
P-1 AI develops advanced artificial intelligence to make designing complex physical systems faster and more capable. The company is building an artificial general engineering intelligence (AGEI) that…

P-1 AI develops advanced artificial intelligence to make designing complex physical systems faster and more capable. The company is building an artificial general engineering intelligence (AGEI) that…
Product: Archie — an AI engineering agent for mechanical and electrical design (initially data centers)
Focus: Automating multidisciplinary physical-system design using custom AI models and physics-based datasets
Founded: 2024
Stage / Funding: Seed — $23M total reported
Headcount: Approximately 34 employees
Engineering and manufacturing: automating complex physical-system design (cooling, critical power, and broader product domains like automotive and aerospace)
2024
Software Development
$23,000,000
Announcement coincided with emergence from stealth
“Includes institutional and angel backers (e.g., Radical Ventures, Village Global, and individual investors listed on profiles)”
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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.
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