mirror of
https://github.com/ruvnet/RuView
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17471e93ff
* feat(calibration): NodeGeometry transceiver-geometry recording (ADR-152 §2.1.1) PerceptAlign-motivated geometry capture at enrollment: per-node optional records (position, antenna orientation, inter-node distances, acquisition method) — recorded when known, never required. Event-sourced via EnrollmentEvent::GeometryRecorded (latest recording wins); persisted on SpecialistBank with serde defaults so pre-ADR-152 bank JSON loads cleanly (fixture-proven, and geometry-free banks serialize byte-shape-identical to the old schema); threaded through MultiNodeMixture as data only — the learned geometry embeddings and algorithmic fusion use are §2.1.2, deliberately deferred until the ADR-151 P6 LoRA heads exist. Geometry recorded from now on means banks captured today remain usable for layout-conditioned training later — you can't retroactively add geometry to data you didn't record. 8 new tests (3 geometry, 2 anchor, 2 bank, 1 multistatic) + full-loop extension (2-node geometry, one tape-measured + one unknown, surviving the bank JSON round-trip the runtime loads from). 50/50 calibration (both feature configs) + 23 CLI tests green. Co-Authored-By: RuFlo <ruv@ruv.net> * feat(training): two-checkerboard camera↔room calibration for ADR-079 labels (ADR-152 §2.1.3) Defends the camera-supervised pipeline against PerceptAlign's "coordinate overfitting": MediaPipe keypoints were emitted in raw camera coordinates with no shared frame and no transceiver-geometry metadata — the exact label shape that memorizes deployment layout and collapses cross-layout. - scripts/calibrate-camera-room.py + calibration_lib.py: OpenCV two-checkerboard calibration → versioned bundle JSON (intrinsics, camera→room extrinsics, checkerboard spec, transceiver geometry, sha256 calibration_id). Intrinsics resolve from file > cache > multi-view computation > loud-warning 2-view fallback. - collect-ground-truth.py --calibration <bundle>: every sample gains keypoints_room (unit bearing rays from the camera center in the room frame — documented projective alignment; raw image coords preserved so training chooses), camera_origin_room, calibration_id, and the transceiver geometry stamp. Without the flag, output is byte-identical to before (tested) + a one-line ADR-152 warning. Design finding (recorded for ADR-152): a single planar checkerboard's corner grid is centrosymmetric — the reversed corner ordering fits a ghost camera pose with IDENTICAL reprojection error, so per-board flip disambiguation is mathematically ill-posed. solve_two_board_extrinsics solves the joint wall+floor set over all 4 flip combinations, where the minimum is unique — an independent reason the TWO-checkerboard method is required, beyond what PerceptAlign states. 15 headless pytest tests green (synthetic corners: extrinsics recovery incl. ghost resolution, bundle round-trip + hash stability, ray transforms w/ distortion + cross-resolution, no-calibration byte identity). Co-Authored-By: RuFlo <ruv@ruv.net> * feat(benchmarks): WiFlow-STD reproduction harness + measurement (a) results (ADR-152 §2.2) Shipped checkpoint REFUTED (0.08% PCK@20, wrong keypoint normalization); 6 reproducibility defects documented (broken imports, corrupted dataset tail with float32-max garbage that NaN-poisons fp16 BatchNorm, unreachable test phase). After repairs, retraining with upstream defaults reproduces 96.09% PCK@20 full-test / 96.61% corruption-free (published 97.25%) on RTX 5080. Claims graded MEASURED-EQUIVALENT; 2.23M params + ~0.055 GFLOPs verified. Third-party code/weights/data stay out of tree (gitignored). Co-Authored-By: claude-flow <ruv@ruv.net> * feat: ADR-152 Rust integrations + ADR-153 802.11bf protocol model - calibration: GeometryEmbedding — 32-slot permutation-invariant NodeGeometry featurization for future LoRA-head conditioning (ADR-152 §2.1.2); derived SpecialistBank::geometry_embedding() accessor; 59 tests - train: MaePretrainConfig + patchify/random-mask with UNSW measured recipe (80% masking, (30,3) patches; ADR-152 §2.3, arXiv 2511.18792); strict no-truncate/no-NaN policy; proptest