Machine Learning Engineer

Gravitas Recruitment
London
1 week ago
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Role: ML Engineer

Duration: 3 Months Rolling

IR35: Outside

Day Rate: £400-500/Day

Location: 2 Days per week in central London (Fully remote option also available)


A Fintech startup is looking for a Machine Learning Engineer to work on extracting data from financial reports. Experience or awareness of OCR or vision models is beneficial. This role offers £400-£500 per day and is based in London for two days per week, with a fully remote option also considered.


Project Description

The role involves developing and optimising machine learning models to extract and process data from financial reports. Strong knowledge of SQL, Python, GCP, and BigQuery is required, along with experience in machine learning modelling and tuning.


Requirements

  • Proficiency in SQL and Python
  • Experience with Google Cloud Platform (GCP) and BigQuery
  • Strong understanding of machine learning modelling and tuning
  • Familiarity with extracting data from financial documents
  • Awareness of OCR or vision models
  • Ability to work independently and in a collaborative environment


Location

This role requires two days per week in London, though a fully remote option is also available.

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