Hydrosphere.io
GithubPython SDKContact UsSlack Community
2.4.1 Release
2.4.1 Release
  • Hydrosphere
  • 🌊About Hydrosphere
    • Overview
    • Concepts
    • Platform Architecture
      • Serving
      • Monitoring
      • Interpretability
    • Key Features
      • Model Registry
      • Inference Pipelines
      • A/B Model Deployments
      • Traffic Shadowing
      • Language-Agnostic
      • Automatic Outlier Detection
      • Data Drift Report
      • Monitoring Dashboard
      • Alerts
      • Prediction Explanation
      • Data Projection
      • Kubeflow Components
      • AWS Sagemaker
  • 🏄Quickstart
    • Installation
      • CLI
      • Python SDK
    • Getting Started
    • Tutorials
      • A/B Analysis for a Recommendation Model
      • Using Deployment Configurations
      • Train & Deploy Census Income Classification Model
      • Using Automatic Outlier Detection to find anomalies
      • Monitoring Anomalies with a Custom Metric
      • Monitoring External Models
    • How-To
      • Invoke applications
      • Write definitions
      • Develop runtimes
      • Use private pip repositories
  • 💧Resources
    • Troubleshooting
    • Reference
      • Runtimes
    • Contribution
      • Contributing Pull Requests
Powered by GitBook
On this page
  • Serving
  • Monitoring
  • Interpretability
  • Third-Party Integrations

Was this helpful?

Export as PDF
  1. About Hydrosphere

Key Features

Features that make up Hydrosphere Platform

PreviousInterpretabilityNextModel Registry

Last updated 4 years ago

Was this helpful?

Serving

Monitoring

Interpretability

Third-Party Integrations

  • AWS Sagemaker

🌊
Model Registry
Inference Pipelines
A/B Model Version Deployment
Traffic Shadowing
Language-Agnostic Deployment
Automatic Outlier Detection
Data Drift Report
Monitoring Dashboard and Data Health Metrics
Alerts
Prediction Explanations
Data Projection
Kubeflow Components