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CDSETool

About CDSETool

This script downloads copernicus data from the Copernicus Data Space Ecosystem

Quick start

from cdsetool.query import query_features, shape_to_wkt
from cdsetool.credentials import Credentials
from cdsetool.download import download_features
from cdsetool.monitor import StatusMonitor
from datetime import date

features = query_features(
    "Sentinel1",
    {
        "startDate": "2020-12-20",
        "completionDate": date(2020, 12, 25),
        "processingLevel": "LEVEL1",
        "sensorMode": "IW",
        "productType": "IW_GRDH_1S",
        "geometry": shape_to_wkt("path/to/shapefile.shp"),
    },
)

list(
    download_features(
        features,
        "path/to/output/folder/",
        {
            "concurrency": 4,
            "monitor": StatusMonitor(),
            "credentials": Credentials("username", "password"),
        },
    )
)

Or use the CLI:

cdsetool query search Sentinel2 --search-term startDate=2020-01-01 --search-term completionDate=2020-01-10 --search-term processingLevel=S2MSI2A --search-term box="4","51","4.5","52"

cdsetool download Sentinel2 PATH/TO/DIR --concurrency 4 --search-term startDate=2020-01-01 --search-term completionDate=2020-01-10 --search-term processingLevel=S2MSI2A --search-term box="4","51","4.5","52"

Table of Contents

Installation

Install cdsetool using pip:

pip install cdsetool==0.2.13

Usage

Querying features

Querying is always done in batches, returning len(results) <= maxRecords records each time. A local buffer is filled and gradually emptied as results are yielded. When the buffer is empty, more results will be requested and the process repeated until no more results are available, or the iterator is discarded.

Since downloading features is the most common use-case, query_features assumes that the query will run till the end. Because of this, the batch size is set to 2000, which is the size limit set by CDSE.

from cdsetool.query import query_features

collection = "Sentinel2"
search_terms = {
    "maxRecords": "100", # batch size, between 1 and 2000 (default: 2000).
    "startDate": "1999-01-01",
    "processingLevel": "S2MSI1C"
}

# wait for a single batch to finish, yield results immediately
for feature in query_features(collection, search_terms):
    # do something with feature

# wait for all batch requests to complete, returning list
features = list(query_features(collection, search_terms))

# manually iterate
iterator = query_features(collection, search_terms)

featureA = next(iterator)
featureB = next(iterator)
# ...

Querying by shapes

To query by shapes, you must first convert your shape to Well Known Text (WKT). The included shape_to_wkt can solve this.

from cdsetool.query import query_features, shape_to_wkt

geometry = shape_to_wkt("path/to/shape.shp")

features = query_features("Sentinel3", {"geometry": geometry})

Querying by lists of parameters

Most search terms only accept a single argument. To query by a list of arguments, loop the arguments and pass them one by one to the query function.

from cdsetool.query import query_features

tile_ids = ["32TPT", "32UPU", "32UPU", "31RFL", "37XDA"]

for tile_id in tile_ids:
    features = query_features("Sentinel2", {"tileId": tile_id})
    for feature in features:
        # do things with feature

Querying by dates

Its quite common to query for features created before, after or between dates.

from cdsetool.query import query_features
from datetime import date, datetime

date_from = date(2020, 1, 1) # or datetime(2020, 1, 1, 23, 59, 59, 123456) or "2020-01-01" or "2020-01-01T23:59:59.123456Z"
date_to = date(2020, 12, 31)

features = query_features("Sentinel2", {"startDate": date_from, "completionDate": date_to})

Listing search terms

To get a list of all search terms for a given collection, you may either use the describe_collection function or use the CLI:

from cdsetool.query import describe_collection

search_terms = describe_collection("Sentinel2").keys()
print(search_terms)

And the CLI:

$ cdsetool query search-terms Sentinel2

Downloading features

Authenticating

An account is required to download features from the Copernicus distribution service.

To authenticate using an account, instantiate Credentials and pass your username and password

from cdsetool.credentials import Credentials

username = "konata@izumi.com"
password = "password123"
credentials = Credentials(username, password)

Alternatively, Credentials can pull from ~/.netrc when username and password are left blank.

# ~/.netrc
machine https://identity.dataspace.copernicus.eu/auth/realms/CDSE/protocol/openid-connect/token
login konata@izumi.com
password password123

# main.py
from cdsetool.credentials import Credentials

credentials = Credentials()

The credentials object may then be passed to a download function. If left out, the download functions will default to using .netrc.

credentials = Credentials()

download_features(features, "/some/download/path", {"credentials": credentials})

Credentials can be validated using the validate_credentials function which will return a boolean.

from cdsetool.credentials import validate_credentials

validate_credentials(username='user', password='password')

If None are passed to username and password, validate_credentials will validate .netrc

Concurrently downloading features

CDSETool provides a method for concurrently downloading features. The concurrency level should match your accounts privileges. See CDSE quotas

The downloaded feature ids are yielded, so its required to await the results.

from cdsetool.query import query_features
from cdsetool.download import download_features

features = query_features("Sentinel2")

download_path = "/path/to/download/folder"
downloads = download_features(features, download_path, {"concurrency": 4})

for id in downloads:
    print(f"feature {id} downloaded")

# or

list(downloads)

Sequentially downloading features

Its possible to download features sequentially in a single thread if desired.

from cdsetool.query import query_features
from cdsetool.download import download_feature

features = query_features("Sentinel2")

download_path = "/path/to/download/folder"
for feature in features:
    download_feature(feature, download_path)

Roadmap

Contributing

Any contributions you make are greatly appreciated.

If you have a suggestion that would make this better, please fork the repo and create a pull request. You can also simply open an issue with the tag "enhancement".

  1. Fork the Project
  2. Create your Feature Branch (git checkout -b feature/cool-new-feature)
  3. Commit your Changes (git commit -m 'Add some feature')
  4. Push to the Branch (git push origin feature/cool-new-feature)
  5. Open a Pull Request

LICENSE

Distributed under the MIT License. See LICENSE for more information.