| |
| """v15 reward sanity test. |
| |
| Runs 6 hand-crafted (paper_context, generated_result, GT focuses) cases through |
| the v15 reward pipeline (build_reward_response). For each focus, prints the |
| judge's primary_match + score + critique alongside the expected score, and |
| gives a PASS/FAIL verdict. |
| |
| Usage: |
| # Activate env + ensure secrets are loaded (JUDGE_API_KEY / JUDGE_API_BASE) |
| cd $CODE_ROOT/reward_part/azure_task1_judge |
| source $WORK_ROOT/secrets/judge_api.env |
| python $CODE_ROOT/scripts/v15_sanity_test.py |
| |
| Cost: ~12 judge calls total, expect ~$0.005-0.01 on deepseek-v4-flash. |
| """ |
|
|
| import asyncio |
| import json |
| import os |
| import sys |
| from pathlib import Path |
|
|
| |
| ROOT = Path(__file__).resolve().parents[1] |
| sys.path.insert(0, str(ROOT / "reward_part" / "azure_task1_judge")) |
| sys.path.insert(0, str(ROOT / "reward_part")) |
|
|
| from task1_azure_reward import build_reward_response |
|
|
|
|
| def make_candidates_xml(items): |
| """items: list of (focus, description) tuples.""" |
| blocks = [] |
| for i, (focus, desc) in enumerate(items, start=1): |
| blocks.append( |
| f"<Candidate>\n" |
| f" <ID>{i}</ID>\n" |
| f" <Investigation_Focus>{focus}</Investigation_Focus>\n" |
| f" <Description_Text>{desc}</Description_Text>\n" |
| f"</Candidate>" |
| ) |
| return "\n".join(blocks) |
|
|
|
|
| def make_solution_str(result_text): |
| """Wrap a <Result> body in the simulated assistant response.""" |
| return ( |
| "<|im_start|>assistant\n<Think>\nReasoning placeholder.\n</Think>\n\n" |
| f"<Result>\n{result_text.strip()}\n</Result><|im_end|>" |
| ) |
|
|
|
|
| |
| |
| |
|
|
| CASES = [ |
| |
| { |
| "name": "1. CLEAN — all atomic, expect mostly 1.0", |
| "paper_context": ( |
| "We propose a VAE-based prosody model with utterance-specific priors and a " |
| "decoder using cross-attention fusion. We compare LoRA and full fine-tuning. " |
| "Beam search width affects translation BLEU. Cross-attention fusion is the key module." |
| ), |
| "candidates": [ |
| ("Effect of beam search width on translation", |
| "Vary beam width 1/3/5/10 and measure BLEU."), |
| ("Necessity of cross-attention fusion module", |
| "Remove fusion module, evaluate downstream quality."), |
| ("LoRA vs Fully Fine-tuning the LLM", |
| "Compare LoRA adapter to full FT of base LLM."), |
| ], |
| "result": """ |
| - Target Module: Beam search width |
| - Research Question: Does varying beam width 1/3/5/10 affect BLEU on WMT14? |
| |
| - Target Module: Cross-attention fusion module |
| - Research Question: Does removing the cross-attention fusion module degrade output quality? |
| |
| - Target Module: LoRA fine-tuning |
| - Research Question: Does LoRA outperform fully fine-tuning the LLM on downstream tasks? |
| """, |
| "expected": [ |
| ("Beam width", "should be 1.0", lambda s, pm: s == 1.0), |
| ("Cross-attention fusion", "should be 1.0", lambda s, pm: s == 1.0), |
| ("LoRA vs FT (comparison atomization)", "should be 1.0 — atomization OK", lambda s, pm: s == 1.0), |
| ], |
| }, |
|
|
| |
| { |
| "name": "2. UMBRELLA + RQ ENUM (v11 HMR-style hack)", |
| "paper_context": ( |
| "Human Mesh Recovery (HMR) network. Backbone choice (ResNet vs ViT), data composition " |
| "(SMPL fittings vs EFT), data augmentation strategies all matter." |
| ), |
| "candidates": [ |
| ("Comparison of Backbone Architecture Choices for HMR", |
| "Compare ResNet50, ResNet101, ViT-B for HMR accuracy."), |
| ("Influence of Data Augmentation Strategies on Model Performance", |
| "Vary augmentation pipelines."), |
