| name | earth2studio-create-diagnostic |
| version | 0.16.0 |
| license | Apache-2.0 |
| metadata | {"author":"NVIDIA Earth-2 Team <agent-skills@nvidia.com>","tags":["earth2studio","diagnostic-model","python"]} |
| description | Create Earth2Studio diagnostic model wrappers for single-step data transformations, including simple derived diagnostics, packaged AutoModel diagnostics, and generative or diffusion diagnostics. Do NOT use for prognostic time-stepping models, data sources, or installation.
|
| argument-hint | URL or local path to reference inference script (optional) |
Quick Start Checklist
Do these steps in order. Do not skip ahead. Before editing, read this
SKILL.md and load the relevant reference files for the model type. After
implementation, run the focused pytest command before saying tests pass. If
tests cannot run, report the exact command and failure instead of claiming
success.
Critical command rule: always use uv run for Python commands:
- Use
uv run pytest ... and uv run python ...
- Do not use bare
pytest or python in repo workflows
If the generated model is wrong, do not keep retrying the same fix. Follow
Self-Improvement, patch this skill or its references, then
continue with the corrected workflow.
Purpose
Implement a diagnostic model wrapper connecting third-party or derived ML
transforms to Earth2Studio. Diagnostic models transform data at a single time
point: input fields in, output fields out, no forecast integration.
Prerequisites
- Earth2Studio installed via
uv with dev dependencies (uv sync --all-extras)
- Python 3.10+ environment
- Reference inference script, repo, paper, or model documentation
- Checkpoint source and license information for packaged models
Limitations
- Handles single-step transformations only
- Does not support time-stepping forecast models; use
earth2studio-create-prognostic
- Real package tests can require network access to NGC, HuggingFace, S3, or other registries
- Generative validation can require GPU and fixed seeds for meaningful comparison
Diagnostic Model Types
| Type | Inheritance | Dependency extra | Example |
|---|
| Simple derived diagnostic | torch.nn.Module only | Usually none | Identity, wind speed |
| Packaged AutoModel diagnostic | torch.nn.Module, AutoModelMixin | Required, even if empty | PrecipitationAFNO |
| Generative diagnostic | torch.nn.Module, AutoModelMixin | Required, even if empty | CorrDiff |
Workspace
| Context | Location |
|---|
| Harbor eval | Write to /workspace/output/earth2studio/models/dx/... |
Harbor + --copy-repo | Full checkout at /workspace/repo |
| Local clone | Directory with pyproject.toml |
Never read evals/targets/; those files are grader references only.
Reference Files
Load these files on demand during the matching workflow:
| File | Content | Load at |
|---|
references/skeleton-template.py | Full diagnostic skeletons for simple, AutoModel, and generative wrappers | Steps 3-6 |
references/method-templates.py | Focused coordinate, loading, forward, and device method snippets | Steps 4-6 |
references/testing-guide.py | Mock, package, exception, sample, and seed test patterns | Step 7 |
references/validation-guide.md | Reference comparison, plots, PR hygiene, and review follow-up | Steps 10-11 |
references/pr-body-template.md | PR body template | Step 11 |
references/pr-comment-template.md | Validation comment template | Step 11 |
Instructions
Step 0 - Get Reference Material
If $ARGUMENTS provides a URL or local path, use it. Otherwise ask:
Please provide a reference inference script, repository, paper, or model documentation.
Capture the reference model's input variables, output variables, tensor shapes,
normalization, grid, checkpoint source, dependency requirements, and license.
Step 1 - Analyze Type and Propose Dependencies
Classify the requested diagnostic before editing files:
| If the model... | Then use... |
|---|
| Computes a derived quantity with no checkpoint | Simple diagnostic |
Loads weights from Package or an external checkpoint | AutoModel diagnostic |
| Produces multiple samples, diffusion outputs, VAE samples, or stochastic super-resolution | Generative diagnostic |
Dependency policy:
- Simple derived diagnostics usually do not need a
pyproject.toml extra.
- AutoModel and generative diagnostics must have a named optional dependency extra, even if the list is empty.
