Skip to main content
Tallo logoTallo logo
Apply for this opportunity

This job application is on an outside website. Be sure to review the job posting there to verify it's the same.

Senior/Staff Backend Engineer - Distributed System

Job

SproutsAI

Remote

Full-Time

Posted 1 week ago (Updated 1 week ago) • Actively hiring

Expires 7/8/2026

Review key factors to help you decide if the role fits your goals.
Pay Growth
?
out of 5
Not enough data
Not enough info to score pay or growth
Job Security
?
out of 5
Not enough data
Calculating job security score...
Total Score
76
out of 100
Average of individual scores

Were these scores useful?

Skill Insights

Compare your current skills to what this opportunity needs—we'll show you what you already have and what could strengthen your application.

Job Description

Actively hiring Job type : Full-time Workplace type :
Hybrid Experience :
5 years About Us At Zettabyte, we're on a mission to make AI compute ubiquitous, seamless, and limitless. We're building a cloud where AI just works-anywhere, anytime. AI Power. Everywhere. Be part of the team designing the infrastructure for the AI-first world. Why this role exists We need a Backend Engineer to build the systems that orchestrate GPU clusters for AI workloads. You'll create APIs that handle GPU allocation, memory management, compute scheduling, and multi-tenant isolation-challenges unique to AI infrastructure that go far beyond typical Back End engineering. As part of our Back End team, you'll solve problems like How do we efficiently share expensive GPU resources across users? How do we handle GPU memory constraints for large AI models? How do we ensure quality of service when workloads compete for compute? This is an opportunity to build infrastructure where every API call could allocate thousands of dollars worth of compute per hour, where your optimizations directly impact whether AI startups can afford to train their models. What you`ll do Design APIs that abstract complex GPU operations into simple developer experiences Build scheduling algorithms that maximize GPU utilization while ensuring SLA compliance Develop resource management systems for GPU lifecycle-provisioning, allocation, scheduling, and release Create usage tracking and billing systems for GPU-hours, memory usage, and compute utilization Implement monitoring for GPU-specific metrics, health checks, and automatic failure recovery Build multi-tenancy systems with resource isolation, quota management, and fair scheduling Optimize cold starts for model serving and implement efficient model loading strategies Collaborate with Front End engineers to expose complex infrastructure through intuitive interfaces Leverage AI-assisted coding tools (GitHub Copilot, Claude Code, Cursor IDE, etc.) to boost productivity and code quality. You`ll thrive here if you 5+ years Back End engineering experience with distributed systems Strong proficiency in Go, Python, or similar Back End languages Experience with resource scheduling, orchestration, and API design (REST, GraphQL, gRPC) Understanding of hardware constraints and system optimization Linux systems knowledge and containerization experience (Docker, Kubernetes) Comfortable working with expensive resources where efficiency directly impacts costs Excited about solving novel problems in AI infrastructure (not just another CRUD app) Startup mindset-comfortable with ambiguity and rapid iteration GPU or HPC cluster management experience Understanding of ML,AI workload patterns and requirements Experience with high-value resource allocation systems Background in performance optimization for compute-intensive workloads Familiarity with GPU virtualization and sharing technologies Experience building billing or metering systems Details We provide Competitive salary and equity based on your experience and skillset; This is a Hybrid role - 3 days in office, 2 days WFH; Must locate in Palo Alto Applicants must be authorized to work in the United States without need for visa sponsorship.