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Imaging Data Scientist Jobs (NOW HIRING)

Validate and benchmark AI-driven imaging algorithms and tools to ensure their accuracy, robustness ... Ph.D. or Master's degree in Data Science, Computer Science, Biomedical Engineering, Bioinformatics ...

$144.80K - $227.90K/yr

We are seeking a Senior Data Scientist with strong expertise in computer vision and biomedical imaging to develop scalable imaging foundation models and interpretable pipelines for immunology and ...

Data Scientist

Sacramento, CA ยท On-site

$70K - $90K/yr

The Data Scientist will assist the Royal Electric team Success in the position is achieved through ... Kisx Card (Surgery & Imaging Program) * Opportunity for tuition reimbursement Wellness Resources

Data Scientist Thank you for your interest in Loyola University Chicago. To view open positions ... imaging, physiological measurements, molecular structural data). * Perform statistical analyses.

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Imaging Data Scientist information

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$37.5K

$122.7K

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How much do imaging data scientist jobs pay per year?

As of May 28, 2026, the average yearly pay for imaging data scientist in the United States is $122,738.00, according to ZipRecruiter salary data. Most workers in this role earn between $98,500.00 and $136,000.00 per year, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive as an Imaging Data Scientist, and why are they important?

To thrive as an Imaging Data Scientist, you need a strong background in computer science, mathematics, and image analysis, often supported by an advanced degree in a related field. Familiarity with programming languages like Python or MATLAB, machine learning frameworks, and image processing tools such as OpenCV or ITK is typically required. Strong analytical thinking, attention to detail, and effective communication skills help distinguish top performers in this role. These skills and qualities are crucial for developing accurate image-based models, collaborating with interdisciplinary teams, and translating complex data into actionable insights.

How does an Imaging Data Scientist typically collaborate with other teams in a research or clinical setting?

Imaging Data Scientists frequently work alongside radiologists, clinicians, and software engineers to develop and refine algorithms for analyzing medical images. Collaboration often involves regular meetings to interpret imaging data needs, share findings, and troubleshoot issues related to data quality or algorithm performance. They may also work closely with data engineers to ensure efficient data storage and retrieval, and with project managers to align on timelines and deliverables. This cross-disciplinary teamwork ensures that imaging solutions are both scientifically robust and practically applicable in clinical workflows.

What is an Imaging Data Scientist?

An Imaging Data Scientist is a professional who specializes in analyzing and interpreting data from various imaging sources, such as medical scans, satellite images, or industrial photographs. They use advanced data analysis, machine learning, and image processing techniques to extract meaningful insights from complex image data. These scientists often collaborate with experts in fields like healthcare, remote sensing, or manufacturing to support decision-making and innovation. Their work can involve tasks such as developing algorithms for image classification, segmentation, or enhancement. The role requires strong skills in programming, statistics, and domain-specific knowledge.

What is the difference between Imaging Data Scientist vs Medical Data Scientist?

AspectImaging Data ScientistMedical Data Scientist
CredentialsTypically requires a degree in data science, computer science, or related fields; familiarity with imaging softwareRequires a degree in data science, biostatistics, or healthcare-related fields; often with knowledge of medical terminologies
Work EnvironmentWorks in healthcare, research institutions, or tech companies focusing on imaging dataWorks in hospitals, healthcare organizations, or biotech firms analyzing medical data
Industry UsageUsed in medical imaging analysis, radiology, and diagnostic researchApplied in clinical research, patient data analysis, and healthcare decision support

Imaging Data Scientists focus on analyzing medical images like MRI, CT scans, and X-rays, utilizing machine learning and image processing techniques. Medical Data Scientists work with broader healthcare data, including electronic health records and clinical data. While both roles require data science skills, Imaging Data Scientists specialize in imaging modalities, making their roles distinct yet overlapping in healthcare analytics.

More about Imaging Data Scientist jobs
What cities are hiring for Imaging Data Scientist jobs? Cities with the most Imaging Data Scientist job openings:
What states have the most Imaging Data Scientist jobs? States with the most job openings for Imaging Data Scientist jobs include:

Sr Staff Data Scientist, Virtual Biology Initiative

Biohub

Redwood City, CA โ€ข On-site, Remote

Other

Retirement, PTO

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


Job description

Sr Staff Data Scientist, Virtual Biology Initiative, AI Research

New York, NY (Hybrid); Redwood City, CA (Hybrid)

Biohub is the first large-scale initiative bringing frontier AI models, massive compute, and frontier experimental capabilities under one roof. We're building a general-purpose system to accelerate scientific discovery, integrating frontier AI models, biological foundation models, and lab capabilities, with the ultimate goal of curing disease. Our technology powers scientists around the world, translating AI capabilities into tools that accelerate research everywhere.

