Research Engineer
Lightning AI · San Francisco, CA · 1 wk ago
HybridEngineering$120k–$250k/yrFull-time
About the role
We are seeking a highly skilled Research Engineer to help optimize training and inference workloads running on Lightning AI infrastructure. This role sits at the intersection of ML systems, AI infrastructure, performance engineering, and practical research.
Responsibilities
- Optimize large-scale training and inference workloads across GPUs, accelerators, and distributed systems
- Work directly with customers to analyze workloads, identify bottlenecks, and improve performance, scalability, and reliability of deployed AI systems
- Develop and improve inference pipelines, model serving systems, and performance-oriented tooling for production AI workloads
- Design and implement profiling, debugging, and observability tools to analyze model execution and guide optimization strategies
- Partner with hardware vendors and ecosystem partners to support efficient execution across diverse compute backends (NVIDIA, TPU, and emerging accelerators)
- Contribute to open-source projects through new features, tooling improvements, documentation, and community engagement
- Stay current with advancements in large-scale inference, distributed training, and ML systems optimization
Requirements
- Strong expertise with deep learning frameworks such as PyTorch
- Experience working with large-scale training or inference workloads
- Familiarity with distributed systems and parallelism strategies (data/model/pipeline parallelism, checkpointing, elastic scaling, distributed inference)
- Strong software engineering fundamentals, including designing APIs, building tooling, debugging complex systems, and shipping production-quality code
- Experience analyzing and improving performance bottlenecks in ML systems, infrastructure, or distributed workloads
- Excellent collaboration and communication skills, including the ability to work cross-functionally and partner directly with customers or external contributors
- Ability to work comfortably in ambiguous, fast-moving environments and operate across multiple layers of the stack
Qualifications
- Bachelor’s degree in Computer Science, Engineering, or a related field
- Strong expertise with deep learning frameworks such as PyTorch
- Experience working with large-scale training or inference workloads
- Familiarity with distributed systems and parallelism strategies (data/model/pipeline parallelism, checkpointing, elastic scaling, distributed inference)
- Strong software engineering fundamentals, including designing APIs, building tooling, debugging complex systems, and shipping production-quality code
- Experience analyzing and improving performance bottlenecks in ML systems, infrastructure, or distributed workloads
- Excellent collaboration and communication skills, including the ability to work cross-functionally and partner directly with customers or external contributors
- Ability to work comfortably in ambiguous, fast-moving environments and operate across multiple layers of the stack
Skills
- Experience with inference optimization techniques such as quantization, speculative decoding, mixed precision, memory-efficient training, or throughput/latency optimization
- Experience with technologies such as CUDA, Triton, TensorRT, vLLM, SGLang, Dynamo, or related ML systems/inference tooling
- Experience contributing to open-source ML, infrastructure, or AI systems projects
- Startup experience or experience working in highly cross-functional environments
Benefits
- Comprehensive medical, dental and vision coverage (U.S.); Private medical and dental insurance (U.K.)
- Retirement and financial wellness support (U.S.); Pension contribution (U.K.)
- Generous paid time off, plus holidays
- Paid parental leave
- Professional development support
- Wellness and work-from-home stipends
- Flexible work environment