Machine Learning Engineer

NLP PEOPLE
Euston
2 months ago
Applications closed

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Machine Learning Engineer (Contract) – £550/£600 PD (Inside IR35)

An excellent opportunity has arisen with a global brand for a Contract Machine Learning Engineer. This role focuses on natural language processing and network analysis, leveraging open-source software in a highly collaborative environment. You’ll contribute to building, maintaining, and enhancing their data science capabilities within the organization.

Role and Responsibilities:

  1. Design, develop, and evaluate machine learning models, with a focus on natural language processing
  2. Translate business challenges into data science solutions and communicate complex findings to stakeholders
  3. Collaborate in a cross-functional team by sharing ideas, conducting code reviews, and enhancing internal data science tools
  4. Identify opportunities where machine learning can support data-driven decision making
  5. Foster a diverse and inclusive culture by working across departments and contributing to knowledge sharing

Essential Skills & Experience:

  1. Strong proficiency in Python and Graph Databases
  2. Experience with core data science libraries such as Scikit-Learn, Pandas, PyTorch/TensorFlow
  3. Solid understanding of machine learning and NLP techniques
  4. Familiarity with version control systems (Git/GitHub), Python package management, unit testing, and code reviews
  5. Hands-on experience with data exploration and visualization tools like Pandas, Matplotlib, Bokeh, Plotly, or Tableau
  6. Exposure to cloud platforms such as AWS
  7. Experience working collaboratively in multidisciplinary teams alongside machine learning and software engineers

Contract Terms:

• London/Hybrid
• Inside IR35
• 6 Months
• Rate: £550/£600 PD

Company:

IntecSelect

Qualifications:

Senior (5+ years of experience)

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