Machine Learning Engineer (Miami)

Stabile Search • San Francisco Bay Area
Relocation
This Job is No Longer Active This position is no longer accepting applications

Job Description

My client is one of the largest hedge funds in the world and one of the most sought-after financial systematic trading firms to join.


They are looking for a Machine Learning Engineer/Data Scientist with Deep Learning experience.


If you are looking to relocate to Miami, Florida (full-time) then this is the role for you.


Requirements


• 5+ years of data science/machine learning experience.

• Experience building Deep Learning libraries using PyTorch (or similar libraries).

• Willingness to relocate and work in Miami, Florida (5 days a week).


Compensation


• $200,000 - $450,000 Total Compensation depending on level of experience.

• Extensive Medical, Dental and Vision Insurance


What's the Job?


You will be using your extensive machine learning experience to build out Deep Learning libraries using PyTorch. This work will be used by members of their financial teams to conduct research to use for trading purposes.


Location


This role requires you to work out of their Miami, Florida, office five days a week. They do cover relocation expenses if you are looking to move.


Interview Process


To learn more, apply here today or contact me directly at: Matt@Stabilesearch.com.

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