Technical Program Manager III, GPU Infrastructure Reliability, Google Cloud
- Health, dental, vision, life, disability insurance
- Retirement Benefits: 401(k) with company match
- Paid Time Off: 20 days of vacation per year, accruing at a rate of 6.15 hours per pay period for the first five years of employment
- Sick Time: 40 hours/year (increased to 69 hours/year for Seattle) including 5 discretionary sick days per instance
- Maternity Leave (Short-Term Disability + Baby Bonding): 28-30 weeks
- Baby Bonding Leave: 18 weeks
- Holidays: 13 paid days per year
Note: By applying to this position you will have an opportunity to share your preferred working location from the following: Sunnyvale, CA, USA; Kirkland, WA, USA.
Minimum qualifications:
- Bachelor's degree in a technical field, or equivalent practical experience.
- 5 years of experience in program management.
- Experience with infrastructure reliability.
- Experience with GPUs or GPU Systems.
Preferred qualifications:
- 5 years of experience managing cross-functional or cross-team projects.
- 5 years of experience in technical program management, with a focus on software engineering and ML infrastructure projects.
- Knowledge of software development, distributed systems, and ML infrastructure or GPU systems.
- Ability to think critically and solve problems.
- Excellent project management skills, and experience with project planning, execution, and risk management.
- Excellent communication and collaboration skills, with the ability to build relationships and influence across all levels of the organization.
About the job
A problem isn’t truly solved until it’s solved for all. That’s why Googlers build products that help create opportunities for everyone, whether down the street or across the globe. As a Technical Program Manager at Google, you’ll use your technical expertise to lead complex, multi-disciplinary projects from start to finish. You’ll work with stakeholders to plan requirements, identify risks, manage project schedules, and communicate clearly with cross-functional partners across the company. You're equally comfortable explaining your team's analyses and recommendations to executives as you are discussing the technical tradeoffs in product development with engineers.
To empower AI innovation by accelerating the delivery, cloud-based accelerator (GPU) NPIs built into large-scale supercomputer clusters, including next-gen cross-functional development, customer and vendor partnerships, and ML workload monitoring and diagnostic tooling.
The ML, Systems, & Cloud AI (MSCA) organization at Google designs, implements, and manages the hardware, software, machine learning, and systems infrastructure for all Google services (Search, YouTube, etc.) and Google Cloud. Our end users are Googlers, Cloud customers and the billions of people who use Google services around the world.
We prioritize security, efficiency, and reliability across everything we do - from developing our latest TPUs to running a global network, while driving towards shaping the future of hyperscale computing. Our global impact spans software and hardware, including Google Cloud’s Vertex AI, the leading AI platform for bringing Gemini models to enterprise customers.
Individual pay is determined by factors including job-related skills, experience, and relevant education or training.US: $163000 - $237000 (USD) + 15% bonus target + equity + benefits
Learn more about benefits at Google.
Responsibilities
- Lead the end-to-end development, project planning, and delivery of next-gen AI Infra GPU products from concept to production.
- Lead software qualifications, release strategy, and test infrastructure management for AI hypercompute clusters.
- Manage escalations and critical incidents while proactively identifying and mitigating risks that could impact project success.
- Coordinate with TPMs in AI2 (e.g., ACI, Platforms, and CSCO) and ACI leadership on cross-functional initiatives related to AI Infra customer onboarding and production support.
- Participate in the development of core management software, monitoring, and diagnostic tooling for scalable Cloud ML solutions.

