tao-train-single-step

作成者: nvidia

Standard single-step train/eval/export workflow for any TAO model. Use when training a TAO model on a dataset without iterative data augmentation, AutoML, or…

npx skills add https://github.com/nvidia/skills --skill tao-train-single-step

Normal Train

Standard supervised fine-tuning: train a model on a labeled dataset, optionally evaluate, then optionally export. The most common TAO workflow for adapting a pretrained model to a new dataset.

Steps

  1. train — executed through AutoML when the selected model has automl_enabled: true and automl_policy is on; set automl_policy=off for a plain single training run
  2. eval — executed if eval_dataset_uri is resolved
  3. export — optional, on user request after training

Prerequisites

Required

  • model: A compatible TAO model (e.g., clip, nvdinov2, grounding_dino)
  • train_dataset_uri: URI of the training dataset (e.g., s3://bucket/train/)
  • platform: Ask from the generated supported-platform list: ${TAO_SKILL_BANK_PATH:-~/tao-skills-external}/scripts/list_tao_platforms.py --format text
  • container image confirmation: resolve the default image from the selected model/action config, show it to the user, and require confirmation or image=<override> before creating runner files or submitting training.

Optional

  • eval_dataset_uri: Some model skills mark this as required — check the resolved model skill before treating it as optional.
  • base_checkpoint: If not provided, defaults to the NGC pretrained checkpoint listed in the model skill, or trains from scratch if no NGC checkpoint exists.
  • automl_policy: on by default; set off to bypass model-level AutoML for this run while leaving model metadata unchanged. Use only on / off in new launch settings.
  • image override: Use image=<override> to pin a specific TAO toolkit build after reviewing the resolved default.

Launch Intake

After the user confirms they want this standard train/eval/export workflow, ask which supported platform they intend to run on. Generate the choices with scripts/list_tao_platforms.py --format text; do not scan platform docs or folders.

Before creating a plain train runner, inspect the selected model's metadata with scripts/list_tao_models.py --scope automl --format json or read skills/models/<network>/references/skill_info.yaml. If automl_enabled is true and the helper reports a valid train schema for that model, route the train stage through skills/applications/tao-run-automl by default. Only stay on the plain train path when automl_policy=off, the user explicitly asks for no HPO/AutoML, or AutoML is enabled but not runnable because the model's train schema is not packaged yet.

Also ask whether long-running monitoring should stay enabled and how many minutes between status updates. Defaults: enabled, 5 minutes.

After the model/action are known, run scripts/resolve_tao_image.py --model <network> --action train --format text and ask whether to use the resolved image or an image=<override>. Do not create the tao-train-single-step runner until the image is confirmed.

After platform selection, run scripts/list_tao_platforms.py --platform <platform> --format text and ask only for credentials relevant to that platform, plus any selected-model credentials. Do not ask for unrelated platform credentials.