns(solution, problem_type)
def _extract_structure_patterns(self, code: str, problem_type: str):
"""Extract structural patterns from code."""
# Find function definitions
functions = re.findall(r'def\s+(\w+)\s*\([^)]*\):', code)
if functions:
self._add_pattern(
"function_definition",
f"def {functions[0]}(...)",
problem_type,
tags=["function", functions[0]]
)
# Find class definitions
classes = re.findall(r'class\s+(\w+)', code)
for cls in classes:
self._add_pattern(
"class_definition",
f"class {cls}",
problem_type,
tags=["class", cls]
)
def _add_pattern(
self,
pattern_type: str,
snippet: str,
problem_type: str,
tags: Optional[List[str]] = None
):
"""Add or update a pattern."""
# Check if pattern already exists
existing = None
for p in self.patterns:
if p.pattern_type == pattern_type and p.code_snippet == snippet:
existing = p
break
if existing:
# Update existing pattern
existing.success_count += 1
existing.success_rate = existing.success_count / (existing.success_count + existing.failure_count)
existing.last_used = datetime.now().isoformat()
else:
# Create new pattern
pattern = Pattern(
id=hashlib.sha256(f"{pattern_type}{snippet}".encode()).hexdigest()[:16],
pattern_type=pattern_type,
description=f"Pattern for {problem_type}",
code_snippet=snippet,
success_count=1,
failure_count=0,
success_rate=1.0,
tags=tags or [problem_type],
created_at=datetime.now().isoformat(),
last_used=datetime.now().isoformat()
)
self.patterns.append(pattern)
self._save_patterns()
def mark_pattern_failure(self, pattern_id: str):
"""Mark a pattern as failed."""
for p in self.patterns:
if p.id == pattern_id:
p.failure_count += 1
p.success_rate = p.success_count / (p.success_count + p.failure_count)
break
self._save_patterns()
def get_relevant_patterns(
self,
problem_type: str = None,
min_success_rate: float = 0.5,
limit: int = 10
) -> List[Pattern]:
"""Get relevant patterns for a problem type."""
relevant = []
for p in self.patterns:
# Filter by success rate
if p.success_rate < min_success_rate:
continue
# Filter by problem type if specified
if problem_type and problem_type not in p.tags:
continue
relevant.append(p)
# Sort by success rate and usage
relevant.sort(key=lambda p: (p.success_rate, p.success_count), reverse=True)
return relevant[:limit]
def generate_pattern_prompt(self, patterns: List[Pattern]) -> str:
"""Generate a prompt with relevant patterns."""
if not patterns:
return ""
prompt = "Here are some patterns that worked well for similar problems:\n\n"
for i, p in enumerate(patterns, 1):
prompt += f"{i}. [{p.pattern_type}] {p.description}\n"
prompt += f" Code: {p.code_snippet}\n"
prompt += f" Success rate: {p.success_rate:.1%}\n\n"
return prompt
def get_statistics(self) -> Dict[str, Any]:
"""Get pattern mining statistics."""
if not self.feedback:
return {"total_feedback": 0, "total_patterns": 0}
success_count = sum(1 for fb in self.feedback if fb.success)
failure_count = len(self.feedback) - success_count
# Group by problem type
by_type = defaultdict(lambda: {"success": 0, "failure": 0})
for fb in self.feedback:
by_type[fb.problem_type]["success" if fb.success else "failure"] += 1
# Pattern statistics
pattern_types = defaultdict(int)
for p in self.patterns:
pattern_types[p.pattern_type] += 1
return {
"total_feedback": len(self.feedback),
"successful_solutions": success_count,
"failed_solutions": failure_count,
"success_rate": success_count / len(self.feedback) if self.feedback else 0,
"total_patterns": len(self.patterns),
"patterns_by_type": dict(pattern_types),
"by_problem_type": dict(by_type)
}
def create_synthetic_feedback(
output_file: Path,
num_examples: int = 100
) -> int:
"""Create synthetic feedback data for testing."""
import random
problems = [
"list_operations", "string_manipulation", "recursion",
"sorting", "searching", "file_io", "error_handling"
]
success_solutions = {
"list_operations": [
"return [x for x in lst if x > 0]",
"return sum(lst)",
"return max(lst) if lst else None",
],
"string_manipulation": [
"return s[::-1]",
"return s.upper()",
"return ''.join(sorted(s))",
],
"recursion": [
"if n <= 1: return 1\nreturn n * fact(n-1)",
"if not head: return None\nreturn head.val + sum_list(head.next)",
],
"sorting": [
"return sorted(lst)",
"lst.sort()\nreturn lst",
],
"searching": [
"return any(x == target for x in lst)",
"for i, x in enumerate(lst):\n if x == target: return i\nreturn -1",
],
}
miner = PatternMiner()
for _ in range(num_examples):
problem = random.choice(problems)
solution = random.choice(success_solutions.get(problem, ["# solution"]))
success = random.random() > 0.2 # 80% success rate
miner.store_feedback(
problem_type=problem,
solution=solution,
success=success,
error_message=None if success else "Test failed",
execution_time=random.uniform(0.1, 2.0)
)
# Save to file
output_file.parent.mkdir(parents=True, exist_ok=True)
with open(output_file, 'w') as f:
json.dump([asdict(fb) for fb in miner.feedback], f, indent=2)
return num_examples
if __name__ == "__main__":
import argparse
parser = argparse.ArgumentParser(description="Stack 2.9 Pattern Miner")
parser.add_argument("--store", action="store_true",
help="Store a feedback example")
parser.add_argument("--problem-type", type=str, help="Problem type")
parser.add_argument("--solution", type=str, help="Solution code")
parser.add_argument("--success", type=lambda x: x.lower() == "true",
default=True, help="Success flag")
parser.add_argument("--list-patterns", action="store_true",
help="List relevant patterns")
parser.add_argument("--stats", action="store_true",
help="Show statistics")
parser.add_argument("--generate-synthetic", type=int, metavar="N",
help="Generate N synthetic examples")
args = parser.parse_args()
miner = PatternMiner()
if args.store:
if not args.problem_type or not args.solution:
print("Error: --problem-type and --solution required")
exit(1)
fb = miner.store_feedback(
problem_type=args.problem_type,
solution=args.solution,
success=args.success
)
print(f"Stored feedback: {fb.id}")
elif args.list_patterns:
patterns = miner.get_relevant_patterns(args.problem_type)
print(f"\nRelevant patterns ({len(patterns)}):")
for p in patterns:
print(f" [{p.pattern_type}] {p.code_snippet} (rate: {p.success_rate:.1%})")
elif args.stats:
stats = miner.get_statistics()
print("\nPattern Mining Statistics:")
print(f" Total feedback: {stats['total_feedback']}")
print(f" Success rate: {stats['success_rate']:.1%}")
print(f" Total patterns: {stats['total_patterns']}")
print(f" Patterns by type: {stats['patterns_by_type']}")
elif args.generate_synthetic:
count = create_synthetic_feedback(
Path("/tmp/synthetic_feedback.json"),
args.generate_synthetic
)
print(f"Generated {count} synthetic examples")
else:
print("Pattern Miner")
print("Use --help for options")