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Blank Bio

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www.blank.bio

RNA intelligence for precision oncology. Blank Bio builds AI foundation models that help pharma teams identify the right patients for clinical trials and predict disease progression.

Open roles
4

Company signals

Score: 73
GitHub org Yes SEC Form D filed 203 days ago Wikipedia No HN mentions (90d) 0

Job facts

Location
San Francisco, California, United States of America
Type
Full-time
Salary
$150K – $250K

Last verified live 1 day, 12 hours ago · checked directly on the company's Y Combinator Work at a Startup

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Machine Learning Research Scientist

at Blank Bio


About Blank Bio

Blank Bio is an applied AI research lab focused on increasing the success rates of clinical trials. We do this by training RNA foundation models that learn the patterns that shape disease progression and patient response to treatment. We aim to help pharma make more informed decisions in clinical trials by capturing the biology that makes each patient’s tumour unique.

We’re a technical team of AI scientists and engineers from companies including Recursion, Deep Genomics, DeepMind, and Amazon, and institutions including Memorial Sloan Kettering Cancer Centre, Stanford, and the Vector Institute.

The Role

As an ML research scientist, you’ll design novel ML methods and develop benchmarks that reflect clinically relevant biology. As an early-stage startup, we move fast, work across disciplines, and embrace ambiguity. We’re looking for people who thrive in dynamic environments, are eager to take ownership, and want to help define both the science and the culture of the company.

Responsibilities

  • Design and prototype new ML methods (representation learning, generative modeling, contrastive pretraining) for RNA biology.
  • Develop benchmarks and evaluation frameworks for tasks spanning diagnostics, patient stratification, biomarker discovery, and more
  • Analyze large-scale sequencing datasets (bulk RNA-seq, single-cell, long-read) to inform model development and evaluation.

Qualifications

Must-haves

  • PhD (or equivalent experience) in Machine Learning, Computational Biology, or related fields.
  • Demonstrated track record in ML research (publications, impactful projects, or deployed systems).
  • Expertise in representation learning, and/or large-scale sequence modeling.
  • Ability to independently design and execute research projects.

Nice-to-haves

  • Familiarity with transcriptomics, RNA biology, or other -omics data.
  • Experience developing benchmarks for biological or clinical ML tasks.
  • Prior collaboration with clinical researchers, diagnostic developers, or biomarker discovery teams.
  • Previous work in an early-stage, fast-paced environment.

Compensation & Benefits

  • Competitive salary and meaningful early-stage equity.
  • Comprehensive health, dental, and vision coverage.
  • Generous vacation and parental leave policies