| ], |
| "result": """ |
| - Target Module: Backbone Architecture and Network Design |
| - Research Question: How do variations in the depth, width, and type of convolutional or transformer-based backbone networks affect the model's ability to generalize? |
| |
| - Target Module: Training Protocol and Optimization Strategy |
| - Research Question: What is the optimal combination of learning rate schedules, loss function weighting, data augmentation, and regularization techniques? |
| """, |
| "expected": [ |
| ("Backbone choices", "should be 0 — TM is umbrella, RQ overlap CANNOT rescue", lambda s, pm: s == 0.0), |
| ("Data augmentation", "should be 0 — umbrella TM, even though RQ mentions data augmentation", lambda s, pm: s == 0.0), |
| ], |
| }, |
|
|
| |
| { |
| "name": "3. JUDGE REUSE — bipartite enforce should kick in", |
| "paper_context": ( |
| "Adversarial training with regularization. Both adversarial training mechanism and regularization " |
| "strategies are independent components." |
| ), |
| "candidates": [ |
| ("Adversarial training mechanism", "Does removing adversarial step hurt accuracy?"), |
| ("Regularization strategy effects", "Does regularization weighting matter?"), |
| ("Adversarial training effects on generalization", "Does adv training help OOD?"), |
| ], |
| "result": """ |
| - Target Module: Adversarial Training Mechanism |
| - Research Question: How does adversarial perturbation magnitude affect robustness? |
| |
| - Target Module: Regularization Strategy |
| - Research Question: What is the role of regularization weight in the final loss? |
| """, |
| "expected": [ |
| ("focus 1 = adversarial mechanism", "should be 1.0 with bullet 1", lambda s, pm: s == 1.0 and pm == 1), |
| ("focus 2 = regularization", "should be 1.0 with bullet 2", lambda s, pm: s == 1.0 and pm == 2), |
| ("focus 3 = adv training effects", |
| "should be 0 (bullet 1 already consumed by focus 1) OR reuse-zeroed by server", |
| lambda s, pm: s == 0.0), |
| ], |
| }, |
|
|
| |
| { |
| "name": "4. COMPARISON ATOMIZATION — one side of X vs Y is OK", |
| "paper_context": ( |
| "Zipformer ASR architecture introduces BiasNorm normalization layer as a replacement for LayerNorm. " |
| "The paper ablates BiasNorm vs LayerNorm." |
| ), |
| "candidates": [ |
| ("BiasNorm vs LayerNorm choice", |
| "Replace BiasNorm with LayerNorm and measure WER drop."), |
| ], |
| "result": """ |
| - Target Module: BiasNorm normalization layer |
| - Research Question: Does swapping BiasNorm with LayerNorm change WER on librispeech test-clean and test-other? |
| """, |
| "expected": [ |
| ("BiasNorm vs LayerNorm", |
| "should be 1.0 — TM names one side, RQ confirms comparison", |
| lambda s, pm: s == 1.0), |
| ], |
| }, |
|
|
| |
| { |
| "name": "5. NEAR-1.0 0.5 — TM slightly broad, RQ rescues to 0.5", |
| "paper_context": ( |
| "We use beam search decoding for translation. The beam width is a critical hyperparameter; " |
| "wider beams improve quality but cost more." |
| ), |
| "candidates": [ |
| ("Effect of beam search width on translation", |
| "Vary beam width and measure BLEU."), |
| ], |
| "result": """ |
| - Target Module: Decoding parameter tuning |
| - Research Question: How does varying beam search width (1, 3, 5, 10) affect BLEU on WMT14? |
| """, |
| "expected": [ |
| ("Decoding parameter tuning + RQ-specific", |
| "should be 0.5 — TM broader than 'beam width', RQ saves", |
| lambda s, pm: s == 0.5), |
| ], |
| }, |
|
|
| |
| { |
| "name": "6. COMPOSITE-PARTIAL — true joint X+Y, bullet covers X only", |
| "paper_context": ( |
