About the role
Magic’s mission is to build safe AGI that accelerates humanity’s progress on the world’s most important problems. We believe the most promising path to safe AGI lies in automating research and code generation to improve models and solve alignment more reliably than humans can alone. Our approach combines frontier-scale pre-training, domain-specific RL, ultra-long context, and inference-time compute to achieve this goal.
About the role
As a Software Engineer on the Pre-training Systems team, you will design and operate the distributed infrastructure that trains Magic’s long-context models at scale.
This role focuses on large-scale model training across massive GPU clusters. You will work at the boundary between deep learning and distributed systems, ensuring that training runs are performant, reliable, and reproducible under extreme scale.
Magic’s long-context models create non-trivial systems challenges: sustained memory pressure, communication overhead across thousands of devices, long-running jobs that must survive failures, and efficient sequence packing under hardware constraints. You will own the systems that make large-scale pre-training stable and fast.
What you’ll work on
Scale distributed training across large GPU clusters (data, tensor, pipeline parallelism)
Optimize communication patterns and gradient synchronization
Improve checkpointing, fault tolerance, and job recovery systems
Profile and eliminate performance bottlenecks across compute, networking, and storage
Improve experiment reproducibility and orchestration workflows
Increase hardware utilization and training throughput
Collaborate with Kernels and Research to align model architecture with systems realities
What we’re looking for
Strong software engineering and distributed systems fundamentals
Experience training large models in multi-node GPU environments
Deep understanding of parallelism strategies and performance trade-offs
Experience debugging cross-layer issues in production ML systems
Strong ownership mindset and ability to operate critical infrastructure
Track record of improving performance or reliability of large-scale systems
Compensation, benefits, and perks (US):
Annual salary range: $225K - $550K
Equity is a significant part of total compensation, in addition to salary
401(k) plan with 6% salary matching
Generous health, dental and vision insurance for you and your dependents
Unlimited paid time off
Visa sponsorship and relocation stipend to bring you to SF, if possible
A small, fast-paced, highly focused team
Magic strives to be the place where high-potential individuals can do their best work. We value quick learning and grit just as much as skill and experience.
Our culture
Integrity. Words and actions should be aligned
Hands-on. At Magic, everyone is building
Teamwork. We move as one team, not N individuals
Focus. Safely deploy AGI. Everything else is noise
Quality. Magic should feel like magic
Aplyr's read
Magic is a tech company empowering developers with AI-driven tools, attracting talent focused on cutting-edge AI and infrastructure projects.
What's promising
- •Magic offers developers access to advanced AI-driven tools for building applications.
- •The company is heavily invested in research and development for AI systems.
- •Magic's platform supports innovative projects in supercomputing and infrastructure.
What to watch
- •Limited public information about Magic's financial stability and market position.
- •High specialization may limit opportunities for those outside AI and infrastructure fields.
- •Potentially high-pressure environment due to the focus on cutting-edge technology.
Why Magic
- •Magic focuses on AI-driven tools specifically tailored for developers.
- •The company hires for highly specialized roles in AI and supercomputing.
- •Magic's platform emphasizes both application deployment and AI research.
Aplyr’s read is generated by AI from public sources. Was it useful?
About Magic
Magic is a company that provides a platform for developers to build and deploy applications using AI-driven tools and services.