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Gen AI ML Engineer — Lead End-to-End NLP/GenAI Pipelines

Financial Ombudsman Service

City Of London

Hybrid

GBP 60,000 - 75,000

Full time

21 days ago

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Job summary

A renowned financial services organization based in the UK is seeking a Machine Learning Engineer to lead the development and deployment of machine learning solutions. The role requires strong skills in Python and machine learning techniques, as well as the ability to work in a collaborative environment. Candidates should have a proven track record in delivering ML projects and a comprehensive understanding of cloud technologies. The position offers a competitive salary and a flexible hybrid working model.

Benefits

25 days holiday entitlement
Generous pension
Private medical insurance
Nationwide gym membership discounts

Qualifications

  • Proven experience leading machine learning projects into production.
  • Solid programming experience in Python and knowledge of algorithms.
  • Experience with cloud platforms and serverless pipelines.

Responsibilities

  • Design and build Gen AI application stacks.
  • Scale and maintain ML pipelines and workflows.
  • Drive ML Ops excellence.

Skills

Python
Machine Learning
NLP
AI
Collaboration

Education

Bachelor's degree in Computer Science or related field

Tools

Azure
AWS
GCP
SQL
NoSQL
Job description
A renowned financial services organization based in the UK is seeking a Machine Learning Engineer to lead the development and deployment of machine learning solutions. The role requires strong skills in Python and machine learning techniques, as well as the ability to work in a collaborative environment. Candidates should have a proven track record in delivering ML projects and a comprehensive understanding of cloud technologies. The position offers a competitive salary and a flexible hybrid working model.
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