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+# /// script
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+# requires-python = ">=3.10"
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+# dependencies = [
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+# "transformers>=4.45.0",
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+# "peft>=0.7.0",
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+# "torch",
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+# "accelerate",
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+# ]
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+# ///
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+"""
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+QMD Retrieval-Based Evaluation with Precision & Recall
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+
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+Evaluates model outputs against golden data (training set).
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+Measures how well the model reproduces the expected expansions.
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+
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+Metrics:
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+- Precision: Of model-generated expansions, how many match golden?
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+- Recall: Of golden expansions, how many did the model generate?
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+- F1: Harmonic mean of precision and recall
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+
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+Matching is done via token overlap (Jaccard similarity) with a threshold.
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+
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+Usage:
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+ uv run eval_retrieval.py ./outputs/sft
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+ uv run eval_retrieval.py tobil/qmd-query-expansion-1.7B --golden data/qmd_expansion_v3_structured.jsonl
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+ uv run eval_retrieval.py ./outputs/sft --threshold 0.5 --sample 100
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+"""
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+
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+import argparse
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+import json
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+import random
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+import re
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+import sys
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+from collections import defaultdict
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+from pathlib import Path
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+
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+# =============================================================================
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+# Matching Functions
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+# =============================================================================
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+
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+def tokenize(text: str) -> set[str]:
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+ """Tokenize text into lowercase word set, removing stopwords."""
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+ stopwords = {'the', 'a', 'an', 'is', 'are', 'to', 'for', 'of', 'in', 'and',
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+ 'or', 'it', 'this', 'that', 'be', 'with', 'as', 'on', 'by',
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+ 'how', 'what', 'do', 'does', 'can', 'you', 'your', 'i'}
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+ words = re.findall(r'\b\w+\b', text.lower())
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+ return {w for w in words if w not in stopwords and len(w) > 1}
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+
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+
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+def jaccard_similarity(a: str, b: str) -> float:
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+ """Jaccard similarity between two strings based on token overlap."""
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+ tokens_a = tokenize(a)
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+ tokens_b = tokenize(b)
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+ if not tokens_a or not tokens_b:
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+ return 0.0
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+ intersection = len(tokens_a & tokens_b)
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+ union = len(tokens_a | tokens_b)
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+ return intersection / union if union > 0 else 0.0
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+
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+
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+def find_best_match(pred: str, golden_list: list[str], threshold: float) -> tuple[str | None, float]:
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+ """Find best matching golden expansion for a prediction."""
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+ best_match = None
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+ best_score = 0.0
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+ for golden in golden_list:
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+ score = jaccard_similarity(pred, golden)
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+ if score > best_score:
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+ best_score = score
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+ best_match = golden
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+ if best_score >= threshold:
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+ return best_match, best_score
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+ return None, best_score
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+
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+
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+# =============================================================================
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+# Parsing
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+# =============================================================================
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+
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+def parse_model_output(text: str) -> dict[str, list[str]]:
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+ """Parse model output into {lex: [...], vec: [...], hyde: [...]}."""
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+ # Clean thinking tags
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+ text = re.sub(r'<think>.*?</think>', '', text, flags=re.DOTALL)
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+ text = text.replace('<|im_end|>', '').strip()
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+
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+ result = {"lex": [], "vec": [], "hyde": []}
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+ for line in text.strip().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 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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+ return result
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+
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+
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+def parse_golden_data(searches: list[dict] | str) -> dict[str, list[str]]:
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+ """Parse golden data format into {lex: [...], vec: [...], hyde: [...]}."""
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+ # If it's a string (from messages format), parse it
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+ if isinstance(searches, str):
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+ return parse_model_output(searches)
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+
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+ # Otherwise it's the structured format [{type, query}, ...]
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+ result = {"lex": [], "vec": [], "hyde": []}
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+ for item in searches:
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+ exp_type = item.get("type", "")
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+ value = item.get("query", "") or item.get("value", "")
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+ if exp_type in result:
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+ result[exp_type].append(value)
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+ return result
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+
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+
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+def load_golden_data(filepath: Path) -> list[dict]:
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+ """Load golden data from JSONL, supporting both structured and messages formats."""
