AWS SageMaker Engineer

AWS SageMaker Engineer

Job Type : Fulltime / On Site
Salary : $50 to $52/hr
Company : Network Objects Inc.
Location : Cincinnati, OH

Job Details

We are seeking an experienced AWS SageMaker Specialist to join our team. The ideal candidate will have a strong background in machine learning, data science, and cloud computing, with specific experience in deploying and managing models using AWS SageMaker.

Key Responsibilities:

  • Deploy machine learning production models using AWS SageMaker.
  • Terraform experience
  • Experience with security, compliance, and governance of Sagemaker
  • Manage and optimize SageMaker instances and resources.
  • Collaborate with data scientists and engineers to integrate models into production environments.
  • Monitor and maintain deployed models to ensure performance and scalability.
  • Implement best practices for model versioning, monitoring, and retraining.
  • Troubleshoot and resolve issues related to model deployment and performance.
  • Stay up-to-date with the latest developments in AWS SageMaker and related technologies.

Skills:

  • Needs to be able to communicate clearly and often
  • Need a leader, not a follower
  • We want someone who has lead or key player bringing in AWS Sagemaker as a new platform

Squad outcomes:

  • Future (2025 & Beyond) Utilize AWS Sagemaker to expand Feature Store, introduce Model Registry, CI/CD, Real-Time models for our large data science credit models.
  • The squad is currently working on an in-house build of Feature Store to help speed up modeling process for our Data Science department. Combination of Snowflake, Cloud Pak for Data. (More on this later)
  • Currently, data scientist build model features (attributes) about customers in their own Jupyter notebook that feed into their models and never reuseable for others aka reason for Feature Store
  • They are also working on building real time scoring framework for our loan/card application process. Right now it s batch and can be almost 31 days behind.
  • Technology used: Docker, Kafka, Snowflake, Feature Store
  • This is the most important part: They are working on bringing in AWS Sagemaker as a replacement for IBM Cloud Pak for Data. This is where we deploy our critical production models and where all most of modeling is done at the bank.
  • We need someone that has been through standing up AWS Sagemaker into their company and/or someone that can deploy models in AWS Sagemaker.
  • We are in early innings with Sagemaker and just scratching the surface. We need help getting this platform stood up.

Skills

  • AWS SageMaker

09 september 2024
Print