earth2studio-create-prognostic

द्वारा nvidia

Create Earth2Studio prognostic (time-stepping forecast) model wrappers. Do NOT use for diagnostic models, data sources, or installation.

npx skills add https://github.com/nvidia/skills --skill earth2studio-create-prognostic

Quick Start Checklist

Do these steps IN ORDER. Do not skip any step.

  • Read this SKILL.md completely first
  • Get reference script (Step 0)
  • Create earth2studio/models/px/<name>.py with triple inheritance
  • Create test/models/px/test_<name>.py with mock tests
  • Run: uv run pytest test/models/px/test_<name>.py -v
  • Add/update model extra, install docs, API docs, and changelog (Steps 1-2, 9)
  • Run: make format && make lint

⚠️ CRITICAL: Always use uv run for Python commands:

  • uv run pytest ... / uv run python ...
  • pytest ... / python ... (missing dependencies)

Stuck or wrong output: Do not keep retrying the same fix. Follow Self-Improvement to patch this skill before continuing.

Purpose

Implement a prognostic model wrapper connecting third-party ML weather models to Earth2Studio. Prognostic models time-integrate forward—given initial state, they predict future states by stepping through time (e.g., 6-hour increments).

Workspace

ContextLocation
Harbor evalWrite to /workspace/output/earth2studio/models/px/...
Harbor + --copy-repoFull checkout at /workspace/repo
Local cloneDirectory with pyproject.toml

Never read evals/targets/ — grader references only.

Reference Files

Load on demand during the matching step:

FileContentLoad at
references/skeleton-template.pyFull model skeleton with FILL commentsSteps 3–6
references/method-templates.pyCanonical method implementationsSteps 4–6
references/testing-guide.pyTest skeleton and mock patternsStep 7
references/validation-guide.mdComparison scripts, PR, code reviewSteps 10–11

Workflow Steps

Step 0 — Get Reference Script

If $ARGUMENTS provided, use it. Otherwise ask:

Please provide a reference inference script URL/path.

Step 1 — Analyze & Propose Dependencies

Analyze: packages, architecture, I/O shapes, time step, resolution, checkpoint.

Propose pyproject.toml group (alphabetical, add to all). Every prognostic model must have an optional dependency extra, even when no packages are required:

model-name = ["package1>=version", "package2"]
# or, when no additional packages are required:
model-name = []

[CONFIRM] Present dependencies and ask user to approve.

Step 2 — Add Dependencies

Edit pyproject.toml: add the model extra alphabetically, even if it is empty, and update the all aggregate.

Step 3 — Create Model File

File: earth2studio/models/px/<lowercase>.py

Required inheritance (all three):

class ModelName(torch.nn.Module, AutoModelMixin, PrognosticMixin):

Required imports:

import numpy as np
import torch
from earth2studio.models.auto import AutoModelMixin, Package
from earth2studio.models.batch import batch_coords, batch_func
from earth2studio.models.px.base import PrognosticMixin
from earth2studio.models.utils import create_coords_from_lat_lon, handshake_dim
from earth2studio.lexicon import E2STUDIO_VOCAB
from earth2studio.utils import check_optional_dependencies
from loguru import logger

SPDX header (required at top of every .py file):

# SPDX-FileCopyrightText: Copyright (c) 2024-2025 NVIDIA CORPORATION & AFFILIATES.
# SPDX-License-Identifier: Apache-2.0

Canonical method order:

  1. __init__ 2. input_coords 3. output_coords (@batch_coords)
  2. load_default_package 5. load_model 6. to (optional)
  3. Private methods 8. __call__ (@batch_func) 9. _default_generator
  4. create_iterator

Step 4 — Implement Coordinates

input_coords rules:

  • batch: np.empty(0)
  • time: np.empty(0) (dynamic)
  • lead_time: starts at np.timedelta64(0, "h")
  • lat: 90 to -90 (north to south); this is the public Earth2Studio convention even if the source model uses the opposite order
  • lon: 0 to 360
  • If a checkpoint/model core expects south-to-north latitude, flip tensors internally before/after the core model; do not expose flipped latitude in input_coords or output_coords
  • Map variables to E2STUDIO_VOCAB (282 entries in earth2studio/lexicon/base.py)

output_coords: Use handshake_dim/handshake_coords for input validation, then increment lead_time. Prefer a shared coordinate-check helper and call it from output_coords, __call__, and iterator setup before model execution.

Step 5 — Implement Forward Pass

__call__: @batch_func decorated, shape (batch, time, lead_time, var, lat, lon). Reshape to model format → call model → reshape back.

create_iterator: MUST yield initial condition first (step 0). Use front_hook/rear_hook for perturbation injection.

