AI Technical Product Manager
Supio
About Us
- Lead the end-to-end product lifecycle for AI/ML-driven solutions, from ideation and requirements gathering to development, launch, and iterative improvement, ensuring alignment with business objectives.
- Define and prioritize product requirements by collaborating with AI researchers, data scientists, and engineers to translate complex technical concepts into actionable roadmaps.
- Design user experiences for AI-powered features, working with UX/UI teams to create intuitive workflows and prototypes that optimize interactions with machine learning models.
- Analyze data metrics (user behavior, model performance, A/B tests) to drive product decisions, feature prioritization, and post-launch optimizations.
- Collaborate with engineering teams to integrate AI/ML models into scalable production systems, ensuring reliability, performance, and alignment with product goals.
- Evaluate emerging AI/ML technologies (e.g., generative AI, LLMs) to identify opportunities for innovation and competitive differentiation.
- Coordinate cross-functional teams (engineering, marketing, legal) to address challenges such as ethical AI deployment, bias mitigation, and regulatory compliance.
- Develop go-to-market strategies for AI products, including pricing models, customer segmentation, and sales enablement materials.
- Communicate technical concepts to non-technical stakeholders (executives, customers) to align product vision with business needs.
- Oversee AI model deployment in cloud environments, working with infrastructure teams to ensure scalability, monitoring, and cost efficiency.
- Master’s degree or foreign equivalent degree in Computer Science, Data Science, Operations Research or closely related fields, plus 1 year of experience in AI technical product management.
- Owning end-to-end product lifecycles from inception to launch in AI/ML.
- Defining product requirements/roadmaps and collaborating with AI/ML engineering teams to design, test, and deploy models.
- UX/UI design (Figma, Sketch) for AI-driven products.
- Generative AI platforms, Machine Learning DevOps (MLOps) platforms, AI toolkits.
- Distributed Systems, Kubernetes, container orchestration, cloud computing platforms, experience with public cloud providers such as AWS, GCP, or Azure.
- Using generative AI/large language models (LLMs) and their application in products.
- Working with databases using SQL and data pipelines (python, Kafka, Spark) to test AI models and process data for AI models.
- Analyzing data/metrics to drive product decisions (e.g., model performance, user behavior).
Benefits & Perks
- Health insurance: medical, dental, and vision
- 401k
- Flexible paid time off (PTO) and company-paid holidays
- Monthly commuter subsidies
- DoorDash subsidies for breakfast and dinner