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Remote Medical Imaging Machine Learning Jobs (NOW HIRING)

About Nucs AI Nucs AI is revolutionizing cancer care through cutting-edge AI and medical imaging ... Autonomy and flexibility - Remote-first, flexible working. We hire great people and trust them to ...

... medical imaging, computational pathology, genomics, transcriptomics, multi-omics, or molecular ... Remote USA $124,800-$171,600 USD OUR OPPORTUNITY Nateraâ„¢ is a global leader in cell-free DNA ...

Machine Learning Engineer

Addison, TX · On-site +1

$110K - $130K/yr

Comprehensive benefits package including medical, dental, vision, and life insurance * Performance ... Flexible work options, including remote and hybrid opportunities, if eligible * Retirement Plan ...

Free imaging services for you and your immediate family * In-office role with real impact * Room to grow your career in a stable, supportive environment You Bring: * Strong customer service ...

General information Requisition # R67616 Locations USA-Remote Work Posting Date 05/19/2026 Security ... The Machine Learning Engineer will leverage their strong technical background and knowledge to ...

Remote Medical Scheduler As a Medical Scheduler, you'll be the first point of contact for patients scheduling important imaging appointments. You'll: * Schedule, reschedule, and manage patient ...

This is a remote role; however, applicants located within 45 miles of our Westlake/Dallas, TX ... Benefits include competitive compensation, bonus eligibility, comprehensive medical coverage ...

Remote Medical Scheduler As a Medical Scheduler, you'll be the first point of contact for patients scheduling important imaging appointments. You'll: * Schedule, reschedule, and manage patient ...

The Role We are looking for a Machine Learning Engineer to join our Artificial Intelligence and ... Fully Remote Optional * Health, Vision, Dental, and Life Insurance for you and any dependents, with ...

Machine Learning Engineer (Full time) JOB DUTIES: The Machine Learning Engineer will design ... Fully remote position (100%) from anywhere in U.S. reporting to HQ in San Francisco, CA JOB ...

... remote role for US/Canada based candidates. Salary range: 165-225K USD yearly plus benefits plus ... Experience with medical imaging, digital pathology, or whole slide image (WSI) processing ...

... remote role for US/Canada based candidates. Salary range: 165-225K USD yearly plus benefits plus ... Experience with medical imaging, digital pathology, or whole slide image (WSI) processing ...

... remote role for US/Canada based candidates. Salary range: 165-225K USD yearly plus benefits plus ... Experience with medical imaging, digital pathology, or whole slide image (WSI) processing ...

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Remote Medical Imaging Machine Learning information

What is a remote medical imaging machine learning specialist?

A remote medical imaging machine learning specialist is a professional who develops and applies machine learning algorithms to analyze medical images, such as X-rays, MRIs, and CT scans, from a remote location. They work with healthcare providers and researchers to improve diagnostic accuracy and streamline image analysis, often using artificial intelligence techniques. This role typically requires expertise in both medical imaging technologies and advanced machine learning, as well as the ability to collaborate virtually with multidisciplinary teams. Their work helps enable faster, more precise medical diagnoses and can contribute to advances in telemedicine.

What are the key skills and qualifications needed to thrive as a Remote Medical Imaging Machine Learning Specialist, and why are they important?

To excel as a Remote Medical Imaging Machine Learning Specialist, you need a solid background in computer science, mathematics, and medical imaging, often supported by a relevant degree (such as in computer science, biomedical engineering, or a related field) and experience with machine learning frameworks. Familiarity with technical tools like Python, TensorFlow, PyTorch, and DICOM imaging systems, along with experience in medical imaging data annotation and model deployment, is typically required. Strong analytical thinking, attention to detail, and effective remote communication skills help differentiate top performers in this field. These competencies ensure the accurate development and deployment of AI models that support clinical decision-making and improve patient outcomes in healthcare environments.

How does a Remote Medical Imaging Machine Learning professional typically collaborate with radiologists and other healthcare experts?

Remote Medical Imaging Machine Learning professionals work closely with radiologists, data scientists, and IT teams to develop and refine AI models for diagnostic imaging. Collaboration often occurs through virtual meetings, shared data annotation platforms, and cloud-based model deployments. Regular feedback from radiologists is essential to ensure the models provide clinically relevant and accurate outputs. This teamwork helps bridge the gap between technical development and real-world clinical needs, leading to more effective and reliable imaging solutions.
More about Remote Medical Imaging Machine Learning jobs
What cities are hiring for Remote Medical Imaging Machine Learning jobs? Cities with the most Remote Medical Imaging Machine Learning job openings:
What are the most commonly searched types of Medical Imaging Machine Learning jobs? The most popular types of Medical Imaging Machine Learning jobs are:
What states have the most Remote Medical Imaging Machine Learning jobs? States with the most job openings for Remote Medical Imaging Machine Learning jobs include:
Infographic showing various Remote Medical Imaging Machine Learning job openings in the United States as of July 2026, with employment types broken down into 4% As Needed, 69% Full Time, 15% Part Time, and 12% Contract. Highlights an 95% Physical, 1% Hybrid, and 4% Remote job distribution.

