Back to jobs

Founding AI/ML Engineer / $500k / Remote

Open Talent
Palo Alto, CA
Full-time
40,000,000 – 50,000,000 / year
AI tools:
ChatGPT
PyTorch
Applications go directly to the hiring team

Join a pioneering team as a Founding AI/ML Engineer at Open Talent, where you will leverage cutting-edge technology to develop production intelligence for autonomous machines. With an elite team from leading tech firms and a focus on real-world impact, you will play a key role in shaping the future of heavy robotics, all while enjoying a competitive salary and meaningful equity.

Full-time
Remote
5-8 years

Skills & Expertise

Machine Learning
AI
Systems Engineering
Production Deployment
Real-Time Systems
Model Fine-Tuning
Data Retrieval Systems
Testing Frameworks

Key Responsibilities

Fine-tune and deploy models for precision operational decisions.

Build RAG systems for real-time environmental understanding.

Design testing frameworks for heavy hardware evaluations.

Full Description

Founding AI/ML Engineer (Production) - California (SF/Palo Alto) $450k - $500k+ Base + Founding Equity

This role requires US Citizenship due to regulatory constraints.

Most of the Valley is obsessed with LLM wrappers for HR or marketing. We’re using them to run multi-ton autonomous machines; & fast.

We’re a Top 10 hard-tech startup with real hardware & real customers. We aren't a research lab & we don't do R&D for the sake of it. Our machines are in the field globally right now. We need a Founding AI/ML Engineer to build the production intelligence layer that turns complex logic into physical movement.

The Squad

You’ll be joining a high-density team from SpaceX, Palantir, & Anduril. We’ve cut out the corporate theater-no bloated meetings, no process for the sake of process, & zero ego. As a founding hire, you aren't just training models; you’re architecting the engine of the company.

The Work: Moving Atoms

In this role, an unreliable model isn't just a "bug"-it’s a physical failure. You’ll own the stack from fine-tuning to field deployment.

* Mission-Critical Logic: Fine-tuning & deploying models that handle real-time operational decisions where precision is the only metric that matters.

* The Pipeline: Building the RAG systems, data flywheels, & retrieval logic that allow our robots to understand their environment with sub-100ms latency.

* Hardened Evals: Designing the testing frameworks & grounding suites required for heavy hardware. You ensure the "reasoning" holds up when things get messy in the real world.

* Full Autonomy: You pick the tools, define the architecture, & own the deployment.

The Profile

We want builders who are bored with digital-only products & want to solve hard problems grounded in physics.

* Production Grit: You’ve shipped & maintained ML systems in high-bar environments (SpaceX, Tesla, or similar).

* Systems Thinking: You understand the full lifecycle-from raw telemetry & fine-tuning to inference optimization & hardware constraints.

* High-Bar Pedigree: You come from a place where "production-ready" means it works every time, & shipping broken code isn't an option.

The Deal

* Comp: $450k - $500k+ base + Meaningful Founding Equity.

* Location: SF / Palo Alto - On-site.

* Process: 1 week, 0 take-homes. No leet code. We move as fast as we ship.

1. Technical Deep Dive: A conversation about a complex system you actually built & shipped.

2. Practical Pairing: Solving a real-world production problem with the team. No Leetcode.

3. Founder Chat: A focus on judgment, trade-offs, & vision.

If you’re ready to build something that actually moves, let’s talk.

TL;DR

* Role: Founding AI/ML (Production focus)

* The Mission: Critical intelligence for heavy robotics

* The Team: Ex-SpaceX, Palantir, Anduril

* The Comp: $450k - $500k+ base + Equity

* The Speed: 1-week process. Zero BS.

All applicants will receive a response within 72 hours.

Equal Opportunity

We're hiring for an Equal Opportunity Employer.

*All our new jobs are posted here 1st:

linkedin.com/in/sufyanbashir/

Applications go to the hiring team directly