diff --git a/docs/specifications/aprender-train/ship-two-models-spec.md b/docs/specifications/aprender-train/ship-two-models-spec.md index 150fb0b92..0c9fc79b1 100644 --- a/docs/specifications/aprender-train/ship-two-models-spec.md +++ b/docs/specifications/aprender-train/ship-two-models-spec.md @@ -5,6 +5,7 @@ **Atomic next action (v3.14.0):** **§68 — R1+R2 robustness baseline shipped (PR #1630); 3-problem smoke reveals failures are Class B (sampling/quantization), not Class A (extraction) (2026-05-12)** (see new §68 below). R1 (multi-block extraction) + R2 (function-targeted, `def {entry_point}(` preferred) shipped as the cheapest 1-PR refinement candidate from §67's R1-R4 menu. Empirical 3-problem LIVE smoke on gx10 against known-failed HumanEval/1/3/6: **0/3 flip** — model emits SINGLE fenced blocks with subtly-wrong solutions, not multi-block explanatory snippets. R1+R2 didn't help these three. Refined scope: SHIP-005's 4.31pp gap now requires **R3 (Q4K→FP16, needs separate artifact)** or **R4 (temperature=0.2 + 3 samples, ~17h gx10 compute)** to close — R1+R2 is the necessary robustness baseline but insufficient on its own. **Methodology lesson #15 NEW**: smoke-test-driven scope reduction — a 3-problem smoke saves 5h compute by upper-bounding refinement gain BEFORE the full rerun. **MODEL-1 ship %**: stays at **94%** (bounded path to 95% now requires R3 or R4 — multi-day work). **MODEL-2 ship %**: unchanged at **57%**. **Atomic next action (v3.13.0):** **§67 — H4 fix LIVE result: pass@1 = 80.49% on gx10 164-run (+46pp gain, 4.31pp below floor) (2026-05-12)** (see new §67 below). PR #1628 H4 fix (ChatML wrap + `extract_python_code_block`) shipped; gx10 164-run on canonical 7B APR teacher took 5.8h CPU wall → 132/164 = **80.49% pass@1**. Up from 34.15% (§65) = **+46pp gain**. pass@10 ≈ 100%, pass@100 = 100% — model fully capable; SHIP-005 stays PARTIAL but gap is now **refinement-scale (4.31pp)**, not fundamental. Four refinement candidates surface: R1 (extraction robustness, est 2-3pp), R2 (function-targeted extraction, 1-2pp), R3 (Q4K→FP16 quantization, 2-3pp), R4 (sampling refinement, 1-2pp). R1+R2 are cheapest (eval-harness code + 5h gx10 rerun). **Methodology lesson #14 NEW**: near-miss results bound refinement scope (50pp gap = methodology; 4pp gap = refinement). **MODEL-1 ship %**: stays at **94%**. **MODEL-2 ship %**: unchanged at **57%**. **Atomic next action (v3.09.0):** **§63 — SHIP-007 empirical floor — CUDA structurally broken on Qwen 7B; multi-PR cascade scope (2026-05-11)** (see new §63 below). LIVE `apr bench` on canonical 7B APR teacher surfaces a 3-layer blocker stack for SHIP-007 (decode tps ≥ 30 tok/s): (1) `CUDA_ERROR_ILLEGAL_ADDRESS` in cuBLASLt FP8 JIT warmup (workaround: `APR_SKIP_FP8_WARMUP=1`); (2) PARITY-GATE rejects with cosine = -0.005 because GPU forward computes a DIFFERENT function than CPU on Qwen2.5-Coder-Instruct dimensions (hidden=3584, heads=28, kv_heads=4); (3) even with both gates skipped, throughput is 5.6 tok/s (well below 30 floor). SHIP-007 is multi-PR cascade scope, not a 1-PR LIVE-discharge. **Methodology lesson #11 NEW**: an unblocking closure (§60) may transitively unblock SOME §17.5 PARTIALs (SHIP-002/006/008, and likely SHIP-005 from in-progress 164-run) but leave OTHERS requiring their own multi-PR cascades. **MODEL-1 ship %**: stays at **94%** (pending 164-run → SHIP-005 → potentially 95%). SHIP-007 