Skip to main content

Python client library for accessing dClimate weather and climate data

Project description

dClimate logo

dClimate-Client-Py

codecov

Retrieve dClimate GIS zarr datasets stored on IPFS

Uses STAC (SpatioTemporal Asset Catalog) for dataset discovery and py-hamt to access Zarr data structures stored efficiently on IPFS.

Filtering and aggregation are packaged into convenience functions optimized for flexibility and performance.

Looking for JavaScript? Check out our JavaScript client for Node.js and browser environments.

Usage

from datetime import datetime
import dclimate_client_py as client
from dclimate_client_py import dClimateClient

# --- Recommended: Using dClimateClient (async context manager) ---

async def main():
    # The client manages IPFS connections automatically
    # No need to import or configure KuboCAS directly!
    async with dClimateClient() as dclimate:
        # Load datasets by name from the internal catalog
        # For datasets with multiple variants, you must specify which variant
        # Returns a tuple: (dataset, metadata)
        dataset, metadata = await dclimate.load_dataset(
            dataset="temperature_2m",
            collection="era5",  # Can also pass "ecmwf_era5"
            organization="ecmwf",
            variant="finalized",  # Required for multi-variant datasets
            return_xarray=False   # Returns GeotemporalData wrapper (default)
        )

        # Check metadata about what was loaded
        print(f"Loaded: {metadata['slug']}")
        print(f"CID: {metadata['cid']}")
        print(f"Timestamp: {metadata.get('timestamp')}")  # If available from URL fetch
        print(f"Source: {metadata['source']}")  # 'stac' or 'direct_cid'

        # Apply queries using the GeotemporalData interface
        dataset_filtered = dataset.point(latitude=40.875, longitude=-104.875)
        dataset_filtered = dataset_filtered.time_range(
            datetime(2023, 1, 1),
            datetime(2023, 1, 5)
        )
        data_dict = dataset_filtered.as_dict()
        print(data_dict['data'])

# Custom IPFS endpoints (optional)
async def main_custom_ipfs():
    async with dClimateClient(
        gateway_base_url="https://ipfs.io",
        rpc_base_url="http://localhost:5001"
    ) as dclimate:
        dataset, metadata = await dclimate.load_dataset(
            dataset="temperature_2m",
            collection="era5",
            organization="ecmwf",
            variant="finalized"
        )
        # Query dataset...

# Get raw xarray.Dataset directly
async def main_xarray():
    async with dClimateClient() as dclimate:
        xr_dataset, metadata = await dclimate.load_dataset(
            dataset="temperature_2m",
            collection="era5",
            organization="ecmwf",
            variant="finalized",
            return_xarray=True  # Returns xarray.Dataset
        )
        print(xr_dataset)
        print(f"Dataset CID: {metadata['cid']}")

# List available datasets from the STAC catalog
from dclimate_client_py import list_available_datasets, load_stac_catalog

# Load the STAC catalog
stac_catalog = load_stac_catalog("https://ipfs-gateway.dclimate.net")

# List all available datasets
datasets = list_available_datasets(stac_catalog)
for collection_id, info in datasets.items():
    print(
        f"Collection: {info['title']} ({collection_id})"
        + (f" | org: {info['organization']}" if info.get('organization') else "")
    )
    print(f"  Dataset types: {', '.join(info['types'])}")

Siren API usage

The Python client also exposes a Siren REST client for metrics and regions.

from dclimate_client_py import (
    dClimateClient,
    SirenApiKeyAuth,
    SirenMetricQuery,
    SirenOptions,
)

async def main():
    client = dClimateClient(
        siren=SirenOptions(
            auth=SirenApiKeyAuth()  # reads SIREN_API_KEY and SIREN_ACCOUNT_ID from env
        )
    )

    regions = await client.list_regions()
    print(f"Loaded {len(regions)} regions")

    data = await client.get_metric_data(
        SirenMetricQuery(
            region_id=regions[0].id,
            metric="average_precip",
            start_date="2025-01-01",
            end_date="2025-01-31",
        )
    )
    print(data[:3])

x402 is included in the default install.

More examples can be found at dClimate Jupyter Notebooks. To run your own IPFS gateway follow the instructions for installing ipfs. For additional assistance find us on Discord, if you are an organization or business reach out to us at community at dclimate dot net.

Create and activate a virtual environment:

uv venv .venv
source .venv/bin/activate  # macOS/Linux
.\.venv\Scripts\activate   # Windows

Install Dependencies

uv sync --extra dev --extra testing

Run tests for your local environment

uv run pytest tests/

Use Coverage

uv run pytest --cov=dclimate_client_py tests/ --cov-report=xml

Environment requirements

  • Optionally you can run your own IPFS Server to host your own datasets or connect to others.

File breakdown:

client.py

Entrypoint to code, contains geo_temporal_query, which combines all possible subsetting and aggregation logic in a single function. Can output the data as either a dict or bytes representing an xarray dataset.


dclimate_zarr_errors.py

Various exceptions to be raised for bad or invalid user input.


geo_utils.py

Functions to manipulate xarray datasets. Contains polygon, rectangle, circle and point spatial subsetting options, as well as temporal subsetting. Also allows for both spatial and temporal aggregations.


stac_catalog.py

STAC (SpatioTemporal Asset Catalog) integration for dClimate datasets. Provides functions to:

  • Fetch the latest STAC catalog CID from the dClimate IPFS gateway
  • Load and navigate STAC catalogs stored on IPFS
  • Resolve dataset names to IPFS CIDs using the STAC catalog structure
  • List all available datasets and collections

Uses a custom IPFSStacIO implementation to transparently resolve ipfs:// URIs via HTTP gateways, allowing pystac to work seamlessly with IPFS-hosted catalogs.


ipfs_retrieval.py

Functions for loading Zarr datasets from IPFS using py-hamt. Handles interaction with IPFS gateways and RPC endpoints through the KuboCAS interface.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

dclimate_client_py-0.5.5.tar.gz (13.4 MB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

dclimate_client_py-0.5.5-py3-none-any.whl (45.5 kB view details)

Uploaded Python 3

File details

Details for the file dclimate_client_py-0.5.5.tar.gz.

File metadata

  • Download URL: dclimate_client_py-0.5.5.tar.gz
  • Upload date:
  • Size: 13.4 MB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.7.8

File hashes

Hashes for dclimate_client_py-0.5.5.tar.gz
Algorithm Hash digest
SHA256 96ba7a7a323b8d5b3b28198f76436f377f62a8782b2b1dc00273535755129240
MD5 fc9526b33135b7f2dab5a40b6f08bc6e
BLAKE2b-256 72fd5e4edc51effaa10b54c702879652d5f5ddc3cb15207ef7fdbb7b610bb9a2

See more details on using hashes here.

File details

Details for the file dclimate_client_py-0.5.5-py3-none-any.whl.

File metadata

File hashes

Hashes for dclimate_client_py-0.5.5-py3-none-any.whl
Algorithm Hash digest
SHA256 9ecea33d960850c9e0a1cfe4ffbb3093b425dcc8a2f28bdbc3bd9c72be5aba7f
MD5 c5e2b95efec90af0ff0e12e211a01e87
BLAKE2b-256 61247a48f1e7875d1ad304558c4197dbee24f3bd56d1ae633412c3ac4d229a6a

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page