The Opportunity

In April 2026, Biohub launched the Virtual Biology Initiativeโ€”a $500 million, five-year commitment to galvanize a global effort to build predictive models of the human cell. This initiative will bring together leading institutions to generate the multi-modal biological data, at unprecedented scale, that will power the next generation of AI models for biology while producing datasets of unprecedented size.

Our data science team defines the algorithms and processing approaches that turn raw biological measurements into rich representations models can actually learn from. That includes designing data formats and representations optimized for AI use cases, building cost-aware processing pipelines that balance expressiveness with efficiency, developing scalable QC and validation frameworks across modalities, creating agent-augmented curation tools for metadata extraction and ontology mapping, and building the cross-modal entity resolution and semantic infrastructure that ties it all together.

Both the scale and domain are active research areas. How do you tokenize a cell image? How do you represent a perturbation experiment? How do you combine transcriptomics with imaging in a way that preserves biological meaning? These questions don't have established answers. We need scientific leaders who can work at this frontier: people who understand biological measurement deeply, think creatively about data representations, sampling, and tokenization strategies, and can translate that thinking into data representations that enable novel training architectures.

You'll work directly with scientists, computational biologists, data engineers, and AI researchers to define model input and biological evaluations. You will operate with broad scope and high autonomy, influencing roadmap decisions across teams while mentoring senior individual contributors. Success in this role means creating and implementing data systems that are not only large, but adaptive, interpretable, and scientifically groundedโ€”accelerating progress toward robust biological frontier models and ultimately advancing human health.

What You'll Do
  • Set technical vision and strategy for the design of data representations and tokenization strategies across biological data typesโ€”including imaging, sequencing, and multimodal dataโ€”that enable novel model architectures
  • Develop, deploy and validate approaches for combining heterogeneous data modalities into unified training frameworks, designing for robustness to noise, bias, and batch effects
  • Evaluate model performance, identifying which biological signals are captured or lost and iterating to improve
  • Partner deeply with ML engineers and AI researchers to co-design datasets and optimize model training, evaluation, and generalization
  • Lead cross-functional initiatives spanning data engineering, infrastructure, science, and product, aligning technical execution with long-term scientific goals
  • Identify and drive new data acquisition and generation opportunities, from consortium partnerships to internal experimental pipelines
  • Serve as a technical mentor and leader, raising the bar for data science and ML rigor across the organization
What You'll Bring
  • 12+ years of experience (or PhD + 7 years) working with large-scale biological datasets, including ownership of end-to-end data products
  • Deep expertise in at least one of: (a) imaging dataโ€”microscopy, cell phenotyping, spatial biology, and the data characteristics of image-based biological measurement; or (b) genomics dataโ€”bulk and single-cell sequencing, functional genomics, epigenomics, transcriptomics, spatial biology, and/or multi-omics
  • Understanding of how to transform raw biological data into AI-ready datasets, including familiarity with scientific best practices, noise characteristics, batch effects, and quality assessment specific to your domain
  • Experience with tokenization strategies for non-text data (images, sequences, graphs, time series) or with creating data representations and feature engineering for machine learning in scientific or biological contexts
  • Strong expertise in data science and statistical modeling; familiarity with modern ML architectures (transformers, diffusion models, or similar) and how data representation choices affect learning
  • Strong computational skills; demonstrated ability to design robust, extensible data architectures
  • Excellent communication and leadership skills, with the ability to translate between biology, ML, and engineering audiences and align teams to deliver complex projects
  • Creative, first-principles thinking about how to structure data for learning
Compensation

The Redwood City, CA & New York City, NY base pay range for a new hire in this role is $241,000.00 - $331,100.00. New hires are typically hired into the lower portion of the range, enabling employee growth in the range over time. Actual placement in range is based on job-related skills and experience, as evaluated throughout the interview process.

Better Together

As we grow, we're excited to strengthen in-person connections and cultivate a collaborative, team-oriented environment. This role is a hybrid position requiring you to be onsite for at least 60% of the working month, approximately 3 days a week, with specific in-office days determined by the team's manager. The exact schedule will be at the hiring manager's discretion and communicated during the interview process.

Benefits for the Whole You

We're thankful to have an incredible team behind our work. To honor their commitment, we offer a wide range of benefits to support the people who make all we do possible.

  • Provides a generous employer match on employee 401(k) contributions to support planning for the future.
  • Paid time off to volunteer at an organization of your choice.
  • Funding for select family-forming benefits.
  • Relocation support for employees who need assistance moving

If you're interested in a role but your previous experience doesn't perfectly align with each qualification in the job description, we still encourage you to apply as you may be the perfect fit for this or another role.