Postdoctoral Researcher, Konermann & Goodarzi Labs
Company: Arc Institute
Location: Palo Alto
Posted on: April 1, 2026
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Job Description:
About Arc Institute Arc Institute is an independent nonprofit
research organization at the interface of artificial intelligence
and biology, working to accelerate scientific progress and
understand the root causes of complex diseases. Founded in 2021 and
based in Palo Alto, Arc partners with Stanford University, UC
Berkeley, and UC San Francisco. Unlike academia, our scientists
have long-term funding and industry-like resources. Unlike
industry, they're free to pursue high-risk, long-term research
without commercial pressures. Arc's Technology Centers and Core
Investigator labs work side by side, integrating experimental and
computational biology under one roof to tackle problems neither
could solve alone. Our two Institute Initiatives reflect this model
in action: Virtual Cell Initiative : Building a full-stack virtual
cell model to identify disease mechanisms and nominate drug
targets, accelerating the path from biological insight to clinical
trials. Alzheimer's Disease Initiative : Mapping the genes,
pathways, and environmental factors behind Alzheimer's disease to
develop drug candidates that address root causes. More than 300
Arconauts work together at our Palo Alto headquarters, backed by
substantial long-term philanthropic funding. About the Position We
are seeking an exceptional computational postdoctoral fellow to
join the Konermann and Goodarzi laboratories at the Arc Institute.
This is a unique opportunity to work at the intersection of AI/ML,
functional genomics, precision medicine, and single cell multiomics
to develop and apply cutting-edge machine learning tools for
understanding causal drivers of complex biological systems. In this
joint position, you will contribute to developing broadly
applicable computational frameworks for integrating multi-omics
data, building predictive models of cellular behavior, and scaling
phenotypic discovery in disease-relevant contexts, such as
Alzheimer’s disease. Your work will leverage Arc’s state-of-the-art
experimental platforms and collaborative environment. About You You
are passionate about using machine learning and computational
approaches to tackle challenging problems in human biology and
disease. You are excited to develop novel computational methods and
frameworks that enable biological discovery at scale. You are
creative and eager to move with the fast-paced nature of modern
AI/ML, and to explore new approaches beyond traditional methods.
You enjoy working across disciplinary boundaries and integrating
diverse data types. You work efficiently and write clean,
well-documented code. You value reproducibility and good software
engineering practices. You thrive in a fast-paced, collaborative
environment where you can drive multiple projects forward in
parallel. In This Position, You Will Develop and apply AI/ML
frameworks for modeling multi-omics datasets, with emphasis on
scalable approaches for phenotypic screening and disease modeling.
Design and implement causal machine learning methods for predicting
cellular states, drug responses, and disease phenotypes from
genomic data. Collaborate closely with experimental teams to design
studies, optimize protocols, and integrate computational and
experimental workflows. Present research findings at internal
meetings, seminars, and external conferences. Mentor junior
researchers, graduate students, and contribute to Arc’s
collaborative scientific culture. Publish high-impact research in
leading scientific journals. Requirements PhD in Machine Learning,
Computational Biology, Bioinformatics, Computer Science,
Statistics, Bioengineering, or a related quantitative field. Strong
publication record demonstrating expertise in computational
analysis of genomics data, particularly single-cell technologies.
Extensive experience with Python, machine learning frameworks, and
distributed training, including active and well-maintained projects
on public repositories. Experience with machine learning and
statistical modeling, particularly applied to biological data.
Strong understanding of molecular biology, with ability to design
analyses that directly address biological questions. Proven ability
to work independently and collaboratively in interdisciplinary
teams. Excellent written and oral communication skills, with
demonstrated ability to present complex computational work to
diverse audiences. Track record of completing projects and
publishing results in peer-reviewed journals. Preferred
Qualifications Experience with pooled screening technologies
(CRISPR screens, perturbation screens, drug screens) and associated
computational modeling. Experience with multi-omics data
integration and analysis. Experience with cloud computing and
scalable data analysis workflows. Contributions to open-source
software or publicly available computational tools. Experience with
spatial transcriptomics or other emerging single-cell technologies.
The minimum base salary for this position is $80,000. Base salary
for this role is determined by how many months of relevant
postdoctoral experience a successful candidate has. Base salary for
this role is not negotiable.
Keywords: Arc Institute, Petaluma , Postdoctoral Researcher, Konermann & Goodarzi Labs, Science, Research & Development , Palo Alto, California