CIS490/scripts
Max 308140c6ce training: lambda-cloud one-shot training integration
External-GPU path for the time-pressured first round, before the
Windows desktop joins the WG fleet. Lambda is treated as an "external
worker" whose output lands in the same /var/lib/cis490/models/ tree
the receiver-coordinated fleet uses, so cis490-jobs status reflects
Lambda runs identically to fleet runs.

Three scripts + one ingest tool:

  scripts/build-lambda-bundle.sh
    Tarball at /tmp/cis490-lambda/lambda-bundle-<short>.tar.zst with:
      - the repo (sans .git, sans data/, sans artifacts*)
      - data/processed/{validation_v1,features_window_v1}.parquet
      - data/processed/feature_schema_v1.json
      - data/processed/tensor_window_v1/   (npz shards)
      - bootstrap.sh (entrypoint)
      - training_manifest.toml (the canonical job list)
      - BUNDLE_MANIFEST.json (commit hash + counts + build stamp)
    Verifies all four data inputs exist BEFORE compressing 5+ GB.

  scripts/run-on-lambda.sh ubuntu@<ip>
    rsync bundle up → ssh + run bootstrap → rsync artifacts +
    reports/eval back to artifacts-lambda/ + reports/lambda/.
    Resumable rsync; sha256-verified.

  scripts/lambda-bootstrap.sh   (runs ON the Lambda instance)
    Creates .venv with cu121 torch + xgboost + the [training] deps,
    iterates the manifest's job list in priority order (highest first),
    runs trainer/run.py (or run_ssl.py for transformer_ssl) per job,
    skips jobs whose .ckpt.json already exists (idempotent on re-run),
    writes per-job logs/<model>_<mode>.log, runs eval suite at the end,
    stamps artifacts/RUN_SUMMARY.json with counts + failed-job list.

  tools/ingest_lambda_artifacts.py
    Bundles each (ckpt.json + sidecar + train.json) trio into a
    .tar.zst, sha256, PUTs to the local trainer-receiver's
    /v1/model/{job_id}, marks the job complete. Maps (model, mode) →
    job_id by re-reading the canonical manifest. Handles the queue
    state churn (requeue if completed, claim if pending, fail-back
    on race losses).

End-to-end smoke verified on the A100 instance just provisioned:
  - SSH from Pi via ed25519 keypair (cis490-trainer-pi)
  - GPU: A100-SXM4-40GB, driver 580.105.08
  - venv warmed: torch 2.5.1+cu121, xgboost 3.2.0
  - 464 GB ephemeral disk available

Pi-side feature build (build_features.py + build_tensors.py against
all 72,952 accepted+degraded episodes) is in progress; bundle build
gates on its completion. Estimated wall-clock for the full Lambda
training run on A100: ~2.5 hours for 12 supervised + 2 SSL models +
eval suite.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-08 12:32:04 -05:00
..
auto-update.sh lab-host: cis490-autoupdate.timer for self-healing on push 2026-05-01 16:59:31 -05:00
build-lambda-bundle.sh training: lambda-cloud one-shot training integration 2026-05-08 12:32:04 -05:00
fetch-alpine-baseline.sh Close out the deployment-readiness gaps 2026-04-30 00:31:55 -05:00
fetch-lab-host-cert.sh lab-host: cis490-cert-fetch.timer for automatic mTLS bootstrap retry 2026-05-02 13:30:16 -05:00
fetch-metasploitable2.sh Tier 3 + Tier 4 auto-deploy: zero operator interaction 2026-04-30 23:12:08 -05:00
install-lab-host.sh PIPELINE §5 step 2: canonical manifest at <repo>/manifest.toml 2026-05-04 01:25:01 -05:00
install-msfrpcd.sh Tier-3 bring-up: 9 bugs fixed on elliott-ThinkPad (2026-05-01) 2026-05-02 12:26:19 -06:00
install-receiver.sh bootstrap: auto-issue mTLS leaves to enrolled lab hosts (closes #9, refs #3) 2026-04-30 01:30:29 -05:00
install-tier-3-4.sh Tier-3: fix QEMU boot, catalog admission, verify module 2026-05-05 16:41:41 -06:00
install-training-worker-windows.ps1 training/fleet: distributed multi-host trainer with capability gating 2026-05-08 01:20:20 -05:00
install-training-worker.sh training/fleet: distributed multi-host trainer with capability gating 2026-05-08 01:20:20 -05:00
issue-cis490-client-cert-wrapper.sh bootstrap: auto-issue mTLS leaves to enrolled lab hosts (closes #9, refs #3) 2026-04-30 01:30:29 -05:00
lambda-bootstrap.sh training: lambda-cloud one-shot training integration 2026-05-08 12:32:04 -05:00
run-on-lambda.sh training: lambda-cloud one-shot training integration 2026-05-08 12:32:04 -05:00
sync-training-data.sh training: validator, feature/tensor extractors, 6 supervised models, schema-hashed checkpoints, eval suite, dashboard producers 2026-05-08 01:19:00 -05:00