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+ data = []
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+ with open(filepath) as f:
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+ for line in f:
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+ if not line.strip():
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+ continue
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+ item = json.loads(line)
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+
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+ # Structured format: {query, searches}
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+ if "query" in item and "searches" in item:
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+ data.append({
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+ "query": item["query"],
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+ "searches": item["searches"]
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+ })
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+ # Messages format: {messages: [{role, content}, ...]}
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+ elif "messages" in item:
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+ messages = item["messages"]
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+ query = None
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+ searches = None
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+ for msg in messages:
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+ if msg["role"] == "user":
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+ # Extract query from "/no_think Expand this search query: ..."
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+ content = msg["content"]
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+ if "Expand this search query:" in content:
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+ query = content.split("Expand this search query:")[-1].strip()
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+ else:
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+ query = content.strip()
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+ elif msg["role"] == "assistant":
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+ # The assistant content IS the expected output
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+ searches = msg["content"]
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+ if query and searches:
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+ data.append({
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+ "query": query,
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+ "searches": searches # Will be parsed as string
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+ })
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+ return data
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+
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+
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+# =============================================================================
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+# Metrics Calculation
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+# =============================================================================
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+
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+# Different thresholds by type - lex needs strict matching, hyde is more flexible
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+DEFAULT_THRESHOLDS = {
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+ "lex": 0.5, # Keywords should overlap well
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+ "vec": 0.35, # Semantic sentences have more variation
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+ "hyde": 0.25, # Passages have the most variation
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+}
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+
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+
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+def calculate_metrics(
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+ predictions: dict[str, list[str]],
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+ golden: dict[str, list[str]],
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+ threshold: float | dict[str, float] = 0.4,
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+ return_mismatches: bool = False
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+) -> dict:
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+ """Calculate precision, recall, F1 per type and overall.
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+
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+ Args:
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+ threshold: Either a single float, or dict mapping type -> threshold
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+ return_mismatches: If True, include lists of unmatched predictions/golden
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+ """
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+ if isinstance(threshold, (int, float)):
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+ thresholds = {"lex": threshold, "vec": threshold, "hyde": threshold}
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+ else:
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+ thresholds = threshold
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+
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+ metrics = {}
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+ mismatches = {}
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+ total_tp = 0
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+ total_pred = 0
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+ total_golden = 0
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+
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+ for exp_type in ["lex", "vec", "hyde"]:
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+ preds = predictions.get(exp_type, [])
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+ golds = golden.get(exp_type, [])
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+ type_threshold = thresholds.get(exp_type, 0.4)
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+
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+ if not preds and not golds:
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+ continue
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+
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+ # Track which golden items were matched
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+ matched_golden = set()
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+ unmatched_preds = []
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+ tp = 0
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+
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+ for pred in preds:
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+ match, score = find_best_match(pred, golds, type_threshold)
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+ if match is not None:
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+ tp += 1
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+ matched_golden.add(match)
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+ else:
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+ unmatched_preds.append((pred, score))
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+
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+ unmatched_golden = [g for g in golds if g not in matched_golden]
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+
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+ precision = tp / len(preds) if preds else 0.0
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+ recall = len(matched_golden) / len(golds) if golds else 0.0
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+ f1 = 2 * precision * recall / (precision + recall) if (precision + recall) > 0 else 0.0
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+
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+ metrics[exp_type] = {
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+ "precision": precision,
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+ "recall": recall,
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+ "f1": f1,
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+ "pred_count": len(preds),
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+ "golden_count": len(golds),
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+ "matched": tp,
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+ }
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+
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+ if return_mismatches:
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+ mismatches[exp_type] = {
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+ "unmatched_preds": unmatched_preds,
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+ "unmatched_golden": unmatched_golden,
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+ }
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+
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+ total_tp += tp
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+ total_pred += len(preds)
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+ total_golden += len(golds)
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+
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+ # Overall metrics (micro-averaged)
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+ overall_precision = total_tp / total_pred if total_pred > 0 else 0.0
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+ overall_recall = total_tp / total_golden if total_golden > 0 else 0.0
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+ overall_f1 = 2 * overall_precision * overall_recall / (overall_precision + overall_recall) if (overall_precision + overall_recall) > 0 else 0.0
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+
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+ metrics["overall"] = {
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+ "precision": overall_precision,
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+ "recall": overall_recall,
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+ "f1": overall_f1,
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+ "pred_count": total_pred,
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+ "golden_count": total_golden,
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+ "matched": total_tp,
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+ }
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+
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+ if return_mismatches:
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+ metrics["_mismatches"] = mismatches
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+
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+ return metrics
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+
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+
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+# =============================================================================
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+# Model Loading and Generation
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+# =============================================================================
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+
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+def load_model(model_path: str):
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+ """Load model (adapter or merged)."""
