# FUTURE-TS submission guide This guide is for external authors who want to submit a time-series forecasting model to FUTURE-TS. It covers the contract, the file format, the sealed execution environment, and the review process. There are two ways to submit today: 1. **Sealed-runner submission (preferred).** You provide a Python script that takes task windows and writes predictions. The evaluator runs it through :mod:`future_ts.sealed_runner` on an isolated machine with a fixed hardware class, no network, and platform-signed timestamps. Your model's integrity declarations are then structural, not attested. 2. **Pre-scored submission.** You run your model yourself and hand us a validated FUTURE-TS submission JSON with predictions, an `execution_mode="self_attested"` run manifest, and a pretraining manifest declaring the data your model was exposed to. This path works for the `public_dev` tier only; `blind_archive` and `live` require the sealed runner. ## Contract — what every submission must declare Every submission is a JSON document that conforms to `schemas/submission.schema.json` and carries: | Field | Required | Purpose | |-------|----------|---------| | `metadata.submission_id` | yes | stable identifier; must not collide with any prior submission | | `metadata.model_name` | yes | human-readable name shown on the leaderboard | | `metadata.organization` | yes | your affiliation | | `metadata.training_cutoff` | yes | the latest timestamp your model could have seen at training time | | `metadata.frozen_at` | yes | when the model weights were frozen; must be ≥ `training_cutoff` | | `metadata.pretraining_data_manifest` | strict-mode only | list of `{source_id, cutoff_date, notes}` declaring your pretraining corpora. Benchmarks with `require_pretraining_manifest=true` reject submissions without it — intentional, to avoid conflating "clean" with "undeclared" | | `metadata.run_manifest` | yes | platform timestamps + prediction_hash + manifest_hash (the sealed runner fills this for you if you use it) | | `declarations.no_manual_retuning` | yes | must be true — you did not tune to the evaluation set | | `declarations.network_isolated` | yes | true when the forecast loop could not reach the internet | | `predictions` | yes | one record per (task_id, issue_time, series_id, horizon_index, budget); point and/or quantiles and/or event_probability depending on task type | See `examples/submissions/futurefm.json` for a complete example. ## Sealed-runner contract (preferred path) 1. **Write one script** that implements the `run()` entry point: ```python # my_submission.py import json, sys from pathlib import Path def run(task_windows_path: Path, predictions_out_path: Path) -> None: windows = json.loads(task_windows_path.read_text())["task_windows"] predictions = [] for window in windows: # window has: task_id, issue_time, series_id, horizon, # target_timestamps, history, budget. # Produce one prediction per (window, horizon_index). ... predictions_out_path.write_text(json.dumps({"predictions": predictions}, indent=2)) if __name__ == "__main__": run(Path(sys.argv[1]), Path(sys.argv[2])) ``` A working reference lives at `examples/submissions/reference_seasonal_naive.py`. 2. **Declare your pretraining manifest.** If you're submitting to a benchmark with `require_pretraining_manifest=true`, attach a non-empty `pretraining_data_manifest`. Absence is *not* treated as "no exposure" — it's treated as "not disclosed" and the benchmark will reject your submission. Being honest costs you nothing; hiding costs you the submission. 3. **Submit via PR**, following the template below. The evaluator runs your script through :func:`future_ts.sealed_runner.run_sealed` and scores the output under the standard pipeline. Resource caps the sealed runner enforces (MVP): - CPU: 120 seconds per invocation. - Wall clock: 180 seconds per invocation. - Memory: 4 GiB best-effort local limit (`RLIMIT_DATA` when available; `RLIMIT_AS` fallback only when necessary). - Network: structurally unreachable on Linux when `CLONE_NEWNET` succeeds. On macOS/Windows the local runner only scrubs proxy-related environment variables and prints a warning because raw sockets are still possible. Use Docker/Kubernetes `--network=none` for enforceable local isolation outside Linux. Need more? Open an issue describing the hardware class you need and why — the runner is designed to support multiple classes per task card (see `resource_budget` on each task JSON). ## How to submit ### 1. Open a PR - Fork the repository. - Create a submission directory at `submissions/community/_/`. - Place your submission script at `submissions/community/_/script.py`. - Place an accompanying declaration JSON at `submissions/community/_/declaration.json` carrying the metadata + declarations blocks (no predictions yet — the sealed runner fills those after it runs your script). - Add a short README at `submissions/community/_/README.md` with the model description, artifact link, and any notes reviewers need. - Open a PR using the template `.github/PULL_REQUEST_TEMPLATE/submission.md`. The PR is auto-validated by CI: the submission directory is checked for `script.py`, `declaration.json`, and `README.md`; required metadata and declaration fields are checked; and the script is smoke-tested against the sealed runner using a small synthetic task window. Once those checks pass, a human reviewer signs off and triggers the full evaluation. ### 2. (Optional) Pre-scored self-attested submissions If you prefer to run your model yourself, you can produce a full submission JSON (predictions included) and attach it to the PR as `submissions/community/_/submission.json`. Note: - `execution_mode` must be `self_attested`. - `public_dev` tier only; blind and live tiers require the sealed runner because the temporal-integrity guarantees depend on the platform clock, not submitter-provided timestamps. - You must still declare the pretraining manifest. ### 3. What the reviewer checks - Schema validation passes. - `no_manual_retuning=true`. - `training_cutoff <= frozen_at <= platform_received_at` (automatically enforced by the validator; the reviewer verifies the dates are plausible). - Pretraining manifest is declared; source_ids are plausibly public (unusual or proprietary entries require a note explaining why). - The sealed runner produced a non-empty prediction set for every visible (task, issue_time, series, horizon) tuple — partial runs are rejected by the coverage check. - The model card referenced by `artifact_uri` is real and reachable. ## Governance & license Submissions are reviewed by TSFM.ai on a rolling basis. By submitting, you agree: - Your submission script + declaration may be archived in this repository (same Apache-2.0 license as the rest of the repo). - The evaluator may score your submission and publish the resulting `BenchmarkReport` on any public leaderboard. - You retain ownership of your model artifact itself — we only archive the submission script, declarations, and produced predictions, never model weights. ## Reproducibility expectations A submission is reproducible when, given the same `task_windows.json`, the sealed runner produces the same `prediction_hash`. If your model is intrinsically stochastic, seed it deterministically from `FUTURE_TS_SEALED_RUNNER` or a submitter-fixed constant. The leaderboard flags non-deterministic submissions separately so readers know whether a rerun would reproduce the score. ## Where to ask questions Open a GitHub issue on the repository with the `submission-help` label. We aim to respond within 3 business days.