Datasets:
Formats:
parquet
Size:
1M - 10M
Tags:
gaussian-splatting
fault-tolerance
single-event-upset
reliability
radiance-fields
computer-graphics
License:
| """Throughput / parallel-scaling micro-benchmark for the fault-injection engine. | |
| Reports: (a) batched multi-camera render throughput vs camera count C (how the | |
| single device's parallel rasterizer absorbs more work), (b) end-to-end injection | |
| throughput vs views-per-injection K, (c) the per-frame cost of the parallel | |
| range-guard relative to a render. All numbers are measured on the real model. | |
| """ | |
| import argparse | |
| import json | |
| import os | |
| import time | |
| import numpy as np | |
| import torch | |
| import faultlib as F | |
| import gsmodel | |
| def timed(fn, iters, warmup=5): | |
| for _ in range(warmup): | |
| fn() | |
| torch.cuda.synchronize() | |
| t = time.time() | |
| for _ in range(iters): | |
| fn() | |
| torch.cuda.synchronize() | |
| return (time.time() - t) / iters | |
| def main(): | |
| ap = argparse.ArgumentParser() | |
| ap.add_argument("--model", default="/root/seu/results/chair/model.pt") | |
| ap.add_argument("--out", default="/root/seu/results/bench.json") | |
| args = ap.parse_args() | |
| ckpt = torch.load(args.model, map_location="cuda", weights_only=False) | |
| params = {k: v.cuda().float() for k, v in ckpt["params"].items()} | |
| sh = ckpt["sh_degree"] | |
| W, H = ckpt["W"], ckpt["H"] | |
| N = params["means"].shape[0] | |
| tvm = ckpt["test_viewmats"].cuda() | |
| tKs = ckpt["test_Ks"].cuda() | |
| nv = tvm.shape[0] | |
| bounds = F.compute_bounds(params) | |
| res = {"N": int(N), "W": W, "H": H, "scene": ckpt["scene"]} | |
| # (a) batched render throughput vs number of cameras | |
| cam_scale = [] | |
| for C in [1, 2, 4, 8, 16, 32, 64]: | |
| vm = tvm[torch.arange(C) % nv] | |
| ks = tKs[torch.arange(C) % nv] | |
| t = timed(lambda: gsmodel.render(params, vm, ks, W, H, sh), iters=30) | |
| mpix = C * W * H / 1e6 / t | |
| cam_scale.append({"C": C, "sec_per_call": t, "frames_per_s": C / t, "mpix_per_s": mpix}) | |
| print(f"render C={C:3d}: {t*1000:7.2f} ms {C/t:8.1f} frames/s {mpix:8.1f} Mpix/s", flush=True) | |
| res["render_camera_scaling"] = cam_scale | |
| # (b) end-to-end injection throughput vs K (flip + render + restore, no metrics) | |
| stored, work = F.quantize_params(params, "fp32") | |
| inj_scale = [] | |
| for K in [1, 2, 4, 8]: | |
| vm = tvm[torch.arange(K) % nv] | |
| ks = tKs[torch.arange(K) % nv] | |
| def one(): | |
| cv, _ = F.flip_one(stored["scales"], work["scales"], 7, 22, "fp32") | |
| F.render_views(work, vm, ks, W, H, sh) | |
| F.restore_one(work["scales"], 7, cv) | |
| t = timed(one, iters=200) | |
| inj_scale.append({"K": K, "sec_per_inj": t, "inj_per_s": 1.0 / t}) | |
| print(f"inject K={K}: {t*1000:6.2f} ms {1.0/t:8.1f} inj/s", flush=True) | |
| res["inject_view_scaling"] = inj_scale | |
| # (c) range-guard cost vs render cost (single frame) | |
| t_guard = timed(lambda: F.apply_guard(work, bounds), iters=200) | |
| t_render1 = timed(lambda: gsmodel.render(params, tvm[:1], tKs[:1], W, H, sh), iters=100) | |
| res["guard_sec"] = t_guard | |
| res["render1_sec"] = t_render1 | |
| res["guard_frac_of_render"] = t_guard / t_render1 | |
| print(f"guard: {t_guard*1e6:.1f} us render(1 view): {t_render1*1e3:.3f} ms " | |
| f"guard/render = {t_guard/t_render1:.4f}", flush=True) | |
| with open(args.out, "w") as f: | |
| json.dump(res, f, indent=2) | |
| print("SAVED", args.out, flush=True) | |
| if __name__ == "__main__": | |
| main() | |