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+ import torch
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+ from peft import PeftModel
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+ from transformers import AutoConfig, AutoModelForCausalLM, AutoTokenizer
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+
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+ model_path = Path(model_path)
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+ adapter_config = model_path / "adapter_config.json"
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+
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+ # Get base model from adapter config or default
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+ base_model = "Qwen/Qwen3-1.7B"
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+ if adapter_config.exists():
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+ with open(adapter_config) as f:
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+ cfg = json.load(f)
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+ base_model = cfg.get("base_model_name_or_path", base_model)
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+
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+ print(f"Loading base: {base_model}", file=sys.stderr)
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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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+ tokenizer.padding_side = "left"
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+
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+ config = AutoConfig.from_pretrained(base_model)
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+ config.tie_word_embeddings = False
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+ model = AutoModelForCausalLM.from_pretrained(
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+ base_model, dtype=torch.bfloat16, device_map={"": 0}, config=config
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+ )
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+ if model.generation_config is not None:
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+ model.generation_config.do_sample = False
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+ model.generation_config.temperature = None
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+ model.generation_config.top_p = None
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+ model.generation_config.top_k = None
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+
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+ # Load adapter if present
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+ if adapter_config.exists():
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+ print(f"Loading adapter: {model_path}", file=sys.stderr)
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+ model = PeftModel.from_pretrained(model, str(model_path))
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+
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+ model.eval()
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+ return model, tokenizer
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+
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+
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+def generate_expansion(model, tokenizer, query: str, max_new_tokens: int = 400) -> str:
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+ """Generate expansion for a single query."""
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+ import torch
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+
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+ prompt = tokenizer.apply_chat_template(
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+ [{"role": "user", "content": f"/no_think Expand this search query: {query}"}],
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+ tokenize=False,
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+ add_generation_prompt=True,
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+ )
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+ inputs = tokenizer(prompt, return_tensors="pt").to(model.device)
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+ input_len = inputs["input_ids"].shape[1]
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+
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+ with torch.inference_mode():
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+ out = model.generate(
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+ **inputs,
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+ max_new_tokens=max_new_tokens,
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+ do_sample=False,
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+ num_beams=1,
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+ pad_token_id=tokenizer.pad_token_id,
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+ eos_token_id=tokenizer.eos_token_id,
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+ use_cache=True,
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+ )
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+
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+ gen_tokens = out[0][input_len:]
