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+# /// script
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+# requires-python = ">=3.10"
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+# dependencies = [
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+# "trl>=0.12.0",
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+# "peft>=0.7.0",
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+# "transformers>=4.45.0",
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+# "accelerate>=0.24.0",
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+# "huggingface_hub>=0.20.0",
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+# "trackio",
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+# "datasets",
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+# "bitsandbytes",
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+# ]
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+# ///
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+"""
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+GRPO training for Qwen3-4B query expansion model.
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+Trains on top of merged SFT weights with reward function.
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+"""
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+
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+import os
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+import re
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+from collections import Counter
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+
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+import torch
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+import trackio
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+from datasets import load_dataset
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+from huggingface_hub import login
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+from peft import LoraConfig, PeftModel, get_peft_model
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+from transformers import AutoModelForCausalLM, AutoTokenizer
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+from trl import GRPOTrainer, GRPOConfig
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+
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+# ==================== REWARD FUNCTION ====================
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+
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+STOPWORDS = {'the', 'a', 'an', 'is', 'are', 'to', 'for', 'of', 'in', 'and', 'or', 'it', 'this', 'that', 'be', 'with', 'as', 'on', 'by'}
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+KEY_TERM_STOPWORDS = {'what', 'is', 'how', 'to', 'the', 'a', 'an', 'in', 'on', 'for', 'of',
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+ 'and', 'or', 'with', 'my', 'your', 'do', 'does', 'can', 'i', 'me', 'we',
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+ 'who', 'where', 'when', 'why', 'which', 'find', 'get', 'show', 'tell'}
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+
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+GENERIC_LEX_PHRASES = {
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+ 'find information about', 'search for', 'look up', 'get information',
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+ 'learn about', 'information on', 'details about', 'find out about',
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+ 'what is', 'how to', 'guide to', 'help with'
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+}
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+
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+
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+def extract_named_entities(query: str) -> set:
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+ """Extract named entities from query using simple heuristics."""
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+ entities = set()
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+ words = query.split()
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+ prev_was_entity = False
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+
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+ for i, word in enumerate(words):
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+ clean = word.strip('.,!?:;()[]"\'')
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+ if not clean:
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+ prev_was_entity = False
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+ continue
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+
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+ is_entity = False
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+
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+ if clean.isupper() and len(clean) >= 2:
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+ entities.add(clean.lower())
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+ is_entity = True
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+ elif i > 0 and clean[0].isupper() and clean.lower() not in KEY_TERM_STOPWORDS:
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+ entities.add(clean.lower())
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+ is_entity = True
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+ elif any(c in clean for c in '.+-#@') and len(clean) >= 2:
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+ entities.add(clean.lower())
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+ is_entity = True
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+ elif len(clean) > 1 and any(c.isupper() for c in clean[1:]) and clean[0].isupper():
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+ entities.add(clean.lower())
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+ is_entity = True
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+ elif prev_was_entity and clean.lower() not in KEY_TERM_STOPWORDS:
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+ entities.add(clean.lower())
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+ is_entity = True
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+
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+ prev_was_entity = is_entity
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+
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+ return entities
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+
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+
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+def get_key_terms(query: str) -> set:
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+ words = set(query.lower().split())
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+ return words - KEY_TERM_STOPWORDS
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+
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+
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+def lex_preserves_key_terms(lex_line: str, query: str) -> bool:
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+ key_terms = get_key_terms(query)
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+ if not key_terms:
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+ return True
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+ lex_words = set(lex_line.lower().split())
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+ return bool(key_terms & lex_words)
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+
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+
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+def lex_preserves_entities(lex_line: str, entities: set) -> bool:
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+ if not entities:
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+ return True
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+ lex_lower = lex_line.lower()
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+ return any(entity in lex_lower for entity in entities)
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+
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+
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+def lex_is_generic(lex_line: str) -> bool:
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+ lex_lower = lex_line.lower().strip()
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+ for phrase in GENERIC_LEX_PHRASES:
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+ if phrase in lex_lower or lex_lower.startswith(phrase.split()[0]):
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+ remaining = lex_lower
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+ for word in phrase.split():
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+ remaining = remaining.replace(word, '', 1).strip()
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+ if len(remaining) < 3:
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+ return True
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+ return False
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+
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+
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+def parse_expansion(text: str) -> dict:
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+ lines = text.strip().split("\n")
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+ result = {"lex": [], "vec": [], "hyde": [], "invalid": []}
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+ for line in lines:
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+ line = line.strip()
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+ if not line:
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+ continue
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+ if line.startswith("lex:"):
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+ result["lex"].append(line[4:].strip())
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+ elif line.startswith("vec:"):
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+ result["vec"].append(line[4:].strip())
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+ elif line.startswith("hyde:"):
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+ result["hyde"].append(line[5:].strip())
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+ else:
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+ result["invalid"].append(line)
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+ return result
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+
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+
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+def edit_distance_simple(a: str, b: str) -> int:
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+ words_a = set(a.lower().split())
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+ words_b = set(b.lower().split())
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+ return len(words_a ^ words_b)
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+
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+
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+def is_diverse(a: str, b: str, min_distance: int = 2) -> bool:
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+ a, b = a.lower().strip(), b.lower().strip()
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+ if a == b:
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+ return False
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+ if a in b or b in a:
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+ return False
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+ return edit_distance_simple(a, b) >= min_distance
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+
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+
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+def echoes_query(expansion: str, query: str) -> bool:
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+ exp = expansion.lower().strip()
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+ q = query.lower().strip()
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+ if exp == q:
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+ return True
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+ if q in exp and len(exp) < len(q) + 10:
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+ return True
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+ return False
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+
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+
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+def word_repetition_penalty(text: str) -> int:
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+ words = re.findall(r'\b\w+\b', text.lower())
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+ counts = Counter(words)
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+ penalty = 0
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+ for word, count in counts.items():
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+ if count >= 3 and word not in STOPWORDS and len(word) > 2:
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+ penalty += (count - 2) * 2
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+ return penalty
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+
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+
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+def score_expansion(query: str, expansion: str) -> float:
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+ """Score expansion. Returns 0.0-1.0 for RL reward."""
