| """ |
| Selector v4 — PAIRWISE selector SFT data builder (Chase-SQL style). |
| |
| Chase-SQL (Pourreza et al.) frames the selector as a head-to-head judge: |
| given (question, schema, candidate_A, candidate_B, exec_a, exec_b), the |
| model outputs which one is more likely correct. At inference, K=8 candidates |
| are compared in a round-robin tournament (28 calls) or single-elimination |
| bracket (7 calls); the candidate with the most pairwise wins is picked. |
| |
| Pros vs pointwise YES/NO: |
| - Direct preference signal (no calibration of independent probabilities). |
| - Captures fine-grained discrimination between near-duplicate SQLs. |
| |
| Data construction: |
| For each BIRD-train question with at least one YES and one NO trajectory: |
| - For each (yes_sql, no_sql) pair, emit TWO records: |
| A = yes, B = no, label = "A" |
| A = no, B = yes, label = "B" |
| → 50/50 label balance, twice the data. |
| Hard negatives: prefer NO SQLs with high lexical overlap to a YES SQL |
| (Jaccard on word tokens). Cap at HARDNEG_PER_POS per YES per question. |
| |
| Output: |
| data/sft_selector_v4_pairwise/{train,test} |
| Each row: {"prompt", "completion", "messages", "question", "db_id"} |
| """ |
| import json, os, re, sys, random |
| from concurrent.futures import ThreadPoolExecutor, as_completed |
|
|
| ROOT = "/weka/s225250685/mats-tist" |
| os.chdir(ROOT); sys.path.insert(0, ROOT) |
| os.environ.setdefault("DB_EXEC_API_DISABLE", "1") |
| os.environ.setdefault("PYTHONNOUSERSITE", "1") |
|
|
| from validator_data.validator import _execute_sql |
| from datasets import Dataset, DatasetDict |
| from scripts.rich_schema import render_rich_schema |
|
|
| PAIRWISE_PROMPT = ( |
| "You are a SQL correctness judge. Compare two candidate SQL queries that " |
| "attempt to answer the same question. Pick the one MORE LIKELY to be correct.\n\n" |
| "Database schema (with column descriptions, value descriptions, and example values):\n" |
| "{schema}\n\n" |
| "Question: {question}\n" |
| "External knowledge: {evidence}\n\n" |
| "Candidate A:\n{sql_a}\n\n" |
| "Execution result of A:\n{exec_a}\n\n" |
| "Candidate B:\n{sql_b}\n\n" |
| "Execution result of B:\n{exec_b}\n\n" |
| "Which candidate is more likely to correctly answer the question? " |
| "Answer with a single letter: A or B." |
| ) |
|
|
| SRC_PATHS = [ |
| "data/rollouts/bird_train_3stage_K4.jsonl", |
| "data/rollouts/scaleup_bird_train_2stage_K4.jsonl", |
| "data/rollouts/scaleup_bird_train_3stage_K4.jsonl", |
| "data/rollouts/iter2_bird_train_3stage_K8.jsonl", |
| ] |
| OUT_DIR = "data/sft_selector_v4_pairwise" |
|
|
| HARDNEG_PER_POS = 3 |
| MAX_PAIRS_PER_Q = 6 |
| MAX_SCHEMA_CHARS = 3000 |
| EXEC_TIMEOUT = 5 |
|
|
|
|
| def safe_truncate(s, n=400): |
| s = str(s) if s is not None else "" |
| return s if len(s) <= n else s[:n] + "..." |
|
|
| def tokens(sql): |
| return set(re.findall(r"[a-zA-Z_][a-zA-Z0-9_]+|[<>=!]+", (sql or "").lower())) |
|
|
| def jaccard(a, b): |
| if not a or not b: return 0.0 |
| return len(a & b) / max(len(a | b), 1) |
|
|
| def exec_str(db_path, sql): |
| try: |
| r, err = _execute_sql("./" + db_path, sql, timeout=EXEC_TIMEOUT) |
| except Exception as e: |
| return f"Error: {str(e)[:140]}" |
| if err: |
| return f"Error: {str(r)[:140]}" |
| rows = str(r)[:220] |
| if rows.strip() and rows.strip() != "[]": |
| return f"OK. Rows preview: {rows}" |
| return "OK. (no rows returned)" |
|
|
|
|
| def collect_question_groups(): |
| by_q = {} |
| for src in SRC_PATHS: |
| if not os.path.exists(src): |
| print(f"skip missing: {src}", flush=True) |
| continue |
| print(f"loading {src}...", flush=True) |
| with open(src) as f: |
| for line in f: |
| line = line.strip() |
| if not line: continue |
| s = json.loads(line) |
| key = (s.get("question",""), s.get("db_id","")) |
| if key not in by_q: |
| by_q[key] = {"sample": s, "cands": [], "seen": set()} |
| for t in s.get("trajectories", []): |
