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Paid Internship
Work Mode
Time Spent
Required Degree
Duration

6Open Positions

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Intern for Computational Genomics in Large Clinical Cancer Cohorts for Precision Oncology (6 months)

Roche
Found 3 weeks ago
Location
Basel, Switzerland
Duration (Months)
6 Months
Time
Full-time
Work Mode
On-site
Salary
Not disclosed
Visa Help
Not disclosed
Last Verified
3 weeks ago

Education

  • Master

Skills & Qualifications

Technical Skills

  • R
  • git
  • genomic & transcriptomics datasets
  • cancer biology
  • cell identity mapping/lineage programs
  • patient enrichment / biomarker analyses
  • applied ML methods

Soft Skills

  • Research-driven mindset
  • Independent
  • analytical
  • collaborative
  • passion for translating data into patient impact

Job Description

At Roche Pharma Research and Early Development (pRED), we transform cutting-edge science into life-changing therapies. By decoding transcriptional, mutational, and clinical profiles at scale, our computational genomics and multi-omics teams drive precision oncology through patient stratification and biomarker discovery. We develop robust, reproducible workflows using internal, real-world, and public datasets, applying statistical modeling and machine learning. As an intern in our Computational Sciences department, you will work within an interdisciplinary team at the forefront of computational biology to optimize clinical trials and discover new resistance mechanisms. * Analyze and integrate multi-omic and clinical data from large clinico-genomic cohorts, including internal, in-licensed, and public datasets. * Perform comparative and enrichment-style analyses to identify clinically relevant molecular phenotypes and biomarkers, such as resistance-associated states and lineage programs. * Evaluate and benchmark findings against established approaches and gene signatures to ensure scientific accuracy. * Partner with a team of computational biologists, translational scientists, and biomarker scientists to drive creative, independent solutions. * Deliver high-quality analysis code and outputs in a reproducible, version-controlled format (git) with clear documentation. * Contribute to real-world therapeutic research with the potential for results to be featured in conference presentations or journal publications.

Requirements

  • Enrolled in a Master’s program (or recently graduated) in computational biology, computer science, statistics, or related field.
  • Strong coding skills including experience with R and version control (git)
  • Research-driven mindset - prior research project experience or publications are a plus.
  • Independent, analytical, and collaborative, with a passion for translating data into patient impact.
  • Proficient in English (written and verbal).
  • Prior experience in working with genomic & transcriptomics datasets is considered essential.
  • Prior experience in cancer biology; cell identity mapping/lineage programs; patient enrichment / biomarker analyses; and/or applied ML methods is considered a plus.

Related Field

  • AI & Machine Learning

Related Subfield

  • Applied Machine Learning

Languages

  • English

Nice to Haves

  • prior research project experience or publications
  • cancer biology
  • cell identity mapping/lineage programs
  • patient enrichment / biomarker analyses
  • applied ML methods
▶Apply Now

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