Machine Learning Engineer

Harnham
London
11 months ago
Applications closed

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MACHINE LEARNING SCIENTIST - Simulations and Optimisation

£60,000 - £80,000

HYBRID - London


COMPANY:

We are working with an exciting AI startup who focus on using digital twin technology to help predict and capture future demand and maximise resources amongst transport networks


ROLE:

  • Focus on technical work around simulation and optimisation. Building real time pictures/data sets and issuing recommendations based on findings
  • Work on a simulator to reproduce what is happening on real time
  • Predict and capture future demand and maximise resources for clients
  • Building Network state models to provide an understanding of the network in real-time
  • Build a transit time model to look at historical data and uncovering real time system dynamics through live components
  • Predictive modelling to predict passenger flow
  • Mix of classical ML, simulation optimisation and deep learning


REQUIREMENTS:

  • Proven experience in optimisation and/or simulation
  • A strong background in classical ML
  • 3+ Years experience
  • An MSc or PhD in a strong STEM subject


PROCESS:

  1. Intro chat
  2. Take home task
  3. Task review
  4. Founders chat


If this role looks of interest, please reach out to Joseph Gregory

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