Elasticsearch Python Connector

SQL-based Access to Elasticsearch from Python

Easily connect Python-based Data Access, Visualization, ORM, ETL, AI/ML, and Custom Apps with Elasticsearch!


  download beta

Python Connector Libraries for Elasticsearch Data Connectivity. Integrate Elasticsearch with popular Python tools like Pandas, SQLAlchemy, Dash & petl. Easy-to-use Python Database API (DB-API) Modules connect Elasticsearch data with Python and any Python-based applications.

Features

  • SQL-92 access to Elasticsearch data with no server add-ons
  • Connect to all Elasticsearch subscriptions: Basic through Platinum
  • Fully compatible with Elasticsearch v.2.2 and above
  • Advanced feature support, including write access, search type logic, arrays, nested objects, and JOINs
  • Enables SQL-92 capabilities on Elasticsearch NoSQL data.
  • Flexible NoSQL flattening - automatic schema generation, flexible querying etc.
  • Connect to live Elasticsearch data, for real-time data access
  • Full support for data aggregation and complex JOINs in SQL queries
  • Seamless integration with leading BI, reporting, and ETL tools and with custom applications

Specifications

  • Python Database API (DB-API) Modules for Elasticsearch.
  • Write SQL, get Elasticsearch data. Access Elasticsearch through standard Python Database Connectivity.
  • Integration with popular Python tools like Pandas, SQLAlchemy, Dash & petl.
  • An easy-to-use 'flattened' interface for working with Elasticsearch.
  • Full Unicode support for data, parameter, & metadata.


CData Python Connectors in Action!

Watch the video overview for a first hand-look at the powerful data integration capabilities included in the CData Python Connectors.

WATCH THE PYTHON CONNECTOR VIDEO OVERVIEW

Python Connectivity with Elasticsearch

Full-featured and consistent SQL access to any supported data source through Python


  • Universal Python Elasticsearch Connectivity

    Easily connect to Elasticsearch data from common Python-based frameworks, including:


    • Data Analysis/Visualization: Jupyter Notebook, pandas, Matplotlib
    • ORM: SQLAlchemy, SQLObject, Storm
    • Web Applications: Dash, Django
    • ETL: Apache Airflow, Luigi, Bonobo, Bubbles, petl
  • Popular Tooling Integration

    The Elasticsearch Connector integrates seamlessly with popular data science and developer tooling like Anaconda, Visual Studio Python IDE, PyCharm, and more. Real Python,

  • Replication and Caching

    Our replication and caching commands make it easy to copy data to local and cloud data stores such as Oracle, SQL Server, Google Cloud SQL, etc. The replication commands include many features that allow for intelligent incremental updates to cached data.

  • String, Date, Numeric SQL Functions

    The Elasticsearch Connector includes a library of 50 plus functions that can manipulate column values into the desired result. Popular examples include Regex, JSON, and XML processing functions.

  • Collaborative Query Processing

    Our Python Connector enhances the capabilities of Elasticsearch with additional client-side processing, when needed, to enable analytic summaries of data such as SUM, AVG, MAX, MIN, etc.

  • Easily Customizable and Configurable

    The data model exposed by our Elasticsearch Connector can easily be customized to add or remove tables/columns, change data types, etc. without requiring a new build. These customizations are supported at runtime using human-readable schema files that are easy to edit.

  • Enterprise-class Secure Connectivity

    Includes standard Enterprise-class security features such as TLS/ SSL data encryption for all client-server communications.

Connecting to Elasticsearch with Python

CData Python Connectors leverage the Database API (DB-API) interface to make it easy to work with Elasticsearch from a wide range of standard Python data tools. Connecting to and working with your data in Python follows a basic pattern, regardless of data source:

  • Configure the connection properties to Elasticsearch
  • Query Elasticsearch to retrieve or update data
  • Connect your Elasticsearch data with Python data tools.


Connecting to Elasticsearch in Python

To connect to your data from Python, import the extension and create a connection:

import cdata.elasticsearch as mod
conn = mod.connect("User=user@domain.com; Password=password;")

#Create cursor and iterate over results
cur = conn.cursor()
cur.execute("SELECT * FROM DocumentDB")
 
rs = cur.fetchall()
 
for row in rs:
print(row)

Once you import the extension, you can work with all of your enterprise data using the python modules and toolkits that you already know and love, quickly building apps that help you drive business.

Visualize Elasticsearch Data with pandas

The data-centric interfaces of the Elasticsearch Python Connector make it easy to integrate with popular tools like pandas and SQLAlchemy to visualize data in real-time.

engine = create_engine("elasticsearch///Password=password&User=user")

df = pandas.read_sql("SELECT * FROM DocumentDB", engine)

df.plot()
plt.show()