Senior Data Scientist

Yoh, A Day & Zimmermann Company
Widnes
1 month ago
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Overview

Yoh have partnered with a growing business who we have aided in creating their Data & Machine Learning team internally. As a business they're 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.

Job title and location

Job Title: Senior Data Scientist

Location: Widnes (originally 4 days a week onsite - potential flexibility as time served)

Sponsorship: They are unable to provide sponsorship at this time.

Responsibilities

  • 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.

They have at least 2 open vacancies and are open to all experiences and abilities from senior commercial data scientists to PhD graduates looking for their first position in industry.

Qualifications / Experience

  • Numeric-focused with experience working with large data sets (e.g., isolating certain "noise").
  • Backgrounds in Physics, Mathematics or Data Science, in commercial or academic settings.

Seniority

Mid-Senior level

Employment type

Full-time

Industries

IT System Data Services


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