Machine Learning Engineer / Remote/ $High

Eka Finance
London
1 year ago
Applications closed

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Responsibilities

:

- Building, deploying, maintaining and monitoring the ML models at the core of our product

- Exploring and analysing existing and new datasets to create highly predictive features and insights

- Working with our Data team to productionise ML models and prioritise new datasets

- Building ML libraries and frameworks for robust testing and fast deployment of ML models

Required skills:

- Deep understanding of ML models

- Experience with building ML models formercial products

- Strong statistical skills

- Experience working withplex datasets

- Experience productionising and monitoring ML models

- Strong Python programming skills, particularly on the data science stack

- Strong SQL skills

- Experience building modular, extensible and reusable ML frameworks 

- Strongmunication and documentation skills

- Team player with collaborative mindset

- Technical degree in engineering,puter science, or equivalent (ML education is a plus)

The role can be fully remote so open to people from all locations.

Apply:-

Job ID TK

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