SECTION I · THE BRIEF
Brief #08244Updated 13 JUL 2026SAN JOSE, CAGreenhouseSOFTWARE COMPANIES
Employbl Company Profile

Helix AI Engineer, Training Infrastructure

Figure is an AI Robotics company building the world's first commercially viable autonomous humanoid robot. We are based in Sunnyvale, CA.

Location
San Jose, CA
Company size
100–500
Posted
6d ago
Via
Greenhouse
Section II · Premium ProfileMembers only
  • 01Comp band & equity packageLocked
  • 02Seniority & experience requirementsLocked
  • 03Interview process & rubricLocked
  • 04Hiring manager & team contextLocked
  • 05Growth trajectory in this roleLocked
  • 06Offer & decision timelineLocked

7-day free trial · $25/mo · cancel anytime

Figure AI logo

Helix AI Engineer, Training Infrastructure · Figure AI

View company profile
Job title
Helix AI Engineer, Training Infrastructure
Job location
San Jose, CA
Job description
Figure is an AI robotics company developing autonomous general-purpose humanoid robots. The goal of the company is to ship humanoid robots with human level intelligence. Its robots are engineered to perform a variety of tasks in the home and commercial markets. Figure is headquartered in San Jose, CA.

Figure's vision is to deploy autonomous humanoids at a global scale. Our Helix team is looking for an experienced Training Infrastructure Engineer to take our infrastructure to the next level. This role is focused on managing the training cluster, implementing distributed training algorithms, data loaders, and developer tools for AI researchers.

Responsibilities
  • Design, deploy, and maintain Figure's training clusters
  • Architect, optimize, and maintain scalable deep learning frameworks for training on massive robot datasets
  • Work together with AI researchers to implement training of new model architectures at a large scale
  • Implement distributed training, advanced parallelization strategies, and high-performance data loaders to reduce model development cycles
  • Profile, identify, and eliminate training bottlenecks at the hardware and software levels to maximize Model FLOPs Utilization (MFU)
  • Implement tooling for data processing, model experimentation, and continuous integration
Requirements
  • Strong software engineering fundamentals
  • Bachelor's or Master's degree in Computer Science, Robotics, Engineering, or a related field
  • Extensive professional experience with Python and PyTorch
  • Proven track record of scaling and running large-scale training experiments personally on 800+ GPUs
  • Experience managing HPC clusters for deep neural network training
  • Minimum of 4 years of professional, full-time experience building reliable backend systems and infrastructure
Bonus Qualifications
  • Experience contributing to or maintaining open-source distributed training frameworks (Megatron-LM, DeepSpeed, TorchTitan)
  • Experience managing cloud infrastructure (AWS, Azure, GCP)
  • Experience with job scheduling / orchestration tools (SLURM, Kubernetes, LSF, etc.)
  • Experience with configuration management tools (Ansible, Terraform, Puppet, Chef, etc.)
  • Deep understanding of CUDA and hands-on experience writing custom GPU kernels to optimize training

The US base salary range for this full-time position is between $200,000 - $400,000 annually.

The pay offered for this position may vary based on several individual factors, including job-related knowledge, skills, and experience. The total compensation package may also include additional components/benefits depending on the specific role. This information will be shared if an employment offer is extended.

View job listing ↗

Get the Saturday tech briefing

New company profiles, funding moves, and who’s hiring across the market — every Saturday morning.

Figure AI headquarters

Sunnyvale, CA

Company size

100500 employees

Founded

2022

Total raised

$854,000,000

View company profile ↗

Funding rounds

  • Series C$1B
  • Series C$1B
  • Series C$1B
  • Series B$675M
  • Series B$675M
  • Series B$675M
  • Series B$675M
  • Series Unknown$9M
  • Series Unknown$9M
  • Series Unknown$9M
  • Series Unknown$9M
  • Series A$70M
  • Series A$70M
  • Series A$70M
  • Series A$70M
  • Seed$100M
  • Seed$100M
  • Seed$100M
  • Seed$100M