copernicus-climate
The copernicus-climate skill accesses the Copernicus Climate Data Store API to retrieve ERA5 reanalysis fields, climate projections, and satellite-derived climate variables spanning from 1940 to present. Use it for downloading historical weather and climate data, querying upper-air pressure-level variables, obtaining sea-level observations, and accessing land-enhanced reanalysis, but not for real-time weather forecasts or ocean biology datasets.
git clone --depth 1 https://github.com/beita6969/ScienceClaw /tmp/copernicus-climate && cp -r /tmp/copernicus-climate/skills/copernicus-climate ~/.claude/skills/copernicus-climateSKILL.md
# Copernicus Climate Data Store (CDS)
Access ERA5 reanalysis, climate projections, and satellite climate records through
the Copernicus CDS API. Covers global gridded climate data from 1940 to present.
## Prerequisites
Install the CDS API client and configure credentials:
```bash
pip install cdsapi
```
Create `~/.cdsapirc` with your CDS credentials:
```
url: https://cds.climate.copernicus.eu/api
key: <your-uid>:<your-api-key>
```
Register at https://cds.climate.copernicus.eu to obtain credentials.
## API Base URL
```
https://cds.climate.copernicus.eu/api
```
## Basic Python Retrieval Pattern
```python
import cdsapi
c = cdsapi.Client()
c.retrieve(
"reanalysis-era5-single-levels",
{
"product_type": "reanalysis",
"variable": "2m_temperature",
"year": "2023",
"month": "07",
"day": "15",
"time": "12:00",
"area": [60, -10, 35, 30], # N, W, S, E bounding box
"format": "netcdf",
},
"era5_temperature.nc",
)
```
## ERA5 Pressure-Level Variables
Retrieve upper-air data on pressure levels:
```python
c.retrieve(
"reanalysis-era5-pressure-levels",
{
"product_type": "reanalysis",
"variable": ["temperature", "geopotential", "relative_humidity"],
"pressure_level": ["500", "700", "850", "925"],
"year": "2023",
"month": "01",
"day": "15",
"time": "12:00",
"format": "netcdf",
},
"era5_pressure_levels.nc",
)
```
## Key Dataset Identifiers
| Dataset ID | Description |
|-----------------------------------------|------------------------------------------|
| `reanalysis-era5-single-levels` | Surface and single-level hourly fields |
| `reanalysis-era5-pressure-levels` | Upper-air on 37 pressure levels |
| `reanalysis-era5-single-levels-monthly` | Monthly-averaged surface fields |
| `reanalysis-era5-land` | ERA5-Land (enhanced land, 9 km) |
| `satellite-sea-level-global` | Satellite altimetry sea level |
## Common Variables
**Single level**: `2m_temperature`, `total_precipitation`, `10m_u_component_of_wind`,
`10m_v_component_of_wind`, `mean_sea_level_pressure`, `surface_solar_radiation_downwards`.
**Pressure level**: `temperature`, `geopotential`, `relative_humidity`, `specific_humidity`.
## Processing Downloaded NetCDF
```python
import xarray as xr
ds = xr.open_dataset("era5_temperature.nc")
temp_celsius = ds["t2m"] - 273.15 # Kelvin to Celsius
print(f"Mean temperature: {float(temp_celsius.mean()):.1f} C")
```
## Area Selection (N, W, S, E bounding box)
Global: `[90, -180, -90, 180]`, Europe: `[72, -25, 33, 45]`,
Continental US: `[50, -125, 25, -65]`, East Asia: `[55, 70, 5, 145]`.
## Best Practices
1. Specify the smallest area and fewest variables needed to reduce download time.
2. Use monthly-averaged datasets when daily resolution is not required.
3. Request data in NetCDF format for analysis; GRIB for operational workflows.
4. CDS queues requests; large jobs may take hours. Check status via the web dashboard.
5. ERA5 data is available from 1940 to present with ~5-day latency.
6. For multi-year bulk downloads, split requests by year to avoid timeouts.
7. Install `xarray` and `netCDF4` for reading downloaded files in Python.Route plain-language requests for Pi, Claude Code, Codex, OpenCode, Gemini CLI, or ACP harness work into either OpenClaw ACP runtime sessions or direct acpx-driven sessions ("telephone game" flow). For coding-agent thread requests, read this skill first, then use only `sessions_spawn` for thread creation.
Use the diffs tool to produce real, shareable diffs (viewer URL, file artifact, or both) instead of manual edit summaries.
|
|
|
|
OpenProse VM skill pack. Activate on any `prose` command, .prose files, or OpenProse mentions; orchestrates multi-agent workflows.