Customer Engineer IV, AI Infrastructure, Google Public Sector
- 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: Reston, VA, USA; Washington D.C., DC, USA.
Minimum qualifications:
- Bachelor's degree in Computer Science, Mathematics, a related technical field, or equivalent practical experience.
- 10 years of experience with cloud native architecture in a customer-facing or support role.
- Experience with frameworks for deep learning (e.g. PyTorch, Tensor Flow, Jax, Ray, etc.), AI accelerators (e.g. TPUs, GPUs), model architectures (e.g. encoders, decoders, transformers), and using machine learning APIs.
- Must possess an Active Top Secret/SCI US Government Security Clearance with polygraph.
- Ability to travel up to 20% of the time as required.
Preferred qualifications:
- Experience with prevailing ML development frameworks (e.g., Keras, PyTorch, Tensor Flow, JAX).
- Familiarity with the AI software development life-cycle (data processing, model building, training, evaluation, deployment).
- Familiarity with AI related tooling (Slurm, vLLM, Ray, Vertex, K8s, etc.).
- Ability to deliver results and work cross-functionally to position and orchestrate a solution consisting of multiple products.
About the job
When leading companies choose Google Cloud, it's a huge win for spreading the power of cloud computing globally. Once educational institutions, government agencies, and other businesses sign on to use Google Cloud products, you come in to facilitate making their work more productive, mobile, and collaborative. You listen and deliver what is most helpful for the customer. You assist fellow sales Googlers by problem-solving key technical issues for our customers. You liaise with the product marketing management and engineering teams to stay on top of industry trends and devise enhancements to Google Cloud products.
As the AI Infrastructure Customer Engineer, you will accelerate Google Public Sector customer AI initiatives by owning the technical relationship with customer ML research teams to reduce time-to-value. You will guide customers through solution design, accelerator/framework selection, and ultimately helping ramp customer AI workloads onto Google's AI infrastructure technologies.
The AI Infrastructure Customer Engineer is a hybrid technical and business advisor role. The advice and guidance you provide has wide ranging financial and technical implications. You will embody executive level qualities when engaging with customer leadership and direct the technical execution of winning and ramping customer AI workloads. You will partner across Google's sales, product, engineering, and research teams to articulate the true total value of each technical solution and the overall business partnership with Google Cloud.
Google Public Sector brings the magic of Google to the mission of government and education with solutions purpose-built for enterprises. We focus on helping United States public sector institutions accelerate their digital transformations, and we continue to make significant investments and grow our team to meet the complex needs of local, state and federal government and educational institutions.
US: $192000 - $267000 (USD) + 42.86% bonus target + bonus + equity + benefits
Learn more about benefits at Google.
Responsibilities
- Accelerate customer time-to-value on the largest AI Infrastructure and High Performance Computing (HPC) workloads in Google Public Sector.
- Build a trusted advisory relationship with customer architects, engineering leadership, and research teams. Identify customer priorities, technical objections and design strategies focused on Google AI Infrastructure and HPC ecosystem to deliver business value and resolve blockers.
- Provide domain expertise around hardware accelerators (GPU/TPU), prevailing ML Frameworks (PyTorch, Keras, JAX), and model building techniques.
- Make recommendations on GPU/TPU hardware, framework selection, benchmarks, and model building required to successfully implement a complete solution.
- Manage the holistic research engineering relationship with customers by collaborating with specialists, product management, technical teams, and more.