Senior Machine Learning Engineer - Medical Imaging

UT MD Anderson

Remote

$107K - $146K/yr

Full-time

Posted 3 days ago


Job description

Job Summary:
The University of Texas MD Anderson Cancer Center is a world-renowned cancer center, and they are seeking a Senior Machine Learning Engineer specializing in medical imaging. This role involves owning the full lifecycle of clinical computer vision models and collaborating with multidisciplinary teams to ensure responsible AI adoption in clinical environments.
Responsibilities:
• Own the full lifecycle of medical imaging ML models-from problem definition and model development to deployment, monitoring, maintenance, and retirement.
• Participate as a technical owner in formal governance, release, and incident review processes, with clear escalation paths and responsibilities.
• Translate clinical imaging use cases into deployable AI solutions with defined evaluation metrics, operating thresholds, and reproducible implementation strategies.
• Design and execute post-deployment monitoring, including detection and mitigation of model degradation due to distribution shift, scanner changes, or labeling variability.
• Collaborate with ML platform, data science, IT, and clinical operations teams to deploy and operate models in secure enterprise environments.
• Maintain responsible AI practices, ensuring traceability of data, models, experiments, and documentation of limitations and failure modes.
• Contribute to fallback, rollback, and model decommissioning strategies to support patient safety and operational continuity.
• Engage clinical, technical, and operational partners to support safe adoption and communicate model risks, behaviors, and performance.
• Mentor junior team members and contribute to best practices, review standards, and reproducible ML workflows.
Qualifications:
Required:
• Bachelor's degree in Computer Science, Software Engineering, Data Science, Physics, Math & Statistics, or another related engineering discipline.
• Five years of experience in machine learning engineering, data science, data engineering, and/or software engineering. With Master's degree, three years' experience required. With PhD, one year of experience required.
• Experience developing, deploying, and operating medical imaging ML models in regulated clinical environments.
• Ability to build imaging data pipelines involving DICOM workflows, dataset versioning, and distributed training.
• Deep proficiency in Python and PyTorch for model training and inference under GPU and memory constraints.
• Experience orchestrating ML workflows using Airflow, Prefect, or similar DAG-based systems.
• Skilled in deploying containerized ML workloads on enterprise cloud platforms such as Azure using Kubernetes.
• Understanding of audit-ready model tracking, lineage, and controlled promotion workflows.
• Ability to scope medical imaging ML projects end to end, considering clinical and regulatory constraints.
• Experience designing validation strategies aligned with governance, regulatory expectations, and change control processes.
• Knowledge of healthcare data privacy requirements as they relate to medical imaging and clinical metadata.
• Ability to evaluate model performance quantitatively in the context of clinical workflows and operational realities.
• Experience engaging clinicians, patient safety, and business stakeholders to communicate model performance, impacts, and risk considerations.
• Ability to assess model generalizability and failure modes across scanners, sites, and populations.
• Collaborate effectively with data scientists, ML engineers, software teams, clinicians, and operational leaders to integrate imaging models into real workflows.
• Produce clear, comprehensive technical documentation including design specs, validation reports, and runbooks.
• Communicate project risks, timelines, and outcomes to leadership and governance bodies.
• Contribute to internal technical standards, best practices, and shared ML development frameworks.
• Present technical and non-technical updates clearly across multiple stakeholder groups.
Preferred:
• Master's Degree or PHD with a concentration in Science, Engineering, or related field.
• Experience operating medical imaging ML systems across multiple sites, scanners, or protocols, rather than a single controlled environment.
• Experience handling post-deployment failures, including performance degradation, clinical incidents, model updates, or corrective actions.
• Experience raising the technical bar for team members, such as establishing reproducibility practices, review standards, or shared patterns.
• Experience technically evaluating third-party medical imaging AI within clinical workflows.
Company:
The University of Texas MD Anderson Cancer Center is one of the world’s most respected centers devoted exclusively to cancer patient care, research, education and prevention. Founded in 1994, the company is headquartered in Houston, USA, with a team of 10001+ employees. The company is currently Late Stage.