Home

AWS SageMaker Engineer IV at Remote, Remote, USA
Email: [email protected]
From:

Anwer,

Convex

[email protected]

Reply to:   [email protected]

Job Title: AWS SageMaker Engineer IV

Location: 38 Fountain Square Plaza, Cincinnati, Ohio, United States of America, 45202 (Onsite Job) (Must be local to Ohio)

Duration:  3 Months Contract Possible extension

Pay Rate: $60 to 65/hr. on C2C 

NEED GC OR USC CANDIDATES

Must Have

Experience as a lead or key player bringing in AWS Sagemaker as a new "platform"

Needs to be able to communicate clearly and often

Job Description:

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.

Soft Skills:

Needs to be able to communicate clearly and often

Need a leader, not a follower

-

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 Jupiter 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, its 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

Email id: [email protected]

Keywords: continuous integration continuous deployment information technology green card Idaho
AWS SageMaker Engineer IV
[email protected]
[email protected]
View all
Fri Sep 06 22:05:00 UTC 2024

To remove this job post send "job_kill 1728502" as subject from [email protected] to [email protected]. Do not write anything extra in the subject line as this is a automatic system which will not work otherwise.


Your reply to [email protected] -
To       

Subject   
Message -

Your email id:

Captcha Image:
Captcha Code:


Pages not loading, taking too much time to load, server timeout or unavailable, or any other issues please contact admin at [email protected]
Time Taken: 2

Location: ,