Kodiak Robotics

Senior AI Infrastructure Engineer - Model Training

Kodiak Robotics$190K — $260K *
Information Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • BS, MS, or PhD in Computer Science or related field required.
  • 2-3 years of industry experience in ML systems or infrastructure necessary.
  • Hands-on experience with distributed training frameworks such as PyTorch DDP/FSDP and DeepSpeed.
  • Experience with building high-performance data pipelines for large-scale training.
  • Deep understanding of GPU performance optimization including mixed precision and kernel fusion.
  • Strong Python skills and proficiency in PyTorch; systems-level experience with C++/CUDA is a plus.
  • Passion for infrastructure that enhances AI training efficiency.

Responsibilities

  • Design high-throughput data loading and streaming systems for multimodal sensor data.
  • Build and optimize distributed training infrastructure for multi-node GPU clusters.
  • Maximize GPU utilization through various optimization techniques.
  • Profile and eliminate bottlenecks in end-to-end training pipelines.
  • Develop scalable dataset construction pipelines from petabytes of raw driving logs.
  • Collaborate with ML teams to scale architectures from prototypes to full-cluster runs.

Benefits

  • Competitive compensation package including equity and annual bonuses.
  • Comprehensive Medical, Dental, and Vision plans, including infertility benefits.
  • Flexible PTO along with 10 paid holidays and generous parental leave.
  • Office perks including a dog-friendly environment and free catered lunch.
  • Long-term and short-term disability, life insurance, and various wellbeing benefits.
  • 401(k) plan with Fidelity and commuter benefits available.
Full Job Description


In this role, you will:
  • Design high-throughput data loading and streaming systems for multimodal sensor data (camera, LiDAR, radar), including dataset formats, sharding strategies, and prefetching pipelines that keep GPUs saturated
  • Build and optimize distributed training infrastructure across multi-node GPU clusters, applying data, tensor, pipeline, and fully sharded (FSDP/ZeRO) parallelism to models that don't fit on a single device
  • Maximize utilization of modern accelerators such as NVIDIA B200s through mixed-precision training (BF16/FP8), fused kernels, memory optimization, and communication/computation overlap
  • Profile end-to-end training pipelines to find and eliminate bottlenecks across storage, network, CPU preprocessing, and GPU compute
  • Develop scalable dataset construction pipelines that convert petabytes of raw driving logs into training-ready, streamable formats
  • Partner with ML teams to scale new architectures from prototype to full-cluster training runs efficiently and reliably

What you'll bring:
  • BS, MS, or PhD in Computer Science or a related field, and at least 2-3 years of industry experience in ML systems or infrastructure
  • Hands-on experience with distributed training frameworks and techniques (PyTorch DDP/FSDP, DeepSpeed, Megatron, NCCL) and a strong grasp of parallelism trade-offs
  • Experience building high-performance data pipelines for large-scale training, including streaming dataset formats (WebDataset, MosaicML Streaming/MDS, or similar), sharding, and storage/network-aware loading
  • Deep understanding of GPU performance: mixed precision, memory hierarchy, kernel fusion, profiling tools (Nsight, PyTorch Profiler), and interconnects (NVLink, InfiniBand)
  • Strong Python skills and proficiency in PyTorch internals; systems-level experience (C++/CUDA/Triton) a plus
  • Passion for building the infrastructure that lets AI for the physical world train faster, scale further, and improve continuously

What we offer:
  • Competitive compensation package including equity and annual bonuses
  • Excellent Medical, Dental, and Vision plans through Kaiser Permanente, Cigna, and MetLife (including a medical plan with infertility benefits)
  • MetLife Legal Services, Identity & Fraud Protection, Hospital Indemnity Insurance, Accident Insurance, & Critical Illness Insurance
  • Flexible PTO, 10 paid holidays, and generous parental leave policies
  • Our office is centrally located in Mountain View, CA
  • Office perks: dog-friendly, free catered lunch, a fully stocked kitchen, and free EV charging
  • Long Term Disability, Short Term Disability, Life Insurance
  • Wellbeing Benefits - Headspace through Cigna, Calm through Kaiser, One Medical, Gympass, Spring Health through Cigna, Rula (mental health navigation)
  • Fidelity 401(k)
  • Commuter, FSA, Dependent Care FSA, HSA
  • Various incentive programs (referral bonuses, patent bonuses, etc.)


The pay range listed below reflects the base salary in our SF/Silicon Valley location, across several internal levels. Actual starting pay will be based on job-related factors including: work location, experience, relevant training, education, skill level and performance during interview. Total compensation at Kodiak includes base pay, equity, bonus and a competitive benefits package

California Pay Range

$190,000-$260,000 USD

About Kodiak Robotics

Kodiak Robotics is a startup that is developing autonomous trucks for long-haul freight transportation. The company was founded in 2018 by Don Burnette and Paz Eshel, both former employees of the self-driving truck company Otto. Kodiak's trucks use a combination of sensors, cameras, and software to navigate highways and other roads without a human driver. The company has raised $40 million in funding from investors including Battery Ventures and CRV. Kodiak is headquartered in Mountain View, California, and has a testing facility in North Texas.
Learn more about Kodiak Robotics
Size
101 employees
Market Cap
$347.1 million
Industry
Net Income
-$133.1 million
Founded
2016
NASDAQ

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