- Add the extra alphabetically under
[project.optional-dependencies] and include it in the all aggregate.
- Use the model-extra name in
OptionalDependencyFailure("model-extra") and @check_optional_dependencies().
Present the proposed dependency extra and ask the user to approve before editing
pyproject.toml:
model-name = ["package1>=version", "package2"]
model-name = []
Step 2 - Add Dependencies
After approval, edit pyproject.toml:
- Add the extra alphabetically.
- Update the
all aggregate.
- Prefer minimum supported versions from the reference package documentation.
- Do not add broad unpinned Git dependencies unless the reference model requires them and the user approves.
Step 3 - Create Model File
File: earth2studio/models/dx/<lowercase>.py
Use the repo-standard SPDX/license header shown in existing model files.
Simple diagnostic imports commonly include:
from collections import OrderedDict
import numpy as np
import torch
from earth2studio.models.batch import batch_coords, batch_func
from earth2studio.utils import handshake_coords, handshake_dim
from earth2studio.utils.type import CoordSystem
Packaged and generative diagnostics commonly also include:
from earth2studio.models.auto import AutoModelMixin, Package
from earth2studio.models.dx.base import DiagnosticModel
from earth2studio.utils.imports import OptionalDependencyFailure, check_optional_dependencies
from loguru import logger
Canonical method order:
__init__
input_coords
output_coords decorated with @batch_coords()
__str__ if useful
load_default_package for AutoModel/generative diagnostics
load_model for AutoModel/generative diagnostics
to only when non-PyTorch state must move devices
- Private/support methods
__call__ decorated with @torch.inference_mode() and @batch_func()
Avoid shared base classes or broad abstractions unless the wrapper naturally has
multiple closely related variants where a small base class reduces duplication.
Step 4 - Implement Coordinates
Diagnostic input coordinates usually use this public Earth2Studio order:
batch: np.empty(0) and first in the OrderedDict
variable: input variable names using Earth2Studio vocabulary names
lat: public latitude convention north-to-south, usually 90 to -90
lon: public longitude convention 0 to 360, endpoint normally false
No diagnostic wrapper should expose lead_time. If a diagnostic needs validity
time metadata, document it as per-sample metadata in coords["time"]; do not make
it a tensor dimension unless an existing dx pattern requires it.
output_coords must validate inputs with handshake_dim and handshake_coords.
Then update output variables and, when needed, output lat/lon resolution.
Generative diagnostics must add a sample dimension after batch.
Step 5 - Implement Forward Pass
Use a single-step __call__; never create an iterator. Validate coordinates
before model execution, then return (output_tensor, output_coords).
@torch.inference_mode()
@batch_func()
def __call__(self, x: torch.Tensor, coords: CoordSystem) -> tuple[torch.Tensor, CoordSystem]:
output_coords = self.output_coords(coords)
x = (x - self.center) / self.scale
out = self.core_model(x)
return out, output_coords
For generative diagnostics, loop over the batch dimension and generate
number_of_samples per input item. Use explicit seeds for reproducibility when
the reference implementation supports seeded sampling.
Step 6 - Implement Model Loading
For packaged diagnostics:
load_default_package should lock HuggingFace URLs to a commit (hf://org/repo@commit) or NGC/S3 versions to an immutable release.
load_model should call package.resolve(...), load checkpoints on CPU first, set modules to eval(), and disable gradients where appropriate.
- Use
weights_only=False only when loading a pickled full PyTorch object is required.
- Decorate optional model classes and
load_model with @check_optional_dependencies().
- Use
loguru.logger for useful loading messages; do not use print() inside earth2studio/.
Step 7 - Write Tests
File: test/models/dx/test_<name>.py
Required tests:
| Function | Purpose |
|---|
test_<model>_call | Forward pass with mock or simple model |
test_<model>_exceptions | Invalid coordinate order, values, or variables raise errors |
test_<model>_package | Real weights with @pytest.mark.package for AutoModel/generative diagnostics |
Generative diagnostics also require sample-count and deterministic-seed tests.
