Lead Machine Learning Engineer

TEC Partners - Technical Recruitment Specialists
Farnham
5 months ago
Applications closed

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Engineering Lead

We are looking for Lead or Senior Machine Learning Engineer who wants to take their career to the next level as well as leading a team of Machine Learning Engineers. If you want to make your mark and have creative input, then look no further.

Experience, qualification, and soft skills, have you got everything required to succeed in this opportunity Find out below.

What you will be doing:

Improve and maintain ML Models for real-world, large scale problems
Build and maintain data pipelines for model training
Maintain deployed models for performance, proposing ways to optimise to meet business objectives
Guide and train ML team, continue to learn and build relationships across technical team
Solve complex technical problems and make critical decisions on prioritising optimisation
Develop and optimize high-performance, scalable algorithms for advanced data processing and analytical workflowsWhat you will need:

Proven experience as a Machine Learning Engineer with expertise in Python
PhD or MSc in Computer Science, Machine Learning, Robotics, or a related field
Knowledge of C#, SQLs and Tensorflow
Experience with Azure or similar
5+ years industry ML experienceWhat we offer?

Hybrid/Flexible working
Private healthcare
Annual Bonus (Based on company performance)
25 Days holiday entitlement
Subsidised café onsite

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