GlobalFoundries : Data Engineer - Machine Learning/Data Science

GlobalFoundries : Data Engineer - Machine Learning/Data Science

Job Title: Data Engineer – Machine Learning/Data Science

Company Name: GlobalFoundries

Location: Bangalore Urban, Karnataka, India

Job Type: Full-time

Work Type: On-site

Job Description:

Essential Responsibilities:

> Build tools to automate and improve development and release processes and deploy Machine Learning (ML) to large production environments.
> Utilize Versioning Repository tools, Continuous Integration Frameworks, Application Containerization, Automation Deployment, Code Quality, and Code Security Scanning tools.
> Design, build, and maintain efficient, reusable, and tested code in Python and other applicable languages and library tools.
> Design modern data pipeline architectures and build tooling to efficiently tackle Big Data projects in a multi-cloud environment.
> Able to handle multiple projects.
> Present project status to peers and the leadership team as needed, and collaborate across organizational boundaries.

Required Qualifications:

> B.S. in Computer Science, Software Engineering, or equivalent field with 2-4 years of industrial experience, or M.S. with 1-3 years’ experience.
> Experience with full-stack development.
> Understanding of REST APIs, and JSON data format.
> Experience with ML services in the AWS ecosystem.
> Experience with the deployment of big data ETL pipelines in the cloud, e.g. PySpark.
> Experience with SQL and NoSQL databases, Python, and Docker containers.
> Exposure to and/or understanding of ML tools/libraries such as TensorFlow/Keras, PyTorch, and Pandas.
> Understanding of advanced data analytics and machine learning.
> Prior experience architecting end-to-end pipelines for ML and Analytics using AWS services.
> Understanding of MLOps tools and flow.

Job link: https://globalfoundries.wd1.myworkdayjobs.com/External/job/IND—Karnataka—BANGALORE/Data-Engineer—Machine-Learning-Data-Science_JR-2301885

Sign In

Register

Reset Password

Please enter your username or email address, you will receive a link to create a new password via email.