With Primary Care. For Primary Care.
Senior Technical Product Manager, AI Data Platform
Location
United States
Posted
65 days ago
Salary
0
Seniority
Senior
Job Description
Senior Technical Product Manager, AI Data Platform
Aledade, Inc.
• Partner with business owners to cultivate a shared vision for the problem space, constraints, priorities and ideal end state, and be able to articulate and advocate for this perspective. • Lead the full lifecycle of ML and LLM platform workstreams; from data ingestion, training, and deployment to the ongoing optimization of live user workflows based on performance metrics and feedback • Work with internal teams and end users to develop a deep understanding of requirements, perform thoughtful solution design, use data to test hypotheses, and support teams throughout execution. • Write detailed user stories for new features, capturing detailed descriptions of business rationale, requirements, and success criteria that are defined by measurable outcomes. • Develop short- and long-term roadmaps that deliver maximum value with minimum risk and assume ongoing iteration. • Partner with AI Researchers to mature proofs-of-concept into production-ready capabilities. • Perform hands-on exploration of user feedback, healthcare records and validation data to validate model performance.
Job Requirements
- 8+ years of product management experience in technology, technology-enabled services industry, or a SaaS product.
- Robust understanding of artificial intelligence and/or machine learning, and related technologies.
- Experience using data and primary research to inform solution design and build internal business understanding.
- Experience with Agile teams, Jira, and understanding of the software development lifecycle
- Strong understanding of APIs, DevOps, enterprise software development, cloud infrastructure (databricks/AWS/GCP/Azure), and data engineering principles.
- Exceptional ability to communicate technical trade-offs to non-technical stakeholders.
- Comfortable with translating ambiguous product requirements into a technical roadmap
Benefits
- Flexible work schedules and the ability to work remotely are available for many roles
- Health, dental and vision insurance paid up to 80% for employees, dependents and domestic partners
- Robust time-off plan (21 days of PTO in your first year)
- Two paid volunteer days and 11 paid holidays
- 12 weeks paid parental leave for all new parents
- Six weeks paid sabbatical after six years of service
- Educational Assistant Program and Clinical Employee Reimbursement Program
- 401(k) with up to 4% match
- Stock options
- And much more!
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