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Machine learning engineer

Swansea (NSW)
SKL Technology
Posted: 5 June
Offer description

This range is provided by SKL Technology. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.


Base pay range

A$95.00/hr - A$105.00/hr

Australian Citizenship is required for this role.

Long-term engagement with initial 12-month contract & large project pipeline.

Our client is a large organisation focused on Health & Insurance. They are looking to advance the development of their Data Science practice and are currently hiring their first Machine Learning Engineer to work alongside experienced Data Scientists.


About the role

* This position will be involved in the development, deployment, testing and support of machine learning systems.
* Develop and deploy ML solutions using Posit solutions.


About you

* Must be an Australian citizen.
* 2+ years of experience as a Machine Learning Engineer.
* Good experience with Python/R, CI/CD tools and cloud environments (GIT, Jenkins, AWS).
* Experience building API & batch job infrastructure.


Guide on daily rate

$700 - $800/day incl super

For further information or to apply for this role, please contact Chris Gray on or 0482 888 822.


Seniority level

Mid-Senior level


Employment type

Contract


Job function

Information Technology


Industries

Health and Human Services and Insurance

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