International Business Machines Corporation (20240241707). OPTIMIZING COMPONENTS FOR MULTI-CLOUD APPLICATIONS WITH DEEP LEARNING MODELS simplified abstract

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OPTIMIZING COMPONENTS FOR MULTI-CLOUD APPLICATIONS WITH DEEP LEARNING MODELS

Organization Name

International Business Machines Corporation

Inventor(s)

PRANSHU Tiwari of SHARON MA (US)

Harish Bharti of Pune (IN)

Swarnalata Patel of MORRISVILLE NC (US)

NAVEEN Narayanaswamy of Bengaluru (IN)

Abhaya Kumar Sahoo of Khordha (IN)

OPTIMIZING COMPONENTS FOR MULTI-CLOUD APPLICATIONS WITH DEEP LEARNING MODELS - A simplified explanation of the abstract

This abstract first appeared for US patent application 20240241707 titled 'OPTIMIZING COMPONENTS FOR MULTI-CLOUD APPLICATIONS WITH DEEP LEARNING MODELS

The abstract describes a computer-implemented method that involves ingesting application deployment data, generating a cloud application deployment predictor data structure, creating objective functions, optimizing between the objective functions, and generating a multi-cloud deployment map for the application.

  • Ingesting application deployment data for an application
  • Generating a cloud application deployment predictor data structure
  • Creating objective functions for the predictor data structure
  • Optimizing between the objective functions
  • Generating a multi-cloud deployment map based on the optimization

Potential Applications: - Cloud computing - Application deployment optimization - Multi-cloud management

Problems Solved: - Efficient deployment of applications across multiple cloud environments - Predicting optimal deployment strategies - Enhancing resource utilization in cloud computing

Benefits: - Improved application performance - Cost-effective deployment strategies - Enhanced scalability and flexibility in cloud environments

Commercial Applications: Title: "Optimizing Multi-Cloud Application Deployment for Enhanced Performance" This technology can be utilized by cloud service providers, IT companies, and businesses with complex application deployment needs to streamline operations, reduce costs, and improve overall performance.

Questions about the technology: 1. How does this method improve the efficiency of application deployment in cloud environments? 2. What are the key factors considered in optimizing between the objective functions for multi-cloud deployment?


Original Abstract Submitted

in various examples, a computer-implemented method includes: ingesting, by one or more computing devices, application deployment data for an application; generating, by the one or more computing devices, a cloud application deployment predictor data structure for the application; generating, by the one or more computing devices, objective functions for the cloud application deployment predictor data structure for the application; optimizing, by the one or more computing devices, between the objective functions for the application; and generating, by the one or more computing devices, based on the optimizing between the objective functions, a multi-cloud deployment map for the application.