Posted on: 05/08/2025
Role Overview :
We are looking for a skilled and forward-thinking AI Cloud Engineer to join our AI & Cloud Engineering team.
This role is ideal for someone who thrives at the intersection of cloud infrastructure, machine learning, and AI model deployment.
You will play a key role in architecting, building, and maintaining scalable, secure, and high-performance AI/ML solutions on leading cloud platforms like Azure, AWS, or Google Cloud.
The ideal candidate should have strong experience in cloud-native development, MLOps, infrastructure as code (IaC), and deploying AI/ML models at scale.
Key Responsibilities :
Cloud Architecture & Engineering :
- Design, implement, and maintain cloud-based infrastructure to support AI/ML workloads.
- Architect and deploy solutions using Azure AI, AWS SageMaker, or Google Vertex AI.
- Leverage services such as Kubernetes, Docker, Blob Storage, Serverless Functions, and API Gateways to build scalable AI pipelines.
AI & ML Deployment :
- Deploy, monitor, and optimize machine learning models and large language models (LLMs) in production environments.
- Develop APIs or microservices for AI model inference and integrate them into applications.
- Implement MLOps practices for model versioning, continuous integration, continuous delivery (CI/CD), and monitoring.
Data Engineering & Pipeline Management :
- Design and manage data pipelines for model training and inference using tools like Apache Airflow, Azure Data Factory, or Glue.
- Ingest, transform, and process structured and unstructured data in cloud environments.
Security & Compliance :
- Ensure data security, privacy, and compliance across cloud services and AI applications.
- Implement role-based access control (RBAC), secure APIs, and encryption in transit and at rest.
Automation & DevOps :
- Use IaC tools like Terraform, Bicep, or CloudFormation to automate cloud infrastructure.
-Build and manage CI/CD pipelines for model deployment using Azure DevOps, GitHub Actions, or Jenkins.
Skills & Qualifications :
Technical Skills :
- Proficiency in one or more cloud platforms : Azure, AWS, or Google Cloud Platform
- Strong experience with :
1. Python for AI/ML workloads
2. MLOps tools : MLflow, Kubeflow, SageMaker Pipelines, Azure ML
3. Containers and orchestration : Docker, Kubernetes
4. CI/CD : Azure DevOps, GitHub Actions, GitLab CI
5. Infrastructure as Code (IaC) : Terraform, ARM/Bicep, CloudFormation
- Familiarity with AI frameworks : TensorFlow, PyTorch, Hugging Face Transformers
- Good knowledge of API development, microservices, and REST/GraphQL APIs
Did you find something suspicious?
Posted By
Posted in
DevOps / SRE
Functional Area
ML / DL Engineering
Job Code
1524733
Interview Questions for you
View All