How to connect to data on GCS using Pandas
This guide will help you connect to your data stored on GCS using Pandas. This will allow you to ValidateThe act of applying an Expectation Suite to a Batch. and explore your data.
Prerequisites: This how-to guide assumes you have:
- Completed the Getting Started Tutorial
- Have a working installation of Great Expectations
- Have access to data on a GCS bucket
Steps
1. Choose how to run the code in this guide
Get an environment to run the code in this guide. Please choose an option below.
- CLI + filesystem
- No CLI + filesystem
- No CLI + no filesystem
If you use the Great Expectations CLICommand Line Interface, run this command to automatically generate a pre-configured Jupyter Notebook. Then you can follow along in the YAML-based workflow below:
great_expectations datasource new
If you use Great Expectations in an environment that has filesystem access, and prefer not to use the CLICommand Line Interface, run the code in this guide in a notebook or other Python script.
If you use Great Expectations in an environment that has no filesystem (such as Databricks or AWS EMR), run the code in this guide in that system's preferred way.
2. Instantiate your project's DataContext
Import these necessary packages and modules.
from ruamel import yaml
import great_expectations as ge
from great_expectations.core.batch import Batch, BatchRequest, RuntimeBatchRequest
Load your DataContext into memory using the
get_context()
method.
context = ge.get_context()
3. Configure your Datasource
Great Expectations provides two types of
DataConnectors
classes for connecting to
GCS: InferredAssetGCSDataConnector
and
ConfiguredAssetGCSDataConnector
-
An
InferredAssetGCSDataConnector
utilizes regular expressions to inferdata_asset_names
by evaluating filename patterns that exist in your bucket. ThisDataConnector
, along with aRuntimeDataConnector
, is provided as a default when utilizing our Jupyter Notebooks. -
A
ConfiguredAssetGCSDataConnector
requires an explicit listing of eachDataAsset
you want to connect to. This allows for more granularity and control than itsInferred
counterpart but also requires a more complex setup.
As the InferredAssetDataConnectors
have
fewer options and are generally simpler to use, we
recommend starting with them.
We've detailed example configurations for both options in the next section for your reference.
It is also important to note that GCS
DataConnectors
support various
methods of authentication. You should be aware of
the following options when configuring your own
environment:
-
gcloud
command line tool /GOOGLE_APPLICATION_CREDENTIALS
environment variable.- This is the default option and what is used throughout this guide.
-
Passing a
filename
argument to the optionalgcs_options
dictionary.- This argument should contain a specific filepath that leads to your credentials JSON.
-
This method utilizes
google.oauth2.service_account.Credentials.from_service_account_file
under the hood.
-
Passing an
info
argument to the optionalgcs_options
dictionary.- This argument should contain the actual JSON data from your credentials file in the form of a string.
-
This method utilizes
google.oauth2.service_account.Credentials.from_service_account_info
under the hood.
Please note that if you use the
filename
or
info
options, you must supply these
options to any GE objects that interact with GCS
(i.e. PandasExecutionEngine
). The
gcs_options
dictionary is also
responsible for storing any
**kwargs
you wish to pass to the GCS
storage.Client()
connection object
(i.e. project
)
For more details regarding storing credentials for use with Great Expectations see: How to configure credentials
For more details regarding authentication, please visit the following:
Using these example configurations, add in your GCS bucket and path to a directory that contains some of your data:
- Inferred + Runtime (Default)
- Configured
The below configuration is representative of the default setup you'll see when preparing your own environment.
- YAML
- Python
datasource_yaml = rf"""
name: my_gcs_datasource
class_name: Datasource
execution_engine:
class_name: PandasExecutionEngine
data_connectors:
default_runtime_data_connector_name:
class_name: RuntimeDataConnector
batch_identifiers:
- default_identifier_name
default_inferred_data_connector_name:
class_name: InferredAssetGCSDataConnector
bucket_or_name: <YOUR_GCS_BUCKET_HERE>
prefix: <BUCKET_PATH_TO_DATA>
default_regex:
pattern: (.*)\.csv
group_names:
- data_asset_name
"""
Run this code to test your configuration.
context.add_datasource(**yaml.load(datasource_yaml))
datasource_config = {
"name": "my_gcs_datasource",
"class_name": "Datasource",
"execution_engine": {"class_name": "PandasExecutionEngine"},
"data_connectors": {
"default_runtime_data_connector_name": {
"class_name": "RuntimeDataConnector",
"batch_identifiers": ["default_identifier_name"],
},
"default_inferred_data_connector_name": {
"class_name": "InferredAssetGCSDataConnector",
"bucket_or_name": "<YOUR_GCS_BUCKET_HERE>",
"prefix": "<BUCKET_PATH_TO_DATA>",
"default_regex": {
"pattern": "(.*)\\.csv",
"group_names": ["data_asset_name"],
},
},
},
}
Run this code to test your configuration.
context.test_yaml_config(yaml.dump(datasource_config))
The below configuration is highly tuned to the specific bucket and blobs relevant to this example. You'll have to fine-tune your own regular expressions and assets to fit your use-case.