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+ text = expansion.strip()
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+
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+ # HARD FAIL: Chat template artifacts
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+ if any(token in text for token in ['<|im_start|>', '<|im_end|>', '<think>', '</think>',
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+ '\nassistant\n', '\nuser\n', '<|endoftext|>']):
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+ return 0.0
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+
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+ # HARD FAIL: EVERY line must start with lex:, vec:, or hyde:
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+ for line in text.split("\n"):
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+ line = line.strip()
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+ if not line:
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+ continue
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+ if not line.startswith(("lex:", "vec:", "hyde:")):
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+ return 0.0
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+
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+ parsed = parse_expansion(expansion)
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+
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+ # FORMAT (0-30)
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+ format_score = 0
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+ if parsed["lex"]:
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+ format_score += 10
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+ if parsed["vec"]:
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+ format_score += 10
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+ format_score += 10
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+
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+ # DIVERSITY (0-30)
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+ diversity_score = 0
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+ types_present = sum(1 for t in ["lex", "vec"] if parsed[t])
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+ if types_present >= 2:
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+ diversity_score += 10
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+ total_expansions = len(parsed["lex"]) + len(parsed["vec"])
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+ if total_expansions >= 2:
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+ diversity_score += 5
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+
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+ lex_score = 5
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+ for i, a in enumerate(parsed["lex"]):
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+ for b in parsed["lex"][i+1:]:
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+ if not is_diverse(a, b, 2):
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+ lex_score -= 2
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+ diversity_score += max(0, lex_score)
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+
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+ vec_score = 5
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+ for i, a in enumerate(parsed["vec"]):
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+ for b in parsed["vec"][i+1:]:
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+ if not is_diverse(a, b, 3):
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+ vec_score -= 2
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+ diversity_score += max(0, vec_score)
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+
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+ echo_score = 5
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+ for exp in parsed["lex"] + parsed["vec"]:
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+ if echoes_query(exp, query):
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+ echo_score -= 3
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+ diversity_score += max(0, echo_score)
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+
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+ # HYDE (0-20)
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+ hyde_score = 0
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+ if parsed["hyde"]:
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+ hyde_text = parsed["hyde"][0]
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+ hyde_score += 5
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+ hyde_len = len(hyde_text)
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+ if 50 <= hyde_len <= 200:
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+ hyde_score += 5
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+ elif hyde_len < 50:
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+ hyde_score += 2
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+ if "\n" not in hyde_text:
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+ hyde_score += 5
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+ rep_penalty = word_repetition_penalty(hyde_text)
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+ hyde_score += max(0, 5 - rep_penalty)
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+
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+ # QUALITY (0-20)
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+ quality_score = 5
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+ if parsed["lex"] and parsed["vec"]:
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+ avg_lex = sum(len(l) for l in parsed["lex"]) / len(parsed["lex"])
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+ avg_vec = sum(len(v) for v in parsed["vec"]) / len(parsed["vec"])
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+ if avg_lex <= avg_vec:
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+ quality_score += 5
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+ if parsed["vec"]:
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+ natural = sum(1 for v in parsed["vec"] if " " in v and len(v) > 15)
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+ if natural == len(parsed["vec"]):
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+ quality_score += 5
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+ else:
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+ quality_score += 2
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+ if parsed["lex"]:
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+ lex_with_terms = sum(1 for l in parsed["lex"] if lex_preserves_key_terms(l, query))
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+ if lex_with_terms == len(parsed["lex"]):
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+ quality_score += 5
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+ elif lex_with_terms > 0:
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+ quality_score += 2
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+
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+ # NAMED ENTITY PRESERVATION
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+ entity_score = 0
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+ entities = extract_named_entities(query)
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+ if entities and parsed["lex"]:
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+ lex_with_entities = sum(1 for l in parsed["lex"] if lex_preserves_entities(l, entities))
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+ if lex_with_entities == len(parsed["lex"]):
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+ entity_score += 15
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+ elif lex_with_entities > 0:
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+ entity_score += 5
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+ else:
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+ entity_score -= 30
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+
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+ generic_count = sum(1 for l in parsed["lex"] if lex_is_generic(l))
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+ entity_score -= generic_count * 15
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+
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+ if parsed["vec"]:
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+ vec_with_entities = sum(1 for v in parsed["vec"] if lex_preserves_entities(v, entities))
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+ if vec_with_entities > 0:
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+ entity_score += 5
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+ elif not entities:
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+ entity_score = 10
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+
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+ total = format_score + diversity_score + hyde_score + quality_score + entity_score
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+ max_possible = 120 if parsed["hyde"] else 100
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+ return max(0.0, min(1.0, total / max_possible))
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+
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+
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+def extract_query_from_prompt(prompt: str) -> str:
