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Machine Learning Engineer (Data EngineeringBackground)

La Fosse
Bristol
10 months ago
Applications closed

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Senior Data Scientist

Senior Data Scientist

Senior Data Scientist & ML Engineer — UK, Onsite

Senior Data Scientist & ML Engineer — UK, Onsite

Head of Data Science Technology (Product, Engineering, Design) · London ·

Lead Engineer/Data Engineer

Machine Learning Engineer (Data EngineeringBackground)Paying up to £80,000 + 10% bonusRemote first policy –Office in Central London if preferred2 stage interview processOneof La Fosse’s best clients who are an industry leader within theentertainment/ticketing space are currently hiring for a talentedMachine Learning Engineer to join the team.Even though this companyare a global brand, you will be joining a small team of 5/6(amongst a wider data team) and will have a lot of responsibilityand play a leading role in rolling out their project plan, in whichthey have just launched this year across the UK and USA.This is apivotal time for the business, and you will help transform the datascience/machine learning capabilities as they build a newcloud-based Data Platform. In this role you will predominantly beworking as a machine leaning engineer but also helping maintain theexisting data engineering pipelines so a background in dataengineering is required.Preferred Technical Experience:Strong DataEngineering foundations, with experience with Python, SQL,Snowflake, Data Warehousing, PySpark.Good understanding oftraditional machine learning and a passion to develop in thisarea.Strong cloud exposure using AWS.Experience with MLOps would bebeneficial.Interview Process:Introduction call with hiring manager+ low level technical questions (1hr)Final Interview with hiringmanager & Head of Data + technical questionsIf you’reinterested in finding more about this role and feel you fit some ofthe requirements, apply through the AD to find out more!Ben Carter– Learning Engineer (Data EngineeringBackground)

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