Skip to main content

GenAI-Powered Scaling Recommendation Feature - Obzera

Bedrock
Bedrock
python
Python
Langchain
Langchain
Langgraph
Langgraph
MCP
MCP
Overview

As part of Obzera’s cloud optimization toolkit, we introduced an intelligent recommendation feature that evaluates real-time cloud usage metrics to guide customers on scaling decisions. This feature helps users avoid unnecessary cost or performance issues by offering data-driven scaling suggestions instead of relying on manual monitoring or assumptions.

Objective
  • Make scaling decisions predictive rather than reactive
  • Provide clear, actionable recommendations based on observed usage patterns
  • Improve cloud cost efficiency without compromising performance
Solution Delivered

We implemented a GenAI-based engine within Obzera that continuously analyzes CPU, memory, disk and other operational metrics from active EC2 environments. The system interprets utilization trends, forecasts future demand, and recommends whether to upscale, downscale, or maintain the current configuration. The feature integrates directly into the Obzera insights dashboard and alerts workflow.

Diagram-Obzera
Outcome / Impact
Business Value
  • Lower cloud costs without compromising reliability
  • Better user experience from stable and well-sized infrastructure
  • Reduced operational load on DevOps teams
  • Faster decision-making with clear, actionable recommendations
Conclusion

With this enhancement, Obzera evolved from a monitoring tool into an intelligent decision-support system - helping customers make smarter, proactive cloud scaling choices powered by GenAI insights.

Read More Case Study

ipaas-case-study

Minutus helps Electric Motor manufacturing company to use Custom Part Numbering with 3DEXPERIENCE On-Cloud using iPaaS

Software Company’s Successful First DevOps Implementation: Overcoming Cultural & Operational Shifts

Minutus Collaborates with a leading US Oil & Gas firm for a Cloud-Native Web App, aiding Data Processing & Analysis