Step 6 — Implement Model Loading

load_default_package: Lock HuggingFace URLs: hf://org/repo@commit

load_model: Use package.resolve(), map_location="cpu", eval() mode, decorate with @check_optional_dependencies().

Step 7 — Write Tests

File: test/models/px/test_<name>.py

Required tests:

FunctionPurpose
test_<model>_callSingle forward pass (parametrize device/time)
test_<model>_iterIterator produces sequence
test_<model>_exceptionsInvalid coords raise errors
test_<model>_packageReal weights (@pytest.mark.package)

Create PhooModelName dummy matching interface for mock tests.

Run tests:

uv run pytest test/models/px/test_<name>.py -m "not package" -v
uv run pytest test/models/px/test_<name>.py::test_<model>_package --package -v

Do not omit the package test. If arbitrary random inputs are not physically valid for the real checkpoint, use a stable model-appropriate synthetic input while still loading real weights and running a forward pass.

Step 8 — Register Model (if requested)

  • Add to earth2studio/models/px/__init__.py (alphabetical)
  • Verify deps in pyproject.toml

Step 9 — Documentation

  • Add to docs/modules/models_px.rst (alphabetical). This is required for every new prognostic model so the API docs include the generated page.
  • Add to docs/userguide/about/install.md (alphabetical tab) for the model extra, even when the extra is empty. Include model-specific notes plus both pip install earth2studio[model-name] and uv add earth2studio --extra model-name instructions.
  • Update CHANGELOG.md under ### Added. This is required for every new prognostic model.

Format and lint:

make format && make lint && make license

Step 10 - Validation (if requested)

Follow references/validation-guide.md. Create uncommitted vanilla, E2S, comparison, and sanity-check scripts; do not commit generated outputs or images. Use PR-safe placeholders for plots so the user can upload images manually.

[CONFIRM] User must visually inspect plots before proceeding.

Step 11 - PR (if requested)

Follow references/validation-guide.md and use:

  • references/pr-body-template.md
  • references/pr-comment-template.md

Before creating the PR, verify pyproject.toml has the model extra, the all extra includes it, install docs include both pip and uv commands, and docs/modules/models_px.rst plus CHANGELOG.md are updated.

Do not include machine names, absolute paths, device inventory, or uploaded image links in PR text. Use plot placeholders instead.


Examples

Simple Identity Model

User: Create IdentityModel - returns input unchanged, 6h step, 181x360, vars: t2m, u10m, v10m, msl

Agent: [reads SKILL.md, creates identity.py with triple inheritance,
        creates test_identity.py, runs pytest, runs make format && lint]

External Model (Pangu)

User: Add Pangu-Weather wrapper
      GitHub: https://github.com/198808xc/Pangu-Weather

Agent: [reads SKILL.md, fetches inference.py, creates pangu.py,
        creates test_pangu.py, runs pytest]

Key Patterns

Coordinate Template

@property
def input_coords(self) -> CoordSystem:
    return CoordSystem({
        "batch": np.empty(0),
        "time": np.empty(0),
        "lead_time": np.array([np.timedelta64(0, "h")]),
        "variable": np.array(["t2m", "u10m", ...]),
        # Public Earth2Studio convention is north-to-south latitude.
        "lat": np.linspace(90, -90, 181),
        "lon": np.linspace(0, 359, 360),
    })

@batch_coords()
def output_coords(self, input_coords: CoordSystem) -> CoordSystem:
    output = input_coords.copy()
    output["lead_time"] = input_coords["lead_time"] + np.timedelta64(6, "h")
    return output

Iterator Template

def create_iterator(self, x, coords):
    yield x, coords  # Initial condition (step 0)
    while True:
        x, coords = self.front_hook(x, coords)
        x, coords = self(x, coords)
        x, coords = self.rear_hook(x, coords)
        yield x, coords

Troubleshooting

ErrorSolution
OptionalDependencyFailureuv add --optional <group> <pkg>
Coordinate handshake failsCheck handshake_dim indices match dim position
Iterator wrong shapesDebug reshape logic with random input
ModuleNotFoundError: pytestUse uv run pytest not pytest

Reminders

DO:

  • Use uv run python for ALL Python commands
  • Use loguru.logger, never print()
  • Inherit torch.nn.Module + AutoModelMixin + PrognosticMixin
  • Yield initial condition first in create_iterator
  • Use front_hook()/rear_hook() in _default_generator
  • Include SPDX header in every .py file

DON'T:

  • Create general base classes for reuse
  • Commit API keys or comparison scripts
  • Read from evals/targets/

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