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Machine Learning Engineer - Outside £550p/d - eDV Cleared

Babcock
Cheltenham
6 months ago
Applications closed

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Role: Machine Learning Engineer
Rate: £550/day - Outside IR35
Location: Cheltenham
Duration: Initial 6-12 months
Clearance Required: eDV

A leading client within the UK defence sector is currently seeking several experienced Machine Learning Engineers to join their advanced AI and data science division. This role offers the chance to contribute directly to the UK's national defence capability while working at the cutting edge of applied AI.

The successful candidate will be joining a multidisciplinary team focused on developing and deploying machine learning models across a variety of complex defence use cases-ranging from autonomous systems and surveillance technologies to predictive analytics and decision-support platforms.

Key Responsibilities:

  • Designing and implementing robust ML models suited to real-time or mission-critical defence environments
  • Processing and analysing complex datasets, including geospatial, signals, or operational intelligence data
  • Collaborating closely with software engineers, data scientists, and defence stakeholders to ensure scalable and secure system integration
  • Conducting rigorous testing, validation, and documentation of all ML models in line with regulatory and operational standards
  • Staying current with emerging AI/ML techniques and assessing their applicability to defence applications

Essential Skills & Experience:

  • Strong background in machine learning, data science, or AI, with a degree in a related field
  • Solid programming skills in Python and proficiency with libraries such as TensorFlow and PyTorch
  • Demonstrated ability to build and optimise ML pipelines from prototype to deployment
  • Understanding of algorithm performance in constrained or sensitive environments

Desirable:

  • Prior experience within the defence, aerospace, or national security sectors
  • Familiarity with computer vision, signal processing, or natural language processing
  • Exposure to MLOps, edge computing, or synthetic data generation
  • Knowledge of government or MOD procurement and technical frameworks is an advantage

If you are interested in the above position, please contact me, James Chapman on or email me at (even if you don't have a CV yet, I'd like to speak with you!


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