Experience with deep learning in biomedical research, ideally involving multi-omics or imaging data (e.g., genomics, transcriptomics, MRI, CT).
At M31 Biomedical AI, we are redefining how artificial intelligence understands the human body. Our models power universal segmentation and imaging analysis across multiple medical modalities and now, we're expanding into multi-omics integration, combining imaging with genomic and molecular data to uncover new biological insights.
We're seeking a full-time AI Scientist to help develop, test, and apply machine learning models that connect imaging with molecular data. You'll be working with a diverse team of AI researchers, clinicians, and computational biologists to explore how deep learning can bridge the gap between visual and molecular understanding in human health.
This position is ideal for someone passionate about biomedical AI, multi-modal data, and collaborative, high-impact research.
What You'll Do
Design and implement deep learning models that integrate medical imaging with other data types (e.g., genomics, clinical, or molecular data)
Collaborate with research partners to collect, preprocess, and harmonize imaging and omics datasets
Train and evaluate models to explore relationships between imaging biomarkers and molecular signatures
Work closely with data scientists and clinicians to ensure scientific and clinical relevance
Help extend universal segmentation technology into multi-omics applications
Document and maintain reproducible workflows using Git, Python, and cloud-based tools
Contribute to publications, internal reports, and presentations summarizing key findings
Why Join Us
Be part of a leading biomedical imaging AI company recognized for its foundational work in universal segmentation
Collaborate with top academic and hospital research teams on cutting-edge multi-omics projects
Gain exposure to large, high-quality datasets spanning medical imaging, genomics, and clinical data
Work in a mission-driven environment that bridges scientific research and real-world healthcare impact
Enjoy flexible work arrangements, mentorship, and opportunities for authorship and recognition
Required Skills & Background
Master's or PhD (or equivalent experience) in Computer Science, Biomedical Engineering, Computational Biology, or a related field
Strong programming experience in Python and familiarity with deep learning frameworks (e.g., PyTorch, MONAI, Transformers)
Background in machine learning applied to biomedical or life science data
Understanding of at least one of the following domains:
Medical imaging (MRI, CT, pathology, etc.)
Genomics or transcriptomics
Multi-modal data integration or representation learning
Experience with data management, reproducibility, and collaborative code development
Excellent problem-solving, communication, and teamwork skills
Nice-to-Have
Experience with foundation models or large-scale pretraining
Familiarity with biological pathway analysis or radiogenomics
Previous work involving multi-institutional datasets or federated learning
Publication record in AI, biomedical imaging, or computational biology
Application Requirements
Resume/CV
Cover letter describing your experience and motivation for working on multi-omics integration
GitHub portfolio or publications (optional but encouraged)
About M31
M31 Biomedical AI is a biomedical imaging company developing foundation models for medical image segmentation and analysis. Our technology enables universal understanding of medical images across modalities and institutions.
We're now collaborating with leading research partners to extend this vision beyond imaging - integrating multi-omics data to better understand complex diseases and improve therapeutic discovery.
Job Types: Full-time, Fixed term contract
Contract length: 12 months
Pay: $65.00-$90.00 per hour
Expected hours: 37.5 per week
Work Location: Hybrid remote in Toronto, ON M5S 1A8
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