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Timetable Data Scientist

Network Rail
Milton Keynes
5 months ago
Applications closed

Brief Description

Who are we looking for?

We are looking for an enthusiastic, inquisitive, and analytical individual to provide & support analysis to inform decision makers. We are looking for skilled, adaptable and collaborative individual to utilise a variety of real life and modelled data to provide analytical insights as well as data processing tools to support the use of real data in modelling the railway. While this is a great opportunity for a successful candidate to gain knowledge of the UK Rail Industry, prior experience is not necessary to get the role. 

About the role (External)

What does the average day look like?

This is a novel opportunity within Network Rail to combine data analysis and data processing skills enhancing the understanding of railway performance. In this role you will work across the performance & simulation team, supporting modelling with input & output calibration, supporting timetable analysis by combining data to provide new and revealing insights. You will do this by using a combination of Python & SQL among other tools to integrate and interrogate a variety of different & new data sources.

The job is varied, at times working on individual projects, at other times working with railway & simulation experts from across the Timetable Performance & Simulation team Portfolios (Analysis, Simulation, Projects and Development) providing expert guidance to other workstreams.

You will push the boundaries and expand the narrative from punctuality and support innovation related to the Whole System Performance Model

Essential Criteria

·Degree and/or post graduate qualification in a relevant discipline, such as Computer Science, Mathematics, Statistics, or equivalent experience.

·Significant practical experience in descriptive / predictive modelling and visualisation methods and techniques.

·Strong skills and practical experience in Machine Learning on the Cloud (i.e. Azure, GCP or Amazon) using Numpy, Scikit Learn, Tensorflow, Keras, PyTorch or other data mining frameworks.

·Excellent programming skills using Python, R and other programming languages.

·Experience of delegating specific tasks and supervising others in the completion of these tasks.

·Experience in coaching and mentoring of technical skills to build high performing teams.

·Proven ability to engage with customers; to influence and build collaborative relationships with stakeholders.

·Proven ability to innovate and create solutions to complex modelling issues.

·Experience in delivering presentations and adjusting presentation style to differing audiences.

·Proven ability in creating technical notes which are clear and concise and understood by others.

·Ability to communicate technical and management aspects of work to a senior audience.

·Knowledge of project risk issues and application of these to day-to-day tasks.

We would also like, but not essential.

·Understanding of the Rail Industry planning cycles and processes

·Experience in using the following applications: Tableau, Power BI, Railsys and Trenissimo.

National AI Awards 2025

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