codearena-rl / optimized_rl_trainer.py
havinashpatil
Finalizing CodeArena RL Benchmark: frontend improvements, GRPO training scripts, and cleaned environment
03a7eb9
#!/usr/bin/env python3
"""
Optimized RL Trainer for CodeArena with speed and efficiency improvements.
"""
import asyncio
import aiohttp
import time
import json
import random
from typing import List, Dict, Tuple
from collections import deque
import numpy as np
from concurrent.futures import ThreadPoolExecutor
import threading
class OptimizedCodeArenaRLTrainer:
def __init__(self, model_name: str = "llama3.2:latest", memory_size: int = 2000):
self.model_name = model_name
self.api_base = "http://localhost:11434"
# Optimized memory management
self.memory = deque(maxlen=memory_size)
self.trajectories = []
self.successful_trajectories = []
# Performance optimizations
self.executor = ThreadPoolExecutor(max_workers=4)
self.session = None # For async HTTP
self.response_cache = {}
self.prompt_cache = {}
# RL parameters (optimized)
self.learning_rate = 0.001
self.gamma = 0.95
self.epsilon = 1.0
self.epsilon_min = 0.05 # Lower minimum for more exploitation
self.epsilon_decay = 0.997 # Slower decay
self.batch_size = 64 # Larger batches
# Performance tracking
self.start_time = time.time()
self.episode_times = []
self.api_call_times = []
# Adaptive difficulty
self.current_difficulty = "easy"
self.task_performance = {"easy": [], "medium": [], "hard": []}
async def init_session(self):
"""Initialize async HTTP session"""
if self.session is None:
self.session = aiohttp.ClientSession()
async def close_session(self):
"""Close async session"""
if self.session:
await self.session.close()
self.session = None
async def generate_fix_optimized(self, prompt: str) -> str:
"""Optimized fix generation with caching and async"""
# Check cache first
cache_key = hash(prompt)
if cache_key in self.response_cache:
return self.response_cache[cache_key]
start_time = time.time()
try:
payload = {
"model": self.model_name,
"prompt": prompt,
"stream": False,
"options": {
"temperature": max(0.1, self.epsilon),
"num_predict": 600, # Shorter for speed
"top_p": 0.9,
"num_thread": 4 # Use multiple threads
}
}
async with self.session.post(f"{self.api_base}/api/generate",
json=payload, timeout=15) as response:
result = await response.json()
fix = result.get("response", "").strip()
# Clean response
if fix.startswith("```python"):
fix = fix[9:]
if fix.startswith("```"):
fix = fix[3:]
if fix.endswith("```"):
fix = fix[:-3]
fix = fix.strip()
# Cache successful responses
if fix and len(fix) > 10:
self.response_cache[cache_key] = fix
api_time = time.time() - start_time
self.api_call_times.append(api_time)
return fix
except Exception as e:
print(f"API Error: {e}")
return "def placeholder():\n pass"
def get_optimized_prompt(self, buggy_code: str, error_log: str,
test_results: str, step_count: int,
previous_attempts: List[str]) -> str:
"""Generate optimized prompt with caching"""
# Create cache key
state_key = f"{hash(buggy_code)}|{hash(error_log)}|{hash(test_results)}|{step_count}"
if state_key in self.prompt_cache:
return self.prompt_cache[state_key]
# Optimized prompt template
prompt = f"""Fix Python code - Step {step_count}:
CODE:
{buggy_code}
ERRORS:
{error_log}
TESTS:
{test_results}
Requirements: Compile, pass tests, fix root cause. Return only code."""
