How to Scale from One Model to Thousands

Hand-Built Deployment Solutions

The Wallaroo Approach

The Data Scientist’s Self-Service Deployment Toolkit

The Wallaroo Compute Engine

Model Management and Observability

  • Detailed event logs and full audit logs, to support performance monitoring and compliance.
  • Data validation checks to help guard your models against unexpected data issues.
  • Advanced model insights to monitor model outputs and inputs for data drift or concept drift that might affect your models’ performance.
  • Configurable alerting capabilities to quickly catch any acute problems in production.
  • A Model Registry that tracks the models (and versions of models) that have been deployed, by whom, and where they are being used.

Streamline the ML Deployment Process

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Wallaroo

Wallaroo

Wallaroo enables data scientists and ML engineers to deploy enterprise-level AI into production simpler, faster, and with incredible efficiency.

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