| name | earth2studio-create-datasource |
| version | 0.16.0 |
| license | Apache-2.0 |
| metadata | {"author":"NVIDIA Earth-2 Team <agent-skills@nvidia.com>","tags":["earth2studio","earth2","python","data-source","forecast-source","integration"]} |
| description | Create and validate Earth2Studio data source wrappers (DataSource, ForecastSource, DataFrameSource, ForecastFrameSource) from remote stores. Do NOT use for fetching data with existing sources, model inference, or installation tasks.
|
| argument-hint | URL or description of remote data store (optional) |
Create and Validate Data Source
Purpose
End-to-end workflow for implementing a new Earth2Studio data source wrapper
that connects a remote data store (S3, GCS, Azure, HTTP, HuggingFace) to
Earth2Studio's async data fetching infrastructure — from analysis through
implementation, testing, validation, and PR submission.
Prerequisites
- Earth2Studio dev environment with
uv (uv run python must work)
- Git configured with fork (
origin) and upstream (upstream) remotes
- Access to the target remote data store (credentials if private)
- Python 3.10+
Workspace
Use the directory containing pyproject.toml. For Harbor evals, write to
/workspace/output/ preserving paths. Never read evals/targets/.
Instructions
Python Environment: Always use uv run python or the local .venv.
Never use the system Python directly.
Follow every step in order.
[CONFIRM] gates: Only Step 1 (Source Type) and Step 12 (Sanity-Check
Plots) require explicit user approval. All other [CONFIRM] markers are
advisory — present decisions inline and proceed without blocking.
Deliverables first: Write the source file and test file (Steps 6–7)
before extended exploration, documentation, registration, CHANGELOG, or PR
work. Skip Steps 8–14 when the user asks for implementation only.
Before you finish: Run verification commands in the repo root so results
appear in the session log:
uv run pytest test/data/test_<source>.py -x
make format && make lint
Be concise: Avoid long architecture reports; summarize decisions in a
few sentences and move on to file writes.
Hangs or User Feedback If agent becomes stuck or user provides a
correction during this skills use, conservatively review relevant part of
the skill and improve. Be concise.
One source type per invocation. Invoke again for companion types.
Reference Files
Load these on demand during the relevant steps:
| File | Content | Load at |
|---|
references/implementation-guide.py | Skeleton source with FILL comments | Steps 3–10 |
references/testing-guide.py | Test skeleton with FILL comments | Step 11 |
references/validation-guide.md | Plot templates, PR body template, Greptile handling | Steps 12–14 (optional, for templates) |
Workflow Overview
Step 0: Obtain reference → Step 1: Determine type → Step 2: Dependencies
→ Step 3: Add deps → Step 4: Create lexicon → Step 5: Update vocab/schema
→ Step 6: Create skeleton → Step 7: Implement source → Step 8: Register
→ Step 9: Documentation → Step 10: CHANGELOG → Step 11: Tests
→ Step 12: Validate & plots (user confirms) → Step 13: PR + sanity comment
→ Step 14: Greptile review
Step 0 — Obtain Remote Data Store Reference
If $ARGUMENTS is provided, use it (URL → WebFetch; file path → read).
If empty, ask:
Please provide a URL, API documentation link, or description of the
remote data store. This will be used to understand storage format,
access pattern, variable inventory, temporal/spatial resolution.
Step 1 — Determine Source Type
| Protocol | Returns | Has lead_time? | Use |
|---|
| DataSource | xr.DataArray | No | Gridded analysis/reanalysis |
| ForecastSource | xr.DataArray | Yes | Gridded forecast |
| DataFrameSource | pd.DataFrame | No | Sparse/station obs |
| ForecastFrameSource | pd.DataFrame | Yes | Sparse forecast obs |
Key factors: gridded vs sparse → DataArray vs DataFrame; analysis vs forecast → Source vs ForecastSource.
[CONFIRM — Source Type]
Present recommended type with justification. Ask for confirmation.
Step 2 — Examine Remote Store & Propose Dependencies
Analyze: storage backend, file format, authentication, access pattern,
temporal/spatial resolution, variable inventory.
Prefer fsspec:
| Backend | Preferred | Avoid |
|---|
| AWS S3 | s3fs (core dep) | boto3 directly |
| GCS | gcsfs (core dep) | google-cloud-storage |
| Azure | adlfs | azure-storage-blob |
| HTTP | fsspec (core dep) | requests |
| HuggingFace | huggingface_hub (core dep) | custom scripts |
Only fall back to dedicated libraries when fsspec cannot access the store.
Check pyproject.toml — only propose packages not already present.
Core deps include: s3fs, gcsfs, fsspec, zarr, netCDF4, h5py,
pygrib, huggingface-hub, pandas, pyarrow.
[CONFIRM — Dependencies & Access Pattern]
Present: backend, fsspec filesystem, new packages (with license), auth method.
Step 3 — Add Dependencies
Load references/implementation-guide.py from here through Step 10.