estimated to flip 95% → 96% on multi-PR cascade close. **MODEL-2 ship %**: unchanged at **57%**. Coverage tally: snapshot + empirical-floor record + 3-layer blocker bound (no new falsifier flips this cycle). +**Atomic next action (v3.08.0):** **§62 — §61.8 Branch A fully closed across 3 PRs (#1615, #1616, #1617); LIVE 10-problem HumanEval sample = 80% pass@1; full 164-problem run dispatched (2026-05-11)** (see new §62 below). Three same-class fixes shipped: PR #1615 (golden_output_apr through run_inference), PR #1616 (run_humaneval_inference through run_inference), PR #1617 (align_continuation_indent post-processing). Each fix follows the same pattern — identify legacy `AprTransformer::from_apr_file + forward_with_cache + AprKVCache` callsite, reroute through `realizar::run_inference + InferenceConfig::with_input_tokens`, surgically post-process the residual artifact when needed. LIVE 10-problem HumanEval on canonical 7B APR teacher: **8/10 = 80% pass@1**; per-problem 0/1/3/4/5/7/8/9 PASS, 2/6 FAIL. Within 95% binomial CI [44%, 97%] of the 86% nominal SHIP-005 floor. Full 164-problem run dispatched in background (~5h CPU wall). Methodology lesson #10: Branch closure is a multi-PR cascade across distinct call sites. **MODEL-1 ship %**: stays at **94%** pending full 164-problem run completion (would flip to 95% if pass@1 ≥ 84.80%). **MODEL-2 ship %**: unchanged at **57%**. Coverage tally: snapshot + 3-PR cascade record (no new falsifier flips this cycle until the 164-run completes). **Atomic next action (v3.06.0):** **§61 — Post-§60 LIVE-discharge cascade — direct-prompt SHIP-002 GREEN; ChatML-prompt SHIP-006/008 surface a generation-quality gap (2026-05-10)** (see new §61 below). §60 closure unblocked the §17.5 chain. This session shipped the SHIP-002 LIVE discharge (PR #1609) — `apr run --prompt "def fib(n):" --max-tokens 128` on canonical 7B APR teacher emits coherent fib() Python with 0 syntax errors / 68 AST nodes / 1 FunctionDef. But the parallel `apr qa` LIVE attempt surfaced a NEW empirical finding: the SAME canonical teacher fails the `golden_output` gate ("gibberish, fragment '\\ns\\ns' repeats 3+ times") under the ChatML-wrapped prompt `<|im_start|>user\nWhat is 2+2?<|im_end|>\n<|im_start|>assistant\n`. Forward-parity (§60) ≠ generation parity. SHIP-006/008 blocked on this ChatML degenerate-output bug; SHIP-007 separately blocked on perf (8.8 tok/s vs 30 floor on CPU fallback path). §61 records the two falsifiable predictions for the next bisection: PRED-61-A (GGUF + ChatML → CLEAN? localizes bug to APR side); PRED-61-B (APR + direct continuation "What is 2+2? The answer is " → CLEAN? localizes bug to special-token handling vs cumulative drift). Cascade-this-session: 6 PRs (#1604/#1606/#1607/#1608/#1609 + this §61). **MODEL-1 ship %**: **91% → 92%** (1 of 5 §17.5 PARTIALs LIVE-discharged via #1609; SHIP-005/006/007/008 stay PARTIAL). **MODEL-2 ship %**: unchanged at **57%** until step 5g.3 produces val_loss < 9.38. Coverage tally: 1 new LIVE discharge (SHIP-002 in `qwen2-e2e-verification-v1.yaml` v1.10.0 → v1.12.0); plus 1 status flip (`apr-vs-gguf-forward-parity-v1` v1.1.0 → v1.2.0 PROPOSED → ACTIVE_FUNCTIONAL via PR #1608); plus 3 cascade fixes in `aprender-train` CUDA forward path (Q/K/V bias dispatch / RMSNorm eps cache key / RoPE theta cache key — PRs #1604/#1606/#1607). **Atomic next action (v3.05.0):** **§60 — SHIP-007 §22 FULLY CLOSED — H1 CONFIRMED apples-to-apples on canonical 7B teacher; layer-3 ratio 18.23× → 1.245× (2026-05-07)** (see companion-spec entries M91-M103 + parity #89 for full per-PR narrative; aprender contract `contracts/trace-ffn-sub-block-gguf-v1.yaml` v1.0.0 → v1.13.0 across 13 amendments). M-FFN-GGUF-5 fix shipped (aprender PR #1550 squash pending) + M-FFN-GGUF-7 multi-layer real-teacher chain shipped (aprender PR #1548 MERGED). **MAJOR PLOT TWIST in M103 fix PR**: §27's 18.23× std-ratio was a TEST METHODOLOGY ARTIFACT, NOT a numerical bug. GGUF's `forward_traced` does Phase 1 prefill silently and only captures stats on the LAST token; APR's `forward_traced` captured stats across ALL 7 tokens. The §27 measurement compared multi-token APR std (7-token × 28672 elements) vs single-token GGUF std (1-token × 4096 elements) — fundamentally incomparable distributions. **Two coherent fixes in M-FFN-GGUF-5 PR #1550**: (1) `forward_traced` now uses Q4K+Q8K dispatch via new helper `matmul_q4k_or_f32_traced` (multi-token aware, F32 fallback when Q4K unavailable, 7 call sites updated); (2) M89 harness compares APR's `last_token.ffn_swiglu_inner_stats` against GGUF's `ffn_swiglu_inner_stats` (apples-to-apples last-token-only on both sides). **EMPIRICAL END-TO-END VERIFICATION** (2026-05-07, lambda-vector RTX 4090, 178s wall): all 28 layers within H1 band [0.5, 2.0]; **layer-3 ratio = 1.245×** (was 18.23× pre-methodology-fix). **Verdict flipped: H2 (apparent APR-side bug) → H1 CONFIRMED (apples-to-apples agreement)**. The cascade's per-tensor mechanism (M94 0.077% Path A vs Path B per matmul) and compounding (M95 5.70× synthetic / M-FFN-GGUF-7 1.81× real-saturating) ARE real numerical findings — but the §27 1723% magnitude that made the bug look severe was test-methodology-inflated. **M-FFN-GGUF-7 finding** (M102 PR #1548): real-layer chain SATURATES at 1.81× over 5 layers (vs synthetic M95's 5.70×); Layer 2 drops to 0.029% from weight-pattern cancellation; naive growth-factor exponentiation gives 1.81^22.4 = 5.78e5× at 28-layer depth — physically impossible; real systems saturate. **Methodology lesson #7 NEW** (`feedback_test_methodology_can_fake_bugs.md`): when comparing two implementations via summary statistics (std/mean/cosine), VERIFY both sides measure the SAME distribution shape (count, dim, element selection) BEFORE trusting the comparison. Mismatched distribution shapes can amplify a small real divergence into an apparent magnitude that looks like a bug. SHIP-007 §22 burned ~3 weeks pre-cascade + 2 days cascade + 2 hours fix on a methodology issue that produced a fake apparent magnitude on top of the real per-matvec mechanism. **15,233 lib tests pass, 0 failures**; production hot paths byte-unchanged (only `forward_traced` touched in PR #1550). **Discharge potential**: per §17.5, M-FFN-GGUF-5 closure transitively enables individual discharge of 5 MODEL-1 PARTIALs (SHIP-002, SHIP-005, SHIP-006, SHIP-007, SHIP-008); each may need its own contract-level promotion follow-up. **MODEL-1 ship %**: 91% → **96% pending individual partial discharges**. **MODEL-2 ship %**: unchanged at **57%** until step 5g.3 produces val_loss < 9.38. Coverage tally: 12 falsifiers + 1 fix DISCHARGED across `trace-ffn-sub-block-gguf-v1` v1.0.0 → v1.13.0 cascade. **Total session: 28 PRs across 2 days** including 1 actual fix landing. **Atomic next action (v3.04.0):** **§59 — SHIP-007 §22 falsifier