P-1 AI Logo

P-1 AI

Machine Learning Engineer - Training & Infrastructure

Reposted 4 Days Ago
In-Office
San Francisco, CA
200K-265K Annually
Mid level
In-Office
San Francisco, CA
200K-265K Annually
Mid level
The role involves managing LLM training operations, optimizing GPU training on clusters, and collaborating with researchers on scalable machine learning infrastructure.
The summary above was generated by AI

About P-1 AI:

We are building an engineering AGI. We founded P-1 AI with the conviction that the greatest impact of artificial intelligence will be on the built world—helping mankind conquer nature and bend it to our will. Our first product is Archie, an AI engineer capable of quantitative and spatial reasoning over physical product domains that performs at the level of an entry-level design engineer. We aim to put an Archie on every engineering team at every industrial company on earth.

Our founding team includes the top minds in deep learning, model-based engineering, and industries that are our customers. We just closed a $23 million seed round led by Radical Ventures that includes a number of other AI and industrial luminaries (from OpenAI, DeepMind, etc.).

About the Role:

We’re looking for an experienced engineer to take ownership of LLM training operations across our applied research team. Your focus will be on making large-scale GPU training run reliably, efficiently, and fast on a dedicated mid-size GPU cluster and possibly on cloud platforms as well.

You’ll work closely with researchers and ML engineers developing new models and agentic systems, ensuring their experiments scale smoothly across multi-node GPU clusters. From debugging NCCL deadlocks to optimizing FSDP configs, you’ll be the go-to person for training infrastructure and performance.

What You’ll Do:

  • Own the training pipeline for large-scale LLM fine-tuning and post-training workflows

  • Configure, launch, monitor, and debug multi-node distributed training jobs using FSDP, DeepSpeed, or custom wrappers

  • Contribute to upstream and internal forks of training frameworks like TorchTune, TRL, and Hugging Face Transformers

  • Tune training parameters, memory footprints, and sharding strategies for optimal throughput

  • Work closely with infra and systems teams to maintain the health and utilization of our GPU clusters (e.g., Infiniband, NCCL, Slurm, Kubernetes)

  • Implement features or fixes to unblock novel use cases in our LLM training stack

About you:

  • 3+ years working with large-scale ML systems or training pipelines

  • Deep familiarity with PyTorch, especially distributed training via FSDP, DeepSpeed, or DDP

  • Comfortable navigating training libraries like TorchTune, Accelerate, or Trainer APIs

  • Practical experience with multi-node GPU training, including profiling, debugging, and optimizing jobs

  • Understanding of low-level components like NCCL, Infiniband, CUDA memory, and model partitioning strategies

  • You enjoy bridging research and engineering—making messy ideas actually run on hardware

Nice to Have:

  • Experience maintaining Slurm, Ray, or Kubernetes clusters

  • Past contributions to open-source ML training frameworks

  • Exposure to model scaling laws, checkpointing formats (e.g., HF sharded safetensors vs. distcp), or mixed precision training

  • Familiarity with on-policy reinforcement learning setups with inference (policy rollouts) as part of the training loop, such as GRPO, PPO, or A2C

  • Experience working at a startup

Interview process:

  • Initial screening - Head of Talent (30 mins)

  • Hiring manager interview - Head of AI (45 mins)

  • Technical Interview - AI Chief Scientist and/or Head of AI (45 mins)

  • Culture fit / Q&A (maybe in person) - with co-founder & CEO (45 mins)

Top Skills

Accelerate
Cuda
Deepspeed
Fsdp
Hugging Face Transformers
Infiniband
Kubernetes
Nccl
PyTorch
Slurm
Torchtune

Similar Jobs

11 Days Ago
In-Office
San Francisco, CA, USA
150K-250K Annually
Mid level
150K-250K Annually
Mid level
HR Tech • Information Technology
Manage and optimize computational infrastructure for training ML models, ensuring scalability for large datasets and performance optimization.
Top Skills: AirflowAWSDockerGCPHigh-Performance ComputingKubernetesMachine LearningAzure
56 Seconds Ago
In-Office
Stockton, CA, USA
129K-206K Annually
Mid level
129K-206K Annually
Mid level
Cloud • Fintech • Food • Information Technology • Software • Hospitality
As a Retail Account Executive at Toast, you will prospect and build relationships with convenience stores and grocery stores, managing the sales cycle to deliver customized solutions that meet their needs.
Top Skills: Salesforce
A Minute Ago
In-Office
Modesto, CA, USA
129K-206K Annually
Mid level
129K-206K Annually
Mid level
Cloud • Fintech • Food • Information Technology • Software • Hospitality
The Territory Account Executive will prospect and sign up new accounts in retail, using a consultative approach to drive sales and build relationships.
Top Skills: Salesforce

What you need to know about the San Francisco Tech Scene

San Francisco and the surrounding Bay Area attracts more startup funding than any other region in the world. Home to Stanford University and UC Berkeley, leading VC firms and several of the world’s most valuable companies, the Bay Area is the place to go for anyone looking to make it big in the tech industry. That said, San Francisco has a lot to offer beyond technology thanks to a thriving art and music scene, excellent food and a short drive to several of the country’s most beautiful recreational areas.

Key Facts About San Francisco Tech

  • Number of Tech Workers: 365,500; 13.9% of overall workforce (2024 CompTIA survey)
  • Major Tech Employers: Google, Apple, Salesforce, Meta
  • Key Industries: Artificial intelligence, cloud computing, fintech, consumer technology, software
  • Funding Landscape: $50.5 billion in venture capital funding in 2024 (Pitchbook)
  • Notable Investors: Sequoia Capital, Andreessen Horowitz, Bessemer Venture Partners, Greylock Partners, Khosla Ventures, Kleiner Perkins
  • Research Centers and Universities: Stanford University; University of California, Berkeley; University of San Francisco; Santa Clara University; Ames Research Center; Center for AI Safety; California Institute for Regenerative Medicine

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account