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Temporary Medical Imaging Machine Learning Jobs (NOW HIRING)

We are seeking a skilled AI/ML Engineer to join our innovative team and drive the development of machine learning models for advanced medical imaging applications. The ideal candidate will have a ...

We are seeking a skilled AI/ML Engineer to join our innovative team and drive the development of machine learning models for advanced medical imaging applications. The ideal candidate will have a ...

New

Machine Learning

Mountain View, CA · On-site

$220K - $331K/yr

Overview As a Member of Technical Staff - Machine Learning, you will work to create LLM models for ... color, family or medical care leave, gender identity or expression, genetic information ...

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Temporary Medical Imaging Machine Learning information

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$13

$35

$68

How much do temporary medical imaging machine learning jobs pay per hour?

As of Jun 5, 2026, the average hourly pay for temporary medical imaging machine learning in the United States is $35.24, according to ZipRecruiter salary data. Most workers in this role earn between $22.60 and $43.75 per hour, depending on experience, location, and employer.

What is the difference between Temporary Medical Imaging Machine Learning vs Medical Imaging Technologist?

AspectTemporary Medical Imaging Machine LearningMedical Imaging Technologist
CredentialsTypically requires knowledge of machine learning, programming, and healthcare dataRequires certification or licensing in radiologic technology
Work EnvironmentData analysis settings, research labs, healthcare IT departmentsHospitals, clinics, imaging centers
Industry UsageDeveloping AI tools for medical imaging, research projectsPerforming diagnostic imaging procedures on patients

Temporary Medical Imaging Machine Learning focuses on developing and applying AI algorithms to interpret medical images, often in research or tech settings. Medical Imaging Technologists operate imaging equipment directly on patients for diagnostic purposes. While both roles involve medical imaging, one is tech-focused on data and AI, and the other on patient care and image acquisition.

More about Temporary Medical Imaging Machine Learning jobs
What cities are hiring for Temporary Medical Imaging Machine Learning jobs? Cities with the most Temporary 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 Temporary Medical Imaging Machine Learning jobs? States with the most job openings for Temporary Medical Imaging Machine Learning jobs include:
Infographic showing various Temporary Medical Imaging Machine Learning job openings in the United States as of May 2026, with employment types broken down into 2% As Needed, 24% Full Time, 67% Part Time, and 7% Contract. Highlights an 94% Physical, 1% Hybrid, and 5% Remote job distribution, with an average salary of $73,307 per year, or $35.2 per hour.
Machine Learning, Customer Success Engineer

Machine Learning, Customer Success Engineer

Stryker

Kalamazoo, MI • On-site

Full-time

Posted 8 days ago


Job description

First and most importantly: our mission is to bring transparency and clarity to the world's data. Our platform, FiftyOne, is where AI work happens . Our enterprise platform is the mission critical linchpin for managing unstructured data, model development, and AI systems at the world's largest companies.

We believe that open source is the way to lead the data‐centric AI revolution. Our open source version has 4 million downloads to-date. Our software massively impacts AI work across almost every vertical: from self‐driving cars to medical imaging to revolutionizing agriculture , we are at the thrilling center of real‐world AI advancement's next wave.

And we're built on three key tenets: We are all human beings : we strive to be a "human‐first" organization and treat everyone with the respect, care, and flexibility that all people deserve. We are distributed : We believe in the power of community . We are fully remote, hiring for people based in North America (with a preference for candidates on the West Coast for this role) who are prepared to travel to at least 2 in‐person retreats per year, plus travel to various conferences and Meetups.

About your role As a Machine Learning Customer Success Engineer at Voxel51, you'll work directly with our users, helping them identify best practices for their ML workflows using FiftyOne. You'll partner with teams doing incredible things all over the world - from global‐impact Fortune 100 companies to groundbreaking startups - helping them maximize their machine learning capabilities with FiftyOne. Internally, you'll serve as the voice of the customer, a critical role in shaping our product roadmap.

You'll also contribute to a thriving open source ML product and community, and continue to build out our functionality and ecosystem. Every member of our fully‐remote team is empowered to own their work and play an active role in advancing our mission to democratize data‐centric ML. What you will do 80% of your time Work with users to identify best practices to implement their ML workflows Run point on customer implementation, triaging bug reports, and day‐to‐day relationship management with users through channels like Slack, email, and weekly meetings Generate training material and onboarding sessions and deliver them to users Work with our product team to influence the roadmap and be the voice of the user within the organization 20% of your time Contribute ML‐specific features to our product, FiftyOne What you should bring Professional Computer Vision Machine Learning engineering experience (4 year+) Some customer‐facing experience (3 year+) BS or MS in computer science or a related field Proficiency with Python Expertise with machine learning and scientific computing libraries (TensorFlow, PyTorch, NumPy) Familiarity with NoSQL databases (MongoDB, DocumentDB, Elasticsearch) is a plus Experience maintaining or contributing to open source projects Ability to work in a remote‐first, cooperative environment using collaborative development tools (GitHub, Slack) #J-18808-Ljbffr