Editions
TigerGraph ML Workbench is available as a service through TigerGraph Cloud or standalone in two editions, Community and Enterprise.
While both on-prem editions offer useful Python-level features for your data science needs, the Enterprise edition offers more powerful features to support production-level model training on enterprise-level data sets.
The tables below can help you compare the key differences between the editions.
ML Workbench on TigerGraph Cloud
The Enterprise Edition ML Workbench on TigerGraph Cloud is available through a Cloud Starter Kit selected when you provision a new Cloud instance. This is a direct link to a ML Workbench instance with a Jupyter Notebook introduction for you to begin with the tutorials or with your own data.
Community and Enterprise On-Prem Editions
Features
Community | Enterprise | |
---|---|---|
Compatibility |
|
|
Onboarding |
|
|
Capabilities |
Python-level capabilities with pyTigerGraph:
|
Python-level capabilities with pyTigerGraph:
|
Data Export Method |
HTTP only |
Reliable and efficient data export via both HTTP and Kafka |
Data Export Size |
Limited to 2GB |
Unlimited |
Parallel Training |
No |
Yes |
Support |
Community support |
|
Customer Scenarios
Community Edition | Enterprise Edition | |
---|---|---|
Purpose |
|
Production deployment of Graph ML Models |
Audience |
|
Enterprise data science teams |
Infrastructure Readiness |
Local machines / Internal ML infra (self-managed) |
Local machines / Internal ML Infra (self-managed) |
Data Size |
Small data set (<2GB) |
Production / Enterprise level data |
Performance requirements |
|
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