Junior ML Engineer (Fixed-Term Contract)

Evolution
London
10 months ago
Applications closed

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Junior ML Engineer (Fixed-Term Contract)

Location:London (Hybrid)
Contract Length:12 months (extension possible)
Salary: £30,000 - £40,000

About the Role:
Join our team as aJunior ML Engineerand gain hands-on experience in supporting the development and maintenance of cutting-edge machine learning models. This is a fantastic opportunity for a passionate and curious individual eager to grow in the field of ML.

Key Responsibilities:

  • Assist in running and maintaining machine learning pipelines.
  • Troubleshoot and resolve issues in ML operations.
  • Collaborate with senior engineers and data scientists to support project goals.
  • Contribute to scaling up ML initiatives across the organisation.
  • Learn and develop skills in machine learning engineering and best practices.

Requirements:

  • Some experience with Python, ML libraries (e.g., TensorFlow, PyTorch), and SQL.
  • Understanding of machine learning concepts and workflows.
  • Curiosity and eagerness to learn and develop new skills.
  • Strong problem-solving abilities and a proactive attitude.
  • Excellent team collaboration and communication skills.

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