tinyforge-zero/experiments/self_correction_code.py
Rana Usman 826f934d2e Ship every paper-referenced experiment script
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.
2026-05-13 21:09:54 +05:00

236 lines
11 KiB
Python

"""Self-correction recipe for CODE. Same pattern as math sc_v2 (which gave +5 recovery).
Pipeline:
1. MBPP-train problems (374 sanitized + extended).
2. Greedy attempt. If passes → save as right→stays-right positive.
3. If fails → prompt with "Wait, let me reconsider" + sample 4 at temp=0.8.
If any pass → mine (problem, wrong, reflection, correct) self-correction trace.
4. Train on mixed dataset.
5. Eval HE + MBPP.
Mix teaches model: commit to right answers, fix wrong ones.
"""
import os, json, time, re, subprocess, tempfile, argparse, gc, random
os.environ.setdefault("HF_HOME", "/workspace/hf")
os.environ["TRANSFORMERS_VERBOSITY"] = "error"
import torch
from datasets import load_dataset
T0 = time.time()
def log(m): print(f"[{time.time()-T0:7.1f}s] {m}", flush=True)
RECONSIDER_TAG = "\n\n# Wait — that doesn't look right. Let me reconsider:\n\n"
def run_python(code, timeout=8):
with tempfile.NamedTemporaryFile("w", suffix=".py", delete=False) as f:
f.write(code); path = f.name
try:
r = subprocess.run(["python3", path], capture_output=True, timeout=timeout, text=True, cwd="/tmp")
return r.returncode == 0
except subprocess.TimeoutExpired: return False
finally:
try: os.unlink(path)
except: pass
def vllm_gen(llm, prompts, max_new=400, temperature=0.0, n=1, prefill_texts=None):
from vllm import SamplingParams
sp = SamplingParams(temperature=temperature, top_p=0.95 if temperature > 0 else 1.0,
max_tokens=max_new, n=n,
stop=["\nclass Test", "\nif __name__", "\n\nprint", "\nassert "])
if prefill_texts is None:
out = llm.generate(prompts, sp, use_tqdm=False)
else:
# Each prompt is concatenated with prefill text
full_prompts = [p + pre for p, pre in zip(prompts, prefill_texts)]
out = llm.generate(full_prompts, sp, use_tqdm=False)
if n == 1: return [o.outputs[0].text for o in out]
return [[c.text for c in o.outputs] for o in out]
def he_prompt(p): return p["prompt"]
def mbpp_prompt(p):
return f"# Task: {p['prompt']}\n# Tests:\n# " + "\n# ".join(p["test_list"]) + "\n\n"
def main():
ap = argparse.ArgumentParser()
ap.add_argument("--model", required=True)
ap.add_argument("--n_mining", type=int, default=300)
ap.add_argument("--max_self_corrections", type=int, default=80)
ap.add_argument("--max_positives", type=int, default=80)
ap.add_argument("--tag", required=True)
args = ap.parse_args()
out_dir = f"/workspace/code_sc/{args.tag}"
os.makedirs(out_dir, exist_ok=True)
random.seed(42)
from vllm import LLM
from transformers import AutoTokenizer
log(f"loading {args.model} into vLLM")
tok = AutoTokenizer.from_pretrained(args.model)
if tok.pad_token is None: tok.pad_token = tok.eos_token
llm = LLM(model=args.model, dtype="bfloat16", gpu_memory_utilization=0.85, max_model_len=2048)
log(f" loaded")
he = list(load_dataset("openai_humaneval", split="test"))
mbpp_test = list(load_dataset("mbpp", "sanitized", split="test"))[:100]
mbpp_full = list(load_dataset("mbpp", split="train"))
random.shuffle(mbpp_full)
seeds = []
for p in mbpp_full[:args.n_mining]:
prompt_text = p.get("prompt") or p.get("text", "")
if prompt_text and p.get("test_list"):
