
Machine Learning Engineer
Amazon Web Services (AWS)
Posted
last week
Singapore, Singapore
Onsite
SGD 8K
Mid Level
Full Time

Sema Summary
Join AWS's Generative AI Innovation Center to leverage advanced AI technologies. Work on large-scale machine learning projects involving customization and optimization of models.
About Company
Amazon Web Services (AWS) is a pioneering cloud platform, offering a wide range of services to businesses globally since 2006, facilitating efficiency and scalability.
Core Requirements
- 3+ years of software development experience
- Bachelor's degree in computer science or equivalent
- Experience with at least one programming language
- Hands-on experience with deep learning methods
- Familiarity with generative AI technology
Responsibilities
- Design and implement distributed training pipelines for LLMs.
- Adapt LLMs for various languages and domains.
- Optimize AI models for AWS Inferentia and Trainium.
- Collaborate with customers for tailored AI solutions.
- Work with foundational model providers to refine models.
- Ensure high-performance deployment of LLMs.
- Drive innovation in AI application development.
Benifits
- Work/Life Balance
- Mentorship
- Career Growth
- Inclusive Culture
Must Have skills
Job Keywords
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