| "Shape Naturalness Module (SNM) uses two loss terms together: an adversarial GAN loss L_adv and " |
| "a confidence-weighted unsupervised reconstruction loss. The paper ablates them jointly: removing " |
| "GAN loss alone, removing reconstruction loss alone, removing both." |
| ), |
| "candidates": [ |
| ("Contribution of L_adv and L_unsup joint loss design", |
| "Remove L_adv only / L_unsup only / both and measure quality."), |
| ], |
| "result": """ |
| - Target Module: Adversarial GAN loss L_adv |
| - Research Question: Does removing the GAN loss L_d degrade reconstruction quality? |
| """, |
| "expected": [ |
| ("L_adv only covers half of joint design", |
| "should be 0.5 — covers L_adv side only of the joint ablation", |
| lambda s, pm: s == 0.5), |
| ], |
| }, |
| ] |
|
|
|
|
| |
|
|
|
|
| async def run_case(case): |
| candidates_xml = make_candidates_xml(case["candidates"]) |
| solution = make_solution_str(case["result"]) |
|
|
| request = { |
| "response_str": solution, |
| "extra_info": { |
| "paper_context": case["paper_context"], |
| "candidates": candidates_xml, |
| }, |
| } |
|
|
| result = await build_reward_response(request) |
| return result |
|
|
|
|
| def fmt_score(s): |
| if s is None: |
| return " ? " |
| return f"{s:>4.2f}" |
|
|
|
|
| async def main(): |
| print("=" * 78) |
| print("v15 SANITY TEST — 6 cases against the deepseek judge + reward server logic") |
| print("=" * 78) |
|
|
| if not os.environ.get("JUDGE_API_KEY"): |
| print("ERROR: JUDGE_API_KEY not set. Source the secrets file first:") |
| print(' source $WORK_ROOT/secrets/judge_api.env') |
| sys.exit(2) |
|
|
| total_pass = 0 |
| total_check = 0 |
| summaries = [] |
|
|
| for case in CASES: |
| print() |
| print("-" * 78) |
| print(case["name"]) |
| print("-" * 78) |
| try: |
| result = await run_case(case) |
| except Exception as e: |
| print(f" EXCEPTION: {e!r}") |
| summaries.append((case["name"], 0, len(case["expected"]))) |
| total_check += len(case["expected"]) |
| continue |
|
|
| eval_items = result.get("eval_items", []) |
| cs = result.get("candidate_score", 0.0) |
| fmt_factor = result.get("format_factor", 0.0) |
| n_reuse_z = result.get("n_reuse_zeroed", 0) |
| n_pairs = result.get("n_pairs", 0) |
| total = result.get("score", 0.0) |
|
|
| print(f"server: candidate_score={cs:.3f}, format_factor={fmt_factor}, " |
| f"n_pairs={n_pairs}, n_reuse_zeroed={n_reuse_z}, total={total:.3f}") |
| print() |
|
|
| case_pass = 0 |
| for ev, exp in zip(eval_items, case["expected"]): |
| label, hint, check = exp |
| pm = ev.get("primary_match") |
| sc = ev.get("score") |
| crit = (ev.get("critique") or "")[:200].replace("\n", " ") |
| ok = check(sc, pm) |
| if ok: |
| case_pass += 1 |
| verdict = "PASS" if ok else "FAIL" |
| print(f" [{verdict}] {label}") |
| print(f" expect: {hint}") |
| print(f" got: score={fmt_score(sc)} pm={pm}") |
| print(f" critique: {crit}...") |
| total_pass += case_pass |
| total_check += len(case["expected"]) |
| summaries.append((case["name"], case_pass, len(case["expected"]))) |
|
|
| print() |
| print("=" * 78) |
| print("SUMMARY") |
| print("=" * 78) |
| for name, p, t in summaries: |
| flag = "OK " if p == t else "** " |
| print(f" {flag}{name}: {p}/{t}") |
| print() |
| print(f"OVERALL: {total_pass}/{total_check} expectations met") |
| if total_pass < total_check: |
| print() |
| print("If many FAILs, the judge is not following v15 prompt as designed.") |
| print("Inspect the 'critique' text to see how the judge interpreted each case.") |
|
|
|
|
| if __name__ == "__main__": |
| asyncio.run(main()) |
|
|