If new packages needed:
uv add --extra data <package>
uv lock
- Add optional dependency imports using
OptionalDependencyFailure pattern
Step 4 — Create Lexicon Class
Create earth2studio/lexicon/<source_name>.py with:
metaclass=LexiconType
VOCAB: dict[str, str] mapping E2S names → remote keys
get_item(cls, val) returning tuple[str, Callable]
- Use
:: separator for structured keys
Map remote variables against E2STUDIO_VOCAB (282 entries in
earth2studio/lexicon/base.py).
[CONFIRM — Lexicon & Variable Mapping]
Present: class name, key format, full mapping table, modifiers, reference URL.
Step 5 — Update E2STUDIO_VOCAB / SCHEMA (if needed)
- New vocab: surface = descriptive abbrev; pressure =
{name}{level}
- New schema fields: DataFrame sources only, check
E2STUDIO_SCHEMA
[CONFIRM — Vocabulary & Schema Updates]
Skip if no updates needed.
Step 6 — Create Skeleton Data Source File
Follow canonical method ordering:
- Class constants
- SCHEMA
__init__
_async_init
__call__
fetch
_create_tasks
fetch_wrapper
fetch_array
_validate_time
- Helpers
cache property
available classmethod
Use async task dataclass pattern for parallel execution.
[CONFIRM — Skeleton]
Present: class name, file path, skeleton code, task dataclass.
Step 7 — Implement the Data Source & Tests
The test file is a co-equal deliverable. Create test/data/test_<filename>.py
alongside the source. Add test_<source>_call_mock for async sources.
Sync sources: Use prep_data_inputs/prep_forecast_inputs, direct __call__.
Async sources: See references/implementation-guide.py for required patterns:
_sync_async, managed_session, gather_with_concurrency, async_retry,
pure async I/O, try/finally cleanup. Constructor params: cache=True,
verbose=True, async_timeout=600, async_workers=16, retries=3.
DataFrame sources add time_tolerance.
Step 8 — Register the Source
earth2studio/data/__init__.py — alphabetical import
earth2studio/lexicon/__init__.py — alphabetical import
- Verify
pyproject.toml deps
Step 9 — Update Documentation
- Add to correct RST file (
datasources_analysis.rst / _forecast.rst / _dataframe.rst)
- Class docstring: Parameters, Warning (download size), Note (reference URLs), Badges (last)
- All public methods: NumPy-style docstrings
Step 10 — Update CHANGELOG.md
Add entry under the current unreleased version. See
references/implementation-guide.py REGISTRATION CHECKLIST for the format.
One line per source. Do NOT add separate lexicon entries.
Step 11 — Verify Style & Expand Tests
Run make format && make lint && make license. Load references/testing-guide.py
for test skeletons. Required tests: test_<source>_fetch (slow), _cache (slow),
_call_mock, _exceptions, _available. Target 90%+ coverage with --slow.
[CONFIRM — Tests]
Present test file, functions, coverage.
Step 12 — Validate Variables & Sanity-Check
- Validate all lexicon vars against real data (run script, do NOT commit)
- Remove variables with < 10% valid data
- Create sanity-check plot (gridded or sparse template)
- Tell user the plot path and ask for visual confirmation
[CONFIRM — Sanity-Check Plots]
User MUST visually inspect plots. Do not proceed without confirmation.
Step 13 — Branch, Commit & Open PR
- Create branch
feat/data-source-<name>
- Commit (do NOT add sanity-check script/images)
- Push to fork
gh pr create --repo NVIDIA/earth2studio
- Immediately post sanity-check validation as PR comment with:
- Variable coverage table (name, count, range, unit)
- Data validation summary (regions, storms/stations, time range)
- Key findings (physically reasonable values, conversions verified)
- Full validation script in
<details> block
- Image placeholder:
<!-- Drag and drop sanity-check image here -->
[CONFIRM — Ready to Submit]
Verify all steps complete before creating PR.
Step 14 — Automated Code Review
- Poll for Greptile review (5 min timeout)
- Categorize feedback (bug/style/perf/docs/suggestion/false-positive)
- Present triage table to user
- Implement accepted fixes
- Respond to PR comments
- Push
[CONFIRM — Review Triage]
User approves which comments to address.
Examples
User: Add a data source for the NOAA GFS analysis on S3
Agent: [loads skill, proceeds through Steps 0–14]
Limitations
- One source type per invocation
- Requires network access for validation (Step 12)
- SPDX license headers required in all files
Reminders
DO: uv run python, loguru.logger, alphabetical order in __init__.py/RST/CHANGELOG,
canonical method ordering, async utilities (managed_session, gather_with_concurrency,
async_retry), pure async I/O, reference URLs in docstrings, try/finally cleanup.
AVOID: asyncio.to_thread, bare tqdm.gather, xarray for loading, full file downloads.
NEVER: loop.set_default_executor(), commit secrets, commit sanity-check scripts/images.