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Postdoc Machine Learning Genomics Jobs (NOW HIRING)

In this role, you will work at the intersection of machine learning, genomics, and clinical science to advance early cancer detection. You will collaborate closely with scientists, engineers, and ...

In this role, you will work at the intersection of machine learning, genomics, and clinical science to advance early cancer detection. You will collaborate closely with scientists, engineers, and ...

In this role, you will work at the intersection of machine learning, genomics, and clinical science to advance early cancer detection. You will collaborate closely with scientists, engineers, and ...

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Postdoc Machine Learning Genomics information

What are the key skills and qualifications needed to thrive as a Postdoc in Machine Learning Genomics, and why are they important?

To thrive as a Postdoc in Machine Learning Genomics, you need a strong background in computational biology, machine learning, and statistics, typically supported by a PhD in a relevant field. Experience with programming languages like Python or R, familiarity with bioinformatics tools, and use of high-performance computing platforms are commonly required. Excellent problem-solving, collaboration, and scientific communication skills help individuals stand out in interdisciplinary research environments. These competencies are essential for advancing genomic research, generating impactful discoveries, and effectively sharing results with both scientific and clinical audiences.

How does a Postdoc in Machine Learning Genomics typically collaborate with interdisciplinary teams, and what skills support successful teamwork?

As a Postdoc in Machine Learning Genomics, you will frequently work alongside biologists, clinicians, and data scientists to design experiments, analyze large-scale genomic data, and interpret results. Successful collaboration involves clear communication of complex computational concepts to non-technical team members and an openness to feedback from diverse scientific perspectives. Skills such as adaptability, effective scientific writing, and the ability to translate research findings into actionable insights are highly valued. Team meetings, joint publications, and cross-disciplinary workshops are common ways this role interacts with others, fostering both scientific discovery and professional growth.

What does a Postdoc in Machine Learning Genomics do?

A Postdoc in Machine Learning Genomics conducts advanced research at the intersection of computational methods and genomic data. They develop and apply machine learning algorithms to analyze large-scale biological datasets, such as DNA sequences, gene expression profiles, or single-cell data. Their work often involves collaborating with biologists and clinicians to uncover genetic patterns, understand disease mechanisms, and advance personalized medicine. Additionally, they may contribute to publishing scientific papers, presenting findings at conferences, and mentoring junior researchers.
Postdoctoral Associate | Vertebrate Genome Laboratory

Postdoctoral Associate | Vertebrate Genome Laboratory

Rockefeller University

Manhattan, NY โ€ข On-site

Full-time

This job post hasย expired today.ย Applications are no longer accepted.


Job description

Organization Overview

The Vertebrate Genome Laboratory (VGL) at The Rockefeller University leads international efforts in vertebrate genome sequencing, assembly, annotation, and evolutionary analysis. As a core laboratory of the Vertebrate Genomes Project and a major hub of the Earth BioGenome Project, VGL is at the forefront of generating high-quality, telomere-to-telomere genome assemblies across vertebrate diversity.The laboratory provides an end-to-end genomics platform spanning sample processing, sequencing, genome assembly, and downstream data analytics. It specializes in high-molecular weight DNA extraction and long-read genomic technologies, offering integrated library preparation and sequencing services for highmolecular weight genomic DNA, long amplicons, and full-length transcriptome sequencing (Iso-Seq). These capabilities are tightly coupled with in-house computational expertise for genome assembly, curation, annotation, and comparative genomics, and are supported by state-of-the-art platforms including PacBio and ONT.

Overview

We seek a Postdoctoral Associate with AI engineering skills to work as part of our new GAIA (Genomic Artificial Intelligence Applications) collaboration, between The Rockefeller University, Revive & Restore, Cornell University, and partners including Google AI Genomics, funded by the Bezos Earth Fund and Google.org. The project aims to develop next-generation AI systems that scale genome assembly and enable genome-driven conservation.

Two central goals of GAIA are:

  • to build an AI Genome Curation Assistant ( Jarvis ): an AI system that combines modern machine learning approaches with large-scale biological data to automate genome curation by detecting, interpreting, and correcting structural errors, reducing manual effort from weeks to minutes thus that allowing to scale up to thousands of species per year;
  • To build Genera , a multimodal, agentic AI system that integrates genomic and ecological data to assess extinction risk and generate actionable genetic rescue strategies for conservation practitioners.

This role blends research and engineering, with an emphasis on building deployable AI systems while contributing to scientific publications. The successful Postdoc will focus on the development of Jarvis and will also have the opportunity to contribute to the development of Genera .

The core technical challenge is to translate expert-driven genome curation workflows into learnable AI systems. This involves combining:

  • Pattern recognition
  • DNA sequence-level reasoning
  • Iterative decision-making across multi-step pipelines

The successful candidate will design and implement end-to-end AI pipelines integrating:

  • Transformer-based models for DNA sequence reasoning
  • Computer vision approaches for genomic data representations
  • Graph-aware or structured prediction methods for genome assembly

You will work across modeling, data, and systems integration to build a unified platform for AI-assisted genome assembly and curation, in close collaboration with VGL bioinformatics teams, genome curators, and the Rockefeller Data Science Platform, a resource center with AI developers. The role includes access to substantial compute resources and collaboration with leading AI partners.

Responsibilities

Responsibilities include, but are not limited to:

  • Design and implement AI models for genome assembly tasks, including:
  • Chromosome assignment and ordering
  • Detection of structural errors from Hi-C/contact maps
  • Suggestion of corrections using sequence-aware models
  • Develop multi-stage inference and decision pipelines integrating detection, reasoning, and correction
  • Build and optimize models combining multiple data modalities (sequence, Hi-C, annotations, assembly graphs)
  • Engineer training datasets and features from large curated genome collections (~3,000 species)
  • Develop scalable, production-quality pipelines and contribute to system architecture
  • Collaborate with domain experts to formalize and automate genome curation strategies
  • Contribute to scientific publications, software releases, and collaborative research

Qualifications

REQUIRED QUALIFICATIONS:

  • Ph.D. (or equivalent) in machine learning, computer science, computational biology, or a related field
  • Strong experience in machine learning and deep learning, including transformer-based or related architectures
  • Proven ability to build end-to-end AI systems, from modeling to integration
  • Proficiency in Python and ML frameworks (e.g., PyTorch, JAX, TensorFlow)
  • Experience with HPC or cloud environments and distributed training
  • Strong software engineering skills (modular design, testing, version control)
  • Ability to work effectively in interdisciplinary teams

PREFERRED QUALIFICATIONS:

  • Experience building multimodal models combining sequence, image, and structured data
  • Experience with computer vision or analysis of structured visual data
  • Familiarity with graph-based models or structured prediction methods
  • Experience with foundation models or large-scale pretraining
  • Familiarity with genomic data formats and pipelines (FASTA, BAM, Hi-C, assembly graphs)
  • Experience with MLOps/DevOps (Docker, Kubernetes, CI/CD)

The Rockefeller University is an equal opportunity employer veterans/individuals with disabilities. Qualified applicants will receive consideration for employment without regard to characteristics protected by applicable local, state or federal law, including but not limited to disability and protected veteran status.

The salary of the finalist selected for this role will be set based on various factors, including but not limited to organizational budgets, qualifications, experience, education, licenses, specialty, and training. The hiring range provided represents The Rockefeller University's good faith and reasonable estimate of the range of possible compensation at the time of posting.

Compensation Range: Min

USD $72,100.00/Yr.

Compensation Range: Max

USD $72,100.00/Yr.