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Clockwork Inc

Software Engineer - Distributed Training

Clockwork Inc, Palo Alto, California, United States, 94306

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About Us

Clockwork.io - A Software-Driven Revolution in AI Networking

Clockwork Systems was founded by Stanford researchers and veteran systems engineers who share a vision for redefining the foundations of distributed computing. As AI workloads grow increasingly complex, traditional infrastructure struggles to meet the demands of performance, reliability, and precise coordination. Clockwork is pioneering a software-driven approach to AI networking, delivering deterministic time, ultra-low latency, and seamless scalability for modern distributed systems.

To learn more, visit www.clockwork.io.

About Us

Clockwork.io - A Software-Driven Revolution in AI Networking

Clockwork Systems was founded by Stanford researchers and veteran systems engineers who share a vision for redefining the foundations of distributed computing. As AI workloads grow increasingly complex, traditional infrastructure struggles to meet the demands of performance, reliability, and precise coordination. Clockwork is pioneering a software-driven approach to AI networking, delivering deterministic time, ultra-low latency, and seamless scalability for modern distributed systems.

To learn more, visit www.clockwork.io.

About the Role

We are looking for an experienced software engineer to help build, optimize, and maintain large-scale distributed training infrastructure based on the PyTorch ecosystem. This role focuses on production-grade training workflows involving multi-GPU and multi-node orchestration, high-performance communication layers, and advanced parallelism strategies.

You'll work alongside infrastructure and machine learning teams to ensure training jobs are efficient, scalable, and resilient. What You will do Develop and support distributed PyTorch training jobs using torch.distributed / c10d Integrate and maintain frameworks like Megatron-LM, DeepSpeed, and related LLM training stacks Diagnose and resolve distributed training issues (e.g., NCCL hangs, OOM, checkpoint corruption) Optimize performance across communication, I/O, and memory bottlenecks Implement fault tolerance, checkpointing, and recovery mechanisms for long-running jobs Write tooling and scripts to streamline training workflows and experiment management Collaborate with ML engineers to ensure compatibility with orchestration and container environments (e.g., Slurm, Kubernetes) What We're Looking For Deep experience with PyTorch and torch.distributed (c10d) Hands-on experience with at least one of: Megatron-LM, DeepSpeed, or FairScale Proficiency in Python and Linux shell scripting Experience with multi-node GPU clusters using Slurm, Kubernetes, or similar Strong understanding of NCCL, collective communication, and GPU topology Familiarity with debugging tools and techniques for distributed systems Preferred Skills

Experience scaling LLM training across 8+ GPUs and multiple nodes Knowledge of tensor, pipeline, and data parallelism Familiarity with containerized training environments (Docker, Singularity) Exposure to HPC environments or cloud GPU infrastructure Experience with training workload orchestration tools or custom job launchers Comfort with large-scale checkpointing, resume/restart logic, and model I/O Bonus Skills

Profiling tools: PyTorch Profiler, Nsight, nvprof, or equivalent Experience with performance tuning in distributed training environments Contributions to ML infrastructure open-source projects Familiarity with storage, networking, or RDMA/GPU Direct technologies Understanding of observability in ML pipelines (metrics, logs, dashboards) Enjoy

Challenging projects. A friendly and inclusive workplace culture. Competitive compensation. A great benefits package. Catered lunch

Clockwork Systems is an equal opportunity employer.

We are committed to building world-class teams by welcoming bright, passionate individuals from all backgrounds. All qualified applicants will receive consideration for employment without regard to race, color, ancestry, religion, age, sex, sexual orientation, gender identity or expression, national origin, disability, or protected veteran status. We believe diversity drives innovation, and we grow stronger together.