Senior Machine Learning Engineer building tools for AI engineers at SimplePractice. Focused on enhancing clinician experiences through data-driven innovations and collaboration.
Responsibilities
Develop & Deploy ML Platform
Build end to end solutions to ensure consistent tooling and governance for LLM/AI feature development
Ability to design well-structured and performant RESTful APIs, including defining clear endpoints, request/response formats, and error handling.
Work closely with Engineering and other internal stakeholders of ML platform to develop platform roadmap
Properly communicate timeline, milestones, and progress w/ internal stakeholders
Drive stakeholder engagement, enablement and education to ensure the platform is well integrated into AI dev workflow
Guide less experienced team members, sharing knowledge on model development, MLOps, and data engineering
Champion a culture of experimentation, continuous learning, and proactive problem-solving
Stay current with emerging ML tools and technologies, integrating new techniques that elevate our product capabilities
Look for creative ways to leverage data to make clinicians’ lives easier, more efficient, and more effective
Requirements
BS or above in Computer Science or a related technical field
7+ years of experience in software development, ideally on dev tools, with Python expertise for a part of your career
Have experience with ML/LLM. Familiar with ML model workflow, from ideation, prototyping to deployment
Proficiency in building data pipelines and tooling for ML feature pipelines
Experience with AWS (or other cloud platforms) for model deployment
Comfort working with remote teams, using GitHub, Slack, Notion, and Zoom
Proficiency in English with strong communication and collaboration skills.
Benefits
Privatized Medical, Dental & Vision Coverage
Work From Home stipend
Flexible Time Off (FTO), wellbeing days, paid holidays, and Summer Fridays
Monthly Meal Reimbursement
Holiday Bonus, 15-day Aguinaldo
Hybrid Work Schedule & Catered Lunch
A relocation bonus for candidates joining us from a different city
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