Home › Companies › Universalagi › ML Engineer
ML Engineer
Universalagi · San Francisco · On Site · Active · Ashby
Job facts
| Field | Value |
|---|---|
| Company | Universalagi |
| Title | ML Engineer |
| Normalized title | - |
| Department / team | Technical Staff / Technical Staff, Core Infrastructure |
| Location | San Francisco, CA, United States |
| Work model | On Site |
| Employment type | Full Time |
| Salary | - |
| Status | active |
| ATS provider | Ashby |
| Posted / first seen | — / 2026-05-29 |
| Changed / last seen | 2026-05-29 / 2026-06-19 |
Related slices
| Page | What it contains | Open |
|---|---|---|
| Company jobs | Active postings from Universalagi. | Open |
| Company breakdowns | Role, location, ATS, and work model facets for this company. | Open |
| ATS provider jobs | Active postings observed through Ashby. | Open |
| Provider filtered search | The same provider as a filtered job collection. | Open |
| City jobs | Active postings in San Francisco. | Open |
| Department jobs | Active postings in Technical Staff. | Open |
| Work model jobs | Active On Site postings. | Open |
| Lifecycle events | Open, update, close, and reopen events for this posting. | Open |
| Original posting | Canonical source or apply URL captured from the ATS. | Open |
Linked records
| Company | Universalagi |
| Source | 544f9040-d7ab-4cf1-98e5-a9632e367398 |
| ATS provider | Ashby |
Description
📍 San Francisco | Work Directly with CEO & founding team | Report to CEO | OpenAI for Physics | 🏢 5 Days Onsite
Machine Learning Engineer Location: Onsite in San Francisco
Compensation: Competitive Salary + Equity
Who We Are
UniversalAGI is building OpenAI for Physics. AI startup based in San Francisco and backed by Elad Gil (#1 Solo VC), Eric Schmidt (former Google CEO), Prith Banerjee (ANSYS CTO), Ion Stoica (Databricks Founder), Jared Kushner (former Senior Advisor to the President), David Patterson (Turing Award Winner), and Luis Videgaray (former Foreign and Finance Minister of Mexico). We're building foundation AI models for physics that enable end-to-end industrial automation from initial design through optimization, validation, and production. We're building a high-velocity team of relentless researchers and engineers that will define the next generation of AI for industrial engineering. If you're passionate about AI, physics, or the future of industrial innovation, we want to hear from you.
About the Role
UniversalAGI is hiring an ML Engineer to help ship ML outcomes by owning the execution layer: data preprocessing/generation, training/fine-tuning, benchmarking, and delivering results.
What You’ll Do
Build and maintain data preprocessing and data generation pipelines to support model training and evaluation.
Run training and fine-tuning workflows end-to-end and iterate quickly on performance improvements.
Design and execute benchmarking/evaluation suites to measure progress and customer outcomes.
Collaborate with PhD expert researchers to operationalize model architectures into repeatable, production-grade workflows.
Communicate results clearly (metrics, dashboards, short writeups) and maintain high-quality, reproducible work.
Qualifications
Strong software engineering skills (clean code, debugging, reliability, reproducibility).
Solid ML foundations and hands-on experience with the ML lifecycle: data → training/fine-tuning → evaluation/benchmarking.
Prior experience training or fine-tuning models (any modality/type - LLMs, computer vision, physics, surrogate models, etc.)
Olympic athlete mindset : You have high standards for yourself and are obsessed with measurable improvement on the metrics you are delivering.
Resourcefulness : you know when to do the “quick & correct” fix vs. when to invest in a robust solution, and you can justify the tradeoff with impact/
Ownership : Comfortable owning work end-to-end and being accountable for measurable outcomes.
Bonus Qualifications
Experience building data pre-processing pipelines for training ML models.
Experience with benchmarking methodology, experiment design, and metric selection.
Familiarity with distributed training / scalable compute workflows.
Experience in an FDE-style / delivery execution role (or similar “ship results fast” environments).
Cultural Fit
Technical Respect : Ability to earn respect through hands-on technical contribution
Intensity : Thrives in our unusually intense culture - willing to grind when needed
Customer Obsession : Passionate about solving real customer problems, not just publishing papers
Deep Work : Values long, uninterrupted periods of focused work over meetings
High Availability : Ready to be deeply involved whenever critical issues arise
Communication : Can translate complex model decisions to customers and team
Growth Mindset : Embraces the compounding returns of intelligence and continuous learning
Startup Mindset : Comfortable with ambiguity, rapid change, and wearing multiple hats
Work Ethic : Willing to put in the extra hours when needed to hit critical milestones
Team Player : Collaborative approach with low ego and high accountability
Bias for Action : Ships experiments fast, learns from failures, and iterates quickly
What We Offer
Opportunity to define the future of physics AI from the ground up
Work on cutting-edge problems at the intersection of deep learning and physics simulation
Direct collaboration with the founder & CEO and ability to influence company strategy
Competitive compensation with significant equity upside
In-person first culture - 5 days a week in office with a team that values face-to-face collaboration
Access to world-class investors and advisors in the AI space
Benefits
We provide great benefits, including:
Competitive compensation and equity.
Competitive health, dental, vision benefits paid by the company.
401(k) plan offering.
Flexible vacation.
Team Building & Fun Activities.
Great scope, ownership and impact.
