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path: root/scripts/pilot_runner_v0.py
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#!/usr/bin/env python3
"""
Pilot Runner v0 - Minimal End-to-End Test

Goal: Prove the chat → judge → apply_feedback → next query loop works.

Setup:
- 1 user × 1 session × 5 turns
- Fixed queries (no fancy user simulator yet)
- Rule-based judge: answer non-empty → sat=1, else 0
- reward = sat, gating = 1 always

What we're checking:
1. No crashes (KeyError, NoneType, etc.)
2. User vector norms change after feedback (RL is being called)
3. resp.usage returns reasonable numbers
4. Logs are generated correctly
"""

import sys
import os
import json
from datetime import datetime
from dataclasses import dataclass, asdict
from typing import List, Dict, Any, Optional

# Add src to path
sys.path.insert(0, os.path.join(os.path.dirname(__file__), "../src"))

from personalization.serving import PersonalizedLLM, Feedback, AssistantResponse


# =============================================================================
# Minimal Judge
# =============================================================================

@dataclass
class JudgeResult:
    """Output from the judge for one turn."""
    sat_t: float        # Satisfaction score [0, 1]
    sev_t: float        # Severity of violations [0, 1]
    prog_t: float       # Task progress [0, 1]
    violations: List[str]  # List of violated constraints
    

def minimal_judge(query: str, answer: str, task_type: str = "general") -> JudgeResult:
    """
    Minimal rule-based judge for pilot.
    
    For now:
    - sat_t = 1 if answer is non-empty, else 0
    - sev_t = 0 (no severity tracking yet)
    - prog_t = 1 if answer looks reasonable, else 0
    """
    violations = []
    
    # Check 1: Answer is non-empty
    if not answer or len(answer.strip()) < 5:
        violations.append("empty_answer")
        return JudgeResult(sat_t=0.0, sev_t=1.0, prog_t=0.0, violations=violations)
    
    # Check 2: Answer is not too short (at least 20 chars for real content)
    if len(answer.strip()) < 20:
        violations.append("too_short")
    
    # Check 3: For code tasks, look for code markers
    if task_type == "code":
        has_code = "```" in answer or "def " in answer or "function" in answer
        if not has_code:
            violations.append("no_code_block")
    
    # Calculate scores
    sat_t = 1.0 if len(violations) == 0 else max(0.0, 1.0 - 0.3 * len(violations))
    sev_t = 1.0 if "empty_answer" in violations else 0.0
    prog_t = 1.0 if "empty_answer" not in violations else 0.0
    
    return JudgeResult(sat_t=sat_t, sev_t=sev_t, prog_t=prog_t, violations=violations)


# =============================================================================
# Minimal User Simulator (Fixed Queries)
# =============================================================================

def get_fixed_queries() -> List[Dict[str, Any]]:
    """
    Return fixed queries for pilot test.
    Mix of preference statements and tasks.
    """
    return [
        {
            "query": "I prefer short, concise answers. Please keep responses under 100 words.",
            "type": "preference",
            "task_type": "general",
        },
        {
            "query": "What are three tips for better sleep?",
            "type": "task",
            "task_type": "general",
        },
        {
            "query": "I also prefer bullet points when listing things.",
            "type": "preference", 
            "task_type": "general",
        },
        {
            "query": "What are the main benefits of exercise?",
            "type": "task",
            "task_type": "general",
        },
        {
            "query": "Summarize what you know about my preferences.",
            "type": "task",
            "task_type": "general",
        },
    ]


# =============================================================================
# Logging
# =============================================================================

@dataclass
class TurnLog:
    """Log entry for one turn."""
    turn_id: int
    query: str
    query_type: str
    answer: str
    answer_length: int
    sat_t: float
    sev_t: float
    prog_t: float
    violations: List[str]
    reward: float
    gating: float
    z_long_norm_before: float
    z_long_norm_after: float
    z_short_norm_before: float
    z_short_norm_after: float
    prompt_tokens: int
    completion_tokens: int
    total_tokens: int
    num_memories_retrieved: int
    num_prefs_extracted: int


def log_to_jsonl(logs: List[TurnLog], filepath: str):
    """Save logs to JSONL file."""
    os.makedirs(os.path.dirname(filepath), exist_ok=True)
    with open(filepath, "w") as f:
        for log in logs:
            f.write(json.dumps(asdict(log)) + "\n")


# =============================================================================
# Pilot Runner
# =============================================================================

def run_pilot(
    llm: PersonalizedLLM,
    user_id: str = "pilot_user_0",
    queries: Optional[List[Dict[str, Any]]] = None,
) -> List[TurnLog]:
    """
    Run a single pilot session.
    
