AI Solution Engineer

JOB DESCRIPTION

Engage in the formulation, design and construction of a number of complex real-world industrial AI systems
Plan, manage and execute at a fast-pace while maintaining high quality standards
Manage relationships with customers and lead both their AI system development, but also their education in AI system development
Manage diverse teams of AI engineers, software developers, data scientist and domain experts to effectively complete projects on tight deadlines
Work with customers to clear define problem statements and architect scalable solutions
Generalize customer specific solutions making those tools and capabilities available to all customers
Design and develop AI models to meet project requirements
Design and develop multi-microservice applications 
Educate customers on the development of AI systems 
Leverage available human expertise in the development of AI systems

JOB REQUIREMENT

Must-have:
High proficiency in data management, data analysis and predictive modeling in Python
Machine Learning / Deep Learning work experience
Experience integrating ML models into production systems
Great-to-have:
Education or experience in Physics or Mechanical Engineering
Nice-to-have:
ML Ops (AWS, k8s, helm)
Education: Master’s degree or higher in Computer Science, Computer Engineering, Physics or other science/engineering disciplines

WHAT'S ON OFFER

Awesome colleagues
We will match exceptional talent with exceptional compensation (salary and equity) 
You can shape the company culture where the best ideas always win out–regardless of the role, title or seniority; and where engineers are encouraged to help drive strategic decisions
Unlimited vacation policy
Comprehensive health insurance

CONTACT

PEGASI – IT Recruitment Consultancy | Email: recruit@pegasi.com.vn | Tel: +84 28 3622 8666
We are PEGASI – IT Recruitment Consultancy in Vietnam. If you are looking for new opportunity for your career path, kindly visit our website www.pegasi.com.vn for your reference. Thank you!

Job Summary

Company Type:

Product, AI Application Platform

Technical Skills:

Machine Learning, AI

Location:

Ho Chi Minh - Viet Nam

Working Policy:

Job ID:

J01023

Status:

Close

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