mirror of
https://github.com/ranausmanai/tinyforge-zero.git
synced 2026-06-08 20:55:13 +02:00
Reorganizes the repo so every section of the paper has a corresponding
script. Previously only the core recipe + control + evals were here.
New subdirs:
- tts/ — test-time sampling (§2.2, §3.3): scaling sweep, HE, MATH-500,
AIME, 14B-recipe + TTS, 8B-raw-TTS control.
- experiments/ — every §3 finding as a runnable script:
· self_consistency (§3.4)
· recipe_x_tts_synergy (§3.5, novel)
· mbpp_seeded_cross_arch (§3.9)
· cross_domain_code_to_math (§3.10)
· self_correction_math_{naive,fixed} (§3.10, the
catastrophic-then-recovered case)
· math500_seeded_mining (§3.10 distribution mismatch)
· bcb_hard_eval (§3.10 distribution mismatch)
· recursive_bootstrap (§3.10 plateau)
· diversity_cued_mining (§3.10 low yield)
· aime_scaling (TTS curve)
· star_baseline_gsm8k (related-work baseline)
- evals/ — moved out of recipe/ (eval_raw, eval_plus, confirm)
Also adds: bootstrap_14b_4bit_harvest, curriculum_code, math_bootstrap to
recipe/ for completeness.
REPRODUCE.md now maps each paper section / table / figure to its exact
script and expected output.
129 lines
4.9 KiB
Python
129 lines
4.9 KiB
Python
"""Self-consistency selection: majority vote on N samples WITHOUT oracle access.
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Tests if model's self-agreement is a good selector (deployable TTS without test cases)."""
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import os, json, time, re, argparse
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os.environ.setdefault("HF_HOME", "/workspace/hf")
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os.environ["TRANSFORMERS_VERBOSITY"] = "error"
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import torch
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from datasets import load_dataset
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from collections import Counter
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T0 = time.time()
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def log(m): print(f"[{time.time()-T0:7.1f}s] {m}", flush=True)
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def extract_boxed(text):
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idx = text.rfind("\\boxed{")
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if idx < 0: return None
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start = idx + len("\\boxed{"); depth = 1; i = start
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while i < len(text) and depth > 0:
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if text[i] == "{": depth += 1
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elif text[i] == "}": depth -= 1
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i += 1
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if depth != 0: return None
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return text[start:i-1].strip()
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def normalize(s):
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if s is None: return None
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s = s.strip().lower()
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s = re.sub(r"[,$\s]", "", s)
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return s
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def main():
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ap = argparse.ArgumentParser()
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ap.add_argument("--model", required=True)
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ap.add_argument("--n_samples", type=int, default=16)
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ap.add_argument("--tag", required=True)
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ap.add_argument("--out_dir", required=True)
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args = ap.parse_args()
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os.makedirs(args.out_dir, exist_ok=True)
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from vllm import LLM, SamplingParams
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from transformers import AutoTokenizer
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log(f"loading {args.model}")
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tok = AutoTokenizer.from_pretrained(args.model)
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if tok.pad_token is None: tok.pad_token = tok.eos_token
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llm = LLM(model=args.model, dtype="bfloat16", gpu_memory_utilization=0.85, max_model_len=2048)
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log("loaded")
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math500 = list(load_dataset("HuggingFaceH4/MATH-500", split="test"))[:200]
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prompts = []
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for p in math500:
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try:
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msgs = [{"role": "system", "content": "Math solver. End with \\boxed{answer}."},
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{"role": "user", "content": f"Solve. Problem: {p['problem']}\n\nSolution:"}]
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prompts.append(tok.apply_chat_template(msgs, tokenize=False, add_generation_prompt=True))
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except Exception:
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prompts.append(f"Solve. Problem: {p['problem']}\n\nSolution:")
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log(f"generating {args.n_samples} samples per problem...")
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sp = SamplingParams(temperature=0.7, top_p=0.95, max_tokens=800, n=args.n_samples)
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t0 = time.time()
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outs = llm.generate(prompts, sp, use_tqdm=False)
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log(f" gen in {time.time()-t0:.1f}s")
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import sympy
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from sympy.parsing.latex import parse_latex
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def sympy_eq(a, b):
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if a is None or b is None: return False
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if a == b: return True
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try:
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if sympy.simplify(parse_latex(a) - parse_latex(b)) == 0: return True
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except Exception: pass
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try:
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if abs(float(a) - float(b)) < 1e-6: return True
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except Exception: pass
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return False
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# Three metrics:
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# 1. Greedy: take first sample
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# 2. Oracle pass@N: any correct
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# 3. Self-consistency: majority vote on extracted boxed answer (normalize numbers/text)
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greedy_correct = 0
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oracle_correct = 0
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sc_correct = 0
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for p, outset in zip(math500, outs):
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attempts = [o.text for o in outset.outputs]
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preds = [extract_boxed(a) for a in attempts]
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# Greedy: first sample
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if sympy_eq(preds[0], p["answer"]): greedy_correct += 1
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# Oracle: any pass
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if any(sympy_eq(pr, p["answer"]) for pr in preds): oracle_correct += 1
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# Self-consistency: majority vote on normalized answer
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normalized = [normalize(pr) for pr in preds if pr is not None]
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if normalized:
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most_common, _ = Counter(normalized).most_common(1)[0]
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# Find an original pred with this normalized form
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for pr in preds:
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if pr and normalize(pr) == most_common:
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if sympy_eq(pr, p["answer"]): sc_correct += 1
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break
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result = {
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"model": args.model, "n_samples": args.n_samples,
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"greedy_first": greedy_correct,
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"oracle_pass_at_N": oracle_correct,
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"self_consistency": sc_correct,
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"n": len(math500),
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"elapsed_s": time.time() - T0,
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}
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with open(f"{args.out_dir}/result.json", "w") as fh: json.dump(result, fh, indent=2)
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print()
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print("=" * 70)
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print(f" {args.model} — SELF-CONSISTENCY vs ORACLE on MATH-500 (n={args.n_samples})")
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print(f" First sample (greedy-like): {greedy_correct}/{len(math500)} ({100*greedy_correct/len(math500):.1f}%)")
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print(f" Self-consistency (vote): {sc_correct}/{len(math500)} ({100*sc_correct/len(math500):.1f}%)")
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print(f" Oracle (any-pass): {oracle_correct}/{len(math500)} ({100*oracle_correct/len(math500):.1f}%)")
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sc_recovery = 100*(sc_correct - greedy_correct)/(oracle_correct - greedy_correct) if oracle_correct > greedy_correct else 0
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print(f" SC recovers {sc_recovery:.0f}% of oracle-greedy gap")
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print(f" Time: {time.time()-T0:.0f}s")
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print("=" * 70)
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if __name__ == "__main__":
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main()
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