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+ return tokenizer.decode(gen_tokens, skip_special_tokens=True)
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+
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+
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+# =============================================================================
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+# Main Evaluation
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+# =============================================================================
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+
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+def main():
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+ parser = argparse.ArgumentParser(description="QMD Retrieval-Based Evaluation")
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+ parser.add_argument("model", help="Model path (local or HF)")
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+ parser.add_argument("--golden", default="data/qmd_expansion_v3_structured.jsonl",
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+ help="Golden data JSONL file")
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+ parser.add_argument("--threshold", type=float, default=None,
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+ help="Jaccard similarity threshold for all types (overrides --type-thresholds)")
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+ parser.add_argument("--type-thresholds", action="store_true",
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+ help="Use type-specific thresholds (lex=0.5, vec=0.35, hyde=0.25)")
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+ parser.add_argument("--sample", type=int, default=0,
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+ help="Sample N queries (0 = all)")
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+ parser.add_argument("--seed", type=int, default=42,
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+ help="Random seed for sampling")
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+ parser.add_argument("--max-new-tokens", type=int, default=400,
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+ help="Max new tokens to generate")
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+ parser.add_argument("--verbose", "-v", action="store_true",
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+ help="Show per-query details")
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+ parser.add_argument("--show-mismatches", action="store_true",
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+ help="Show examples of mismatched predictions")
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+ args = parser.parse_args()
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+
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+ # Determine thresholds
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+ if args.threshold is not None:
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+ thresholds = args.threshold
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+ elif args.type_thresholds:
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+ thresholds = DEFAULT_THRESHOLDS.copy()
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+ else:
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+ thresholds = 0.4 # Default single threshold
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+
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+ # Load golden data
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+ golden_path = Path(args.golden)
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+ if not golden_path.exists():
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+ # Try relative to script directory
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+ golden_path = Path(__file__).parent / args.golden
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+
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+ if not golden_path.exists():
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+ print(f"Error: Golden data file not found: {args.golden}", file=sys.stderr)
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+ sys.exit(1)
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+
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+ print(f"Loading golden data from {golden_path}...", file=sys.stderr)
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+ golden_data = load_golden_data(golden_path)
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+ print(f"Loaded {len(golden_data)} golden examples", file=sys.stderr)
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+
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+ # Sample if requested
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+ if args.sample > 0 and args.sample < len(golden_data):
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+ random.seed(args.seed)
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+ golden_data = random.sample(golden_data, args.sample)
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+ print(f"Sampled {len(golden_data)} examples", file=sys.stderr)
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+
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+ # Load model
