Data Scientist - Inside IR35 - Hybrid

Halian Technology
Croydon
1 month ago
Applications closed

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Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist


Location: Hybrid (London, UK)
Contract Duration: Initial 612 months
Rate: Competitive

Why this role?

  • Real-World Impact: Build models that directly influence live fleet operations
  • Applied ML Focus: Time-series, geospatial data, optimisation problems
  • Complex Systems: High-volume, real-time operational data
  • Autonomy: End-to-end ownership from modelling to deployment

About the Role

We are recruiting on behalf of a mobility technology business building intelligent fleet orchestration systems.

This role suits an experienced Applied Machine Learning Engineer or Data Scientist comfortable working with messy real-world data, operational constraints, and production systems. Youll join a small, high-calibre team solving complex logistics and optimisation challenges with meaningful real-world impact.

Key Responsibilities

Develop predictive models using time-series and geospatial datasets

  • Design and iterate on demand forecasting models
  • Support fleet positioning and operational planning initiatives
  • Engineer features from large-scale operational datasets using Python and SQL
  • Design and evaluate experiments tied to business KPIs
  • Collaborate with engineering teams to deploy and improve models in production
  • Participate in technical discussions, code reviews, and agile deliver...

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