Machine Learning/Python Developer

Michael Page
Newcastle upon Tyne
3 weeks ago
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About Our Client

The employer is a global organisation within the software space, committed to delivering high-quality solutions through advanced technology. They focus on fostering a collaborative environment and prioritise innovation in their field

Job Description

Key responsibilities:

  • Develop and implement machine learning models to support project requirements.
  • Optimise Python code to ensure performance and scalability.
  • Collaborate with cross-functional teams to design and deliver technical solutions.
  • Analyse and interpret data to provide actionable insights.
  • Maintain and enhance existing machine learning systems and frameworks.
  • Document code and processes to ensure clarity and reproducibility.
  • Stay updated with the latest advancements in machine learning and Python development.
  • Assist in troubleshooting and resolving technical issues as they arise.
The Successful Applicant

A successful Python/Machine Learning Developer should have:

  • Strong proficiency in Python programming and PyTorch
  • Strong machine learning experience
  • Experience in Linux/Containers/Docker
  • Capability to read, understand and implement from papers, i.e. Arxiv etc
  • Willingness to trial, implement and iterate rapidly on development solutions prior to refinement into production workflow.
  • Prior experience specifically in Computer Vision is a bonus
  • Familiarity with software development lifecycle and best practices.
  • Ability to work effectively in a team environment and communicate technical concepts clearly.
  • Problem-solving skills and a proactive approach to challenges.

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