Data Science Data Science Data Modeler (Remote)

Yoh, A Day & Zimmermann Company
Widnes
6 days ago
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Job Title: Senior Data Scientist Location : Widnes (originally on-site then move to a hybrid arrangement) Yoh have partnered with a rapidly scaling business, they are pioneering and leading a data-driven technologies business approach using sensor & signal detection with most of their work coming from cliental within the Water and Oil & Gas industry. Implement data and machine learning based methods for training and validating results. Apply signal processing techniques in accordance with improving algorithm performance Research old and new techniques for for signal processing and machine learning algorithms to identify training and deployment techniques. This position would suit someone who has experience working with large data sets with a mathematical and analytical mindset, they are looking for senior engineers to join the team working with AWS SageMaker for AI and ML as well as research and cleansing of data sets.

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