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+ model, tokenizer = load_model(args.model)
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+
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+ # Evaluate
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+ all_metrics = []
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+ all_mismatches = []
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+ type_aggregates = defaultdict(lambda: {"precision": [], "recall": [], "f1": []})
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+
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+ threshold_desc = thresholds if isinstance(thresholds, (int, float)) else f"lex={thresholds['lex']}, vec={thresholds['vec']}, hyde={thresholds['hyde']}"
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+ print(f"\nEvaluating {len(golden_data)} queries (thresholds: {threshold_desc})...\n")
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+
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+ for i, item in enumerate(golden_data, 1):
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+ query = item["query"]
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+ golden_parsed = parse_golden_data(item["searches"])
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+
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+ # Generate model output
|
|
|
+ output = generate_expansion(model, tokenizer, query, args.max_new_tokens)
|
|
|
+ pred_parsed = parse_model_output(output)
|
|
|
+
|
|
|
+ # Calculate metrics
|
|
|
+ metrics = calculate_metrics(pred_parsed, golden_parsed, thresholds, return_mismatches=args.show_mismatches)
|
|
|
+ all_metrics.append({"query": query, "metrics": metrics, "pred": pred_parsed, "golden": golden_parsed})
|
|
|
+
|
|
|
+ if args.show_mismatches and "_mismatches" in metrics:
|
|
|
+ all_mismatches.append({"query": query, "mismatches": metrics.pop("_mismatches")})
|
|
|
+
|
|
|
+ # Aggregate by type
|
|
|
+ for exp_type in ["lex", "vec", "hyde", "overall"]:
|
|
|
+ if exp_type in metrics:
|
|
|
+ type_aggregates[exp_type]["precision"].append(metrics[exp_type]["precision"])
|
|
|
+ type_aggregates[exp_type]["recall"].append(metrics[exp_type]["recall"])
|
|
|
+ type_aggregates[exp_type]["f1"].append(metrics[exp_type]["f1"])
|
|
|
+
|
|
|
+ # Progress
|
|
|
+ overall = metrics.get("overall", {})
|
|
|
+ p = overall.get("precision", 0) * 100
|
|
|
+ r = overall.get("recall", 0) * 100
|
|
|
+ f = overall.get("f1", 0) * 100
|
|
|
+
|
|
|
+ if args.verbose:
|
|
|
+ print(f"[{i:3d}/{len(golden_data)}] P={p:5.1f}% R={r:5.1f}% F1={f:5.1f}% {query[:50]}")
|
|
|
+ elif i % 50 == 0 or i == len(golden_data):
|
|
|
+ print(f" Processed {i}/{len(golden_data)}...", file=sys.stderr)
|
|
|
+
|
|
|
+ # Summary
|
|
|
+ print(f"\n{'='*60}")
|
|
|
+ print(f"RESULTS: {args.model}")
|
|
|
+ print(f"{'='*60}")
|
|
|
+ print(f"Threshold: {args.threshold} | Samples: {len(golden_data)}")
|
|
|
+ print()
|
|
|
+
|
|
|
+ print(f"{'Type':<10} {'Precision':>10} {'Recall':>10} {'F1':>10}")
|
|
|
+ print("-" * 42)
|
|
|
+
|
|
|
+ for exp_type in ["lex", "vec", "hyde", "overall"]:
|
|
|
+ if exp_type in type_aggregates:
|
|
|
+ agg = type_aggregates[exp_type]
|
|
|
+ avg_p = sum(agg["precision"]) / len(agg["precision"]) * 100 if agg["precision"] else 0
|
|
|
+ avg_r = sum(agg["recall"]) / len(agg["recall"]) * 100 if agg["recall"] else 0
|
|
|
+ avg_f = sum(agg["f1"]) / len(agg["f1"]) * 100 if agg["f1"] else 0
|
|
|
+ label = exp_type.upper() if exp_type != "overall" else "OVERALL"
|
|
|
+ print(f"{label:<10} {avg_p:>9.1f}% {avg_r:>9.1f}% {avg_f:>9.1f}%")
|
|
|
+
|
|
|
+ print(f"{'='*60}")
|
|
|
+
|
|
|
+ # Show worst examples
|
|
|
+ print("\nBottom 5 by F1:")
|
|
|
+ sorted_by_f1 = sorted(all_metrics, key=lambda x: x["metrics"].get("overall", {}).get("f1", 0))
|
|
|
+ for item in sorted_by_f1[:5]:
|
|
|
+ f1 = item["metrics"].get("overall", {}).get("f1", 0) * 100
|
|
|
+ print(f" {f1:5.1f}% {item['query'][:60]}")
|
|
|
+
|
|
|
+ # Show mismatches if requested
|
|
|
+ if args.show_mismatches and all_mismatches:
|
|
|
+ print(f"\n{'='*60}")
|
|
|
+ print("MISMATCH EXAMPLES")
|
|
|
+ print(f"{'='*60}")
|
|
|
+
|
|
|
+ # Group by type and show up to 3 examples per type
|
|
|
+ for exp_type in ["lex", "vec", "hyde"]:
|
|
|
+ type_mismatches = []
|
|
|
+ for item in all_mismatches:
|
|
|
+ if exp_type in item["mismatches"]:
|
|
|
+ mm = item["mismatches"][exp_type]
|
|
|
+ if mm["unmatched_preds"] or mm["unmatched_golden"]:
|
|
|
+ type_mismatches.append({
|
|
|
+ "query": item["query"],
|
|
|
+ **mm
|
|
|
+ })
|
|
|
+
|
|
|
+ if type_mismatches:
|
|
|
+ print(f"\n--- {exp_type.upper()} mismatches ({len(type_mismatches)} queries) ---")
|
|
|
+ for example in type_mismatches[:3]:
|
|
|
+ print(f"\nQuery: {example['query'][:60]}")
|
|
|
+ if example["unmatched_preds"]:
|
|
|
+ print(f" Unmatched predictions:")
|
|
|
+ for pred, score in example["unmatched_preds"][:2]:
|
|
|
+ print(f" - [{score:.2f}] {pred[:80]}{'...' if len(pred) > 80 else ''}")
|
|
|
+ if example["unmatched_golden"]:
|
|
|
+ print(f" Missing golden:")
|
|
|
+ for g in example["unmatched_golden"][:2]:
|
|
|
+ print(f" - {g[:80]}{'...' if len(g) > 80 else ''}")
|
|
|
+
|
|
|
+ return 0
|
|
|
+
|
|
|
+
|
|
|
+if __name__ == "__main__":
|
|
|
+ sys.exit(main())
|