- YAML
- Python
datasource_yaml = f"""
name: my_gcs_datasource
class_name: Datasource
execution_engine:
class_name: PandasExecutionEngine
data_connectors:
configured_data_connector_name:
class_name: ConfiguredAssetGCSDataConnector
bucket_or_name: <YOUR_GCS_BUCKET_HERE>
prefix: <BUCKET_PATH_TO_DATA>
default_regex:
pattern: data/taxi_yellow_tripdata_samples/yellow_tripdata_sample_(\\d{{4}})-(\\d{{2}})\\.csv
group_names:
- year
- month
assets:
taxi_data:
"""
Run this code to test your configuration.
context.add_datasource(**yaml.load(datasource_yaml))
datasource_config = {
"name": "my_gcs_datasource",
"class_name": "Datasource",
"execution_engine": {"class_name": "PandasExecutionEngine"},
"data_connectors": {
"configured_data_connector_name": {
"class_name": "ConfiguredAssetGCSDataConnector",
"bucket_or_name": "<YOUR_GCS_BUCKET_HERE>",
"prefix": "<BUCKET_PATH_TO_DATA>",
"default_regex": {
"pattern": "data/taxi_yellow_tripdata_samples/yellow_tripdata_sample_(\\d{4})-(\\d{2})\\.csv",
"group_names": ["year", "month"],
},
"assets": {"taxi_data": None},
}
},
}
Run this code to test your configuration.
context.test_yaml_config(yaml.dump(datasource_config))
If you specified a GCS path containing CSV files you
will see them listed as
Available data_asset_names
in the output
of test_yaml_config()
.
Feel free to adjust your configuration and re-run
test_yaml_config()
as needed.
4. Save the Datasource configuration to your DataContext
Save the configuration into your
DataContext
by using the
add_datasource()
function.
- YAML
- Python
context.add_datasource(**yaml.load(datasource_yaml))
context.add_datasource(**datasource_config)
5. Test your new Datasource
Verify your new DatasourceProvides a standard API for accessing and interacting with data from a wide variety of source systems. by loading data from it into a ValidatorUsed to run an Expectation Suite against data. using a Batch RequestProvided to a Datasource in order to create a Batch..
- Specify a GCS path to single CSV
- Specify a data_asset_name
Add the GCS path to your CSV in the
path
key under
runtime_parameters
in your
RuntimeBatchRequest
.
Please note we support the following format for
GCS URL's:
gs://<BUCKET_OR_NAME>/<BLOB>
.
batch_request = RuntimeBatchRequest(
datasource_name="my_gcs_datasource",
data_connector_name="default_runtime_data_connector_name",
data_asset_name="<YOUR_MEANGINGFUL_NAME>", # this can be anything that identifies this data_asset for you
runtime_parameters={"path": "<PATH_TO_YOUR_DATA_HERE>"}, # Add your GCS path here.
batch_identifiers={"default_identifier_name": "default_identifier"},
)
Then load data into the Validator
.
context.create_expectation_suite(
expectation_suite_name="test_suite", overwrite_existing=True
)
validator = context.get_validator(
batch_request=batch_request, expectation_suite_name="test_suite"
)
print(validator.head())
Add the name of the
Data AssetA collection of records within a Datasource
which is usually named based on the
underlying data system and sliced to
correspond to a desired specification.
to the data_asset_name
in your
BatchRequest
.
batch_request = BatchRequest(
datasource_name="my_gcs_datasource",
data_connector_name="default_inferred_data_connector_name",
data_asset_name="<YOUR_DATA_ASSET_NAME>",
)
Then load data into the Validator
.
context.create_expectation_suite(
expectation_suite_name="test_suite", overwrite_existing=True
)
validator = context.get_validator(
batch_request=batch_request, expectation_suite_name="test_suite"
)
print(validator.head())
🚀🚀 Congratulations! 🚀🚀 You successfully connected Great Expectations with your data.
Additional Notes
If you are working with nonstandard CSVs, read one of these guides:
- How to work with headerless CSVs in pandas
- How to work with custom delimited CSVs in pandas
- How to work with parquet files in pandas
To view the full scripts used in this page, see them on GitHub:
- inferred_and_runtime_yaml_example.py
- inferred_and_runtime_python_example.py
- configured_yaml_example.py
- configured_python_example.py
To review the source code of these
DataConnectors
, also visit GitHub: