Minimum qualifications:
- Bachelor's degree in Computer Science, Engineering, a related field, or equivalent practical experience.
- 4 years of experience in product management around requirements gathering, roadmap planning, and execution.
- 4 years of experience in data management, governance, architecture-related products and technologies.
- Experience in technical troubleshooting, and managing internal/external partners or customers.
- 5 years of experience in internet products and technologies.
- 5 years of experience planning for and managing several large-scale, complex technical projects and coordinating cross-functional project members to deliver quality results within the project deadlines.
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About the job
gTech's Analytics Platforms and Tools team (gAPT) leverages user, operational, and technical insights to innovate Google's Ads products into customer experiences that are so intuitive (or automated) that they require no support at all. gAPT partners closely with gTech's Ads team, Product Management, and Engineering teams to innovate and simplify our Ads products and build the productivity tools ecosystem for gTech users.
Google creates products and services that make the world a better place, and gTech's role is to help bring them to life. Our teams of trusted advisors support customers globally. Our solutions are rooted in our technical skill, product expertise, and a thorough understanding of our customers' complex needs. Whether the answer is a bespoke solution to solve a unique problem, or a new tool that can scale across Google, everything we do aims to ensure our customers benefit from the full potential of Google products.
To learn more about gTech, check out our video .
Responsibilities
- Develop data product strategy and roadmaps.
- Create program requirements and co-lead design and development.
- Data product/program life-cycle management and execution.
- Create data products that enable/provide business metrics.
- Conduct resource planning and make data product prioritization/trade-offs.