Connect to Multiple Data Sources
Ability to connect to a wide variety of data sources including data lakes or data warehouses for data ingestion
Cat avg: 8.8
Ability to connect to a wide variety of data sources including data lakes or data warehouses for data ingestion
Cat avg: 8.8
Use R or Python to create custom connectors for any APIs or databases
Cat avg: 8.9
Automatic detection of data formats and schemas
Cat avg: 9.2
Access to visual processors for data wrangling
Cat avg: 9
Access to multiple popular languages, tools, and packages such as R, Python, SAS, Jupyter, RStudio, etc.
Cat avg: 9.2
Integration with MDM and metadata dictionaries
Cat avg: 7.8
Publish models as REST APIs, hosted interactive web apps or as scheduled jobs for generating reports or running ETL tasks.
Cat avg: 9.2
Ability to connect to a wide variety of data sources
Ability to connect to a wide variety of data sources including data lakes or data warehouses for data ingestion
Category average: 8.8
Use R or Python to create custom connectors for any APIs or databases
Category average: 8.9
Automatic detection of data formats and schemas
Category average: 9.2
Integration with MDM and metadata dictionaries
Category average: 7.8
Ability to explore data and develop insights
The product’s support and tooling for analysis and visualization of data.
Category average: 8.3
Ability to analyze data interactively using Python or R Notebooks
Category average: 8.8
Ability to prepare data for analysis
Access to visual processors for data wrangling
Category average: 9
Use visual tools for standard transformations
Category average: 9.1
Data encryption to ensure data privacy
Category average: 8.4
Library of processors for data quality checks
Category average: 9
Building predictive data models
Access to multiple popular languages, tools, and packages such as R, Python, SAS, Jupyter, RStudio, etc.
Category average: 9.2
Tools to help automate algorithm development
Category average: 8.9
Single place to build, validate, deliver, and monitor many different models
Category average: 9.5
Multiple model delivery modes to comply with existing workflows
Category average: 8.3
Tools for deploying models into production
Publish models as REST APIs, hosted interactive web apps or as scheduled jobs for generating reports or running ETL tasks.
Category average: 9.2
Built-in controls to mitigate compliance and audit risk with user activity tracking
Category average: 8.6