Quickstart
Use this quickstart to install GX, connect to sample data, build your first Expectation, validate data, and review the validation results. This is a great place to start if you're new to GX and aren't sure if it's the right solution for you or your organization. If you're using Databricks or SQL to store data, see Get Started with GX and Databricks or Get Started with GX and SQL.
You can use this quickstart with the open source Python version of GX or with Great Expectations Cloud.
If you're interested in participating in the Great Expectations Cloud Beta program, or you want to receive progress updates, sign up for the Beta program.
Windows support for the open source Python version of GX is currently unavailable. If you’re using GX in a Windows environment, you might experience errors or performance issues.
Prerequisites
- An installation of Python, version 3.8 to 3.11. To download and install Python, see Python downloads.
- pip
- An internet browser
Install GX
Run the following command in an empty base directory inside a Python virtual environment:
Terminal inputpip install great_expectations
It can take several minutes for the installation to complete.
Run the following Python code to import the
great_expectations
module:import great_expectations as gx
Create a DataContext
Run the following command to import the existing
DataContext
object:context = gx.get_context()
Connect to Data
Run the following command to connect to existing
.csv
data stored in thegreat_expectations
GitHub repository:validator = context.sources.pandas_default.read_csv(
"https://raw.githubusercontent.com/great-expectations/gx_tutorials/main/data/yellow_tripdata_sample_2019-01.csv"
)The example code uses the default Data Context Data Source for Pandas to access the
.csv
data in the file at the specifiedpath
.
Create Expectations
Run the following command to create two Expectations:
validator.expect_column_values_to_not_be_null("pickup_datetime")
validator.expect_column_values_to_be_between("passenger_count", auto=True)
validator.save_expectation_suite()
The first Expectation uses domain knowledge (the pickup_datetime
shouldn't be null), and the second Expectation uses auto=True
to detect a range of values in the passenger_count
column.
Validate data
Run the following command to define a Checkpoint and examine the data to determine if it matches the defined Expectations:
checkpoint = context.add_or_update_checkpoint(
name="my_quickstart_checkpoint",
validator=validator,
)Run the following command to return the Validation results:
checkpoint_result = checkpoint.run()
Run the following command to view an HTML representation of the Validation results:
context.view_validation_result(checkpoint_result)
Related documentation
If you're ready to continue your Great Expectations journey, the following topics can help you implement a tailored solution for your specific environment and business requirements: