Role: MLOPs Engineer
WM: Remote
Exp: 8+ Years [Experience is compulsory]
Special Request:
* Please ensure that the candidate's resume includes a recent passport-size photograph. Profiles without a current photograph may not be considered for evaluation.
* This position is a high-priority and business-critical requirement and is targeted for closure within the next 2 working days.
* We do not anticipate operational delays in profile screening, interview scheduling, or submission turnaround. Vendors are requested to prioritize this requirement and share only immediately available and thoroughly screened candidates.
* Kindly submit profiles with complete details like BGV - UAN, Form-16, offer letter,
* Graduation Check & Identity verification will be done.
Overview:
The client currently operates Data Science workloads in GCP and is migrating these workloads to Azure Databricks. Input data will continue to originate from GCP, Data Science processing will execute in Azure Databricks, and outputs will be written back to GCP. The MLOps Engineer will play a critical role in model migration, workflow automation, CI/CD implementation, model lifecycle management, and cross-cloud data movement initiatives.
Key Responsibilities
Support migration of existing ML models from GCP to Azure Databricks.
Analyze, replicate, and optimize existing Data Science model architectures.
Build and maintain CI/CD pipelines using GitHub Actions.
Implement and manage MLflow for model tracking, versioning, and lifecycle management.
Develop scalable Data & ML pipelines using Databricks and PySpark.
Collaborate with Data Engineering teams on GCP to Azure Databricks data movement strategies.
Build pipelines to move model outputs from Azure Databricks back to GCP.
Provide architectural guidance and workflow optimization recommendations.
Improve testing coverage, monitoring, observability, and performance tuning.
Drive cost optimization and operational efficiency initiatives.
Mandatory Technical Skills
Strong hands-on expertise in Azure Databricks with deep understanding of Databricks internals.
Advanced PySpark development, optimization, and execution plan analysis.
Experience building CI/CD pipelines using GitHub Actions.
Strong experience with MLflow for model tracking, deployment, and lifecycle management.
Knowledge of Terraform and Databricks infrastructure automation.
Experience integrating workflows across GCP and Azure cloud platforms.
Strong debugging, troubleshooting, and performance optimization capabilities.
Experience operationalizing Machine Learning models in production environments.
Cost optimization mindset for cloud and data processing workloads.
Good to Have
Experience with cross-cloud data movement architectures.
Understanding of Data Science model structures and workflows.
Exposure to model monitoring, observability, and alerting frameworks.
Experience collaborating closely with Data Science teams.
Important Screening Note:
* Strong Azure Databricks expertise is mandatory.
* Hands-on experience with PySpark, MLflow, and GitHub Actions is required.
* Candidates must have exposure to both Azure and GCP ecosystems.
* Experience in ML model migration, operationalization, and optimization is highly preferred. Strong troubleshooting, performance tuning, and cost optimization capabilities are essential.
Pay: From ₹1,200,000.00 per year
Work Location: Remote