properties - train: WiFlowStdModel — tch-gated port of the verified ~96%-PCK@20 WiFlow-STD architecture (ADR-152 §2.2 beyond-SOTA); ungated param formula pinned to 2,225,042; 15/17-keypoint support; 239 crate tests - hardware: ieee80211bf forward-compatibility protocol model (ADR-153): SpecProfile gates, SensingCapabilities negotiation, required ConsentMode, session FSM, SensingTransport + SimTransport + OpportunisticCsiBridge; full acceptance checklist covered; 156+4 tests - deps: ruvector bumps per ADR-152 §2.6 survey (mincut/solver 2.0.6, attention 2.1.0, gnn 2.2.0); vendor/ruvector synced to a083bd77f - docs: ADR-153 accepted; ADR-152 §2.2 status, §2.4 amendment, §2.6 added Workspace: 162 test suites green (--no-default-features); Python proof PASS. Known pre-existing flake: homecore-api env_empty_falls_back_to_defaults (unserialized env-var mutation) — untouched, follow-up. Co-Authored-By: claude-flow <ruv@ruv.net> * docs: CHANGELOG + CLAUDE.md entries for ADR-152 integrations and ADR-153 Co-Authored-By: claude-flow <ruv@ruv.net> * fix(train): repair tch-backend bit-rot — gated path compiles and tests run again Mechanical API refresh against current tch: Vec::from(Tensor) -> try_from (+ explicit flatten), numel() usize cast, Rem/div ops -> remainder() / divide_scalar_mode(floor) — the latter fixed a silent true-division bug in heatmap argmax decoding; clamp(1.0, f64::MAX) -> clamp_min (torch 2.x scalar overflow panic); petgraph EdgeRef import; missing EvalMetrics and verify_checkpoint_dir APIs that tests documented. wiflow_std roundtrip test uses safetensors (.pt _save_parameters roundtrip broken in torch 2.11 Windows). Gated: 349 passed (incl. all 20 wiflow_std); ungated: unchanged. Known pre-existing: gaussian-heatmap convention mismatch (2 tests), proof seed race under parallel threads — documented, deliberate follow-ups. Co-Authored-By: claude-flow <ruv@ruv.net> * feat(train): WiFlow-STD PyTorch->tch weight import + numerical parity proof export_to_safetensors.py maps the retrained checkpoint (295 tensors -> 248 mapped, param sum exactly 2,225,042; num_batches_tracked dropped) into a tch-loadable safetensors plus a deterministic parity fixture. Gated #[ignore] integration test loads it strictly and asserts forward-pass agreement: max abs diff 1.192e-7 on the seed-42 fixture. dump_variable_names test makes the tch name layout authoritative. Zero architecture discrepancies found. Co-Authored-By: claude-flow <ruv@ruv.net> * fix: workflow-review findings — BN gamma init, ThresholdParams serde, init docs Concurrent validation workflow (2 review lanes + adversarial verification, 13 agents): 5 confirmed findings, 3 refuted. Fixes: - wiflow_std: pin BatchNorm gamma to 1.0 (tch default draws Uniform(0,1) — silently halves activations in from-scratch training; loaded checkpoints unaffected, parity re-verified after the change) - wiflow_std: document the conv-init divergences vs the reference's effective kaiming_normal(fan_out) re-init (from-scratch dynamics only) - ieee80211bf: ThresholdParams deserialization validates via try_from so the <=100 invariant holds for untrusted payloads (+ rejection test) Benchmarks (release, ruvzen): GeometryEmbedding 1.84us/call (542k/s), MAE tokenization 7.38us/window (135k/s), 802.11bf FSM 8.9M events/s — nothing suspicious. Co-Authored-By: claude-flow <ruv@ruv.net> * docs(adr): ADR-152 §2.1.4 gate resolved — PerceptAlign repo MIT, dataset on HF Co-Authored-By: claude-flow <ruv@ruv.net> * feat(benchmarks): edge optimization measured + measurement (b) blocked + 92.9% retraction Edge optimization (ADR-152 optimize track): ONNX Runtime fp32 is the CPU latency win (3.2 ms/window, ~3.4x faster than torch, parity 2.4e-7); ORT dynamic int8 reaches 2.44 MB (paper's ~2.2 MB claim plausible only via conv-capable toolchains; -0.16pt PCK@20, +18% MPJPE, 2x slower); torch dynamic quant converts 0% of this conv-only model; fp16 halves storage free but is slower on CPU. Measurement (b) BLOCKED-ON-DATA: only 1,077 paired ESP32 windows exist (stop rule <2k). Forensic recheck of the surviving April holdout RETRACTS the ADR-079 '92.9% PCK@20' figure: constant-output model, absolute (not torso) threshold, 69 