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    <title>Applied Scientist - Machine Learning - Spencer Rose Ltd RSS Feed</title>
    <link>https://jobs.co.uk/job/applied-scientist-machine-learning-spencer-rose-ltd--55dce73a-f014-4686-8a36-0b2a107a51d5</link>
    <description>RSS feed for Applied Scientist - Machine Learning at Spencer Rose Ltd.</description>
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    <lastBuildDate>Fri, 17 Jul 2026 15:40:53 GMT</lastBuildDate>
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      <title>Applied Scientist - Machine Learning - Spencer Rose Ltd</title>
      <link>https://jobs.co.uk/job/applied-scientist-machine-learning-spencer-rose-ltd--55dce73a-f014-4686-8a36-0b2a107a51d5</link>
      <guid>https://jobs.co.uk/job/applied-scientist-machine-learning-spencer-rose-ltd--55dce73a-f014-4686-8a36-0b2a107a51d5</guid>
      <pubDate>Fri, 17 Jul 2026 11:51:56 GMT</pubDate>
      <description>Location: London | Salary: 80000.00-80000.00 Annual | Type: Permanent | Applied Machine Learning Scientist  London (Hybrid - 2 days per week) £80,000 - £110,000 + Benefits An innovative technology company is building next-generation AI solutions that optimise complex physical systems. Backed by significant recent investment, they''re growing their research team to develop machine learning models that solve real-world engineering challenges at scale. This is an opportunity for an Applied Machine Learning Scientist to work on cutting-edge research where deep learning meets real-world infrastructure. You''ll develop advanced machine learning models using large-scale sensor data, combining AI with physical modelling to improve the performance and efficiency of complex industrial systems. This role is ideal for someone who enjoys solving difficult research problems whilst seeing their work deployed into production. The Role Working as part of a multidisciplinary research team, you''ll be responsible for designing, developing and validating machine learning models for complex physical environments. You''ll work across the full life cycle, from problem formulation and experimentation through to model deployment alongside software engineering teams. You''ll co...</description>
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