Gritt
AI
ML&CloudInfrastructureEngineer
Neural analysis suggests this role is
optimal for Mid candidates.
“ML & Cloud Infrastructure Engineer at Gritt. Skills: ML Infrastructure, Cloud, Python, Docker. Develop AI training pipelines. Deploy AI validation pipelines”
Industry & Context.
problem-solving skills
What They're Looking For.
Must Have
Degree in computer science or related engineering disciplines (or equivalent experience), 4+ years of experience deploying high-performance ML pipelines in production, Proficient in Python, comfortable with C++/Go, Experience with ML frameworks like PyTorch, Experience with IO and data-loading workflows, Experience with deploying on cloud platforms like AWS, GCP or Azure, Experience with tooling like Docker, Kubernetes, and Airflow, comfortable taking ownership of tasks with light supervision, excellent problem-solving skills, Legally authorized to work in the United States
Nice to Have
passionate about pushing the boundaries of what's possible in robotics with AI
What You'll Do.
Develop AI training pipelines
Deploy AI validation pipelines
Spin up distributed pipelines
Deploy monitoring pipelines
Deploy CI/CD pipelines
Enable large-scale evaluation
Optimize GPU utilization
Integrate cloud tooling
How You'll Work.
Team & Collaboration
Work with other teams
Full Job Description
Gritt https://gritt.ai/ is developing physical AI to automate the construction of large-scale infrastructure around the globe. Gritt’s systems are already deployed commercially in difficult outdoor environments, and are helping to build critical energy infrastructure. The founding team https://www.gritt.ai/team comprises experts in robotics and AI from Carnegie Mellon, Stanford and MIT. Gritt is a Series A company backed by marquee VCs. Role: Software - ML & Cloud Infrastructure Location: SF Bay Area (in-person) About the role We’re looking for an experienced ML & Cloud Infrastructure Engineer to join our team. As an early member, you will play a pivotal role in architecting scalable cloud infrastructure for our AI and data pipelines. You'll need to thrive in a fast-paced startup environment where you'll wear multiple hats and have a direct impact on our product's evolution. Ideally, you have a proven track record of developing and deploying high-performance ML and cloud pipelines in production, and you're passionate about pushing the boundaries of what's possible in robotics with AI. What you’ll get to work on - Develop and deploy scalable AI training and validation pipelines in the cloud. - Spin up distributed pipelines for data ingestion, pre-processing, training and evaluation. - Deploy monitoring and CI/CD pipelines. - Enable large-scale evaluation of AI models via cloud-based metrics. - Enable large-scale evaluation of autonomy software and models via simulations in the cloud. - Optimize performance, I/O and GPU utilization. - Build tooling and dashboards for rapid experimentation, orchestration and visualization. - Work with other teams to integrate cloud tooling into workflows. What we look for - Degree in computer science or related engineering disciplines (or equivalent experience). - 4+ years of experience deploying high-performance ML pipelines in production. - Proficient in Python and comfortable with C++/Go. - Experience with ML frameworks like PyTorch
Applying for this ML & Cloud Infrastructure Engineer role?
Most applicants get filtered before a human reads their resume. See if yours makes the cut.
How to Apply on Ashby
- Ashby is a fast modern ATS — most applications take under 3 minutes.
- The resume parser is strong; verify parsed experience dates and job titles.
- Custom screening questions are often scored algorithmically — answer completely.
- Location field affects geo-based screening; use your actual metro area.
ANONYMOUS · UNFILTERED
What do employees actually say about Gritt?
Real rants from real employees. Read before you apply.