seeds.append({"prompt": prompt_text, "test_list": p["test_list"]})
log(f" HE: {len(he)}, MBPP-test: {len(mbpp_test)}, mining seeds: {len(seeds)}")
# --- BASE eval
log("=== BASE eval ===")
he_outs = vllm_gen(llm, [he_prompt(p) for p in he], max_new=400)
base_he = sum(1 for p, raw in zip(he, he_outs)
if run_python(p["prompt"] + raw + "\n\n" + p["test"] + f"\n\ncheck({p['entry_point']})", 10))
log(f" HE base: {base_he}/{len(he)}")
mbpp_outs = vllm_gen(llm, [mbpp_prompt(p) for p in mbpp_test], max_new=400)
base_mbpp = sum(1 for p, raw in zip(mbpp_test, mbpp_outs)
if run_python(raw + "\n\n" + "\n".join(p["test_list"]), 10))
log(f" MBPP base: {base_mbpp}/{len(mbpp_test)}")
# --- Mine: greedy on all seeds
log(f"=== mining: greedy attempt on {len(seeds)} seeds ===")
t0 = time.time()
greedy_outs = vllm_gen(llm, [mbpp_prompt(p) for p in seeds], max_new=400)
log(f" greedy gen in {time.time()-t0:.1f}s")
t1 = time.time()
right = [] # greedy correct (positives)
wrong = [] # greedy wrong (candidates for self-correction)
for p, raw in zip(seeds, greedy_outs):
test_code = raw + "\n\n" + "\n".join(p["test_list"])
if run_python(test_code, timeout=8):
right.append({"problem": p["prompt"], "tests": p["test_list"], "solution": raw.strip()})
else:
wrong.append({"problem": p["prompt"], "tests": p["test_list"], "wrong": raw.strip()})
log(f" verify: {len(right)} greedy-correct, {len(wrong)} hard")
# --- For wrong: prefill wrong + reconsider tag, sample 4 attempts
log(f"=== self-correction sampling on {len(wrong)} hard problems ===")
sc_pairs = []
if wrong:
base_prompts = [mbpp_prompt({"prompt": w["problem"], "test_list": w["tests"]}) for w in wrong]
prefills = [w["wrong"] + RECONSIDER_TAG for w in wrong]
# Generate 4 attempts each via temperature
t0 = time.time()
sc_outs = vllm_gen(llm, base_prompts, max_new=400, temperature=0.8, n=4, prefill_texts=prefills)
log(f" sc gen in {time.time()-t0:.1f}s")
t1 = time.time()
for w, attempts in zip(wrong, sc_outs):
for a in attempts:
test_code = a + "\n\n" + "\n".join(w["tests"])
if run_python(test_code, timeout=8):
full_trace = w["wrong"] + RECONSIDER_TAG + a.strip()
sc_pairs.append({"problem": w["problem"], "tests": w["tests"],
"full_trace": full_trace})
break # one per problem
log(f" sc verify in {time.time()-t1:.1f}s — {len(sc_pairs)} self-correction traces")
# Cap and sample
random.shuffle(right); random.shuffle(sc_pairs)
right = right[:args.max_positives]
sc_pairs = sc_pairs[:args.max_self_corrections]
log(f"=== final: {len(sc_pairs)} self-correction + {len(right)} right→stays-right = {len(sc_pairs)+len(right)} examples ===")
if len(sc_pairs) + len(right) < 10:
log("too few examples — exiting"); return
with open(f"{out_dir}/sc_pairs.jsonl", "w") as fh:
for r in sc_pairs: fh.write(json.dumps(r) + "\n")
with open(f"{out_dir}/positives.jsonl", "w") as fh:
for r in right: fh.write(json.dumps(r) + "\n")
# --- Train LoRA on MIXED dataset
log("=== TRAINING ===")
del llm; gc.collect(); torch.cuda.empty_cache()
from transformers import AutoModelForCausalLM, TrainingArguments, Trainer
from datasets import Dataset as HFDataset
from peft import LoraConfig, get_peft_model
train_examples = []
for r in sc_pairs:
train_examples.append({"problem": r["problem"], "tests": r["tests"], "target": r["full_trace"]})
for r in right:
