Resume and JobRESUME AND JOB
NVIDIA logo

Senior Performance and Development Engineer

NVIDIA

Software and Technology Jobs

Senior Performance and Development Engineer

full-timePosted: Oct 31, 2025

Job Description

Joining NVIDIA's AI Efficiency Team means contributing to the infrastructure that powers our leading-edge AI research. This team focuses on optimizing efficiency and resiliency of ML workloads, as well as developing scalable AI infrastructure tools and services. Our objective is to deliver a stable, scalable environment for NVIDIA's AI researchers, providing them with the necessary resources and scale to foster innovation.We're redefining the way Deep Learning applications run on tens of thousands of GPUs. Join our team of experts and help us build a supercharged AI platform that improves efficiency, resilience, and Model FLOPs Utilization (MFU). In this position you will be collaborating with a diverse team that cuts across many areas of Deep Learning HW/SW stack in building a highly scalable, fault tolerant and optimized AI platform.What you will be doing:Build AI models, tools and frameworks that provide real time application performance metrics that can be correlated with system metricsDevelop automation frameworks that empower applications to thoughtfully predict and overcome system/infrastructure failures, ensuring fault tolerance.Collaborate with software teams to pinpoint performance bottlenecks. Design, prototype, and integrate solutions that deliver demonstrable performance gains in production environments.Adapt and enhance communication libraries to seamlessly support innovative network topologies and system architectures.Design or adapt optimized storage solutions to boost Deep Learning efficiency, resilience, and developer productivity.What We Need to See:BS/MS/PhD (or equivalent experience) in Computer Science, Electrical Engineering or a related field.12+ years of proven experience in the following area:Analyzing and improving performance of training applications using PyTorch or similar frameworkBuilding distributed software applications using collective communication libraries such as MPI or NCCL or UCCConstruct storage solutions for Deep Learning applicationsBuilding automated fault tolerant distributed applicationsBuilding tools for bottleneck analysis and automation of fault tolerance in distributed environments.Strong background in parallel programming and distributed systemsExperience analyzing and optimizing large scale distributed applications.Excellent verbal and written communication skillsWays To Stand Out From The Crowd:Deep understanding of HPC and distributed system architecture.Hands on working experience in more than one of the above areas especially with large SOTA AI models, performance analysis and profiling of Deep Learning workloads.Comfortable navigating and working with the PyTorch codebase.Proven understanding of CUDA and GPU architectureYour base salary will be determined based on your location, experience, and the pay of employees in similar positions. The base salary range is 224,000 USD - 356,500 USD for Level 5, and 272,000 USD - 425,500 USD for Level 6.You will also be eligible for equity and benefits.Applications for this job will be accepted at least until November 4, 2025.NVIDIA is committed to fostering a diverse work environment and proud to be an equal opportunity employer. As we highly value diversity in our current and future employees, we do not discriminate (including in our hiring and promotion practices) on the basis of race, religion, color, national origin, gender, gender expression, sexual orientation, age, marital status, veteran status, disability status or any other characteristic protected by law.

Locations

  • Santa Clara, CA, US

Salary

Estimated Salary Rangemedium confidence

22,000,000 - 36,000,000 INR / yearly

Source: ai estimated

* This is an estimated range based on market data and may vary based on experience and qualifications.

Skills Required

  • PyTorchintermediate
  • MPIintermediate
  • NCCLintermediate
  • UCCintermediate
  • Deep Learningintermediate
  • AI modelsintermediate
  • automation frameworksintermediate
  • communication librariesintermediate
  • storage solutionsintermediate
  • performance analysisintermediate
  • distributed software developmentintermediate
  • fault toleranceintermediate
  • performance optimizationintermediate
  • ML workloadsintermediate
  • scalable AI infrastructureintermediate
  • Model FLOPs Utilization (MFU)intermediate
  • GPU programmingintermediate
  • real-time metricsintermediate
  • system metrics correlationintermediate
  • bottleneck identificationintermediate
  • prototypingintermediate
  • integrationintermediate
  • network topologiesintermediate
  • system architecturesintermediate
  • developer productivityintermediate

Target Your Resume for "Senior Performance and Development Engineer" , NVIDIA

Get personalized recommendations to optimize your resume specifically for Senior Performance and Development Engineer. Takes only 15 seconds!

AI-powered keyword optimization
Skills matching & gap analysis
Experience alignment suggestions

Check Your ATS Score for "Senior Performance and Development Engineer" , NVIDIA

Find out how well your resume matches this job's requirements. Get comprehensive analysis including ATS compatibility, keyword matching, skill gaps, and personalized recommendations.

ATS compatibility check
Keyword optimization analysis
Skill matching & gap identification
Format & readability score

Tags & Categories

United States of America

Answer 10 quick questions to check your fit for Senior Performance and Development Engineer @ NVIDIA.

Quiz Challenge
10 Questions
~2 Minutes
Instant Score

Related Books and Jobs

No related jobs found at the moment.

