Description
Implement and deploy Python machine learning models on AWS SageMaker. Manage data infrastructure and pipelines using Redshift, S3, and AWS Glue.
Responsibilities
- Build and maintain ML model deployment pipelines on AWS SageMaker using Python.
- Manage data storage and processing workflows with Amazon S3 and Redshift.
- Develop and manage infrastructure using Terraform, CloudFormation, or CDK.
- Configure and secure AWS resources, including IAM policies and roles.
- Support data engineering initiatives and optimize existing data platforms.
Required Skills
- 9+ years of professional experience in data engineering or ML operations.
- Strong proficiency in Python for data manipulation and model implementation.
- Hands-on experience with AWS SageMaker for model training and deployment.
- Expertise in AWS S3 for data storage and Redshift for data warehousing.
- Experience with AWS Glue for ETL processes and data integration.
- Familiarity with Infrastructure as Code tools (Terraform, CloudFormation, or CDK).
- Knowledge of AWS IAM for security and access management.
Preferred Skills
- Experience implementing credit risk models or similar financial ML use cases.
- Deep understanding of data engineering platforms and architectural best practices.