| sql = (t.get("fixed_sql") or t.get("planner_sql") or "").strip() |
| if not sql: continue |
| norm = re.sub(r"\s+", " ", sql.lower()) |
| if norm in by_q[key]["seen"]: continue |
| by_q[key]["seen"].add(norm) |
| correct = bool(t.get("is_fixed_correct") if t.get("fixed_sql") else t.get("is_planner_correct")) |
| by_q[key]["cands"].append((sql, correct)) |
| print(f"unique questions: {len(by_q)}", flush=True) |
| out = [] |
| for k, v in by_q.items(): |
| yes = [c[0] for c in v["cands"] if c[1]] |
| no = [c[0] for c in v["cands"] if not c[1]] |
| if not yes or not no: |
| continue |
| out.append((v["sample"], yes, no)) |
| print(f"questions with BOTH YES and NO: {len(out)}", flush=True) |
| return out |
|
|
|
|
| def build_pair_records(rng, qgroups): |
| """For each question, emit at most MAX_PAIRS_PER_Q (yes, no) pairs with hard-neg ranking. |
| Each pair becomes 2 records (A=YES,B=NO; A=NO,B=YES).""" |
| raw = [] |
| for sample, yes_list, no_list in qgroups: |
| |
| no_scored = [] |
| yes_toks = [tokens(y) for y in yes_list] |
| for ns in no_list: |
| t_no = tokens(ns) |
| best = max((jaccard(t_no, ty) for ty in yes_toks), default=0.0) |
| no_scored.append((best, ns)) |
| no_scored.sort(reverse=True) |
|
|
| pairs = [] |
| for ys in yes_list: |
| for _, ns in no_scored[:HARDNEG_PER_POS]: |
| pairs.append((ys, ns)) |
| if len(pairs) >= MAX_PAIRS_PER_Q: |
| break |
| if len(pairs) >= MAX_PAIRS_PER_Q: |
| break |
| for ys, ns in pairs: |
| raw.append((sample, ys, ns)) |
| return raw |
|
|
|
|
| def render_pair(rng_seed, item): |
| """Produce TWO records (swapped A/B) so labels are balanced.""" |
| sample, sql_yes, sql_no = item |
| rng = random.Random(rng_seed) |
| db_path = sample["db_path"] |
| schema = safe_truncate(render_rich_schema(sample, split="train"), MAX_SCHEMA_CHARS) |
| question = sample.get("question", "") |
| evidence = sample.get("evidence", "") or "None" |
|
|
| exec_yes = safe_truncate(exec_str(db_path, sql_yes), 220) |
| exec_no = safe_truncate(exec_str(db_path, sql_no), 220) |
|
|
| out = [] |
| for swap in (False, True): |
| if not swap: |
| a, b, ea, eb, label = sql_yes, sql_no, exec_yes, exec_no, "A" |
| else: |
| a, b, ea, eb, label = sql_no, sql_yes, exec_no, exec_yes, "B" |
| prompt = PAIRWISE_PROMPT.format( |
| schema=schema, question=question, evidence=evidence, |
| sql_a=safe_truncate(a, 600), exec_a=ea, |
| sql_b=safe_truncate(b, 600), exec_b=eb, |
| ) |
| out.append({ |
| "prompt": prompt, |
| "completion": label, |
| "messages": [ |
| {"role": "user", "content": prompt}, |
| {"role": "assistant", "content": label}, |
| ], |
| "question": question, |
| "db_id": sample.get("db_id", ""), |
| }) |
| return out |
|
|
|
|
| def main(): |
| rng = random.Random(42) |
| qg = collect_question_groups() |
| raw = build_pair_records(rng, qg) |
| print(f"raw (yes, no) pairs: {len(raw)} → records: {2*len(raw)}", flush=True) |
|
|
| out = [] |
| with ThreadPoolExecutor(max_workers=8) as exe: |
| futs = [exe.submit(render_pair, i, it) for i, it in enumerate(raw)] |
| n_done = 0 |
| for fut in as_completed(futs): |
| try: |
| out.extend(fut.result()) |
| except Exception as e: |
| print(f"render err: {e}", flush=True) |
| n_done += 1 |
| if n_done % 1000 == 0: |
| print(f" rendered {n_done}/{len(raw)} pairs", flush=True) |
|
|
| rng.shuffle(out) |
| n_test = max(500, len(out) // 25) |
| test = out[:n_test]; train = out[n_test:] |
| n_a = sum(1 for r in train if r["completion"] == "A") |
| print(f"\n=== v4 PAIRWISE selector data ===") |
| print(f" train: {len(train)} ({100*n_a/max(len(train),1):.1f}% A-label)") |
| print(f" test: {len(test)}") |
| avg = sum(len(r["prompt"]) for r in train) / max(len(train),1) |
| print(f" avg prompt chars: {avg:.0f}") |
| DatasetDict({ |
| "train": Dataset.from_list(train), |
| "test": Dataset.from_list(test), |
| }).save_to_disk(OUT_DIR) |
| print(f" saved {OUT_DIR}", flush=True) |
|
|
|
|
| if __name__ == "__main__": |
| main() |
|
|