Data Scientist / Software Engineer

Godstow
2 months ago
Applications closed

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Data Scientist / Software Engineer – Data-Driven Innovation in Infrastructure

A pioneering technology company is looking for a Data Scientist / Software Engineer to develop advanced analytical solutions for real-world engineering challenges. This role is perfect for someone passionate about using programming, data science, and cutting-edge algorithms to improve infrastructure monitoring and decision-making.

The Role:

This position involves designing and implementing data processing techniques for complex datasets, integrating various sources of remote sensing information. The successful candidate will play a key role in developing computational tools that extract meaningful insights, ultimately supporting critical projects in the transport and construction sectors.

Key Responsibilities:

Develop algorithms to process and analyze complex geospatial and sensor data.
Work with large-scale datasets to drive insights and support machine learning applications.
Improve internal software tools using Python and other relevant technologies.
Collaborate with a team of scientists and engineers to solve industry-specific problems.
Present research findings and contribute to ongoing technical discussions.

Ideal Candidate:

Strong programming skills, particularly in Python.
Background in data science, mathematics, engineering, or a related field.
Experience with signal, image processing & data science techniques.
Interest in applying computational techniques to real-world infrastructure challenges.
This is an exciting opportunity to join a team at the forefront of data-driven engineering solutions. If you thrive on solving complex problems and want to apply your expertise to meaningful, high-impact work, this could be the perfect next step in your career

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