2026 Summer Intern - AI for Drug Discovery
Department Summary
We seek a highly motivated research intern to join the Small Molecule Artificial Intelligence for Drug Discovery Team at Prescient Design within Genentech Research and Early Development (gRED). As a successful candidate, you will develop and apply novel machine learning methods, specifically protein-ligand binding affinity models, to small-molecule drug discovery tasks, including molecular design. Our team fosters a collaborative approach that stimulates innovative thinking and the potential for creative breakthroughs at the forefront of ML research.
This internship position is located on-site in South San Francisco.
The Opportunity
You will evaluate the impact of recent advances of predictive models for molecular potency/affinity prediction
Application of predictive models that place a variety of physical priors on the problem of potency prediction: GNNs, transformers, geometric neural networks, etc.
Collaborate closely on machine learning projects for drug discovery with machine learning scientists, research engineers, computational biologists, chemists, and biologists.
Develop and execute a research agenda focused on advancing potency modeling and better understanding the limitations different inductive biases place on the problem.
Report and present research findings and developments including status and results clearly, verbally and in writing (publishing in top-tier machine learning or chemistry venues).
Program Highlights
Intensive 12-weeks, full-time (40 hours per week) paid internship.
Program start dates are in May/June
A stipend, based on location, will be provided to help alleviate costs associated with the internship.
Ownership of challenging and impactful business-critical projects.
Work with some of the most talented people in the biotechnology industry.
Who You Are
Required Education
Must be pursuing a PhD (enrolled student).
Required Majors
Physical or life sciences (Chemistry, Biology, Physics) or quantitative field (Computer Science, Statistics, Mathematics).
Required Skills
Strong research interest in geometric neural networks, graph neural networks, representation learning, and chemical properties prediction.
Fluent in Python and experience with modern Python frameworks for deep learning (e.g. PyTorch or TensorFlow).
Interest in binding affinity prediction and pose generation for molecular design.
Preferred Knowledge, Skills, and Qualifications
Excellent communication, collaboration, and interpersonal skills.
Complements our culture and the standards that guide our daily behavior & decisions: Integrity, Courage, and Passion.
Demonstrated computational research experience, as evidenced by publications, public code repositories, or equivalent.
Familiarity with pose generation methods, both classical and data-driven (e.g., docking, molecular dynamics, AlphaFold3, etc.)
Experience with one or more cheminformatics or drug discovery toolkits (e.g. OpenEye, Schrodinger, RDKit, OpenBabel).
Experience working with large chemical and biological datasets, including sequence, text, graph, and structure-based data.
Relocation benefits are not available for this job posting.
The expected salary range for this position based on the primary location of California is $50.00 per hour. Actual pay will be determined based on experience, qualifications, geographic location, and other job-related factors permitted by law. This position also qualifies for paid holiday time off benefits.
Genentech is an equal opportunity employer. It is our policy and practice to employ, promote, and otherwise treat any and all employees and applicants on the basis of merit, qualifications, and competence. The company's policy prohibits unlawful discrimination, including but not limited to, discrimination on the basis of Protected Veteran status, individuals with disabilities status, and consistent with all federal, state, or local laws.
If you have a disability and need an accommodation in relation to the online application process, please contact us by completing this form Accommodations for Applicants.