Lead Research Engineer
full-time
lead
Posted 5 months ago
About this role
Who We Are
Lightning AI is the company behind PyTorch Lightning. Founded in 2019, we build an end-to-end platform for developing, training, and deploying AI systems—designed to take ideas from research to production with less friction.
Through our merger with Voltage Park, a neocloud and AI Factory, Lightning AI combines developer-first software with cost-efficient, large-scale compute. Teams get the tools they need for experimentation, training, and production inference, with security, observability, and control built in.
We serve solo researchers, startups, and large enterprises. Lightning AI operates globally with offices in New York City, San Francisco, Seattle, and London, and is backed by Coatue, Index Ventures, Bain Capital Ventures, and Firstminute.
What We're Looking For
We are seeking a highly skilled Lead Research Engineer to lead optimization efforts for 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. You’ll drive improvements across models, inference systems, and platform infrastructure to improve performance, scalability, and reliability for real-world AI workloads.
This is a highly cross-functional role that combines deep technical leadership with hands-on implementation. Successful candidates are comfortable operating broadly across the stack — from model behavior and inference systems to distributed infrastructure and developer tooling — while partnering closely with customers and internal engineering teams to solve complex AI systems challenges at scale.
This role is based in one of our hubs (NYC, SF, London, or Seattle — NYC and London are preferred), with a minimum of 2 in-office days per week and occasional team and company offsites.
What You'll Do
Lead optimization efforts for large-scale training and inference workloads across GPUs, accelerators, and distributed systems
Partner directly with customers to analyze workloads, identify bottlenecks, and drive improvements in performance, scalability, and reliability of deployed AI systems
Architect and improve inference pipelines, model serving systems, and performance-oriented tooling for production AI workloads
Lead the design and implementation of profiling, debugging, and observability tools to analyze model execution and guide optimization strategies
Drive performance improvements across the software stack through clean APIs, automation, and seamless integration with the Lightning ecosystem
Collaborate cross-functionally with infrastructure, product, and research teams to shape technical direction and improve the developer and user experience for AI workloads running on Lightning
Partner with hardware vendors and ecosystem partners to support efficient execution across diverse compute backends (NVIDIA, TPU, and emerging accelerators)
Contribute technical leadership 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, and help guide adoption of new technologies and approaches
What You’ll Need
Required Qualifications
Strong expertise with deep learning frameworks such as PyTorch
Significant experience working with large-scale training or inference workloads
Strong understanding of 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 leading or driving performance optimization efforts across ML systems, infrastructure, or distributed workloads
Hands-on experience with inference optimization techniques such as quantization, mixed precision, speculative decoding, memory-efficient training, or throughput/latency optimization
Experience with modern ML systems and inference tooling such as TensorRT, vLLM, SGLang, Dynamo, Triton, DeepSpeed, or related technologies
Excellent collaboration and communication skills, including the ability to partner directly with customers, cross-functional teams, and external contributors
Ability to operate effectively in ambiguous, fast-moving environments and drive technical direction across multiple layers of the stack
Master’s or PhD in Computer Science, AI, Machine Learning, Systems, Engineering, or a related field
Nice-to-Haves
Experience contributing to or leading open-source ML, infrastructure, or AI systems projects
Experience working closely with hardware vendors or accelerator ecosystems
Startup experience or experience operating in highly cross-functional environments
Experience mentoring engineers or leading technical initiatives across teams
Compensation
We are committed to offering c
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