Computational Scientist 3 - Cell & Tissue Genomics

RocheSouth San Francisco, CA
$124,300 - $265,900

About The Position

We advance science so that we all have more time with the people we love. The Department of Cell and Tissue Genomics (CTG) is focused on developing and applying state of the art genomics technologies (e.g. single cell omics, high-content imaging, perturbations, etc) to solve key challenges in disease biology, target discovery, and translational medicine. We are seeking a highly talented, creative, and motivated computational biologist to analyze cutting-edge high-dimensional profiling and screening data, with a particular focus on high-content imaging, to decipher complex cellular circuits. The candidate will collaborate closely with members of the department to extract biological insights from diverse high dimensional data sets and support the development of new technologies, leveraging existing computational workflows and developing novel ones. The Opportunity: As an integral member of our dynamic team, you will be: Analyzing high-content imaging data from novel technologies including optical pooled screens, spatial transcriptomics, and high-content perturbation screens, with the goal of extracting mechanistic insights into gene function and cellular phenotypes. Developing methods to analyze and interpret new types of perturbation data. Applying statistics and machine learning to investigate data and extract biological insights. Collaborating across diverse, cross-functional teams including experimentalists in CTG and the therapeutic areas and colleagues in the Computational Sciences Center of Excellence and the AI Biology & Translation departments Who You Are: PhD in Computational Biology, Bioinformatics, Computer Science, or a related quantitative field. Alternatively, a PhD in molecular biology, immunology, bioengineering, etc. combined with a very strong record of data analysis, supported by publication in this area. Postdoctoral training is a plus. Strong publication record of biological discovery and/or methods development. Deep expertise in image analysis, including image processing, feature extraction, and morphological profiling. Familiarity with modern deep learning approaches (e.g., embeddings, foundation models) is a plus. Comfortable with the statistical principles behind current best practices in high-throughput data analysis. Fluent in Python and/or R. Excellent communication and presentation skills. Able to work successfully in cross-functional teams to collaboratively solve complex problems. Passionate about applying your analytical skills to understand health and disease.

Requirements

  • PhD in Computational Biology, Bioinformatics, Computer Science, or a related quantitative field. Alternatively, a PhD in molecular biology, immunology, bioengineering, etc. combined with a very strong record of data analysis, supported by publication in this area.
  • Postdoctoral training is a plus.
  • Strong publication record of biological discovery and/or methods development.
  • Deep expertise in image analysis, including image processing, feature extraction, and morphological profiling.
  • Familiarity with modern deep learning approaches (e.g., embeddings, foundation models) is a plus.
  • Comfortable with the statistical principles behind current best practices in high-throughput data analysis.
  • Fluent in Python and/or R.
  • Excellent communication and presentation skills.
  • Able to work successfully in cross-functional teams to collaboratively solve complex problems.
  • Passionate about applying your analytical skills to understand health and disease.

Nice To Haves

  • Experience with in situ data (FISH or ISS barcode calling).
  • Familiarity with image analysis frameworks or libraries (e.g., CellProfiler).
  • Experience with genomic data including single cell RNA-seq and perturbation screens is a plus.
  • Experience with applying machine learning to high throughput datasets is a plus.

Responsibilities

  • Analyzing high-content imaging data from novel technologies including optical pooled screens, spatial transcriptomics, and high-content perturbation screens, with the goal of extracting mechanistic insights into gene function and cellular phenotypes.
  • Developing methods to analyze and interpret new types of perturbation data.
  • Applying statistics and machine learning to investigate data and extract biological insights.
  • Collaborating across diverse, cross-functional teams including experimentalists in CTG and the therapeutic areas and colleagues in the Computational Sciences Center of Excellence and the AI Biology & Translation departments

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What This Job Offers

Job Type

Full-time

Career Level

Mid Level

Education Level

Ph.D. or professional degree

Number of Employees

5,001-10,000 employees

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