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    <title>Machine Learning Engineer - Hyper Recruitment Solutions LTD RSS Feed</title>
    <link>https://jobs.co.uk/job/machine-learning-engineer-hyper-recruitment-solutions-ltd--3497be0c-1bf1-435c-a8d1-6bd218dc04cf</link>
    <description>RSS feed for Machine Learning Engineer at Hyper Recruitment Solutions LTD.</description>
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    <lastBuildDate>Fri, 12 Jun 2026 00:41:29 GMT</lastBuildDate>
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      <title>Machine Learning Engineer - Hyper Recruitment Solutions LTD</title>
      <link>https://jobs.co.uk/job/machine-learning-engineer-hyper-recruitment-solutions-ltd--3497be0c-1bf1-435c-a8d1-6bd218dc04cf</link>
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      <pubDate>Fri, 22 May 2026 11:52:22 GMT</pubDate>
      <description>Location: Camden | Salary: 10000-500000 Annual | Type: Permanent | ROLE OVERVIEW:  We are currently looking for a Machine Learning Engineer to join a leading research organisation based in London. As Machine Learning Engineer, you will be responsible for advancing data-processing, model-building, and deployment capabilities for a pioneering research organisation.  KEY DUTIES AND RESPONSIBILITIES:  Your duties as the Machine Learning Engineer will be varied; however, the key duties and responsibilities are as follows:  1. Develop deep-learning pipelines for nuclear magnetic resonance (NMR) data and innovative machine learning approaches to elucidate and quantify interactions between small molecules and intrinsically disordered proteins.  2. Enhance the usability of built models by implementing automated, streamlined, and efficient software solutions in line with best practices, and build model-deployment and job-launching systems for internal and external use.  3. Collaborate closely with other computational and NMR team members, in addition to experimental biophysicists, assisting with experimental data handling and curation, and mentoring the interdisciplinary team in machine-learning and data analysis methods.  4. Stay current with breakthroughs...</description>
      <category>Permanent</category>
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