near-static frames — mean predictor scores 100% under that protocol; torso-PCK@20 is 19.1%. Corroborates PR #535. Stale citations removed from user-guide, readme-details, ADR-152 §2.1.3; no-citation rule extended to ADR-079 accuracy claims. Unblock: >=2k-window multi-pose paired session + torso-PCK re-baseline. Co-Authored-By: claude-flow <ruv@ruv.net> * docs(user-guide): corrected camera-supervised collection tutorial Step 0 CSI-rate check + session-length math (window yield = frames/20 — the May session's 8x under-delivery was a ~12 Hz CSI rate, not an aligner bug); two-checkerboard calibration step (ADR-152 §2.1.3); pose-variety and confidence guidance; torso-normalized PCK + temporal-split + pred-variance eval protocol (lessons from the 92.9% retraction); scale presets re-keyed to realistic window counts. Co-Authored-By: claude-flow <ruv@ruv.net> * feat(benchmarks): static PTQ int8 (calibrated) results + overnight capture script Conv-only static QDQ beats dynamic int8 on accuracy (PCK@20 96.61-96.63% vs 96.52%, MPJPE +10% vs +18% over fp32) at ~equal size/latency; all-ops QDQ strictly worse (int8 activations through attention glue). Entropy calibration verified bit-identical to MinMax on this data. Deployment: ONNX fp32 for speed (3.2ms), static conv-only QDQ for smallest (2.53MB). Also: scripts/overnight-empty-capture.py — segmented UDP CSI recorder for empty-room baselines (no glob collisions, detach-safe). Co-Authored-By: claude-flow <ruv@ruv.net> * feat(benchmarks): measurement (b) MEASURED — optimization transfer only, mean-pose baseline wins WiFlow-STD fine-tuned on 2,046 fresh single-room ESP32 paired windows (temporal 70/15/15, 70->540 adapter, K=17): pretrained-init 65% PCK@20 vs scratch 0% (optimization transfer) but frozen-trunk ~0% (no feature transfer), and NOTHING beats the mean-pose baseline (95.9% PCK@20 — single subject, near-static normalized coords). Honesty gates held: pred std 0.0113 (non-constant model) but mean-baseline dominance means no citable CSI->pose capability from this data. ADR-152 open question 1 answered partially; definitive answer needs multi-subject/position data. Two new aligner findings: heterogeneous csi_shape with silent zero-padding (~20%), and extractCsiMatrix's transposed shape label (frame-major data, [nSc, nFrames] label) — fixes pending. Co-Authored-By: claude-flow <ruv@ruv.net> * feat(benchmarks): efficiency sweep MEASURED — half model dominates full reference Compact WiFlow-STD variants on the same data/split/protocol: half (843,834 params, 0.38x) strictly dominates the 2.23M reference (PCK@20 96.62 vs 96.61, PCK@50 99.47 vs 99.11, MPJPE 0.00898 vs 0.0094) — the published architecture is over-parameterized for its own benchmark. quarter (338k) 96.05%; tiny (56,290 params, 1/39.5) holds 94.11% — a ~220KB fp32 edge candidate. In-domain caveats recorded; cross-domain untested. Co-Authored-By: claude-flow <ruv@ruv.net> * feat(train): compact WiFlow-STD presets in Rust + tiny edge artifact (ADR-152) WiFlowStdConfig gains half()/quarter()/tiny() mirroring the overnight sweep exactly: TcnGroupsMode (Fixed/Gcd/Depthwise), input_pw_groups, derived stride schedule and decoder-mid (all default to upstream behavior; legacy serde JSON unaffected). Param formulas pin to trained ground truth first try: 843,834 / 338,600 / 56,290; default 2,225,042 pin and 1.192e-7 parity unchanged. 248 tests green. Tiny edge artifact (tiny_edge_bench.py): ONNX fp32 = 295 KB, 0.66 ms/win (~1,500/s CPU), 94.11% PCK@20 (matches sweep clean-test exactly; parity 1.49e-7). Static int8 is a bad trade at this scale (-1.43pt, +19% MPJPE, -16% size, slower) — recorded as negative result. Export note: width-16 breaks AdaptiveAvgPool((15,1)) TorchScript export; replaced by exact mean+matmul equivalent, proven by parity. Co-Authored-By: claude-flow <ruv@ruv.net> * fix: resolve all 10 confirmed code-review findings (7-angle review, 20/20 verified) wiflow_std: min_feature_width (default 15) replaces the keypoints->stride coupling — for_keypoints(17) now provably builds the trained [2,2,2,2] graph and pools 15->17, matching the validated Python protocol (pinned by tests); param_count() total on invalid configs; random_mask