Cloud Resource Optimization on Kubernetes

Container adoption enhances operational agility and speeds up application deployment. However, it also introduces substantial overhead when managing compute resources across complex setups like on-premises, hybrid cloud, MultiCloud, and edge environments. The varying resource demands of these environments can lead to inefficient allocation, higher costs, and inconsistent performance, making it difficult for organizations to fully realize the benefits of containerization at scale.

To address these challenges, Federator.ai offers an AI-powered solution that optimizes container resources across Kubernetes platforms. Using advanced machine learning algorithms, it dynamically analyzes workloads, predicts resource needs, and adjusts allocations in real time for efficient utilization and minimal waste. This approach simplifies container management in multi-environment deployments, reduces operational costs, and boosts performance. Its platform-agnostic design ensures optimal container performance in a single cluster or across MultiCloud and edge locations, making it a versatile tool for managing complex container ecosystems.

Multi-layer Visibility and Optimization

Multi-layer Visibility and Optimization

Leverage collected metadata and operational metrics from multi-layer infrastructure operations to provide ongoing, Just-in-Time Fitted recommendations for optimized resource orchestration using AI-powered workload predictions.

Resource Utilization and Cost Improvement

Auto-scale container resources based on real-time application demands. Identify workload patterns and recommend the most cost-effective portfolio of instance types and quantities, enhancing resource utilization, eliminating over-provisioning, and supporting sustainability.

Performance Assurance and Resilience

Use Federator.ai’s patented Cascade Causal Analysis to identify resource correlations among hardware, cloud resources, Kubernetes layers, and applications. This enables efficient allocation of resources to mission-critical applications while minimizing resource usage.

Policy-compliant Automation

Policy-compliant Automation

Automate continuous operation optimization by accurately interpreting metadata and predicting workloads, then automatically recommending optimal resources. Users can also access Federator.ai’s orchestration script to ensure compliance with company policies.

Please select the software you would like a demo of:

Federator.ai GPU Booster ®

Maximizing GPU utilization for AI workloads and doubling your server’s training capacity

Federator.ai ®

Simplifying complexity and continuously optimizing cloud costs and performance