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Project Analysis Coordinator (Data Analyst)

Novogene Europe
Cambridge
2 days ago
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Novogene is a leading global provider of genomic services and solutions. Leveraging the latest next-generation sequencing (NGS), bioinformatics expertise, and the largest sequencing capacity in the world, Novogene provides unsurpassed data quality and fast turnaround time to all our customers.


We are seeking a proactive and data-driven Project Analysis Coordinator to join our Cambridge Team.


This role is highly collaborative and requires drive, organisation, and foundational analysis skills. You will work closely with different business sectors and deliver project data analysis to support business growth. You are expected to support pipline optimisation to support the team achieve higher goals. The successful candidate must be willing to communite Cambridge office when required.


Job description:

  • Responsible for data analysis and result delivery of projects related to the research services in Novogene European laboratories and the clinical services, ensuring accurate and efficient execution and delivery of projects and after-sales analysis.
  • Responsible for the maintenance and continuous optimization and upgrading of data analysis pipelines and processes, ensuring stable and efficient workflows that meet diverse requirements.
  • Responsible for ensuring that project operations comply with relevant compliance requirements,continuously improving and cooperating with relevant quality assurance work.
  • Responsible for pipeline development and pipeline module R&D tasks.
  • Assist in addressing analysis-related issues encountered by customers during after-sales support to ensure customer satisfaction.
  • Possible webinar/conferences opportunities to promote service or share knowledge.


Skills required:

  • Experience in bioinformatics analysis or bioinformatics software development in human genome high-throughput sequencing techniques.
  • Familiar with the common bioinformatics analysis software, especially for variant calling, annotation, gene expression quantification and differential expression, among others.
  • Capable to establish NGS data analysis process.
  • Master Perl python R, C / C programming languages, proficient in the use of linux operating system, familiar with basic mathematical statistics knowledge and tools;
  • Project and time management skills.
  • Good communication and presentation skills.
  • Excellent English. Chinese knowledge is valued.
  • Experience in clinical/biopharma environment is preferred.


All employment decisions at Novogene are based on business requirements on its positions and skill sets on applicants. The business is committed to providing an inclusive and accessible recruiting experience for candidates with disabilities, or other physical or mental conditions.


Our privacy policy:

https://www.novogene.com/eu-en/privacy-policy/?_gl=1*1w6ksjs*_up*MQ..&gclid=Cj0KCQjwuMuRBhCJARIsAHXdnqOgH94fnKpCUZRAZBfyifMnPwPWW-i79qDY1FSjDWJGyhkLfYM7xU0aAgBiEALw_wcB

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