    Returns list of turn logs.
    """
    if queries is None:
        queries = get_fixed_queries()
    
    logs: List[TurnLog] = []
    
    print(f"\n{'='*60}")
    print(f"PILOT SESSION: user_id={user_id}, turns={len(queries)}")
    print(f"{'='*60}")
    
    # Reset user for clean start
    print(f"\n[Pilot] Resetting user: {user_id}")
    llm.reset_user(user_id)
    
    # Start session
    print(f"[Pilot] Starting session")
    llm.reset_session(user_id)
    
    # Get initial state
    state_before = llm.get_user_state_summary(user_id)
    print(f"[Pilot] Initial state: z_long_norm={state_before['z_long_norm']:.6f}, z_short_norm={state_before['z_short_norm']:.6f}")
    
    for turn_id, q_info in enumerate(queries):
        query = q_info["query"]
        query_type = q_info.get("type", "task")
        task_type = q_info.get("task_type", "general")
        
        print(f"\n--- Turn {turn_id} ---")
        print(f"[Query] ({query_type}) {query[:80]}...")
        
        # Get state before
        state_before = llm.get_user_state_summary(user_id)
        z_long_before = state_before["z_long_norm"]
        z_short_before = state_before["z_short_norm"]
        
        # Apply feedback for previous turn (from turn 1 onwards)
        if turn_id > 0 and len(logs) > 0:
            prev_log = logs[-1]
            feedback = Feedback(
                user_id=user_id,
                turn_id=turn_id - 1,
                reward=prev_log.reward,
                gating=prev_log.gating,
                meta={"source": "pilot_v0"}
            )
            print(f"[Feedback] Applying: reward={feedback.reward:.2f}, gating={feedback.gating:.1f}")
            llm.apply_feedback(feedback)
        
        # Chat
        resp: AssistantResponse = llm.chat(user_id, query)
        
        print(f"[Answer] {resp.answer[:100]}..." if len(resp.answer) > 100 else f"[Answer] {resp.answer}")
        print(f"[Usage] prompt={resp.usage.prompt_tokens}, completion={resp.usage.completion_tokens}")
        
        # Judge
        judge_result = minimal_judge(query, resp.answer, task_type)
        print(f"[Judge] sat={judge_result.sat_t:.2f}, prog={judge_result.prog_t:.2f}, violations={judge_result.violations}")
        
        # Compute reward and gating
        reward = judge_result.sat_t  # Simple: reward = satisfaction
        gating = 1.0  # Always allow learning for pilot
        
        # Get state after
        state_after = llm.get_user_state_summary(user_id)
        z_long_after = state_after["z_long_norm"]
        z_short_after = state_after["z_short_norm"]
        
        # Debug info
        num_memories = len(resp.debug.selected_memory_ids) if resp.debug else 0
        num_prefs = len(resp.debug.extracted_preferences) if resp.debug else 0
        
        print(f"[State] z_long: {z_long_before:.6f} -> {z_long_after:.6f}, z_short: {z_short_before:.6f} -> {z_short_after:.6f}")
        print(f"[Debug] memories={num_memories}, prefs_extracted={num_prefs}")
        
