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Wave Intelligence is the machine learning engine powering Wave Autoscale's predictive autoscaling and performance optimization capabilities. Built with Python and FastAPI, it delivers real-time forecasting, workload prediction, and intelligent scaling recommendations.
Key Features:
- Time-series forecasting for predictive autoscaling using statsforecast models
- Performance prediction models for resource optimization
- Horizontal scaling algorithms with cost and performance strategies
- Cluster resource capacity forecasting (7-30 days ahead)
- Memory leak detection and anomaly identification
- Workload-specific model training using historical usage patterns
- Real-time metrics analysis with DuckDB and Polars
- RESTful API integration with Wave Autoscale Core
ML Capabilities:
- Forecasting-based predictive scaling for proactive resource allocation
- Min/Max replica recommendations based on workload analysis
- Autopilot scheduler with cron-based configuration for business events
- CPU utilization breakdown and performance bottleneck analysis
- Smart sizing recommendations for container resource rightsizing
Technology Stack: Python, FastAPI, Polars, NumPy, statsforecast, DuckDB, uvicorn/gunicorn
The service runs on port 3026 and integrates seamlessly with Wave Autoscale Core to enable ML-driven Kubernetes optimization.
The following information was extracted from the containerfile and other sources.
| Summary | Wave Autoscale Intelligence - ML-driven autoscaling engine |
| Description | Wave Autoscale Intelligence Engine |
| Provider | STCLAB |
| Maintainer | team@waveautoscale.com |
The following information was extracted from the containerfile and other sources.
| Repository name | wave-autoscale-intelligence |
| Image version | 3.0.1 |
| Architecture | amd64 |
| Usage | s2i build https://github.com/sclorg/s2i-python-container.git --context-dir=3.12/test/setup-test-app/ ubi9/python-312 python-sample-app |
| Exposed ports | 3026:http |
Use the following instructions to get images from a Red Hat container registry using registry service account tokens. You will need to create a registry service account to use prior to completing any of the following tasks.
First, you will need to add a reference to the appropriate secret and repository to your Kubernetes pod configuration via an imagePullSecrets field.
Then, use the following from the command line or from the OpenShift Dashboard GUI interface.
Use the following command(s) from a system with podman installed
Use the following command(s) from a system with docker service installed and running
Use the following instructions to get images from a Red Hat container registry using your Red Hat login.
For best practices, it is recommended to use registry tokens when pulling content for OpenShift deployments.
Use the following command(s) from a system with podman installed
Use the following command(s) from a system with docker service installed and running