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AI Research Engineer
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About Muro AI
Muro AI is transforming how the $2T construction industry plans and builds. Founded by Cornell alumni, ex-founders, and former McKinsey operators, we're building AI agents that automate the most complex, manual, and costly phase of construction: preconstruction.
We move fast, build with conviction, and obsess over delivering real impact to the people who build our world. If you want to define how AI understands and reasons over architectural and design documents at scale, this is where it starts.
Why This Role Exists
Crack the hardest problems in construction tech: enabling AI to deeply understand architectural documents—and then act on them. We're building systems that don't just read plans, but reason across them and execute complex workflows using specialized industry tools.
Shape a category: No one owns "pre-con AI" yet. You'll build the core research—from document understanding to agentic execution—that sets the foundation.
Move the industry: Your work will help contractors win multimillion-dollar bids, eliminate scope gaps, and unlock massive productivity gains.
Who You Are
We want research-driven builders who love pairing deep model work with real customer understanding.
You might be:
Compensation: $175K–$220K base + meaningful equity
Compensation Range: $175K - $220K
Muro AI is transforming how the $2T construction industry plans and builds. Founded by Cornell alumni, ex-founders, and former McKinsey operators, we're building AI agents that automate the most complex, manual, and costly phase of construction: preconstruction.
We move fast, build with conviction, and obsess over delivering real impact to the people who build our world. If you want to define how AI understands and reasons over architectural and design documents at scale, this is where it starts.
Why This Role Exists
Crack the hardest problems in construction tech: enabling AI to deeply understand architectural documents—and then act on them. We're building systems that don't just read plans, but reason across them and execute complex workflows using specialized industry tools.
Shape a category: No one owns "pre-con AI" yet. You'll build the core research—from document understanding to agentic execution—that sets the foundation.
Move the industry: Your work will help contractors win multimillion-dollar bids, eliminate scope gaps, and unlock massive productivity gains.
Who You Are
- A research-minded builder with 4–6+ years of deep technical ML experience.
- You're comfortable in the messy 0→1 phase: half-baked specs, ambiguous problem statements, and solving foundational technical challenges that will define the next decade of construction AI energize you.
- You're curious, rigorous, and want to own hard problems end-to-end—from research to production. You communicate complex work clearly to engineers, product, and leadership; you're the go-to scientist the team turns to when they need to understand what's possible.
- Build the document understanding layer that powers everything downstream
- Push agentic AI into production
- Make AI reliable for million-dollar decisions
We want research-driven builders who love pairing deep model work with real customer understanding.
You might be:
- A Research Engineer/Scientist looking to see your work deployed, not just published
- An ML Engineer or Applied Scientist who wants to push the frontier on multimodal and agentic systems
- A Software Engineer who has transitioned into deep AI/ML research and wants to own problems end-to-end. And wants to productionize their new skill set.
- A founding-team caliber engineer eager to tackle the hardest technical challenges in AEC tech
- Prior 0→1 or founding-team experience at a startup
- Experience working directly with users or in forward-deployed environments
- Built a multimodal model or document-understanding pipeline used in production
- Hands-on experience with RLHF, DPO, SFT, or parameter-efficient fine-tuning methods
- Advanced OCR/CV experience (layout-aware models, document transformers, segmentation)
- Designed or scaled RAG systems for complex, multi-document retrieval
- Experience with agentic LLM systems, tool use, or multi-step reasoning harnesses
- Background in architectural/engineering drawings (AEC experience is a plus, not required)
Compensation: $175K–$220K base + meaningful equity
Compensation Range: $175K - $220K
Job Type
- Job Type
- Full Time
- Location
- San Francisco, CA
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