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+ if "Expand this search query:" in prompt:
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+ return prompt.split("Expand this search query:")[-1].strip()
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+ return prompt.strip()
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+
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+
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+class QMDRewardFunction:
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+ __name__ = "qmd_scoring_reward"
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+
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+ def __call__(self, completions: list[str], prompts: list[str] = None, **kwargs) -> list[float]:
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+ rewards = []
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+ for i, completion in enumerate(completions):
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+ query = ""
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+ if prompts and i < len(prompts):
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+ query = extract_query_from_prompt(prompts[i])
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+ score = score_expansion(query, completion)
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+ rewards.append(score)
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+ return rewards
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+
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+
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+# ==================== MAIN ====================
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+
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+def main():
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+ # Config
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+ SFT_MODEL = "tobil/qmd-query-expansion-4B-sft"
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+ BASE_MODEL = "Qwen/Qwen3-4B"
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+ OUTPUT_MODEL = "tobil/qmd-query-expansion-4B-grpo"
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+ DATASET = "tobil/qmd-query-expansion-train-v2"
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+
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+ # Login
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+ hf_token = os.environ.get("HF_TOKEN")
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+ if hf_token:
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+ print("Logging in to HuggingFace Hub...")
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+ login(token=hf_token)
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+
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+ # Load dataset
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+ print("Loading dataset...")
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+ dataset = load_dataset(DATASET, split="train")
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+
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+ def extract_prompt(example):
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+ return {"prompt": example["messages"][0]["content"]}
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+
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+ dataset = dataset.map(extract_prompt, remove_columns=dataset.column_names)
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+ dataset = dataset.shuffle(seed=42).select(range(min(1000, len(dataset))))
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+ print(f"Using {len(dataset)} prompts for GRPO")
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+
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+ # Load tokenizer and model
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+ print(f"Loading tokenizer from {BASE_MODEL}...")
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+ tokenizer = AutoTokenizer.from_pretrained(BASE_MODEL)
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+ if tokenizer.pad_token is None:
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+ tokenizer.pad_token = tokenizer.eos_token
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+
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+ print(f"Loading SFT model from {SFT_MODEL}...")
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+ base_model = AutoModelForCausalLM.from_pretrained(
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+ BASE_MODEL,
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+ torch_dtype=torch.bfloat16,
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+ device_map="auto",
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+ )
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+ model = PeftModel.from_pretrained(base_model, SFT_MODEL)
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+ model = model.merge_and_unload()
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+ print("Model loaded and LoRA merged.")
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+
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+ # Add LoRA for GRPO
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+ grpo_lora_config = LoraConfig(
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+ r=4,
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+ lora_alpha=8,
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+ lora_dropout=0.05,
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+ bias="none",
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+ task_type="CAUSAL_LM",
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+ target_modules=["q_proj", "v_proj"],
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+ )
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+ model = get_peft_model(model, grpo_lora_config)
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+ model.print_trainable_parameters()
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+
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+ # GRPO config
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+ config = GRPOConfig(
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+ output_dir="qmd-query-expansion-4B-grpo",
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+ push_to_hub=True,
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+ hub_model_id=OUTPUT_MODEL,
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+
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+ num_generations=4,
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+ max_completion_length=200,
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+
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+ num_train_epochs=1,
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+ per_device_train_batch_size=1, # Smaller for 4B model
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+ gradient_accumulation_steps=16, # Compensate with more accumulation
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+ learning_rate=5e-7,
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+ max_grad_norm=0.5,
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+ max_steps=200,
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+
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+ logging_steps=10,
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+ save_strategy="epoch",
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+
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+ report_to="trackio",
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+ project="qmd-query-expansion",
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+ run_name="qwen3-4b-grpo",
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+ )
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+
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+ # Train
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+ print("Initializing GRPO trainer...")
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+ trainer = GRPOTrainer(
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+ model=model,
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+ processing_class=tokenizer,
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+ args=config,
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+ train_dataset=dataset,
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+ reward_funcs=[QMDRewardFunction()],
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+ )
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+
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+ print("Starting GRPO training...")
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+ trainer.train()
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+
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+ print("Pushing to Hub...")
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+ trainer.push_to_hub()
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+
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+ trackio.finish()
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+ print(f"Complete! Model at: https://huggingface.co/{OUTPUT_MODEL}")
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+
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+
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+if __name__ == "__main__":
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+ main()
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