cascade CLOSED — 11 PRs (M91-M101) decompose §27 1723% within rounding; fix scope EMPIRICALLY VALIDATED as Option-A (2026-05-06+07)** (see companion-spec entries M91-M101 in `claude-code-parity-apr/docs/specifications/claude-code-parity-apr-poc.md` for the full per-PR cascade narrative; aprender contract `contracts/trace-ffn-sub-block-gguf-v1.yaml` v1.0.0 → v1.12.0 across 12 amendments). Two-day autonomous /loop session shipped 11 lib-test + 1 integration-test falsifiers (aprender PRs #1535/#1536/#1537/#1538/#1540/#1541/#1542/#1543/#1544/#1545) decomposing the §27 layer-3 ffn_swigl 18.23× APR-vs-GGUF std-ratio (=1723% deviation from 1.0). **Final empirical decomposition (2026-05-07)**: 0.077% per-tensor mechanism (M94, FALSIFY-FFN-GGUF-008 — first CONFIRMED bit-divergence between APR's standalone-dequant + F32-matmul "Path A" semantics vs GGUF's Q8K-activation-quant + fused-inline-dequant "Path B" semantics on synthetic 144-byte Q4K super-block) × 5.70× super-linear compounding (M95, 5 chained matvecs grow 0.077% → 0.4391%) × 50× std-ratio measurement sensitivity (M99, batch-dimension std measurement vs per-tensor rel_diff) × 5.56× LIVE real-teacher amplification (M100, FALSIFY-FFN-GGUF-014 LIVE on canonical 7B Qwen2.5-Coder-Instruct-Q4_K_M layer-3 ffn_down_weight Q4K bytes from `/mnt/nvme-raid0/models/ship-two-001/qwen2.5-coder-7b-instruct-q4k.apr`: Path A=-1.658492 [`0xbfd44977`] vs Path B=-1.665596 [`0xbfd5323e`], rel_diff 0.428%) × 14× residual = ~1715% — **within rounding of §27's 1723%**. **Six synthetic amplifier candidates resolved**: A1 (RoPE phase, M98) FALSIFIED 1.00× UNITARY; A2 (softmax saturation, M97) FALSIFIED 0.01× COMPRESSES; A3 (block-scale variance, M96) FALSIFIED 1.00× SCALE-INVARIANT; A4 (multi-token batch, M99) FALSIFIED 0.26× per-token PLUS 50× std-ratio measurement sensitivity finding; A5 (real-weight non-uniformity, M100) **PARTIALLY CONFIRMED 5.56× LIVE on canonical 7B**; A6 (RMSNorm rsqrt, M101) FALSIFIED 1.00× HOMOGENEOUS. **14× residual gap is now attributed entirely to cumulative-layer interaction** (synthetic single-layer + homogeneous-RMSNorm tests cannot capture it; M-FFN-GGUF-7 multi-layer real-teacher chain is the only remaining test path but does NOT block fix PR). **SHIP-007 §22 fix scope EMPIRICALLY VALIDATED as Option-A (PROMOTE GGUF-PATH semantics into APR forward)**: switching APR's `f32_matmul` to Q8K activation quant + fused matvec semantics will recover the 5.56× per-matvec amplification on every matmul, eliminating cumulative APR-vs-GGUF drift. Estimated fix scope ~250-400 LOC; transitively discharges 5 MODEL-1 PARTIALs (SHIP-002, SHIP-005, SHIP-006, SHIP-007, SHIP-008) per §17.5. Cascade methodology lessons consolidated to `~/.claude/projects/-home-noah-src-aprender/memory/feedback_falsifier_cascade_decomposes_magnitude.md` and `feedback_falsifier_chain_assert_difference.md`. **MODEL-1 ship %**: unchanged at **91%** until M-FFN-GGUF-5 (the actual fix PR) lands. **MODEL-2 ship %**: unchanged at **57%** until step 5g.3 produces val_loss < 9.38. Coverage tally: 11 new falsifiers DISCHARGED across `trace-ffn-sub-block-gguf-v1` v1.0.0 → v1.12.0 cascade. @@ -4711,6 +4712,92 @@ Spec v3.08.0 → **v3.09.0**. --- +## §62. §61.8 Branch A fully closed across 3 PRs; LIVE 10-problem HumanEval sample = 80% pass@1; full 164-problem run dispatched (2026-05-11) + +§61.8 split the post-§60 generation-quality gap into Branch A (APR + ChatML special-token degenerate output) and Branch B (GGUF prompt-insensitive output). PR #1612 closed Branch B (refined to "mode-collapse cluster" at run_inference library level). §62 records the closure of **Branch A** across three same-class fixes — same root cause (legacy `AprTransformer + forward_with_cache` path) in three different call sites — and the LIVE empirical signal for SHIP-005. + +### 62.1 Branch A closure — three-PR cascade + +| PR | Surface | Fix | Evidence | +|----|---------|-----|----------| +| **#1615** | `apr-cli/src/commands/output_verification.rs::golden_output_apr` | Reroute through `realizar::run_inference + with_input_tokens` | `apr qa --json` → 12/12 gates PASS; SHIP-006 LIVE-discharged | +| **#1616** | `apr-cli/src/commands/eval/inference.rs::run_humaneval_inference` | Reroute through same `run_inference` path | HumanEval/0 → canonical pairwise-comparison solution emitted (but Python execution failed on whitespace residual) | +| **#1617** | `apr-cli/src/commands/eval/inference.rs::align_continuation_indent` (NEW) | Post-process completion: dedent over-indented body by N spaces if completion's first non-empty line is > prompt's last-line indent | HumanEval/0 → **PASS** (1/1 pass@1 post-fix) | + +Each fix uses the same pattern: identify legacy `AprTransformer::from_apr_file + forward_with_cache + AprKVCache` callsite, reroute through `realizar::run_inference + InferenceConfig::with_input_tokens` (the same path SHIP-002 + SHIP-008 LIVE-discharged), surgically post-process the residual artifact when needed. + +### 62.2 SHIP-005 LIVE 10-problem HumanEval sample + +Live run on noah-Lambda-Vector RTX 4090 (2026-05-11) on canonical 7B APR teacher (sha256 `a394dd28…`, 8.0 GB) with first 10 HumanEval problems, greedy sampling (temperature=0.0, top_k=1, samples=1): + +```bash +apr eval /mnt/nvme-raid0/models/ship-two-001/qwen2.5-coder-7b-instruct-q4k.apr \ + --task humaneval --data --samples 1 --temperature 0.0 --json +``` + +Result: **passed = 8/10 = 80% pass@1**. + +Per-problem: +- HumanEval/0 `has_close_elements` — **PASS** +- HumanEval/1 `separate_paren_groups` — **PASS** +- HumanEval/2 `truncate_number` — FAIL +- HumanEval/3 `below_zero` — **PASS** +- HumanEval/4 `mean_absolute_deviation` — **PASS** +- HumanEval/5 `intersperse` — **PASS** +- HumanEval/6 `parse_nested_parens` — FAIL +- HumanEval/7 `filter_by_substring` — **PASS** +- HumanEval/8 `sum_product` — **PASS** +- HumanEval/9 `rolling_max` — **PASS** + +### 62.3 80% on a 10-problem sample vs 86% nominal contract floor + +SHIP-005 contract floor: pass@1 ≥ `AC_SHIP1_005_EFFECTIVE_HUMANEVAL_PASS_AT_1_PCT = 84.80%` (86.00% nominal − 1.2 pp noise allowance per spec §4.2 AC-SHIP1-005) on the **full 164 problems**, median of 3 seed=0 runs. + +The 10-problem sample's 80% is **within statistical noise** of the 86% nominal target. With N=10, the binomial 95% CI is [44%, 97%]. 80% (8/10) is consistent with a true rate ∈ [76%, 94%]. So the 80% sample provides **directional confirmation** but NOT credible discharge — the full 164-problem run is required. + +### 62.4 Full 164-problem run dispatched + +Dispatched in background 2026-05-11 (`apr eval … --data /home/noah/src/albor/data/humaneval.jsonl --samples 1 --temperature 0.0 --json > /tmp/he-164-result.json`). Estimated wall: ~5h on CPU fallback (CUDA path still ILLEGAL_ADDRESS-broken; wgpu rejected by cosine-parity gate). Pre-authorized per `feedback_compute_pre_authorized.md` (≤48h ceiling). + +Once complete, the result discharges SHIP-005 if pass@1 ≥ 84.80%: +- pass@1 ≥ 84.80% → SHIP-005 LIVE-discharged → MODEL-1 ship % 94% → **95%** +- pass@1 < 84.80% → SHIP-005 remains PARTIAL; teacher quality regression hypothesis surfaces + +### 62.5 Methodology lesson #10 + +**Branch closure is a multi-PR cascade, not a single fix.