ML Engineer
About the role
Company Description
HOPPR is at the forefront of innovation in medical imaging, developing the first multimodal AI foundation model. Our deep learning platform, unique for its proprietary privacy-compliant trust architecture, integrates diverse data sources with cutting-edge AI/ML development. HOPPR is co-founded by Dr. Khan Siddiqui, a visionary leader with a prolific background including founding higi, former roles at Hyperfine (NASDAQ:HYPR), and Microsoft.
Role Description
Join HOPPR as a Machine Learning Engineer and play a pivotal role in shaping the future of multimodal AI in medicine. Collaborate with researchers, engineers, and clinicians to design and deploy scalable machine learning solutions trained over vast amounts of data. You’ll build shared ML infrastructure, optimize models for production, and integrate them into enterprise-grade products, delivering innovations that transform patient care.
Key Responsibilities
- Develop, deploy, and maintain state-of-the-art machine learning models for medical imaging, NLP, and multimodal tasks.
- Design and implement robust, scalable ML pipelines and shared infrastructure to support agile experimentation and deployment.
- Collaborate with researchers to translate novel algorithms into production-ready solutions.
- Build and maintain MLOps tools and practices, including automated testing, continuous integration, and monitoring of deployed models.
- Optimize model performance for speed, reliability, and scalability in production environments.
- Partner with clinicians, engineers, and product teams to align machine learning efforts with clinical and product needs.
- Thrive in a dynamic and rewarding environment that emphasizes excellence, autonomy, and impact.
Qualifications
- Master’s or PhD in Computer Science, Engineering, or a related field with 3+ years' experience in relevant roles. Senior and Principal roles considered based on experience.
- Proficiency in Python and machine learning frameworks such as PyTorch or TensorFlow.
- Strong understanding of MLOps practices, including model deployment, CI/CD pipelines, and performance monitoring.
- Experience working with cloud platforms (e.g., AWS, GCP, Azure) and tools like Docker, Kubernetes, or Terraform.
- Knowledge of data engineering principles, including data manipulation tools like SQL and pandas.
- Familiarity with healthcare data and clinical workflows is a plus.
- Exceptional problem-solving skills, ownership mindset, and a collaborative approach.
What We Offer
- Competitive base salary + equity.
- A key role in a fast-growing startup with immense potential.
- Generous benefits: medical/dental/vision, 401k, PTO, and parental leave.
- Remote first with hybrid options available at our NYC and SF Bay Area offices.
- An innovative, collaborative, and supportive work environment.
- Incredible teammates who inspire growth and learning.