AI Infrastructure Engineer
Back to Jobs
Eram TalentGet Smart Job AI Coach in the appFree on iOS and Android 



AI Infrastructure Engineer
Location
Bengaluru, Karnataka, India
Experience
Mid
Posted
Jul 14, 2026
Apply by
August 13, 2026
Applicants
0
Early applicantEasy applyContractWork from Office
Job Description
Eram Talent is looking for a talented AI Infrastructure Engineer to join our innovative team. The ideal candidate will be responsible for designing, building, and maintaining scalable and robust infrastructure solutions that support AI and machine learning workloads. This role involves working closely with data scientists, machine learning engineers, and software developers to optimize infrastructure performance and facilitate efficient AI model development and deployment.
Key Responsibilities:
- Design, implement, and manage high-performance computing environments tailored for AI and machine learning applications.
- Deploy and maintain GPU-accelerated clusters, cloud-based AI platforms, and parallel processing systems.
- Collaborate with data scientists and ML engineers to understand infrastructure requirements for various AI projects.
- Optimize resource allocation and scalability of AI infrastructure to support large datasets and complex models.
- Automate infrastructure provisioning and deployment using Infrastructure as Code (IaC) tools.
- Ensure security, compliance, and reliability of AI infrastructure.
- Monitor system performance and troubleshoot issues to minimize downtime and maximize productivity.
- Stay updated on emerging technologies and best practices in AI infrastructure and propose continuous improvements.
- Bachelor’s or higher degree in Computer Science, Engineering, or related technical field.
- 6+ years of experience in infrastructure engineering, preferably with a focus on AI, machine learning, or high-performance computing environments.
- Cloud skills - GCP/OpenShift, Kubernetes (k8s), Docker containers/images
- AI skills – Model training, testing/evaluation, deployment
- ML/LLMOPs
- LLMs and GenAI core skills – how do LLMs work under the hood, inference mechanics of LLMs/GenAI
- Inference scaling, distributed computing, inference benchmarking, inference planning for meeting SLAs/SLOs
- GPUs and how to work with them, distributed workloads handling, autoscaling
- NVIDIA NIMs, Huggingface
- NVIDIA Superpods (HPC, slurm, k8s)
- Monitoring, dashboards for LLM/ML workloads and applications
- AI Application Architecture know-how, end to end flows
- DevOps (CI/CD, argoCD, git, Jenkins etc)
- Languages: Python, SQL
Key Responsibilities
- Design, implement, and manage high-performance computing environments for AI and machine learning applications.
- Deploy and maintain GPU-accelerated clusters, cloud-based AI platforms, and parallel processing systems.
- Collaborate with data scientists and ML engineers to understand infrastructure requirements for AI projects.
- Optimize resource allocation and scalability of AI infrastructure for large datasets and complex models.
- Automate infrastructure provisioning and deployment using Infrastructure as Code tools.
- Ensure security, compliance, and reliability of AI infrastructure.
- Monitor system performance and troubleshoot issues to minimize downtime.
- Stay updated on emerging technologies and propose continuous improvements.
Requirements
- Bachelor’s or higher degree in Computer Science
- Engineering
- or related technical field
Skills Required
GCPOpenShiftKubernetesDockerPythonSQLNVIDIA NIMsHuggingfaceNVIDIA SuperpodsSlurmArgoCDJenkinsGitCI/CDLLMsGenAIInference scalingDistributed computingGPU managementAutoscalingCollaborationProblem solvingContinuous learning
App exclusive · Free
Smart Job AI Coach
Your personal interview coach on every job — readiness tips, profile improvements, and role-specific prep. Available only in the Pulse Job app.
Interview readiness
See how prepared you are and what to improve for each role.
Personalized tips
Actionable suggestions based on your profile and the job.
After you apply
Keep coaching momentum from job detail through application success.
Similar roles for you
Matched using this role's title and skills. Open the job search anytime to see every listing.

Full Stack Software Engineering Technical Lead (CI/CD Platform)
Freddie Mac
149,000–223,000 / Year
Full-timeEasy applyWork from Office
McLeanSenior

Technical Lead (.Net Core)
Octal Philippines Inc.
Full-timeEasy applyWork from Office
TaguigSenior
Platform Engineer
Ornate Tech Inc
$130,000–$165,000 / Year
Full-timeEasy applyWork from Home
Remote1 applicant
Java Full Stack Developer
Nexa Vertex
$65–$85 / Hour
ContractEasy applyWork from Home
Remote
Python Full Stack Tech Lead
Ryanbpm
$70–$95 / Hour
ContractEasy applyHybrid
East Brunswick

Especialista I - Technical Lead
Experian
Full-timeEasy applyHybrid
São PauloSenior