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Machine Learning Engineer

Edinburgh   •  Negotiable  •  Permanent, Full time

An Edinburgh based Biotech focussing on the exciting field of cell & gene therapy have released an opportunity for a talented Machine Learning Engineer to join their multi-disciplinary team. The ideal candidate will possess a strong background in machine learning/algorithm development and have experience working with large, complex data sets.
Essential qualities of the Machine Learning Engineer would be:

*A MSc or PhD in computer science/artificial intelligence/machine learning or a related discipline
*Expertise in applying current Machine Learning methods
*Expertise in at least one of Python/Java/C/C++/JavaScript
*Experience contributing to projects involving cross-disciplinary and global teams
*Skilled in effective communication of complex concepts and data to non-experts
*An excellent track/publication record

Skills that are nice to have:

*Python expertise
*Knowledge of Django
*A background in Bioinformatics, Biostatistics or experience working with biological data is desirable
*Experience of big data technologies and data visualisation
*Expertise in statistical analysis of molecular data
*Experience of DNA sequence analysis and interpretation
*Expertise with Unix-like systems

To find out more about this unique opportunity, get in touch with Emilie on 0121 616 3477 or email a copy of your CV across to efrancis@pararecruit.com.

Key words: Machine Learning, Algorithms, Scotland, Edinburgh, Bioinformatics, Data Science, Biostatistics, Gene Therapy, Data Scientist, Big data, artificial intelligence, mathematical modelling, computer science, software developer

Paramount Recruitment Limited provides services as an agency and an employment business. We regularly have similar roles in this area. Please see our website for details or send your CV in to us to find out the latest opportunities.

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  • Agency: Paramount Recruitment
  • Posted: 14th November 2017
  • Expires: 15th December 2017
  • Reference: EFMLSCOT