
MLOps Engineer
About the role
We are looking for a hands-on MLOps Engineer who will work closely with Data Scientists and ML Engineers to build, deploy, monitor, and optimize machine learning models in production.
This role is NOT focused on platform engineering or infrastructure-only work—instead, it emphasizes end-to-end ML lifecycle management, model deployment, and operationalization of ML systems.
Strong Python programming:
Hands-on experience in Machine Learning workflows:
Experience with MLOps tools:
MLflow / Kubeflow / Airflow / Sage Maker / Vertex AI
Knowledge of CI/CD tools (GitHub Actions, Jenkins, etc.)
Experience deploying models using:
Docker, REST APIs, Flask/FastAPI
Understanding of:
Model versioning
Experiment tracking
Model monitoring
Exposure to cloud platforms (AWS / Azure / GCP) for ML deployment
Knowledge of LLMOps / GenAI deployment pipelines
Familiarity with:
Feature stores
Data pipelines (Spark, Kafka)
Experience with Kubernetes (basic deployment level)
Experience with real-time inference systems
Exposure to monitoring tools (Prometheus, Grafana)
Knowledge of LLM deployment / RAG pipelines
Education: Bachelor of Engineering
Preferred skills: Analytics->Data Science,Technology->Machine learning->data science,Technology->Machine Learning->Generative AI
Benefits and perks
•Learning Budget
Required skills
Python
MLOps
MLflow
Kubeflow
Airflow
Docker
REST APIs
Model monitoring
About Infosys
BANGALORE
Headquarters