AI tools stipend.
Monthly commute stipend.
Monthly wellness / fitness stipend.
Daily office lunch & dinner covered by the company.
Immigration support.
How We’re Different
“The credit belongs to the man who is actually in the arena, whose face is marred by dust and
sweat and blood; who strives valiantly; who errs, who comes short again and again... who at the
best knows in the end the triumph of high achievement, and who at the worst, if he fails, at least
fails while daring greatly." - Teddy Roosevelt
At our core, we believe in being “in the arena. ” We are builders, problem solvers, and risk-takers who show up every day ready to put in the work: to sweat, to struggle, and to push past our limits. We know that real progress comes with missteps, iteration, and resilience. We embrace that journey fully knowing that daring greatly is the only way to create something truly meaningful.
If you're ready to train the models that will revolutionize physics simulation, push the boundaries of what AI can learn, and deliver real impact, UniversalAGI is the place for you.
Full job record
| Job ID | 61b005c1b7c2a231a58ac1e206ede18632196aa3 |
| Org ID | fff70805-4cce-47fd-a771-de724d06d0bb |
| Source ID | 544f9040-d7ab-4cf1-98e5-a9632e367398 |
| Board ID | 544f9040-d7ab-4cf1-98e5-a9632e367398 |
| Provider | ashby |
| Provider Job Key | 995ceec2-c76e-4466-9859-05bda9898284 |
| Title | ML Engineer |
| Normalized Title | — |
| Status | active |
| Active | yes |
| Location Text | San Francisco |
| Department | Technical Staff |
| Team | Technical Staff, Core Infrastructure |
| Employment Type | full_time |
| Workplace Type | on_site |
| Remote Policy | — |
| Country | United States |
| Region | CA |
| City | San Francisco |
| Salary Raw | — |
| Salary Min | — |
| Salary Max | — |
| Salary Currency | — |
| Salary Period | — |
| Source URL | https://jobs.ashbyhq.com/universalagi/995ceec2-c76e-4466-9859-05bda9898284 |
| Apply URL | https://jobs.ashbyhq.com/universalagi/995ceec2-c76e-4466-9859-05bda9898284/application |
| First Seen At | 2026-05-29 05:53:39Z |
| Last Seen At | 2026-06-19 09:17:41Z |
| Last Checked At | 2026-06-19 09:17:41Z |
| Last Changed At | 2026-05-29 05:53:39Z |
| Inactive At | — |
| Source Posted At | — |
| Source Updated At | — |
| Raw Payload Uri | s3://job-postings-prod-raw-590183727216/raw/provider=ashby/board=universalagi/date=2026-06-19/2026-06-19T09-17-35-717Z-14d59cd873793df915d097a6dca8bbf0ad331a902c5a5fdec10c89a2dd2706d9.json |
Event Fields
{
"content_hash": "94bd565b03cd5629ea108ec36816d7b52bcd7ac719f1d2b554ad7326d556d440",
"source_hash": "1af9e4a6c0786546061f849b35e56bdd3d9c1221de44a60f8dda7ea1bcb7c25a",
"last_changed_at": "2026-05-29T05:53:39.955Z",
"active_status": "active"
}Parsed Structured
{
"language": "en",
"location": {
"raw": "San Francisco",
"city": "San Francisco",
"region": "CA",
"country": "United States",
"is_remote": false,
"confidence": 0.75
},
"salary_max": null,
"salary_min": null,
"inferred_at": "2026-06-19T09:17:41.051Z",
"launch_scope": {
"reason": "english_us_canada",
"included": true,
"language": "en",
"location": {
"raw": "San Francisco",
"city": "San Francisco",
"region": "CA",
"country": "United States",
"is_remote": false,
"confidence": 0.75
},
"countries": [
"United States"
]
},
"remote_policy": null,
"salary_period": null,
"workplace_type": "on_site",
"salary_currency": null
}Extensions
{}Native Structured
{
"id": "995ceec2-c76e-4466-9859-05bda9898284",
"team": "Technical Staff, Core Infrastructure",
"title": "ML Engineer",
"jobUrl": "https://jobs.ashbyhq.com/universalagi/995ceec2-c76e-4466-9859-05bda9898284",
"address": null,
"applyUrl": "https://jobs.ashbyhq.com/universalagi/995ceec2-c76e-4466-9859-05bda9898284/application",
"isListed": true,
"isRemote": false,
"location": "San Francisco",
"updatedAt": null,
"apiVersion": "ashby-non-user-graphql-v1",
"department": "Technical Staff",
"publishedAt": null,
"workplaceType": "OnSite",
"employmentType": "FullTime",
"secondaryLocations": []
}Get this page with API
Rendered from the bluedoor Job Postings API. Reproduce it:
GET https://api.bluedoor.sh/job-postings/v1/jobs/61b005c1b7c2a231a58ac1e206ede18632196aa3?include=descriptionJSONGET https://api.bluedoor.sh/job-postings/v1/orgs/fff70805-4cce-47fd-a771-de724d06d0bbJSONGET https://api.bluedoor.sh/job-postings/v1/sources/544f9040-d7ab-4cf1-98e5-a9632e367398JSONGET https://api.bluedoor.sh/job-postings/v1/jobs/61b005c1b7c2a231a58ac1e206ede18632196aa3/eventsJSON