        # Log
        log = TurnLog(
            turn_id=turn_id,
            query=query,
            query_type=query_type,
            answer=resp.answer,
            answer_length=len(resp.answer),
            sat_t=judge_result.sat_t,
            sev_t=judge_result.sev_t,
            prog_t=judge_result.prog_t,
            violations=judge_result.violations,
            reward=reward,
            gating=gating,
            z_long_norm_before=z_long_before,
            z_long_norm_after=z_long_after,
            z_short_norm_before=z_short_before,
            z_short_norm_after=z_short_after,
            prompt_tokens=resp.usage.prompt_tokens,
            completion_tokens=resp.usage.completion_tokens,
            total_tokens=resp.usage.total_tokens,
            num_memories_retrieved=num_memories,
            num_prefs_extracted=num_prefs,
        )
        logs.append(log)
    
    # Apply final feedback
    if len(logs) > 0:
        last_log = logs[-1]
        feedback = Feedback(
            user_id=user_id,
            turn_id=len(queries) - 1,
            reward=last_log.reward,
            gating=last_log.gating,
            meta={"source": "pilot_v0", "final": True}
        )
        print(f"\n[Final Feedback] reward={feedback.reward:.2f}, gating={feedback.gating:.1f}")
        llm.apply_feedback(feedback)
    
    return logs


def print_summary(logs: List[TurnLog]):
    """Print summary statistics."""
    print(f"\n{'='*60}")
    print("PILOT SUMMARY")
    print(f"{'='*60}")
    
    total_turns = len(logs)
    avg_sat = sum(l.sat_t for l in logs) / total_turns if total_turns > 0 else 0
    avg_prog = sum(l.prog_t for l in logs) / total_turns if total_turns > 0 else 0
    total_tokens = sum(l.total_tokens for l in logs)
    total_prompt = sum(l.prompt_tokens for l in logs)
    total_completion = sum(l.completion_tokens for l in logs)
    
    # Check if RL updates happened (vector norms changed)
    z_long_changes = [abs(l.z_long_norm_after - l.z_long_norm_before) for l in logs]
    z_short_changes = [abs(l.z_short_norm_after - l.z_short_norm_before) for l in logs]
    any_z_long_change = any(c > 1e-6 for c in z_long_changes)
    any_z_short_change = any(c > 1e-6 for c in z_short_changes)
    
    print(f"Total turns: {total_turns}")
    print(f"Average satisfaction: {avg_sat:.3f}")
    print(f"Average progress: {avg_prog:.3f}")
    print(f"Total tokens: {total_tokens} (prompt: {total_prompt}, completion: {total_completion})")
    print(f"z_long changed: {any_z_long_change} (max delta: {max(z_long_changes):.6f})")
    print(f"z_short changed: {any_z_short_change} (max delta: {max(z_short_changes):.6f})")
    
    # Violations breakdown
    all_violations = [v for l in logs for v in l.violations]
    if all_violations:
        from collections import Counter
        print(f"Violations: {dict(Counter(all_violations))}")
    else:
        print("Violations: None")
    
    # RL Health Check
    print(f"\n--- RL Health Check ---")
    if any_z_long_change or any_z_short_change:
        print("✓ User vectors ARE being updated by RL")
    else:
        print("✗ WARNING: User vectors NOT changing - check apply_feedback")


def main():
    print("=" * 60)
    print("PILOT RUNNER v0")
    print("=" * 60)
    print(f"Started at: {datetime.now().isoformat()}")
    
    # Initialize LLM
    print("\n[Init] Loading PersonalizedLLM...")
    llm = PersonalizedLLM(
        user_store_path="data/users/user_store_pilot.npz",
        only_own_memories=True,
        enable_preference_extraction=True,
        enable_rl_updates=True,
    )
    
    # Run pilot
    user_id = "pilot_user_0"
    logs = run_pilot(llm, user_id=user_id)
    
    # Summary
    print_summary(logs)
    
    # Save logs
    log_path = f"data/logs/pilot_v0_{datetime.now().strftime('%Y%m%d_%H%M%S')}.jsonl"
    log_to_jsonl(logs, log_path)
    print(f"\n[Logs] Saved to: {log_path}")
    
    # Final state
    final_state = llm.get_user_state_summary(user_id)
    print(f"\n[Final State] {final_state}")
    
    print(f"\nCompleted at: {datetime.now().isoformat()}")
    print("=" * 60)


if __name__ == "__main__":
    main()