returns Result and rejects non-finite/out-of-range ratios; trainer checkpoints switched to safetensors (.pt VarStore roundtrip broken on Windows torch 2.11). ieee80211bf: SBP proxy now re-triggers instances and relays reports via Action::RelaySbpReport -> SensingFrame::SbpReport (clients consume via their existing path); missed_instances reset on success = consecutive semantics; SessionTable gains a guarded SBP entry point + unknown-id drop counter; initiator-role sessions reject inbound setup/SBP requests (RejectedNotSupported) closing the idle hijack; StartSetup/StartSbp outside Idle return InvalidStateForCommand; SBP validation unified through evaluate_setup with a 1:1 SetupStatus->SbpStatus mapping. events.rs split out to honor the 500-line cap. calibration/cli: enrollment geometry now actually reaches trained banks — both production call sites attach .with_geometry; --geometry flag on train-room and POST /enroll/geometry + train-body geometry on calibrate-serve give production a recording surface; geometry-free banks log the ADR-152 §2.1.2 note. benchmarks: corruption masks committed as ground truth (unregenerable after in-place cleaning; verified bit-identical regeneration from the pristine copy) + generate_corruption_masks.py producer; _bench_common.py dedups the 5x-copied shim/evaluate/seed/remap (post-refactor PCK@20 re-verified equal to the last digit); remote scripts get the mmap patch; tiny_edge --calib validated multiple-of-64; onnx_bench --help no longer executes (and overwrote) the export — artifact restored byte-exact. Workspace: 2,963 tests passed, 0 failed; Python proof PASS. Co-Authored-By: claude-flow <ruv@ruv.net> * ci: build workspace tests without debuginfo — runner disk exhaustion The combined 38-crate debug target exceeds the GitHub runner's disk ('final link failed: No space left on device'); the same tree measured 151GB locally with full debuginfo. CARGO_PROFILE_{DEV,TEST}_DEBUG=0 shrinks the target ~5-10x; debuginfo serves no purpose in CI test runs. Co-Authored-By: claude-flow <ruv@ruv.net>
229 lines
9.1 KiB
Python
229 lines
9.1 KiB
Python
"""ADR-152 "optimize beyond SOTA": edge-optimization benchmark for the
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retrained WiFlow-STD checkpoint (results/retrained_best_pose_model.pth,
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~96% PCK@20, fp32 params 2,225,042).
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Measures, for fp32 / fp16 / dynamic-int8 torch variants:
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(a) serialized state_dict size on disk,
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(b) CPU inference latency per window at batch 1 and batch 64
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(median of repeated runs, this Windows box),
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(c) accuracy (PCK@20/50 + MPJPE, upstream metrics) on a corruption-free
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random subset of the seed-42 file-level 70/15/15 test split
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(same split as eval_repro.py; corrupted windows 487-499 excluded via
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results/nan_windows_mask.npy | results/big_windows_mask.npy).
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Also verifies the paper's "~2.2 MB int8" size claim: reports which layer
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types torch dynamic quantization actually converts (the model contains NO
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nn.Linear -- it is Conv1d/Conv2d/BatchNorm only) and the real on-disk size.
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Usage:
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.venv/Scripts/python.exe quantize_bench.py \
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--data-dir C:/Users/ruv/.cache/kagglehub/datasets/kaka2434/wiflow-dataset/versions/1/preprocessed_csi_data \
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[--subset 10000] [--skip-accuracy]
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Writes/merges into results/edge_optimization.json under key "torch".
