Posted on: 16/08/2025
Ideal Qualifications :
- Bachelors degree in Computer Science, Software Engineering, or a related discipline.
- 7 to 12 years of experience in software engineering, with expertise in MLOps, cloud computing, and scalable architectures.
- Strong object-oriented programming skills, preferably in Python.
- Hands-on experience in developing and deploying microservices in any public cloud environment such as AWS, Azure, or GCP.
- Expertise in Kubernetes, including designing, deploying, and maintaining enterprise-class ML models and services.
- Experience in Kubeflow, maintaining and optimizing ML pipelines for efficient model training and deployment.
- Proven experience in deploying and maintaining Linux-based, highly scalable, and fault-tolerant enterprise platforms.
- Hands-on experience with Terraform or CloudFormation for infrastructure automation and cloud resource management.
- Familiarity with monitoring and logging tools such as Grafana, Prometheus, and CloudWatch.
- Strong understanding of cloud security, service mesh architectures (Istio), and scalable ML deployment best practices.
- Experience working with databases such as Snowflake, PostgreSQL, MySQL, Redis, and DynamoDB.
- Proficiency in configuration management and CI/CD tools like Jenkins, Puppet, Chef, and Bottlerocket.
Job Responsibilities :
Technical Execution (50%)
- Develop, test, and deploy high-quality software components that align with security, performance, and scalability requirements.
- Design and maintain Kubernetes-based ML model deployments in cloud environments.
- Optimize and manage Kubeflow pipelines for model training, deployment, and monitoring.
- Implement cloud infrastructure automation using Terraform or CloudFormation.
- Ensure best practices in cloud security, monitoring, and scalability.
- Conduct unit testing, functional testing, and peer code reviews to maintain code quality and reliability.
Contribution to the team (30%) :
- Participate actively in agile ceremonies such as stand-ups, sprint planning, retrospectives, and backlog grooming.
- Work collaboratively with data scientists, ML engineers, and software developers to integrate ML models into production environments.
Cross-functional Coordination and Communication (10%) :
- Share technical knowledge and insights across teams to enhance collective expertise.
Mentorship and Leadership (10%) :
- Promote best practices and innovation within the team to drive MLOps success
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Posted By
Judah Muthiah
Senior Recruiting Manager at athenaHealth Technology Private Limited.
Last Active: 5 Dec 2025
Posted in
DevOps / SRE
Functional Area
ML / DL / AI Research
Job Code
1530281
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