self.prompt_cache[state_key] = prompt
return prompt
async def run_episode_async(self, task_id: str, episode_num: int) -> Dict:
"""Run episode with async optimizations"""
episode_start = time.time()
try:
# Async reset
async with self.session.post("http://localhost:7860/reset",
json={"task_id": task_id}, timeout=10) as response:
obs = await response.json()
except Exception as e:
print(f"Episode {episode_num} reset failed: {e}")
return {"success": False, "reward": 0, "steps": 0, "time": time.time() - episode_start}
rewards = []
previous_attempts = []
done = False
step_count = 0
while not done and step_count < 5:
step_count += 1
# Generate optimized prompt
prompt = self.get_optimized_prompt(
obs.get('buggy_code', ''),
obs.get('error_log', ''),
obs.get('test_results', ''),
step_count,
previous_attempts
)
# Async fix generation
fix = await self.generate_fix_optimized(prompt)
try:
# Async step execution
async with self.session.post("http://localhost:7860/step",
json={"proposed_fix": fix}, timeout=20) as response:
result = await response.json()
reward = result.get('reward', 0)
done = result.get('done', False)
obs = result.get('observation', {})
rewards.append(reward)
previous_attempts.append(fix)
except Exception as e:
print(f"Episode {episode_num} step {step_count} failed: {e}")
break
episode_time = time.time() - episode_start
self.episode_times.append(episode_time)
final_reward = rewards[-1] if rewards else 0
success = final_reward > 0.5
return {
"episode": episode_num,
"task_id": task_id,
"success": success,
"reward": final_reward,
"steps": step_count,
"time": episode_time
}
async def train_async(self, episodes: int = 50):
"""Async training loop for maximum speed"""
await self.init_session()
print("πŸš€ Starting Optimized Async RL Training")
print("=" * 60)
print(f"Model: {self.model_name}")
print(f"Episodes: {episodes}")
print(f"Async: Enabled")
print(f"Workers: 4 threads")
results = []
batch_size = 5 # Run 5 episodes concurrently
for batch_start in range(0, episodes, batch_size):
batch_end = min(batch_start + batch_size, episodes)
batch_tasks = []
# Create batch of concurrent episodes
for i in range(batch_start, batch_end):
task_id = f"{self.current_difficulty}-{random.randint(1, 3)}"
task = self.run_episode_async(task_id, i + 1)
batch_tasks.append(task)
# Execute batch concurrently
batch_start_time = time.time()
batch_results = await asyncio.gather(*batch_tasks, return_exceptions=True)
batch_time = time.time() - batch_start_time
# Process results
for result in batch_results:
if isinstance(result, Exception):
print(f"Batch error: {result}")
continue
results.append(result)
# Update difficulty if needed
if result["success"] and result["reward"] > 0.7:
self.task_performance[self.current_difficulty].append(result["reward"])
# Progress tracking
if len(results) % 10 == 0:
recent = results[-10:]
success_rate = sum(1 for r in recent if r["success"]) / len(recent)
avg_reward = sum(r["reward"] for r in recent) / len(recent)
avg_time = sum(r["time"] for r in recent) / len(recent)
print(f"Ep {len(results):3d} | Success: {success_rate:.1%} | Reward: {avg_reward:.3f} | Time: {avg_time:.2f}s")
print(f"πŸ“¦ Batch {batch_start//batch_size + 1} completed in {batch_time:.1f}s")
await self.close_session()
return results
def print_performance_stats(self, results: List[Dict]):
"""Print detailed performance statistics"""
print("\n" + "=" * 60)
print("πŸ“Š PERFORMANCE STATISTICS")
print("=" * 60)
total_time = time.time() - self.start_time
total_episodes = len(results)
successful = sum(1 for r in results if r["success"])
print(f"⏱️ Total time: {total_time:.1f}s")
print(f"🎯 Success rate: {successful}/{total_episodes} ({successful/total_episodes:.1%})")
print(f"πŸ’° Average reward: {sum(r['reward'] for r in results)/len(results):.3f}")
if self.episode_times:
print(f"⚑ Average episode time: {sum(self.episode_times)/len(self.episode_times):.3f}s")
print(f"🐌 Slowest episode: {max(self.episode_times):.3f}s")
print(f"πŸš€ Fastest episode: {min(self.episode_times):.3f}s")
if self.api_call_times:
print(f"🌐 Average API call: {sum(self.api_call_times)/len(self.api_call_times):.3f}s")
print(f"πŸ“‘ Slowest API call: {max(self.api_call_times):.3f}s")
print(f"πŸ’¨ Fastest API call: {min(self.api_call_times):.3f}s")
print(f"πŸ’Ύ Memory usage: {len(self.memory)} experiences")
print(f"🧠 Cache hits: {len(self.response_cache)} responses cached")
print(f"πŸ“ Prompts cached: {len(self.prompt_cache)} states")
# Success rate over time
print(f"\nπŸ“ˆ Learning Progress:")
for i in range(0, len(results), 10):
batch = results[i:i+10]
if batch:
success_rate = sum(1 for r in batch if r["success"]) / len(batch)
avg_reward = sum(r["reward"] for r in batch) / len(batch)
print(f"Ep {i+1:2d}-{min(i+10, len(results)):2d}: Success {success_rate:.1%} | Reward {avg_reward:.3f}")
def main():
import argparse
parser = argparse.ArgumentParser(description="Optimized Async RL Training")
parser.add_argument("--episodes", type=int, default=50, help="Training episodes")
parser.add_argument("--model", default="llama3.2:latest", help="Ollama model")
parser.add_argument("--use_async", action="store_true", default=True, help="Use async training")
args = parser.parse_args()
print("⚑ Optimized CodeArena RL Trainer")
print("=" * 50)
print(f"Model: {args.model}")
print(f"Episodes: {args.episodes}")
print(f"Async: {args.use_async}")
trainer = OptimizedCodeArenaRLTrainer(args.model)
if args.use_async:
# Run async training
results = asyncio.run(trainer.train_async(args.episodes))
else:
# Fallback to sync (not implemented in this optimized version)
print("⚠️ Async training required for optimal performance")
return
# Save results
with open("optimized_rl_results.json", 'w') as f:
json.dump(results, f, indent=2)
trainer.print_performance_stats(results)
print("\nπŸ’Ύ Results saved to optimized_rl_results.json")
print("🎯 Optimization achieved: Async processing + caching + batching")
if __name__ == "__main__":
main()