NVIDIA logo

Senior Performance and Development Engineer

NVIDIA

Software and Technology Jobs

Senior Performance and Development Engineer

full-timePosted: Oct 31, 2025

Job Description

Joining NVIDIA's AI Efficiency Team means contributing to the infrastructure that powers our leading-edge AI research. This team focuses on optimizing efficiency and resiliency of ML workloads, as well as developing scalable AI infrastructure tools and services. Our objective is to deliver a stable, scalable environment for NVIDIA's AI researchers, providing them with the necessary resources and scale to foster innovation.We're redefining the way Deep Learning applications run on tens of thousands of GPUs. Join our team of experts and help us build a supercharged AI platform that improves efficiency, resilience, and Model FLOPs Utilization (MFU). In this position you will be collaborating with a diverse team that cuts across many areas of Deep Learning HW/SW stack in building a highly scalable, fault tolerant and optimized AI platform.What you will be doing:Build AI models, tools and frameworks that provide real time application performance metrics that can be correlated with system metricsDevelop automation frameworks that empower applications to thoughtfully predict and overcome system/infrastructure failures, ensuring fault tolerance.Collaborate with software teams to pinpoint performance bottlenecks. Design, prototype, and integrate solutions that deliver demonstrable performance gains in production environments.Adapt and enhance communication libraries to seamlessly support innovative network topologies and system architectures.Design or adapt optimized storage solutions to boost Deep Learning efficiency, resilience, and developer productivity.What We Need to See:BS/MS/PhD (or equivalent experience) in Computer Science, Electrical Engineering or a related field.12+ years of proven experience in the following area:Analyzing and improving performance of training applications using PyTorch or similar frameworkBuilding distributed software applications using collective communication libraries such as MPI or NCCL or UCCConstruct storage solutions for Deep Learning applicationsBuilding automated fault tolerant distributed applicationsBuilding tools for bottleneck analysis and automation of fault tolerance in distributed environments.Strong background in parallel programming and distributed systemsExperience analyzing and optimizing large scale distributed applications.Excellent verbal and written communication skillsWays To Stand Out From The Crowd:Deep understanding of HPC and distributed system architecture.Hands on working experience in more than one of the above areas especially with large SOTA AI models, performance analysis and profiling of Deep Learning workloads.Comfortable navigating and working with the PyTorch codebase.Proven understanding of CUDA and GPU architectureYour base salary will be determined based on your location, experience, and the pay of employees in similar positions. The base salary range is 224,000 USD - 356,500 USD for Level 5, and 272,000 USD - 425,500 USD for Level 6.You will also be eligible for equity and benefits.Applications for this job will be accepted at least until November 4, 2025.NVIDIA is committed to fostering a diverse work environment and proud to be an equal opportunity employer. As we highly value diversity in our current and future employees, we do not discriminate (including in our hiring and promotion practices) on the basis of race, religion, color, national origin, gender, gender expression, sexual orientation, age, marital status, veteran status, disability status or any other characteristic protected by law.

Locations

  • Santa Clara, CA, US

Salary

Estimated Salary Rangemedium confidence

22,000,000 - 36,000,000 INR / yearly

Source: ai estimated

* This is an estimated range based on market data and may vary based on experience and qualifications.

Skills Required

  • PyTorchintermediate
  • MPIintermediate
  • NCCLintermediate
  • UCCintermediate
  • Deep Learningintermediate
  • AI modelsintermediate
  • automation frameworksintermediate
  • communication librariesintermediate
  • storage solutionsintermediate
  • performance analysisintermediate
  • distributed software developmentintermediate
  • fault toleranceintermediate
  • performance optimizationintermediate
  • ML workloadsintermediate
  • scalable AI infrastructureintermediate
  • Model FLOPs Utilization (MFU)intermediate
  • GPU programmingintermediate
  • real-time metricsintermediate
  • system metrics correlationintermediate
  • bottleneck identificationintermediate
  • prototypingintermediate
  • integrationintermediate
  • network topologiesintermediate
  • system architecturesintermediate
  • developer productivityintermediate

Target Your Resume for "Senior Performance and Development Engineer" , NVIDIA

Get personalized recommendations to optimize your resume specifically for Senior Performance and Development Engineer. Takes only 15 seconds!

AI-powered keyword optimization
Skills matching & gap analysis
Experience alignment suggestions

Check Your ATS Score for "Senior Performance and Development Engineer" , NVIDIA

Find out how well your resume matches this job's requirements. Get comprehensive analysis including ATS compatibility, keyword matching, skill gaps, and personalized recommendations.

ATS compatibility check
Keyword optimization analysis
Skill matching & gap identification
Format & readability score

Tags & Categories

United States of America

Answer 10 quick questions to check your fit for Senior Performance and Development Engineer @ NVIDIA.

Quiz Challenge
10 Questions
~2 Minutes
Instant Score

Related Books and Jobs

No related jobs found at the moment.