Use references/testing-guide.py. Create a Phoo<ModelName> dummy that matches
the real core model's interface and produces deterministic output.
Run focused tests:
uv run pytest test/models/dx/test_<name>.py -m "not package" -v
uv run pytest test/models/dx/test_<name>.py::test_<model>_package --package -v
Do not omit package tests for packaged models. If arbitrary random inputs are not
physically valid for the real checkpoint, build a stable model-appropriate input
while still loading real weights and running a forward pass.
Step 8 - Register Model
For public models, update earth2studio/models/dx/__init__.py alphabetically.
Skip registration only when the user explicitly wants an internal or experimental
file that should not be exported.
Step 9 - Documentation
For public models:
- Add to
docs/modules/models_dx.rst alphabetically so API docs include the generated page.
- Add to
docs/userguide/about/install.md if a model extra exists. Include model notes plus both pip install earth2studio[model-name] and uv add earth2studio --extra model-name instructions.
- Update
CHANGELOG.md under ### Added.
Format and lint:
make format && make lint && make license
Step 10 - Validation (if requested)
Follow references/validation-guide.md. Create uncommitted vanilla,
Earth2Studio, comparison, and sanity-check scripts. Do not commit generated
outputs, checkpoints, images, or local validation scripts.
For generative diagnostics, fix seeds and compare matching samples or report
statistical/tolerance-based agreement when exact equality is impossible.
Ask the user to 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 dependency extras, all, install docs, API docs,
changelog, tests, and validation artifacts are consistent. Do not include machine
names, hostnames, absolute paths, cache paths, device inventory, or uploaded image
links in PR text. Use plot placeholders for manual image upload.
Examples
Simple Diagnostic
User: Create a diagnostic that computes wind speed from u10m and v10m.
Agent: Reads SKILL.md, classifies as simple, creates windspeed.py with only
torch.nn.Module, writes call and exception tests, runs focused pytest.
AutoModel Diagnostic
User: Add a precipitation estimator from this reference script.
Agent: Reads SKILL.md and references, proposes dependency extra, creates a
torch.nn.Module + AutoModelMixin wrapper, writes mock/package tests,
updates docs/changelog/dependencies, and runs validation commands.
Generative Diagnostic
User: Wrap this diffusion super-resolution model.
Agent: Classifies as generative, adds sample output coordinates, supports seed
handling, writes sample and deterministic-seed tests, and prepares seeded
validation comparisons.
Troubleshooting
| Error | Solution |
|---|
OptionalDependencyFailure | Install with uv sync --extra <model-extra> or fix the extra name |
| Coordinate handshake fails | Check OrderedDict order and handshake_dim indices |
| Wrong output shape | Verify output_coords lengths match returned tensor shape |
ModuleNotFoundError: pytest | Use uv run pytest, not bare pytest |
| Package test fails on random input | Use a stable physically plausible input while still loading real weights |
Reminders
Do:
- Use
uv run python and uv run pytest for all Python commands.
- Use
@batch_coords() on output_coords.
- Use
@torch.inference_mode() and @batch_func() on __call__.
- Keep
batch as the first coordinate with np.empty(0) in input_coords.
- Validate coordinates with
handshake_dim() and handshake_coords().
- Add
sample in generative output_coords.
- Include the repo-standard SPDX/license header in every Python file.
- Use
loguru.logger, never print(), inside earth2studio/.
Do not:
- Inherit from
PrognosticMixin.
- Include
lead_time coordinates.
- Create
create_iterator.
- Create general base classes for a single wrapper without a clear multi-variant need.
- Commit API keys, credentials, validation scripts, plots, or generated outputs.
- Read from
evals/targets/.
Self-Improvement
If this skill produces incorrect outputs, update it before continuing:
- Identify the issue in the generated code or workflow.
- Edit
SKILL.md or the relevant file in references/ to fix the guidance.
- Run focused validation for the changed skill files.
- Commit the skill fix separately when working in a branch that expects commits.
- Continue the model implementation with the corrected workflow.