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OS Machine Learning Metrics

Lead Participant: ORDNANCE SURVEY LTD

Abstract

Ordnance Survey's research and development team routinely uses machine learning to extract new information from existing data sources. As machine learning is a relatively new field, there is a need to provide high-quality metrics to help understand the data quality of machine learning outputs.

This project will create a new range of tools and processes to describe and quantify the quality of Ordnance Survey's machine learning outputs. These tools and processes will use different testing methodologies as well as comparative assessments of networks to create benchmarks for accuracy. The project will establish a regulated quality control metric for Ordnance Survey's machine learning models to ensure its processes stand up to the growing accuracy requirements demanded by its widespread customer base.

Lead Participant

Project Cost

Grant Offer

ORDNANCE SURVEY LTD £52,763 £ 26,382
 

Participant

THE SCIENCE AND TECHNOLOGY FACILITIES COUNCIL £99,972
NPL MANAGEMENT LIMITED £85,458

Publications

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