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Hyperparameter search for image classifiers using Ray Tune + SkyPilot

Project description

krunic

Automated hyperparameter search for image classifiers - from dataset to tuned model with one command. Distributed across GPUs and across hosts, locally and on the cloud (AWS).

Built on Ray Tune, Optuna, timm, and SkyPilot.

Install (Mac and Linux)

$ pipx install krunic

This installs three commands: tunic (local training), krunic (cloud launcher), and tunic-plotter (results visualizer). The command takes a couple of minutes.

Quick start

Local:

$ tunic --data /path/to/dataset --model resnet50 --n_trials 30 --epochs 30 --output results.json

Cloud (AWS):

This requires, obviously, an AWS account. The image data must be copied to S3 prior to the run, for example like this:

$ aws s3 sync ~/image_data/tin s3://image.data/tin
$ krunic \
  --cluster skya \
  --s3-path my-dataset \
  --model resnet50 \
  --accelerator T4:4 \
  --num-nodes 4 \
  --n-trials 48 \
  --n-epochs 50 \
  --prefix kaws

SkyPilot creates the cluster, Ray distributes the load across the GPUs. In my experiments, it achieves near-perfect utilization:

Description

Upon completion, get the best model hyperparameters:

$ aws s3 cp s3://image.data/ray-results/tin6/kaws_results.json .

Plot metric per trial:

$ tunic-plotter kaws_results.json

Description

Remember to take down the cluster after downloading the results.

$ yes | sky down skya

Train final model from tuning results:

$ tunic --final kaws_results.json --data /path/to/dataset --epochs 50 --amp

Results on common benchmarks

Dataset Model Metric Validation Test SOTA
PCam ResNet18 AUROC 0.96 0.96 0.96
TinyImageNet ViT-Small Accuracy 0.87 0.91
ChestMNIST ResNet18 AUROC 0.75 0.75 0.77
TissueMNIST ResNet18 AUROC 0.92 0.94 0.93

All runs use generic off-the-shelf models with no domain-specific modifications.

Search space

Parameter Range
Optimizer AdamW, SGD
Learning rate 1e-5 – 1e-1 (log)
Weight decay 1e-6 – 1e-1 (log)
Label smoothing 0 – 0.3
Dropout rate 0 – 0.5
RandAugment magnitude 1 – 15
RandAugment num ops 1 – 4
Mixup alpha 0 – 0.5
CutMix alpha 0 – 1.0

Override any part with a YAML file via --search-space.

tunic - local hyperparameter search

tunic --data PATH --model MODEL [options]
Flag Default Description
--data required Dataset root (ImageFolder or WebDataset)
--model required Any timm model name
--n_trials 80 Number of Optuna trials
--epochs 30 Training epochs per trial (also used for --final)
--tune-metric val_auroc Metric for trial selection and pruning
--training_fraction 1.0 Fraction of training data (val always uses 1.0)
--batch-size 32 Batch size per trial
--amp Enable automatic mixed precision
--resume Warm-start from a previous experiment directory
--final Skip tuning; train final model from results JSON
--combine Train final model on train+val combined
--final-model tunic_final.pt Output path for final model weights
--final-stats Output path for final model stats (JSON)
--device auto auto, cuda, mps, or cpu
--smoke-test Quick end-to-end test with synthetic data

krunic - cloud launcher

krunic generates a SkyPilot YAML and launches the job. The dataset is S3-mounted (or copied); results are uploaded to S3 when the job completes.

Prerequisites: SkyPilot configured with AWS credentials; dataset in S3.

--workdir defaults to the installed package directory (contains tunic.py and requirements.txt). Override it only if you are developing from a local source checkout and want to test unpublished changes.

krunic --cluster NAME --workdir DIR --s3-path PATH --model MODEL [options]
Flag Default Description
--cluster required SkyPilot cluster name
--workdir package dir Local directory synced to the cluster. Used for development
--s3-path required Dataset path within the S3 bucket
--model required Any timm model name
--accelerator T4:4 GPU spec (e.g. T4:4, A10G:1, A100:8)
--num-nodes 1 Number of cluster nodes
--n-trials 30 Number of Optuna trials
--n-epochs 30 Training epochs per trial
--batch-size 32 Batch size per trial
--training-fraction 1.0 Fraction of training data per trial
--tune-metric val_auroc Metric for trial selection and pruning
--bucket image.data S3 bucket name
--prefix tunic Prefix for output files and S3 paths
--spot Use spot instances (with retry-until-up)
--copy Copy data from S3 to local disk instead of mounting
--idle-minutes 60 Auto-stop cluster after N idle minutes
--no-autostop Disable auto-stop

Results are uploaded to s3://<bucket>/ray-results/<prefix>/<prefix>_results.json.

tunic-plotter - visualize results

tunic-plotter results.json                  # plots val_auroc and val_acc
tunic-plotter results.json --metric val_acc # single metric
tunic-plotter results.json --trial_sort     # keep original trial order, show running best

Saves PNG files alongside the results JSON.

Dataset format

tunic auto-detects the dataset format:

  • ImageFolder - standard split/class/image.ext layout
  • WebDataset - sharded TAR files; detected when wds/dataset_info.json exists

Scaling

Concurrent trials = total GPUs: --num-nodes 4 --accelerator T4:4 --> 16 concurrent trials.

Optuna's TPE needs ~20 trials before it outperforms random search. 32–64 trials is a practical range for most problems.

Output format

{
  "model": "resnet18",
  "best_val_auroc": 0.963,
  "best_val_acc": 0.891,
  "best_params": {
    "optimizer": "AdamW",
    "lr": 0.0028,
    "weight_decay": 3.6e-06,
    "label_smoothing": 0.058,
    "drop_rate": 0.183
  },
  "n_trials": 48,
  "completed_trials": 48,
  "epochs": 50,
  "all_trials": [...]
}

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