train_examples.append({"problem": r["problem"], "tests": r["tests"], "target": r["solution"]})
random.shuffle(train_examples)
def mk_ex(r):
user = f"# Task: {r['problem']}\n# Tests:\n# " + "\n# ".join(r['tests']) + "\n\n"
target = r["target"]
full = user + target
full_ids = tok(full, add_special_tokens=False)["input_ids"]
user_ids = tok(user, add_special_tokens=False)["input_ids"]
MAX = 1280
full_ids = full_ids[:MAX]
labels = list(full_ids)
n_user = min(len(user_ids), len(labels))
for i in range(n_user): labels[i] = -100
pad = MAX - len(full_ids)
return {"input_ids": full_ids + [tok.pad_token_id]*pad,
"attention_mask": [1]*len(full_ids) + [0]*pad,
"labels": labels + [-100]*pad}
model = AutoModelForCausalLM.from_pretrained(args.model, torch_dtype=torch.bfloat16, device_map="cuda:0")
lora_cfg = LoraConfig(r=16, lora_alpha=32, lora_dropout=0.05, bias="none",
target_modules=["q_proj", "k_proj", "v_proj", "o_proj"], task_type="CAUSAL_LM")
model = get_peft_model(model, lora_cfg)
ds_train = HFDataset.from_list([mk_ex(r) for r in train_examples])
targs = TrainingArguments(
output_dir=f"{out_dir}/ckpt", num_train_epochs=2,
per_device_train_batch_size=1, gradient_accumulation_steps=4,
learning_rate=1e-4, bf16=True, logging_steps=20,
save_strategy="no", report_to="none", remove_unused_columns=False, warmup_ratio=0.05,
)
Trainer(model=model, args=targs, train_dataset=ds_train, tokenizer=tok).train()
log("training done")
adapter_dir = f"{out_dir}/adapter"
model.save_pretrained(adapter_dir)
del model; gc.collect(); torch.cuda.empty_cache()
# --- TRAINED eval
from vllm import LLM
from vllm.lora.request import LoRARequest
llm = LLM(model=args.model, dtype="bfloat16", gpu_memory_utilization=0.85, max_model_len=2048,
enable_lora=True, max_lora_rank=16)
lora_req = LoRARequest("tf_adapter", 1, adapter_dir)
from vllm import SamplingParams
sp = SamplingParams(temperature=0, max_tokens=500, stop=["\nclass Test", "\nif __name__"])
log("=== TRAINED eval ===")
he_outs = [o.outputs[0].text for o in llm.generate([he_prompt(p) for p in he], sp, lora_request=lora_req, use_tqdm=False)]
tr_he = sum(1 for p, raw in zip(he, he_outs)
if run_python(p["prompt"] + raw + "\n\n" + p["test"] + f"\n\ncheck({p['entry_point']})", 10))
mbpp_outs = [o.outputs[0].text for o in llm.generate([mbpp_prompt(p) for p in mbpp_test], sp, lora_request=lora_req, use_tqdm=False)]
tr_mbpp = sum(1 for p, raw in zip(mbpp_test, mbpp_outs)
if run_python(raw + "\n\n" + "\n".join(p["test_list"]), 10))
result = {
"model": args.model,
"n_sc": len(sc_pairs), "n_positives": len(right), "n_total": len(train_examples),
"humaneval": {"base": base_he, "trained": tr_he, "delta": tr_he-base_he, "n": len(he)},
"mbpp": {"base": base_mbpp, "trained": tr_mbpp, "delta": tr_mbpp-base_mbpp, "n": len(mbpp_test)},
"elapsed_s": time.time()-T0,
}
with open(f"{out_dir}/result.json", "w") as fh: json.dump(result, fh, indent=2)
print()
print("=" * 70)
print(f" {args.model} — CODE SELF-CORRECTION ({len(sc_pairs)} sc + {len(right)} positives)")
print(f" HumanEval: base={base_he}/{len(he)} trained={tr_he}/{len(he)} Δ={tr_he-base_he:+d}")
print(f" MBPP: base={base_mbpp}/{len(mbpp_test)} trained={tr_mbpp}/{len(mbpp_test)} Δ={tr_mbpp-base_mbpp:+d}")
print(f" Time: {time.time()-T0:.0f}s")
print("=" * 70)
if __name__ == "__main__":
main()