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smooth-hierarchy-ucf101
6876770
torch
gh116
NVIDIA H200
00:06:28
0
400
2
200
64
128
0.0001
ucf101
/scratch/ajc10180/data/ucf101
FiLM-conditioned U-Net
1
1
1
1
1
false
32
8
2
0.05
100
50
https://wandb.ai/aditijc5-new-york-university/smooth-hierarchy/runs/9yngjsbe
l1,l2,l3,l4,total_loss
0,0.1,0.5,0.9,1.0
final
true
train.py
canary.sbatch
348c9cf
FiLM-UNet
Canary run for smooth-hierarchy-ucf101: 2 epochs x 200 batches on UCF101 @ 64x64, verifying pipeline before 50-epoch main run.

smooth-hierarchy-ucf101 — Canary v1

Canary run artifacts for the smooth-hierarchy-ucf101 experiment. This is a pipeline-verification run, not the main training run. It establishes that:

  • FFmpeg 7.1 + torchcodec 0.11.0 + torch 2.11.0+cu130 work on NYU torch H200 nodes
  • The 4-loss FiLM U-Net (L1 recon @ β=1, L2 collapse @ β=0, L3 abstraction-margin, L4 temporal-margin) trains end-to-end
  • Checkpoints save every 100 train steps + every epoch
  • W&B logs all 4 loss components and reconstruction panels at β ∈ {0, 0.1, 0.5, 0.9, 1.0}

Provenance

  • Job: torch:6876770 on gh116 (NVIDIA H200, 143 GB VRAM)
  • Elapsed: 6m28s, exit 0
  • Global steps: 400 (2 epochs × 200 --limit_train_batches)
  • W&B: canary-6876770
  • Repo head: 348c9cf

Files

File Purpose
last.ckpt Most recent checkpoint (47 MB) — rolling
smooth-hierarchy-epoch=01-step=00000400.ckpt Final step-indexed checkpoint
smooth-hierarchy-epoch=epoch=01.ckpt Epoch-1 end checkpoint
canary.sbatch The sbatch script used for this run
canary-6876770.out / canary-6876770.err Full job logs
canary_metadata.parquet Run config + hyperparams for reproducibility
uv.lock Exact Python dep resolution for bit-exact env reconstruction

Hyperparameters (canary)

  • Dataset: UCF101 (101 classes, 13,320 videos) pulled from quchenyuan/UCF101-ZIP HF mirror (CRCV source was flaky)
  • Image size: 64 × 64
  • Batch size: 128
  • Max epochs: 2
  • --limit_train_batches: 200
  • LR: 1e-4
  • λ₁ = λ₂ = λ₃ = λ₄ = 1.0
  • --skip_beta_power: 1.0
  • --recon_all_betas: False
  • --frames_per_clip: 32, --step_between_clips: 8, --delta_t: 2

How to reproduce

  1. Obtain the smooth-hierarchy training repo at head 348c9cf from its source of record (private repo; see experiment owner).
  2. On an HPC with an H100/H200/A100 GPU, run setup.sbatch (fetches UCF101 via HF mirror, builds venv via uv using the uv.lock in this dataset).
  3. sbatch canary.sbatch with WANDB_API_KEY + HF_TOKEN available in ~/.raca/keys.env.

Exact dependency set is pinned in uv.lock in this dataset.

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