Genentech

Senior Scientist, Computational Biology (Multimodal Data Integration)

Genentech$130K — $242K *
Pharmaceuticals & Biotech
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • Ph.D. in Computational Biology, Systems Biology, Bioinformatics, or related field with 0-2 years of postdoctoral or relevant industry experience.
  • Proven experience in integrating multimodal data (NGS, single-cell, proteomics, clinical data) using advanced statistical models.
  • Deep understanding of machine learning methods, particularly focused on model interpretability.
  • Expertise in R and Python, with experience in building scalable workflows for data integration.
  • Strong foundation in cancer biology and oncogenic signaling with ability to communicate complex principles clearly.
  • Creative problem solver with a capacity to navigate ambiguity and develop innovative computational strategies.
  • Excellent data visualization and communication skills, adaptable to diverse audiences.

Responsibilities

  • Lead the vertical integration of diverse multimodal datasets to facilitate patient subtyping.
  • Develop methods linking pre-clinical model profiles with clinical segments for biomarker validation.
  • Design and deploy computational workflows leveraging advanced statistical and machine learning techniques.
  • Focus on creating interpretable AI models that explain biological mechanisms and resistance.
  • Collaborate closely with biologists to co-create technical roadmaps for experimental inquiries.
  • Provide strategic vision to transition from basic data processing to biomarker discovery.

Benefits

  • Onsite presence required at South San Francisco campus for at least 3 days per week.
  • Performance-based discretionary annual bonus potentially available.
  • Access to standard company benefits as detailed in the provided link.
Full Job Description

The sub-department of Oncology in Computational Biology and Medicine at Genentech is seeking a visionary and highly motivated Senior Scientist to join a newly forming team focused on Multimodal Data Integration. This role will focus on modeling high-dimensional data at the critical interface of disease biology and translational medicine.

The successful candidate will be responsible for the vertical integration of diverse, disease-specific large datasets. In this role, you will work alongside experts in disease biology and drug development to address the missing link: integration across pre-clinical and clinical modalities to associate biological mechanisms with clinical outcomes. You will develop computational frameworks and advanced statistical models in partnership with other computational biologists to creatively address complex scientific questions from Research and Translational Medicine and to deliver actionable biological insights and therapeutic strategies.

The Opportunity:

  • Vertical Integration: You will lead the integration of multimodal datasets - including high-throughput transcriptomics, epigenomics, drug-response, and clinical data (e.g., ctDNA, imaging) - to enable multi-state modeling and patient subtyping.

  • Bridge Pre-clinical & Clinical: You will develop methods to associate pre-clinical model profiles (cell lines, organoids) with clinical segments to validate biomarkers and therapeutic targets.

  • Method Development: You will design and deploy computational workflows and frameworks leveraging statistical, computational biology and advanced machine learning methods to enable insight generation from high-dimensional profiling techniques.

  • Interpretability & Insight: Your focus will be on "interpretable AI" - developing models that go beyond prediction to explain the underlying biology and mechanisms of action/resistance.

  • Collaborative Leadership: Sitting next to the biologists, you will co-create and lead technical roadmaps for complex experimental questions, acting as a creative bridge between experimental oncology and machine learning groups.

  • Strategic Impact: As a senior member of the team, you will provide the vision to transition from simple data processing to sophisticated biomarker development and mechanism-driven discovery.

Who You Are:

  • Educational Background: Ph.D. in Computational Biology, Systems Biology, Bioinformatics, or a related field with 0-2 years of significant postdoctoral or industry experience.

  • Multimodal Expertise: Proven track record in integrating data from multiple modalities (e.g., NGS, single-cell, proteomics, perturbational and clinical data) using advanced statistical modeling or systems biology.

  • Machine Learning & Modeling: Deep understanding of recent ML methods with a specific emphasis on model interpretability.

  • Technical Proficiency: Expert-level fluency in R and Python. Experience building scalable computational workflows for large-scale data integration is required. You are familiar with AI-supported and agentic coding tools.

  • Biological Depth: Strong foundation in cancer biology and oncogenic signaling. Proficiency in communicating intricate biological principles is essential for facilitating productive collaborations and strategic alignment with experimental research leadership.

  • Visionary & Creative: Ability to navigate ambiguity and partner with stakeholders to turn creative research ideas into impactful, innovative computational strategies.

  • Communicator: Excellent skills in data visualization and the ability to present complex multimodal findings to diverse audiences (from ML scientists to clinical physicians).

Onsite presence, on our South San Francisco campus, is expected for at least 3 days a week.

Relocation benefits are not available for this job posting.

The expected salary range for this position based on the primary location of California is $130,800 - $242,800.  Actual pay will be determined based on experience, qualifications, geographic location, and other job-related factors permitted by law.  A discretionary annual bonus may be available based on individual and Company performance.  This position also qualifies for the benefits detailed at the link provided below.

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About Genentech

Genentech is a biotechnology company that develops and manufactures drugs for the treatment of serious medical conditions. The company was founded in 1976 and is headquartered in South San Francisco, California. Genentech's products include treatments for cancer, multiple sclerosis, and other diseases. The company is a subsidiary of Roche, a Swiss pharmaceutical company. Genentech has been recognized for its innovative research and development, and has received numerous awards for its contributions to the biotechnology industry.
Learn more about Genentech
Size
14,000 employees
Industry
Founded
1976

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