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Tech Ecosystem

Tech Ecosystem

Domino is an open enterprise platform for data science, machine learning, and AI research. It works with an expansive list of industry leading tools and technologies to enrich data science research, development, and deployment processes. Domino works with a wide range of data sources, languages, IDEs, tools, libraries, and publication targets, including:

  • Certified partners who have worked with Domino to integrate and verify their tools.

  • Other third-party tools and technologies known to work with Domino.

  • Access to other tools and technologies through code-first APIs or connections.

The catalog lists the integrations alphabetically and groups them according to the categories shown in the diagram.

Contact Domino Support if something is missing because we’re always adding new integrations and want to hear what’s top of mind for data scientists.

Domino is at the center of the machine learning ecosystem

Data sources

SolutionPartnerIntegration information

snowflake

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Connecting to Snowflake from Domino

awss3

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Connecting to S3 from Domino

awsredshift

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Connecting to Redshift from Domino

postgresql

Connecting to PostgreSQL from Domino

mssqlserver

Connecting to Microsoft SQL Server from Domino

impala

Connecting to Impala from Domino

oracle

Connecting to Oracle DB from Domino

mysql

Connecting to MySQL from Domino

Data governance

SolutionPartnerIntegration information

okera

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Connecting to Okera from Domino

Tools & IDEs

SolutionPartnerIntegration information

rstudio

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RStudio comes standard in the Domino Analytics Distribution

jupyter

Jupyter and JupyterLab come standard in the Domino Analytics Distribution

matlab

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Domino distributes a base MATLAB environment image which you can add as a Workspace

stata logo blue

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visualstudio

Using Visual Studio Code in Domino

zeppelin

Packages & libraries

SolutionPartnerIntegration information

anaconda

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Miniconda can be added to Domino environments and you can specify a local mirror.

h2o

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Install H2O

datarobot

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Connecting to DataRobot in Domino

Spark & Hadoop clusters

SolutionPartnerIntegration information

cloudera

Connecting to a Cloudera CDH5 cluster from Domino

hortonworks

Connecting to a Hortonworks cluster from Domino

mapr

Connecting to a MapR cluster from Domino

awsemr

Connecting to an Amazon EMR cluster from Domino

App frameworks

SolutionPartnerIntegration information

flask

Getting started with Flask in Domino

shiny

Getting started with Shiny in Domino

dash

Getting started with Dash in Domino

django

Getting started with Django in Domino

Model publishing

SolutionPartnerIntegration information

sagemaker

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With Domino you can export a model endpoint which is compatible with AWS Sagemaker. Find instructions for publishing here.

If you are a partner interested in certifying your solution in Domino, contact partners@dominodatalab.com.

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