causal
causal6mo ago
New

Machine Learning - Research

San Franciscofull-timemid
Machine LearningData & AI
0 views0 saves0 applied

Quick Summary

Overview

Our mission is general causal intelligence, AI that is capable of (1) predicting the future and (2) identifying the optimal actions to change that future.

Key Responsibilities

Work across the full ML stack (data, model, eval, and infrastructure) Implement novel model architectures and training algorithms Build data pipelines and training infrastructure for massive, petabyte-scale, multimodal datasets Rapidly iterate on…

Technical Tools
etlmachine-learning

Our mission is general causal intelligence, AI that is capable of (1) predicting the future and (2) identifying the optimal actions to change that future.

To achieve this breakthrough, we are building a Large Physics foundation Model (LPM) because domains governed by physics have inherent cause and effect relationships, unlike visual or textual data.

Weather is the ideal training ground for an LPM. It is the most well-observed physical system, offering rapid, objective ground truth feedback from sensory observations and data at a scale that dwarfs what is used to train today’s LLMs.

Causal Labs is a team of researchers and engineers from self-driving, drug discovery, and robotics - including Google DeepMind, Cruise, Waymo, Insitro, and Nabla Bio - who believe general causal intelligence will be the most important technical breakthrough for civilization.

We look for researchers who are excited to tackle unsolved problems.

Our research challenges offer an opportunity to build powerful models grounded in observable feedback and verifiable ground truth. If you have experience doing frontier research and training large-scale models from scratch in related fields such as language and vision models, robotics, biology – join us.

Responsibilities

~1 min read
  • Work across the full ML stack (data, model, eval, and infrastructure)

  • Implement novel model architectures and training algorithms

  • Build data pipelines and training infrastructure for massive, petabyte-scale, multimodal datasets

  • Rapidly iterate on experiments and ablations

  • Stay up-to-date on research to bring new ideas to work

We value a relentless approach to problem-solving, rapid execution, and the ability to quickly learn in unfamiliar domains.

  • Strong grasp of machine learning fundamentals, and depth in at least one core domain (e.g. Computer Vision, Sensor Fusion, Language Models, Physics-informed NNs)

  • Experience training models and an ability to understand experiment results through careful analysis and ablation studies.

  • Experienced at writing and optimizing massive petabyte-scale data pipelines.

  • Familiarity with distributed training and inference.

  • [bonus] Familiarity with meteorology, computational fluid dynamics, and/or numerical simulations.

You don’t have to meet every single requirement above.

Location & Eligibility

Where is the job
San Francisco
On-site at the office
Who can apply
Same as job location

Listing Details

Posted
October 29, 2025
First seen
May 6, 2026
Last seen
May 8, 2026

Posting Health

Days active
0
Repost count
0
Trust Level
14%
Scored at
May 6, 2026

Signal breakdown

freshnesssource trustcontent trustemployer trust

1 other job at causal

View all →

Explore open roles at causal.

Newsletter

Stay ahead of the market

Get the latest job openings, salary trends, and hiring insights delivered to your inbox every week.

A
B
C
D
Join 12,000+ marketers

No spam. Unsubscribe at any time.

causalMachine Learning - Research