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"""
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import argparse
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import json
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import os
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import platform
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import statistics
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import time
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import numpy as np
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import torch
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import torch.nn as nn
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from torch.utils.data import DataLoader
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from _bench_common import HERE, RESULTS, evaluate, import_upstream, load_wiflow_model
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import_upstream() # sys.path + models stub + >1GB np.load mmap patch
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from dataset import ( # noqa: E402
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PreprocessedCSIKeypointsDataset,
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create_preprocessed_train_val_test_loaders,
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)
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CHECKPOINT = os.path.join(RESULTS, "retrained_best_pose_model.pth")
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def load_fp32_model():
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# legacy upstream key remap inside is a harmless no-op on this checkpoint
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return load_wiflow_model(CHECKPOINT)
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def state_dict_size_bytes(model, path):
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torch.save(model.state_dict(), path)
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return os.path.getsize(path)
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def bench_latency(model, batch_size, n_runs, dtype=torch.float32):
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gen = torch.Generator().manual_seed(123)
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x = torch.rand(batch_size, 540, 20, generator=gen).to(dtype)
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with torch.no_grad():
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for _ in range(max(5, n_runs // 10)): # warmup
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model(x)
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times = []
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for _ in range(n_runs):
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t0 = time.perf_counter()
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model(x)
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times.append(time.perf_counter() - t0)
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med = statistics.median(times)
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return {
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"batch_size": batch_size,
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"runs": n_runs,
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"median_ms_per_batch": med * 1e3,
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"median_ms_per_window": med * 1e3 / batch_size,
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"windows_per_second": batch_size / med,
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}
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def build_test_subset(data_dir, subset_size, batch_size=64):
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"""Seed-42 file-level 70/15/15 test split (exactly as eval_repro.py),
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minus corrupted windows, then a seed-42 random subset."""
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dataset = PreprocessedCSIKeypointsDataset(
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data_dir=data_dir, keypoint_scale=1000.0, enable_temporal_clean=True)
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_tr, _va, test_loader = create_preprocessed_train_val_test_loaders(
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dataset=dataset, batch_size=batch_size, num_workers=0, random_seed=42)
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test_indices = np.asarray(test_loader.dataset.indices)
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corrupted = (np.load(os.path.join(RESULTS, "nan_windows_mask.npy"))
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| np.load(os.path.join(RESULTS, "big_windows_mask.npy")))
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clean = test_indices[~corrupted[test_indices]]
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print(f"test split: {len(test_indices)} windows, "
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f"{len(test_indices) - len(clean)} corrupted excluded, "
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f"{len(clean)} clean")
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if subset_size and subset_size < len(clean):
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rng = np.random.default_rng(42)
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clean = np.sort(rng.choice(clean, size=subset_size, replace=False))
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subset = torch.utils.data.Subset(dataset, clean.tolist())
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loader = DataLoader(subset, batch_size=batch_size, shuffle=False,
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num_workers=0)
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return loader, len(clean)
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def quantize_int8_dynamic(fp32_model):
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"""torch.ao.quantization.quantize_dynamic on Linear/Conv where supported.
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Returns (model, report) where report documents what actually quantized."""
