![]() |
VOOZH | about |
The rich ecosystem of Python modules lets you get to work quickly and integrate your systems more effectively. With the CData Python Connector for Jira Assets and the petl framework, you can build Jira Assets-connected applications and pipelines for extracting, transforming, and loading Jira Assets data. This article shows how to connect to Jira Assets with the CData Python Connector and use petl and pandas to extract, transform, and load Jira Assets data.
With built-in, optimized data processing, the CData Python Connector offers unmatched performance for interacting with live Jira Assets data in Python. When you issue complex SQL queries from Jira Assets, the driver pushes supported SQL operations, like filters and aggregations, directly to Jira Assets and utilizes the embedded SQL engine to process unsupported operations client-side (often SQL functions and JOIN operations).
Connecting to Jira Assets data looks just like connecting to any relational data source. Create a connection string using the required connection properties. For this article, you will pass the connection string as a parameter to the create_engine function.
Jira Assets supports connecting and authenticating via the APIToken.
To generate an API token:
Atlassian generates and then displays the API token.
After you have generated the API token, set these parameters:
You are now ready to connect and authenticate to Jira Assets.
After installing the CData Jira Assets Connector, follow the procedure below to install the other required modules and start accessing Jira Assets through Python objects.
Use the pip utility to install the required modules and frameworks:
pip install petl pip install pandas
Once the required modules and frameworks are installed, we are ready to build our ETL app. Code snippets follow, but the full source code is available at the end of the article.
First, be sure to import the modules (including the CData Connector) with the following:
import petl as etl import pandas as pd import cdata.jiraassets as mod
You can now connect with a connection string. Use the connect function for the CData Jira Assets Connector to create a connection for working with Jira Assets data.
cnxn = mod.connect("User=MyUser;APIToken=myApiToken;Url=https://yoursitename.atlassian.net")
Use SQL to create a statement for querying Jira Assets. In this article, we read data from the Objects entity.
sql = "SELECT ID, Name FROM Objects WHERE Label = 'SYD-1'"
With the query results stored in a DataFrame, we can use petl to extract, transform, and load the Jira Assets data. In this example, we extract Jira Assets data, sort the data by the Name column, and load the data into a CSV file.
table1 = etl.fromdb(cnxn,sql) table2 = etl.sort(table1,'Name') etl.tocsv(table2,'objects_data.csv')
In the following example, we add new rows to the Objects table.
table1 = [ ['ID','Name'], ['NewID1','NewName1'], ['NewID2','NewName2'], ['NewID3','NewName3'] ] etl.appenddb(table1, cnxn, 'Objects')
With the CData Python Connector for Jira Assets, you can work with Jira Assets data just like you would with any database, including direct access to data in ETL packages like petl.
Download a free, 30-day trial of the CData Python Connector for Jira Assets to start building Python apps and scripts with connectivity to Jira Assets data. Reach out to our Support Team if you have any questions.
import petl as etl
import pandas as pd
import cdata.jiraassets as mod
cnxn = mod.connect("User=MyUser;APIToken=myApiToken;Url=https://yoursitename.atlassian.net")
sql = "SELECT ID, Name FROM Objects WHERE Label = 'SYD-1'"
table1 = etl.fromdb(cnxn,sql)
table2 = etl.sort(table1,'Name')
etl.tocsv(table2,'objects_data.csv')
table3 = [ ['ID','Name'], ['NewID1','NewName1'], ['NewID2','NewName2'], ['NewID3','NewName3'] ]
etl.appenddb(table3, cnxn, 'Objects')
Download a Community License of the Jira Assets Connector to get started:
Download NowLearn more:
👁 Jira Assets IconPython Connector Libraries for Jira Assets Data Connectivity. Integrate Jira Assets with popular Python tools like Pandas, SQLAlchemy, Dash & petl.