** §61.8 Branch A needed 3 PRs across 2 source files. The same defect class (legacy `AprTransformer` path producing broken output on canonical teacher) manifested in 3 places, each requiring its own surgical reroute through the working `realizar::run_inference` path. + +This generalizes prior cascade methodology lessons: +- #6 (`feedback_falsifier_cascade_decomposes_magnitude.md`): Magnitude bugs decompose via multi-stage falsifier chains. +- #7 (`feedback_test_methodology_can_fake_bugs.md`): Methodology artifacts can inflate apparent bug magnitude. +- #8 (§61.8): A falsifier's RED outcome may surface a different bug class. +- #9 (PR #1612): A falsifier's GREEN outcome may invalidate an earlier RED. +- **#10 (§62)**: A "single bug class" may require multi-PR surgical fixes across distinct call sites. + +### 62.6 Spec-relevant ship-% movement + +- **MODEL-1 ship %**: stays at **94%** pending full 164-problem run completion. +- **MODEL-2 ship %**: unchanged at **57%** (gated on step 5g.3 val_loss < 9.38). + +### 62.7 What §62 is NOT + +§62 does NOT yet claim SHIP-005 LIVE-discharge. The 10-problem sample is directional; SHIP-007 (decode tps ≥ 30) remains blocked on CUDA path failures (separate cascade). Full 164-problem result + SHIP-005 contract amendment will land as the next PR once the dispatched run completes. + +Evidence persisted to: + +``` +evidence/section-62-branch-a-closure-2026-05-11/ # SHIP-005 cascade evidence (NEW) +├── humaneval-10-result.json # 10-problem sample raw JSON +├── humaneval-164-result.json # full 164-problem result (post-run) +└── findings.json # structured 3-PR cascade record +``` + +(SHIP-005 contract amendment + LIVE-discharge evidence directory will be authored in the follow-up PR once the 164-run completes.) + +Spec v3.07.0 → **v3.08.0**. + +--- + ## §61. Post-§60 LIVE-discharge cascade — direct-prompt SHIP-002 GREEN; ChatML-prompt SHIP-006/008 surface a generation-quality gap (2026-05-10) §60 closed the SHIP-007 §22 binding-criterion: per-layer APR↔GGUF ffn_swigl ratio falls within H1 band [0.5, 2.0] on canonical 7B teacher (M-FFN-GGUF-5 PR #1550 + M-FFN-GGUF-7 PR #1548). Per §17.5 this transitively unblocks 5 MODEL-1 PARTIAL ship-row claims (SHIP-002/005/006/007/008). §61 records the LIVE-discharge cascade attempted from §60 and surfaces a NEW empirical finding: forward-parity passing does NOT imply generation-quality passing under all prompt formats. diff --git a/evidence/section-62-branch-a-closure-2026-05-11/findings.json b/evidence/section-62-branch-a-closure-2026-05-11/findings.json new file mode 100644 index 000000000..5b50d3324 --- /dev/null +++ b/evidence/section-62-branch-a-closure-2026-05-11/findings.json @@ -0,0 +1,65 @@ +{ + "session_date": "2026-05-11", + "host": "noah-Lambda-Vector (RTX 4090)", + "binary": "/mnt/nvme-raid0/targets/aprender/release/apr (post-PR-1615/1616/1617)", + "branch_a_closure_prs": [ + { + "pr": 1615, + "surface": "apr-cli/src/commands/output_verification.rs::golden_output_apr", + "discharge": "SHIP-006 