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qmodel = torch.ao.quantization.quantize_dynamic(
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fp32_model, {nn.Linear, nn.Conv1d, nn.Conv2d}, dtype=torch.qint8)
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quantized, total_params, quant_params = [], 0, 0
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for name, mod in qmodel.named_modules():
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cls = type(mod).__module__ + "." + type(mod).__name__
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if "quantized" in cls:
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w = mod.weight() if callable(getattr(mod, "weight", None)) else None
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numel = w.numel() if w is not None else 0
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quant_params += numel
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quantized.append({"module": name, "class": cls, "params": numel})
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for p in fp32_model.parameters():
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total_params += p.numel()
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n_linear = sum(isinstance(m, nn.Linear) for m in fp32_model.modules())
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n_conv1d = sum(isinstance(m, nn.Conv1d) for m in fp32_model.modules())
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n_conv2d = sum(isinstance(m, nn.Conv2d) for m in fp32_model.modules())
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report = {
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"eligible_module_counts": {
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"nn.Linear": n_linear, "nn.Conv1d": n_conv1d, "nn.Conv2d": n_conv2d},
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"modules_actually_quantized": quantized,
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"n_modules_quantized": len(quantized),
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"params_total": total_params,
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"params_quantized": quant_params,
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"params_quantized_fraction": quant_params / total_params,
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}
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return qmodel, report
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def main():
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parser = argparse.ArgumentParser()
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parser.add_argument("--data-dir", default=os.path.join(
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os.path.expanduser("~"), ".cache", "kagglehub", "datasets", "kaka2434",
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"wiflow-dataset", "versions", "1", "preprocessed_csi_data"))
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parser.add_argument("--subset", type=int, default=10000)
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parser.add_argument("--runs-b1", type=int, default=100)
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parser.add_argument("--runs-b64", type=int, default=30)
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parser.add_argument("--skip-accuracy", action="store_true")
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parser.add_argument("--out", default=os.path.join(RESULTS, "edge_optimization.json"))
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args = parser.parse_args()
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torch.manual_seed(42)
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results = {
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"env": {
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"torch": torch.__version__,
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"platform": platform.platform(),
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"processor": platform.processor(),
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"num_threads": torch.get_num_threads(),
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"checkpoint": os.path.relpath(CHECKPOINT, HERE),
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},
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"variants": {},
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}
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# ---- build variants ---------------------------------------------------
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fp32 = load_fp32_model()
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n_params = sum(p.numel() for p in fp32.parameters())
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results["env"]["params"] = n_params
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print(f"fp32 model: {n_params:,} params")
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fp16 = load_fp32_model().half()
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int8, q_report = quantize_int8_dynamic(load_fp32_model())
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results["int8_dynamic_quant_report"] = q_report
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print(f"int8 dynamic: {q_report['n_modules_quantized']} modules quantized, "
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f"{q_report['params_quantized_fraction']*100:.1f}% of params")
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variants = {
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"fp32": (fp32, torch.float32, "retrained_fp32_resaved.pth"),
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"fp16": (fp16, torch.float16, "retrained_fp16.pth"),
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"int8_dynamic": (int8, torch.float32, "retrained_int8_dynamic.pth"),
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}
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# ---- (a) size + (b) latency -------------------------------------------
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for name, (model, dtype, fname) in variants.items():
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path = os.path.join(RESULTS, fname)
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size = state_dict_size_bytes(model, path)
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print(f"\n=== {name}: {size/1e6:.3f} MB on disk ({fname}) ===")
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lat1 = bench_latency(model, 1, args.runs_b1, dtype)
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lat64 = bench_latency(model, 64, args.runs_b64, dtype)
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print(f" batch 1: {lat1['median_ms_per_window']:.2f} ms/window "
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f"({lat1['windows_per_second']:.0f}/s)")
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print(f" batch 64: {lat64['median_ms_per_window']:.3f} ms/window "
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f"({lat64['windows_per_second']:.0f}/s)")
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results["variants"][name] = {
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"file": fname,
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"size_bytes": size,
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"size_mb": size / 1e6,
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"latency_batch1": lat1,
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"latency_batch64": lat64,
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}
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# ---- (c) accuracy ------------------------------------------------------
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if not args.skip_accuracy:
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loader, n_clean = build_test_subset(args.data_dir, args.subset)
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results["accuracy_subset"] = {
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"description": "seed-42 file-level 70/15/15 test split, corrupted "
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"windows (files 487-499) excluded, seed-42 random "
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"subset",
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"subset_size": min(args.subset, n_clean) if args.subset else n_clean,
|
|
"clean_test_total": n_clean,
|
|
}
|
|
for name, (model, dtype, _f) in variants.items():
|
|
print(f"\n=== accuracy: {name} ===")
|
|
results["variants"][name]["accuracy"] = evaluate(
|
|
model, loader, dtype=dtype, label=name)
|
|
print(json.dumps(results["variants"][name]["accuracy"], indent=2))
|
|
|
|
# ---- merge into edge_optimization.json ---------------------------------
|
|
merged = {}
|
|
if os.path.exists(args.out):
|
|
with open(args.out) as f:
|
|
merged = json.load(f)
|
|
merged["torch"] = results
|
|
with open(args.out, "w") as f:
|
|
json.dump(merged, f, indent=2)
|
|
print(f"\nwrote {args.out}")
|
|
|
|
|
|
if __name__ == "__main__":
|
|
main()
|