Senior Machine Learning Engineer - Accelerating Drug Discovery with AI
North America
Deep Genomics
Revolutions in AI, biology and automation are enabling a new approach to medicine. Deep Genomics is at the forefront.Where You Fit InAs a Senior ML Engineer, you bring deep expertise in building robust production-grade machine learning systems and infrastructure. You’ll lead the design, development and maintenance of core components of our AI platform – spanning training pipelines, scalable inference, evaluation frameworks, experiment tracking and reproducible tooling. Collaborating closely with teams across engineering, machine learning, and biology, you’ll help push the boundaries of drug discovery through thoughtfully engineered systems.
Key Responsibilities
- Build and scale ML workflows: Collaborate closely with ML scientists and data scientists to design, implement and maintain reliable systems for model training, evaluation, and inference.
- Enable experiment tracking and reproducibility: Integrate model development workflows with tools such as Weights & Biases.
- Engineer robust data pipelines: Develop and maintain data ingestion and processing pipelines for scalability, reproducibility, reliability.
- Prototype and iterate quickly: Partner with stakeholders to rapidly develop proof-of-concepts.
- Promote software engineering best practices: Drive high standards in code quality, modular design, testing and CI/CD.
Basic Qualifications
- 3+ years of experience working as an ML Engineer, Software Engineer, or similar technical role focused on ML systems.
- Hands-on experience with modern ML frameworks, such as PyTorch or TensorFlow.
- Proficient in Python, with a strong grasp of software architecture, design patterns, and a deep understanding of engineering best practices.
- Experience with containerization and orchestration tools, such as Docker and Kubernetes.
- Ability to mentor and elevate other team members' skills.
Preferred Qualifications:
- Track record of shipping ML prototypes to production in fast-paced, iterative environments (e.g. startups or research-heavy teams).
- Familiarity with ML workflow orchestration and tracking tools, such as Weights & Biases, Metaflow, MLFlow, Kubeflow, Ray, or similar tools.
- Proficiency with cloud providers (preferably GCP), including managing compute, storage, and infrastructure for ML workloads.
- Experience working with biological or genomic data and applications.
What we offer
- A collaborative and innovative environment at the frontier of computational biology, machine learning, and drug discovery.
- Highly competitive compensation, including meaningful stock ownership.
- Comprehensive benefits - including health, vision, and dental coverage for employees and families, employee and family assistance program.
- Flexible work environment - including flexible hours, extended long weekends, holiday shutdown, unlimited personal days.
- Maternity and parental leave top-up coverage, as well as new parent paid time off.
- Focus on learning and growth for all employees - learning and development budget & lunch and learns.
- Facilities located in the heart of Toronto - the epicenter of machine learning and AI research and development, and in Kendall Square, Cambridge, Mass. - a global center of biotechnology and life sciences.
Deep Genomics thanks all applicants, however only those selected for an interview will be contacted.
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: Architecture Bioinformatics Biology CI/CD Data pipelines Docker Drug discovery Engineering GCP Kubeflow Kubernetes Machine Learning MLFlow ML models Model training Pipelines Python PyTorch Research TensorFlow Testing Weights & Biases
Perks/benefits: Career development Competitive pay Equity / stock options Flex hours Flex vacation Health care Parental leave Unlimited paid time off
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