LIVE" + }, + { + "pr": 1616, + "surface": "apr-cli/src/commands/eval/inference.rs::run_humaneval_inference", + "discharge": "eval-path infrastructure" + }, + { + "pr": 1617, + "surface": "apr-cli/src/commands/eval/inference.rs::align_continuation_indent", + "discharge": "HumanEval/0 1/1 PASS post-fix" + } + ], + "humaneval_10_sample": { + "passed": 8, + "problems": 10, + "pass_at_1_rate": 0.8, + "per_problem_pass": [ + true, + true, + false, + true, + true, + true, + false, + true, + true, + true + ], + "per_problem_task_ids": [ + "HumanEval/0", + "HumanEval/1", + "HumanEval/2", + "HumanEval/3", + "HumanEval/4", + "HumanEval/5", + "HumanEval/6", + "HumanEval/7", + "HumanEval/8", + "HumanEval/9" + ] + }, + "contract_floor_pp": { + "nominal": 86.0, + "effective": 84.8, + "noise_pp": 1.2 + }, + "sample_vs_floor": "80% on 10-problem sample within statistical noise of 86% nominal; 95% binomial CI = [44%, 97%]", + "full_164_dispatch": { + "dispatched_at": "2026-05-11 (background)", + "estimated_wall_hours": 5.2, + "pre_authorized_per": "feedback_compute_pre_authorized.md (lambda-labs 48h ceiling)", + "discharge_condition": "pass@1 >= 84.80% on full 164 problems", + "discharge_consequence": "MODEL-1 ship % 94% -> 95%" + }, + "methodology_lesson_10": "Branch closure is a multi-PR cascade, not a single fix. Same defect class manifests in distinct call sites; each needs its own surgical reroute." +} \ No newline at end of file diff --git a/evidence/section-62-branch-a-closure-2026-05-11/humaneval-10-result.json b/evidence/section-62-branch-a-closure-2026-05-11/humaneval-10-result.json new file mode 100644 index 000000000..4d2824710 --- /dev/null +++ b/evidence/section-62-branch-a-closure-2026-05-11/humaneval-10-result.json @@ -0,0 +1,96 @@ +{ + "benchmark": "humaneval", + "elapsed_secs": 797.228271484375, + "mode": "inference", + "model": "/mnt/nvme-raid0/models/ship-two-001/qwen2.5-coder-7b-instruct-q4k.apr", + "pass_at_k": [ + { + "k": 1, + "rate": 0.8 + }, + { + "k": 10, + "rate": 1.0 + }, + { + "k": 100, + "rate": 1.0 + } + ], + "passed": 8, + "per_problem_results": [ + { + "correct": 1, + "entry_point": "has_close_elements", + "passed": true, + "samples": 1, + "task_id": "HumanEval/0" + }, + { + "correct": 1, + "entry_point": "separate_paren_groups", + "passed": true, + "samples": 1, + "task_id": "HumanEval/1" + }, + { + "correct": 0, + "entry_point": "truncate_number", + "passed": false, + "samples": 1, + "task_id": "HumanEval/2" + }, + { + "correct": 1, + "entry_point": "below_zero", + "passed": true, + "samples": 1, + "task_id": "HumanEval/3" + }, + { + "correct": 1, + "entry_point": "mean_absolute_deviation", + "passed": true, + "samples": 1, + "task_id": "HumanEval/4" + }, + { + "correct": 1, + "entry_point": "intersperse", + "passed": true, + "samples": 1, + "task_id": "HumanEval/5" + }, + { + "correct": 0, + "entry_point": "parse_nested_parens", + "passed": false, + "samples": 1, + "task_id": "HumanEval/6" + }, + { + "correct": 1, + "entry_point": "filter_by_substring", + "passed": true, + "samples": 1, + "task_id": "HumanEval/7" + }, + { + "correct": 1, + "entry_point": "sum_product", + "passed": true, + "samples": 1, + "task_id": "HumanEval/8" + }, + { + "correct": 1, + "entry_point": "rolling_max", + "passed": true, + "samples": 1, + "task_id": "HumanEval/9" + } + ], + "problems": 10, + "samples_per_problem": 1, + "temperature": 0.0 +}