ML Infra Engineer를 모집합니다. 대규모 JAX 기반 학습 시스템을 설계하고 GPU/TPU 클러스터의 성능을 최적화하는 핵심 역할을 수행합니다. 분산 학습 인프라 구축 경험과 Kubernetes 등 클라우드 환경 운영 능력이 필수입니다. 연구원들과 협업하여 모델 학습의 효율성과 안정성을 극대화할 엔지니어를 찾습니다.
In this role you will help scale and optimize our training systems and core model code. You’ll own critical infrastructure for large-scale training, from managing GPU/TPU compute and job orchestration to building reusable and efficient JAX training pipelines. You’ll work closely with researchers and model engineers to translate ideas into experiments—and those experiments into production training runs.
This is a hands-on, high-leverage role at the intersection of ML, software engineering, and scalable infrastructure.
The ML Infrastructure team supports and accelerates PI’s core modeling efforts by building the systems that make large-scale training reliable, reproducible, and fast. The team works closely with research, data, and platform engineers to ensure models can scale from prototype to production-grade training runs.
- Own training/inference infrastructure: Design, implement, and maintain systems for large-scale model training, including scheduling, job management, checkpointing, and metrics/logging.
- Scale distributed training: Work with researchers to scale JAX-based training across TPU and GPU clusters with minimal friction.
- Optimize performance: Profile and improve memory usage, device utilization, throughput, and distributed synchronization.
- Enable rapid iteration: Build abstractions for launching, monitoring, debugging, and reproducing experiments.
- Manage compute resources: Ensure efficient allocation and utilization of cloud-based GPU/TPU compute while controlling cost.
- Partner with researchers: Translate research needs into infra capabilities and guide best practices for training at scale.
- Contribute to core training code: Evolve JAX model and training code to support new architectures, modalities, and evaluation metrics.
Strong software engineering fundamentals and experience building ML training infrastructure or internal platforms.
Hands-on large-scale training experience in JAX (preferred), PyTorch.
Familiarity with distributed training, multi-host setups, data loaders, and evaluation pipelines.
Experience managing training workloads on cloud platforms (e.g., SLURM, Kubernetes, GCP TPU/GKE, AWS).
Ability to debug and optimize performance bottlenecks across the training stack.
Strong cross-functional communication and ownership mindset.
Deep ML systems background (e.g., training compilers, runtime optimization, custom kernels).
Experience operating close to hardware (GPU/TPU performance tuning).
Background in robotics, multimodal models, or large-scale foundation models.
Experience designing abstractions that balance researcher flexibility with system reliability.
Pursuant to the San Francisco Fair Chance Ordinance, we will consider for employment qualified applicants with arrest and conviction records.